Hudson James I, Javaras Kristin N, Laird Nan M, VanderWeele Tyler J, Pope Harrison G, Hernán Miguel A
Biological Psychiatry Laboratory, McLean Hospital, Belmont, MA 02478, USA.
Epidemiology. 2008 May;19(3):431-9. doi: 10.1097/EDE.0b013e31816a9de7.
The demonstration that 2 disorders coaggregate in families is often the first step in the exploration of genetic factors common to the 2 disorders. Previous methods of analyzing familial coaggregation have used either (1) a typical measure of association (eg, the odds ratio) between a disorder in an individual and another disorder in family members, or (2) a linear structural equation model (SEM). The association method accommodates case-control sampling of families, but may not assess the causal effect of interest because it is not based on an underlying causal model. The SEM method is based on a causal model, but cannot easily accommodate case-control sampling or direct effects of 1 disorder on the other within individuals. We develop a new method of analyzing coaggregation based on directed acyclic graphs. Because this method is a generalization of structural equation models and uses measures of association that accommodate case-control sampling and direct effects, it combines the strengths of both previous methods. In the absence of direct effects between disorders, our approach provides a valid estimate of the causal coaggregation effect. In the presence of direct effects, our approach provides an upper-bound estimate and (assuming additive linear effects of latent familial and nonfamilial factors) a lower-bound estimate of the causal coaggregation effect. For illustration, we applied our method to a family study of binge eating disorder and bipolar disorder.
证明两种疾病在家族中共同聚集往往是探索这两种疾病共同的遗传因素的第一步。以往分析家族性共同聚集的方法要么是(1)使用个体中的一种疾病与家庭成员中的另一种疾病之间的典型关联度量(例如优势比),要么是(2)使用线性结构方程模型(SEM)。关联方法适用于家族的病例对照抽样,但可能无法评估感兴趣的因果效应,因为它不是基于潜在的因果模型。SEM方法基于因果模型,但不容易适应病例对照抽样或个体内一种疾病对另一种疾病的直接效应。我们开发了一种基于有向无环图分析共同聚集的新方法。由于该方法是结构方程模型的推广,并使用了适用于病例对照抽样和直接效应的关联度量,它结合了先前两种方法的优点。在疾病之间不存在直接效应的情况下,我们的方法提供了因果共同聚集效应的有效估计。在存在直接效应的情况下,我们的方法提供了因果共同聚集效应的上限估计以及(假设潜在家族因素和非家族因素的加性线性效应)下限估计。为了说明,我们将我们的方法应用于暴饮暴食障碍和双相情感障碍的家族研究。