A New Non-Parametric Matching Method for Bias Adjustment with Applications to Economic Evaluations

J. Sekhon, R. Grieve
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引用次数: 24

Abstract

In health economic studies that use observational data, a key concern is how to adjust for imbalances in baseline covariates due to the non-random assignment of the programs under evaluation. Traditional methods of covariate adjustment such as regression and propensity score matching are model dependent and often fail to replicate the results of randomized controlled trials. We demonstrate a new non-parametric matching method, Genetic Matching, which is a generalization of propensity score and Mahalanobis distance matching (Sekhon forthcoming), using two contrasting case studies. In the first, an economic evaluation of a clinical intervention (Pulmonary Artery Catheterization), applying Genetic Matching to observational data replicates the substantive results of a corresponding randomized controlled trial unlike the extant literature. And in the second case study evaluating capitation versus fee-for-service, Genetic Matching radically improves balance on baseline covariates and overturns previous conclusions based on traditional methods.
一种新的非参数匹配偏差调整方法及其在经济评价中的应用
在使用观察数据的卫生经济学研究中,一个关键问题是如何调整由于评估项目的非随机分配而导致的基线协变量的不平衡。传统的协变量调整方法,如回归和倾向评分匹配是模型依赖的,往往不能复制随机对照试验的结果。我们展示了一种新的非参数匹配方法,遗传匹配,它是倾向得分和马氏距离匹配的推广(Sekhon即将发表),使用两个对比案例研究。首先,对临床干预(肺动脉导管置入术)的经济评估,将遗传匹配应用于观察数据,与现有文献不同,复制了相应随机对照试验的实质性结果。在第二个评估人头与服务收费的案例研究中,遗传匹配从根本上改善了基线协变量的平衡,并推翻了基于传统方法的先前结论。
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