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Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods

PURPOSE: To assess the validity of a derived algorithm, combining tri-axial accelerometry and heart rate (HR) data, compared to a research-grade multi-sensor physical activity device, for the estimation of ambulatory physical activity energy expenditure (PAEE) in individuals with traumatic lower-lim...

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Autores principales: Ladlow, Peter, Nightingale, Tom E., McGuigan, M. Polly, Bennett, Alexander N., Phillip, Rhodri D., Bilzon, James L. J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6354995/
https://www.ncbi.nlm.nih.gov/pubmed/30703115
http://dx.doi.org/10.1371/journal.pone.0209249
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author Ladlow, Peter
Nightingale, Tom E.
McGuigan, M. Polly
Bennett, Alexander N.
Phillip, Rhodri D.
Bilzon, James L. J.
author_facet Ladlow, Peter
Nightingale, Tom E.
McGuigan, M. Polly
Bennett, Alexander N.
Phillip, Rhodri D.
Bilzon, James L. J.
author_sort Ladlow, Peter
collection PubMed
description PURPOSE: To assess the validity of a derived algorithm, combining tri-axial accelerometry and heart rate (HR) data, compared to a research-grade multi-sensor physical activity device, for the estimation of ambulatory physical activity energy expenditure (PAEE) in individuals with traumatic lower-limb amputation. METHODS: Twenty-eight participants [unilateral (n = 9), bilateral (n = 10) with lower-limb amputations, and non-injured controls (n = 9)] completed eight activities; rest, ambulating at 5 progressive treadmill velocities (0.48, 0.67, 0.89, 1.12, 1.34m.s(-1)) and 2 gradients (3 and 5%) at 0.89m.s(-1). During each task, expired gases were collected for the determination of [Image: see text] and subsequent calculation of PAEE. An Actigraph GT3X+ accelerometer was worn on the hip of the shortest residual limb and, a HR monitor and an Actiheart (AHR) device were worn on the chest. Multiple linear regressions were employed to derive population-specific PAEE estimated algorithms using Actigraph GT3X+ outputs and HR signals (GT3X+HR). Mean bias±95% Limits of Agreement (LoA) and error statistics were calculated between criterion PAEE (indirect calorimetry) and PAEE predicted using GT3X+HR and AHR. RESULTS: Both measurement approaches used to predict PAEE were significantly related (P<0.01) with criterion PAEE. GT3X+HR revealed the strongest association, smallest LoA and least error. Predicted PAEE (GT3X+HR; unilateral; r = 0.92, bilateral; r = 0.93, and control; r = 0.91, and AHR; unilateral; r = 0.86, bilateral; r = 0.81, and control; r = 0.67). Mean±SD percent error across all activities were 18±14%, 15±12% and 15±14% for the GT3X+HR and 45±20%, 39±23% and 34±28% in the AHR model, for unilateral, bilateral and control groups, respectively. CONCLUSIONS: Statistically derived algorithms (GT3X+HR) provide a more valid estimate of PAEE in individuals with traumatic lower-limb amputation, compared to a proprietary group calibration algorithm (AHR). Outputs from AHR displayed considerable random error when tested in a laboratory setting in individuals with lower-limb amputation.
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spelling pubmed-63549952019-02-15 Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods Ladlow, Peter Nightingale, Tom E. McGuigan, M. Polly Bennett, Alexander N. Phillip, Rhodri D. Bilzon, James L. J. PLoS One Research Article PURPOSE: To assess the validity of a derived algorithm, combining tri-axial accelerometry and heart rate (HR) data, compared to a research-grade multi-sensor physical activity device, for the estimation of ambulatory physical activity energy expenditure (PAEE) in individuals with traumatic lower-limb amputation. METHODS: Twenty-eight participants [unilateral (n = 9), bilateral (n = 10) with lower-limb amputations, and non-injured controls (n = 9)] completed eight activities; rest, ambulating at 5 progressive treadmill velocities (0.48, 0.67, 0.89, 1.12, 1.34m.s(-1)) and 2 gradients (3 and 5%) at 0.89m.s(-1). During each task, expired gases were collected for the determination of [Image: see text] and subsequent calculation of PAEE. An Actigraph GT3X+ accelerometer was worn on the hip of the shortest residual limb and, a HR monitor and an Actiheart (AHR) device were worn on the chest. Multiple linear regressions were employed to derive population-specific PAEE estimated algorithms using Actigraph GT3X+ outputs and HR signals (GT3X+HR). Mean bias±95% Limits of Agreement (LoA) and error statistics were calculated between criterion PAEE (indirect calorimetry) and PAEE predicted using GT3X+HR and AHR. RESULTS: Both measurement approaches used to predict PAEE were significantly related (P<0.01) with criterion PAEE. GT3X+HR revealed the strongest association, smallest LoA and least error. Predicted PAEE (GT3X+HR; unilateral; r = 0.92, bilateral; r = 0.93, and control; r = 0.91, and AHR; unilateral; r = 0.86, bilateral; r = 0.81, and control; r = 0.67). Mean±SD percent error across all activities were 18±14%, 15±12% and 15±14% for the GT3X+HR and 45±20%, 39±23% and 34±28% in the AHR model, for unilateral, bilateral and control groups, respectively. CONCLUSIONS: Statistically derived algorithms (GT3X+HR) provide a more valid estimate of PAEE in individuals with traumatic lower-limb amputation, compared to a proprietary group calibration algorithm (AHR). Outputs from AHR displayed considerable random error when tested in a laboratory setting in individuals with lower-limb amputation. Public Library of Science 2019-01-31 /pmc/articles/PMC6354995/ /pubmed/30703115 http://dx.doi.org/10.1371/journal.pone.0209249 Text en © 2019 Ladlow 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
Ladlow, Peter
Nightingale, Tom E.
McGuigan, M. Polly
Bennett, Alexander N.
Phillip, Rhodri D.
Bilzon, James L. J.
Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
title Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
title_full Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
title_fullStr Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
title_full_unstemmed Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
title_short Predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
title_sort predicting ambulatory energy expenditure in lower limb amputees using multi-sensor methods
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6354995/
https://www.ncbi.nlm.nih.gov/pubmed/30703115
http://dx.doi.org/10.1371/journal.pone.0209249
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