Abstract

Propensity-score matching allows one to reduce the effects of treatment-selection bias or confounding when estimating the effects of treatments when using observational data. Some authors have suggested that methods of inference appropriate for independent samples can be used for assessing the statistical significance of treatment effects when using propensity-score matching. Indeed, many authors in the applied medical literature use methods for independent samples when making inferences about treatment effects using propensity-score matched samples. Dichotomous outcomes are common in healthcare research. In this study, we used Monte Carlo simulations to examine the effect on inferences about risk differences (or absolute risk reductions) when statistical methods for independent samples are used compared with when statistical methods for paired samples are used in propensity-score matched samples. We found that compared with using methods for independent samples, the use of methods for paired samples resulted in: (i) empirical type I error rates that were closer to the advertised rate; (ii) empirical coverage rates of 95 per cent confidence intervals that were closer to the advertised rate; (iii) narrower 95 per cent confidence intervals; and (iv) estimated standard errors that more closely reflected the sampling variability of the estimated risk difference. Differences between the empirical and advertised performance of methods for independent samples were greater when the treatment-selection process was stronger compared with when treatment-selection process was weaker. We recommend using statistical methods for paired samples when using propensity-score matched samples for making inferences on the effect of treatment on the reduction in the probability of an event occurring. Copyright © 2011 John Wiley & Sons, Ltd.

Highlights

  • Propensity-score matching is increasingly being used to estimate the effects of treatments, exposures and interventions on outcomes in observational studies

  • We compared statistical inference when methods for independent samples were used compared with when methods for paired samples were used for significance testing and for variance estimation when estimating risk differences in propensity-score matched samples

  • We found that compared with using methods for independent samples, the use of methods for paired samples resulted in: (i) empirical type I error rates that were closer to the advertised rate; (ii) empirical coverage rates of 95 per cent confidence intervals that were closer to the advertised rate; (iii) narrower 95 per cent confidence intervals; and (iv) estimated standard errors that were more closely reflected the sampling variability of the estimated risk difference

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Summary

Introduction

Propensity-score matching is increasingly being used to estimate the effects of treatments, exposures and interventions on outcomes in observational studies. The study had four specific objectives: First, to compare the empirical type I error rate when using McNemar’s test compared with when using the standard Pearson Chi-squared test for comparing the proportion of subjects in whom the event occurred between treatment groups; second, to compare the empirical coverage rates of 95 per cent confidence intervals when standard errors are estimated using methods for paired data compared with when methods for independent samples are used; third, to compare the precision of estimated 95 per cent confidence intervals when standard errors are estimated using methods for paired data compared with when methods for independent samples are used; and fourth, to compare the variance of the empirical sampling distribution of the risk difference with the estimated variance of the risk difference when using methods for independent samples and methods for paired samples. These four objectives will be addressed using Monte Carlo simulations

Data-generating process
Statistical analyses
Monte Carlo simulations—results
Findings
Discussion
Full Text
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