Automatic real-time gait event detection in children using deep neural networks.

Annotation of foot-contact and foot-off events is the initial step in post-processing for most quantitative gait analysis workflows. If clean force plate strikes are present, the events can be automatically detected. Otherwise, annotation of gait events is performed manually, since reliable automati...

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Main Authors: Łukasz Kidziński, Scott Delp, Michael Schwartz
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0211466
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spelling doaj-f826b876114a48e398cb447e80efb9182021-03-03T20:55:18ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01141e021146610.1371/journal.pone.0211466Automatic real-time gait event detection in children using deep neural networks.Łukasz KidzińskiScott DelpMichael SchwartzAnnotation of foot-contact and foot-off events is the initial step in post-processing for most quantitative gait analysis workflows. If clean force plate strikes are present, the events can be automatically detected. Otherwise, annotation of gait events is performed manually, since reliable automatic tools are not available. Automatic annotation methods have been proposed for normal gait, but are usually based on heuristics of the coordinates and velocities of motion capture markers placed on the feet. These heuristics do not generalize to pathological gait due to greater variability in kinematics and anatomy of patients, as well as the presence of assistive devices. In this paper, we use a data-driven approach to predict foot-contact and foot-off events from kinematic and marker time series in children with normal and pathological gait. Through analysis of 9092 gait cycle measurements we build a predictive model using Long Short-Term Memory (LSTM) artificial neural networks. The best-performing model identifies foot-contact and foot-off events with an average error of 10 and 13 milliseconds respectively, outperforming popular heuristic-based approaches. We conclude that the accuracy of our approach is sufficient for most clinical and research applications in the pediatric population. Moreover, the LSTM architecture enables real-time predictions, enabling applications for real-time control of active assistive devices, orthoses, or prostheses. We provide the model, usage examples, and the training code in an open-source package.https://doi.org/10.1371/journal.pone.0211466
collection DOAJ
language English
format Article
sources DOAJ
author Łukasz Kidziński
Scott Delp
Michael Schwartz
spellingShingle Łukasz Kidziński
Scott Delp
Michael Schwartz
Automatic real-time gait event detection in children using deep neural networks.
PLoS ONE
author_facet Łukasz Kidziński
Scott Delp
Michael Schwartz
author_sort Łukasz Kidziński
title Automatic real-time gait event detection in children using deep neural networks.
title_short Automatic real-time gait event detection in children using deep neural networks.
title_full Automatic real-time gait event detection in children using deep neural networks.
title_fullStr Automatic real-time gait event detection in children using deep neural networks.
title_full_unstemmed Automatic real-time gait event detection in children using deep neural networks.
title_sort automatic real-time gait event detection in children using deep neural networks.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Annotation of foot-contact and foot-off events is the initial step in post-processing for most quantitative gait analysis workflows. If clean force plate strikes are present, the events can be automatically detected. Otherwise, annotation of gait events is performed manually, since reliable automatic tools are not available. Automatic annotation methods have been proposed for normal gait, but are usually based on heuristics of the coordinates and velocities of motion capture markers placed on the feet. These heuristics do not generalize to pathological gait due to greater variability in kinematics and anatomy of patients, as well as the presence of assistive devices. In this paper, we use a data-driven approach to predict foot-contact and foot-off events from kinematic and marker time series in children with normal and pathological gait. Through analysis of 9092 gait cycle measurements we build a predictive model using Long Short-Term Memory (LSTM) artificial neural networks. The best-performing model identifies foot-contact and foot-off events with an average error of 10 and 13 milliseconds respectively, outperforming popular heuristic-based approaches. We conclude that the accuracy of our approach is sufficient for most clinical and research applications in the pediatric population. Moreover, the LSTM architecture enables real-time predictions, enabling applications for real-time control of active assistive devices, orthoses, or prostheses. We provide the model, usage examples, and the training code in an open-source package.
url https://doi.org/10.1371/journal.pone.0211466
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