Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems

<p>Abstract</p> <p>Background</p> <p>Falls can cause trauma, disability and death among older people. Ambulatory accelerometer devices are currently capable of detecting falls in a controlled environment. However, research suggests that most current approaches can tend...

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Main Authors: Yuwono Mitchell, Moulton Bruce D, Su Steven W, Celler Branko G, Nguyen Hung T
Format: Article
Language:English
Published: BMC 2012-02-01
Series:BioMedical Engineering OnLine
Online Access:http://www.biomedical-engineering-online.com/content/11/1/9
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spelling doaj-0d9467750c3546c5b94c4d2216d1d8422020-11-25T00:55:22ZengBMCBioMedical Engineering OnLine1475-925X2012-02-01111910.1186/1475-925X-11-9Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systemsYuwono MitchellMoulton Bruce DSu Steven WCeller Branko GNguyen Hung T<p>Abstract</p> <p>Background</p> <p>Falls can cause trauma, disability and death among older people. Ambulatory accelerometer devices are currently capable of detecting falls in a controlled environment. However, research suggests that most current approaches can tend to have insufficient sensitivity and specificity in non-laboratory environments, in part because impacts can be experienced as part of ordinary daily living activities.</p> <p>Method</p> <p>We used a waist-worn wireless tri-axial accelerometer combined with digital signal processing, clustering and neural network classifiers. The method includes the application of Discrete Wavelet Transform, Regrouping Particle Swarm Optimization, Gaussian Distribution of Clustered Knowledge and an ensemble of classifiers including a multilayer perceptron and Augmented Radial Basis Function (ARBF) neural networks.</p> <p>Results</p> <p>Preliminary testing with 8 healthy individuals in a home environment yields 98.6% sensitivity to falls and 99.6% specificity for routine Activities of Daily Living (ADL) data. Single ARB and MLP classifiers were compared with a combined classifier. The combined classifier offers the greatest sensitivity, with a slight reduction in specificity for routine ADL and an increased specificity for exercise activities. In preliminary tests, the approach achieves 100% sensitivity on in-group falls, 97.65% on out-group falls, 99.33% specificity on routine ADL, and 96.59% specificity on exercise ADL.</p> <p>Conclusion</p> <p>The pre-processing and feature-extraction steps appear to simplify the signal while successfully extracting the essential features that are required to characterize a fall. The results suggest this combination of classifiers can perform better than MLP alone. Preliminary testing suggests these methods may be useful for researchers who are attempting to improve the performance of ambulatory fall-detection systems.</p> http://www.biomedical-engineering-online.com/content/11/1/9
collection DOAJ
language English
format Article
sources DOAJ
author Yuwono Mitchell
Moulton Bruce D
Su Steven W
Celler Branko G
Nguyen Hung T
spellingShingle Yuwono Mitchell
Moulton Bruce D
Su Steven W
Celler Branko G
Nguyen Hung T
Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
BioMedical Engineering OnLine
author_facet Yuwono Mitchell
Moulton Bruce D
Su Steven W
Celler Branko G
Nguyen Hung T
author_sort Yuwono Mitchell
title Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
title_short Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
title_full Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
title_fullStr Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
title_full_unstemmed Unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
title_sort unsupervised machine-learning method for improving the performance of ambulatory fall-detection systems
publisher BMC
series BioMedical Engineering OnLine
issn 1475-925X
publishDate 2012-02-01
description <p>Abstract</p> <p>Background</p> <p>Falls can cause trauma, disability and death among older people. Ambulatory accelerometer devices are currently capable of detecting falls in a controlled environment. However, research suggests that most current approaches can tend to have insufficient sensitivity and specificity in non-laboratory environments, in part because impacts can be experienced as part of ordinary daily living activities.</p> <p>Method</p> <p>We used a waist-worn wireless tri-axial accelerometer combined with digital signal processing, clustering and neural network classifiers. The method includes the application of Discrete Wavelet Transform, Regrouping Particle Swarm Optimization, Gaussian Distribution of Clustered Knowledge and an ensemble of classifiers including a multilayer perceptron and Augmented Radial Basis Function (ARBF) neural networks.</p> <p>Results</p> <p>Preliminary testing with 8 healthy individuals in a home environment yields 98.6% sensitivity to falls and 99.6% specificity for routine Activities of Daily Living (ADL) data. Single ARB and MLP classifiers were compared with a combined classifier. The combined classifier offers the greatest sensitivity, with a slight reduction in specificity for routine ADL and an increased specificity for exercise activities. In preliminary tests, the approach achieves 100% sensitivity on in-group falls, 97.65% on out-group falls, 99.33% specificity on routine ADL, and 96.59% specificity on exercise ADL.</p> <p>Conclusion</p> <p>The pre-processing and feature-extraction steps appear to simplify the signal while successfully extracting the essential features that are required to characterize a fall. The results suggest this combination of classifiers can perform better than MLP alone. Preliminary testing suggests these methods may be useful for researchers who are attempting to improve the performance of ambulatory fall-detection systems.</p>
url http://www.biomedical-engineering-online.com/content/11/1/9
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AT cellerbrankog unsupervisedmachinelearningmethodforimprovingtheperformanceofambulatoryfalldetectionsystems
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