Diabetic retinopathy screening with confocal fundus camera and artificial intelligence - assisted grading.

IF 1.4 4区 医学 Q3 OPHTHALMOLOGY
A Piatti, C Rui, S Gazzina, B Tartaglino, F Romeo, R Manti, M Doglio, E Nada, C B Giorda
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引用次数: 0

Abstract

Purpose: Screening for diabetic retinopathy (DR) by ophthalmologists is costly and labour-intensive. Artificial Intelligence (AI) for automated DR detection could be a clinically and economically alternative. We assessed the performance of a confocal fundus imaging system (DRSplus, Centervue SpA), coupled with an AI algorithm (RetCAD, Thirona B.V.) in a real-world setting.

Methods: 45° non-mydriatic retinal images from 506 patients with diabetes were graded both by an ophthalmologist and by the AI algorithm, according to the International Clinical Diabetic Retinopathy severity scale. Less than moderate retinopathy (DR scores 0, 1) was defined as non-referable, while more severe stages were defined as referable retinopathy. The gradings were then compared both at eye-level and patient-level. Key metrics included sensitivity, specificity all measured with a 95% Confidence Interval.

Results: The percentage of ungradable eyes according to the AI was 2.58%. The performances of the AI algorithm for detecting referable DR were 97.18% sensitivity, 93.73% specificity at eye-level and 98.70% sensitivity and 91.06% specificity at patient-level.

Conclusions: DRSplus paired with RetCAD represents a reliable DR screening solution in a real-world setting. The high sensitivity of the system ensures that almost all patients requiring medical attention for DR are referred to an ophthalmologist for further evaluation.

利用共焦眼底照相机和人工智能辅助分级筛查糖尿病视网膜病变。
目的:由眼科医生进行糖尿病视网膜病变(DR)筛查既昂贵又耗费人力。人工智能(AI)可自动检测糖尿病视网膜病变,在临床和经济上都是一种替代方案。我们评估了共焦眼底成像系统(DRSplus,Centervue SpA 公司)与人工智能算法(RetCAD,Thirona B.V.公司)在实际环境中的性能。中度以下视网膜病变(DR 评分 0、1)被定义为不可转诊,而更严重的阶段被定义为可转诊视网膜病变。然后对眼部和患者的分级进行比较。关键指标包括灵敏度、特异性和 95% 置信区间:结果:根据人工智能,无法分级的眼睛比例为 2.58%。人工智能算法检测可转诊 DR 的灵敏度为 97.18%,眼部特异性为 93.73%,患者一级的灵敏度为 98.70%,特异性为 91.06%:DRSplus与RetCAD的搭配是现实世界中一种可靠的DR筛查解决方案。该系统的高灵敏度确保了几乎所有需要就医的 DR 患者都能被转诊至眼科医生接受进一步评估。
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来源期刊
CiteScore
3.60
自引率
0.00%
发文量
372
审稿时长
3-8 weeks
期刊介绍: The European Journal of Ophthalmology was founded in 1991 and is issued in print bi-monthly. It publishes only peer-reviewed original research reporting clinical observations and laboratory investigations with clinical relevance focusing on new diagnostic and surgical techniques, instrument and therapy updates, results of clinical trials and research findings.
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