Development of multiple AI pipelines that predict neoadjuvant chemotherapy response of breast cancer using H&E‐stained tissues

Author:

Shen Bin12ORCID,Saito Akira12,Ueda Ai3,Fujita Koji1,Nagamatsu Yui1,Hashimoto Mikihiro4,Kobayashi Masaharu4,Mirza Aashiq H5,Graf Hans Peter6,Cosatto Eric6,Hazama Shoichi7,Nagano Hiroaki8,Sato Eiichi9,Matsubayashi Jun10,Nagao Toshitaka10,Cheng Esther11,Hoda Syed AF11,Ishikawa Takashi3,Kuroda Masahiko12ORCID

Affiliation:

1. Department of Molecular Pathology Tokyo Medical University Shinjuku‐ku, Tokyo Japan

2. Department of AI Applied Quantitative Clinical Science Tokyo Medical University Shinjuku‐ku, Tokyo Japan

3. Department of Breast Oncology and Surgery Tokyo Medical University Hospital Shinjuku‐ku, Tokyo Japan

4. Research and Development Division Chi Corporation Shinjuku‐ku, Tokyo Japan

5. Department of Pharmacology Weill Cornell Medicine New York NY USA

6. Department of Machine Learning NEC Labs America Inc. Princeton NJ USA

7. Department of Translational Research and Development Therapeutics against Cancer School of Medicine, Yamaguchi University Ube, Yamaguchi Japan

8. Department of Gastroenterological, Breast and Endocrine Surgery Graduate School of Medicine, Yamaguchi University Ube, Yamaguchi Japan

9. Department of Pathology Institute of Medical Science, Tokyo Medical University Shinjuku‐ku, Tokyo Japan

10. Department of Anatomic Pathology Tokyo Medical University Shinjuku‐ku, Tokyo Japan

11. Department of Pathology and Laboratory Medicine Weill Cornell Medicine, New York Presbyterian Hospital New York NY USA

Abstract

AbstractIn recent years, the treatment of breast cancer has advanced dramatically and neoadjuvant chemotherapy (NAC) has become a common treatment method, especially for locally advanced breast cancer. However, other than the subtype of breast cancer, no clear factor indicating sensitivity to NAC has been identified. In this study, we attempted to use artificial intelligence (AI) to predict the effect of preoperative chemotherapy from hematoxylin and eosin images of pathological tissue obtained from needle biopsies prior to chemotherapy. Application of AI to pathological images typically uses a single machine‐learning model such as support vector machines (SVMs) or deep convolutional neural networks (CNNs). However, cancer tissues are extremely diverse and learning with a realistic number of cases limits the prediction accuracy of a single model. In this study, we propose a novel pipeline system that uses three independent models each focusing on different characteristics of cancer atypia. Our system uses a CNN model to learn structural atypia from image patches and SVM and random forest models to learn nuclear atypia from fine‐grained nuclear features extracted by image analysis methods. It was able to predict the NAC response with 95.15% accuracy on a test set of 103 unseen cases. We believe that this AI pipeline system will contribute to the adoption of personalized medicine in NAC therapy for breast cancer.

Funder

Japan Society for the Promotion of Science

Publisher

Wiley

Subject

Pathology and Forensic Medicine

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Artificial intelligence in anatomical pathology;Artificial Intelligence in Clinical Practice;2024

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