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Published in: BMC Health Services Research 1/2016

Open Access 01-12-2016 | Research article

Differences in severity at admission for heart failure between rural and urban patients: the value of adding laboratory results to administrative data

Authors: Mark W. Smith, Pamela L. Owens, Roxanne M. Andrews, Claudia A. Steiner, Rosanna M. Coffey, Halcyon G. Skinner, Jill Miyamura, Ioana Popescu

Published in: BMC Health Services Research | Issue 1/2016

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Abstract

Background

Rural/urban variations in admissions for heart failure may be influenced by severity at hospital presentation and local practice patterns. Laboratory data reflect clinical severity and guide hospital admission decisions and treatment for heart failure, a costly chronic illness and a leading cause of hospitalization among the elderly. Our main objective was to examine the role of laboratory test results in measuring disease severity at the time of admission for inpatients who reside in rural and urban areas.

Methods

We retrospectively analyzed discharge data on 13,998 hospital discharges for heart failure from three states, Hawai’i, Minnesota, and Virginia. Hospital discharge records from 2008 to 2012 were derived from the State Inpatient Databases of the Healthcare Cost and Utilization Project, and were merged with results of laboratory tests performed on the admission day or up to two days before admission. Regression models evaluated the relationship between clinical severity at admission and patient urban/rural residence. Models were estimated with and without use of laboratory data.

Results

Patients residing in rural areas were more likely to have missing laboratory data on admission and less likely to have abnormal or severely abnormal tests. Rural patients were also less likely to be admitted with high levels of severity as measured by the All Patient Refined Diagnosis Related Groups (APR-DRG) severity subclass, derivable from discharge data. Adding laboratory data to discharge data improved model fit. Also, in models without laboratory data, the association between urban compared to rural residence and APR-DRG severity subclass was significant for major and extreme levels of severity (OR 1.22, 95 % CI 1.03–1.43 and 1.55, 95 % CI 1.26–1.92, respectively). After adding laboratory data, this association became non-significant for major severity and was attenuated for extreme severity (OR 1.12, 95 % CI 0.94–1.32 and 1.43, 95 % CI 1.15–1.78, respectively).

Conclusion

Heart failure patients from rural areas are hospitalized at lower severity levels than their urban counterparts. Laboratory test data provide insight on clinical severity and practice patterns beyond what is available in administrative discharge data.
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Metadata
Title
Differences in severity at admission for heart failure between rural and urban patients: the value of adding laboratory results to administrative data
Authors
Mark W. Smith
Pamela L. Owens
Roxanne M. Andrews
Claudia A. Steiner
Rosanna M. Coffey
Halcyon G. Skinner
Jill Miyamura
Ioana Popescu
Publication date
01-12-2016
Publisher
BioMed Central
Published in
BMC Health Services Research / Issue 1/2016
Electronic ISSN: 1472-6963
DOI
https://doi.org/10.1186/s12913-016-1380-z

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