Deep learning is effective for the classification of OCT images of normal versus Age-related Macular Degeneration
Cecilia S. Lee, Doug M. Baughman, Aaron Y. Lee

TL;DR
This study demonstrates that deep learning models can accurately classify OCT images as normal or AMD, achieving high accuracy and AUROC, which supports automated screening and diagnosis in ophthalmology.
Contribution
The paper introduces a deep neural network trained on a large OCT dataset linked to EMR data, achieving high accuracy in distinguishing normal from AMD images.
Findings
Achieved 92.78% auROC at image level
Achieved 97.45% auROC at patient level
Deep learning effectively classifies OCT images for AMD detection
Abstract
Objective: The advent of Electronic Medical Records (EMR) with large electronic imaging databases along with advances in deep neural networks with machine learning has provided a unique opportunity to achieve milestones in automated image analysis. Optical coherence tomography (OCT) is the most commonly obtained imaging modality in ophthalmology and represents a dense and rich dataset when combined with labels derived from the EMR. We sought to determine if deep learning could be utilized to distinguish normal OCT images from images from patients with Age-related Macular Degeneration (AMD). Methods: Automated extraction of an OCT imaging database was performed and linked to clinical endpoints from the EMR. OCT macula scans were obtained by Heidelberg Spectralis, and each OCT scan was linked to EMR clinical endpoints extracted from EPIC. The central 11 images were selected from each OCT…
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Taxonomy
TopicsRetinal Imaging and Analysis · Optical Coherence Tomography Applications
