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Predicting gastric cancer outcome from resected lymph node histopathology images using deep learning

Author

Listed:
  • Xiaodong Wang

    (Xidian University)

  • Ying Chen

    (Changhai Hospital)

  • Yunshu Gao

    (General Hospital of PLA)

  • Huiqing Zhang

    (Jiangxi Provincial Cancer Hospital)

  • Zehui Guan

    (Northwestern Polytechnical University)

  • Zhou Dong

    (Northwestern Polytechnical University)

  • Yuxuan Zheng

    (Xidian University)

  • Jiarui Jiang

    (Xidian University)

  • Haoqing Yang

    (Xidian University)

  • Liming Wang

    (Xidian University)

  • Xianming Huang

    (Jiangxi Provincial Cancer Hospital)

  • Lirong Ai

    (Northwestern Polytechnical University)

  • Wenlong Yu

    (Eastern Hepatobiliary Surgery Hospital)

  • Hongwei Li

    (Longhua Hospital Affiliated to Shanghai University of Traditional Chinese Medicine)

  • Changsheng Dong

    (Longhua Hospital Affiliated to Shanghai University of Traditional Chinese Medicine)

  • Zhou Zhou

    (Longhua Hospital Affiliated to Shanghai University of Traditional Chinese Medicine)

  • Xiyang Liu

    (Xidian University)

  • Guanzhen Yu

    (Longhua Hospital Affiliated to Shanghai University of Traditional Chinese Medicine
    East China Normal University)

Abstract

N-staging is a determining factor for prognostic assessment and decision-making for stage-based cancer therapeutic strategies. Visual inspection of whole-slides of intact lymph nodes is currently the main method used by pathologists to calculate the number of metastatic lymph nodes (MLNs). Moreover, even at the same N stage, the outcome of patients varies dramatically. Here, we propose a deep-learning framework for analyzing lymph node whole-slide images (WSIs) to identify lymph nodes and tumor regions, and then to uncover tumor-area-to-MLN-area ratio (T/MLN). After training, our model’s tumor detection performance was comparable to that of experienced pathologists and achieved similar performance on two independent gastric cancer validation cohorts. Further, we demonstrate that T/MLN is an interpretable independent prognostic factor. These findings indicate that deep-learning models could assist not only pathologists in detecting lymph nodes with metastases but also oncologists in exploring new prognostic factors, especially those that are difficult to calculate manually.

Suggested Citation

  • Xiaodong Wang & Ying Chen & Yunshu Gao & Huiqing Zhang & Zehui Guan & Zhou Dong & Yuxuan Zheng & Jiarui Jiang & Haoqing Yang & Liming Wang & Xianming Huang & Lirong Ai & Wenlong Yu & Hongwei Li & Chan, 2021. "Predicting gastric cancer outcome from resected lymph node histopathology images using deep learning," Nature Communications, Nature, vol. 12(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-21674-7
    DOI: 10.1038/s41467-021-21674-7
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    Cited by:

    1. Wentong Zhou & Ziheng Deng & Yong Liu & Hui Shen & Hongwen Deng & Hongmei Xiao, 2022. "Global Research Trends of Artificial Intelligence on Histopathological Images: A 20-Year Bibliometric Analysis," IJERPH, MDPI, vol. 19(18), pages 1-15, September.
    2. Shih-Chiang Huang & Chi-Chung Chen & Jui Lan & Tsan-Yu Hsieh & Huei-Chieh Chuang & Meng-Yao Chien & Tao-Sheng Ou & Kuang-Hua Chen & Ren-Chin Wu & Yu-Jen Liu & Chi-Tung Cheng & Yu-Jen Huang & Liang-Wei, 2022. "Deep neural network trained on gigapixel images improves lymph node metastasis detection in clinical settings," Nature Communications, Nature, vol. 13(1), pages 1-14, December.

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