"KAIZEN" method realizing implementation of deep-learning models for COVID-19 CT diagnosis in real world hospitals.

Journal: Scientific reports
PMID:

Abstract

Numerous COVID-19 diagnostic imaging Artificial Intelligence (AI) studies exist. However, none of their models were of potential clinical use, primarily owing to methodological defects and the lack of implementation considerations for inference. In this study, all development processes of the deep-learning models are performed based on strict criteria of the "KAIZEN checklist", which is proposed based on previous AI development guidelines to overcome the deficiencies mentioned above. We develop and evaluate two binary-classification deep-learning models to triage COVID-19: a slice model examining a Computed Tomography (CT) slice to find COVID-19 lesions; a series model examining a series of CT images to find an infected patient. We collected 2,400,200 CT slices from twelve emergency centers in Japan. Area Under Curve (AUC) and accuracy were calculated for classification performance. The inference time of the system that includes these two models were measured. For validation data, the slice and series models recognized COVID-19 with AUCs and accuracies of 0.989 and 0.982, 95.9% and 93.0% respectively. For test data, the models' AUCs and accuracies were 0.958 and 0.953, 90.0% and 91.4% respectively. The average inference time per case was 2.83 s. Our deep-learning system realizes accuracy and inference speed high enough for practical use. The systems have already been implemented in four hospitals and eight are under progression. We released an application software and implementation code for free in a highly usable state to allow its use in Japan and globally.

Authors

  • Naoki Okada
    Osaka General Medical Center, Osaka, Japan. wggdilp@gmail.com.
  • Yutaka Umemura
    Osaka General Medical Center, Osaka, Japan.
  • Shoi Shi
    University of Tsukuba, Tsukuba, Japan.
  • Shusuke Inoue
    fcuro Inc., Osaka, Japan.
  • Shun Honda
    fcuro Inc., Osaka, Japan.
  • Yohsuke Matsuzawa
    Osaka Metropolitan University, Osaka, Japan.
  • Yuichiro Hirano
    Preferred Networks, 1-6-1 Otemachi, Chiyoda-ku, Tokyo 100-0004, Japan.
  • Ayano Kikuyama
    Osaka General Medical Center, Osaka, Japan.
  • Miho Yamakawa
    Osaka General Medical Center, Osaka, Japan.
  • Tomoko Gyobu
  • Naohiro Hosomi
    Osaka General Medical Center, Osaka, Japan.
  • Kensuke Minami
    Osaka General Medical Center, Osaka, Japan.
  • Natsushiro Morita
    Osaka General Medical Center, Osaka, Japan.
  • Atsushi Watanabe
  • Hiroyuki Yamasaki
    Shizuoka Saiseikai General Hospital, Shizuoka, Japan.
  • Kiyomitsu Fukaguchi
    Shonan Kamakura General Hospital, Kamakura, Japan.
  • Hiroki Maeyama
    Tsuyama Chuo Hospital, Tsuyama, Japan.
  • Kaori Ito
    Teikyo University, Tokyo, Japan.
  • Ken Okamoto
  • Kouhei Harano
    Showa University Hospital, Tokyo, Japan.
  • Naohito Meguro
    Tokyo Women's Medical University Hospital, Tokyo, Japan.
  • Ryo Unita
    National Hospital Organization Kyoto Medical Center, Kyoto, Japan.
  • Shinichi Koshiba
    Shizuoka Saiseikai General Hospital, Shizuoka, Japan.
  • Takuro Endo
    International University of Health and Welfare, School of Medicine, Narita Hospital, Narita, Japan.
  • Tomonori Yamamoto
    Nara Prefecture General Medical Center, Nara, Japan.
  • Tomoya Yamashita
    Osaka City General Hospital, Osaka, Japan.
  • Toshikazu Shinba
    Shizuoka Saiseikai General Hospital, Shizuoka, Japan.
  • Satoshi Fujimi
    Osaka General Medical Center, Osaka, Japan.