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Automatic Endoscopic Ultrasound Station Recognition with Limited Data (2309.11820v3)

Published 21 Sep 2023 in eess.IV and cs.CV

Abstract: Pancreatic cancer is a lethal form of cancer that significantly contributes to cancer-related deaths worldwide. Early detection is essential to improve patient prognosis and survival rates. Despite advances in medical imaging techniques, pancreatic cancer remains a challenging disease to detect. Endoscopic ultrasound (EUS) is the most effective diagnostic tool for detecting pancreatic cancer. However, it requires expert interpretation of complex ultrasound images to complete a reliable patient scan. To obtain complete imaging of the pancreas, practitioners must learn to guide the endoscope into multiple "EUS stations" (anatomical locations), which provide different views of the pancreas. This is a difficult skill to learn, involving over 225 proctored procedures with the support of an experienced doctor. We build an AI-assisted tool that utilizes deep learning techniques to identify these stations of the stomach in real time during EUS procedures. This computer-assisted diagnostic (CAD) will help train doctors more efficiently. Historically, the challenge faced in developing such a tool has been the amount of retrospective labeling required by trained clinicians. To solve this, we developed an open-source user-friendly labeling web app that streamlines the process of annotating stations during the EUS procedure with minimal effort from the clinicians. Our research shows that employing only 43 procedures with no hyperparameter fine-tuning obtained a balanced accuracy of 89%, comparable to the current state of the art. In addition, we employ Grad-CAM, a visualization technology that provides clinicians with interpretable and explainable visualizations.

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References (23)
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Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Bray F, Ferlay J, Soerjomataram I, et al (2018) Global cancer statistics 2018: Globocan estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA: a cancer journal for clinicians 68(6):394–424 Dalal and Triggs [2005] Dalal N, Triggs B (2005) Histograms of oriented gradients for human detection. In: 2005 IEEE computer society conference on computer vision and pattern recognition (CVPR’05), Ieee, pp 886–893 Faulx et al [2017] Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Dalal N, Triggs B (2005) Histograms of oriented gradients for human detection. In: 2005 IEEE computer society conference on computer vision and pattern recognition (CVPR’05), Ieee, pp 886–893 Faulx et al [2017] Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  2. Bray F, Ferlay J, Soerjomataram I, et al (2018) Global cancer statistics 2018: Globocan estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA: a cancer journal for clinicians 68(6):394–424 Dalal and Triggs [2005] Dalal N, Triggs B (2005) Histograms of oriented gradients for human detection. In: 2005 IEEE computer society conference on computer vision and pattern recognition (CVPR’05), Ieee, pp 886–893 Faulx et al [2017] Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Dalal N, Triggs B (2005) Histograms of oriented gradients for human detection. In: 2005 IEEE computer society conference on computer vision and pattern recognition (CVPR’05), Ieee, pp 886–893 Faulx et al [2017] Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  3. Dalal N, Triggs B (2005) Histograms of oriented gradients for human detection. In: 2005 IEEE computer society conference on computer vision and pattern recognition (CVPR’05), Ieee, pp 886–893 Faulx et al [2017] Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  4. Faulx AL, Lightdale JR, Acosta RD, et al (2017) Guidelines for privileging, credentialing, and proctoring to perform gi endoscopy. Gastrointestinal endoscopy 85(2):273–281 Fleurentin et al [2022] Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  5. Fleurentin A, Mazellier JP, Meyer A, et al (2022) Automatic pancreas anatomical part detection in endoscopic ultrasound videos. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization pp 1–7 Gonzalo-Marin et al [2014] Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  6. Gonzalo-Marin J, Vila JJ, Perez-Miranda M (2014) Role of endoscopic ultrasound in the diagnosis of pancreatic cancer. World journal of gastrointestinal oncology 6(9):360 Heo et al [2020] Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  7. Heo YC, Kim K, Lee Y (2020) Image denoising using non-local means (nlm) approach in magnetic resonance (mr) imaging: a systematic review. Applied Sciences 10(20):7028 Jaramillo et al [2022] Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  8. Jaramillo M, Ruano J, Gómez M, et al (2022) Automatic detection of pancreatic tumors in endoscopic ultrasound videos using deep learning techniques. In: Medical Imaging 2022: Ultrasonic Imaging and Tomography, SPIE, pp 106–115 Keerthi and Santhi [2023] Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  9. Keerthi S, Santhi P (2023) Precise multi-class classification of brain tumor via optimization based relevance vector machine. Intelligent Automation & Soft Computing 36(1) Lee et al [2005] Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  10. Lee S, Xin JH, Westland S (2005) Evaluation of image similarity by histogram intersection. Color Research & Application: Endorsed by Inter-Society Color Council, The Colour Group (Great Britain), Canadian Society for Color, Color Science Association of Japan, Dutch Society for the Study of Color, The Swedish Colour Centre Foundation, Colour Society of Australia, Centre Français de la Couleur 30(4):265–274 Liu et al [2019] Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  11. Liu X, Faes L, Kale AU, et al (2019) A comparison of deep learning performance against health-care professionals in detecting diseases from medical imaging: a systematic review and meta-analysis. The lancet digital health 1(6):e271–e297 LU et al [2021] LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  12. LU Z, WU H, YAO L, et al (2021) A station recognition and pancreatic segmentation system in endoscopic ultrasonography based on deep learning. Chinese Journal of Digestive Endoscopy pp 778–782 Mohan et al [2020] Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  13. Mohan M, Nair LS, et al (2020) Fuzzy c-means segmentation on enhanced mammograms using clahe and fourth order complex diffusion. In: 2020 Fourth International Conference on Computing Methodologies and Communication (ICCMC), IEEE, pp 647–651 OpenCV [Year] OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  14. OpenCV (Year) Inpainting tutorial - opencv documentation. Online, URL https://docs.opencv.org/3.4/df/d3d/tutorial_py_inpainting.html Osareh and Shadgar [2011] Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  15. Osareh A, Shadgar B (2011) A computer aided diagnosis system for breast cancer. International Journal of Computer Science Issues (IJCSI) 8(2):233 Panwar et al [2020] Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  16. Panwar H, Gupta P, Siddiqui MK, et al (2020) A deep learning and grad-cam based color visualization approach for fast detection of covid-19 cases using chest x-ray and ct-scan images. Chaos, Solitons & Fractals 140:110,190 Pizer [1990] Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  17. Pizer SM (1990) Contrast-limited adaptive histogram equalization: Speed and effectiveness stephen m. pizer, r. eugene johnston, james p. ericksen, bonnie c. yankaskas, keith e. muller medical image display research group. In: Proceedings of the first conference on visualization in biomedical computing, Atlanta, Georgia, p 1 Rawla et al [2019] Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  18. Rawla P, Sunkara T, Gaduputi V (2019) Epidemiology of pancreatic cancer: global trends, etiology and risk factors. World journal of oncology 10(1):10–27 Selvaraju et al [2017] Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  19. Selvaraju RR, Cogswell M, Das A, et al (2017) Grad-cam: Visual explanations from deep networks via gradient-based localization. In: Proceedings of the IEEE international conference on computer vision, pp 618–626 Tan and Le [2019] Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  20. Tan M, Le Q (2019) Efficientnet: Rethinking model scaling for convolutional neural networks. In: International conference on machine learning, PMLR, pp 6105–6114 Xiao et al [2010] Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  21. Xiao K, Ho SH, Bargiela A (2010) Automatic brain mri segmentation scheme based on feature weighting factors selection on fuzzy c-means clustering algorithms with gaussian smoothing. International Journal of Computational Intelligence in Bioinformatics and Systems Biology 1(3):316–331 Yao et al [2021] Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  22. Yao L, Zhang J, Liu J, et al (2021) A deep learning-based system for bile duct annotation and station recognition in linear endoscopic ultrasound. EBioMedicine 65:103,238 Zhang et al [2020] Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885 Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885
  23. Zhang J, Zhu L, Yao L, et al (2020) Deep learning–based pancreas segmentation and station recognition system in eus: Development and validation of a useful training tool (with video). Gastrointestinal endoscopy 92(4):874–885

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