4.6 Article

Multi-View Attention-Guided Multiple Instance Detection Network for Interpretable Breast Cancer Histopathological Image Diagnosis

期刊

IEEE ACCESS
卷 9, 期 -, 页码 79671-79684

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3084360

关键词

Breast cancer; Cancer; Image classification; Solid modeling; Supervised learning; Location awareness; Deep learning; Breast cancer diagnosis; multiple instance learning; multi-view attention; diagnosis interpretability; deep mutual learning

资金

  1. National Natural Science Foundation of China [61762038, 61861016]
  2. Jiangxi Provincial Department of Science and Technology [20202BABL202044, 20192ACB21004]
  3. Key Research and Development Plan of Jiangxi Provincial Science and Technology Department [20171BBG70093, 20192BBE50071, 20202BBEL53003]
  4. Humanity and Social Science Fund of Ministry of Education of China [20YJAZH142]
  5. Science and Technology Projects of Jiangxi Provincial Department of Education [GJJ190323]
  6. Humanity and Social Science Foundation of Jiangxi University [TQ19101, TQ20108]

向作者/读者索取更多资源

A novel multi-view attention-guided multiple instance detection network (MA-MIDN) is proposed to address the issue of breast cancer histopathological image diagnosis, framing the problem as weakly supervised multiple instance learning and utilizing a new multiple-view attention algorithm for lesion localization. The model achieves superior diagnosis accuracy and localization results compared to the latest baselines, showcasing its practicality in breast cancer image analysis.
Deep learning approaches have demonstrated significant progress in breast cancer histopathological image diagnosis. Training an interpretable diagnosis model using high-resolution histopathological image is still challenging. To alleviate this problem, a novel multi-view attention-guided multiple instance detection network (MA-MIDN) is proposed. The traditional image classification problem is framed as a weakly supervised multiple instance learning (MIL) problem. We first divide each histopathology image into instances and form a corresponding bag to fully utilize high-resolution information through MIL. Then a new multiple-view attention (MVA) algorithm is proposed to learn attention on the instances from the image to localize the lesion regions in this image. A MVA-guided MIL pooling strategy is designed for aggregating instance-level features to obtain bag-level features for the final classification. The proposed MA-MIDN model performs lesion localization and image classification, simultaneously. Particularly, we train the MA-MIDN model under the deep mutual learning (DML) schema. This transfers DML to a weakly supervised learning problem. Three public breast cancer histopathological image datasets are chosen to evaluate classification and localization results. The experimental results demonstrate that the MA-MIDN model is superior to the latest baselines in terms of diagnosis accuracy, AUC, Precision, Recall, and F1. Notably, it achieves better localization results without compromising classification performance, thereby proving its higher practicality. The code for the MA-MIDN model is available at https://github.com/lcxlcx/MA-MIDN.

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