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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >IDENTIFICATION OF GRANGER CAUSALITY BETWEEN GENE SETS
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IDENTIFICATION OF GRANGER CAUSALITY BETWEEN GENE SETS

机译:识别基因组之间更大的因果关系

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摘要

Wiener and Granger have introduced an intuitive concept of causality (Granger causality) between two variables which is based on the idea that an effect never occurs before its cause. Later, Geweke generalized this concept to a multivariate Granger causality, i.e. n variables Granger-cause another variable. Although Granger causality is not "effective causality" in the Aristothelic sense, this concept is useful to infer directionality and information flow in observational data. Granger causality is usually identified by using VAR (Vector Autoregressive) models due to their simplicity. In the last few years, several VAR-based models were presented in order to model gene regulatory networks. Here, we generalize the multivariate Granger causality concept in order to identify Granger causalities between sets of gene expressions, i.e. whether a set of n genes Granger-causes another set of m genes, aiming at identifying the flow of information between gene networks (or pathways). The concept of Granger causality for sets of variables is presented. Moreover, a method for its identification with a bootstrap test is proposed. This method is applied in simulated and also in actual biological gene expression data in order to model regulatory networks. This concept may be useful for the understanding of the complete information flow from one network or pathway to the other, mainly in regulatory networks. Linking this concept to graph theory, sink and source can be generalized to node sets. Moreover, hub and centrality for sets of genes can be defined based on total information flow. Another application is in annotation, when the functionality of a set of genes is unknown, but this set is Granger-caused by another set of genes which is well studied. Therefore, this information may be useful to infer or construct some hypothesis about the unknown set of genes.
机译:Wiener和Granger在两个变量之间引入了因果关系的直观概念(Granger因果关系),其基于这样的思想,即效应永远不会在其原因之前发生。后来,Geweke将这个概念推广到一个多元Granger因果关系,即n个变量Granger导致另一个变量。尽管格兰杰因果关系不是亚里士多德意义上的“有效因果关系”,但该概念对于推断观测数据的方向性和信息流很有用。由于其简单性,通常使用VAR(向量自回归)模型来识别格兰杰因果关系。在最近几年中,提出了几种基于VAR的模型以对基因调控网络进行建模。在这里,我们归纳了多元格兰杰因果关系概念,以识别基因表达集之间的格兰杰因果关系,即一组n个基因是否格兰杰导致另一组m个基因,目的是确定基因网络(或路径)之间的信息流)。提出了变量集的格兰杰因果关系的概念。此外,提出了一种用自举测试对其进行识别的方法。该方法可用于模拟以及实际的生物基因表达数据中,以对调节网络进行建模。该概念对于理解主要是在监管网络中从一个网络或路径到另一网络或路径的完整信息流可能很有用。将此概念与图论联系起来,可以将汇和源概括为节点集。此外,可以基于总信息流来定义基因集的中心和中心。当一组基因的功能未知时,另一个应用是在注释中,但是这一组是格兰杰引起的,是另一组经过充分研究的基因。因此,此信息可能有助于推断或构建有关未知基因集的某些假设。

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