Development and large-scale validation of the Watch Walk wrist-worn digital gait biomarkers

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作者
Lloyd L. Y. Chan
Tiffany C. M. Choi
Stephen R. Lord
Matthew A. Brodie
机构
[1] Neuroscience Research Australia,Falls, Balance and Injury Research Centre
[2] University of New South Wales,School of Population Health
[3] Caritas Institute of Higher Education,School of Health Sciences
[4] University of New South Wales,Graduate School of Biomedical Engineering
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Scientific Reports | / 12卷
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摘要
Digital gait biomarkers (including walking speed) indicate functional decline and predict hospitalization and mortality. However, waist or lower-limb devices often used are not designed for continuous life-long use. While wrist devices are ubiquitous and many large research repositories include wrist-sensor data, widely accepted and validated digital gait biomarkers derived from wrist-worn accelerometers are not available yet. Here we describe the development of advanced signal processing algorithms that extract digital gait biomarkers from wrist-worn devices and validation using 1-week data from 78,822 UK Biobank participants. Our gait biomarkers demonstrate good test–retest-reliability, strong agreement with electronic walkway measurements of gait speed and self-reported pace and significantly discriminate individuals with poor self-reported health. With the almost universal uptake of smart-watches, our algorithms offer a new approach to remotely monitor life-long population level walking speed, quality, quantity and distribution, evaluate disease progression, predict risk of adverse events and provide digital gait endpoints for clinical trials.
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