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Rapid Endoscopic Diagnosis of Benign Ulcerative Colorectal Diseases With an Artificial Intelligence Contextual Framework.

Authors :
Luo, Xiaobei
Wang, Jiahao
Tan, Chuanchuan
Dou, Qi
Han, Zelong
Wang, Zhenjiang
Tasnim, Farah
Wang, Xiyu
Zhan, Qiang
Li, Xiang
Zhou, Qunyan
Cheng, Jianbin
Liao, Fabiao
Yip, Hon Chi
Jiang, Jiayi
Tan, Robby T.
Liu, Side
Yu, Hanry
Source :
Gastroenterology (00165085); Aug2024, Vol. 167 Issue 3, p591-591, 1p
Publication Year :
2024

Abstract

Benign ulcerative colorectal diseases (UCDs) such as ulcerative colitis, Crohn's disease, ischemic colitis, and intestinal tuberculosis share similar phenotypes with different etiologies and treatment strategies. To accurately diagnose closely related diseases like UCDs, we hypothesize that contextual learning is critical in enhancing the ability of the artificial intelligence models to differentiate the subtle differences in lesions amidst the vastly divergent spatial contexts. White-light colonoscopy datasets of patients with confirmed UCDs and healthy controls were retrospectively collected. We developed a Multiclass Contextual Classification (MCC) model that can differentiate among the mentioned UCDs and healthy controls by incorporating the tissue object contexts surrounding the individual lesion region in a scene and spatial information from other endoscopic frames (video-level) into a unified framework. Internal and external datasets were used to validate the model's performance. Training datasets included 762 patients, and the internal and external testing cohorts included 257 patients and 293 patients, respectively. Our MCC model provided a rapid reference diagnosis on internal test sets with a high averaged area under the receiver operating characteristic curve (image-level: 0.950 and video-level: 0.973) and balanced accuracy (image-level: 76.1% and video-level: 80.8%), which was superior to junior endoscopists (accuracy: 71.8%, P <.0001) and similar to experts (accuracy: 79.7%, P =.732). The MCC model achieved an area under the receiver operating characteristic curve of 0.988 and balanced accuracy of 85.8% using external testing datasets. These results enable this model to fit in the routine endoscopic workflow, and the contextual framework to be adopted for diagnosing other closely related diseases. [Display omitted] The study developed an artificial intelligence model that can differentiate among various ulcerative benign colorectal diseases including ulcerative colitis, Crohn's disease, ischemic colitis, and intestinal tuberculosis from colonoscopy still images and videos. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00165085
Volume :
167
Issue :
3
Database :
Supplemental Index
Journal :
Gastroenterology (00165085)
Publication Type :
Academic Journal
Accession number :
178357264
Full Text :
https://doi.org/10.1053/j.gastro.2024.03.039