Valente Bruno Dourado, de Magalhães Rosa Guilherme Jordão
Department of Animal Science, University of Wisconsin-Madison, Madison, WI, USA.
Methods Mol Biol. 2013;1019:449-64. doi: 10.1007/978-1-62703-447-0_21.
Complex networks with causal relationships among variables are pervasive in biology. Their study, however, requires special modeling approaches. Structural equation models (SEM) allow the representation of causal mechanisms among phenotypic traits and inferring the magnitude of causal relationships. This information is important not only in understanding how variables relate to each other in a biological system, but also to predict how this system reacts under external interventions which are common in fields related to health and food production. Nevertheless, fitting a SEM requires defining a priori the causal structure among traits, which is the qualitative information that describes how traits are causally related to each other. Here, we present directions for the applications of SEM to investigate a system of phenotypic traits after searching for causal structures among them. The search may be performed under confounding effects exerted by genetic correlations.
变量间具有因果关系的复杂网络在生物学中普遍存在。然而,对它们的研究需要特殊的建模方法。结构方程模型(SEM)能够表示表型性状之间的因果机制,并推断因果关系的大小。这些信息不仅对于理解生物系统中变量如何相互关联很重要,而且对于预测该系统在健康和食品生产等相关领域常见的外部干预下如何反应也很重要。尽管如此,拟合一个结构方程模型需要事先定义性状之间的因果结构,这是描述性状如何因果相关的定性信息。在此,我们在寻找表型性状之间的因果结构后,给出了应用结构方程模型来研究表型性状系统的指导方向。该搜索可以在遗传相关性产生的混杂效应下进行。