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Estimation of the effect of interventions that modify the received treatment

机译:估计修改接受治疗的干预措施的效果

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Motivated by a study of surgical operating time and post-operative outcomes for lung cancer, we consider the estimation of causal effects of continuous point-exposure treatments. To investigate causality, the standard paradigm postulates a series of treatment-specific counterfactual outcomes and establishes conditions under which we may learn about them from observational study data. While many choices are possible, causal effects are typically defined in terms of variation of the mean of counterfactual outcomes in hypothetical worlds in which specific treatment strategies are 'applied' to all individuals. For example, one might compare two worlds: one where each individual receives some specific dose and a second where each individual receives some other dose. For our motivating study, defining causal effects in this way corresponds to (hypothetical) interventions that could not conceivably be implemented in the real world. In this work, we consider an alternative, complimentary framework that investigates variation in the mean of counterfactual outcomes under hypothetical treatment strategies where each individual receives a treatment dose corresponding to that actually received but modified in some pre-specified way. Quantification of this variation is defined in terms of contrasts for specific interventions as well as in terms of the parameters of a new class of marginal structural mean models. Within this framework, we propose three estimators: an outcome regression estimator, an inverse probability of treatment weighted estimator and a doubly robust estimator. We illustrate the methods with an analysis of the motivating data.
机译:基于对肺癌的手术时间和术后结果的研究,我们考虑了连续点接触治疗的因果关系估计。为了调查因果关系,标准范例假设了一系列针对治疗的反事实结局,并建立了可从观察性研究数据中了解它们的条件。尽管有许多选择是可能的,但因果效应通常是根据假设世界中反事实结果均值的变化来定义的,在该假设世界中,特定的治疗策略“适用于”所有个体。例如,一个人可能会比较两个世界:一个世界,每个人都接受某种特定剂量,另一个世界,每个人都接受某种其他剂量。对于我们的激励研究,以这种方式定义因果效应对应于(假想的)干预措施,在现实世界中无法实现。在这项工作中,我们考虑一个替代的,互补的框架,该框架研究假设治疗策略下假想结果均值的变化,其中每个人都接受与实际接受的剂量相对应的剂量,但以某种预先指定的方式进行了修改。根据针对特定干预措施的对比以及一类新的边际结构均值模型的参数来定义这种变化的量化。在此框架内,我们提出了三个估计量:结果回归估计量,治疗加权估计的逆概率和双重稳健估计量。我们通过分析激励数据来说明这些方法。

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