Predicting Risk of Developing Diabetic Retinopathy using Deep Learning
Ashish Bora, Siva Balasubramanian, Boris Babenko, Sunny Virmani,, Subhashini Venugopalan, Akinori Mitani, Guilherme de Oliveira Marinho, Jorge, Cuadros, Paisan Ruamviboonsuk, Greg S Corrado, Lily Peng, Dale R Webster,, Avinash V Varadarajan, Naama Hammel, Yun Liu, Pinal Bavishi

TL;DR
This study developed deep learning systems using fundus photographs to predict the 2-year risk of diabetic retinopathy, enhancing screening efficiency and risk stratification.
Contribution
The paper introduces two deep learning models that predict diabetic retinopathy development from fundus images, outperforming traditional risk factors in prognostic accuracy.
Findings
3-field DLS achieved AUC of 0.79 on internal validation
Single-field DLS achieved AUC of 0.70 on external validation
DLS provided prognostic information independent of risk factors
Abstract
Diabetic retinopathy (DR) screening is instrumental in preventing blindness, but faces a scaling challenge as the number of diabetic patients rises. Risk stratification for the development of DR may help optimize screening intervals to reduce costs while improving vision-related outcomes. We created and validated two versions of a deep learning system (DLS) to predict the development of mild-or-worse ("Mild+") DR in diabetic patients undergoing DR screening. The two versions used either three-fields or a single field of color fundus photographs (CFPs) as input. The training set was derived from 575,431 eyes, of which 28,899 had known 2-year outcome, and the remaining were used to augment the training process via multi-task learning. Validation was performed on both an internal validation set (set A; 7,976 eyes; 3,678 with known outcome) and an external validation set (set B; 4,762 eyes;…
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