Literature DB >> 15706581

The use of the propensity score for estimating treatment effects: administrative versus clinical data.

Peter C Austin1, Muhammad M Mamdani, Therese A Stukel, Geoffrey M Anderson, Jack V Tu.   

Abstract

There is an increasing interest in using administrative data to estimate the treatment effects of interventions. While administrative data are relatively inexpensive to obtain and provide population coverage, they are frequently characterized by lack of clinical detail, often leading to problematic confounding when they are used to conduct observational research. Propensity score methods are increasingly being used to address confounding in estimating the effects of interventions in such studies. Using data on patients discharged from hospital for whom both administrative data and detailed clinical data obtained from chart reviews were available, we examined the degree to which stratifying on the quintiles of propensity scores derived from administrative data was able to balance patient characteristics measured in clinical data. We also determined the extent to which measures of treatment effect obtained using propensity score methods were similar to those obtained using traditional regression methods. As a test case, we examined the treatment effects of ASA and beta-blockers following acute myocardial infarction. We demonstrated that propensity scores developed using administrative data do not necessarily balance patient characteristics contained in clinical data. Furthermore, measures of treatment effectiveness were attenuated when obtained using clinical data compared to when administrative data were used.

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Year:  2005        PMID: 15706581     DOI: 10.1002/sim.2053

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


  52 in total

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2.  Analysis of observational studies in the presence of treatment selection bias: effects of invasive cardiac management on AMI survival using propensity score and instrumental variable methods.

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3.  Evaluating uses of data mining techniques in propensity score estimation: a simulation study.

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Review 5.  A systematic review of propensity score methods in the acute care surgery literature: avoiding the pitfalls and proposing a set of reporting guidelines.

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7.  Comparison of the effect of endodontic-periodontal combined lesion on the outcome of endodontic microsurgery with that of isolated endodontic lesion: survival analysis using propensity score analysis.

Authors:  Minju Song; Minji Kang; Dae Ryong Kang; Hoi In Jung; Euiseong Kim
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8.  Propensity scores in the presence of effect modification: A case study using the comparison of mortality on hemodialysis versus peritoneal dialysis.

Authors:  Ylian S Liem; John B Wong; Mg Myriam Hunink; Frank Th de Charro; Wolfgang C Winkelmayer
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9.  Treatment complications and survival in advanced laryngeal cancer: a population-based analysis.

Authors:  Caitriona B O'Neill; James P O'Neill; Coral L Atoria; Shrujal S Baxi; Martin C Henman; Ian Ganly; Elena B Elkin
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10.  Covariate balance in a Bayesian propensity score analysis of beta blocker therapy in heart failure patients.

Authors:  Lawrence C McCandless; Paul Gustafson; Peter C Austin; Adrian R Levy
Journal:  Epidemiol Perspect Innov       Date:  2009-09-10
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