| Literature DB >> 34346318 |
Marzia Cescon, Divya Choudhary, Jordan E Pinsker, Vikash Dadlani, Mei Mei Church, Yogish C Kudva, Francis J Doyle Iii, Eyal Dassau.
Abstract
This paper introduces methods to estimate aspects of physical activity and sedentary behavior from three-axis accelerometer data collected with a wrist-worn device at a sampling rate of 32 [Hz] on adults with type 1 diabetes (T1D) in free-living conditions. In particular, we present two methods able to detect and grade activity based on its intensity and individual fitness as sedentary, mild, moderate or vigorous, and a method that performs activity classification in a supervised learning framework to predict specific user behaviors. Population results for activity level grading show multi-class average accuracy of 99.99%, precision of 98.0 ± 2.2%, recall of 97.9 ± 3.5% and F1 score of 0.9 ± 0.0. As for the specific behavior prediction, our best performing classifier, gave population multi-class average accuracy of 92.43 ± 10.32%, precision of 92.94 ± 9.80%, recall of 92.20 ± 10.16% and F1 score of 92.56 ± 9.94%. Our investigation showed that physical activity and sedentary behavior can be detected, graded and classified with good accuracy and precision from three-axial accelerometer data collected in free-living conditions on people with T1D. This is particularly significant in the context of automated glucose control systems for diabetes, in that the methods we propose have the potential to inform changes in treatment parameters in response to the intensity of physical activity, allowing patients to meet their glycemic targets.Entities:
Keywords: Artificial pancreas; Automated insulin delivery; Free-living conditions; Physical activity; Supervised learning; Type 1 diabetes mellitus; Wearable devices; Wrist-worn accelerometer
Mesh:
Year: 2021 PMID: 34346318 PMCID: PMC8577986 DOI: 10.1016/j.compbiomed.2021.104633
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 6.698