Andrzejak R G, Lehnertz K, Mormann F, Rieke C, David P, Elger C E
Department of Epileptology, University of Bonn, Sigmund-Freud-Strasse 25, 53105 Bonn, Germany.
Phys Rev E Stat Nonlin Soft Matter Phys. 2001 Dec;64(6 Pt 1):061907. doi: 10.1103/PhysRevE.64.061907. Epub 2001 Nov 20.
We compare dynamical properties of brain electrical activity from different recording regions and from different physiological and pathological brain states. Using the nonlinear prediction error and an estimate of an effective correlation dimension in combination with the method of iterative amplitude adjusted surrogate data, we analyze sets of electroencephalographic (EEG) time series: surface EEG recordings from healthy volunteers with eyes closed and eyes open, and intracranial EEG recordings from epilepsy patients during the seizure free interval from within and from outside the seizure generating area as well as intracranial EEG recordings of epileptic seizures. As a preanalysis step an inclusion criterion of weak stationarity was applied. Surface EEG recordings with eyes open were compatible with the surrogates' null hypothesis of a Gaussian linear stochastic process. Strongest indications of nonlinear deterministic dynamics were found for seizure activity. Results of the other sets were found to be inbetween these two extremes.
我们比较了来自不同记录区域以及不同生理和病理脑状态下的脑电活动的动力学特性。使用非线性预测误差和有效关联维数估计,并结合迭代幅度调整替代数据方法,我们分析了脑电图(EEG)时间序列集:闭眼和睁眼健康志愿者的头皮EEG记录,癫痫患者在发作间期来自发作产生区域内外的颅内EEG记录以及癫痫发作的颅内EEG记录。作为预分析步骤,应用了弱平稳性的纳入标准。睁眼头皮EEG记录符合高斯线性随机过程替代数据的零假设。癫痫发作活动呈现出最强的非线性确定性动力学迹象。其他数据集的结果介于这两个极端之间。