1. An artificial intelligence system for chronic atrophic gastritis diagnosis and risk stratification under white light endoscopy.
- Author
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Tao X, Zhu Y, Dong Z, Huang L, Shang R, Du H, Wang J, Zeng X, Wang W, Wang J, Li Y, Deng Y, Wu L, and Yu H
- Subjects
- Humans, Retrospective Studies, Female, Male, Middle Aged, Risk Assessment, Gastroscopy methods, Aged, Adult, Sensitivity and Specificity, Gastritis, Atrophic diagnosis, Gastritis, Atrophic pathology, Artificial Intelligence, Stomach Neoplasms diagnosis, Stomach Neoplasms pathology
- Abstract
Background and Aims: The diagnosis and stratification of gastric atrophy (GA) predict patients' gastric cancer progression risk and determine endoscopy surveillance interval. We aimed to construct an artificial intelligence (AI) system for GA endoscopic identification and risk stratification based on the Kimura-Takemoto classification., Methods: We constructed the system using two trained models and verified its performance. First, we retrospectively collected 869 images and 119 videos to compare its performance with that of endoscopists in identifying GA. Then, we included original image cases of 102 patients to validate the system for stratifying GA and comparing it with endoscopists with different experiences., Results: The sensitivity of model 1 was higher than that of endoscopists (92.72% vs. 76.85 %) at image level and also higher than that of experts (94.87% vs. 85.90 %) at video level. The system outperformed experts in stratifying GA (overall accuracy: 81.37 %, 73.04 %, p = 0.045). The accuracy of this system in classifying non-GA, mild GA, moderate GA, and severe GA was 80.00 %, 77.42 %, 83.33 %, and 85.71 %, comparable to that of experts and better than that of seniors and novices., Conclusions: We established an expert-level system for GA endoscopic identification and risk stratification. It has great potential for endoscopic assessment and surveillance determinations., Competing Interests: Conflict of interest We declare that we have no financial and personal relationships with other people or organizations that can inappropriately influence our work, there is no professional or other personal interest of any nature or kind in any product, service and/or company that could be construed as influencing the position presented in, or the review of, the manuscript entitled “An artificial intelligence system for chronic atrophic gastritis diagnosis and risk stratification under white light endoscopy”. The coauthors of the manuscript are: Xiao Tao, Yijie Zhu, Zehua Dong, Li Huang, Renduo Shang, Hongliu Du, Junxiao Wang, Xiaoquan Zeng, Wen Wang, Jiamin Wang, Yanxia Li, Yunchao Deng, Lianlian Wu and Honggang Yu., (Copyright © 2024 The Author(s). Published by Elsevier Ltd.. All rights reserved.)
- Published
- 2024
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