Literature DB >> 33719599

A Comparison of Artificial Intelligence and Human Diabetic Retinal Image Interpretation in an Urban Health System.

Nikita Mokhashi1, Julia Grachevskaya1, Lorrie Cheng1, Daohai Yu1, Xiaoning Lu1, Yi Zhang1, Jeffrey D Henderer1.   

Abstract

INTRODUCTION: Artificial intelligence (AI) diabetic retinopathy (DR) software has the potential to decrease time spent by clinicians on image interpretation and expand the scope of DR screening. We performed a retrospective review to compare Eyenuk's EyeArt software (Woodland Hills, CA) to Temple Ophthalmology optometry grading using the International Classification of Diabetic Retinopathy scale.
METHODS: Two hundred and sixty consecutive diabetic patients from the Temple Faculty Practice Internal Medicine clinic underwent 2-field retinal imaging. Classifications of the images by the software and optometrist were analyzed using sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and McNemar's test. Ungradable images were analyzed to identify relationships with HbA1c, age, and ethnicity. Disagreements and a sample of 20% of agreements were adjudicated by a retina specialist.
RESULTS: On patient level comparison, sensitivity for the software was 100%, while specificity was 77.78%. PPV was 19.15%, and NPV was 100%. The 38 disagreements between software and optometrist occurred when the optometrist classified a patient's images as non-referable while the software classified them as referable. Of these disagreements, a retina specialist agreed with the optometrist 57.9% the time (22/38). Of the agreements, the retina specialist agreed with both the program and the optometrist 96.7% of the time (28/29). There was a significant difference in numbers of ungradable photos in older patients (≥60) vs younger patients (<60) (p=0.003).
CONCLUSIONS: The AI program showed high sensitivity with acceptable specificity for a screening algorithm. The high NPV indicates that the software is unlikely to miss DR but may refer patients unnecessarily.

Entities:  

Keywords:  artificial intelligence; diabetic retinopathy; ophthalmology; screening; telemedicine

Mesh:

Year:  2021        PMID: 33719599      PMCID: PMC9264425          DOI: 10.1177/1932296821999370

Source DB:  PubMed          Journal:  J Diabetes Sci Technol        ISSN: 1932-2968


  11 in total

1.  Artificial Intelligence Screening for Diabetic Retinopathy: the Real-World Emerging Application.

Authors:  Valentina Bellemo; Gilbert Lim; Tyler Hyungtaek Rim; Gavin S W Tan; Carol Y Cheung; SriniVas Sadda; Ming-Guang He; Adnan Tufail; Mong Li Lee; Wynne Hsu; Daniel Shu Wei Ting
Journal:  Curr Diab Rep       Date:  2019-07-31       Impact factor: 4.810

2.  The influence of age, duration of diabetes, cataract, and pupil size on image quality in digital photographic retinal screening.

Authors:  Peter Henry Scanlon; Chris Foy; Raman Malhotra; Stephen J Aldington
Journal:  Diabetes Care       Date:  2005-10       Impact factor: 19.112

3.  Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs.

Authors:  Varun Gulshan; Lily Peng; Marc Coram; Martin C Stumpe; Derek Wu; Arunachalam Narayanaswamy; Subhashini Venugopalan; Kasumi Widner; Tom Madams; Jorge Cuadros; Ramasamy Kim; Rajiv Raman; Philip C Nelson; Jessica L Mega; Dale R Webster
Journal:  JAMA       Date:  2016-12-13       Impact factor: 56.272

4.  Detection of diabetic retinopathy in the community using a non-mydriatic camera.

Authors:  E R Higgs; B A Harney; A Kelleher; J P Reckless
Journal:  Diabet Med       Date:  1991-07       Impact factor: 4.359

5.  Comparison of automated and expert human grading of diabetic retinopathy using smartphone-based retinal photography.

Authors:  Tyson N Kim; Michael T Aaberg; Patrick Li; Jose R Davila; Malavika Bhaskaranand; Sandeep Bhat; Chaithanya Ramachandra; Kaushal Solanki; Frankie Myers; Clay Reber; Rohan Jalalizadeh; Todd P Margolis; Daniel Fletcher; Yannis M Paulus
Journal:  Eye (Lond)       Date:  2020-04-27       Impact factor: 3.775

6.  Automated diabetic retinopathy detection in smartphone-based fundus photography using artificial intelligence.

Authors:  Ramachandran Rajalakshmi; Radhakrishnan Subashini; Ranjit Mohan Anjana; Viswanathan Mohan
Journal:  Eye (Lond)       Date:  2018-03-09       Impact factor: 3.775

7.  Global prevalence of diabetic retinopathy: protocol for a systematic review and meta-analysis.

Authors:  Riccardo Cheloni; Stefano A Gandolfi; Carlo Signorelli; Anna Odone
Journal:  BMJ Open       Date:  2019-03-03       Impact factor: 2.692

Review 8.  Different fundus imaging modalities and technical factors in AI screening for diabetic retinopathy: a review.

Authors:  Gilbert Lim; Valentina Bellemo; Yuchen Xie; Xin Q Lee; Michelle Y T Yip; Daniel S W Ting
Journal:  Eye Vis (Lond)       Date:  2020-04-14

9.  The Value of Automated Diabetic Retinopathy Screening with the EyeArt System: A Study of More Than 100,000 Consecutive Encounters from People with Diabetes.

Authors:  Malavika Bhaskaranand; Chaithanya Ramachandra; Sandeep Bhat; Jorge Cuadros; Muneeswar G Nittala; Srinivas R Sadda; Kaushal Solanki
Journal:  Diabetes Technol Ther       Date:  2019-08-07       Impact factor: 6.118

Review 10.  Epidemiology of diabetic retinopathy, diabetic macular edema and related vision loss.

Authors:  Ryan Lee; Tien Y Wong; Charumathi Sabanayagam
Journal:  Eye Vis (Lond)       Date:  2015-09-30
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