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Regression-adjusted matching and double-robust methods for estimating average treatment effects in health economic evaluation

机译:回归调整匹配和双重稳健方法估计健康经济评估中的平均治疗效果

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摘要

Regression, propensity score (PS) and double-robust (DR) methods can reduce selection bias when estimating average treatment effects (ATEs). Economic evaluations of health care interventions exemplify complex data structures, in that the covariate-endpoint relationships tend to be highly non-linear, with highly skewed cost and health outcome endpoints. When either the regression or PS model is correct, DR methods can provide unbiased, efficient estimates of ATEs, but generally the specification of both models is unknown. Regression-adjusted matching can also protect against bias from model mis-specification, but has not been compared to DR methods. This paper compares regression-adjusted matching to selected DR methods (weighted regression and augmented inverse probability of treatment weighting) as well as to regression and PS methods for addressing selection bias in cost-effectiveness analyses (CEA). We contrast the methods in a CEA of a pharmaceutical intervention, where there are extreme estimated PSs, hence unstable inverse probability of treatment (IPT) weights. The case study motivates a simulation which considers settings with functional form misspecification in the PS and endpoint regression models (e.g. cost model with log instead of identity link), stable and unstable PS weights. We find that in the realistic setting of unstable IPT weights and misspecifications to the PS and regression models, regression-adjusted matching reports less bias than DR methods. We conclude that regression-adjusted matching is a relatively robust method for estimating ATEs in applications with complex data structures exemplified by CEA.
机译:估计平均治疗效果(ATE)时,回归,倾向评分(PS)和双重稳健(DR)方法可以减少选择偏倚。卫生保健干预措施的经济评估体现了复杂的数据结构,因为协变量-终点之间的关系往往是高度非线性的,成本和卫生结果终点高度偏斜。当回归模型或PS模型正确时,DR方法可以提供无偏的,有效的ATE估计,但是通常两个模型的规格都是未知的。回归调整后的匹配还可以防止因模型错误指定而产生偏差,但尚未与DR方法进行比较。本文将回归调整后的匹配方法与选定的DR方法(加权加权回归和加权加权增加的治疗加权比重)以及用于解决成本效益分析(CEA)中选择偏倚的回归和PS方法进行比较。我们对比了药物干预的CEA中的方法,该方法中存在极高的PS估计值,因此治疗的逆向概率(IPT)权重不稳定。案例研究激发了一个模拟,该模拟考虑了PS中功能形式错误指定的设置和端点回归模型(例如,使用对数代替身份链接的成本模型),稳定和不稳定的PS权重。我们发现,在IPT权重不稳定以及PS和回归模型的规格不正确的现实设置中,回归调整后的匹配报告的偏倚小于DR方法。我们得出的结论是,回归调整后的匹配是一种相对健壮的方法,用于估计具有CEA举例说明的复杂数据结构的应用程序中的ATE。

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