Automated detection of diabetic retinopathy using machine learning classifiers.

Journal: European review for medical and pharmacological sciences
Published Date:

Abstract

OBJECTIVE: Diabetic Retinopathy (DR) is a highly threatening microvascular complication of diabetes mellitus. Diabetic patients must be screened annually for DR; however, it is practically not viable due to the high volume of patients, lack of resources, economic burden, and cost of the screening procedure. The use of machine learning (ML) classifiers in medical science is an emerging frontier and can help in assisted diagnosis. The few available proposed models perform best when used in similar population cohorts and their external validation has been questioned. Therefore, the purpose of our research is to classify the DR using different ML methods on Saudi diabetic data, propose the best method based on accuracy and identify the most discriminative interpretable features using the socio-demographic and clinical information.

Authors

  • K M Alabdulwahhab
    Department of Ophthalmology, College of Medicine, Majmaah University, Almajmaah, Saudi Arabia. w.mahmood@mu.edu.sa.
  • W Sami
  • T Mehmood
  • S A Meo
  • T A Alasbali
  • F A Alwadani