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A phenomenological model of EEG based on the dynamics of a stochastic Duffing-van der Pol oscillator network

机译:基于随机Duffing-van der Pol振荡器网络动力学的EEG现象学模型

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摘要

In this work, we propose a novel phenomenological model of the EEG signal based on the dynamics of a coupled Duffing-van der Pol oscillator network. An optimization scheme is adopted to match data generated from the model with clinically obtained EEG data from subjects under resting eyes-open (EO) and eyes-closed (EC) conditions. It is shown that a coupled system of two Duffing-van der Pol oscillators with optimized parameters yields signals with characteristics that match those of the EEG in both the EO and EC cases. The results, which are reinforced using statistical analysis, show that the EEG recordings under EC and EO resting conditions are clearly distinct realizations of the same underlying model occurring due to parameter variations with qualitatively different nonlinear dynamic characteristics. In addition, the interplay between noise and nonlinearity is addressed and it is shown that, for appropriately chosen values of noise intensity in the model, very good agreement exists between the model output and the EEG in terms of the power spectrum as well as Shannon entropy. In summary, the results establish that an appropriately tuned stochastic coupled nonlinear oscillator network such as the Duffing-van der Pol system could provide a useful framework for modeling and analysis of the EEG signal. In turn, design of algorithms based on the framework has the potential to positively impact the development of novel diagnostic strategies for brain injuries and disorders.
机译:在这项工作中,我们基于耦合的Duffing-van der Pol振荡器网络的动力学,提出了一种新的EEG信号现象学模型。采用优化方案以将模型产生的数据与在静息睁眼(EO)和闭眼(EC)条件下从受试者的临床获得的EEG数据进行匹配。结果表明,两个带有优化参数的Duffing-van der Pol振荡器的耦合系统产生的信号具有与EO和EC情况下的EEG匹配的特性。结果通过统计分析得到了加强,表明在EC和EO静息条件下的EEG记录显然是同一基本模型的不同实现,这是由于参数的变化具有定性不同的非线性动力学特性。此外,解决了噪声和非线性之间的相互作用,结果表明,对于模型中适当选择的噪声强度值,模型输出和EEG在功率谱以及香农熵方面都存在很好的一致性。 。总之,结果表明,适当调谐的随机耦合非线性振荡器网络(例如Duffing-van der Pol系统)可以为EEG信号的建模和分析提供有用的框架。反过来,基于该框架的算法设计有可能对新型的脑损伤和疾病诊断策略产生积极影响。

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