Faes Luca, Nollo Giandomenico
Dept of Physics and BIOtech, University of Trento, Mattarello, TN, Italy.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:5919-22. doi: 10.1109/IEMBS.2011.6091464.
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series with significant instantaneous interactions. After providing different causality definitions, we introduce an extended MV autoregressive modeling approach whereby each definition is described in the time domain in terms of the model coefficients, and is quantified in the frequency domain by means of novel measures of directional connectivity. These measures are illustrated in a theoretical example showing how they reduce to known indexes when instantaneous causality is trivial, while they describe peculiar aspects of directional interaction in the presence of instantaneous causality. The application on real MV cardiovascular and EEG time series is then reported to investigate the role played by instantaneous causality in the practical evaluation of frequency domain connectivity.
本文探讨了具有显著瞬时相互作用的多元(MV)时间序列中的频域因果关系评估。在给出不同的因果关系定义后,我们引入了一种扩展的MV自回归建模方法,通过该方法,每个定义在时域中用模型系数来描述,并在频域中通过新颖的方向连通性度量进行量化。这些度量在一个理论示例中得到说明,该示例展示了在瞬时因果关系微不足道时它们如何简化为已知指标,而在存在瞬时因果关系时,它们描述了方向相互作用的独特方面。随后报告了在实际的MV心血管和脑电图时间序列上的应用,以研究瞬时因果关系在频域连通性实际评估中所起的作用。