Abstract

BackgroundPhotographic diabetic retinopathy screening requires labour-intensive grading of retinal images by humans. Automated retinal image analysis software (ARIAS) could provide an alternative to human grading. We compare the performance of...

Highlights

  • Diabetic retinopathy is one of the most common microvascular complications of diabetes.[1]

  • This study aims to compare the screening performance of a commercially available automated retinal image analysis software (ARIAS) (EyeArt) on images obtained with two platforms with different optical properties and field of view, the truecolour wide-field confocal scanner (EIDON) and English National Diabetic Eye Screening Programme (NDESP)-approved fundus cameras against

  • The prevalence of retinopathy according to the final human NDESP grades for R0,.R1,.M1,.R2 and R3 was

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Summary

Introduction

Diabetic retinopathy is one of the most common microvascular complications of diabetes.[1]. Artificial intelligence-enabled automated retinal image analysis software (ARIAS) allow accurate and speedy detection of retinopathy without the need for human graders.[6,7,8,9,10,11,12,13,14] The diagnostic accuracy of ARIAS have been reported to be comparable to that of expert graders on 45 degree 2-field conventional digital photographs.[14,15]. Photographic diabetic retinopathy screening requires labour-intensive grading of retinal images by humans. Automated retinal image analysis software.(ARIAS) could provide an alternative to human grading. We compare the performance of an ARIAS using true-colour, widefield confocal scanning images and standard fundus images in the English National Diabetic Eye. Screening Programme.(NDESP) against human grading

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