Freeman Walter J
Department of Molecular and Cell Biology, University of California at Berkeley, Donner 101, MC 3206, Berkeley, CA 94720-3206, USA.
Clin Neurophysiol. 2006 Mar;117(3):572-89. doi: 10.1016/j.clinph.2005.10.025. Epub 2006 Jan 25.
To develop a method for simulating background EEG based on the premise that the self-organized activity from synaptic interaction among populations of neurons creates sustained fluctuations that can be modeled with the filtered output of a random number generator.
The logarithm of the amplitude of activity was weighted in accordance with 1/f, the log frequency in both temporal (PSD(T)) and spatial (PSD(X)) power spectral densities. The activity was spatially smoothed by volume conduction. Further deviation from full randomness was by sustained spatial coherence averaging 25% of total power. The departure from the background state to an active state, as seen in the awake EEG, was simulated by adding segments that were 90% correlated while attenuating by 50% the uncorrelated background activity in those segments. Spatial amplitude modulation was imposed on the correlated noise to create signals that simulated AM patterns.
The statistical properties of the EEG that were replicated (Freeman, 2004a,b, 2005) included the PSD(T), PSD(X), point spread function (PSF), partitioning of the variance with PCA, and the percentages of correct classification of AM patterns.
The origin of background EEG was traced to self-sustaining mutual excitation among pyramidal cells creating stable noise that was filtered by self-organized criticality to give 1/f(2) PSD, by inhibitory feedback to give oscillations in the classic clinical bands, and by volume conduction to give smoothing. The essential change that identified a frame in EEG was transient synchrony by phase transition among cortical populations in beta and gamma bands of the PSD(T).
This simulation can provide test data with which to optimize techniques for noninvasively extracting information from the EEG for diagnosis and treatment evaluation of neuropsychiatric disorders and for operation by paraplegics of prosthetic devices.
基于神经元群体间突触相互作用产生的自组织活动会产生持续波动这一前提,开发一种模拟背景脑电图(EEG)的方法,该波动可用随机数发生器的滤波输出进行建模。
活动幅度的对数根据1/f加权,1/f为时间(PSD(T))和空间(PSD(X))功率谱密度中的对数频率。通过体积传导对活动进行空间平滑处理。进一步偏离完全随机性的方式是对占总功率25%的持续空间相干性进行平均。通过添加相关性为90%的片段,同时将这些片段中不相关的背景活动衰减50%,来模拟从背景状态到清醒EEG中所见的活跃状态的转变。对相关噪声施加空间幅度调制,以创建模拟调幅(AM)模式的信号。
复制的EEG统计特性(Freeman,2004a、b,2005)包括PSD(T)、PSD(X)、点扩散函数(PSF)、主成分分析(PCA)的方差划分以及AM模式的正确分类百分比。
背景EEG的起源可追溯到锥体细胞之间的自我维持相互激发,产生稳定噪声,该噪声通过自组织临界性进行滤波以给出1/f(2)功率谱密度,通过抑制性反馈产生经典临床波段的振荡,并通过体积传导实现平滑。在EEG中识别一个帧的本质变化是PSD(T)的β和γ波段中皮质群体之间通过相变产生的瞬态同步。
该模拟可为优化从EEG无创提取信息的技术提供测试数据,用于神经精神疾病的诊断和治疗评估以及截瘫患者操作假肢装置。