Optimization and Technical Validation of the AIDE-MOI Fall Detection Algorithm in a Real-Life Setting with Older Adults
Version
Published
Date Issued
2019
Author(s)
Scheurer, Simon
Bärtschi, Marcel
Meerstetter, Tobias
Nef, Tobias
Urwyler, Prabitha
Type
Article
Language
English
Abstract
Falls are the primary contributors of accidents in elderly people. An important factor of fall severity is the amount of time that people lie on the ground. To minimize consequences through a short reaction time, the motion sensor “AIDE-MOI” was developed. “AIDE-MOI” senses acceleration data and analyzes if an event is a fall. The threshold-based fall detection algorithm was developed using motion data of young subjects collected in a lab setup. The aim of this study was to improve and validate the existing fall detection algorithm. In the two-phase study, twenty subjects (age 86.25 ± 6.66 years) with a high risk of fall (Morse > 65 points) were recruited to record motion data in real-time using the AIDE-MOI sensor. The data collected in the first phase (59 days) was used to optimize the existing algorithm. The optimized second-generation algorithm was evaluated in a second phase (66 days). The data collected in the two phases, which recorded 31 real falls, was split-up into one-minute chunks for labelling as “fall” or “non-fall”. The sensitivity and specificity of the threshold-based algorithm improved significantly from 27.3% to 80.0% and 99.9957% (0.43) to 99.9978% (0.17 false alarms per week and subject), respectively.
Publisher DOI
Journal
Sensors
ISSN
1424-8220
Volume
19
Issue
6
Submitter
KuceraM
Citation apa
Scheurer, S., Koch, J. J., Kucera, M., Bryn, H., Bärtschi, M., Meerstetter, T., Nef, T., & Urwyler, P. (2019). Optimization and Technical Validation of the AIDE-MOI Fall Detection Algorithm in a Real-Life Setting with Older Adults. In Sensors (Vol. 19, Issue 6). https://doi.org/10.24451/arbor.8716
File(s)![Thumbnail Image]()
Loading...
open access
Name
sensors-19-01357.pdf
License
Attribution 4.0 International
Version
published
Size
2.4 MB
Format
Adobe PDF
Checksum (MD5)
6f251066163784087838b296cb0c339e
