Understanding the effects of pre-processing on extracted signal features from gait accelerometry signals

Abstract Gait accelerometry is an important approach for gait assessment. Previous contributions have adopted various pre-processing approaches for gait accelerometry signals, but none have thoroughly investigated the effects of such pre-processing operations on the obtained results. Therefore, this...

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Veröffentlicht in:Computers in biology and medicine 2015-07, Vol.62, p.164-174
Hauptverfasser: Millecamps, Alexandre, Lowry, Kristin A, Brach, Jennifer S, Perera, Subashan, Redfern, Mark S, Sejdić, Ervin
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container_title Computers in biology and medicine
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creator Millecamps, Alexandre
Lowry, Kristin A
Brach, Jennifer S
Perera, Subashan
Redfern, Mark S
Sejdić, Ervin
description Abstract Gait accelerometry is an important approach for gait assessment. Previous contributions have adopted various pre-processing approaches for gait accelerometry signals, but none have thoroughly investigated the effects of such pre-processing operations on the obtained results. Therefore, this paper investigated the influence of pre-processing operations on signal features extracted from gait accelerometry signals. These signals were collected from 35 participants aged over 65 years: 14 of them were healthy controls (HC), 10 had Parkinson׳s disease (PD) and 11 had peripheral neuropathy (PN). The participants walked on a treadmill at preferred speed. Signal features in time, frequency and time–frequency domains were computed for both raw and pre-processed signals. The pre-processing stage consisted of applying tilt correction and denoising operations to acquired signals. We first examined the effects of these operations separately, followed by the investigation of their joint effects. Several important observations were made based on the obtained results. First, the denoising operation alone had almost no effects in comparison to the trends observed in the raw data. Second, the tilt correction affected the reported results to a certain degree, which could lead to a better discrimination between groups. Third, the combination of the two pre-processing operations yielded similar trends as the tilt correction alone. These results indicated that while gait accelerometry is a valuable approach for the gait assessment, one has to carefully adopt any pre-processing steps as they alter the observed findings.
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subjects Accelerometers
Accelerometry - methods
Aged
Aged, 80 and over
Female
Fitness equipment
Gait
Gait accelerometry
Healthy controls
Humans
Internal Medicine
Male
Mortality
Other
Parkinson Disease - diagnosis
Parkinson Disease - physiopathology
Parkinson׳s disease
Peripheral Nervous System Diseases - diagnosis
Peripheral Nervous System Diseases - physiopathology
Peripheral neuropathy
Pre-processing effects
Signal features
Signal processing
Signal Processing, Computer-Assisted
Walking
title Understanding the effects of pre-processing on extracted signal features from gait accelerometry signals
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