Deep learning generates custom-made logistic regression models for explaining how breast cancer subtypes are classified

Author:

Shibahara TakumaORCID,Wada Chisa,Yamashita Yasuho,Fujita Kazuhiro,Sato Masamichi,Kuwata Junichi,Okamoto Atsushi,Ono Yoshimasa

Abstract

Differentiating the intrinsic subtypes of breast cancer is crucial for deciding the best treatment strategy. Deep learning can predict the subtypes from genetic information more accurately than conventional statistical methods, but to date, deep learning has not been directly utilized to examine which genes are associated with which subtypes. To clarify the mechanisms embedded in the intrinsic subtypes, we developed an explainable deep learning model called a point-wise linear (PWL) model that generates a custom-made logistic regression for each patient. Logistic regression, which is familiar to both physicians and medical informatics researchers, allows us to analyze the importance of the feature variables, and the PWL model harnesses these practical abilities of logistic regression. In this study, we show that analyzing breast cancer subtypes is clinically beneficial for patients and one of the best ways to validate the capability of the PWL model. First, we trained the PWL model with RNA-seq data to predict PAM50 intrinsic subtypes and applied it to the 41/50 genes of PAM50 through the subtype prediction task. Second, we developed a deep enrichment analysis method to reveal the relationships between the PAM50 subtypes and the copy numbers of breast cancer. Our findings showed that the PWL model utilized genes relevant to the cell cycle-related pathways. These preliminary successes in breast cancer subtype analysis demonstrate the potential of our analysis strategy to clarify the mechanisms underlying breast cancer and improve overall clinical outcomes.

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference41 articles.

1. I.–Computing machinery and intelligence;A. M. Turing;Mind,1950

2. Zeiler, M. D. & Fergus, R. Visualizing and understanding convolutional networks. arXiv:1311.2901 [Preprint]. 2013 [cited 2021 Oct. 18]. Available from: https://arxiv.org/abs/1311.2901

3. Zintgraf, L. M., Cohen, T. S., Adel, T. & Welling, M. Visualizing deep neural network decisions: Prediction difference analysis. arXiv:1702.04595 [Preprint]. 2017 [cited 2021 Oct. 18]. Available from: https://arxiv.org/abs/1702.04595

4. Ribeiro, M. T., Singh, S. & Guestrin, C. Why should I trust you? Explaining the predictions of any classifier. arXiv:1602.04938 [Preprint]. 2016 [cited 2021 Oct. 18]. Available from: https://arxiv.org/abs/1602.04938

5. Simonyan, K., Vedaldi, A. & Zisserman, A. Deep inside convolutional networks: Visualising image classification models and saliency maps. arXiv:1312.6034 [Preprint]. 2013 [cited 2021 Oct. 18]. Available from: https://arxiv.org/abs/1312.6034

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