Scientific Reports (Aug 2022)

Identification of misdiagnosis by deep neural networks on a histopathologic review of breast cancer lymph node metastases

  • Cancan Chen,
  • Shan Zheng,
  • Lei Guo,
  • Xuebing Yang,
  • Yan Song,
  • Zhuo Li,
  • Yanwu Zhu,
  • Xiaoqi Liu,
  • Qingzhuang Li,
  • Huijuan Zhang,
  • Ning Feng,
  • Zuxuan Zhao,
  • Tinglin Qiu,
  • Jun Du,
  • Qiang Guo,
  • Wensheng Zhang,
  • Wenzhao Shi,
  • Jianhui Ma,
  • Fenglong Sun

DOI
https://doi.org/10.1038/s41598-022-17606-0
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 10

Abstract

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Abstract The frozen section (FS) diagnoses of pathology experts are used in China to determine whether sentinel lymph nodes of breast cancer have metastasis during operation. Direct implementation of a deep neural network (DNN) in clinical practice may be hindered by misdiagnosis of the algorithm, which affects a patient's treatment decision. In this study, we first obtained the prediction result of the commonly used patch-DNN, then we present a relative risk classification and regression tree (RRCART) to identify the misdiagnosed whole-slide images (WSIs) and recommend them to be reviewed by pathologists. Applying this framework to 2362 WSIs of breast cancer lymph node metastasis, test on frozen section results in the mean area under the curve (AUC) reached 0.9851. However, the mean misdiagnosis rate (0.0248), was significantly higher than the pathologists’ misdiagnosis rate (p 0.01). However, the other low-accuracy group included most of the misdiagnoses of DNN models. Our research shows that the misdiagnosis from deep learning model can be further enriched by our method, and that the low-accuracy WSIs must be selected for pathologists to review and the high-accuracy ones may be ready for pathologists to give diagnostic reports.