Chicharro D
Department of Information and Communication Technologies, Universitat Pompeu Fabra, Barcelona, Spain.
Biol Cybern. 2011 Dec;105(5-6):331-47. doi: 10.1007/s00422-011-0469-z. Epub 2012 Jan 17.
Spectral measures of causality are used to explore the role of different rhythms in the causal connectivity between brain regions. We study several spectral measures related to Granger causality, comprising the bivariate and conditional Geweke measures, the directed transfer function, and the partial directed coherence. We derive the formulation of dependence and causality in the spectral domain from the more general formulation in the information-theory framework. We argue that the transfer entropy, the most general measure derived from the concept of Granger causality, lacks a spectral representation in terms of only the processes associated with the recorded signals. For all the spectral measures we show how they are related to mutual information rates when explicitly considering the parametric autoregressive representation of the processes. In this way we express the conditional Geweke spectral measure in terms of a multiple coherence involving innovation variables inherent to the autoregressive representation. We also link partial directed coherence with Sims' criterion of causality. Given our results, we discuss the causal interpretation of the spectral measures related to Granger causality and stress the necessity to explicitly consider their specific formulation based on modeling the signals as linear Gaussian stationary autoregressive processes.
因果关系的频谱测度用于探究不同节律在脑区之间因果连接中的作用。我们研究了几种与格兰杰因果关系相关的频谱测度,包括双变量和条件盖维克测度、定向传递函数以及偏定向相干性。我们从信息论框架中更一般的公式推导出频谱域中依赖性和因果关系的公式。我们认为,转移熵作为从格兰杰因果关系概念推导出来的最一般测度,缺乏仅根据与记录信号相关的过程的频谱表示。对于所有频谱测度,我们展示了在明确考虑过程的参数自回归表示时,它们如何与互信息率相关。通过这种方式,我们根据涉及自回归表示中固有创新变量的多重相干性来表达条件盖维克频谱测度。我们还将偏定向相干性与西姆斯因果关系准则联系起来。基于我们的结果,我们讨论了与格兰杰因果关系相关的频谱测度的因果解释,并强调有必要基于将信号建模为线性高斯平稳自回归过程来明确考虑它们的具体公式。