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Nonlinear Markov process amplitude EEG model for nonlinear coupling interaction of spontaneous EEG

机译:自发性脑电非线性耦合相互作用的非线性马尔可夫过程振幅脑电模型

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摘要

To develop an appropriate model for representing spontaneous electroencephalography (EEG) is an important and necessary work in the field of neuroscience. The Markov process amplitude (MPA) EEG model has been proposed in our previous work for representing the features of the EEG in terms of a few parameters. However, being a linear model, the linear MPA EEG model cannot perfectly describe the spontaneous EEG that displays nonlinear phenomena. Here, the nonlinear Markov process amplitude (nonlinear MPA) EEG model that includes nonlinear components is introduced. The consistent consideration of the nonlinear features of the EEG investigated by N. Wiener (1966) and P.L. Nunez (1995) can be seen from the nonlinear MPA EEG model. The similarity in the time domain and the goodness of fitting in the frequency domain with respect to the ongoing EEG are shown. As a result, the EEG power spectrum can be decomposed into the spontaneous components and the nonlinearly coupled components by use of the nonlinear MPA EEG model, which is useful for a better understanding the mechanism of the EEG generation.
机译:建立一个合适的代表自发性脑电图(EEG)的模型是神经科学领域的重要且必要的工作。在我们先前的工作中已经提出了马尔可夫过程幅度(MPA)脑电模型,用于通过一些参数来表示脑电图的特征。但是,作为线性模型,线性MPA EEG模型不能完美地描述显示非线性现象的自发EEG。在此,介绍了包含非线性成分的非线性马尔可夫过程幅度(非线性MPA)EEG模型。 N. Wiener(1966)和P.L.研究的对脑电图非线性特征的一致考虑。 Nunez(1995)从非线性MPA EEG模型可以看出。相对于进行中的脑电图,显示了时域的相似性和频域的拟合优度。结果,通过使用非线性MPA EEG模型,可以将EEG功率谱分解为自发分量和非线性耦合分量,这对于更好地了解EEG生成的机理很有用。

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