胶囊内镜
医学
炎症性肠病
内窥镜检查
克罗恩病
疾病
胃肠道
胶囊
结肠镜检查
炎症性肠病
胃肠病学
放射科
内科学
生物
癌症
结直肠癌
植物
作者
Offir Ukashi,Shelly Soffer,Eyal Klang,R Eliakim,Shomron Ben-Horin,Uri Kopylov
出处
期刊:Gut and Liver
[The Editorial Office of Gut and Liver]
日期:2023-06-12
摘要
Video capsule endoscopy (VCE) of the small-bowel has been proven to accurately diagnose small-bowel inflammation and to predict future clinical flares among patients with Crohn's disease (CD). In 2017, the panenteric capsule (PillCam Crohn's system) was introduced for the first time, enabling a reliable evaluation of the whole small and large intestines. The great advantage of visualization of both parts of the gastrointestinal tract in a feasible and single procedure, holds a significant promise for patients with CD, enabling determination of the disease extent and severity, and potentially optimize disease management. In recent years, applications of machine learning, for VCE have been well studied, demonstrating impressive performance and high accuracy for the detection of various gastrointestinal pathologies, among them inflammatory bowel disease lesions. The use of artificial neural network models has been proven to accurately detect/classify and grade CD lesions, and shorten the VCE reading time, resulting in a less tedious process with a potential to minimize missed diagnosis and better predict clinical outcomes. Nevertheless, prospective, and real-world studies are essential to precisely examine artificial intelligence applications in real-life inflammatory bowel disease practice.
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