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Published in: Gastric Cancer 1/2023

Open Access 30-08-2022 | Artificial Intelligence | Original Article

Cooperation between artificial intelligence and endoscopists for diagnosing invasion depth of early gastric cancer

Authors: Atsushi Goto, Naoto Kubota, Jun Nishikawa, Ryo Ogawa, Koichi Hamabe, Shinichi Hashimoto, Hiroyuki Ogihara, Yoshihiko Hamamoto, Hideo Yanai, Osamu Miura, Taro Takami

Published in: Gastric Cancer | Issue 1/2023

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Abstract

Background and study aims

The diagnostic ability of endoscopists to determine invasion depth of early gastric cancer is not favorable. We designed an artificial intelligence (AI) classifier for differentiating intramucosal and submucosal gastric cancers and examined it to establish a diagnostic method based on cooperation between AI and endoscopists.

Patients and methods

We prepared 500 training images using cases of mainly depressed-type early gastric cancer from 250 intramucosal cancers and 250 submucosal cancers. We also prepared 200 test images each of 100 cancers from another institution. We designed an AI classifier to differentiate between intramucosal and submucosal cancers by deep learning. We examined the performance of the AI classifier and the majority vote of the endoscopists as high confidence and low confidence diagnostic probability, respectively, and cooperatively combined them to establish a diagnostic method providing high accuracy.

Results

Internal evaluation of the training images showed that accuracy, sensitivity, specificity, and F1 measure by the AI classifier were 77%, 76%, 78%, and 0.768, and those of the majority vote of the endoscopists were 72.6%, 53.6%, 91.6%, and 0.662, respectively. A diagnostic method based on cooperation between AI and the endoscopists showed that the respective values were 78.0%, 76.0%, 80.0%, and 0.776 for the test images. The value of F1 measure was especially higher than those by AI or the endoscopists alone.

Conclusions

Cooperation between AI and endoscopists improved the diagnostic ability to determine invasion depth of early gastric cancer.
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Metadata
Title
Cooperation between artificial intelligence and endoscopists for diagnosing invasion depth of early gastric cancer
Authors
Atsushi Goto
Naoto Kubota
Jun Nishikawa
Ryo Ogawa
Koichi Hamabe
Shinichi Hashimoto
Hiroyuki Ogihara
Yoshihiko Hamamoto
Hideo Yanai
Osamu Miura
Taro Takami
Publication date
30-08-2022
Publisher
Springer Nature Singapore
Published in
Gastric Cancer / Issue 1/2023
Print ISSN: 1436-3291
Electronic ISSN: 1436-3305
DOI
https://doi.org/10.1007/s10120-022-01330-9

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