Digital solution for detection of undiagnosed diabetes using machine learning-based retinal image analysis

Author:

Zee BennyORCID,Lee Jack,Lai Maria,Chee Peter,Rafferty James,Thomas Rebecca,Owens David

Abstract

IntroductionUndiagnosed diabetes is a global health issue. Previous studies have estimated that about 24.1%–75.1% of all diabetes cases are undiagnosed, leading to more diabetic complications and inducing huge healthcare costs. Many current methods for diabetes diagnosis rely on metabolic indices and are subject to considerable variability. In contrast, a digital approach based on retinal image represents a stable marker of overall glycemic status.Research design and methodsOur study involves 2221 subjects for developing a classification model, with 945 subjects with diabetes and 1276 controls. The training data included 70% and the testing data 30% of the subjects. All subjects had their retinal images taken using a non-mydriatic fundus camera. Two separate data sets were used for external validation. The Hong Kong testing data contain 734 controls without diabetes and 660 subjects with diabetes, and the UK testing data have 1682 subjects with diabetes.ResultsThe 10-fold cross-validation using the support vector machine approach has a sensitivity of 92% and a specificity of 96.2%. The separate testing data from Hong Kong provided a sensitivity of 99.5% and a specificity of 91.1%. For the UK testing data, the sensitivity is 98.0%. The accuracy of the Caucasian retinal images is comparable with that of the Asian data. It implies that the digital method can be applied globally. Those with diabetes complications in both Hong Kong and UK data have a higher probability of risk of diabetes compared with diabetes subjects without complications.ConclusionsA digital machine learning-based method to estimate the risk of diabetes based on retinal images has been developed and validated using both Asian and Caucasian data. Retinal image analysis is a fast, convenient, and non-invasive technique for community health applications. In addition, it is an ideal solution for undiagnosed diabetes prescreening.

Funder

Hong Kong Innovation and Technology Fund

Publisher

BMJ

Subject

Endocrinology, Diabetes and Metabolism

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Artificial Intelligence in Diabetes Management: Revolutionizing the Diagnosis of Diabetes Mellitus; a Literature Review;Shiraz E-Medical Journal;2024-07-23

2. Diabetes management in the era of artificial intelligence;Archives of Medical Science – Atherosclerotic Diseases;2024-06-25

3. DiaNet v2 deep learning based method for diabetes diagnosis using retinal images;Scientific Reports;2024-01-18

4. Machine Learning in Diabetes Modeling;2023 IEEE 21st Jubilee International Symposium on Intelligent Systems and Informatics (SISY);2023-09-21

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