Eyenuk, Inc., Los Angeles, California.
EyePACS LLC, San Jose, California.
Diabetes Technol Ther. 2019 Nov;21(11):635-643. doi: 10.1089/dia.2019.0164. Epub 2019 Aug 7.
Current manual diabetic retinopathy (DR) screening using eye care experts cannot scale to screen the growing population of diabetes patients who are at risk for vision loss. EyeArt system is an automated, cloud-based artificial intelligence (AI) eye screening technology designed to easily detect referral-warranted DR immediately through automated analysis of patient's retinal images. This retrospective study assessed the diagnostic efficacy of the EyeArt system v2.0 analyzing 850,908 fundus images from 101,710 consecutive patient visits, collected from 404 primary care clinics. Presence or absence of referral-warranted DR (more than mild nonproliferative DR [NPDR]) was automatically detected by the EyeArt system for each patient encounter, and its performance was compared against a clinical reference standard of quality-assured grading by rigorously trained certified ophthalmologists and optometrists. Of the 101,710 visits, 75.7% were nonreferable, 19.3% were referable to an eye care specialist, and in 5.0%, the DR level was unknown as per the clinical reference standard. EyeArt screening had 91.3% (95% confidence interval [CI]: 90.9-91.7) sensitivity and 91.1% (95% CI: 90.9-91.3) specificity. For 5446 encounters with potentially treatable DR (more than moderate NPDR and/or diabetic macular edema), the system provided a positive "refer" output to 5363 encounters achieving sensitivity of 98.5%. This study captures variations in real-world clinical practice and shows that an AI DR screening system can be safe and effective in the real world. This study demonstrates the value of this easy-to-use, automated tool for endocrinologists, diabetologists, and general practitioners to address the growing need for DR screening and monitoring.
目前,使用眼科专家进行手动糖尿病视网膜病变(DR)筛查无法满足大量糖尿病患者的需求,这些患者都有视力丧失的风险。EyeArt 系统是一种自动化的云端人工智能(AI)眼部筛查技术,旨在通过对患者视网膜图像的自动分析,轻松立即检测出需要转诊的 DR。这项回顾性研究评估了 EyeArt 系统 v2.0 的诊断效果,该系统分析了来自 404 个初级保健诊所的 101710 名连续就诊患者的 850908 张眼底图像。EyeArt 系统会自动为每位患者的就诊检测出是否存在需要转诊的 DR(超过轻度非增殖性 DR [NPDR]),并将其与由经过严格培训的认证眼科医生和验光师进行质量保证分级的临床参考标准进行比较。在这 101710 次就诊中,75.7%是非转诊的,19.3%需要转诊给眼科专家,而根据临床参考标准,5.0%的 DR 级别未知。EyeArt 筛查的敏感性为 91.3%(95%置信区间 [CI]:90.9-91.7),特异性为 91.1%(95% CI:90.9-91.3)。对于 5446 次可能需要治疗的 DR(超过中度 NPDR 和/或糖尿病性黄斑水肿),系统对 5363 次就诊给出了阳性“转诊”输出,达到了 98.5%的敏感性。这项研究捕捉到了真实临床实践中的变化,并表明 AI 视网膜病变筛查系统在真实世界中是安全有效的。这项研究证明了这种易于使用的自动化工具的价值,可用于内分泌学家、糖尿病学家和全科医生,以满足日益增长的 DR 筛查和监测需求。