Affiliation:
1. Center for Devices and Radiological Health (CDRH)
2. Indiana University
3. National Institutes of Health
Abstract
Objective quantification of photoreceptor cell morphology, such as cell diameter and outer segment length, is crucial for early, accurate, and sensitive diagnosis and prognosis of retinal neurodegenerative diseases. Adaptive optics optical coherence tomography (AO-OCT) provides three-dimensional (3-D) visualization of photoreceptor cells in the living human eye. The current gold standard for extracting cell morphology from AO-OCT images involves the tedious process of 2-D manual marking. To automate this process and extend to 3-D analysis of the volumetric data, we propose a comprehensive deep learning framework to segment individual cone cells in AO-OCT scans. Our automated method achieved human-level performance in assessing cone photoreceptors of healthy and diseased participants captured with three different AO-OCT systems representing two different types of point scanning OCT: spectral domain and swept source.
Funder
Foundation Fighting Blindness
National Institutes of Health
Research to Prevent Blindness
Hartwell Foundation
U.S. Food and Drug Administration
Subject
Atomic and Molecular Physics, and Optics,Biotechnology
Cited by
7 articles.
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