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深度学习系统辅助普通眼科医生诊断视网膜前膜分级的临床评估

Clinical evaluation of deep learning systems for assisting in the diagnosis of the epiretinal membrane grade in general ophthalmologists.

作者信息

Yan Yan, Huang Xiaoling, Jiang Xiaoyu, Gao Zhiyuan, Liu Xindi, Jin Kai, Ye Juan

机构信息

Eye Center, The Second Affiliated Hospital, School of Medicine, Zhejiang University, Hangzhou, 310009, China.

College of Control Science and Engineering, Zhejiang University, Hangzhou, 310027, China.

出版信息

Eye (Lond). 2024 Mar;38(4):730-736. doi: 10.1038/s41433-023-02765-9. Epub 2023 Oct 17.

Abstract

BACKGROUND

Epiretinal membrane (ERM) is a common age-related retinal disease detected by optical coherence tomography (OCT), with a prevalence of 34.1% among people over 60 years old. This study aims to develop artificial intelligence (AI) systems to assist in the diagnosis of ERM grade using OCT images and to clinically evaluate the potential benefits and risks of our AI systems with a comparative experiment.

METHODS

A segmentation deep learning (DL) model that segments retinal features associated with ERM severity and a classification DL model that grades the severity of ERM were developed based on an OCT dataset obtained from three hospitals. A comparative experiment was conducted to compare the performance of four general ophthalmologists with and without assistance from the AI in diagnosing ERM severity.

RESULTS

The segmentation network had a pixel accuracy (PA) of 0.980 and a mean intersection over union (MIoU) of 0.873, while the six-classification network had a total accuracy of 81.3%. The diagnostic accuracy scores of the four ophthalmologists increased with AI assistance from 81.7%, 80.7%, 78.0%, and 80.7% to 87.7%, 86.7%, 89.0%, and 91.3%, respectively, while the corresponding time expenditures were reduced. The specific results of the study as well as the misinterpretations of the AI systems were analysed.

CONCLUSION

Through our comparative experiment, the AI systems proved to be valuable references for medical diagnosis and demonstrated the potential to accelerate clinical workflows. Systematic efforts are needed to ensure the safe and rapid integration of AI systems into ophthalmic practice.

摘要

背景

视网膜前膜(ERM)是一种常见的与年龄相关的视网膜疾病,可通过光学相干断层扫描(OCT)检测到,在60岁以上人群中的患病率为34.1%。本研究旨在开发人工智能(AI)系统,以利用OCT图像辅助诊断ERM分级,并通过对比实验对我们的AI系统的潜在益处和风险进行临床评估。

方法

基于从三家医院获得的OCT数据集,开发了一个分割视网膜与ERM严重程度相关特征的深度学习(DL)模型和一个对ERM严重程度进行分级的分类DL模型。进行了一项对比实验,以比较四位普通眼科医生在有无AI辅助下诊断ERM严重程度的表现。

结果

分割网络的像素准确率(PA)为0.980,平均交并比(MIoU)为0.873,而六分类网络的总准确率为81.3%。四位眼科医生在AI辅助下的诊断准确率得分分别从81.7%、80.7%、78.0%和80.7%提高到87.7%、86.7%、89.0%和91.3%,同时相应的时间支出减少。分析了研究的具体结果以及AI系统的误判情况。

结论

通过我们的对比实验,AI系统被证明是医学诊断的有价值参考,并展示了加速临床工作流程的潜力。需要做出系统性努力,以确保AI系统安全、快速地融入眼科实践。

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