Graduate Institute of Biomedical Electronics and Bioinformatics, National Taiwan University, Taipei, Taiwan.
Department of Computer Science and Information Engineering, National Taiwan University, Taipei, Taiwan.
Surg Endosc. 2022 Sep;36(9):6446-6455. doi: 10.1007/s00464-021-08993-y. Epub 2022 Feb 7.
Quality indicators should be assessed and monitored to improve colonoscopy quality in clinical practice. Endoscopists must enter relevant information in the endoscopy reporting system to facilitate data collection, which may be inaccurate. The current study aimed to develop a full deep learning-based algorithm to identify and analyze intra-procedural colonoscopy quality indicators based on endoscopy images obtained during the procedure.
A deep learning system for classifying colonoscopy images for quality assurance purposes was developed and its performance was assessed with an independent dataset. The system was utilized to analyze captured images and results were compared with those of real-world reports.
In total, 10,417 images from the hospital endoscopy database and 3157 from Hyper-Kvasir open dataset were utilized to develop the quality assurance algorithm. The overall accuracy of the algorithm was 96.72% and that of the independent test dataset was 94.71%. Moreover, 761 real-world reports and colonoscopy images were analyzed. The accuracy of electronic reports about cecal intubation rate was 99.34% and that of the algorithm was 98.95%. The agreement rate for the assessment of polypectomy rates using the electronic reports and the algorithm was 0.87 (95% confidence interval 0.83-0.90). A good correlation was found between the withdrawal time calculated using the algorithm and that entered by the physician (correlation coefficient r = 0.959, p < 0.0001).
We proposed a novel deep learning-based algorithm that used colonoscopy images for quality assurance purposes. This model can be used to automatically assess intra-procedural colonoscopy quality indicators in clinical practice.
为了提高临床实践中结肠镜检查的质量,应评估和监测质量指标。内镜医师必须在内镜报告系统中输入相关信息,以便于数据收集,但这可能并不准确。本研究旨在开发一种完全基于深度学习的算法,以根据术中获得的内镜图像识别和分析内镜检查过程中的质量指标。
开发了一种用于分类结肠镜图像的深度学习系统,以进行质量保证,并使用独立数据集评估其性能。该系统用于分析捕获的图像,并将结果与真实报告进行比较。
共使用来自医院内镜数据库的 10417 张图像和 Hyper-Kvasir 开放数据集的 3157 张图像来开发质量保证算法。该算法的总体准确率为 96.72%,独立测试数据集的准确率为 94.71%。此外,分析了 761 份真实报告和结肠镜图像。电子报告中盲肠插管率的准确率为 99.34%,算法的准确率为 98.95%。使用电子报告和算法评估息肉切除术率的评估一致性率为 0.87(95%置信区间 0.83-0.90)。算法计算的退出时间与医生输入的退出时间之间存在良好的相关性(相关系数 r=0.959,p<0.0001)。
我们提出了一种新的基于深度学习的算法,该算法使用结肠镜图像进行质量保证。该模型可用于自动评估临床实践中内镜检查过程中的质量指标。