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A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis

Gait speed is a powerful clinical marker for mobility impairment in patients suffering from neurological disorders. However, assessment of gait speed in coordination with delivery of comprehensive care is usually constrained to clinical environments and is often limited due to mounting demands on th...

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Autores principales: McGinnis, Ryan S., Mahadevan, Nikhil, Moon, Yaejin, Seagers, Kirsten, Sheth, Nirav, Wright, John A., DiCristofaro, Steven, Silva, Ikaro, Jortberg, Elise, Ceruolo, Melissa, Pindado, Jesus A., Sosnoff, Jacob, Ghaffari, Roozbeh, Patel, Shyamal
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5453431/
https://www.ncbi.nlm.nih.gov/pubmed/28570570
http://dx.doi.org/10.1371/journal.pone.0178366
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author McGinnis, Ryan S.
Mahadevan, Nikhil
Moon, Yaejin
Seagers, Kirsten
Sheth, Nirav
Wright, John A.
DiCristofaro, Steven
Silva, Ikaro
Jortberg, Elise
Ceruolo, Melissa
Pindado, Jesus A.
Sosnoff, Jacob
Ghaffari, Roozbeh
Patel, Shyamal
author_facet McGinnis, Ryan S.
Mahadevan, Nikhil
Moon, Yaejin
Seagers, Kirsten
Sheth, Nirav
Wright, John A.
DiCristofaro, Steven
Silva, Ikaro
Jortberg, Elise
Ceruolo, Melissa
Pindado, Jesus A.
Sosnoff, Jacob
Ghaffari, Roozbeh
Patel, Shyamal
author_sort McGinnis, Ryan S.
collection PubMed
description Gait speed is a powerful clinical marker for mobility impairment in patients suffering from neurological disorders. However, assessment of gait speed in coordination with delivery of comprehensive care is usually constrained to clinical environments and is often limited due to mounting demands on the availability of trained clinical staff. These limitations in assessment design could give rise to poor ecological validity and limited ability to tailor interventions to individual patients. Recent advances in wearable sensor technologies have fostered the development of new methods for monitoring parameters that characterize mobility impairment, such as gait speed, outside the clinic, and therefore address many of the limitations associated with clinical assessments. However, these methods are often validated using normal gait patterns; and extending their utility to subjects with gait impairments continues to be a challenge. In this paper, we present a machine learning method for estimating gait speed using a configurable array of skin-mounted, conformal accelerometers. We establish the accuracy of this technique on treadmill walking data from subjects with normal gait patterns and subjects with multiple sclerosis-induced gait impairments. For subjects with normal gait, the best performing model systematically overestimates speed by only 0.01 m/s, detects changes in speed to within less than 1%, and achieves a root-mean-square-error of 0.12 m/s. Extending these models trained on normal gait to subjects with gait impairments yields only minor changes in model performance. For example, for subjects with gait impairments, the best performing model systematically overestimates speed by 0.01 m/s, quantifies changes in speed to within 1%, and achieves a root-mean-square-error of 0.14 m/s. Additional analyses demonstrate that there is no correlation between gait speed estimation error and impairment severity, and that the estimated speeds maintain the clinical significance of ground truth speed in this population. These results support the use of wearable accelerometer arrays for estimating walking speed in normal subjects and their extension to MS patient cohorts with gait impairment.
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spelling pubmed-54534312017-06-12 A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis McGinnis, Ryan S. Mahadevan, Nikhil Moon, Yaejin Seagers, Kirsten Sheth, Nirav Wright, John A. DiCristofaro, Steven Silva, Ikaro Jortberg, Elise Ceruolo, Melissa Pindado, Jesus A. Sosnoff, Jacob Ghaffari, Roozbeh Patel, Shyamal PLoS One Research Article Gait speed is a powerful clinical marker for mobility impairment in patients suffering from neurological disorders. However, assessment of gait speed in coordination with delivery of comprehensive care is usually constrained to clinical environments and is often limited due to mounting demands on the availability of trained clinical staff. These limitations in assessment design could give rise to poor ecological validity and limited ability to tailor interventions to individual patients. Recent advances in wearable sensor technologies have fostered the development of new methods for monitoring parameters that characterize mobility impairment, such as gait speed, outside the clinic, and therefore address many of the limitations associated with clinical assessments. However, these methods are often validated using normal gait patterns; and extending their utility to subjects with gait impairments continues to be a challenge. In this paper, we present a machine learning method for estimating gait speed using a configurable array of skin-mounted, conformal accelerometers. We establish the accuracy of this technique on treadmill walking data from subjects with normal gait patterns and subjects with multiple sclerosis-induced gait impairments. For subjects with normal gait, the best performing model systematically overestimates speed by only 0.01 m/s, detects changes in speed to within less than 1%, and achieves a root-mean-square-error of 0.12 m/s. Extending these models trained on normal gait to subjects with gait impairments yields only minor changes in model performance. For example, for subjects with gait impairments, the best performing model systematically overestimates speed by 0.01 m/s, quantifies changes in speed to within 1%, and achieves a root-mean-square-error of 0.14 m/s. Additional analyses demonstrate that there is no correlation between gait speed estimation error and impairment severity, and that the estimated speeds maintain the clinical significance of ground truth speed in this population. These results support the use of wearable accelerometer arrays for estimating walking speed in normal subjects and their extension to MS patient cohorts with gait impairment. Public Library of Science 2017-06-01 /pmc/articles/PMC5453431/ /pubmed/28570570 http://dx.doi.org/10.1371/journal.pone.0178366 Text en © 2017 McGinnis et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
McGinnis, Ryan S.
Mahadevan, Nikhil
Moon, Yaejin
Seagers, Kirsten
Sheth, Nirav
Wright, John A.
DiCristofaro, Steven
Silva, Ikaro
Jortberg, Elise
Ceruolo, Melissa
Pindado, Jesus A.
Sosnoff, Jacob
Ghaffari, Roozbeh
Patel, Shyamal
A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis
title A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis
title_full A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis
title_fullStr A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis
title_full_unstemmed A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis
title_short A machine learning approach for gait speed estimation using skin-mounted wearable sensors: From healthy controls to individuals with multiple sclerosis
title_sort machine learning approach for gait speed estimation using skin-mounted wearable sensors: from healthy controls to individuals with multiple sclerosis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5453431/
https://www.ncbi.nlm.nih.gov/pubmed/28570570
http://dx.doi.org/10.1371/journal.pone.0178366
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