Nailfold capillaroscopy and deep learning in diabetes

Author:

Shah Reema1ORCID,Petch Jeremy1234,Nelson Walter25,Roth Karsten6,Noseworthy Michael D.789ORCID,Ghassemi Marzyeh10,Gerstein Hertzel C.1ORCID

Affiliation:

1. Population Health Research Institute, McMaster University and Hamilton Health Sciences Hamilton Ontario Canada

2. Centre for Data Science and Digital Health Hamilton Health Sciences Hamilton Ontario Canada

3. Institute for Health Policy, Management and Evaluation University of Toronto Toronto Ontario Canada

4. Division of Cardiology McMaster University Hamilton Ontario Canada

5. Department of Statistical Sciences University of Toronto Toronto Ontario Canada

6. Cluster of Excellence Machine Learning University of Tübingen Tübingen Germany

7. Electrical and Computer Engineering McMaster University Hamilton Ontario Canada

8. McMaster School of Biomedical Engineering Hamilton Ontario Canada

9. Department of Radiology McMaster University Hamilton Ontario Canada

10. Vector Institute Toronto Ontario Canada

Abstract

AbstractObjectiveTo determine whether nailfold capillary images, acquired using video capillaroscopy, can provide diagnostic information about diabetes and its complications.Research Design and MethodsNailfold video capillaroscopy was performed in 120 adult patients with and without type 1 or type 2 diabetes, and with and without cardiovascular disease. Nailfold images were analyzed using convolutional neural networks, a deep learning technique. Cross‐validation was used to develop and test the ability of models to predict five5 prespecified states (diabetes, high glycosylated hemoglobin, cardiovascular event, retinopathy, albuminuria, and hypertension). The performance of each model for a particular state was assessed by estimating areas under the receiver operating characteristics curves (AUROC) and precision recall curves (AUPR).ResultsA total of 5236 nailfold images were acquired from 120 participants (mean 44 images per participant) and were all available for analysis. Models were able to accurately identify the presence of diabetes, with AUROC 0.84 (95% confidence interval [CI] 0.76, 0.91) and AUPR 0.84 (95% CI 0.78, 0.93), respectively. Models were also able to predict a history of cardiovascular events in patients with diabetes, with AUROC 0.65 (95% CI 0.51, 0.78) and AUPR 0.72 (95% CI 0.62, 0.88) respectively.ConclusionsThis proof‐of‐concept study demonstrates the potential of machine learning for identifying people with microvascular capillary changes from diabetes based on nailfold images, and for possibly identifying those most likely to have diabetes‐related complications.

Publisher

Wiley

Subject

Endocrinology, Diabetes and Metabolism

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