Prospective evaluation of an artificial intelligence-enabled algorithm for automated diabetic retinopathy screening of 30 000 patients

被引:107
作者
Heydon, Peter [1 ]
Egan, Catherine [1 ,2 ]
Bolter, Louis [3 ]
Chambers, Ryan [3 ]
Anderson, John [3 ]
Aldington, Steve [4 ]
Stratton, Irene M. [4 ]
Scanlon, Peter Henry [4 ]
Webster, Laura [5 ]
Mann, Samantha [5 ]
du Chemin, Alain [5 ]
Owen, Christopher G. [6 ]
Tufail, Adnan [1 ,2 ]
Rudnicka, Alicja Regina [6 ]
机构
[1] Moorfields Eye Hosp, Moorfields Biomed Res Ctr, London, England
[2] UCL, Inst Ophthalmol, London, England
[3] Homerton Univ Hosp NHS Trust, London, England
[4] Gloucestershire Hosp NHS Fdn Trust, Cheltenham, Glos, England
[5] Guys & St Thomas NHS Fdn Trust, London, England
[6] St Georges Univ London, Populat Hlth Res Inst, London, England
关键词
Public health; Retina; Treatment Medical; Diagnostic tests; Investigation; Imaging; Epidemiology; Medical Education; Telemedicine; Degeneration; Clinical Trial;
D O I
10.1136/bjophthalmol-2020-316594
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
Background/aims Human grading of digital images from diabetic retinopathy (DR) screening programmes represents a significant challenge, due to the increasing prevalence of diabetes. We evaluate the performance of an automated artificial intelligence (AI) algorithm to triage retinal images from the English Diabetic Eye Screening Programme (DESP) into test-positive/technical failure versus test-negative, using human grading following a standard national protocol as the reference standard. Methods Retinal images from 30 405 consecutive screening episodes from three English DESPs were manually graded following a standard national protocol and by an automated process with machine learning enabled software, EyeArt v2.1. Screening performance (sensitivity, specificity) and diagnostic accuracy (95% CIs) were determined using human grades as the reference standard. Results Sensitivity (95% CIs) of EyeArt was 95.7% (94.8% to 96.5%) for referable retinopathy (human graded ungradable, referable maculopathy, moderate-to-severe non-proliferative or proliferative). This comprises sensitivities of 98.3% (97.3% to 98.9%) for mild-to-moderate non-proliferative retinopathy with referable maculopathy, 100% (98.7%,100%) for moderate-to-severe non-proliferative retinopathy and 100% (97.9%,100%) for proliferative disease. EyeArt agreed with the human grade of no retinopathy (specificity) in 68% (67% to 69%), with a specificity of 54.0% (53.4% to 54.5%) when combined with non-referable retinopathy. Conclusion The algorithm demonstrated safe levels of sensitivity for high-risk retinopathy in a real-world screening service, with specificity that could halve the workload for human graders. AI machine learning and deep learning algorithms such as this can provide clinically equivalent, rapid detection of retinopathy, particularly in settings where a trained workforce is unavailable or where large-scale and rapid results are needed.
引用
收藏
页码:723 / 728
页数:6
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