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Evaluating Mediation in Longitudinal Multivariate Data: Mediation Effects for the Aban Aya Youth Project Drug Prevention Program

机译:在纵向多元数据中评估调解:阿班阿雅青年项目药物预防计划的调解效果

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摘要

This study illustrates a method to evaluate mediational mechanisms in a longitudinal prevention trial, the Aban Aya Youth Project (AAYP). In previous studies, interventions of AAYP were found to be effective in reducing the growth of violence, substance use and unsafe sex among African American adolescents. In this article, we hypothesized that the effects of the interventions in reducing the growth of substance use behavior were achieved through their effects in changing intermediate processes such as behavioral intentions, attitudes toward the behavior, estimates of peers’ behaviors, best friends’ behaviors, and peer group pressure. In evaluating these mediational mechanisms, difficulties arise because the growth trajectories of the substance use outcome variable and some of the mediating variables were curvilinear. In addition, all of the multivariate mediational measures had planned missing data so that a score from the multiple items for a mediator could not be formed easily. In this article, we introduce a latent growth modeling (LGM) approach; namely, a two-domain LGM mediation model, in which the growth curves of the outcome and the mediator are simultaneously modeled and the mediation effects are evaluated. Results showed that the AAYP intervention effects on adolescent drug use were mediated by normative beliefs of prevalence estimates, friends’ drug use behavior, perceived friends’ encouragement to use, and attitudes toward the behavior.
机译:这项研究说明了在纵向预防试验(阿班阿雅青年计划(AAYP))中评估中介机制的方法。在先前的研究中,发现AAYP的干预措施可有效减少非洲裔美国青少年中暴力行为,毒品使用和不安全性行为的增长。在本文中,我们假设干预措施在减少药物滥用行为中的作用是通过其在改变中间过程中的作用来实现的,这些过程包括行为意图,对行为的态度,对同伴的行为的估计,最好的朋友的行为,和同伴群体的压力。在评估这些中介机制时,会出现困难,因为物质的增长轨迹使用了结果变量,并且某些中介变量是曲线的。此外,所有多元调解措施均计划丢失数据,因此很难轻易地从多个项目中为调解人评分。在本文中,我们介绍了潜在增长建模(LGM)方法。即,两域LGM调解模型,其中同时建模结果和调解器的增长曲线并评估调解效果。结果表明,AAYP干预对青少年吸毒的影响是由流行估计的规范性信念,朋友的毒品使用行为,知觉的朋友鼓励使用行为以及对行为的态度介导的。

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