论文标题

来自多个队列数据的贝叶斯结构方程建模

Bayesian structural equation modeling for data from multiple cohorts

论文作者

Dang, Khue-Dung, Ryan, Louise M., Akkaya-Hocagil, Tugba, Cook, Richard J., Richardson, Gale A., Day, Nancy L., Coles, Claire D., Olson, Heather Carmichael, Jacobson, Sandra W., Jacobson, Joseph L.

论文摘要

尽管众所周知,高水平的产前酒精暴露(PAE)会导致儿童的严重认知缺陷,但剂量反应的确切性质尚不清楚。特别是,迫切需要确定与临床上严重不良影响风险增加相关的PAE水平。为了解决这个问题,已经从美国的六项纵向出生队列研究中结合了数据,这些研究评估了PAE对从学龄前年龄到青春期开始的认知结果的影响。结构方程模型(SEM)通常用于捕获多个观察到的结果之间的关联,以表征感兴趣的基本变量(在这种情况下为认知),然后将其与PAE相关联。但是,由于在六项研究中测量了不同的结果,因此无法在我们的背景下应用经典的SEM软件。在本文中,我们展示了如何使用贝叶斯方法来拟合多组的多级结构模型,该模型将认知映射到在多个年龄段测得的广泛观察到的变量。这些变量映射到几个不同的认知子域,并在使用倾向分数进行混淆后,根据PAE进行了检查。该模型还测试了剂量反应函数中变化点的可能性。

While it is well known that high levels of prenatal alcohol exposure (PAE) result in significant cognitive deficits in children, the exact nature of the dose response is less well understood. In particular, there is a pressing need to identify the levels of PAE associated with an increased risk of clinically significant adverse effects. To address this issue, data have been combined from six longitudinal birth cohort studies in the United States that assessed the effects of PAE on cognitive outcomes measured from early school age through adolescence. Structural equation models (SEMs) are commonly used to capture the association among multiple observed outcomes in order to characterise the underlying variable of interest (in this case, cognition) and then relate it to PAE. However, it was not possible to apply classic SEM software in our context because different outcomes were measured in the six studies. In this paper we show how a Bayesian approach can be used to fit a multi-group multi-level structural model that maps cognition to a broad range of observed variables measured at multiple ages. These variables map to several different cognitive subdomains and are examined in relation to PAE after adjusting for confounding using propensity scores. The model also tests the possibility of a change point in the dose-response function.

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