Astolfi Laura, Cincotti Febo, Mattia Donatella, Salinari Serenella, Babiloni Claudio, Basilisco Alessandra, Rossini Paolo Maria, Ding Lei, Ni Ying, He Bin, Marciani Maria Grazia, Babiloni Fabio
Dipartimento di Informatica e Sistemistica, Università "La Sapienza", 00185, Rome, Italy.
Magn Reson Imaging. 2004 Dec;22(10):1457-70. doi: 10.1016/j.mri.2004.10.006.
Different brain imaging devices are presently available to provide images of the human functional cortical activity, based on hemodynamic, metabolic or electromagnetic measurements. However, static images of brain regions activated during particular tasks do not convey the information of how these regions are interconnected. The concept of brain connectivity plays a central role in the neuroscience, and different definitions of connectivity, functional and effective, have been adopted in literature. While the functional connectivity is defined as the temporal coherence among the activities of different brain areas, the effective connectivity is defined as the simplest brain circuit that would produce the same temporal relationship as observed experimentally among cortical sites. The structural equation modeling (SEM) is the most used method to estimate effective connectivity in neuroscience, and its typical application is on data related to brain hemodynamic behavior tested by functional magnetic resonance imaging (fMRI), whereas the directed transfer function (DTF) method is a frequency-domain approach based on both a multivariate autoregressive (MVAR) modeling of time series and on the concept of Granger causality. This study presents advanced methods for the estimation of cortical connectivity by applying SEM and DTF on the cortical signals estimated from high-resolution electroencephalography (EEG) recordings, since these signals exhibit a higher spatial resolution than conventional cerebral electromagnetic measures. To estimate correctly the cortical signals, we used a subject's multicompartment head model (scalp, skull, dura mater, cortex) constructed from individual MRI, a distributed source model and a regularized linear inverse source estimates of cortical current density. Before the application of SEM and DTF methodology to the cortical waveforms estimated from high-resolution EEG data, we performed a simulation study, in which different main factors (signal-to-noise ratio, SNR, and simulated cortical activity duration, LENGTH) were systematically manipulated in the generation of test signals, and the errors in the estimated connectivity were evaluated by the analysis of variance (ANOVA). The statistical analysis returned that during simulations, both SEM and DTF estimators were able to correctly estimate the imposed connectivity patterns under reasonable operative conditions, that is, when data exhibit an SNR of at least 3 and a LENGTH of at least 75 s of nonconsecutive EEG recordings at 64 Hz of sampling rate. Hence, effective and functional connectivity patterns of cortical activity can be effectively estimated under general conditions met in any practical EEG recordings, by combining high-resolution EEG techniques and linear inverse estimation with SEM or DTF methods. We conclude that the estimation of cortical connectivity can be performed not only with hemodynamic measurements, but also with EEG signals treated with advanced computational techniques.
目前有不同的脑成像设备可用于基于血液动力学、代谢或电磁测量来提供人类功能性皮质活动的图像。然而,特定任务期间激活的脑区静态图像并不能传达这些区域如何相互连接的信息。脑连接性的概念在神经科学中起着核心作用,文献中采用了不同的连接性定义,包括功能性连接和有效连接。功能性连接被定义为不同脑区活动之间的时间相关性,而有效连接被定义为能产生与实验观察到的皮质位点之间相同时间关系的最简单脑回路。结构方程建模(SEM)是神经科学中估计有效连接性最常用的方法,其典型应用是针对通过功能磁共振成像(fMRI)测试的与脑血液动力学行为相关的数据,而定向传递函数(DTF)方法是一种基于时间序列的多元自回归(MVAR)建模和格兰杰因果关系概念的频域方法。本研究提出了通过将SEM和DTF应用于从高分辨率脑电图(EEG)记录估计的皮质信号来估计皮质连接性的先进方法,因为这些信号比传统的脑电磁测量具有更高的空间分辨率。为了正确估计皮质信号,我们使用了从个体磁共振成像(MRI)构建的受试者多隔室头部模型(头皮、颅骨、硬脑膜、皮质)、分布式源模型和皮质电流密度的正则化线性逆源估计。在将SEM和DTF方法应用于从高分辨率EEG数据估计的皮质波形之前,我们进行了一项模拟研究,其中在测试信号生成过程中系统地操纵了不同的主要因素(信噪比,SNR,以及模拟皮质活动持续时间,LENGTH),并通过方差分析(ANOVA)评估估计连接性中的误差。统计分析表明,在模拟过程中,当数据在64Hz采样率下表现出至少3的SNR和至少75s的非连续EEG记录的LENGTH时,即在合理的操作条件下,SEM和DTF估计器都能够正确估计施加的连接模式。因此,通过将高分辨率EEG技术和线性逆估计与SEM或DTF方法相结合,可以在任何实际EEG记录中满足的一般条件下有效地估计皮质活动的有效和功能性连接模式。我们得出结论,皮质连接性的估计不仅可以通过血液动力学测量来进行,也可以通过用先进计算技术处理的EEG信号来进行。