Li Xiaoli, Cui Dong, Jiruska Premysl, Fox John E, Yao Xin, Jefferys John G R
The Centre of Excellence for Research in Computational Intelligence and Applications, School of Computer Science, The University of Birmingham, Birmingham, UK.
J Neurophysiol. 2007 Dec;98(6):3341-8. doi: 10.1152/jn.00977.2007. Epub 2007 Oct 3.
The purpose of the present paper is to develop a method, based on equal-time correlation, correlation matrix analysis and surrogate resampling, that is able to quantify and describe properties of synchronization of population neuronal activity recorded simultaneously from multiple sites. Initially, Lorenz-type oscillators were used to model multiple time series with different patterns of synchronization. Eigenvalue and eigenvector decomposition was then applied to identify "clusters" of locally synchronized activity and to calculate a "global synchronization index." This method was then applied to multichannel data recorded from an in vitro model of epileptic seizures. The results demonstrate that this novel method can be successfully used to analyze synchronization between multiple neuronal population series.
本文的目的是开发一种基于等时相关性、相关矩阵分析和替代重采样的方法,该方法能够量化和描述从多个部位同时记录的群体神经元活动的同步特性。最初,使用洛伦兹型振荡器对具有不同同步模式的多个时间序列进行建模。然后应用特征值和特征向量分解来识别局部同步活动的“簇”并计算“全局同步指数”。接着将该方法应用于从癫痫发作体外模型记录的多通道数据。结果表明,这种新方法可成功用于分析多个神经元群体序列之间的同步。