, Eastwood, NSW, Australia.
Brain Topogr. 2023 Nov;36(6):791-796. doi: 10.1007/s10548-023-00995-4. Epub 2023 Aug 2.
A computational model to examine time lagged interactions; identify number of interacting pairs of neuronal sources; and determine source activities from multi-channel EEG measurements is described. It is based on the imaginary part of the cross spectrum between the EEG channels. The imaginary part of the cross spectrum between the EEG channels provides the most suitable property that reflects the presence of interacting sources. The model assumes that not all sources are activated simultaneously and that there is a time lag amongst some of them. A new analytical expression derived for the imaginary part of cross spectrum between channels shows that it is different from the zero lag case. A method is then proposed to identify time lag interactions, by studying its variation as a function of frequency. Assuming pair wise interaction between sources, the model shows that simultaneous diagonalization at different frequencies of symmetric matrices formed by multiplying the anti-symmetric matrix of the imaginary part of cross spectrum with its transpose will provide information on the number of interacting source pairs as a function of frequency. The matrix that simultaneously diagonalizes all the symmetric matrices is identified as the mixing matrix. This can be used to obtain the source activities.
描述了一种计算模型,用于检查时滞相互作用;确定神经元源相互作用对的数量;并从多通道 EEG 测量中确定源活动。它基于 EEG 通道之间的互谱的虚部。EEG 通道之间的互谱的虚部提供了最适合反映相互作用源存在的性质。该模型假设并非所有源都同时激活,并且其中一些源之间存在时滞。为通道之间的互谱虚部推导出的新解析表达式表明,它与零延迟情况不同。然后提出了一种通过研究其随频率变化的方法来识别时滞相互作用。假设源之间的两两相互作用,该模型表明,在不同频率下对由互谱虚部的反对称矩阵乘以其转置形成的对称矩阵进行同时对角化,将提供随频率变化的相互作用源对数量的信息。可以同时对角化所有对称矩阵的矩阵被识别为混合矩阵。这可用于获得源活动。