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首页> 外文期刊>Journal of Neuroscience Methods >Application of adaptive nonlinear Granger causality: Disclosing network changes before and after absence seizure onset in a genetic rat model
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Application of adaptive nonlinear Granger causality: Disclosing network changes before and after absence seizure onset in a genetic rat model

机译:自适应非线性Granger因果关系的应用:在基因大鼠模型中揭示失神发作前和发作后网络的变化

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摘要

Background: Advanced methods of signal analysis of the preictal and ictal activity dynamics characterizing absence epilepsy in humans with absences and in genetic animal models have revealed new and unknown electroencephalographic characteristics, that has led to new insights and theories. New method: Taking into account that some network associations can be considered as nonlinear, an adaptive nonlinear Granger causality approach was developed and applied to analyze cortico-cortical, cortico-thalamic and intrathalamic network interactions from local field potentials (LFPs). The outcomes of adaptive nonlinear models, constructed based on the properties of electroencephalographic signal and on statistical criteria to optimize the number of coefficients in the models, were compared with the outcomes of linear Granger causality. Results: The nonlinear adaptive method showed statistically significant preictal changes in Granger causality in almost all pairs of channels, as well as ictal changes in cortico-cortical, cortico-thalamic and intrathalamic networks. Current results suggest rearrangement of interactions in the thalamo-cortical network accompanied the transition from preictal to ictal phase. Comparison with existing method(s): The linear method revealed no preictal and less ictal changes in causality. Conclusions: Achieved results suggest that this proposed adaptive nonlinear method is more sensitive than the linear one to dynamics of network properties. Since changes in coupling were found before the seizure-related increase of LFP signal amplitude and also based on some additional tests it seems likely that they were not spurious and could not result from signal to noise ratio change.
机译:背景:表征缺席人群和遗传动物模型中缺席癫痫发作特征的发作前和发作活动动态的信号分析的先进方法揭示了新的和未知的脑电图特征,这带来了新的见识和理论。新方法:考虑到可以将某些网络关联视为非线性,因此开发了一种自适应非线性Granger因果关系方法,并将其应用于从局部场电势(LFP)分析皮质-皮质,皮质-丘脑和丘脑内部网络相互作用。将基于脑电图信号的属性和统计准则优化模型中系数数量而构建的自适应非线性模型的结果与线性Granger因果关系的结果进行了比较。结果:非线性自适应方法显示,在几乎所有通道对中,格兰杰因果关系的统计上显着的前期变化,以及皮层,皮层,丘脑和丘脑内网络的发作期变化。目前的结果表明,丘脑-皮层网络中相互作用的重排伴随着从发作期到发作期的转变。与现有方法的比较:线性方法显示因果关系没有发作性和发作性的变化。结论:取得的结果表明,该提出的自适应非线性方法比线性方法对网络特性的动力学更敏感。由于耦合的变化是在癫痫相关的LFP信号幅度增加之前发现的,并且还基于一些其他测试,因此看来它们不是虚假的,也可能不是由信噪比变化引起的。

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