2024
DOI: 10.1007/s00417-024-06432-x
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Comparing code-free and bespoke deep learning approaches in ophthalmology

Carolyn Yu Tung Wong,
Ciara O’Byrne,
Priyal Taribagil
et al.

Abstract: Aim Code-free deep learning (CFDL) allows clinicians without coding expertise to build high-quality artificial intelligence (AI) models without writing code. In this review, we comprehensively review the advantages that CFDL offers over bespoke expert-designed deep learning (DL). As exemplars, we use the following tasks: (1) diabetic retinopathy screening, (2) retinal multi-disease classification, (3) surgical video classification, (4) oculomics and (5) resource management. … Show more

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