4.5 Article

Validation of an ambient system for the measurement of gait parameters

Journal

JOURNAL OF BIOMECHANICS
Volume 69, Issue -, Pages 175-180

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jbiomech.2018.01.024

Keywords

Gait analysis; Spatio-temporal parameters measurement; Elderly people; Depth camera; Fall prevention

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Fall risk in elderly people is usually assessed using clinical tests. These tests consist in a subjective evaluation of gait performed by healthcare professionals, most of the time shortly after the first fall occurrence. We propose to complement this one-time, subjective evaluation, by a more quantitative analysis of the gait pattern using a Microsoft Kinect. To evaluate the potential of the Kinect sensor for such a quantitative gait analysis, we benchmarked its performance against that of a gold-standard motion capture system, namely the OptiTrack. The Kinect analysis relied on a home-made algorithm specifically developed for this sensor, whereas the OptiTrack analysis relied on the built-in OptiTrack algorithm. We measured different gait parameters as step length, step duration, cadence, and gait speed in twenty-five subjects, and compared the results respectively provided by the Kinect and OptiTrack systems. These comparisons were performed using Bland-Altman plot (95% bias and limits of agreement), percentage error, Spearman's correlation coefficient, concordance correlation coefficient and intra-class correlation. The agreement between the measurements made with the two motion capture systems was very high, demonstrating that associated with the right algorithm, the Kinect is a very reliable and valuable tool to analyze gait. Importantly, the measured spatio-temporal parameters varied significantly between age groups, step length and gait speed proving the most effective discriminating parameters. Kinect-monitoring and quantitative gait pattern analysis could therefore be routinely used to complete subjective clinical evaluation in order to improve fall risk assessment during rehabilitation. (C) 2018 Elsevier Ltd. All rights reserved.

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