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EEG STOCHASTIC NONLINEAR OSCILLATOR MODELS FOR ALZHEIMER'S DISEASE

机译:脑神经病的脑电随机非线性振荡器模型

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In this article, we derive unique stochastic nonlinear coupled oscillator models of EEG signals from an Alzheimer's Disease (AD) study. EEG signals recorded during resting eyes-open (EO) and eyes-closed (EC) conditions in a pilot study with AD patients and age-matched healthy control subjects (CTL) are employed. An optimization scheme is then utilized to match the output of the stochastic Duffing - van der Pol double oscillator network with EEG signals recorded during each condition for AD and CTL subjects. The selected decision variable are the model parameters and noise intensity. While, the selected signal characteristics are power spectral densities in major brain frequency bands and Shannon and sample entropies to match the signal information content and complexity. It is shown that statistically significant unique models represent the EC and EO conditions for both CTL and AD subjects. Moreover, the inclusion of sample entropy in the optimization process significantly enhances the stochastic nonlinear oscillator model performance. The study suggests that EEG signals recorded under different brain states as well as those belonging to a brain disorder such as Alzheimer's disease can be uniquely represented by stochastic nonlinear oscillators paving the way for identification of new discriminants.
机译:在本文中,我们从阿尔茨海默氏病(AD)研究得出脑电信号的独特随机非线性耦合振荡器模型。在一项针对AD患者和年龄匹配的健康对照受试者(CTL)的先导研究中,采用了在静息睁眼(EO)和闭眼(EC)期间记录的EEG信号。然后利用优化方案将随机Duffing-van der Pol双振荡器网络的输出与在针对AD和CTL受试者的每种情况下记录的EEG信号进行匹配。选择的决策变量是模型参数和噪声强度。同时,选定的信号特征是主要大脑频带和香农中的功率谱密度以及样本熵,以匹配信号信息的内容和复杂性。结果表明,具有统计学意义的独特模型代表了CTL和AD受试者的EC和EO条件。此外,在优化过程中包含样本熵可显着增强随机非线性振荡器模型的性能。该研究表明,在不同脑状态以及属于诸如阿尔茨海默氏病等脑部疾病状态下记录的脑电信号可以由随机非线性振荡器唯一地代表,从而为识别新的判别器铺平了道路。

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