Diabetic Retinopathy Screening Using Smartphone-Based Fundus Photography and Deep-Learning Artificial Intelligence in the Yucatan Peninsula: A Field Study

被引:1
|
作者
Wroblewski, John J. [1 ,2 ,6 ]
Sanchez-Buenfil, Ermilo [3 ]
Inciarte, Miguel [3 ]
Berdia, Jay [2 ]
Blake, Lewis [4 ]
Wroblewski, Simon [2 ]
Patti, Alexandria [2 ]
Suter, Gretchen [2 ]
Sanborn, George E. [5 ]
机构
[1] Retina Care Int, Hagerstown, MD USA
[2] Cumberland Valley Retina Consultants, Hagerstown, MD USA
[3] RetimediQ, Merida, Mexico
[4] Colorado Sch Mines, Dept Appl Math & Stat, Golden, CO USA
[5] Virginia Commonwealth Univ, Dept Ophthalmol, Richmond, VA USA
[6] Retina Care Int, 1150 Opal Ct, Hagerstown, MD 21740 USA
关键词
artificial intelligence; diabetic retinopathy; fundus-on-phone camera; Mexico; rural health care; screening; VALIDATION; ALGORITHM; CONFIDENCE; BLINDNESS;
D O I
10.1177/19322968231194644
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: To compare the performance of Medios (offline) and EyeArt (online) artificial intelligence (AI) algorithms for detecting diabetic retinopathy (DR) on images captured using fundus-on-smartphone photography in a remote outreach field setting.Methods: In June, 2019 in the Yucatan Peninsula, 248 patients, many of whom had chronic visual impairment, were screened for DR using two portable Remidio fundus-on-phone cameras, and 2130 images obtained were analyzed, retrospectively, by Medios and EyeArt. Screening performance metrics also were determined retrospectively using masked image analysis combined with clinical examination results as the reference standard.Results: A total of 129 patients were determined to have some level of DR; 119 patients had no DR. Medios was capable of evaluating every patient with a sensitivity (95% confidence intervals [CIs]) of 94% (88%-97%) and specificity of 94% (88%-98%). Owing primarily to photographer error, EyeArt evaluated 156 patients with a sensitivity of 94% (86%-98%) and specificity of 86% (77%-93%). In a head-to-head comparison of 110 patients, the sensitivities of Medios and EyeArt were 99% (93%-100%) and 95% (87%-99%). The specificities for both were 88% (73%-97%).Conclusions: Medios and EyeArt AI algorithms demonstrated high levels of sensitivity and specificity for detecting DR when applied in this real-world field setting. Both programs should be considered in remote, large-scale DR screening campaigns where immediate results are desirable, and in the case of EyeArt, online access is possible.
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页数:7
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