Title
Identification Of Movements And Postures Using Wearable Sensors For Implementation In A Bi-Hormonal Artificial Pancreas System
Abstract
Background: Closed loop bi-hormonal artificial pancreas systems, such as the artificial pancreas (AP (TM)) developed by Inreda Diabetic B.V., control blood glucose levels of type 1 diabetes mellitus patients via closed loop regulation. As the AP (TM) currently does not classify postures and movements to estimate metabolic energy consumption to correct hormone administration levels, considerable improvements to the system can be made. Therefore, this research aimed to investigate the possibility to use the current system to identify several postures and movements. Methods: seven healthy participants took part in an experiment where sequences of postures and movements were performed to train and assess a computationally sparing algorithm. Results: Using accelerometers, one on the hip and two on the abdomen, user-specific models achieved classification accuracies of 86.5% using only the hip sensor and 87.3% when including the abdomen sensors. With additional accelerometers on the sternum and upper leg for identification, 90.0% of the classified postures and movements were correct. Conclusions: The current hardware configuration of the AP (TM) poses no limitation to the identification of postures and movements. If future research shows that identification can still be done accurately in a daily life setting, this algorithm may be an improvement for the AP (TM) to sense physical activity.
Year
DOI
Venue
2021
10.3390/s21175954
SENSORS
Keywords
DocType
Volume
artificial pancreas, classification algorithms, inertial sensing, posture identification, movement identification, type 1 diabetes mellitus, wearable sensors
Journal
21
Issue
ISSN
Citations 
17
1424-8220
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Ben Sawaryn100.34
Michel Klaassen200.34
Bert-Jan van Beijnum310319.40
Hans Zwart4237.04
Peter H. Veltink529142.38