Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.

Traditionally, gait analysis has been centered on the idea of average behavior and normality. On one hand, clinical diagnoses and therapeutic interventions typically assume that average gait patterns remain constant over time. On the other hand, it is well known that all our movements are accompanie...

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Main Authors: Fabian Horst, Alexander Eekhoff, Karl M Newell, Wolfgang I Schöllhorn
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5472314?pdf=render
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spelling doaj-14bb638237aa461a949a2b7b8f71f2ed2020-11-24T20:50:15ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01126e017973810.1371/journal.pone.0179738Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.Fabian HorstAlexander EekhoffKarl M NewellWolfgang I SchöllhornTraditionally, gait analysis has been centered on the idea of average behavior and normality. On one hand, clinical diagnoses and therapeutic interventions typically assume that average gait patterns remain constant over time. On the other hand, it is well known that all our movements are accompanied by a certain amount of variability, which does not allow us to make two identical steps. The purpose of this study was to examine changes in the intra-individual gait patterns across different time-scales (i.e., tens-of-mins, tens-of-hours).Nine healthy subjects performed 15 gait trials at a self-selected speed on 6 sessions within one day (duration between two subsequent sessions from 10 to 90 mins). For each trial, time-continuous ground reaction forces and lower body joint angles were measured. A supervised learning model using a kernel-based discriminant regression was applied for classifying sessions within individual gait patterns.Discernable characteristics of intra-individual gait patterns could be distinguished between repeated sessions by classification rates of 67.8 ± 8.8% and 86.3 ± 7.9% for the six-session-classification of ground reaction forces and lower body joint angles, respectively. Furthermore, the one-on-one-classification showed that increasing classification rates go along with increasing time durations between two sessions and indicate that changes of gait patterns appear at different time-scales.Discernable characteristics between repeated sessions indicate continuous intrinsic changes in intra-individual gait patterns and suggest a predominant role of deterministic processes in human motor control and learning. Natural changes of gait patterns without any externally induced injury or intervention may reflect continuous adaptations of the motor system over several time-scales. Accordingly, the modelling of walking by means of average gait patterns that are assumed to be near constant over time needs to be reconsidered in the context of these findings, especially towards more individualized and situational diagnoses and therapy.http://europepmc.org/articles/PMC5472314?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Fabian Horst
Alexander Eekhoff
Karl M Newell
Wolfgang I Schöllhorn
spellingShingle Fabian Horst
Alexander Eekhoff
Karl M Newell
Wolfgang I Schöllhorn
Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
PLoS ONE
author_facet Fabian Horst
Alexander Eekhoff
Karl M Newell
Wolfgang I Schöllhorn
author_sort Fabian Horst
title Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
title_short Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
title_full Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
title_fullStr Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
title_full_unstemmed Intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
title_sort intra-individual gait patterns across different time-scales as revealed by means of a supervised learning model using kernel-based discriminant regression.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Traditionally, gait analysis has been centered on the idea of average behavior and normality. On one hand, clinical diagnoses and therapeutic interventions typically assume that average gait patterns remain constant over time. On the other hand, it is well known that all our movements are accompanied by a certain amount of variability, which does not allow us to make two identical steps. The purpose of this study was to examine changes in the intra-individual gait patterns across different time-scales (i.e., tens-of-mins, tens-of-hours).Nine healthy subjects performed 15 gait trials at a self-selected speed on 6 sessions within one day (duration between two subsequent sessions from 10 to 90 mins). For each trial, time-continuous ground reaction forces and lower body joint angles were measured. A supervised learning model using a kernel-based discriminant regression was applied for classifying sessions within individual gait patterns.Discernable characteristics of intra-individual gait patterns could be distinguished between repeated sessions by classification rates of 67.8 ± 8.8% and 86.3 ± 7.9% for the six-session-classification of ground reaction forces and lower body joint angles, respectively. Furthermore, the one-on-one-classification showed that increasing classification rates go along with increasing time durations between two sessions and indicate that changes of gait patterns appear at different time-scales.Discernable characteristics between repeated sessions indicate continuous intrinsic changes in intra-individual gait patterns and suggest a predominant role of deterministic processes in human motor control and learning. Natural changes of gait patterns without any externally induced injury or intervention may reflect continuous adaptations of the motor system over several time-scales. Accordingly, the modelling of walking by means of average gait patterns that are assumed to be near constant over time needs to be reconsidered in the context of these findings, especially towards more individualized and situational diagnoses and therapy.
url http://europepmc.org/articles/PMC5472314?pdf=render
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