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Matching by propensity score in cohort studies with three treatment groups

机译:在三个研究组的队列研究中按倾向得分进行匹配

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摘要

BACKGROUND: Nonrandomized pharmacoepidemiology generally compares one medication with another. For many conditions, clinicians can benefit from comparing the safety and effectiveness of three or more appropriate treatment options. We sought to compare three treatment groups simultaneously by creating 1:1:1 propensity score-matched cohorts. METHODS: We developed a technique that estimates generalized propensity scores and then creates 1:1:1 matched sets. We compared this methodology with two existing approaches-construction of matched cohorts through a common-referent group and a pairwise match for each possible contrast. In a simulation, we varied unmeasured confounding, presence of treatment effect heterogeneity, and the prevalence of treatments and compared each method's bias, variance, and mean squared error (MSE) of the treatment effect. We applied these techniques to a cohort of rheumatoid arthritis patients treated with nonselective nonsteroidal anti-inflammatory drugs, COX-2 selective inhibitors, or opioids. RESULTS: We performed 1000 simulation runs. In the base case, we observed an average bias of 0.4% (MSE × 100 = 0.2) in the three-way matching approach and an average bias of 0.3% (MSE × 100 = 0.2) with the pairwise technique. The techniques showed differing bias and MSE with increasing treatment effect heterogeneity and decreasing propensity score overlap. With highly unequal exposure prevalences, strong heterogeneity, and low overlap, we observed a bias of 6.5% (MSE × 100 = 10.8) in the three-way approach and 12.5% (MSE × 100 = 12.3) in the pairwise approach. The empirical study displayed better covariate balance using the pairwise approach. Point estimates were substantially similar. CONCLUSIONS: Our matching approach offers an effective way to study the safety and effectiveness of three treatment options. We recommend its use over the pairwise or common-referent approaches.
机译:背景:非随机药物流行病学通常将一种药物与另一种药物进行比较。在许多情况下,临床医生可以通过比较三种或更多种适当治疗方案的安全性和有效性而受益。我们试图通过创建1:1:1倾向得分匹配的队列来比较三个治疗组。方法:我们开发了一种估算广义倾向得分的技术,然后创建了1:1:1的匹配集。我们将该方法与两种现有方法进行了比较,即通过一个共同指称组和每个可能的对比的成对匹配来构建匹配的队列。在模拟中,我们改变了无法衡量的混杂因素,治疗效果异质性的存在以及治疗的普遍性,并比较了每种方法对治疗效果的偏倚,方差和均方误差(MSE)。我们将这些技术应用于一群接受非选择性非甾体抗炎药,COX-2选择性抑制剂或阿片类药物治疗的类风湿关节炎患者。结果:我们进行了1000次模拟运行。在基本情况下,我们发现三向匹配方法的平均偏差为0.4%(MSE×100 = 0.2),而成对技术的平均偏差为0.3%(MSE×100 = 0.2)。该技术显示出不同的偏差和MSE,随着治疗效果异质性的提高和倾向评分重叠的降低。在高度不平等的暴露流行,强烈的异质性和低重叠的情况下,我们发现三向方法的偏差为6.5%(MSE×100 = 10.8),而成对方法的偏差为12.5%(MSE×100 = 12.3)。实证研究显示,使用成对方法可以更好地协变量平衡。点估计基本上相似。结论:我们的匹配方法为研究三种治疗方案的安全性和有效性提供了一种有效的方法。我们建议将其用于成对或共同引用的方法。

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