Astolfi L, Cincotti F, Mattia D, Mattiocco M, De Vico Fallani F, Colosimo A, Marciani M G, Hesse W, Zemanova L, Lopez G Zamora, Kurths J, Zhou C, Babiloni F
IRCCS, Fondazione Santa Lucia, Rome, Italy.
Conf Proc IEEE Eng Med Biol Soc. 2006;2006:2446-9. doi: 10.1109/IEMBS.2006.260708.
The Directed Transfer Function (DTF) and the Partial Directed Coherence (PDC) are frequency-domain estimators, based on the multivariate autoregressive modelling (MVAR) of time series, that are able to describe interactions between cortical areas in terms of the concept of Granger causality. However, the classical estimation of these methods requires the stationary of the signals. In this way, transient pathways of information transfer remains hidden. The objective of this study is to test a time-varying multivariate method for the estimation of rapidly changing connectivity relationships between cortical areas of the human brain, based on DTF/PDC and on the use of adaptive MVAR modelling (AMVAR). This approach will allow the observation of transient influences between the cortical areas during the execution of a task. Time-varying DTF and PDC were obtained by the adaptive recursive fit of an MVAR model with time-dependent parameters, by means of a generalized recursive least-square (RLS) algorithm, taking into consideration a set of EEG epochs. Simulations were performed under different levels of Signal to Noise Ratio (SNR), number of trials (TRIALS) and frequency bands (BAND), and of different values of the RLS adaptation factor adopted (factor C). The results indicated that time-varying DTF and PDC are able to estimate correctly the imposed connectivity patterns under reasonable operative conditions of SNR ad number of trials. Moreover, the capability of follow the rapid changes in connectivity is highly increased by the number of trials at disposal, and by the right choice of the value adopted for the adaptation factor C. The results of the simulation study indicate that DTF and PDC computed on adaptive MVAR can be effectively used to estimate time-varying patterns of functional connectivity between cortical activations, under general conditions met in practical EEG recordings.
定向传递函数(DTF)和偏定向相干性(PDC)是频域估计器,基于时间序列的多元自回归建模(MVAR),能够根据格兰杰因果关系的概念描述皮层区域之间的相互作用。然而,这些方法的经典估计需要信号的平稳性。这样一来,信息传递的瞬态路径就仍然隐藏着。本研究的目的是测试一种时变多元方法,用于基于DTF/PDC和自适应MVAR建模(AMVAR)的使用来估计人类大脑皮层区域之间快速变化的连接关系。这种方法将允许观察任务执行期间皮层区域之间的瞬态影响。时变DTF和PDC是通过使用广义递归最小二乘(RLS)算法,对具有时间相关参数的MVAR模型进行自适应递归拟合而获得的,同时考虑了一组脑电图片段。在不同的信噪比(SNR)、试验次数(TRIALS)和频段(BAND)水平下,以及采用的RLS自适应因子(因子C)的不同值下进行了模拟。结果表明,在合理的SNR和试验次数操作条件下,时变DTF和PDC能够正确估计所施加的连接模式。此外,可支配的试验次数以及自适应因子C所采用值的正确选择极大地提高了跟踪连接快速变化的能力。模拟研究结果表明,在实际脑电图记录中遇到的一般条件下,基于自适应MVAR计算的DTF和PDC可有效地用于估计皮层激活之间功能连接的时变模式。