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利用自主诊断人工智能系统对西班牙人群进行可转诊糖尿病视网膜病变的自动筛查验证。

Validation of Automated Screening for Referable Diabetic Retinopathy With an Autonomous Diagnostic Artificial Intelligence System in a Spanish Population.

机构信息

Dx Technologies Inc, Coralville, IA, USA.

European Innovative Biomedicine Institute (EIBI), Cantabria, Spain.

出版信息

J Diabetes Sci Technol. 2021 May;15(3):655-663. doi: 10.1177/1932296820906212. Epub 2020 Mar 16.

Abstract

PURPOSE

The purpose of this study is to compare the diagnostic performance of an autonomous artificial intelligence (AI) system for the diagnosis of referable diabetic retinopathy (RDR) to manual grading by Spanish ophthalmologists.

METHODS

Subjects with type 1 and 2 diabetes participated in a diabetic retinopathy (DR) screening program in 2011 to 2012 in Valencia (Spain), and two images per eye were collected according to their standard protocol. Mydriatic drops were used in all patients. Retinal images-one disc and one fovea centered-were obtained under the Medical Research Ethics Committee approval and de-identified. Exams were graded by the autonomous AI system (IDx-DR, Coralville, Iowa, United States), and manually by masked ophthalmologists using adjudication. The outputs of the AI system and manual adjudicated grading were compared using sensitivity and specificity for diagnosis of both RDR and vision-threatening diabetic retinopathy (VTDR).

RESULTS

A total of 2680 subjects were included in the study. According to manual grading, prevalence of RDR was 111/2680 (4.14%) and of VTDR was 69/2680 (2.57%). Against manual grading, the AI system had a 100% (95% confidence interval [CI]: 97%-100%) sensitivity and 81.82% (95% CI: 80%-83%) specificity for RDR, and a 100% (95% CI: 95%-100%) sensitivity and 94.64% (95% CI: 94%-95%) specificity for VTDR.

CONCLUSION

Compared to manual grading by ophthalmologists, the autonomous diagnostic AI system had high sensitivity (100%) and specificity (82%) for diagnosing RDR and macular edema in people with diabetes in a screening program. Because of its immediate, point of care diagnosis, autonomous diagnostic AI has the potential to increase the accessibility of RDR screening in primary care settings.

摘要

目的

本研究旨在比较自主人工智能(AI)系统对可转诊糖尿病视网膜病变(RDR)的诊断性能与西班牙眼科医生手动分级的差异。

方法

2011 年至 2012 年,患有 1 型和 2 型糖尿病的受试者参加了瓦伦西亚(西班牙)的糖尿病视网膜病变(DR)筛查计划,每只眼采集了两张图像,采集过程符合其标准方案。所有患者均使用散瞳滴剂。在医学研究伦理委员会的批准和去识别化下,获取一张视盘和一张黄斑中心凹的视网膜图像。受检者接受自主 AI 系统(IDx-DR,爱荷华州科勒尔维尔)和经盲法的眼科医生手动分级。使用灵敏度和特异性比较 AI 系统和手动分级的输出,以诊断 RDR 和威胁视力的糖尿病性视网膜病变(VTDR)。

结果

本研究共纳入 2680 名受试者。根据手动分级,RDR 的患病率为 111/2680(4.14%),VTDR 的患病率为 69/2680(2.57%)。与手动分级相比,AI 系统对 RDR 的灵敏度为 100%(95%置信区间[CI]:97%-100%),特异性为 81.82%(95% CI:80%-83%),对 VTDR 的灵敏度为 100%(95% CI:95%-100%),特异性为 94.64%(95% CI:94%-95%)。

结论

与眼科医生的手动分级相比,自主诊断 AI 系统在筛查计划中对糖尿病患者的 RDR 和黄斑水肿具有较高的灵敏度(100%)和特异性(82%)。由于其即时、即时诊断的特点,自主诊断 AI 有可能增加初级保健环境中 RDR 筛查的可及性。

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