Ocular biomarkers: useful incidental findings by deep learning algorithms in fundus photographs.
Eve MartinAngus G CookShaun M FrostAngus Warwick TurnerFred K ChenIan L McAllisterJanis M NoldeMarkus P SchlaichPublished in: Eye (London, England) (2024)
The results suggest that diabetic deep learning models may be responsive to hypertensive and other clinically useful retinal biomarkers within an at-risk, hypertensive cohort. Observing that models trained for fewer diseases captured more incidental pathology increases confidence in signalling hypotheses aligned with using self-supervised learning to develop autonomous comprehensive screening. Meanwhile, non-referable and false-positive outputs of other deep learning screening models could be explored for immediate clinical use in other populations.