Fell J, Röschke J, Beckmann P
Psychiatrische Klinik, University of Mainz, Germany.
Biol Cybern. 1993;69(2):139-46. doi: 10.1007/BF00226197.
Under selected conditions, nonlinear dynamical systems, which can be described by deterministic models, are able to generate so-called deterministic chaos. In this case the dynamics show a sensitive dependence on initial conditions, which means that different states of a system, being arbitrarily close initially, will become macroscopically separated for sufficiently long times. In this sense, the unpredictability of the EEG might be a basic phenomenon of its chaotic character. Recent investigations of the dimensionality of EEG attractors in phase space have led to the assumption that the EEG can be regarded as a deterministic process which should not be mistaken for simple noise. The calculation of dimensionality estimates the degrees of freedom of a signal. Nevertheless, it is difficult to decide from this kind of analysis whether a process is quasiperiodic or chaotic. Therefore, we performed a new analysis by calculating the first positive Lyapunov exponent L1 from sleep EEG data. Lyapunov exponents measure the mean exponential expansion or contraction of a flow in phase space. L1 is zero for periodic as well as quasiperiodic processes, but positive in the case of chaotic processes expressing the sensitive dependence on initial conditions. We calculated L1 for sleep EEG segments of 15 healthy men corresponding to the sleep stages I, II, III, IV, and REM (according to Rechtschaffen and Kales). Our investigations support the assumption that EEG signals are neither quasiperiodic waves nor a simple noise. Moreover, we found statistically significant differences between the values of L1 for different sleep stages.(ABSTRACT TRUNCATED AT 250 WORDS)
在特定条件下,可用确定性模型描述的非线性动力系统能够产生所谓的确定性混沌。在这种情况下,动力学表现出对初始条件的敏感依赖性,这意味着一个系统最初任意接近的不同状态,在足够长的时间后会在宏观上分离。从这个意义上说,脑电图(EEG)的不可预测性可能是其混沌特性的一个基本现象。最近对相空间中EEG吸引子维度的研究导致这样一种假设,即EEG可被视为一个确定性过程,不应将其误认为简单噪声。维度计算估计信号的自由度。然而,很难从这类分析中判断一个过程是准周期性的还是混沌的。因此,我们通过计算15名健康男性睡眠EEG数据的第一个正李雅普诺夫指数L1进行了一项新的分析。李雅普诺夫指数测量相空间中流的平均指数膨胀或收缩。对于周期性和准周期性过程,L1为零,但在混沌过程中为正,这表明对初始条件的敏感依赖性。我们计算了对应于睡眠阶段I、II、III、IV和快速眼动(根据 Rechtschaffen和Kales)的15名健康男性睡眠EEG片段的L1。我们的研究支持EEG信号既不是准周期波也不是简单噪声的假设。此外,我们发现不同睡眠阶段的L1值之间存在统计学上的显著差异。(摘要截短为250字)