Deep learning-based clinical decision support system for gastric neoplasms in real-time endoscopy: development and validation study.

Journal: Endoscopy
Published Date:

Abstract

BACKGROUND : Deep learning models have previously been established to predict the histopathology and invasion depth of gastric lesions using endoscopic images. This study aimed to establish and validate a deep learning-based clinical decision support system (CDSS) for the automated detection and classification (diagnosis and invasion depth prediction) of gastric neoplasms in real-time endoscopy. METHODS : The same 5017 endoscopic images that were employed to establish previous models were used for the training data. The primary outcomes were: (i) the lesion detection rate for the detection model, and (ii) the lesion classification accuracy for the classification model. For performance validation of the lesion detection model, 2524 real-time procedures were tested in a randomized pilot study. Consecutive patients were allocated either to CDSS-assisted or conventional screening endoscopy. The lesion detection rate was compared between the groups. For performance validation of the lesion classification model, a prospective multicenter external test was conducted using 3976 novel images from five institutions. RESULTS : The lesion detection rate was 95.6 % (internal test). On performance validation, CDSS-assisted endoscopy showed a higher lesion detection rate than conventional screening endoscopy, although statistically not significant (2.0 % vs. 1.3 %;  = 0.21) (randomized study). The lesion classification rate was 89.7 % in the four-class classification (advanced gastric cancer, early gastric cancer, dysplasia, and non-neoplastic) and 89.2 % in the invasion depth prediction (mucosa confined or submucosa invaded; internal test). On performance validation, the CDSS reached 81.5 % accuracy in the four-class classification and 86.4 % accuracy in the binary classification (prospective multicenter external test). CONCLUSIONS : The CDSS demonstrated its potential for real-life clinical application and high performance in terms of lesion detection and classification of detected lesions in the stomach.

Authors

  • Eun Jeong Gong
    Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, South Korea.
  • Chang Seok Bang
    Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea.
  • Jae Jun Lee
    Institute of New Frontier Research, Hallym University College of Medicine, Chuncheon, Korea.
  • Gwang Ho Baik
    Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea.
  • Hyun Lim
    Department of Internal Medicine, Hallym University College of Medicine, Chuncheon, Korea.
  • Jae Hoon Jeong
    Department of Plastic and Reconstructive Surgery, Seoul National University Bundang Hospital, 82, Gumi-ro 173 Beon-gil, Bundang-gu, Seongnam-si, Gyeonggi-do, 13620, Republic of Korea. psdrj2h@gmail.com.
  • Sung Won Choi
    Division of Hematology/Oncology, Department of Pediatrics, University of Michigan, Ann Arbor, MI.
  • Joonhee Cho
    AIDOT Inc., Seoul, South Korea.
  • Deok Yeol Kim
    AIDOT Inc., Seoul, South Korea.
  • Kang Bin Lee
    AIDOT Inc., Seoul, South Korea.
  • Seung-Il Shin
    Department of Periodontology, Periodontal-Implant Clinical Research Institute, School of Dentistry, Kyung Hee University, Seoul, Republic of Korea.
  • Dick Sigmund
    AIDOT Inc., Seoul, South Korea.
  • Byeong In Moon
    AIDOT Inc., Seoul, South Korea.
  • Sung Chul Park
    Department of Internal Medicine, School of Medicine, Kangwon National University, Chuncheon, South Korea.
  • Sang Hoon Lee
    Department of Anesthesiology, St. Mary's Will Hospital, Seoul, Republic of Korea.
  • Ki Bae Bang
    Department of Internal Medicine, Dankook University College of Medicine, Cheonan, South Korea.
  • Dae-Soon Son
    School of Big Data Science, Data Science Convergence Research Center, 26727Hallym University, Chuncheon-si, Gangwon-do, South Korea.