Cargando…

Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC

BACKGROUND: Decreasing sedentary behaviour (SB) has emerged as a public health priority since prolonged sitting increases the risk of non-communicable diseases. Mostly, the independent association of factors with SB has been investigated, although lifestyle behaviours are conditioned by interdepende...

Descripción completa

Detalles Bibliográficos
Autores principales: Buck, Christoph, Loyen, Anne, Foraita, Ronja, Van Cauwenberg, Jelle, De Craemer, Marieke, Mac Donncha, Ciaran, Oppert, Jean-Michel, Brug, Johannes, Lien, Nanna, Cardon, Greet, Pigeot, Iris, Chastin, Sebastien
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6353197/
https://www.ncbi.nlm.nih.gov/pubmed/30699199
http://dx.doi.org/10.1371/journal.pone.0211546
_version_ 1783390979147956224
author Buck, Christoph
Loyen, Anne
Foraita, Ronja
Van Cauwenberg, Jelle
De Craemer, Marieke
Mac Donncha, Ciaran
Oppert, Jean-Michel
Brug, Johannes
Lien, Nanna
Cardon, Greet
Pigeot, Iris
Chastin, Sebastien
author_facet Buck, Christoph
Loyen, Anne
Foraita, Ronja
Van Cauwenberg, Jelle
De Craemer, Marieke
Mac Donncha, Ciaran
Oppert, Jean-Michel
Brug, Johannes
Lien, Nanna
Cardon, Greet
Pigeot, Iris
Chastin, Sebastien
author_sort Buck, Christoph
collection PubMed
description BACKGROUND: Decreasing sedentary behaviour (SB) has emerged as a public health priority since prolonged sitting increases the risk of non-communicable diseases. Mostly, the independent association of factors with SB has been investigated, although lifestyle behaviours are conditioned by interdependent factors. Within the DEDIPAC Knowledge Hub, a system of sedentary behaviours (SOS)-framework was created to take interdependency among multiple factors into account. The SOS framework is based on a system approach and was developed by combining evidence synthesis and expert consensus. The present study conducted a Bayesian network analysis to investigate and map the interdependencies between factors associated with SB through the life-course from large scale empirical data. METHODS: Data from the Eurobarometer survey (80.2, 2013) that included the International physical activity questionnaire (IPAQ) short as well as socio-demographic information and questions on perceived environment, health, and psychosocial information were enriched with macro-level data from the Eurostat database. Overall, 33 factors were identified aligned to the SOS-framework to represent six clusters on the individual or regional level: 1) physical health and wellbeing, 2) social and cultural context, 3) built and natural environment, 4) psychology and behaviour, 5) institutional and home settings, 6) policy and economics. A Bayesian network analysis was conducted to investigate conditional associations among all factors and to determine their importance within these networks. Bayesian networks were estimated for the complete (23,865 EU-citizens with complete data) sample and for sex- and four age-specific subgroups. Distance and centrality were calculated to determine importance of factors within each network around SB. RESULTS: In the young (15–25), adult (26–44), and middle-aged (45–64) groups occupational level was directly associated with SB for both, men and women. Consistently, social class and educational level were indirectly associated within male adult groups, while in women factors of the family context were indirectly associated with SB. Only in older adults, factors of the built environment were relevant with regard to SB, while factors of the home and institutional settings were less important compared to younger age groups. CONCLUSION: Factors of the home and institutional settings as well as the social and cultural context were found to be important in the network of associations around SB supporting the priority for future research in these clusters. Particularly, occupational status was found to be the main driver of SB through the life-course. Investigating conditional associations by Bayesian networks gave a better understanding of the complex interplay of factors being associated with SB. This may provide detailed insights in the mechanisms behind the burden of SB to effectively inform policy makers for detailed intervention planning. However, considering the complexity of the issue, there is need for a more comprehensive system of data collection including objective measures of sedentary time.
format Online
Article
Text
id pubmed-6353197
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-63531972019-02-15 Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC Buck, Christoph Loyen, Anne Foraita, Ronja Van Cauwenberg, Jelle De Craemer, Marieke Mac Donncha, Ciaran Oppert, Jean-Michel Brug, Johannes Lien, Nanna Cardon, Greet Pigeot, Iris Chastin, Sebastien PLoS One Research Article BACKGROUND: Decreasing sedentary behaviour (SB) has emerged as a public health priority since prolonged sitting increases the risk of non-communicable diseases. Mostly, the independent association of factors with SB has been investigated, although lifestyle behaviours are conditioned by interdependent factors. Within the DEDIPAC Knowledge Hub, a system of sedentary behaviours (SOS)-framework was created to take interdependency among multiple factors into account. The SOS framework is based on a system approach and was developed by combining evidence synthesis and expert consensus. The present study conducted a Bayesian network analysis to investigate and map the interdependencies between factors associated with SB through the life-course from large scale empirical data. METHODS: Data from the Eurobarometer survey (80.2, 2013) that included the International physical activity questionnaire (IPAQ) short as well as socio-demographic information and questions on perceived environment, health, and psychosocial information were enriched with macro-level data from the Eurostat database. Overall, 33 factors were identified aligned to the SOS-framework to represent six clusters on the individual or regional level: 1) physical health and wellbeing, 2) social and cultural context, 3) built and natural environment, 4) psychology and behaviour, 5) institutional and home settings, 6) policy and economics. A Bayesian network analysis was conducted to investigate conditional associations among all factors and to determine their importance within these networks. Bayesian networks were estimated for the complete (23,865 EU-citizens with complete data) sample and for sex- and four age-specific subgroups. Distance and centrality were calculated to determine importance of factors within each network around SB. RESULTS: In the young (15–25), adult (26–44), and middle-aged (45–64) groups occupational level was directly associated with SB for both, men and women. Consistently, social class and educational level were indirectly associated within male adult groups, while in women factors of the family context were indirectly associated with SB. Only in older adults, factors of the built environment were relevant with regard to SB, while factors of the home and institutional settings were less important compared to younger age groups. CONCLUSION: Factors of the home and institutional settings as well as the social and cultural context were found to be important in the network of associations around SB supporting the priority for future research in these clusters. Particularly, occupational status was found to be the main driver of SB through the life-course. Investigating conditional associations by Bayesian networks gave a better understanding of the complex interplay of factors being associated with SB. This may provide detailed insights in the mechanisms behind the burden of SB to effectively inform policy makers for detailed intervention planning. However, considering the complexity of the issue, there is need for a more comprehensive system of data collection including objective measures of sedentary time. Public Library of Science 2019-01-30 /pmc/articles/PMC6353197/ /pubmed/30699199 http://dx.doi.org/10.1371/journal.pone.0211546 Text en © 2019 Buck 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
Buck, Christoph
Loyen, Anne
Foraita, Ronja
Van Cauwenberg, Jelle
De Craemer, Marieke
Mac Donncha, Ciaran
Oppert, Jean-Michel
Brug, Johannes
Lien, Nanna
Cardon, Greet
Pigeot, Iris
Chastin, Sebastien
Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC
title Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC
title_full Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC
title_fullStr Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC
title_full_unstemmed Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC
title_short Factors influencing sedentary behaviour: A system based analysis using Bayesian networks within DEDIPAC
title_sort factors influencing sedentary behaviour: a system based analysis using bayesian networks within dedipac
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6353197/
https://www.ncbi.nlm.nih.gov/pubmed/30699199
http://dx.doi.org/10.1371/journal.pone.0211546
work_keys_str_mv AT buckchristoph factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT loyenanne factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT foraitaronja factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT vancauwenbergjelle factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT decraemermarieke factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT macdonnchaciaran factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT oppertjeanmichel factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT brugjohannes factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT liennanna factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT cardongreet factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT pigeotiris factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT chastinsebastien factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac
AT factorsinfluencingsedentarybehaviourasystembasedanalysisusingbayesiannetworkswithindedipac