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首页> 外文期刊>Statistics in medicine >The performance of different propensity score methods for estimating marginal odds ratios.
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The performance of different propensity score methods for estimating marginal odds ratios.

机译:用于估计边际优势比的不同倾向评分方法的性能。

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摘要

The propensity score which is the probability of exposure to a specific treatment conditional on observed variables. Conditioning on the propensity score results in unbiased estimation of the expected difference in observed responses to two treatments. In the medical literature, propensity score methods are frequently used for estimating odds ratios. The performance of propensity score methods for estimating marginal odds ratios has not been studied. We performed a series of Monte Carlo simulations to assess the performance of propensity score matching, stratifying on the propensity score, and covariate adjustment using the propensity score to estimate marginal odds ratios. We assessed bias, precision, and mean-squared error (MSE) of the propensity score estimators, in addition to the proportion of bias eliminated due to conditioning on the propensity score. When the true marginal odds ratio was one, then matching on the propensity score and covariate adjustment using the propensity score resulted in unbiased estimation of the true treatment effect, whereas stratification on the propensity score resulted in minor bias in estimating the true marginal odds ratio. When the true marginal odds ratio ranged from 2 to 10, then matching on the propensity score resulted in the least bias, with a relative biases ranging from 2.3 to 13.3 per cent. Stratifying on the propensity score resulted in moderate bias, with relative biases ranging from 15.8 to 59.2 per cent. For both methods, relative bias was proportional to the true odds ratio. Finally, matching on the propensity score tended to result in estimators with the lowest MSE. Copyright (c) 2006 John Wiley & Sons, Ltd.
机译:倾向得分是根据观察变量暴露于特定治疗的概率。以倾向评分为条件可对两种疗法的观察到的反应的预期差异进行无偏估计。在医学文献中,倾向得分方法经常用于估计比值比。倾向评分方法用于估计边际优势比的性能尚未研究。我们执行了一系列的蒙特卡洛模拟,以评估倾向得分匹配的性能,对倾向得分进行分层,并使用倾向得分进行协变量调整以估计边际优势比。我们评估了倾向得分估计量的偏倚,精度和均方误差(MSE),此外还消除了由于对倾向得分进行调节而导致的偏倚比例。当真实边际优势比为1时,倾向得分的匹配和使用倾向得分的协变量调整会导致对真实治疗效果的无偏估计,而对倾向得分的分层会导致对真实边际优势比的估计存在较小偏差。当真实的边际优势比在2到10的范围内时,倾向得分的匹配导致的偏差最小,相对偏差在2.3%到13.3%之间。对倾向得分进行分层会导致中等偏见,相对偏见的范围为15.8%至59.2%。对于这两种方法,相对偏差均与真实优势比成正比。最后,倾向得分的匹配往往会导致估算值的MSE最低。版权所有(c)2006 John Wiley&Sons,Ltd.

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