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A Time-Varying Connectivity Analysis from Distributed EEG Sources: A Simulation Study

机译:分布式EEG源的时变连通性分析:仿真研究

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摘要

Time-varying connectivity analysis based on sources reconstructed using inverse modeling of electroencephalographic (EEG) data is important to understand the dynamic behaviour of the brain. We simulated cortical data from a visual spatial attention network with a time-varying connectivity structure, and then simulated the propagation to the scalp to obtain EEG data. Distributed EEG source modeling using sLORETA was applied. We compared different dipole (representing a source) selection strategies based on their time series in a region of interest. Next, we estimated multivariate autoregressive (MVAR) parameters using classical Kalman filter and general linear Kalman filter approaches followed by the calculation of partial directed coherence (PDC). MVAR parameters and PDC values for the selected sources were compared with the ground-truth. We found that the best strategy to extract the time series of a region of interest was to select a dipole with time series showing the highest correlation with the average time series in the region of interest. Dipole selection based on power or based on the largest singular value offer comparable alternatives. Among the different Kalman filter approaches, the use of a general linear Kalman filter was preferred to estimate PDC based connectivity except when only a small number of trials are available. In the latter case, the classical Kalman filter can be an alternative.
机译:基于使用脑电图(EEG)数据逆模型重建的源进行的时变连通性分析对于理解大脑的动态行为非常重要。我们从具有时变连接结构的视觉空间注意力网络中模拟皮质数据,然后模拟向头皮的传播以获得脑电图数据。应用了使用sLORETA的分布式EEG源建模。我们根据感兴趣地区不同时间序列的偶极子选择策略(表示源)进行了比较。接下来,我们使用经典卡尔曼滤波器和通用线性卡尔曼滤波器方法估算多元自回归(MVAR)参数,然后计算部分有向相干性(PDC)。将所选源的MVAR参数和PDC值与真实情况进行比较。我们发现,提取感兴趣区域的时间序列的最佳策略是选择一个偶极子,该偶极子的时间序列与感兴趣区域中的平均时间序列的相关性最高。基于功率或基于最大奇异值的偶极选择提供了可比的替代方案。在不同的卡尔曼滤波器方法中,除了只有少量试验可用之外,一般首选使用线性线性卡尔曼滤波器来估计基于PDC的连通性。在后一种情况下,可以使用经典的卡尔曼滤波器。

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