A further critique of the analytic strategy of adjusting for covariates to identify biologic mediation.

Jay S Kaufman, Richard F Maclehose, Sol Kaufman
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引用次数: 252

Abstract

BACKGROUND: Epidemiologic research is often devoted to etiologic investigation, and so techniques that may facilitate mechanistic inferences are attractive. Some of these techniques rely on rigid and/or unrealistic assumptions, making the biologic inferences tenuous. The methodology investigated here is effect decomposition: the contrast between effect measures estimated with and without adjustment for one or more variables hypothesized to lie on the pathway through which the exposure exerts its effect. This contrast is typically used to distinguish the exposure's indirect effect, through the specified intermediate variables, from its direct effect, transmitted via pathways that do not involve the specified intermediates. METHODS: We apply a causal framework based on latent potential response types to describe the limitations inherent in effect decomposition analysis. For simplicity, we assume three measured binary variables with monotonic effects and randomized exposure, and use difference contrasts as measures of causal effect. Previous authors showed that confounding between intermediate and the outcome threatens the validity of the decomposition strategy, even if exposure is randomized. We define exchangeability conditions for absence of confounding of causal effects of exposure and intermediate, and generate two example populations in which the no-confounding conditions are satisfied. In one population we impose an additional prohibition against unit-level interaction (synergism). We evaluate the performance of the decomposition strategy against true values of the causal effects, as defined by the proportions of latent potential response types in the two populations. RESULTS: We demonstrate that even when there is no confounding, partition of the total effect into direct and indirect effects is not reliably valid. Decomposition is valid only with the additional restriction that the population contain no units in which exposure and intermediate interact to cause the outcome. This restriction implies homogeneity of causal effects across strata of the intermediate. CONCLUSIONS: Reliable effect decomposition requires not only absence of confounding, but also absence of unit-level interaction and use of linear contrasts as measures of causal effect. Epidemiologists should be wary of etiologic inference based on adjusting for intermediates, especially when using ratio effect measures or when absence of interacting potential response types cannot be confidently asserted.

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进一步批评调整协变量以确定生物中介的分析策略。
背景:流行病学研究通常致力于病原学调查,因此可能促进机制推断的技术是有吸引力的。其中一些技术依赖于严格和/或不切实际的假设,使生物学推断脆弱。这里研究的方法是效应分解:对一个或多个假设存在于暴露发挥其影响的途径上的变量进行调整和不进行调整时估计的效应测量之间的对比。这种对比通常用于区分暴露的间接影响(通过指定的中间变量)和直接影响(通过不涉及指定中间变量的途径传播)。方法:我们应用基于潜在潜在反应类型的因果框架来描述效应分解分析固有的局限性。为简单起见,我们假设三个测量的二元变量具有单调效应和随机暴露,并使用差异对比作为因果效应的度量。先前的作者表明,即使暴露是随机的,中间和结果之间的混淆也会威胁分解策略的有效性。我们定义了暴露和中间因果效应没有混淆的互换性条件,并生成了满足无混淆条件的两个示例群体。在一个种群中,我们对单位级的相互作用(协同作用)施加了额外的禁止。我们根据因果效应的真实值来评估分解策略的性能,因果效应是由两个群体中潜在潜在反应类型的比例定义的。结果:我们证明,即使在没有混杂的情况下,将总效应划分为直接效应和间接效应也是不可靠的。分解只有在附加限制下才有效,即人群中不包含暴露和中间体相互作用导致结果的单位。这种限制意味着中间体各层间因果效应的同质性。结论:可靠的效应分解不仅需要没有混杂因素,还需要没有单位层面的相互作用,并使用线性对比作为因果效应的衡量标准。流行病学家应该警惕基于调整中间产物的病因推断,特别是当使用比率效应测量或当缺乏相互作用的潜在反应类型不能自信地断言时。
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