Literature DB >> 12720310

Comparing the importance of disease rate versus practice style variations in explaining differences in small area hospitalization rates for two respiratory conditions.

Erol A Peköz1, Michael Shwartz, Lisa I Iezzoni, Arlene S Ash, Michael A Posner, Joseph D Restuccia.   

Abstract

Many studies have reported large variations in age- and sex-adjusted rates of hospitalizations across small geographic areas. These variations have often been attributed to differences in medical practice style which are not reflected in differences in health care outcomes. There is, however, another potentially important source of variation that has not been examined much in the literature: geographic differences in the age-sex adjusted size of the pool of patients who present with the disease and are candidates for hospitalization. Previous studies of small area variations in hospitalization rates have only used data on hospitalizations. Thus, it has not been possible to distinguish the extent to which differences in hospitalization rates are due to (i). differences in the chance that patients diagnosed with a disease are admitted to a hospital, which we refer to as the 'practice style effect,' versus (ii). geographic differences in the total amount of diagnosed disease, which we refer to as the 'disease effect.' Elementary methods for estimating the relative strength of the two effects directly from the data can be misleading, since equal amounts of variability in each effect result in unequal impacts on hospitalization rates. In this paper we describe a model-based approach for estimating the relative importance of the practice style effect and the disease effect in explaining variations in hospitalization rates. The key to our approach is the use of data on both inpatient and outpatient visits. We use 1997 Medicare data for two respiratory medical conditions across 71 small areas in Massachusetts: chronic bronchitis and emphysema, and bacterial pneumonia. Based on a Poisson model for the process generating hospitalizations and outpatient visits, we use a Bayesian framework and Gibbs sampling to compute and compare the correlation between the number of people hospitalized and each of these two sources of variation. Our results show that for the two conditions, disease rate variation explains at least as much of the variation in hospitalization rates as does practice style variation. Copyright 2003 John Wiley & Sons, Ltd.

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Year:  2003        PMID: 12720310     DOI: 10.1002/sim.1398

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  5 in total

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2.  Hospital service areas -- a new tool for health care planning in Switzerland.

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Journal:  BMC Health Serv Res       Date:  2005-05-09       Impact factor: 2.655

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4.  Joint spatial modeling to identify shared patterns among chronic related potentially preventable hospitalizations.

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Journal:  BMC Med Res Methodol       Date:  2014-06-04       Impact factor: 4.615

5.  Trends and area variations in Potentially Preventable Admissions for COPD in Spain (2002-2013): a significant decline and convergence between areas.

Authors:  Julián Librero; Berta Ibañez-Beroiz; Salvador Peiró; M Ridao-López; Clara L Rodríguez-Bernal; Francisco J Gómez-Romero; Enrique Bernal-Delgado
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  5 in total

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