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Tips and Tricks to Improve CNN-based Chest X-ray Diagnosis: A Survey (2106.00997v1)
Published 2 Jun 2021 in eess.IV and cs.CV
Abstract: Convolutional Neural Networks (CNNs) intrinsically requires large-scale data whereas Chest X-Ray (CXR) images tend to be data/annotation-scarce, leading to over-fitting. Therefore, based on our development experience and related work, this paper thoroughly introduces tricks to improve generalization in the CXR diagnosis: how to (i) leverage additional data, (ii) augment/distillate data, (iii) regularize training, and (iv) conduct efficient segmentation. As a development example based on such optimization techniques, we also feature LPIXEL's CNN-based CXR solution, EIRL Chest Nodule, which improved radiologists/non-radiologists' nodule detection sensitivity by 0.100/0.131, respectively, while maintaining specificity.
- Changhee Han (16 papers)
- Takayuki Okamoto (3 papers)
- Koichi Takeuchi (2 papers)
- Dimitris Katsios (1 paper)
- Andrey Grushnikov (1 paper)
- Masaaki Kobayashi (2 papers)
- Antoine Choppin (1 paper)
- Yutaka Kurashina (1 paper)
- Yuki Shimahara (2 papers)