Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health

<p>Abstract</p> <p>Background</p> <p>Chronic disease accounts for nearly three-quarters of US deaths, yet prevalence rates are not consistently reported at the state level and are not available at the sub-state level. This makes it difficult to assess trends in prevalen...

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Main Authors: Cossman Ronald E, Cossman Jeralynn S, James Wesley L, Blanchard Troy, Thomas Richard, Pol Louis G, Cosby Arthur G
Format: Article
Language:English
Published: BMC 2010-09-01
Series:Population Health Metrics
Online Access:http://www.pophealthmetrics.com/content/8/1/25
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spelling doaj-ba4d683cafdc4ca88ab4db4ab8d6b3ce2020-11-24T22:02:58ZengBMCPopulation Health Metrics1478-79542010-09-01812510.1186/1478-7954-8-25Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population healthCossman Ronald ECossman Jeralynn SJames Wesley LBlanchard TroyThomas RichardPol Louis GCosby Arthur G<p>Abstract</p> <p>Background</p> <p>Chronic disease accounts for nearly three-quarters of US deaths, yet prevalence rates are not consistently reported at the state level and are not available at the sub-state level. This makes it difficult to assess trends in prevalence and impossible to measure sub-state differences. Such county-level differences could inform and direct the delivery of health services to those with the greatest need.</p> <p>Methods</p> <p>We used a database of prescription drugs filled in the US as a proxy for nationwide, county-level prevalence of three top causes of death: heart disease, stroke, and diabetes. We tested whether prescription data are statistically valid proxy measures for prevalence, using the correlation between prescriptions filled at the state level and comparable Behavioral Risk Factor Surveillance System (BRFSS) data. We further tested for statistically significant national geographic patterns.</p> <p>Results</p> <p>Fourteen correlations were tested for years in which the BRFSS questions were asked (1999-2003), and all were statistically significant. The correlations at the state level ranged from a low of 0.41 (stroke, 1999) to a high of 0.73 (heart disease, 2003). We also mapped self-reported chronic illnesses along with prescription rates associated with those illnesses.</p> <p>Conclusions</p> <p>County prescription drug rates were shown to be valid measures of sub-state estimates of diagnosed prevalence and could be used to target health resources to counties in need. This methodology could be particularly helpful to rural areas whose prevalence rates cannot be estimated using national surveys. While there are no spatial statistically significant patterns nationally, there are significant variations within states that suggest unmet health needs.</p> http://www.pophealthmetrics.com/content/8/1/25
collection DOAJ
language English
format Article
sources DOAJ
author Cossman Ronald E
Cossman Jeralynn S
James Wesley L
Blanchard Troy
Thomas Richard
Pol Louis G
Cosby Arthur G
spellingShingle Cossman Ronald E
Cossman Jeralynn S
James Wesley L
Blanchard Troy
Thomas Richard
Pol Louis G
Cosby Arthur G
Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
Population Health Metrics
author_facet Cossman Ronald E
Cossman Jeralynn S
James Wesley L
Blanchard Troy
Thomas Richard
Pol Louis G
Cosby Arthur G
author_sort Cossman Ronald E
title Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
title_short Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
title_full Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
title_fullStr Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
title_full_unstemmed Correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
title_sort correlating pharmaceutical data with a national health survey as a proxy for estimating rural population health
publisher BMC
series Population Health Metrics
issn 1478-7954
publishDate 2010-09-01
description <p>Abstract</p> <p>Background</p> <p>Chronic disease accounts for nearly three-quarters of US deaths, yet prevalence rates are not consistently reported at the state level and are not available at the sub-state level. This makes it difficult to assess trends in prevalence and impossible to measure sub-state differences. Such county-level differences could inform and direct the delivery of health services to those with the greatest need.</p> <p>Methods</p> <p>We used a database of prescription drugs filled in the US as a proxy for nationwide, county-level prevalence of three top causes of death: heart disease, stroke, and diabetes. We tested whether prescription data are statistically valid proxy measures for prevalence, using the correlation between prescriptions filled at the state level and comparable Behavioral Risk Factor Surveillance System (BRFSS) data. We further tested for statistically significant national geographic patterns.</p> <p>Results</p> <p>Fourteen correlations were tested for years in which the BRFSS questions were asked (1999-2003), and all were statistically significant. The correlations at the state level ranged from a low of 0.41 (stroke, 1999) to a high of 0.73 (heart disease, 2003). We also mapped self-reported chronic illnesses along with prescription rates associated with those illnesses.</p> <p>Conclusions</p> <p>County prescription drug rates were shown to be valid measures of sub-state estimates of diagnosed prevalence and could be used to target health resources to counties in need. This methodology could be particularly helpful to rural areas whose prevalence rates cannot be estimated using national surveys. While there are no spatial statistically significant patterns nationally, there are significant variations within states that suggest unmet health needs.</p>
url http://www.pophealthmetrics.com/content/8/1/25
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