Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis

Clinical and epidemiological research has reported a strong association between diabetes and obesity. However, whether increased diabetes prevalence is more likely to appear in areas with increased obesity prevalence has not been thoroughly investigated in the United States (US). The Bayesian struct...

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Main Authors: Xiao Li, Amanda Staudt, Lung-Chang Chien
Format: Article
Language:English
Published: PAGEPress Publications 2016-11-01
Series:Geospatial Health
Subjects:
Online Access:http://www.geospatialhealth.net/index.php/gh/article/view/439
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spelling doaj-3cc19de949894492b9374de0073070262020-11-25T03:49:14ZengPAGEPress PublicationsGeospatial Health1827-19871970-70962016-11-0111310.4081/gh.2016.439394Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysisXiao Li0Amanda Staudt1Lung-Chang Chien2Department of Biostatistics, University of Texas Health Science Center at Houston (UTHealth), School of Public Health, Houston, TXDepartment of Epidemiology, Human Genetics & Environmental Sciences, University of Texas Health Science Center at Houston (UTHealth), School of Public Health in San Antonio, San Antonio, TXDepartment of Biostatistics, University of Texas Health Science Center at Houston (UTHealth), School of Public Health in San Antonio, San Antonio, TXClinical and epidemiological research has reported a strong association between diabetes and obesity. However, whether increased diabetes prevalence is more likely to appear in areas with increased obesity prevalence has not been thoroughly investigated in the United States (US). The Bayesian structured additive regression model was applied to identify whether counties with higher obesity prevalence are more likely clustered in specific regions in 48 contiguous US states. Prevalence data adopted the small area estimate from the Behavioral Risk Factor Surveillance System. Confounding variables like socioeconomic status adopted data were from the American Community Survey. This study reveals that an increased percentage of relative risk of diabetes was more likely to appear in Southeast, Northeast, Central and South regions. Of counties vulnerable to diabetes, 36.8% had low obesity prevalence, and most of them were located in the Southeast, Central, and South regions. The geographic distribution of counties vulnerable to diabetes expanded to the Southwest, West and Northern regions when obesity prevalence increased. This study also discloses that 7.4% of counties had the largest average in predicted diabetes prevalence compared to the other counties. Their average diabetes prevalence escalated from 8.7% in 2004 to 11.2% in 2011. This study not only identifies counties vulnerable to diabetes due to obesity, but also distinguishes counties in terms of different levels of vulnerability to diabetes. The findings can provide the possibility of establishing targeted surveillance systems to raise awareness of diabetes in those counties.http://www.geospatialhealth.net/index.php/gh/article/view/439Diabetes prevalenceObesity prevalenceStructured additive regression
collection DOAJ
language English
format Article
sources DOAJ
author Xiao Li
Amanda Staudt
Lung-Chang Chien
spellingShingle Xiao Li
Amanda Staudt
Lung-Chang Chien
Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis
Geospatial Health
Diabetes prevalence
Obesity prevalence
Structured additive regression
author_facet Xiao Li
Amanda Staudt
Lung-Chang Chien
author_sort Xiao Li
title Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis
title_short Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis
title_full Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis
title_fullStr Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis
title_full_unstemmed Identifying counties vulnerable to diabetes from obesity prevalence in the United States: a spatiotemporal analysis
title_sort identifying counties vulnerable to diabetes from obesity prevalence in the united states: a spatiotemporal analysis
publisher PAGEPress Publications
series Geospatial Health
issn 1827-1987
1970-7096
publishDate 2016-11-01
description Clinical and epidemiological research has reported a strong association between diabetes and obesity. However, whether increased diabetes prevalence is more likely to appear in areas with increased obesity prevalence has not been thoroughly investigated in the United States (US). The Bayesian structured additive regression model was applied to identify whether counties with higher obesity prevalence are more likely clustered in specific regions in 48 contiguous US states. Prevalence data adopted the small area estimate from the Behavioral Risk Factor Surveillance System. Confounding variables like socioeconomic status adopted data were from the American Community Survey. This study reveals that an increased percentage of relative risk of diabetes was more likely to appear in Southeast, Northeast, Central and South regions. Of counties vulnerable to diabetes, 36.8% had low obesity prevalence, and most of them were located in the Southeast, Central, and South regions. The geographic distribution of counties vulnerable to diabetes expanded to the Southwest, West and Northern regions when obesity prevalence increased. This study also discloses that 7.4% of counties had the largest average in predicted diabetes prevalence compared to the other counties. Their average diabetes prevalence escalated from 8.7% in 2004 to 11.2% in 2011. This study not only identifies counties vulnerable to diabetes due to obesity, but also distinguishes counties in terms of different levels of vulnerability to diabetes. The findings can provide the possibility of establishing targeted surveillance systems to raise awareness of diabetes in those counties.
topic Diabetes prevalence
Obesity prevalence
Structured additive regression
url http://www.geospatialhealth.net/index.php/gh/article/view/439
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