Abstract

By 2040, age-related macular degeneration (AMD) will affect ~288 million people worldwide. Identifying individuals at high risk of progression to late AMD, the sight-threatening stage, is critical for clinical actions, including medical interventions and timely monitoring. Although deep learning has shown promise in diagnosing/screening AMD using color fundus photographs, it remains difficult to predict individuals’ risks of late AMD accurately. For both tasks, these initial deep learning attempts have remained largely unvalidated in independent cohorts. Here, we demonstrate how deep learning and survival analysis can predict the probability of progression to late AMD using 3298 participants (over 80,000 images) from the Age-Related Eye Disease Studies AREDS and AREDS2, the largest longitudinal clinical trials in AMD. When validated against an independent test data set of 601 participants, our model achieved high prognostic accuracy (5-year C-statistic 86.4 (95% confidence interval 86.2–86.6)) that substantially exceeded that of retinal specialists using two existing clinical standards (81.3 (81.1–81.5) and 82.0 (81.8–82.3), respectively). Interestingly, our approach offers additional strengths over the existing clinical standards in AMD prognosis (e.g., risk ascertainment above 50%) and is likely to be highly generalizable, given the breadth of training data from 82 US retinal specialty clinics. Indeed, during external validation through training on AREDS and testing on AREDS2 as an independent cohort, our model retained substantially higher prognostic accuracy than existing clinical standards. These results highlight the potential of deep learning systems to enhance clinical decision-making in AMD patients.

Highlights

  • Age-related macular degeneration (AMD) is the leading cause of legal blindness in developed countries[1]

  • A Cox proportional hazards model was used to predict Deep learning models trained on AREDS and externally validated probability of progression to late age-related macular degeneration (AMD), on AREDS2 as an independent cohort based on the deep features or the deep learning (DL) grading (DL grading/survival) (Fig. 1d, e)

  • AMD age-related macular degeneration, DL deep learning, SSS Simplified Severity Scale. aRetinal specialists/SSS—makes predictions at one fixed interval of 5 years and for late AMD only; unlike all other models, for SSS, late AMD is defined as neovascular AMD (NV) or central geographic atrophy (GA); please refer to the Supplementary Table 2 for results using genotype information, and Supplementary Table 3 for multivariate analysis

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Summary

INTRODUCTION

Age-related macular degeneration (AMD) is the leading cause of legal blindness in developed countries[1]. Burlina et al reported on the use of DL for estimating the AREDS 9-step severity grades of individual eyes, based on CFP in the AREDS data set[27,28,29] This approach relied on previously published 5-year risk estimates at the severity class level[30], rather than using the ground truth of actual progression/. Their data set was annotated by two retinal specialists

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