Abstract

BackgroundPropensity score matching is a statistical method that is often used to make inferences on the treatment effects in observational studies. In recent years, there has been widespread use of the technique in the cardiothoracic surgery literature to evaluate to potential benefits of new surgical therapies or procedures. However, the small sample size and the strong dependence of the treatment assignment on the baseline covariates that often characterize these studies make such an evaluation challenging from a statistical point of view. In such settings, the use of propensity score matching in combination with oversampling and replacement may provide a solution to these issues by increasing the initial sample size of the study and thus improving the statistical power that is needed to detect the effect of interest. In this study, we review the use of propensity score matching in combination with oversampling and replacement in small sample size settings.MethodsWe performed a series of Monte Carlo simulations to evaluate how the sample size, the proportion of treated, and the assignment mechanism affect the performances of the proposed approaches. We assessed the performances with overall balance, relative bias, root mean squared error and nominal coverage. Moreover, we illustrate the methods using a real case study from the cardiac surgery literature.ResultsMatching without replacement produced estimates with lower bias and better nominal coverage than matching with replacement when 1:1 matching was considered. In contrast to that, matching with replacement showed better balance, relative bias, and root mean squared error than matching without replacement for increasing levels of oversampling. The best nominal coverage was obtained by using the estimator that accounts for uncertainty in the matching procedure on sets of units obtained after matching with replacement.ConclusionsThe use of replacement provides the most reliable treatment effect estimates and that no more than 1 or 2 units from the control group should be matched to each treated observation. Moreover, the variance estimator that accounts for the uncertainty in the matching procedure should be used to estimate the treatment effect.

Highlights

  • Inferences on the effects of treatments or exposures are increasingly found by using observational studies [1]

  • The use of propensity score matching (PSM) is widespread in clinical studies because of its ability to mimic a randomized clinical trial (RCT) in which the effect of a therapy is evaluated by comparing the outcomes of treated and control subjects belonging to the matched sample [1]

  • This study aims to assess whether performing PSM with replacement and oversampling can eventually address the problem of small sample size and result in valid inference for treatment effect estimation

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Summary

Introduction

Inferences on the effects of treatments or exposures are increasingly found by using observational studies [1]. PSM methods have become very popular in cardiothoracic surgery [2,3,4,5,6], especially when the goal is to evaluate a new therapy or a new surgical procedure and compare it to the current standard approaches In these settings, two main issues hamper the inference process: the selection bias and the small sample size. The small sample size and the strong dependence of the treatment assignment on the baseline covariates that often characterize these studies make such an evaluation challenging from a statistical point of view In such settings, the use of propensity score matching in combination with oversampling and replacement may provide a solution to these issues by increasing the initial sample size of the study and improving the statistical power that is needed to detect the effect of interest. We review the use of propensity score matching in combination with oversampling and replacement in small sample size settings

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