Abstract
Diabetes is currently one of the major public health threats. The essential components for effective treatment of diabetes include early diagnosis and regular monitoring. However, health-care providers are often short of human resources to closely monitor populations at risk. In this work, a video-based eye-tracking method is proposed as a low-cost alternative for detection of diabetic neuropathy. The method is based on the tracking of the eye-trajectories recorded on videos while the subject follows a target on a screen, forcing saccadic movements. Upon extraction of the eye trajectories, representation of the obtained time-series is made with the help of heteroscedastic ARX (H-ARX) models, which capture the dynamics and latency on the subject's response, while features based on the H-ARX model's predictive ability are subsequently used for classification. The methodology is evaluated on a population constituted by 11 control and 20 insulin-treated diabetic individuals suffering from diverse diabetic complications including neuropathy and retinopathy. Results show significant differences on latency and eye movement precision between the populations of control subjects and diabetics, while simultaneously demonstrating that both groups can be classified with an accuracy of 95%. Although this study is limited by the small sample size, the results align with other findings in the literature and encourage further research.
| Originalsprog | Engelsk |
|---|---|
| Artikelnummer | 102050 |
| Tidsskrift | Artificial Intelligence in Medicine |
| Vol/bind | 114 |
| Antal sider | 36 |
| ISSN | 0933-3657 |
| DOI | |
| Status | Udgivet - apr. 2021 |
Bibliografisk note
Funding Information:The authors thank all patients who participated in the experiment. This study was funded by the University of Southern Denmark (Strategic Research Focus Areas 2016—SMILE project—a mobile health solution for early detection of complications in diabetic patients) and Region Southern Denmark (OUHs Innovationspulje 2017—Project: Spatiotemporal video magnification in patients with diabetic complications).
Publisher Copyright:
© 2021 Elsevier B.V.
Copyright:
Copyright 2021 Elsevier B.V., All rights reserved.
Finansiering
The authors thank all patients who participated in the experiment. This study was funded by the University of Southern Denmark (Strategic Research Focus Areas 2016—SMILE project—a mobile health solution for early detection of complications in diabetic patients) and Region Southern Denmark (OUHs Innovationspulje 2017—Project: Spatiotemporal video magnification in patients with diabetic complications).
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