Survival outcomes are common in comparative effectiveness studies and require unique handling because they are usually incompletely observed due to right-censoring. A ``once for all'' approach for causal inference with survival outcomes constructs pseudo-observations and allows standard methods such as propensity score weighting to proceed as if the outcomes are completely observed. We propose a general class of model-free causal estimands with survival outcomes on user-specified target populations. We develop corresponding propensity score weighting estimators based on the pseudo-observations and establish their asymptotic properties. In particular, utilizing the functional delta-method and the von Mises expansion, we derive a new closed-form variance of the weighting estimator that takes into account the uncertainty due to both pseudo-observation calculation and propensity score estimation. This allows valid and computationally efficient inference without resampling. We also prove the optimal efficiency property of the overlap weights within the class of balancing weights for survival outcomes. The proposed methods are applicable to both binary and multiple treatments. Extensive simulations are conducted to explore the operating characteristics of the proposed method versus other commonly used alternatives. We apply the proposed method to compare the causal effects of three popular treatment approaches for prostate cancer patients.
翻译:生存结果在比较有效性研究中是常见的,需要独特的处理,因为通常由于右检查而没有完全观察到生存结果。 " 人人对生存结果的因果关系推断方法 " 是指对生存结果的因果关系推断的假观察,并允许象完全观察结果一样进行偏重度加权等标准方法。我们提议了一个无模型的因果关系估计值的一般类别,并附带用户指定目标人群的生存结果。我们根据假观察结果制定了相应的偏重度估计值,并建立了它们的消沉特性。特别是,利用功能三角方位法和冯·米泽斯扩展,我们得出加权估计值的新的封闭式差异,其中考虑到伪观察计算和偏重度估计的不确定性。这样就可以在不作抽样的情况下对用户指定的目标人群进行有效计算。我们还证明在平衡生存结果的重量类别内重叠估计值的最佳效率属性。提议的方法适用于二进制和多重治疗。我们提出的方法既适用于二进制治疗,也适用于冯·米斯扩展,我们从加权估测测算的估测测测测测测测测测测的估结果的三种常见癌症方法。我们将采用通用癌症处理方法。