Department of Diagnostic Imaging, Sheba Medical Center, Tel Hashomer, Israel; Sackler Medical School, Tel Aviv University, Tel Aviv, Israel; DeepVision Lab, Sheba Medical Center, Tel Hashomer, Israel.
Sackler Medical School, Tel Aviv University, Tel Aviv, Israel; Department of Anesthesia, Rabin Medical Center, Beilinson Hospital, Petach Tikvah, Israel.
Gastrointest Endosc. 2020 Oct;92(4):831-839.e8. doi: 10.1016/j.gie.2020.04.039. Epub 2020 Apr 22.
Deep learning is an innovative algorithm based on neural networks. Wireless capsule endoscopy (WCE) is considered the criterion standard for detecting small-bowel diseases. Manual examination of WCE is time-consuming and can benefit from automatic detection using artificial intelligence (AI). We aimed to perform a systematic review of the current literature pertaining to deep learning implementation in WCE.
We conducted a search in PubMed for all original publications on the subject of deep learning applications in WCE published between January 1, 2016 and December 15, 2019. Evaluation of the risk of bias was performed using tailored Quality Assessment of Diagnostic Accuracy Studies-2. Pooled sensitivity and specificity were calculated. Summary receiver operating characteristic curves were plotted.
Of the 45 studies retrieved, 19 studies were included. All studies were retrospective. Deep learning applications for WCE included detection of ulcers, polyps, celiac disease, bleeding, and hookworm. Detection accuracy was above 90% for most studies and diseases. Pooled sensitivity and specificity for ulcer detection were .95 (95% confidence interval [CI], .89-.98) and .94 (95% CI, .90-.96), respectively. Pooled sensitivity and specificity for bleeding or bleeding source were .98 (95% CI, .96-.99) and .99 (95% CI, .97-.99), respectively.
Deep learning has achieved excellent performance for the detection of a range of diseases in WCE. Notwithstanding, current research is based on retrospective studies with a high risk of bias. Thus, future prospective, multicenter studies are necessary for this technology to be implemented in the clinical use of WCE.
深度学习是一种基于神经网络的创新算法。无线胶囊内镜(WCE)被认为是检测小肠疾病的金标准。WCE 的手动检查耗时且可以受益于人工智能(AI)的自动检测。我们旨在对当前有关 WCE 中深度学习应用的文献进行系统回顾。
我们在 PubMed 上搜索了 2016 年 1 月 1 日至 2019 年 12 月 15 日期间发表的所有关于 WCE 中深度学习应用主题的原始出版物。使用定制的诊断准确性研究质量评估 2 对偏倚风险进行评估。计算了合并的敏感性和特异性。绘制了汇总受试者工作特征曲线。
从检索到的 45 项研究中,纳入了 19 项研究。所有研究均为回顾性研究。WCE 中深度学习的应用包括溃疡、息肉、乳糜泻、出血和钩虫的检测。大多数研究和疾病的检测准确率均高于 90%。溃疡检测的合并敏感性和特异性分别为.95(95%置信区间 [CI],.89-.98)和.94(95% CI,.90-.96)。出血或出血源的合并敏感性和特异性分别为.98(95% CI,.96-.99)和.99(95% CI,.97-.99)。
深度学习在 WCE 中检测多种疾病方面取得了优异的性能。尽管如此,当前的研究基于偏倚风险高的回顾性研究。因此,需要进行前瞻性、多中心研究,以便将这项技术应用于 WCE 的临床使用。