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Variance reduction in randomised trials by inverse probability weighting using the propensity score

机译:通过使用倾向得分的逆概率加权减少随机试验中的方差

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摘要

In individually randomised controlled trials, adjustment for baseline characteristics is often undertaken to increase precision of the treatment effect estimate. This is usually performed using covariate adjustment in outcome regression models. An alternative method of adjustment is to use inverse probability-of-treatment weighting (IPTW), on the basis of estimated propensity scores. We calculate the large-sample marginal variance of IPTW estimators of the mean difference for continuous outcomes, and risk difference, risk ratio or odds ratio for binary outcomes. We show that IPTW adjustment always increases the precision of the treatment effect estimate. For continuous outcomes, we demonstrate that the IPTW estimator has the same large-sample marginal variance as the standard analysis of covariance estimator. However, ignoring the estimation of the propensity score in the calculation of the variance leads to the erroneous conclusion that the IPTW treatment effect estimator has the same variance as an unadjusted estimator; thus, it is important to use a variance estimator that correctly takes into account the estimation of the propensity score. The IPTW approach has particular advantages when estimating risk differences or risk ratios. In this case, non-convergence of covariate-adjusted outcome regression models frequently occurs. Such problems can be circumvented by using the IPTW adjustment approach. © 2013 The authors. Statistics in Medicine published by John Wiley & Sons, Ltd.
机译:在个别随机对照试验中,经常对基线特征进行调整以提高治疗效果评估的准确性。通常在结果回归模型中使用协变量调整来执行此操作。调整的另一种方法是根据估计的倾向得分使用逆治疗概率加权(IPTW)。我们计算IPTW估计量的大样本边际方差,即连续结果的均值差,以及二进制结果的风险差,风险比或比值比。我们表明,IPTW调整始终可以提高治疗效果估计的准确性。对于连续结果,我们证明IPTW估计量与协方差估计量的标准分析具有相同的大样本边际方差。但是,在方差的计算中忽略倾向分数的估计会导致错误的结论,即IPTW治疗效果估计量与未经调整的估计量具有相同的方差;因此,重要的是要使用能够正确考虑倾向得分估算值的方差估算器。 IPTW方法在估计风险差异或风险比率时具有特殊的优势。在这种情况下,经常会发生协变量调整后的结果回归模型的非收敛性。可以通过使用IPTW调整方法来避免此类问题。 ©2013作者。 John Wiley&Sons,Ltd.出版的《医学统计学》。

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