Department of Electrical and Computer Engineering, Michigan State University, East Lansing, Michigan 48824, USA.
Hum Brain Mapp. 2011 Jan;32(1):80-93. doi: 10.1002/hbm.21000.
The temporal coordination of neural activity within structural networks of the brain has been posited as a basis for cognition. Changes in the frequency and similarity of oscillating electrical potentials emitted by neuronal populations may reflect the means by which networks of the brain carry out functions critical for adaptive behavior. A computation of the phase relationship between signals recorded from separable brain regions is a method for characterizing the temporal interactions of neuronal populations. Recently, different phase estimation methods for quantifying the time-varying and frequency-dependent nature of neural synchronization have been proposed. The most common method for measuring the synchronization of signals through phase computations uses complex wavelet transforms of neural signals to estimate their instantaneous phase difference and locking. In this article, we extend this idea by introducing a new time-varying phase synchrony measure based on Cohen's class of time-frequency distributions. This index offers improvements over existing synchrony measures by characterizing the similarity of signals from separable brain regions with uniformly high resolution across time and frequency. The proposed measure is applied to both synthesized signals and electroencephalography data to test its effectiveness in estimating phase changes and quantifying neural synchrony in the brain.
大脑结构网络中神经活动的时间协调被认为是认知的基础。神经元群体发出的振荡电势能的频率和相似性的变化可能反映了大脑网络执行对适应行为至关重要的功能的方式。对从可分离脑区记录的信号之间的相位关系进行计算是一种描述神经元群体时间相互作用的方法。最近,已经提出了用于量化神经同步的时变和频率依赖性性质的不同相位估计方法。通过相位计算测量信号同步的最常用方法是使用神经信号的复小波变换来估计它们的瞬时相位差和锁定。在本文中,我们通过引入基于 Cohen 类时频分布的新的时变相位同步度量来扩展这个想法。该指数通过在时间和频率上具有均匀高分辨率来表征来自可分离脑区的信号的相似性,从而提供了对现有同步度量的改进。该度量应用于合成信号和脑电图数据,以测试其在估计相位变化和量化大脑中神经同步方面的有效性。