Costa Dalila, Vieira Pedro, Pinto Catarina, Arroja Bruno, Leal Tiago, Mendes Sofia, Gonçalves Raquel, Lima Carlos, Rolanda Carla
Life and Health Sciences Research Institute (ICVS), School of Medicine, University of Minho, Braga, Portugal.
ICVS/3B's, PT Government Associate Laboratory, Guimarães/Braga, Portugal.
GE Port J Gastroenterol. 2021 Feb;28(2):87-96. doi: 10.1159/000510024. Epub 2020 Oct 20.
Video capsule endoscopy (VCE) revolutionized the diagnosis and management of obscure gastrointestinal bleeding, though the rate of detection of small bowel lesions by the physician is still disappointing. Our group developed a novel algorithm (CMEMS-Uminho) to automatically detect angioectasias which display greater accuracy in VCE static frames than other methods previously published. We aimed to evaluate the algorithm overall performance and assess its diagnostic yield and usability in clinical practice.
Algorithm overall performance was determined using 54 full-length VCE recordings. To assess its diagnostic yield and usability in clinical practice, 38 VCE examinations with the clinical diagnosis of angioectasias consecutively performed (2017-2018) were evaluated by three physicians with different experiences. The CMEMS-Uminho algorithm was also applied. The performance of the CMEMS-Uminho algorithm was defined by a positive concordance between a frame automatically selected by the software and a study independent capsule endoscopist.
Overall performance in complete VCE recordings was 77.7%, and diagnostic yield was 94.7%. There were significant differences between physicians in regard to global detection rate ( < 0.001), detection rate per capsule ( < 0.001), diagnostic yield ( = 0.007), true positive rate ( < 0.001), time ( < 0.001), and speed viewing ( < 0.001). The application of CMEMS-Uminho algorithm significantly enhanced all readers' global detection rate ( < 0.001) and the differences between them were no longer observed.
The CMEMS-Uminho algorithm detained a good overall performance and was able to enhance physicians' performance, suggesting a potential usability of this tool in clinical practice.
视频胶囊内镜检查(VCE)彻底改变了不明原因胃肠道出血的诊断和管理方式,不过医生对小肠病变的检出率仍然不尽人意。我们团队开发了一种新型算法(CMEMS-米尼奥算法),用于自动检测血管扩张,该算法在VCE静态图像中的准确性高于此前发表的其他方法。我们旨在评估该算法的整体性能,并评估其在临床实践中的诊断率及可用性。
使用54份完整的VCE记录来确定算法的整体性能。为评估其在临床实践中的诊断率及可用性,由三名经验不同的医生对2017年至2018年连续进行的38例临床诊断为血管扩张的VCE检查进行评估。同时也应用了CMEMS-米尼奥算法。CMEMS-米尼奥算法的性能通过软件自动选择的图像与独立的胶囊内镜专家的判断之间的阳性一致性来定义。
完整VCE记录中的整体性能为77.7%,诊断率为94.7%。医生之间在总体检出率(<0.001)、每个胶囊的检出率(<0.001)、诊断率(=0.007)、真阳性率(<0.001)、时间(<0.001)和快速查看(<0.001)方面存在显著差异。CMEMS-米尼奥算法的应用显著提高了所有读者的总体检出率(<0.001),且不再观察到他们之间的差异。
CMEMS-米尼奥算法具有良好的整体性能,能够提高医生的表现,表明该工具在临床实践中具有潜在的可用性。