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A Note on Inferring Acyclic Network Structures Using Granger Causality Tests

机译:关于使用Granger因果检验推断非循环网络结构的注释

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摘要

Granger causality (GC) and its extension have been used widely to infer causal relationships from multivariate time series generated from biological systems. GC is ideally suited for causal inference in bivariate vector autoregressive process (VAR). A zero magnitude of the upper or lower off-diagonal element(s) in a bivariate VAR is indicative of lack of causal relationship in that direction resulting in true acyclic structures. However, in experimental settings, statistical tests, such as F-test that rely on the ratio of the mean-squared forecast errors, are used to infer significant GC relationships. The present study investigates acyclic approximations within the context of bi-directional two-gene network motifs modeled as bivariate VAR. The fine interplay between the model parameters in the bivariate VAR, namely: (i) transcriptional noise variance, (ii) autoregulatory feedback, and (iii) transcriptional coupling strength that can give rise to discrepancies in the ratio of the mean-squared forecast errors is investigated. Subsequently, their impact on statistical power is investigated using Monte Carlo simulations. More importantly, it is shown that one can arrive at acyclic approximations even for bi-directional networks for suitable choice of process parameters, significance level and sample size. While the results are discussed within the framework of transcriptional network, the analytical treatment provided is generic and likely to have significant impact across distinct paradigms.
机译:Granger因果关系(GC)及其扩展已被广泛用于从生物系统生成的多元时间序列中推断因果关系。 GC非常适合双变量矢量自回归过程(VAR)中的因果推理。双变量VAR中的一个或多个上或下非对角元素的大小为零表示该方向上没有因果关系,从而导致真正的无环结构。但是,在实验设置中,统计测试(例如依赖于均方预测误差比率的F检验)用于推断重要的GC关系。本研究调查了双向双基因网络主题为双变量VAR的情况下的无环近似。双变量VAR中的模型参数之间存在良好的相互作用,即:(i)转录噪声方差,(ii)自调节反馈和(iii)转录偶联强度,可能导致均方预测误差比的差异被调查。随后,使用蒙特卡洛模拟研究了它们对统计能力的影响。更重要的是,它表明即使对于双向网络,只要能适当选择过程参数,显着性水平和样本量,就可以得出非循环近似值。虽然在转录网络的框架内讨论了结果,但提供的分析方法是通用的,可能会对不同的范例产生重大影响。

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