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Exploring Kinetic Curves Features for the Classification of Benign and Malignant Breast Lesions in DCE-MRI (2404.13929v2)

Published 22 Apr 2024 in eess.IV and cs.CV

Abstract: Breast cancer is the most common malignant tumor among women and the second cause of cancer-related death. Early diagnosis in clinical practice is crucial for timely treatment and prognosis. Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) has revealed great usability in the preoperative diagnosis and assessing therapy effects thanks to its capability to reflect the morphology and dynamic characteristics of breast lesions. However, most existing computer-assisted diagnosis algorithms only consider conventional radiomic features when classifying benign and malignant lesions in DCE-MRI. In this study, we propose to fully leverage the dynamic characteristics from the kinetic curves as well as the radiomic features to boost the classification accuracy of benign and malignant breast lesions. The proposed method is a fully automated solution by directly analyzing the 3D features from the DCE-MRI. The proposed method is evaluated on an in-house dataset including 200 DCE-MRI scans with 298 breast tumors (172 benign and 126 malignant tumors), achieving favorable classification accuracy with an area under curve (AUC) of 0.94. By simultaneously considering the dynamic and radiomic features, it is beneficial to effectively distinguish between benign and malignant breast lesions. The algorithm is publicly available at https://github.com/ryandok/JPA.

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References (8)
  1. R.L. Siegel, K.D. Miller, N.S. Wagle, and A. Jemal, “Cancer statistics, 2023,” CA: A Cancer Journal for Clinicians, 2021, 71(1): 7-33.
  2. Y. Jiang, A.V. Edwards, G.M. Newstead, “Artificial intelligence applied to breast MRI for improved diagnosis,” Radiology, 2021, 298(1): 38-46.
  3. Y. Zhong, Y. Wang, “SimPLe: Similarity-aware propagation learning for weakly-supervised breast cancer segmentation in DCE-MRI,” International Conference on Medical Image Computing and Computer Assisted Intervention, 2023: 567-577.
  4. J. Yao, J. Chen and C. Chow, “Breast tumor analysis in dynamic contrast enhanced MRI using texture features and wavelet transform,” IEEE Journal of Selected Topics in Signal Processing, 2009, 3(1): 94-100.
  5. R. Rasti, M. Teshnehlab, S.L. Phung, “Breast cancer diagnosis in DCE-MRI using mixture ensemble of convolutional neural networks,” Pattern Recognition, 2017, 72: 381-390.
  6. M. Gravina, S. Marrone, M. Sansone, C. Sansone, “DAE-CNN: Exploiting and disentangling contrast agent effects for breast lesions classification in DCE-MRI,” Pattern Recognition Letters, 2021, 145: 67-73.
  7. W. Lu, Z. Li, J. Chu, “A novel computer-aided diagnosis system for breast MRI based on feature selection and ensemble learning,” Computers in Biology and Medicine, 2017, 83: 157-165.
  8. R.A. Fisher, “The use of multiple measurements in taxonomic problems,” Annals of Eugenics, 1936, 7(2): 179-188.
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Authors (3)
  1. Zixian Li (6 papers)
  2. Yuming Zhong (5 papers)
  3. Yi Wang (1038 papers)

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