2024
DOI: 10.1038/s41433-024-03085-2
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Ocular biomarkers: useful incidental findings by deep learning algorithms in fundus photographs

Eve Martin,
Angus G. Cook,
Shaun M. Frost
et al.

Abstract: Background/Objectives Artificial intelligence can assist with ocular image analysis for screening and diagnosis, but it is not yet capable of autonomous full-spectrum screening. Hypothetically, false-positive results may have unrealized screening potential arising from signals persisting despite training and/or ambiguous signals such as from biomarker overlap or high comorbidity. The study aimed to explore the potential to detect clinically useful incidental ocular biomarkers by screening fundus … Show more

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