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Non-linear analysis of EEG signals at various sleep stages.

机译:脑电信号在不同睡眠阶段的非线性分析。

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摘要

Application of non-linear dynamics methods to the physiological sciences demonstrated that non-linear models are useful for understanding complex physiological phenomena such as abrupt transitions and chaotic behavior. Sleep stages and sustained fluctuations of autonomic functions such as temperature, blood pressure, electroencephalogram (EEG), etc., can be described as a chaotic process. The EEG signals are highly subjective and the information about the various states may appear at random in the time scale. Therefore, EEG signal parameters, extracted and analyzed using computers, are highly useful in diagnostics. The sleep data analysis is carried out using non-linear parameters: correlation dimension, fractal dimension, largest Lyapunov entropy, approximate entropy, Hurst exponent, phase space plot and recurrence plots. These non-linear parameters quantify the cortical function at different sleep stages and the results are tabulated.
机译:非线性动力学方法在生理科学中的应用表明,非线性模型对于理解复杂的生理现象(例如突然转变和混沌行为)很有用。睡眠阶段和诸如温度,血压,脑电图(EEG)等自主功能的持续波动可以描述为一个混沌过程。 EEG信号具有很高的主观性,并且有关各种状态的信息可能会在时间范围内随机出现。因此,使用计算机提取和分析的EEG信号参数在诊断中非常有用。使用非线性参数进行睡眠数据分析:相关维,分形维,最大Lyapunov熵,近似熵,Hurst指数,相空间图和递归图。这些非线性参数量化了不同睡眠阶段的皮层功能,并将结果制成表格。

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