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Estimating the effects of multiple time-varying exposures using joint marginal structural models: Alcohol consumption, injection drug use, and HIV acquisition

机译:使用联合边际结构模型估算多次时变暴露的影响:饮酒,注射毒品和艾滋病毒感染

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摘要

The joint effects of multiple exposures on an outcome are frequently of interest in epidemiologic research. In 2001, Hernán et al (J Am Stat Assoc. 2001;96:440-448) presented methods for estimating the joint effects of multiple time-varying exposures subject to time-varying confounding affected by prior exposure using joint marginal structural models. Nonetheless, the use of these joint models is rare in the applied literature. Minimal uptake of these joint models, in contrast to the now widely used standard marginal structural model, is due in part to a lack of examples demonstrating the method. In this paper, we review the assumptions necessary for unbiased estimation of joint effects as well as the distinction between interaction and effect measure modification. We demonstrate the use of marginal structural models for estimating the joint effects of alcohol consumption and injection drug use on HIV acquisition, using data from 1525 injection drug users in the AIDS Link to Intravenous Experience cohort study. In the joint model, the hazard ratio (HR) for heavy drinking in the absence of any drug injections was 1.58 (95% confidence interval = 0.67-3.73). The HR for any drug injections in the absence of heavy drinking was 1.78 (1.10-2.89). The HR for heavy drinking and any drug injections was 2.45 (1.45-4.12). The P values for multiplicative and additive interaction were 0.7620 and 0.9200, respectively, indicating a lack of departure from effects that multiply or add. We could not rule out interaction on either scale due to imprecision.
机译:流行病学研究经常关注多次暴露对结局的联合影响。在2001年,Hernán等人(J Am Stat Assoc。2001; 96:440-448)提出了使用联合边际结构模型估算受先前暴露影响的时变混杂影响的多个时变暴露的联合效应的方法。尽管如此,在应用文献中很少使用这些联合模型。与目前广泛使用的标准边际结构模型相比,这些联合模型的吸收最少,其部分原因是缺乏证明该方法的示例。在本文中,我们回顾了对关节效应进行无偏估计所需的假设,以及相互作用与效应度量修改之间的区别。我们使用AIDS Link to Intravenous Experience队列研究中1525名注射吸毒者的数据,证明了使用边际结构模型来估计饮酒和注射吸毒对HIV感染的联合影响。在联合模型中,在没有任何药物注射的情况下大量饮酒的危险比(HR)为1.58(95%置信区间= 0.67-3.73)。没有大量饮酒的任何药物注射的HR为1.78(1.10-2.89)。大量饮酒和任何药物注射的HR为2.45(1.45-4.12)。乘性和加性相互作用的P值分别为0.7620和0.9200,表明没有背离乘积或加法效应。由于不精确,我们不能排除任何规模的互动。

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