Author:
Lin Mingquan,Hou Bojian,Liu Lei,Gordon Mae,Kass Michael,Wang Fei,Van Tassel Sarah H.,Peng Yifan
Abstract
AbstractPrimary open-angle glaucoma (POAG) is a leading cause of irreversible blindness worldwide. Although deep learning methods have been proposed to diagnose POAG, it remains challenging to develop a robust and explainable algorithm to automatically facilitate the downstream diagnostic tasks. In this study, we present an automated classification algorithm, GlaucomaNet, to identify POAG using variable fundus photographs from different populations and settings. GlaucomaNet consists of two convolutional neural networks to simulate the human grading process: learning the discriminative features and fusing the features for grading. We evaluated GlaucomaNet on two datasets: Ocular Hypertension Treatment Study (OHTS) participants and the Large-scale Attention-based Glaucoma (LAG) dataset. GlaucomaNet achieved the highest AUC of 0.904 and 0.997 for POAG diagnosis on OHTS and LAG datasets. An ensemble of network architectures further improved diagnostic accuracy. By simulating the human grading process, GlaucomaNet demonstrated high accuracy with increased transparency in POAG diagnosis (comprehensiveness scores of 97% and 36%). These methods also address two well-known challenges in the field: the need for increased image data diversity and relying heavily on perimetry for POAG diagnosis. These results highlight the potential of deep learning to assist and enhance clinical POAG diagnosis. GlaucomaNet is publicly available on https://github.com/bionlplab/GlaucomaNet.
Funder
National Eye Institute
National Center on Minority Health and Health Disparities
National Institutes of Health
Horncrest Foundation
NIH Vision Core Grant
Merck Research Laboratories
Pfizer, Inc., White House Station, New Jersey
Prevent Blindness, Inc., New York, NY
U.S. National Library of Medicine
Publisher
Springer Science and Business Media LLC
Cited by
17 articles.
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