| Literature DB >> 35161674 |
Kenshi Saho1, Masahiro Fujimoto2, Yoshiyuki Kobayashi2, Michito Matsumoto3.
Abstract
In a previous study, we developed a classification model to detect fall risk for elderly adults with a history of falls (fallers) using micro-Doppler radar (MDR) gait measurements via simulation. The objective was to create daily monitoring systems that can identify elderly people with a high risk of falls. This study aimed to verify the effectiveness of our model by collecting actual MDR data from community-dwelling elderly people. First, MDR gait measurements were performed in a community setting, and the efficient gait parameters for the classification of fallers were extracted. Then, a support vector machine model that was trained and validated using the simulated MDR data was tested for the gait parameters extracted from the actual MDR data. A classification accuracy of 78.8% was achieved for the actual MDR data. The validity of the experimental results was confirmed based on a comparison with the results of our previous simulation study. Thus, the practicality of the faller classification model constructed using the simulated MDR data was verified for the actual MDR data.Entities:
Keywords: elderly people; fall risk; faller classification; gait measurement; micro-Doppler radar; support vector machine
Mesh:
Year: 2022 PMID: 35161674 PMCID: PMC8839600 DOI: 10.3390/s22030930
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576