Back to Search
Start Over
Eight-Week Remote Monitoring Using a Freely Worn Device Reveals Unstable Gait Patterns in Older Fallers
- Source :
- Ieee transactions on biomedical engineering, 62(11), 2588-2594. IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
- Publication Year :
- 2015
-
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.
- Subjects :
- Male
medicine.medical_specialty
Computer science
Biomedical Engineering
Monitoring, Ambulatory
Wearable computer
Accelerometer
gait
wearable
walking
Physical medicine and rehabilitation
Gait (human)
DAILY PHYSICAL-ACTIVITY
PARKINSONS-DISEASE
ACCELEROMETER
sensor
PEOPLE
falls
medicine
distribution
older
Humans
patterns
Aged
Unstable gait
Aged, 80 and over
RISK
variability
activity
ADULTS
Gait
daily
remote
ACCELERATION PATTERNS
monitoring
DAILY-LIFE
exposure
Physical therapy
Accidental Falls
Female
cadence
PELVIS
Accelerometers
Falling (sensation)
human activities
Subjects
Details
- Language :
- English
- ISSN :
- 00189294
- Database :
- OpenAIRE
- Journal :
- Ieee transactions on biomedical engineering, 62(11), 2588-2594. IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
- Accession number :
- edsair.doi.dedup.....49cd82fb20a9d9e68f7d97c66b423840