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Sensitivity analyses for parametric causal mediation effect estimation

机译:参数因果中介效应估计的敏感性分析

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Causal mediation analysis uses a potential outcomes framework to estimate the direct effect of an exposure on an outcome and its indirect effect through an intermediate variable (or mediator). Causal interpretations of these effects typically rely on sequential ignorability. Because this assumption is not empirically testable, it is important to conduct sensitivity analyses. Sensitivity analyses so far offered for this situation have either focused on the case where the outcome follows a linear model or involve nonparametric or semiparametric models. We propose alternative approaches that are suitable for responses following generalized linear models. The first approach uses a Gaussian copula model involving latent versions of the mediator and the final outcome. The second approach uses a so-called hybrid causal-observational model that extends the association model for the final outcome, providing a novel sensitivity parameter. These models, while still assuming a randomized exposure, allow for unobserved (as well as observed) mediator-outcome confounders that are not affected by exposure. The methods are applied to data from a study of the effect of mother education on dental caries in adolescence.
机译:因果调解分析使用潜在的结果框架来估计暴露对结果的直接影响及其通过中间变量(或中介)的间接影响。这些影响的因果解释通常取决于顺序的可忽略性。由于该假设无法凭经验进行检验,因此进行敏感性分析非常重要。到目前为止,针对这种情况提供的敏感性分析要么集中于结果遵循线性模型的情况,要么涉及非参数或半参数模型。我们提出了适合以下广义线性模型响应的替代方法。第一种方法使用高斯系模型,该模型涉及潜在版本的介体和最终结果。第二种方法使用所谓的混合因果观测模型,该模型扩展了最终结果的关联模型,从而提供了新的灵敏度参数。这些模型虽然仍然假设是随机暴露,但允许不受观察(以及观察到)的介体结果混杂因素的影响。该方法被应用于来自母亲教育对青春期龋齿影响研究的数据。

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