Wang Yen-Po, Jheng Ying-Chun, Sung Kuang-Yi, Lin Hung-En, Hsin I-Fang, Chen Ping-Hsien, Chu Yuan-Chia, Lu David, Wang Yuan-Jen, Hou Ming-Chih, Lee Fa-Yauh, Lu Ching-Liang
Endoscopy Center for Diagnosis and Treatment, Department of Medicine, Taipei Veterans General Hospital, Taipei 112, Taiwan.
Division of Gastroenterology, Department of Medicine, Taipei Veterans General Hospital, Taipei 112, Taiwan.
Diagnostics (Basel). 2022 Mar 1;12(3):613. doi: 10.3390/diagnostics12030613.
Background: Adequate bowel cleansing is important for colonoscopy performance evaluation. Current bowel cleansing evaluation scales are subjective, with a wide variation in consistency among physicians and low reported rates of accuracy. We aim to use machine learning to develop a fully automatic segmentation method for the objective evaluation of the adequacy of colon preparation. Methods: Colonoscopy videos were retrieved from a video data cohort and transferred to qualified images, which were randomly divided into training, validation, and verification datasets. The fecal residue was manually segmented. A deep learning model based on the U-Net convolutional network architecture was developed to perform automatic segmentation. The performance of the automatic segmentation was evaluated on the overlap area with the manual segmentation. Results: A total of 10,118 qualified images from 119 videos were obtained. The model averaged 0.3634 s to segmentate one image automatically. The models produced a strong high-overlap area with manual segmentation, with 94.7% ± 0.67% of that area predicted by our AI model, which correlated well with the area measured manually (r = 0.915, p < 0.001). The AI system can be applied in real-time qualitatively and quantitatively. Conclusions: We established a fully automatic segmentation method to rapidly and accurately mark the fecal residue-coated mucosa for the objective evaluation of colon preparation.
充分的肠道清洁对于结肠镜检查性能评估很重要。当前的肠道清洁评估量表是主观的,医生之间的一致性差异很大,且报告的准确率较低。我们旨在使用机器学习开发一种全自动分割方法,用于客观评估结肠准备的充分性。方法:从视频数据队列中检索结肠镜检查视频,并转换为合格图像,这些图像被随机分为训练、验证和验证数据集。对粪便残渣进行手动分割。开发了一种基于U-Net卷积网络架构的深度学习模型来进行自动分割。在与手动分割的重叠区域上评估自动分割的性能。结果:共获得来自119个视频的10118张合格图像。该模型自动分割一张图像平均用时0.3634秒。这些模型与手动分割产生了很强的高重叠区域,我们的人工智能模型预测的该区域占手动测量区域的94.7%±0.67%,与手动测量区域相关性良好(r = 0.915,p < 0.001)。该人工智能系统可进行实时定性和定量应用。结论:我们建立了一种全自动分割方法,用于快速准确地标记粪便残渣覆盖的黏膜,以客观评估结肠准备情况。