DocumentCode :
1304662
Title :
An Analysis of the Accuracy of Wearable Sensors for Classifying the Causes of Falls in Humans
Author :
Aziz, Omar ; Robinovitch, Stephen N.
Author_Institution :
Injury Prevention & Mobility Lab., Simon Fraser Univ., Burnaby, BC, Canada
Volume :
19
Issue :
6
fYear :
2011
Firstpage :
670
Lastpage :
676
Abstract :
Falls are the number one cause of injury in older adults. Wearable sensors, typically consisting of accelerometers and/or gyroscopes, represent a promising technology for preventing and mitigating the effects of falls. At present, the goal of such “ambulatory fall monitors” is to detect the occurrence of a fall and alert care providers to this event. Future systems may also provide information on the causes and circumstances of falls, to aid clinical diagnosis and targeting of interventions. As a first step towards this goal, the objective of the current study was to develop and evaluate the accuracy of a wearable sensor system for determining the causes of falls. Sixteen young adults participated in experimental trials involving falls due to slips, trips, and “other” causes of imbalance. Three-dimensional acceleration data acquired during the falling trials were input to a linear discriminant analysis technique. This routine achieved 96% sensitivity and 98% specificity in distinguishing the causes of a falls using acceleration data from three markers (left ankle, right ankle, and sternum). In contrast, a single marker provided 54% sensitivity and two markers provided 89% sensitivity. These results indicate the utility of a three-node accelerometer array for distinguishing the cause of falls.
Keywords :
accelerometers; biomechanics; biomedical equipment; geriatrics; gyroscopes; injuries; patient diagnosis; acceleration data; ambulatory fall monitoring; clinical diagnosis; gyroscopes; injury; linear discriminant analysis technique; older adults; slips; three-dimensional acceleration data; three-node accelerometer array; wearable sensor system; Accelerometers; Failure analysis; Injuries; Machine learning; Sternum; Wearable sensors; Accelerometers; aging; balance; biomechanics; fall detection; falls; injury; linear discriminant analysis (LDA); machine learning; postural stability; Acceleration; Accidental Falls; Adult; Algorithms; Ankle; Biomechanics; Data Interpretation, Statistical; False Negative Reactions; False Positive Reactions; Female; Functional Laterality; Head Movements; Humans; Linear Models; Male; Monitoring, Ambulatory; Pelvis; Reproducibility of Results; Risk; Sternum; Transducers; Young Adult;
fLanguage :
English
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1534-4320
Type :
jour
DOI :
10.1109/TNSRE.2011.2162250
Filename :
5995172
Link To Document :
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