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新型深度学习系统对上消化道内镜图像质量的评估。

Upper endoscopy photodocumentation quality evaluation with novel deep learning system.

机构信息

Graduate Institute of Biomedical Electronics and Bioinformatics, National Taiwan University, Taipei, Taiwan.

Artificial Intelligence Development Center, Changhua Christian Hospital, Changhua, Taiwan.

出版信息

Dig Endosc. 2022 Jul;34(5):994-1001. doi: 10.1111/den.14179. Epub 2021 Dec 1.

Abstract

OBJECTIVES

Visualization and photodocumentation during endoscopy procedures are suggested to be one indicator for endoscopy performance quality. However, this indicator is difficult to measure and audit manually in clinical practice. Artificial intelligence (AI) is an emerging technology that may solve this problem.

METHODS

A deep learning model with an accuracy of 96.64% was developed from 15,305 images for upper endoscopy anatomy classification in the unit. Endoscopy images for asymptomatic patients receiving screening endoscopy were evaluated with this model to assess the completeness of photodocumentation rate.

RESULTS

A total of 15,723 images from 472 upper endoscopies performed by 12 endoscopists were enrolled. The complete photodocumentation rate from the pharynx to the duodenum was 53.8% and from the esophagus to the duodenum was 78.0% in this study. Endoscopists with a higher adenoma detection rate had a higher complete examination rate from the pharynx to duodenum (60.0% vs. 38.7%, P < 0.0001) and from esophagus to duodenum (83.0% vs. 65.7%, P < 0.0001) compared with endoscopists with lower adenoma detection rate. The pharynx, gastric angle, gastric retroflex view, gastric antrum, and the first portion of duodenum are likely to be missed by endoscopists with lower adenoma detection rates.

CONCLUSIONS

We report the use of a deep learning model to audit endoscopy photodocumentation quality in our unit. Endoscopists with better performance in colonoscopy had a better performance for this quality indicator. The use of such an AI system may help the endoscopy unit audit endoscopy performance.

摘要

目的

内窥镜检查过程中的可视化和摄影记录被认为是内窥镜检查性能质量的一个指标。然而,在临床实践中,这个指标很难手动测量和审核。人工智能(AI)是一种新兴技术,可能解决这个问题。

方法

从科室开发的用于上消化道内镜解剖分类的深度学习模型中,对 15305 张图像的准确率为 96.64%。使用该模型评估无症状患者接受筛查性内镜检查的内镜图像,以评估摄影记录完整率。

结果

共纳入 12 名内镜医师进行的 472 例上消化道内镜检查的 15723 张图像。本研究中,从咽部到十二指肠的完整摄影记录率为 53.8%,从食管到十二指肠的完整摄影记录率为 78.0%。腺瘤检出率较高的内镜医师,从咽部到十二指肠(60.0%比 38.7%,P<0.0001)和从食管到十二指肠(83.0%比 65.7%,P<0.0001)的完整检查率较高。腺瘤检出率较低的内镜医师更有可能遗漏咽部、胃角、胃反转视图、胃窦和十二指肠第一段。

结论

我们报告了在我们科室使用深度学习模型审核内镜摄影记录质量。结肠镜检查表现较好的内镜医师在这项质量指标上表现更好。使用这种人工智能系统可能有助于内镜科室审核内镜性能。

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