DocumentCode
45174
Title
A Novel Methodology for Assessing the Fall Risk Using Low-Cost and Off-the-Shelf Devices
Author
Loncomilla, Patricio ; Tapia, Claudio ; Daud, Omar ; Ruiz-del-Solar, Javier
Author_Institution
Dept. of Electr. Eng., Univ. de Chile, Santiago, Chile
Volume
44
Issue
3
fYear
2014
fDate
Jun-14
Firstpage
406
Lastpage
415
Abstract
Early detection of fall risk can reduce health costs associated with surgery, rehabilitation, imaging studies, hospitalizations, and medical evaluations. This paper proposes a measurement-focused study oriented to evaluate a new methodology for assessing fall risk using low-cost and off-the-shelf devices. The proposed methodology consists of a data acquisition system, a data analysis system, and a fall risk assessment system. The data acquisition system is composed by a standard notebook computer and video game input devices: a Kinect, a Wii balance board, and two Wii motion controllers. The data analysis system and the fall risk assessment system, in turn, use signal processing, data mining, and computational intelligence methods, in order to analyze the acquired data for determining the fall risk of the subject under analysis. This methodology includes six static and two dynamic tests. Experiments were conducted on a population of 37 subjects: 16 with falling background, and 21 with nonfalling background. These two groups have the same age distribution. As nonlinear binary classification techniques were used, methodologies based on confidence intervals are not applicable and then tenfold cross validation was used to estimate accuracy. Hence, such a methodology can classify the fall risk as high or low, with an accuracy of 89.2%. The proposed methodology allows the construction of low-cost, portable, replicable, objective, and reliable fall risk assessment systems.
Keywords
biomedical equipment; data acquisition; data mining; interactive devices; notebook computers; patient rehabilitation; risk management; surgery; Wii balance board; Wii motion controllers; computational intelligence methods; data acquisition system; data analysis; data mining; fall risk assessment system; fall risk detection; hospitalizations; low-cost devices; medical evaluations; off-the-shelf devices; patient rehabilitation; signal processing; standard notebook computer; surgery; video game input devices; Accuracy; Data acquisition; Data analysis; Risk management; Senior citizens; Standards; Vectors; Fall risk assessment; functional tests; statistical classifiers;
fLanguage
English
Journal_Title
Human-Machine Systems, IEEE Transactions on
Publisher
ieee
ISSN
2168-2291
Type
jour
DOI
10.1109/THMS.2014.2309493
Filename
6776554
Link To Document