Predicting optical coherence tomography-derived diabetic macular edema grades from fundus photographs using deep learning
Avinash Varadarajan, Pinal Bavishi, Paisan Raumviboonsuk, Peranut, Chotcomwongse, Subhashini Venugopalan, Arunachalam Narayanaswamy, Jorge, Cuadros, Kuniyoshi Kanai, George Bresnick, Mongkol Tadarati, Sukhum, Silpa-archa, Jirawut Limwattanayingyong, Variya Nganthavee, Joe Ledsam

TL;DR
This study develops a deep learning model that predicts diabetic macular edema grades from fundus photographs, achieving accuracy comparable to specialists and potentially improving screening in resource-limited settings.
Contribution
The paper introduces a novel deep learning approach to predict OCT-derived DME grades from fundus images, reducing reliance on expensive OCT equipment.
Findings
Model achieved ROC-AUC of 0.89 for ci-DME prediction.
Model's sensitivity (85%) was comparable to specialists, with higher specificity.
The model also detected intraretinal and subretinal fluid with high accuracy.
Abstract
Diabetic eye disease is one of the fastest growing causes of preventable blindness. With the advent of anti-VEGF (vascular endothelial growth factor) therapies, it has become increasingly important to detect center-involved diabetic macular edema (ci-DME). However, center-involved diabetic macular edema is diagnosed using optical coherence tomography (OCT), which is not generally available at screening sites because of cost and workflow constraints. Instead, screening programs rely on the detection of hard exudates in color fundus photographs as a proxy for DME, often resulting in high false positive or false negative calls. To improve the accuracy of DME screening, we trained a deep learning model to use color fundus photographs to predict ci-DME. Our model had an ROC-AUC of 0.89 (95% CI: 0.87-0.91), which corresponds to a sensitivity of 85% at a specificity of 80%. In comparison,…
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