Literature DB >> 16783757

Conditioning on the propensity score can result in biased estimation of common measures of treatment effect: a Monte Carlo study.

Peter C Austin1, Paul Grootendorst, Sharon-Lise T Normand, Geoffrey M Anderson.   

Abstract

Propensity score methods are increasingly being used to estimate causal treatment effects in the medical literature. Conditioning on the propensity score results in unbiased estimation of the expected difference in observed responses to two treatments. The degree to which conditioning on the propensity score introduces bias into the estimation of the conditional odds ratio or conditional hazard ratio, which are frequently used as measures of treatment effect in observational studies, has not been extensively studied. We conducted Monte Carlo simulations to determine the degree to which propensity score matching, stratification on the quintiles of the propensity score, and covariate adjustment using the propensity score result in biased estimation of conditional odds ratios, hazard ratios, and rate ratios. We found that conditioning on the propensity score resulted in biased estimation of the true conditional odds ratio and the true conditional hazard ratio. In all scenarios examined, treatment effects were biased towards the null treatment effect. However, conditioning on the propensity score did not result in biased estimation of the true conditional rate ratio. In contrast, conventional regression methods allowed unbiased estimation of the true conditional treatment effect when all variables associated with the outcome were included in the regression model. The observed bias in propensity score methods is due to the fact that regression models allow one to estimate conditional treatment effects, whereas propensity score methods allow one to estimate marginal treatment effects. In several settings with non-linear treatment effects, marginal and conditional treatment effects do not coincide. Copyright 2006 John Wiley & Sons, Ltd.

Mesh:

Year:  2007        PMID: 16783757     DOI: 10.1002/sim.2618

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


  61 in total

Review 1.  Do observational studies using propensity score methods agree with randomized trials? A systematic comparison of studies on acute coronary syndromes.

Authors:  Issa J Dahabreh; Radley C Sheldrick; Jessica K Paulus; Mei Chung; Vasileia Varvarigou; Haseeb Jafri; Jeremy A Rassen; Thomas A Trikalinos; Georgios D Kitsios
Journal:  Eur Heart J       Date:  2012-06-17       Impact factor: 29.983

Review 2.  Propensity scores in intensive care and anaesthesiology literature: a systematic review.

Authors:  Etienne Gayat; Romain Pirracchio; Matthieu Resche-Rigon; Alexandre Mebazaa; Jean-Yves Mary; Raphaël Porcher
Journal:  Intensive Care Med       Date:  2010-08-06       Impact factor: 17.440

3.  Type I error rates, coverage of confidence intervals, and variance estimation in propensity-score matched analyses.

Authors:  Peter C Austin
Journal:  Int J Biostat       Date:  2009-04-14       Impact factor: 0.968

4.  The impact of unmeasured baseline effect modification on estimates from an inverse probability of treatment weighted logistic model.

Authors:  Joseph A C Delaney; Robert W Platt; Samy Suissa
Journal:  Eur J Epidemiol       Date:  2009-05-06       Impact factor: 8.082

5.  Marginal structural models for skewed outcomes: identifying causal relationships in health care utilization.

Authors:  Julie Héroux; Erica E M Moodie; Erin Strumpf; Natalie Coyle; Pierre Tousignant; Mamadou Diop
Journal:  Stat Med       Date:  2013-10-24       Impact factor: 2.373

6.  Too many covariates and too few cases? - a comparative study.

Authors:  Qingxia Chen; Hui Nian; Yuwei Zhu; H Keipp Talbot; Marie R Griffin; Frank E Harrell
Journal:  Stat Med       Date:  2016-06-30       Impact factor: 2.373

7.  Surgeon volume metrics in laparoscopic cholecystectomy.

Authors:  Nicholas G Csikesz; Anand Singla; Melissa M Murphy; Jennifer F Tseng; Shimul A Shah
Journal:  Dig Dis Sci       Date:  2009-11-13       Impact factor: 3.199

8.  Applying propensity score methods in medical research: pitfalls and prospects.

Authors:  Zhehui Luo; Joseph C Gardiner; Cathy J Bradley
Journal:  Med Care Res Rev       Date:  2010-05-04       Impact factor: 3.929

Review 9.  Difficulties in demonstrating superiority of an antibiotic for multidrug-resistant bacteria in nonrandomized studies.

Authors:  Kristen A Stafford; Mallory Boutin; Scott R Evans; Anthony D Harris
Journal:  Clin Infect Dis       Date:  2014-06-30       Impact factor: 9.079

10.  Plasmode simulation for the evaluation of pharmacoepidemiologic methods in complex healthcare databases.

Authors:  Jessica M Franklin; Sebastian Schneeweiss; Jennifer M Polinski; Jeremy A Rassen
Journal:  Comput Stat Data Anal       Date:  2014-04       Impact factor: 1.681

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