Comparing code-free deep learning models to expert-designed models for detecting retinal diseases from optical coherence tomography.
Samir ToumaBadr Ait HammouFares AntakiMarie Carole BoucherRenaud DuvalPublished in: International journal of retina and vitreous (2024)
This comparative study demonstrated that code-free models created by clinicians without coding expertise perform as accurately as expert-designed bespoke models at classifying various retinal pathologies from OCT videos and images. CFDL represents a step forward towards the democratization of AI in medicine, although its numerous limitations must be carefully addressed to ensure its effective application in healthcare.