Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey

Background: Like many developing countries, Thailand has experienced a rapid rise in obesity, accompanied by a rapid change in occupational structure. It is plausible that these two trends are related, with movement into sedentary occupations leading to increases in obesity. National health examinat...

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Main Authors: Jongjit Rittirong, John Bryant, Wichai Aekplakorn, Aree Prohmmo, Malee Sunpuwan
Other Authors: Ramathibodi Hospital
Format: Article
Published: 2022
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/77589
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spelling th-mahidol.775892022-08-04T16:04:15Z Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey Jongjit Rittirong John Bryant Wichai Aekplakorn Aree Prohmmo Malee Sunpuwan Ramathibodi Hospital Mahidol University Bayesian Demography Limited Medicine Background: Like many developing countries, Thailand has experienced a rapid rise in obesity, accompanied by a rapid change in occupational structure. It is plausible that these two trends are related, with movement into sedentary occupations leading to increases in obesity. National health examination survey data contains information on obesity and socioeconomic conditions that can help untangle the relationship, but analysis is challenging because of small sample sizes. Methods: This paper explores the relationship between occupation and obesity using data on 10,127 respondents aged 20–59 from the 2009 National Health Examination Survey. Obesity is measured using waist circumference. Modelling is carried out using an approach known as Multiple Regression with Post-Stratification (MRP). We use Bayesian hierarchical models to construct prevalence estimates disaggregated by age, sex, education, urban-rural residence, region, and occupation, and use census population weights to aggregate up. The Bayesian hierarchical model is designed to protect against overfitting and false discovery, which is particularly important in an exploratory study such as this one. Results: There is no clear relationship between the overall sedentary nature of occupations and obesity. Instead, obesity appears to vary occupation by occupation. For instance, women in professional occupations, and men who are agricultural or fishery workers, have relatively low rates of obesity. Conclusion: Bayesian hierarchical models plus post-stratification offers new possibilities for using surveys to learn about complex health issues. 2022-08-04T09:04:15Z 2022-08-04T09:04:15Z 2021-12-01 Article BMC Public Health. Vol.21, No.1 (2021) 10.1186/s12889-021-10944-0 14712458 2-s2.0-85105906572 https://repository.li.mahidol.ac.th/handle/123456789/77589 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85105906572&origin=inward
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Medicine
spellingShingle Medicine
Jongjit Rittirong
John Bryant
Wichai Aekplakorn
Aree Prohmmo
Malee Sunpuwan
Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey
description Background: Like many developing countries, Thailand has experienced a rapid rise in obesity, accompanied by a rapid change in occupational structure. It is plausible that these two trends are related, with movement into sedentary occupations leading to increases in obesity. National health examination survey data contains information on obesity and socioeconomic conditions that can help untangle the relationship, but analysis is challenging because of small sample sizes. Methods: This paper explores the relationship between occupation and obesity using data on 10,127 respondents aged 20–59 from the 2009 National Health Examination Survey. Obesity is measured using waist circumference. Modelling is carried out using an approach known as Multiple Regression with Post-Stratification (MRP). We use Bayesian hierarchical models to construct prevalence estimates disaggregated by age, sex, education, urban-rural residence, region, and occupation, and use census population weights to aggregate up. The Bayesian hierarchical model is designed to protect against overfitting and false discovery, which is particularly important in an exploratory study such as this one. Results: There is no clear relationship between the overall sedentary nature of occupations and obesity. Instead, obesity appears to vary occupation by occupation. For instance, women in professional occupations, and men who are agricultural or fishery workers, have relatively low rates of obesity. Conclusion: Bayesian hierarchical models plus post-stratification offers new possibilities for using surveys to learn about complex health issues.
author2 Ramathibodi Hospital
author_facet Ramathibodi Hospital
Jongjit Rittirong
John Bryant
Wichai Aekplakorn
Aree Prohmmo
Malee Sunpuwan
format Article
author Jongjit Rittirong
John Bryant
Wichai Aekplakorn
Aree Prohmmo
Malee Sunpuwan
author_sort Jongjit Rittirong
title Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey
title_short Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey
title_full Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey
title_fullStr Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey
title_full_unstemmed Obesity and occupation in Thailand: using a Bayesian hierarchical model to obtain prevalence estimates from the National Health Examination Survey
title_sort obesity and occupation in thailand: using a bayesian hierarchical model to obtain prevalence estimates from the national health examination survey
publishDate 2022
url https://repository.li.mahidol.ac.th/handle/123456789/77589
_version_ 1763490127510765568