Abstract

Objective To evaluate diabetic retinopathy (DR) screening via deep learning (DL) and trained human graders (HG) in a longitudinal cohort, as case spectrum shifts based on treatment referral and new-onset DR. Methods We randomly selected patients with diabetes screened twice, two years apart within a nationwide screening program. The reference standard was established via adjudication by retina specialists. Each patient's color fundus photographs were graded, and a patient was considered as having sight-threatening DR (STDR) if the worse eye had severe nonproliferative DR, proliferative DR, or diabetic macular edema. We compared DR screening via two modalities: DL and HG. For each modality, we simulated treatment referral by excluding patients with detected STDR from the second screening using that modality. Results There were 5,738 patients (12.3% STDR) in the first screening. DL and HG captured different numbers of STDR cases, and after simulated referral and excluding ungradable cases, 4,148 and 4,263 patients remained in the second screening, respectively. The STDR prevalence at the second screening was 5.1% and 6.8% for DL- and HG-based screening, respectively. Along with the prevalence decrease, the sensitivity for both modalities decreased from the first to the second screening (DL: from 95% to 90%, p = 0.008; HG: from 74% to 57%, p < 0.001). At both the first and second screenings, the rate of false negatives for the DL was a fifth that of HG (0.5-0.6% vs. 2.9-3.2%). Conclusion On 2-year longitudinal follow-up of a DR screening cohort, STDR prevalence decreased for both DL- and HG-based screening. Follow-up screenings in longitudinal DR screening can be more difficult and induce lower sensitivity for both DL and HG, though the false negative rate was substantially lower for DL. Our data may be useful for health-economics analyses of longitudinal screening settings.

Highlights

  • Blindness from diabetes is expected to rise dramatically in this new decade [1]

  • We examined 5,738 patients who were screened for diabetic retinopathy (DR) on two separate occasions, approximately two years apart and simulated scenarios where either the deep learning (DL) or human graders (HG) screened for sight-threatening DR (STDR)

  • To mimic a realistic scenario, all cases who were indicated for referral by either DL or HG were verified by retina specialists, and only patients with verified STDR were “referred” out of the screening program (Figure 1, additional details below)

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Summary

Introduction

To reduce diabetes-associated blindness, nationwide systematic screening for diabetic retinopathy (DR) has been implemented [2]. Many countries have studied the development of systematic screening programs [3,4,5,6], resulting in several lessons learnt. Though a large proportion of patients with well-controlled diabetes showed no retinopathy with low risk of visual loss over the years [7], nonattendance in screening programs increased risk of visual loss from sight-threatening DR (STDR) [8]. While annual DR screening is generally recommended [9, 10], studies in some resource-rich countries have found a ceiling uptake of patients [11] which was compromised by an abundance of resource investment [12]. Extending the screening interval from annual to once every 2-3 years was found to be cost-effective in several studies in Europe [13, 14]

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