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)-base...
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Georg Thieme Verlag KG
2021-05-01
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doaj-88991862649e48b3891d641cc8e570df2021-05-27T22:43:59ZengGeorg Thieme Verlag KGEndoscopy International Open2364-37222196-97362021-05-010906E955E96410.1055/a-1372-2789Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trialGanggang Mu0Yijie Zhu1Zhanyue Niu2Hongyan Li3Lianlian Wu4Jing Wang5Renquan Luo6Xiao Hu7Yanxia Li8Jixiang Zhang9Shan Hu10Chao Li11Shigang Ding12Honggang Yu13Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Peking University Third Hospital, Beijing, ChinaDepartment of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Wuhan EndoAngel Medical Technology Company, Wuhan, ChinaDepartment of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China Wuhan EndoAngel Medical Technology Company, Wuhan, ChinaWuhan EndoAngel Medical Technology Company, Wuhan, ChinaPeking University Third Hospital, Beijing, ChinaDepartment of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, China 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.http://www.thieme-connect.de/DOI/DOI?10.1055/a-1372-2789 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ganggang Mu Yijie Zhu Zhanyue Niu Hongyan Li Lianlian Wu Jing Wang Renquan Luo Xiao Hu Yanxia Li Jixiang Zhang Shan Hu Chao Li Shigang Ding Honggang Yu |
spellingShingle |
Ganggang Mu Yijie Zhu Zhanyue Niu Hongyan Li Lianlian Wu Jing Wang Renquan Luo Xiao Hu Yanxia Li Jixiang Zhang Shan Hu Chao Li Shigang Ding Honggang Yu Expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial Endoscopy International Open |
author_facet |
Ganggang Mu Yijie Zhu Zhanyue Niu Hongyan Li Lianlian Wu Jing Wang Renquan Luo Xiao Hu Yanxia Li Jixiang Zhang Shan Hu Chao Li Shigang Ding Honggang Yu |
author_sort |
Ganggang Mu |
title |
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_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_sort |
expert-level classification of gastritis by endoscopy using deep learning: a multicenter diagnostic trial |
publisher |
Georg Thieme Verlag KG |
series |
Endoscopy International Open |
issn |
2364-3722 2196-9736 |
publishDate |
2021-05-01 |
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. |
url |
http://www.thieme-connect.de/DOI/DOI?10.1055/a-1372-2789 |
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