Predicting the risk of developing diabetic retinopathy using deep learning

被引:115
作者
Bora, Ashish [1 ]
Balasubramanian, Siva [3 ]
Babenko, Boris [1 ]
Virmani, Sunny [1 ]
Venugopalan, Subhashini [2 ]
Mitani, Akinori [1 ]
Marinho, Guilherme de Oliveira [1 ]
Cuadros, Jorge [4 ]
Ruamviboonsuk, Paisan [5 ]
Corrado, Greg S. [1 ]
Peng, Lily [1 ]
Webster, Dale R. [1 ]
Varadarajan, Avinash V. [1 ]
Hammel, Naama [1 ]
Liu, Yun [1 ]
Bavishi, Pinal [1 ]
机构
[1] Google, Google Hlth, Mountain View, CA 94043 USA
[2] Google, Google Res, Mountain View, CA 94043 USA
[3] Adv Clin, Deerfield, IL USA
[4] EyePACS, Santa Cruz, CA USA
[5] Rangsit Univ, Dept Ophthalmol, Rajavithi Hosp, Coll Med, Bangkok, Thailand
来源
LANCET DIGITAL HEALTH | 2021年 / 3卷 / 01期
关键词
PROGRESSION;
D O I
10.1016/S2589-7500(20)30250-8
中图分类号
R-058 [];
学科分类号
摘要
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. Copyright (C) 2020 The Author(s). Published by Elsevier Ltd.
引用
收藏
页码:E10 / E19
页数:10
相关论文
共 29 条
  • [2] American Academy Of Ophthalmology, 2019, DIAB RET PREF PRACT
  • [3] [Anonymous], 1991, Ophthalmology, V98, P786
  • [4] [Anonymous], 2017, INVEST OPHTH VIS SCI
  • [5] Deep learning algorithm predicts diabetic retinopathy progression in individual patients
    Arcadu, Filippo
    Benmansour, Fethallah
    Maunz, Andreas
    Willis, Jeff
    Haskova, Zdenka
    Prunotto, Marco
    [J]. NPJ DIGITAL MEDICINE, 2019, 2 (1)
  • [6] A multifocal electroretinogram model predicting the development of diabetic retinopathy
    Bearse, Marcus A., Jr.
    Adams, Anthony J.
    Han, Ying
    Schneck, Marilyn E.
    Ng, Jason
    Bronson-Castain, Kevin
    Barez, Shirin
    [J]. PROGRESS IN RETINAL AND EYE RESEARCH, 2006, 25 (05) : 425 - 448
  • [7] Diabetic retinopathy
    Cheung, Ning
    Mitchell, Paul
    Wong, Tien Yin
    [J]. LANCET, 2010, 376 (9735) : 124 - 136
  • [8] A Virtual Type 2 Diabetes Clinic Using Continuous Glucose Monitoring and Endocrinology Visits
    Dixon, Ronald F.
    Zisser, Howard
    Layne, Jennifer E.
    Barleen, Nathan A.
    Miller, David P.
    Moloney, Daniel P.
    Majithia, Amit R.
    Gabbay, Robert A.
    Riff, Josh
    [J]. JOURNAL OF DIABETES SCIENCE AND TECHNOLOGY, 2020, 14 (05): : 908 - 911
  • [9] Use of a Connected Glucose Meter and Certified Diabetes Educator Coaching to Decrease the Likelihood of Abnormal Blood Glucose Excursions: The Livongo for Diabetes Program
    Downing, Janelle
    Bollyky, Jenna
    Schneider, Jennifer
    [J]. JOURNAL OF MEDICAL INTERNET RESEARCH, 2017, 19 (07)
  • [10] Diabetic eye screening with variable screening intervals based on individual risk factors is safe and effective in ophthalmic practice
    Estil, Svein
    Steinarsson, Aegir Thor
    Einarsson, Stefan
    Aspelund, Thor
    Stefansson, Einar
    [J]. ACTA OPHTHALMOLOGICA, 2020, 98 (04) : 343 - 346