| Literature DB >> 34049292 |
Marta Karas1, Jacek K Urbanek2, Vittorio P Illiano3, Guy Bogaarts3, Ciprian M Crainiceanu1, Jonas F Dorn3.
Abstract
Objective. We evaluate the stride segmentation performance of the Adaptive Empirical Pattern Transformation (ADEPT) for subsecond-level accelerometry data collected in the free-living environment using a wrist-worn sensor.Approach. We substantially expand the scope of the existing ADEPT pattern-matching algorithm. Methods are applied to subsecond-level accelerometry data collected continuously for 4 weeks in 45 participants, including 30 arthritis and 15 control patients. We estimate the daily walking cadence for each participant and quantify its association with SF-36 quality of life measures.Main results. We provide free, open-source software to segment individual walking strides in subsecond-level accelerometry data. Walking cadence is significantly associated with the role physical score reported via SF-36 after adjusting for age, gender, weight and height.Significance. Methods provide automatic, precise walking stride segmentation, which allows estimation of walking cadence from free-living wrist-worn accelerometry data. Results provide new evidence of associations between free-living walking parameters and health outcomes.Entities:
Keywords: accelerometry; actigraphy; cadence; digital health; gait; walking segmentation; wearable sensor
Year: 2021 PMID: 34049292 DOI: 10.1088/1361-6579/ac067b
Source DB: PubMed Journal: Physiol Meas ISSN: 0967-3334 Impact factor: 2.833