Literature DB >> 33735063

Predicting the risk of developing diabetic retinopathy using deep learning.

Ashish Bora1, Siva Balasubramanian2, Boris Babenko1, Sunny Virmani1, Subhashini Venugopalan3, Akinori Mitani1, Guilherme de Oliveira Marinho1, Jorge Cuadros4, Paisan Ruamviboonsuk5, Greg S Corrado1, Lily Peng1, Dale R Webster1, Avinash V Varadarajan1, Naama Hammel6, Yun Liu1, Pinal Bavishi1.   

Abstract

BACKGROUND: Diabetic retinopathy screening is instrumental to preventing blindness, but scaling up screening is challenging because of the increasing number of patients with all forms of diabetes. We aimed to create a deep-learning system to predict the risk of patients with diabetes developing diabetic retinopathy within 2 years.
METHODS: We created and validated two versions of a deep-learning system to predict the development of diabetic retinopathy in patients with diabetes who had had teleretinal diabetic retinopathy screening in a primary care setting. The input for the two versions was either a set of three-field or one-field colour fundus photographs. Of the 575 431 eyes in the development set 28 899 had known outcomes, with the remaining 546 532 eyes used to augment the training process via multitask learning. Validation was done on one eye (selected at random) per patient from two datasets: an internal validation (from EyePACS, a teleretinal screening service in the USA) set of 3678 eyes with known outcomes and an external validation (from Thailand) set of 2345 eyes with known outcomes.
FINDINGS: The three-field deep-learning system had an area under the receiver operating characteristic curve (AUC) of 0·79 (95% CI 0·77-0·81) in the internal validation set. Assessment of the external validation set-which contained only one-field colour fundus photographs-with the one-field deep-learning system gave an AUC of 0·70 (0·67-0·74). In the internal validation set, the AUC of available risk factors was 0·72 (0·68-0·76), which improved to 0·81 (0·77-0·84) after combining the deep-learning system with these risk factors (p<0·0001). In the external validation set, the corresponding AUC improved from 0·62 (0·58-0·66) to 0·71 (0·68-0·75; p<0·0001) following the addition of the deep-learning system to available risk factors.
INTERPRETATION: The deep-learning systems predicted diabetic retinopathy development using colour fundus photographs, and the systems were independent of and more informative than available risk factors. Such a risk stratification tool might help to optimise screening intervals to reduce costs while improving vision-related outcomes. FUNDING: Google.
Copyright © 2021 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license. Published by Elsevier Ltd.. All rights reserved.

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Mesh:

Year:  2020        PMID: 33735063     DOI: 10.1016/S2589-7500(20)30250-8

Source DB:  PubMed          Journal:  Lancet Digit Health        ISSN: 2589-7500


  12 in total

Review 1.  Artificial Intelligence Algorithms in Diabetic Retinopathy Screening.

Authors:  Sidra Zafar; Heba Mahjoub; Nitish Mehta; Amitha Domalpally; Roomasa Channa
Journal:  Curr Diab Rep       Date:  2022-04-19       Impact factor: 4.810

2.  Commentary: Targeted high-risk screening for diabetic retinopathy in India: Feasible short-term strategy.

Authors:  Divya Agarwal; Aman Kumar; Atul Kumar
Journal:  Indian J Ophthalmol       Date:  2021-11       Impact factor: 1.848

Review 3.  Cardiovascular Risk Stratification in Diabetic Retinopathy via Atherosclerotic Pathway in COVID-19/Non-COVID-19 Frameworks Using Artificial Intelligence Paradigm: A Narrative Review.

Authors:  Smiksha Munjral; Mahesh Maindarkar; Puneet Ahluwalia; Anudeep Puvvula; Ankush Jamthikar; Tanay Jujaray; Neha Suri; Sudip Paul; Rajesh Pathak; Luca Saba; Renoh Johnson Chalakkal; Suneet Gupta; Gavino Faa; Inder M Singh; Paramjit S Chadha; Monika Turk; Amer M Johri; Narendra N Khanna; Klaudija Viskovic; Sophie Mavrogeni; John R Laird; Gyan Pareek; Martin Miner; David W Sobel; Antonella Balestrieri; Petros P Sfikakis; George Tsoulfas; Athanasios Protogerou; Durga Prasanna Misra; Vikas Agarwal; George D Kitas; Raghu Kolluri; Jagjit Teji; Mustafa Al-Maini; Surinder K Dhanjil; Meyypan Sockalingam; Ajit Saxena; Aditya Sharma; Vijay Rathore; Mostafa Fatemi; Azra Alizad; Vijay Viswanathan; Padukode R Krishnan; Tomaz Omerzu; Subbaram Naidu; Andrew Nicolaides; Mostafa M Fouda; Jasjit S Suri
Journal:  Diagnostics (Basel)       Date:  2022-05-14

4.  A Deep Learning Framework for Earlier Prediction of Diabetic Retinopathy from Fundus Photographs.

Authors:  K Gunasekaran; R Pitchai; Gogineni Krishna Chaitanya; D Selvaraj; S Annie Sheryl; Hesham S Almoallim; Sulaiman Ali Alharbi; S S Raghavan; Belachew Girma Tesemma
Journal:  Biomed Res Int       Date:  2022-06-07       Impact factor: 3.246

5.  Long-term prediction models for vision-threatening diabetic retinopathy using medical features from data warehouse.

Authors:  Kwanhoon Jo; Dong Jin Chang; Ji Won Min; Young-Sik Yoo; Byul Lyu; Jin Woo Kwon; Jiwon Baek
Journal:  Sci Rep       Date:  2022-05-19       Impact factor: 4.996

6.  Identification of Diabetic Retinopathy Using Weighted Fusion Deep Learning Based on Dual-Channel Fundus Scans.

Authors:  Grace Ugochi Nneji; Jingye Cai; Jianhua Deng; Happy Nkanta Monday; Md Altab Hossin; Saifun Nahar
Journal:  Diagnostics (Basel)       Date:  2022-02-19

7.  Detection of signs of disease in external photographs of the eyes via deep learning.

Authors:  Boris Babenko; Akinori Mitani; Ilana Traynis; Naho Kitade; Preeti Singh; April Y Maa; Jorge Cuadros; Greg S Corrado; Lily Peng; Dale R Webster; Avinash Varadarajan; Naama Hammel; Yun Liu
Journal:  Nat Biomed Eng       Date:  2022-03-29       Impact factor: 29.234

8.  The Association Between Diabetic Retinopathy and the Prevalence of Age-Related Macular Degeneration-The Kailuan Eye Study.

Authors:  Zhang Yongpeng; Wang Yaxing; Zhou Jinqiong; Wang Qian; Yan Yanni; Yang Xuan; Yang Jingyan; Zhou Wenjia; Wang Ping; Shen Chang; Yang Ming; Luan Yanan; Wang Jinyuan; Wu Shouling; Chen Shuohua; Wang Haiwei; Fang Lijian; Wan Qianqian; Zhu Jingyuan; Nie Zihan; Chen Yuning; Xie Ying; Jost B Jonas; Wei Wenbin
Journal:  Front Public Health       Date:  2022-07-18

Review 9.  Leveraging Machine Learning and Artificial Intelligence to Improve Peripheral Artery Disease Detection, Treatment, and Outcomes.

Authors:  Alyssa M Flores; Falen Demsas; Nicholas J Leeper; Elsie Gyang Ross
Journal:  Circ Res       Date:  2021-06-10       Impact factor: 23.213

10.  Risk-Profile and Feature Selection Comparison in Diabetic Retinopathy.

Authors:  Valeria Maeda-Gutiérrez; Carlos E Galván-Tejada; Miguel Cruz; Jorge I Galván-Tejada; Hamurabi Gamboa-Rosales; Alejandra García-Hernández; Huizilopoztli Luna-García; Irma Gonzalez-Curiel; Mónica Martínez-Acuña
Journal:  J Pers Med       Date:  2021-12-08
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