Improving Actigraph Sleep/wake Classification with Cardio-respiratory Signals
Overview
Affiliations
Actigraphy for long-term sleep/wake monitoring fails to correctly classify situations where the subject displays low activity, but is awake. In this paper we propose a new algorithm which uses both accelerometer and cardio-respiratory signals to overcome this restriction. Acceleration, electrocardiogram and respiratory effort were measured with an integrated wearable recording system worn on the chest by three healthy male subjects during normal daily activities. For signal processing a Fast Fourier Transformation and as classifier a feed-forward Artificial Neural Network was used. The best classifier achieved an accuracy of 96.14%, a sensitivity of 94.65% and a specificity of 98.19%. The algorithm is suitable for integration into a wearable device for long-term home monitoring.
Zhang D, Peng Z, van Pul C, Overeem S, Chen W, Dudink J Children (Basel). 2023; 10(11).
PMID: 38002883 PMC: 10670397. DOI: 10.3390/children10111792.
Stucky B, Clark I, Azza Y, Karlen W, Achermann P, Kleim B J Med Internet Res. 2021; 23(10):e26476.
PMID: 34609317 PMC: 8527385. DOI: 10.2196/26476.
Liu J, Zhao Y, Lai B, Wang H, Tsui K JMIR Mhealth Uhealth. 2020; 8(8):e18370.
PMID: 32755887 PMC: 7439146. DOI: 10.2196/18370.
Advanced and Accurate Mobile Health Tracking Devices Record New Cardiac Vital Signs.
Modena B, Bellahsen O, Nikzad N, Chieh A, Parikh N, Dufek D Hypertension. 2018; 72(2):503-510.
PMID: 29967036 PMC: 6044460. DOI: 10.1161/HYPERTENSIONAHA.118.11177.
Challenges and Emerging Technologies within the Field of Pediatric Actigraphy.
Galland B, Meredith-Jones K, Terrill P, Taylor R Front Psychiatry. 2014; 5:99.
PMID: 25191278 PMC: 4139737. DOI: 10.3389/fpsyt.2014.00099.