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首页> 外文期刊>Clinical neurophysiology >EEG nonstationarity during intracranially recorded seizures: statistical and dynamical analysis.
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EEG nonstationarity during intracranially recorded seizures: statistical and dynamical analysis.

机译:脑内记录的癫痫发作期间脑电图的非平稳性:统计和动力学分析。

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摘要

OBJECTIVE: The investigation of nonstationarity in complex, multivariable signals, such as electroencephalographic (EEG) recordings, requires the application of different and novel approaches to analysis. In this study, we have divided the EEG recordings during epileptic seizures into sequential stages using spectral and statistical analysis, and have as well reconstructed discrete-time models (maps) that reflect dynamical (deterministic) properties of the EEG voltage time series. METHODS: Intracranial human EEG recordings with epileptic seizures from three different subjects with medically intractable temporal lobe epilepsy were studied. The methods of statistical (power spectra, wavelet spectra, and one-dimensional probability distribution functions) and dynamical (comparison of dynamical models) nonstationarity analysis were applied. RESULTS: Dynamical nonstationarity analysis revealed more detailed inner structure within the seizures than the statistical analysis. Three or four stages with different dynamics are typically present within seizures. The difference between interictal activity and seizure events was also more evident through dynamical analysis. CONCLUSIONS: Nonstationarity analysis can reveal temporal structure within an epileptic seizure, which could further understanding of how seizures evolve. The method could also be used for identification of seizure onset. SIGNIFICANCE: Our approach reveals new information about the temporal structure of seizures, which is inaccessible using conventional methods.
机译:目的:研究复杂的多变量信号(如脑电图(EEG))中的非平稳性,需要应用不同的新颖分析方法。在这项研究中,我们使用频谱和统计分析将癫痫发作期间的脑电图记录划分为连续的阶段,并且还重建了反映脑电图电压时间序列动态(确定性)特性的离散时间模型(图)。方法:研究了颅内人脑电图记录,其中包括来自医学上难治的颞叶癫痫的三个不同受试者的癫痫发作。应用统计(功率谱,小波谱和一维概率分布函数)和动态(动态模型比较)非平稳性分析的方法。结果:动态非平稳性分析显示癫痫发作内的内部结构比统计分析更为详细。癫痫发作通常会出现三个或四个动态不同的阶段。通过动力学分析,间质活动与癫痫发作之间的差异也更加明显。结论:非平稳性分析可以揭示癫痫发作中的时间结构,这可以进一步了解癫痫发作的演变过程。该方法也可用于鉴定癫痫发作。重要性:我们的方法揭示了有关癫痫发作时间结构的新信息,而使用常规方法无法获得这些信息。

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