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Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior

Despite the positive health effect of physical activity, one third of the world’s population is estimated to be insufficiently active. Prior research has mainly investigated physical activity on an aggregate level over short periods of time, e.g., during 3 to 7 days at baseline and a few months late...

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Autores principales: Chevance, Guillaume, Baretta, Dario, Heino, Matti, Perski, Olga, Olthof, Merlijn, Klasnja, Predrag, Hekler, Eric, Godino, Job
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8121346/
https://www.ncbi.nlm.nih.gov/pubmed/33989338
http://dx.doi.org/10.1371/journal.pone.0251659
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author Chevance, Guillaume
Baretta, Dario
Heino, Matti
Perski, Olga
Olthof, Merlijn
Klasnja, Predrag
Hekler, Eric
Godino, Job
author_facet Chevance, Guillaume
Baretta, Dario
Heino, Matti
Perski, Olga
Olthof, Merlijn
Klasnja, Predrag
Hekler, Eric
Godino, Job
author_sort Chevance, Guillaume
collection PubMed
description Despite the positive health effect of physical activity, one third of the world’s population is estimated to be insufficiently active. Prior research has mainly investigated physical activity on an aggregate level over short periods of time, e.g., during 3 to 7 days at baseline and a few months later, post-intervention. To develop effective interventions, we need a better understanding of the temporal dynamics of physical activity. We proposed here an approach to studying walking behavior at “high-resolution” and by capturing the idiographic and day-to-day changes in walking behavior. We analyzed daily step count among 151 young adults with overweight or obesity who had worn an accelerometer for an average of 226 days (~25,000 observations). We then used a recursive partitioning algorithm to characterize patterns of change, here sudden behavioral gains and losses, over the course of the study. These behavioral gains or losses were defined as a 30% increase or reduction in steps relative to each participants’ median level of steps lasting at least 7 days. After the identification of gains and losses, fluctuation intensity in steps from each participant’s individual time series was computed with a dynamic complexity algorithm to identify potential early warning signals of sudden gains or losses. Results revealed that walking behavior change exhibits discontinuous changes that can be described as sudden gains and losses. On average, participants experienced six sudden gains or losses over the study. We also observed a significant and positive association between critical fluctuations in walking behavior, a form of early warning signals, and the subsequent occurrence of sudden behavioral losses in the next days. Altogether, this study suggests that walking behavior could be well understood under a dynamic paradigm. Results also provide support for the development of “just-in-time adaptive” behavioral interventions based on the detection of early warning signals for sudden behavioral losses.
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spelling pubmed-81213462021-05-24 Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior Chevance, Guillaume Baretta, Dario Heino, Matti Perski, Olga Olthof, Merlijn Klasnja, Predrag Hekler, Eric Godino, Job PLoS One Research Article Despite the positive health effect of physical activity, one third of the world’s population is estimated to be insufficiently active. Prior research has mainly investigated physical activity on an aggregate level over short periods of time, e.g., during 3 to 7 days at baseline and a few months later, post-intervention. To develop effective interventions, we need a better understanding of the temporal dynamics of physical activity. We proposed here an approach to studying walking behavior at “high-resolution” and by capturing the idiographic and day-to-day changes in walking behavior. We analyzed daily step count among 151 young adults with overweight or obesity who had worn an accelerometer for an average of 226 days (~25,000 observations). We then used a recursive partitioning algorithm to characterize patterns of change, here sudden behavioral gains and losses, over the course of the study. These behavioral gains or losses were defined as a 30% increase or reduction in steps relative to each participants’ median level of steps lasting at least 7 days. After the identification of gains and losses, fluctuation intensity in steps from each participant’s individual time series was computed with a dynamic complexity algorithm to identify potential early warning signals of sudden gains or losses. Results revealed that walking behavior change exhibits discontinuous changes that can be described as sudden gains and losses. On average, participants experienced six sudden gains or losses over the study. We also observed a significant and positive association between critical fluctuations in walking behavior, a form of early warning signals, and the subsequent occurrence of sudden behavioral losses in the next days. Altogether, this study suggests that walking behavior could be well understood under a dynamic paradigm. Results also provide support for the development of “just-in-time adaptive” behavioral interventions based on the detection of early warning signals for sudden behavioral losses. Public Library of Science 2021-05-14 /pmc/articles/PMC8121346/ /pubmed/33989338 http://dx.doi.org/10.1371/journal.pone.0251659 Text en © 2021 Chevance et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://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
Chevance, Guillaume
Baretta, Dario
Heino, Matti
Perski, Olga
Olthof, Merlijn
Klasnja, Predrag
Hekler, Eric
Godino, Job
Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
title Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
title_full Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
title_fullStr Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
title_full_unstemmed Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
title_short Characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
title_sort characterizing and predicting person-specific, day-to-day, fluctuations in walking behavior
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8121346/
https://www.ncbi.nlm.nih.gov/pubmed/33989338
http://dx.doi.org/10.1371/journal.pone.0251659
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