Department of Internal Medicine, Section of Gastroenterology, Hospital of South West Jutland, Esbjerg, Denmark.
Department of Regional Health Research, University of Southern Denmark, Odense, Denmark.
J Crohns Colitis. 2024 Jan 27;18(1):75-81. doi: 10.1093/ecco-jcc/jjad131.
Pan-enteric capsule endoscopy [PCE] is a highly sensitive but time-consuming tool for detecting pathology. Artificial intelligence [AI] algorithms might offer a possibility to assist in the review and reduce the analysis time of PCE. This study examines the agreement between PCE assessments aided by AI technology and standard evaluations, in patients suspected of Crohn's disease [CD].
PCEs from a prospective, blinded, multicentre study, including patients suspected of CD, were processed by the deep learning solution AXARO® [Augmented Endoscopy, Paris, France]. Based on the image output, two observers classified the patient's PCE as normal or suggestive of CD, ulcerative colitis, or cancer. The primary outcome was per-patient sensitivities and specificities for detecting CD and inflammatory bowel disease [IBD]. Complete reading of PCE served as the reference standard.
A total of 131 patients' PCEs were analysed, with a median recording time of 303 min. The AXARO® framework reduced output to a median of 470 images [2.1%] per patient, and the pooled median review time was 3.2 min per patient. For detecting CD, the observers had a sensitivity of 96% and 92% and a specificity of 93% and 90%, respectively. For the detection of IBD, both observers had a sensitivity of 97% and had a specificity of 91% and 90%, respectively. The negative predictive value was 95% for CD and 97% for IBD.
Using the AXARO® framework reduced the initial review time substantially while maintaining high diagnostic accuracy-suggesting its use as a rapid tool to rule out IBD in PCEs of patients suspected of Crohn's disease.
全肠道胶囊内镜[PCE]是一种高度敏感但耗时的检测病理学的工具。人工智能[AI]算法可能为协助审查和缩短 PCE 的分析时间提供一种可能性。本研究检查了在疑似克罗恩病[CD]的患者中,人工智能技术辅助的 PCE 评估与标准评估之间的一致性。
使用深度学习解决方案 AXARO®[法国巴黎的增强内镜]处理了一项前瞻性、盲法、多中心研究中疑似 CD 的患者的 PCE。基于图像输出,两名观察者将患者的 PCE 分类为正常或提示 CD、溃疡性结肠炎或癌症。主要结局是检测 CD 和炎症性肠病[IBD]的每位患者的敏感性和特异性。完整阅读 PCE 作为参考标准。
共分析了 131 名患者的 PCE,中位记录时间为 303 分钟。AXARO®框架将输出减少到每位患者中位数为 470 张图像[2.1%],每位患者的汇总中位数审查时间为 3.2 分钟。对于检测 CD,观察者的敏感性分别为 96%和 92%,特异性分别为 93%和 90%。对于 IBD 的检测,两名观察者的敏感性均为 97%,特异性分别为 91%和 90%。CD 的阴性预测值为 95%,IBD 的阴性预测值为 97%。
使用 AXARO®框架大大减少了初始审查时间,同时保持了高诊断准确性-表明其可作为排除疑似 CD 患者 PCE 中 IBD 的快速工具。