• DocumentCode
    3602283
  • Title

    Eight-Week Remote Monitoring Using a Freely Worn Device Reveals Unstable Gait Patterns in Older Fallers

  • Author

    Brodie, Matthew A. ; Lord, Stephen R. ; Coppens, Milou J. ; Annegarn, Janneke ; Delbaere, Kim

  • Author_Institution
    Neurosci. Res. Australia, Univ. of New South Wales, Sydney, NSW, Australia
  • Volume
    62
  • Issue
    11
  • fYear
    2015
  • Firstpage
    2588
  • Lastpage
    2594
  • Abstract
    Objectives: Develop algorithms to detect gait impairments remotely using data from freely worn devices during long-term monitoring. Identify statistical models that describe how gait performances are distributed over several weeks. Determine the data window required to reliably assess an increased propensity for falling. Methods: 1085 days of walking data were collected from eighteen independent-living older people (mean age 83 years) using a freely worn pendant sensor (housing a triaxial accelerometer and pressure sensor). Statistical distributions from several accelerometer-derived gait features (encompassing quantity, exposure, intensity, and quality) were compared for those with and without a history of falling. Results: Participants completed more short walks relative to long walks, as approximated by a power law. Walks less than 13.1 s comprised 50% of exposure to walking-related falls. Daily-life cadence was bimodal and step-time variability followed a log-normal distribution. Fallers took significantly fewer steps per walk and had relatively more exposure from short walks and greater mode of step-time variability. Conclusions: Using a freely worn device and wavelet-based analysis tools allowed long-term monitoring of walks greater than or equal to three steps. In older people, short walks constitute a large proportion of exposure to falls. To identify fallers, mode of variability may be a better measure of central tendency than mean of variability. A week´s monitoring is sufficient to reliably assess the long-term propensity for falling. Significance: Statistical distributions of gait performances provide a reference for future wearable device development and research into the complex relationships between daily-life walking patterns, morbidity, and falls.
  • Keywords
    accelerometers; biomedical telemetry; body sensor networks; gait analysis; geriatrics; mechanoception; medical disorders; patient monitoring; pressure sensors; statistical distributions; accelerometer-derived gait features; age 83 yr; eight-week remote monitoring; freely worn pendant sensor; gait impairment detection; log-normal distribution; pressure sensor; statistical distributions; time 1085 day; time 8 week; triaxial accelerometer; wavelet-based analysis tools; Biomedical monitoring; Legged locomotion; Performance evaluation; Remote monitoring; Stability analysis; Accelerometers; activity; cadence; daily; distribution; exposure; falls; gait; monitoring; older; patterns; people; remote; sensor; variability; walking; wearable;
  • fLanguage
    English
  • Journal_Title
    Biomedical Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9294
  • Type

    jour

  • DOI
    10.1109/TBME.2015.2433935
  • Filename
    7109145