Literature DB >> 34957585

Practical recommendations on double score matching for estimating causal effects.

Yunshu Zhang1, Shu Yang1, Wenyu Ye2, Douglas E Faries2, Ilya Lipkovich2, Zbigniew Kadziola2.   

Abstract

Unlike in randomized clinical trials (RCTs), confounding control is critical for estimating the causal effects from observational studies due to the lack of treatment randomization. Under the unconfoundedness assumption, matching methods are popular because they can be used to emulate an RCT that is hidden in the observational study. To ensure the key assumption hold, the effort is often made to collect a large number of possible confounders, rendering dimension reduction imperative in matching. Three matching schemes based on the propensity score (PSM), prognostic score (PGM), and double score (DSM, ie, the collection of the first two scores) have been proposed in the literature. However, a comprehensive comparison is lacking among the three matching schemes and has not made inroads into the best practices including variable selection, choice of caliper, and replacement. In this article, we explore the statistical and numerical properties of PSM, PGM, and DSM via extensive simulations. Our study supports that DSM performs favorably with, if not better than, the two single score matching in terms of bias and variance. In particular, DSM is doubly robust in the sense that the matching estimator is consistent requiring either the propensity score model or the prognostic score model is correctly specified. Variable selection on the propensity score model and matching with replacement is suggested for DSM, and we illustrate the recommendations with comprehensive simulation studies. An R package is available at https://github.com/Yunshu7/dsmatch.
© 2021 John Wiley & Sons Ltd.

Entities:  

Keywords:  average treatment effect on the treated; causal inference; double robustness; prognostic score; propensity score

Mesh:

Year:  2021        PMID: 34957585      PMCID: PMC8918069          DOI: 10.1002/sim.9289

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


  21 in total

1.  Model misspecification and robustness in causal inference: comparing matching with doubly robust estimation.

Authors:  Ingeborg Waernbaum
Journal:  Stat Med       Date:  2012-02-23       Impact factor: 2.373

2.  Matching methods for causal inference: A review and a look forward.

Authors:  Elizabeth A Stuart
Journal:  Stat Sci       Date:  2010-02-01       Impact factor: 2.901

3.  A weighting analogue to pair matching in propensity score analysis.

Authors:  Liang Li; Tom Greene
Journal:  Int J Biostat       Date:  2013-07-31       Impact factor: 0.968

4.  A pilot design for observational studies: Using abundant data thoughtfully.

Authors:  Rachael C Aikens; Dylan Greaves; Michael Baiocchi
Journal:  Stat Med       Date:  2020-10-05       Impact factor: 2.373

5.  Matching on the disease risk score in comparative effectiveness research of new treatments.

Authors:  Richard Wyss; Alan R Ellis; M Alan Brookhart; Michele Jonsson Funk; Cynthia J Girman; Ross J Simpson; Til Stürmer
Journal:  Pharmacoepidemiol Drug Saf       Date:  2015-06-25       Impact factor: 2.890

6.  Doubly robust matching estimators for high dimensional confounding adjustment.

Authors:  Joseph Antonelli; Matthew Cefalu; Nathan Palmer; Denis Agniel
Journal:  Biometrics       Date:  2018-05-11       Impact factor: 2.571

7.  Burden of illness and treatment patterns for patients with fibromyalgia.

Authors:  Rebecca L Robinson; Kurt Kroenke; Philip Mease; David A Williams; Yi Chen; Deborah D'Souza; Madelaine Wohlreich; Bill McCarberg
Journal:  Pain Med       Date:  2012-09-07       Impact factor: 3.750

8.  Optimal caliper widths for propensity-score matching when estimating differences in means and differences in proportions in observational studies.

Authors:  Peter C Austin
Journal:  Pharm Stat       Date:  2011 Mar-Apr       Impact factor: 1.894

9.  Optimal caliper width for propensity score matching of three treatment groups: a Monte Carlo study.

Authors:  Yongji Wang; Hongwei Cai; Chanjuan Li; Zhiwei Jiang; Ling Wang; Jiugang Song; Jielai Xia
Journal:  PLoS One       Date:  2013-12-11       Impact factor: 3.240

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  1 in total

1.  Utilizing stratified generalized propensity score matching to approximate blocked randomized designs with multiple treatment levels.

Authors:  Nathan Corder; Shu Yang
Journal:  J Biopharm Stat       Date:  2022-06-19       Impact factor: 1.503

  1 in total

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