Literature DB >> 28359545

Automated Identification of Diabetic Retinopathy Using Deep Learning.

Rishab Gargeya1, Theodore Leng2.   

Abstract

PURPOSE: Diabetic retinopathy (DR) is one of the leading causes of preventable blindness globally. Performing retinal screening examinations on all diabetic patients is an unmet need, and there are many undiagnosed and untreated cases of DR. The objective of this study was to develop robust diagnostic technology to automate DR screening. Referral of eyes with DR to an ophthalmologist for further evaluation and treatment would aid in reducing the rate of vision loss, enabling timely and accurate diagnoses.
DESIGN: We developed and evaluated a data-driven deep learning algorithm as a novel diagnostic tool for automated DR detection. The algorithm processed color fundus images and classified them as healthy (no retinopathy) or having DR, identifying relevant cases for medical referral.
METHODS: A total of 75 137 publicly available fundus images from diabetic patients were used to train and test an artificial intelligence model to differentiate healthy fundi from those with DR. A panel of retinal specialists determined the ground truth for our data set before experimentation. We also tested our model using the public MESSIDOR 2 and E-Ophtha databases for external validation. Information learned in our automated method was visualized readily through an automatically generated abnormality heatmap, highlighting subregions within each input fundus image for further clinical review. MAIN OUTCOME MEASURES: We used area under the receiver operating characteristic curve (AUC) as a metric to measure the precision-recall trade-off of our algorithm, reporting associated sensitivity and specificity metrics on the receiver operating characteristic curve.
RESULTS: Our model achieved a 0.97 AUC with a 94% and 98% sensitivity and specificity, respectively, on 5-fold cross-validation using our local data set. Testing against the independent MESSIDOR 2 and E-Ophtha databases achieved a 0.94 and 0.95 AUC score, respectively.
CONCLUSIONS: A fully data-driven artificial intelligence-based grading algorithm can be used to screen fundus photographs obtained from diabetic patients and to identify, with high reliability, which cases should be referred to an ophthalmologist for further evaluation and treatment. The implementation of such an algorithm on a global basis could reduce drastically the rate of vision loss attributed to DR.
Copyright © 2017 American Academy of Ophthalmology. Published by Elsevier Inc. All rights reserved.

Entities:  

Mesh:

Year:  2017        PMID: 28359545     DOI: 10.1016/j.ophtha.2017.02.008

Source DB:  PubMed          Journal:  Ophthalmology        ISSN: 0161-6420            Impact factor:   12.079


  193 in total

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Journal:  JAMA Ophthalmol       Date:  2019-03-01       Impact factor: 7.389

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Journal:  Int Ophthalmol       Date:  2019-02-23       Impact factor: 2.031

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Journal:  Graefes Arch Clin Exp Ophthalmol       Date:  2021-02-22       Impact factor: 3.117

6.  Technical and imaging factors influencing performance of deep learning systems for diabetic retinopathy.

Authors:  Michelle Y T Yip; Gilbert Lim; Zhan Wei Lim; Quang D Nguyen; Crystal C Y Chong; Marco Yu; Valentina Bellemo; Yuchen Xie; Xin Qi Lee; Haslina Hamzah; Jinyi Ho; Tien-En Tan; Charumathi Sabanayagam; Andrzej Grzybowski; Gavin S W Tan; Wynne Hsu; Mong Li Lee; Tien Yin Wong; Daniel S W Ting
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Review 7.  [Screening and management of retinal diseases using digital medicine].

Authors:  B S Gerendas; S M Waldstein; U Schmidt-Erfurth
Journal:  Ophthalmologe       Date:  2018-09       Impact factor: 1.059

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Journal:  Graefes Arch Clin Exp Ophthalmol       Date:  2020-10-16       Impact factor: 3.117

9.  Beyond Performance Metrics: Automatic Deep Learning Retinal OCT Analysis Reproduces Clinical Trial Outcome.

Authors:  Jessica Loo; Traci E Clemons; Emily Y Chew; Martin Friedlander; Glenn J Jaffe; Sina Farsiu
Journal:  Ophthalmology       Date:  2019-12-23       Impact factor: 12.079

10.  Automated detection of mild and multi-class diabetic eye diseases using deep learning.

Authors:  Rubina Sarki; Khandakar Ahmed; Hua Wang; Yanchun Zhang
Journal:  Health Inf Sci Syst       Date:  2020-10-08
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