Login / Signup

Prediction of cardiovascular risk factors from retinal fundus photographs: Validation of a deep learning algorithm in a prospective non-interventional study in Kenya.

Tom WhiteViknesh SelvarajahFredrik Wolfhagen-SandNils SvangårdGayathri MohankumarPeter FeniciKathryn RoughNelson OnyangoKendall LyonsChristina MackVidelis NdubaMansoor Noorali SalehInnocent AbayoAfrah SiddiquiMalgorzata Majdanska-StrzalkaKatarzyna KaszubskaTove Hegelund-MyrbackRussell EsterlineAntonio ManzurVictoria E R Parker
Published in: Diabetes, obesity & metabolism (2024)
In a Kenyan population, machine learning models estimated cardiovascular parameters with comparable or slightly lower accuracy than in the population where they were trained, suggesting model recalibration may be appropriate. This study represents an incremental step toward leveraging machine learning to make early cardiovascular screening more accessible, particularly in resource-limited settings.
Keyphrases
  • machine learning
  • deep learning
  • cardiovascular risk factors
  • artificial intelligence
  • diabetic retinopathy
  • cardiovascular disease
  • metabolic syndrome
  • big data
  • optical coherence tomography