Literature DB >> 19012268

Bayesian propensity score analysis for observational data.

Lawrence C McCandless1, Paul Gustafson, Peter C Austin.   

Abstract

In the analysis of observational data, stratifying patients on the estimated propensity scores reduces confounding from measured variables. Confidence intervals for the treatment effect are typically calculated without acknowledging uncertainty in the estimated propensity scores, and intuitively this may yield inferences, which are falsely precise. In this paper, we describe a Bayesian method that models the propensity score as a latent variable. We consider observational studies with a dichotomous treatment, dichotomous outcome, and measured confounders where the log odds ratio is the measure of effect. Markov chain Monte Carlo is used for posterior simulation. We study the impact of modelling uncertainty in the propensity scores in a case study investigating the effect of statin therapy on mortality in Ontario patients discharged from hospital following acute myocardial infarction. Our analysis reveals that the Bayesian credible interval for the treatment effect is 10 per cent wider compared with a conventional propensity score analysis. Using simulations, we show that when the association between treatment and confounders is weak, then this increases uncertainty in the estimated propensity scores. Bayesian interval estimates for the treatment effect are longer on average, though there is little improvement in coverage probability. A novel feature of the proposed method is that it fits models for the treatment and outcome simultaneously rather than one at a time. The method uses the outcome variable to inform the fit of the propensity model. We explore the performance of the estimated propensity scores using cross-validation. Copyright (c) 2008 John Wiley & Sons, Ltd.

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Year:  2009        PMID: 19012268     DOI: 10.1002/sim.3460

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


  22 in total

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2.  Analysis of racial differences in hospital stays in the presence of geographic confounding.

Authors:  Melanie L Davis; Brian Neelon; Paul J Nietert; Lane F Burgette; Kelly J Hunt; Andrew B Lawson; Leonard E Egede
Journal:  Spat Spatiotemporal Epidemiol       Date:  2019-07-05

3.  Bayesian Approach for Addressing Differential Covariate Measurement Error in Propensity Score Methods.

Authors:  Hwanhee Hong; Kara E Rudolph; Elizabeth A Stuart
Journal:  Psychometrika       Date:  2016-10-13       Impact factor: 2.500

4.  Addressing geographic confounding through spatial propensity scores: a study of racial disparities in diabetes.

Authors:  Melanie L Davis; Brian Neelon; Paul J Nietert; Kelly J Hunt; Lane F Burgette; Andrew B Lawson; Leonard E Egede
Journal:  Stat Methods Med Res       Date:  2017-11-16       Impact factor: 3.021

5.  The Central Role of Bayes' Theorem for Joint Estimation of Causal Effects and Propensity Scores.

Authors:  Corwin Matthew Zigler
Journal:  Am Stat       Date:  2015-12-14       Impact factor: 8.710

6.  A Two-Step Bayesian Approach for Propensity Score Analysis: Simulations and Case Study.

Authors:  David Kaplan; Jianshen Chen
Journal:  Psychometrika       Date:  2012-03-30       Impact factor: 2.500

7.  Comparison between treatment effects in a randomised controlled trial and an observational study using propensity scores in primary care.

Authors:  Beth L Stuart; Louise En Grebel; Christopher C Butler; Kerenza Hood; Theo J M Verheij; Paul Little
Journal:  Br J Gen Pract       Date:  2017-07-31       Impact factor: 5.386

8.  Propensity score weighting with multilevel data.

Authors:  Fan Li; Alan M Zaslavsky; Mary Beth Landrum
Journal:  Stat Med       Date:  2013-03-24       Impact factor: 2.373

9.  Bayesian Model Averaging for Propensity Score Analysis.

Authors:  David Kaplan; Jianshen Chen
Journal:  Multivariate Behav Res       Date:  2014 Nov-Dec       Impact factor: 5.923

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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