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Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial

Background and study aims  Endoscopy plays a crucial role in diagnosis of gastritis. Endoscopists have low accuracy in diagnosing atrophic gastritis with white-light endoscopy (WLE). High-risk factors (such as atrophic gastritis [AG]) for carcinogenesis demand early detection. Deep learning (DL)-bas...

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Autores principales: Mu, Ganggang, Zhu, Yijie, Niu, Zhanyue, Li, Hongyan, Wu, Lianlian, Wang, Jing, Luo, Renquan, Hu, Xiao, Li, Yanxia, Zhang, Jixiang, Hu, Shan, Li, Chao, Ding, Shigang, Yu, Honggang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Georg Thieme Verlag KG 2021
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8159578/
https://www.ncbi.nlm.nih.gov/pubmed/34079883
http://dx.doi.org/10.1055/a-1372-2789
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author Mu, Ganggang
Zhu, Yijie
Niu, Zhanyue
Li, Hongyan
Wu, Lianlian
Wang, Jing
Luo, Renquan
Hu, Xiao
Li, Yanxia
Zhang, Jixiang
Hu, Shan
Li, Chao
Ding, Shigang
Yu, Honggang
author_facet Mu, Ganggang
Zhu, Yijie
Niu, Zhanyue
Li, Hongyan
Wu, Lianlian
Wang, Jing
Luo, Renquan
Hu, Xiao
Li, Yanxia
Zhang, Jixiang
Hu, Shan
Li, Chao
Ding, Shigang
Yu, Honggang
author_sort Mu, Ganggang
collection PubMed
description Background and study aims  Endoscopy plays a crucial role in diagnosis of gastritis. Endoscopists have low accuracy in diagnosing atrophic gastritis with white-light endoscopy (WLE). High-risk factors (such as atrophic gastritis [AG]) for carcinogenesis demand early detection. Deep learning (DL)-based gastritis classification with WLE rarely has been reported. We built a system for improving the accuracy of diagnosis of AG with WLE to assist with this common gastritis diagnosis and help lessen endoscopist fatigue. Methods  We collected a total of 8141 endoscopic images of common gastritis, other gastritis, and non-gastritis in 4587 cases and built a DL -based system constructed with UNet + + and Resnet-50. A system was developed to sort common gastritis images layer by layer: The first layer included non-gastritis/common gastritis/other gastritis, the second layer contained AG/non-atrophic gastritis, and the third layer included atrophy/intestinal metaplasia and erosion/hemorrhage. The convolutional neural networks were tested with three separate test sets. Results  Rates of accuracy for classifying non-atrophic gastritis/AG, atrophy/intestinal metaplasia, and erosion/hemorrhage were 88.78 %, 87.40 %, and 93.67 % in internal test set, 91.23 %, 85.81 %, and 92.70 % in the external test set ,and 95.00 %, 92.86 %, and 94.74 % in the video set, respectively. The hit ratio with the segmentation model was 99.29 %. The accuracy for detection of non-gastritis/common gastritis/other gastritis was 93.6 %. Conclusions  The system had decent specificity and accuracy in classification of gastritis lesions. DL has great potential in WLE gastritis classification for assisting with achieving accurate diagnoses after endoscopic procedures.
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spelling pubmed-81595782021-06-01 Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial Mu, Ganggang Zhu, Yijie Niu, Zhanyue Li, Hongyan Wu, Lianlian Wang, Jing Luo, Renquan Hu, Xiao Li, Yanxia Zhang, Jixiang Hu, Shan Li, Chao Ding, Shigang Yu, Honggang Endosc Int Open Background and study aims  Endoscopy plays a crucial role in diagnosis of gastritis. Endoscopists have low accuracy in diagnosing atrophic gastritis with white-light endoscopy (WLE). High-risk factors (such as atrophic gastritis [AG]) for carcinogenesis demand early detection. Deep learning (DL)-based gastritis classification with WLE rarely has been reported. We built a system for improving the accuracy of diagnosis of AG with WLE to assist with this common gastritis diagnosis and help lessen endoscopist fatigue. Methods  We collected a total of 8141 endoscopic images of common gastritis, other gastritis, and non-gastritis in 4587 cases and built a DL -based system constructed with UNet + + and Resnet-50. A system was developed to sort common gastritis images layer by layer: The first layer included non-gastritis/common gastritis/other gastritis, the second layer contained AG/non-atrophic gastritis, and the third layer included atrophy/intestinal metaplasia and erosion/hemorrhage. The convolutional neural networks were tested with three separate test sets. Results  Rates of accuracy for classifying non-atrophic gastritis/AG, atrophy/intestinal metaplasia, and erosion/hemorrhage were 88.78 %, 87.40 %, and 93.67 % in internal test set, 91.23 %, 85.81 %, and 92.70 % in the external test set ,and 95.00 %, 92.86 %, and 94.74 % in the video set, respectively. The hit ratio with the segmentation model was 99.29 %. The accuracy for detection of non-gastritis/common gastritis/other gastritis was 93.6 %. Conclusions  The system had decent specificity and accuracy in classification of gastritis lesions. DL has great potential in WLE gastritis classification for assisting with achieving accurate diagnoses after endoscopic procedures. Georg Thieme Verlag KG 2021-06 2021-05-27 /pmc/articles/PMC8159578/ /pubmed/34079883 http://dx.doi.org/10.1055/a-1372-2789 Text en The Author(s). This is an open access article published by Thieme under the terms of the Creative Commons Attribution-NonDerivative-NonCommercial License, permitting copying and reproduction so long as the original work is given appropriate credit. Contents may not be used for commercial purposes, or adapted, remixed, transformed or built upon. (https://creativecommons.org/licenses/by-nc-nd/4.0/) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives License, which permits unrestricted reproduction and distribution, for non-commercial purposes only; and use and reproduction, but not distribution, of adapted material for non-commercial purposes only, provided the original work is properly cited.
spellingShingle Mu, Ganggang
Zhu, Yijie
Niu, Zhanyue
Li, Hongyan
Wu, Lianlian
Wang, Jing
Luo, Renquan
Hu, Xiao
Li, Yanxia
Zhang, Jixiang
Hu, Shan
Li, Chao
Ding, Shigang
Yu, Honggang
Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
title Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
title_full Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
title_fullStr Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
title_full_unstemmed Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
title_short Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
title_sort expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8159578/
https://www.ncbi.nlm.nih.gov/pubmed/34079883
http://dx.doi.org/10.1055/a-1372-2789
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