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Type I Error Rates, Coverage of Confidence Intervals, and Variance Estimation in Propensity-Score Matched Analyses*

机译:倾向得分匹配分析中的I类错误率,置信区间的覆盖范围和方差估计*

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摘要

Propensity-score matching is frequently used in the medical literature to reduce or eliminate the effect of treatment selection bias when estimating the effect of treatments or exposures on outcomes using observational data. In propensity-score matching, pairs of treated and untreated subjects with similar propensity scores are formed. Recent systematic reviews of the use of propensity-score matching found that the large majority of researchers ignore the matched nature of the propensity-score matched sample when estimating the statistical significance of the treatment effect. We conducted a series of Monte Carlo simulations to examine the impact of ignoring the matched nature of the propensity-score matched sample on Type I error rates, coverage of confidence intervals, and variance estimation of the treatment effect. We examined estimating differences in means, relative risks, odds ratios, rate ratios from Poisson models, and hazard ratios from Cox regression models. We demonstrated that accounting for the matched nature of the propensity-score matched sample tended to result in type I error rates that were closer to the advertised level compared to when matching was not incorporated into the analyses. Similarly, accounting for the matched nature of the sample tended to result in confidence intervals with coverage rates that were closer to the nominal level, compared to when matching was not taken into account. Finally, accounting for the matched nature of the sample resulted in estimates of standard error that more closely reflected the sampling variability of the treatment effect compared to when matching was not taken into account.
机译:倾向得分匹配在医学文献中经常用于减少或消除使用观察数据估算治疗或暴露对结局的影响时的治疗选择偏倚的影响。在倾向得分匹配中,形成了具有相似倾向得分的成对治疗和未治疗受试者。最近对倾向评分匹配的使用的系统评价发现,大多数研究人员在估算治疗效果的统计学意义时忽略了倾向评分匹配样本的匹配性质。我们进行了一系列的蒙特卡洛模拟,以检验忽略倾向得分匹配样本的匹配性质对I型错误率,置信区间的覆盖范围以及治疗效果的方差估计的影响。我们检查了在均值,相对风险,比值比,泊松模型中的比率,以及在Cox回归模型中的危险比方面的估计差异。我们证明,考虑到倾向得分匹配样本的匹配性质,与未将匹配纳入分析时相比,倾向于导致I型错误率更接近广告水平。类似地,与不考虑匹配时相比,考虑样本的匹配性质往往会导致置信区间的覆盖率更接近名义水平。最后,考虑到样本的匹配性质,与不考虑匹配时相比,标准误的估计值更能反映出治疗效果的样本变异性。

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    Austin, Peter C;

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  • 年度 2009
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  • 正文语种 en
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