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      A comparison of 12 algorithms for matching on the propensity score

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          Abstract

          Propensity-score matching is increasingly being used to reduce the confounding that can occur in observational studies examining the effects of treatments or interventions on outcomes. We used Monte Carlo simulations to examine the following algorithms for forming matched pairs of treated and untreated subjects: optimal matching, greedy nearest neighbor matching without replacement, and greedy nearest neighbor matching without replacement within specified caliper widths. For each of the latter two algorithms, we examined four different sub-algorithms defined by the order in which treated subjects were selected for matching to an untreated subject: lowest to highest propensity score, highest to lowest propensity score, best match first, and random order. We also examined matching with replacement. We found that (i) nearest neighbor matching induced the same balance in baseline covariates as did optimal matching; (ii) when at least some of the covariates were continuous, caliper matching tended to induce balance on baseline covariates that was at least as good as the other algorithms; (iii) caliper matching tended to result in estimates of treatment effect with less bias compared with optimal and nearest neighbor matching; (iv) optimal and nearest neighbor matching resulted in estimates of treatment effect with negligibly less variability than did caliper matching; (v) caliper matching had amongst the best performance when assessed using mean squared error; (vi) the order in which treated subjects were selected for matching had at most a modest effect on estimation; and (vii) matching with replacement did not have superior performance compared with caliper matching without replacement. © 2013 The Authors. Statistics in Medicine published by John Wiley & Sons, Ltd.

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          Observational Studies

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            Nonparametric Estimation of Average Treatment Effects Under Exogeneity: A Review

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              A critical appraisal of propensity-score matching in the medical literature between 1996 and 2003.

              Propensity-score methods are increasingly being used to reduce the impact of treatment-selection bias in the estimation of treatment effects using observational data. Commonly used propensity-score methods include covariate adjustment using the propensity score, stratification on the propensity score, and propensity-score matching. Empirical and theoretical research has demonstrated that matching on the propensity score eliminates a greater proportion of baseline differences between treated and untreated subjects than does stratification on the propensity score. However, the analysis of propensity-score-matched samples requires statistical methods appropriate for matched-pairs data. We critically evaluated 47 articles that were published between 1996 and 2003 in the medical literature and that employed propensity-score matching. We found that only two of the articles reported the balance of baseline characteristics between treated and untreated subjects in the matched sample and used correct statistical methods to assess the degree of imbalance. Thirteen (28 per cent) of the articles explicitly used statistical methods appropriate for the analysis of matched data when estimating the treatment effect and its statistical significance. Common errors included using the log-rank test to compare Kaplan-Meier survival curves in the matched sample, using Cox regression, logistic regression, chi-squared tests, t-tests, and Wilcoxon rank sum tests in the matched sample, thereby failing to account for the matched nature of the data. We provide guidelines for the analysis and reporting of studies that employ propensity-score matching. Copyright (c) 2007 John Wiley & Sons, Ltd.
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                Author and article information

                Journal
                Stat Med
                Stat Med
                sim
                Statistics in Medicine
                BlackWell Publishing Ltd (Oxford, UK )
                0277-6715
                1097-0258
                15 March 2014
                07 October 2013
                : 33
                : 6
                : 1057-1069
                Affiliations
                [a ]Institute for Clinical Evaluative Sciences Toronto, Ontario, Canada
                [b ]Institute of Health Policy, Management and Evaluation, University of Toronto Toronto, Ontario, Canada
                [c ]Schulich Heart Research Program, Sunnybrook Research Institute Toronto, Ontario, Canada
                Author notes
                Correspondence to: Peter C. Austin, Institute for Clinical Evaluative Sciences G1 06, 2075 Bayview Avenue Toronto, Ontario M4N 3M5 Canada., E-mail: peter.austin@ 123456ices.on.ca
                Article
                10.1002/sim.6004
                4285163
                24123228
                45bc8392-3e7f-4651-bc0e-8dbc270779f6
                © 2013 The Authors. Statistics in Medicine published by John Wiley & Sons, Ltd.

                This is an open access article under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non-commercial and no modifications or adaptations are made.

                History
                : 18 December 2012
                : 09 September 2013
                : 19 September 2013
                Categories
                Research Articles

                Biostatistics
                propensity score,matching,computer algorithms,optimal matching,monte carlo simulations,propensity-score matching

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