Burlina Silvia, Radin Sandra, Poggiato Marzia, Cioccoloni Dario, Raimondo Daniele, Romanello Giovanni, Tommasi Chiara, Lombardi Simonetta
Diabetes and Endocrinology Unit, ULSS8 Berica, Arzignano, Veneto, VI, Italy.
Eye Unit, ULSS 8 Berica, Montecchio Maggiore, Veneto, VI, Italy.
Acta Diabetol. 2024 Dec;61(12):1603-1607. doi: 10.1007/s00592-024-02333-x. Epub 2024 Jul 12.
Periodic screening for diabetic retinopathy (DR) is effective for preventing blindness. Artificial intelligence (AI) systems could be useful for increasing the screening of DR in diabetic patients. The aim of this study was to compare the performance of the DAIRET system in detecting DR to that of ophthalmologists in a real-world setting.
Fundus photography was performed with a nonmydriatic camera in 958 consecutive patients older than 18 years who were affected by diabetes and who were enrolled in the DR screening in the Diabetes and Endocrinology Unit and in the Eye Unit of ULSS8 Berica (Italy) between June 2022 and June 2023. All retinal images were evaluated by DAIRET, which is a machine learning algorithm based on AI. In addition, all the images obtained were analysed by an ophthalmologist who graded the images. The results obtained by DAIRET were compared with those obtained by the ophthalmologist.
We included 958 patients, but only 867 (90.5%) patients had retinal images sufficient for evaluation by a human grader. The sensitivity for detecting cases of moderate DR and above was 1 (100%), and the sensitivity for detecting cases of mild DR was 0.84 ± 0.03. The specificity of detecting the absence of DR was lower (0.59 ± 0.04) because of the high number of false-positives.
DAIRET showed an optimal sensitivity in detecting all cases of referable DR (moderate DR or above) compared with that of a human grader. On the other hand, the specificity of DAIRET was low because of the high number of false-positives, which limits its cost-effectiveness.
定期筛查糖尿病视网膜病变(DR)对预防失明有效。人工智能(AI)系统可能有助于增加糖尿病患者DR的筛查。本研究的目的是在实际环境中比较DAIRET系统与眼科医生在检测DR方面的表现。
在2022年6月至2023年6月期间,对958例年龄超过18岁的糖尿病患者进行了非散瞳眼底照相,这些患者在意大利ULSS8 Berica的糖尿病与内分泌科及眼科接受DR筛查。所有视网膜图像均由基于AI的机器学习算法DAIRET进行评估。此外,所有获得的图像均由一名眼科医生进行分析并分级。将DAIRET获得的结果与眼科医生获得的结果进行比较。
我们纳入了958例患者,但只有867例(90.5%)患者的视网膜图像足以供人工分级者评估。检测中度及以上DR病例的灵敏度为1(100%),检测轻度DR病例的灵敏度为0.84±0.03。由于假阳性数量较多,检测无DR的特异性较低(0.59±0.04)。
与人工分级者相比,DAIRET在检测所有可转诊的DR病例(中度DR及以上)方面显示出最佳灵敏度。另一方面,由于假阳性数量较多,DAIRET的特异性较低,这限制了其成本效益。