Importance: Accurate differentiation of optic nerve head (ONH) atrophy is vital for guiding diagnosis and treatment of conditions such as glaucoma, nonarteritic anterior ischemic optic neuropathy (NAION), and optic neuritis. Traditional 2-dimensional assessments may overlook subtle, volumetric changes. Objective: To determine whether a 3-dimensional (3D) deep learning model trained on unsegmented ONH optical coherence tomography (OCT) scans can reliably distinguish optic atrophy in glaucoma, NAION, optic neuritis, and healthy eyes. Design, setting, and participants: This cross-sectional study used data from multiple clinical trials and referral centers (2008-2025), including randomized trials, longitudinal studies, and referral clinics. Participants included patients with glaucoma, NAION, or optic neuritis and healthy control patients. Exposures: Three ResNet-3D-18 models were trained using 5-fold stratified cross-validation. One assessed the full OCT volume, another focused only on the peripapillary region (PPR), and the third considered only the ONH. Identical data splits were used to allow direct performance comparison. Main outcomes and measures: Classification accuracy, macro area under the receiver operating characteristic curve (AUC-ROC), precision, recall, and F1 scores, aggregated across all validation folds. Confusion matrices were generated to characterize misclassifications. Results: A total of 7014 Cirrus ONH OCT scans from 1382 eyes of glaucoma (n = 113), NAION (n = 311), optic neuritis (n = 163), and healthy controls (n = 715) were analyzed. The mean (SD) age was 54.2 (16.9) years; there were 733 (65%) male patients and 402 (35%) female patients. The entire-volume model achieved 88.9% accuracy (macro AUC-ROC, 0.977; 95% CI, 0.974-0.979) and F1 scores of 0.94, 0.87, 0.78, and 0.91 for glaucoma, NAION, optic neuritis, and healthy eyes, respectively. The PPR-only model reached 85.9% accuracy (AUC-ROC, 0.970; 95% CI, 0.967-0.972), while the ONH-only model attained 87.0% accuracy (AUC-ROC, 0.972; 95% CI, 0.970-0.975). Both achieved F1 scores from 0.71 to 0.94. Optic neuritis presented the greatest classification challenge, misclassified as NAION or healthy when axonal loss was severe or minimal. Activation maps revealed disease-specific regions of interest in the retina, including the retinal nerve fiber layer, ganglion cell layer, and retinal pigment epithelium. Conclusions and relevance: Deep learning-based analysis of unsegmented OCT scans reliably distinguished between different forms of optic nerve atrophy, suggesting subtle, disease-specific structural patterns. This automated approach may support diagnostic efforts, guide clinical management of optic neuropathies, and complement less standardized imaging modalities and subjective clinical impressions.
Journal article
Optic Nerve Atrophy Conditions Associated With 3D Unsegmented Optical Coherence Tomography Volumes Using Deep Learning
JAMA ophthalmology, Vol.143(10), pp.803-810
10/01/2025
DOI: 10.1001/jamaophthalmol.2025.2766
PMCID: PMC12371546
PMID: 40839281
Abstract
Details
- Title: Subtitle
- Optic Nerve Atrophy Conditions Associated With 3D Unsegmented Optical Coherence Tomography Volumes Using Deep Learning
- Creators
- David Szanto - Icahn School of Medicine at Mount SinaiJui-Kai Wang - The University of Texas Southwestern Medical CenterBrian Woods - University Hospital GalwayAsala Erekat - Icahn School of Medicine at Mount SinaiMona Garvin - University of Iowa, Electrical and Computer EngineeringRandy Kardon - University of IowaMark J. Kupersmith - Icahn School of Medicine at Mount Sinai
- Resource Type
- Journal article
- Publication Details
- JAMA ophthalmology, Vol.143(10), pp.803-810
- DOI
- 10.1001/jamaophthalmol.2025.2766
- PMID
- 40839281
- PMCID
- PMC12371546
- NLM abbreviation
- JAMA Ophthalmol
- ISSN
- 2168-6165
- eISSN
- 2168-6173
- Publisher
- AMER MEDICAL ASSOC
- Grant note
- New York Eye and Ear Infirmary FoundationNational Eye Institute: EY032522 Research to Prevent BlindnessShulman Family NAION Fund at Icahn School of Medicine at Mount SinaiNational Center for Advancing Translational Sciences of the National Institutes of Health: UL1TR002537, UL1TR003163 National Institutes of Health: P30 EY030413 Barry Family Center for Ophthalmic Artificial Intelligence and Human HealthHealth Research Board and Irish Clinical Academic Training Programme: ICAT-2022-001
Research reported in this publication was supported in part by the New York Eye and Ear Infirmary Foundation; National Eye Institute (EY032522); Research to Prevent Blindness; Shulman Family NAION Fund at Icahn School of Medicine at Mount Sinai; National Center for Advancing Translational Sciences of the National Institutes of Health (CTSA UL1TR002537 and UL1TR003163); National Institutes of Health (P30 EY030413); and Barry Family Center for Ophthalmic Artificial Intelligence and Human Health. This research was partially funded by the Health Research Board and Irish Clinical Academic Training Programme (ICAT-2022-001).
- Language
- English
- Electronic publication date
- 08/21/2025
- Date published
- 10/01/2025
- Academic Unit
- Electrical and Computer Engineering; Iowa Neuroscience Institute; Ophthalmology and Visual Sciences
- Record Identifier
- 9984949517502771
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