Deep‐learning system for real‐time differentiation between Crohn's disease, intestinal Behçet's disease, and intestinal tuberculosis

结肠镜检查 医学 肠结核 人工智能 克罗恩病 深度学习 卷积神经网络 接收机工作特性 鉴别诊断 胃肠病学 疾病 模式识别(心理学) 内科学 病理 计算机科学 结直肠癌 癌症
作者
Jung Min Kim,Jun Gu Kang,Sung‐Won Kim,Jae Hee Cheon
出处
期刊:Journal of Gastroenterology and Hepatology [Wiley]
卷期号:36 (8): 2141-2148 被引量:30
标识
DOI:10.1111/jgh.15433
摘要

Pattern analysis of big data can provide a superior direction for the clinical differentiation of diseases with similar endoscopic findings. This study aimed to develop a deep-learning algorithm that performs differential diagnosis between intestinal Behçet's disease (BD), Crohn's disease (CD), and intestinal tuberculosis (ITB) using colonoscopy images.The typical pattern for each disease was defined as a typical image. We implemented a convolutional neural network (CNN) using Pytorch and visualized a deep-learning model through Gradient-weighted Class Activation Mapping. The performance of the algorithm was evaluated using the area under the receiver operating characteristic curve (AUROC).A total of 6617 colonoscopy images of 211 CD, 299 intestinal BD, and 217 ITB patients were used. The accuracy of the algorithm for discriminating the three diseases (all-images: 65.15% vs typical images: 72.01%, P = 0.024) and discriminating between intestinal BD and CD (all-images: 78.15% vs typical images: 85.62%, P = 0.010) was significantly different between all-images and typical images. The CNN clearly differentiated colonoscopy images of the diseases (AUROC from 0.7846 to 0.8586). Algorithmic prediction AUROC for typical images ranged from 0.8211 to 0.9360.This study found that a deep-learning model can discriminate between colonoscopy images of intestinal BD, CD, and ITB. In particular, the algorithm demonstrated superior discrimination ability for typical images. This approach presents a beneficial method for the differential diagnosis of the diseases.
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