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Automated acquisition of explainable knowledge from unannotated histopathology images

Author

Listed:
  • Yoichiro Yamamoto

    (RIKEN Center for Advanced Intelligence Project
    Shinshu University School of Medicine)

  • Toyonori Tsuzuki

    (Aichi Medical University Hospital)

  • Jun Akatsuka

    (RIKEN Center for Advanced Intelligence Project
    Nippon Medical School Hospital)

  • Masao Ueki

    (RIKEN Center for Advanced Intelligence Project)

  • Hiromu Morikawa

    (RIKEN Center for Advanced Intelligence Project)

  • Yasushi Numata

    (RIKEN Center for Advanced Intelligence Project)

  • Taishi Takahara

    (Aichi Medical University Hospital)

  • Takuji Tsuyuki

    (Aichi Medical University Hospital)

  • Kotaro Tsutsumi

    (RIKEN Center for Advanced Intelligence Project)

  • Ryuto Nakazawa

    (St. Marianna University School of Medicine)

  • Akira Shimizu

    (Nippon Medical School)

  • Ichiro Maeda

    (RIKEN Center for Advanced Intelligence Project
    St. Marianna University School of Medicine)

  • Shinichi Tsuchiya

    (Ritsuzankai Iida Hospital)

  • Hiroyuki Kanno

    (Shinshu University School of Medicine)

  • Yukihiro Kondo

    (Nippon Medical School Hospital)

  • Manabu Fukumoto

    (RIKEN Center for Advanced Intelligence Project
    Tohoku University)

  • Gen Tamiya

    (RIKEN Center for Advanced Intelligence Project
    Tohoku University)

  • Naonori Ueda

    (RIKEN Center for Advanced Intelligence Project)

  • Go Kimura

    (Nippon Medical School Hospital)

Abstract

Deep learning algorithms have been successfully used in medical image classification. In the next stage, the technology of acquiring explainable knowledge from medical images is highly desired. Here we show that deep learning algorithm enables automated acquisition of explainable features from diagnostic annotation-free histopathology images. We compare the prediction accuracy of prostate cancer recurrence using our algorithm-generated features with that of diagnosis by expert pathologists using established criteria on 13,188 whole-mount pathology images consisting of over 86 billion image patches. Our method not only reveals findings established by humans but also features that have not been recognized, showing higher accuracy than human in prognostic prediction. Combining both our algorithm-generated features and human-established criteria predicts the recurrence more accurately than using either method alone. We confirm robustness of our method using external validation datasets including 2276 pathology images. This study opens up fields of machine learning analysis for discovering uncharted knowledge.

Suggested Citation

  • Yoichiro Yamamoto & Toyonori Tsuzuki & Jun Akatsuka & Masao Ueki & Hiromu Morikawa & Yasushi Numata & Taishi Takahara & Takuji Tsuyuki & Kotaro Tsutsumi & Ryuto Nakazawa & Akira Shimizu & Ichiro Maeda, 2019. "Automated acquisition of explainable knowledge from unannotated histopathology images," Nature Communications, Nature, vol. 10(1), pages 1-9, December.
  • Handle: RePEc:nat:natcom:v:10:y:2019:i:1:d:10.1038_s41467-019-13647-8
    DOI: 10.1038/s41467-019-13647-8
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