Application of artificial intelligence using a convolutional neural network for diagnosis of early gastric cancer based on magnifying endoscopy with narrow‐band imaging

  • Hiroya Ueyama
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Yusuke Kato
    AI Medical Service Inc. Tokyo Japan
  • Yoichi Akazawa
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Noboru Yatagai
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Hiroyuki Komori
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Tsutomu Takeda
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Kohei Matsumoto
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Kumiko Ueda
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Kenshi Matsumoto
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Mariko Hojo
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Takashi Yao
    Department of Human Pathology Juntendo University School of Medicine Tokyo Japan
  • Akihito Nagahara
    Department of Gastroenterology Juntendo University School of Medicine Tokyo Japan
  • Tomohiro Tada
    AI Medical Service Inc. Tokyo Japan

Description

<jats:title>Abstract</jats:title><jats:sec><jats:title>Background and Aim</jats:title><jats:p>Magnifying endoscopy with narrow‐band imaging (ME‐NBI) has made a huge contribution to clinical practice. However, acquiring skill at ME‐NBI diagnosis of early gastric cancer (EGC) requires considerable expertise and experience. Recently, artificial intelligence (AI), using deep learning and a convolutional neural network (CNN), has made remarkable progress in various medical fields. Here, we constructed an AI‐assisted CNN computer‐aided diagnosis (CAD) system, based on ME‐NBI images, to diagnose EGC and evaluated the diagnostic accuracy of the AI‐assisted CNN‐CAD system.</jats:p></jats:sec><jats:sec><jats:title>Methods</jats:title><jats:p>The AI‐assisted CNN‐CAD system (ResNet50) was trained and validated on a dataset of 5574 ME‐NBI images (3797 EGCs, 1777 non‐cancerous mucosa and lesions). To evaluate the diagnostic accuracy, a separate test dataset of 2300 ME‐NBI images (1430 EGCs, 870 non‐cancerous mucosa and lesions) was assessed using the AI‐assisted CNN‐CAD system.</jats:p></jats:sec><jats:sec><jats:title>Results</jats:title><jats:p>The AI‐assisted CNN‐CAD system required 60 s to analyze 2300 test images. The overall accuracy, sensitivity, specificity, positive predictive value, and negative predictive value of the CNN were 98.7%, 98%, 100%, 100%, and 96.8%, respectively. All misdiagnosed images of EGCs were of low‐quality or of superficially depressed and intestinal‐type intramucosal cancers that were difficult to distinguish from gastritis, even by experienced endoscopists.</jats:p></jats:sec><jats:sec><jats:title>Conclusions</jats:title><jats:p>The AI‐assisted CNN‐CAD system for ME‐NBI diagnosis of EGC could process many stored ME‐NBI images in a short period of time and had a high diagnostic ability. This system may have great potential for future application to real clinical settings, which could facilitate ME‐NBI diagnosis of EGC in practice.</jats:p></jats:sec>

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