A smart device inertial-sensing method for gait analysis |
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Authors: | Dax Steins Ian Sheret Helen Dawes Patrick Esser Johnny Collett |
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Affiliation: | 1. Movement Science Group, Faculty of Healthy & Life Sciences, Oxford Brookes University, Oxford, United Kingdom;2. Computer Laboratory, University of Cambridge, Cambridge, United Kingdom;3. Department of Clinical Neurology, University of Oxford, Oxford, United Kingdom;4. Cardiff University, Wales, United Kingdom |
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Abstract: | The purpose of this study was to establish and cross-validate a method for analyzing gait patterns determined by the center of mass (COM) through inertial sensors embedded in smart devices. The method employed an extended Kalman filter in conjunction with a quaternion rotation matrix approach to transform accelerations from the object onto the global frame. Derived by double integration, peak-to-trough changes in vertical COM position captured by a motion capture system, inertial measurement unit, and smart device were compared in terms of averaged and individual steps. The inter-rater reliability and levels of agreement for systems were discerned through intraclass correlation coefficients (ICC) and Bland–Altman plots. ICCs corresponding to inter-rater reliability were good-to-excellent for position data (ICCs,.80–.95) and acceleration data (ICCs,.54–.81). Levels of agreements were moderate for position data (LOA, 3.1–19.3%) and poor for acceleration data (LOA, 6.8%–17.8%). The Bland–Altman plots, however, revealed a small systematic error, in which peak-to-trough changes in vertical COM position were underestimated by 2.2 mm; the Kalman filter?s accuracy requires further investigation to minimize this oversight. More importantly, however, the study?s preliminary results indicate that the smart device allows for reliable COM measurements, opening up a cost-effective, user-friendly, and popular solution for remotely monitoring movement. The long-term impact of the smart device method on patient rehabilitation and therapy cannot be underestimated: not only could healthcare expenditures be curbed (smart devices being more affordable than today‘s motion sensors), but a more refined grasp of individual functioning, activity, and participation within everyday life could be attained. |
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Keywords: | Accelerometer Kalman filter Smartphones Inertial measurement unit Gait analysis mHealth |
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