Interpreting Deep Learning Studies in Glaucoma: Unresolved Challenges

Volume: 10, Issue: 3, Pages: 261 - 267
Published: May 1, 2021
Abstract
Deep learning algorithms as tools for automated image classification have recently experienced rapid growth in imaging-dependent medical specialties, including ophthalmology. However, only a few algorithms tailored to specific health conditions have been able to achieve regulatory approval for autonomous diagnosis. There is now an international effort to establish optimized thresholds for algorithm performance benchmarking in a rapidly evolving...
Paper Details
Title
Interpreting Deep Learning Studies in Glaucoma: Unresolved Challenges
Published Date
May 1, 2021
Volume
10
Issue
3
Pages
261 - 267
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