Jing H, Takigawa M
Department of Neuropsychiatry, Faculty of Medicine, Kagoshima University, Sakuragaoka, Kagoshima City, Japan.
Biol Cybern. 2000 Nov;83(5):391-7. doi: 10.1007/s004220000183.
Nonlinear dynamic properties were analyzed on the EEG and filtered rhythms recorded from healthy subjects and epileptic patients with complex partial seizures. Estimates of correlation dimensions of control EEG, interictal EEG and ictal EEG were calculated. The values were demonstrated on topograms. The delta (0.5-4 Hz), theta (4-8 Hz), alpha (8-13 Hz), beta (13-30 Hz) and gamma (30-40 Hz) components were obtained and considered as signals from the cortex. Corresponding surrogate data was produced. Firstly, the influence of sampling parameters on the calculation was tested. The dimension estimates of the signals from the frontal, temporal, parietal and occipital regions were computed and compared with the results of surrogate data. In the control subjects, the estimates between the EEG and surrogate data did not differ (P > 0.05). The interictal EEG from the frontal region and occipital region, as well as its theta component from the frontal region, and temporal region, showed obviously low dimensions (P < 0.01). The ictal EEG exhibited significantly low-dimension estimates across the scalp. All filtered rhythms from the temporal region yielded lower results than those of the surrogate data (P < 0.01). The dimension estimates of the EEG and filtered components markedly changed when the neurological state varied. For each neurological state, the dimension estimates were not uniform among the EEG and frequency components. The signal with a different frequency range and in a different neurological state showed a different dimension estimate. Furthermore, the theta and alpha components demonstrated the same estimates not only within each neurological state, but also among the different states. These results indicate that the theta and alpha components may be caused by similar dynamic processes. We conclude that the brain function underlying the ictal EEG has a simple mechanism. Several heterogeneous dynamic systems play important roles in the generation of EEG.
对健康受试者以及患有复杂部分性发作的癫痫患者记录的脑电图(EEG)和滤波节律进行了非线性动力学特性分析。计算了对照EEG、发作间期EEG和发作期EEG的关联维数估计值。这些值在地形图上显示。获得了δ(0.5 - 4Hz)、θ(4 - 8Hz)、α(8 - 13Hz)、β(13 - 30Hz)和γ(30 - 40Hz)成分,并将其视为来自皮层的信号。生成了相应的替代数据。首先,测试了采样参数对计算的影响。计算了来自额叶、颞叶、顶叶和枕叶区域信号的维数估计值,并与替代数据的结果进行比较。在对照受试者中,EEG与替代数据之间的估计值没有差异(P > 0.05)。额叶和枕叶区域的发作间期EEG,以及额叶和颞叶区域的θ成分,显示出明显较低的维数(P < 0.01)。发作期EEG在整个头皮上表现出明显较低的维数估计值。来自颞叶区域的所有滤波节律产生的结果均低于替代数据(P < 0.01)。当神经状态改变时,EEG和滤波成分的维数估计值明显变化。对于每种神经状态,EEG和频率成分之间的维数估计值并不一致。不同频率范围和不同神经状态下的信号显示出不同的维数估计值。此外,θ和α成分不仅在每种神经状态内,而且在不同状态之间都表现出相同的估计值。这些结果表明,θ和α成分可能由相似的动力学过程引起。我们得出结论,发作期EEG背后的脑功能具有简单机制。几个异质动力学系统在EEG的产生中起重要作用。