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Structural factor equation models for causal network construction via directed acyclic mixed graphs

机译:通过指向非循环混合图的因果网络施工结构因子方程模型

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Directed acyclic mixed graphs (DAMGs) provide a useful representation of network topology with both directed and undirected edges subject to the restriction of no directed cycles in the graph. This graphical framework may arise in many biomedical studies, for example, when a directed acyclic graph (DAG) of interest is contaminated with undirected edges induced by some unobserved confounding factors (eg, unmeasured environmental factors). Directed edges in a DAG are widely used to evaluate causal relationships among variables in a network, but detecting them is challenging when the underlying causality is obscured by some shared latent factors. The objective of this paper is to develop an effective structural equation model (SEM) method to extract reliable causal relationships from a DAMG. The proposed approach, termedstructural factor equation model (SFEM), uses the SEM to capture the network topology of the DAG while accounting for the undirected edges in the graph with a factor analysis model. The latent factors in the SFEM enable the identification and removal of undirected edges, leading to a simpler and more interpretable causal network. The proposed method is evaluated and compared to existing methods through extensive simulation studies, and illustrated through the construction of gene regulatory networks related to breast cancer.
机译:定向的无循环混合图(该死的)提供了有用的网络拓扑的有用表示,其中指向和无向边缘受到图表中无定向周期的限制。这种图形框架可以在许多生物医学研究中出现,例如,当感兴趣的引导的无循环图(DAG)被一些未经观察的混淆因子引起的无向边缘(例如,未测量的环境因素)被污染。 DAG中的定向边广泛用于评估网络中变量之间的因果关系,但是当潜在的因果因素被一些共同的潜在因子掩盖了潜在的因果时,检测到它们是挑战。本文的目的是开发一种有效的结构方程模型(SEM)方法,以提取来自该死的可靠的因果关系。所提出的方法,定义性因子方程模型(SFEM),使用SEM捕获DAG的网络拓扑,同时用因子分析模型占图形中的无向边缘。 SFEM中的潜在因子使得能够识别和移除无向边缘,导致更简单,更可取的因果网络。通过广泛的模拟研究评估所提出的方法,并将其与现有方法进行比较,并通过构建与乳腺癌有关的基因调节网络进行说明。

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