Explaining large mortality differences between adjacent counties: a cross-sectional study

Abstract Background Extensive geographic variation in adverse health outcomes exists, but global measures ignore differences between adjacent geographic areas, which often have very different mortality rates. We describe a novel application of advanced spatial analysis to 1) examine the extent of di...

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Main Authors: M. Schootman, L. Chien, S. Yun, S. L. Pruitt
Format: Article
Language:English
Published: BMC 2016-08-01
Series:BMC Public Health
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12889-016-3371-8
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spelling doaj-dc001627acd744fa842576b74f0eeb482020-11-24T21:06:14ZengBMCBMC Public Health1471-24582016-08-011611810.1186/s12889-016-3371-8Explaining large mortality differences between adjacent counties: a cross-sectional studyM. Schootman0L. Chien1S. Yun2S. L. Pruitt3Department of Epidemiology, Saint Louis University College for Public Health and Social JusticeUniversity of Texas School of Public Health at San Antonio Regional Campus, Department of BiostatisticsMissouri Department of Health and Senior Services, Office of EpidemiologyDepartment of Clinical Sciences, University of Texas Southwestern Medical CenterAbstract Background Extensive geographic variation in adverse health outcomes exists, but global measures ignore differences between adjacent geographic areas, which often have very different mortality rates. We describe a novel application of advanced spatial analysis to 1) examine the extent of differences in mortality rates between adjacent counties, 2) describe differences in risk factors between adjacent counties, and 3) determine if differences in risk factors account for the differences in mortality rates between adjacent counties. Methods We conducted a cross-sectional study in Missouri, USA with 2005–2009 age-adjusted all-cause mortality rate as the outcome and county-level explanatory variables from a 2007 population-based survey. We used a multi-level Gaussian model and a full Bayesian approach to analyze the difference in risk factors relative to the difference in mortality rates between adjacent counties. Results The average mean difference in the age-adjusted mortality rate between any two adjacent counties was −3.27 (standard deviation = 95.5) per 100,000 population (maximum = 258.80). Six variables were associated with mortality differences: inability to obtain medical care because of cost (β = 2.6), hospital discharge rate (β = 1.03), prevalence of fair/poor health (β = 2.93), and hypertension (β = 4.75) and poverty prevalence (β = 6.08). Conclusions Examining differences in mortality rates and associated risk factors between adjacent counties provides additional insight for future interventions to reduce geographic disparities.http://link.springer.com/article/10.1186/s12889-016-3371-8Bayesian analysisNeighborhood effectsSpatial statistics
collection DOAJ
language English
format Article
sources DOAJ
author M. Schootman
L. Chien
S. Yun
S. L. Pruitt
spellingShingle M. Schootman
L. Chien
S. Yun
S. L. Pruitt
Explaining large mortality differences between adjacent counties: a cross-sectional study
BMC Public Health
Bayesian analysis
Neighborhood effects
Spatial statistics
author_facet M. Schootman
L. Chien
S. Yun
S. L. Pruitt
author_sort M. Schootman
title Explaining large mortality differences between adjacent counties: a cross-sectional study
title_short Explaining large mortality differences between adjacent counties: a cross-sectional study
title_full Explaining large mortality differences between adjacent counties: a cross-sectional study
title_fullStr Explaining large mortality differences between adjacent counties: a cross-sectional study
title_full_unstemmed Explaining large mortality differences between adjacent counties: a cross-sectional study
title_sort explaining large mortality differences between adjacent counties: a cross-sectional study
publisher BMC
series BMC Public Health
issn 1471-2458
publishDate 2016-08-01
description Abstract Background Extensive geographic variation in adverse health outcomes exists, but global measures ignore differences between adjacent geographic areas, which often have very different mortality rates. We describe a novel application of advanced spatial analysis to 1) examine the extent of differences in mortality rates between adjacent counties, 2) describe differences in risk factors between adjacent counties, and 3) determine if differences in risk factors account for the differences in mortality rates between adjacent counties. Methods We conducted a cross-sectional study in Missouri, USA with 2005–2009 age-adjusted all-cause mortality rate as the outcome and county-level explanatory variables from a 2007 population-based survey. We used a multi-level Gaussian model and a full Bayesian approach to analyze the difference in risk factors relative to the difference in mortality rates between adjacent counties. Results The average mean difference in the age-adjusted mortality rate between any two adjacent counties was −3.27 (standard deviation = 95.5) per 100,000 population (maximum = 258.80). Six variables were associated with mortality differences: inability to obtain medical care because of cost (β = 2.6), hospital discharge rate (β = 1.03), prevalence of fair/poor health (β = 2.93), and hypertension (β = 4.75) and poverty prevalence (β = 6.08). Conclusions Examining differences in mortality rates and associated risk factors between adjacent counties provides additional insight for future interventions to reduce geographic disparities.
topic Bayesian analysis
Neighborhood effects
Spatial statistics
url http://link.springer.com/article/10.1186/s12889-016-3371-8
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