Trujillo Logan T
Department of Psychology, Texas State University; San Marcos, TX 78666, USA.
Entropy (Basel). 2019 Jan 13;21(1):61. doi: 10.3390/e21010061.
Information-theoretic measures for quantifying multivariate statistical dependence have proven useful for the study of the unity and diversity of the human brain. Two such measures-integration, , and interaction complexity, -have been previously applied to electroencephalographic (EEG) signals recorded during ongoing wakeful brain states. Here, and were computed for empirical and simulated visually-elicited alpha-range (8-13 Hz) EEG signals. Integration and complexity of evoked (stimulus-locked) and induced (non-stimulus-locked) EEG responses were assessed using nonparametric nearest neighbor (KNN) entropy estimation, which is robust to the nonstationarity of stimulus-elicited EEG signals. KNN-based and were also computed for the alpha-range EEG of ongoing wakeful brain states. and patterns differentiated between induced and evoked EEG signals and replicated previous wakeful EEG findings obtained using Gaussian-based entropy estimators. Absolute levels of and were related to absolute levels of alpha-range EEG power and phase synchronization, but stimulus-related changes in the information-theoretic and other EEG properties were independent. These findings support the hypothesis that visual perception and ongoing wakeful mental states emerge from complex, dynamical interaction among segregated and integrated brain networks operating near an optimal balance between order and disorder.
信息论方法用于量化多元统计相关性,已被证明在研究人类大脑的统一性和多样性方面很有用。两种这样的方法——整合度( )和交互复杂性( ),此前已应用于清醒大脑状态下记录的脑电图(EEG)信号。在此,针对经验性和模拟的视觉诱发阿尔法波段(8 - 13赫兹)EEG信号计算了 和 。使用非参数 最近邻(KNN)熵估计来评估诱发(刺激锁定)和诱导(非刺激锁定)EEG反应的整合度和复杂性,该方法对刺激诱发的EEG信号的非平稳性具有鲁棒性。基于KNN的 和 也针对清醒大脑状态下的阿尔法波段EEG进行了计算。 和 模式区分了诱导和诱发的EEG信号,并重现了先前使用基于高斯的熵估计器获得的清醒EEG研究结果。 和 的绝对水平与阿尔法波段EEG功率和相位同步的绝对水平相关,但信息论及其他EEG特性中与刺激相关的变化是独立的。这些发现支持了这样一种假设,即视觉感知和持续的清醒心理状态源自分离和整合的脑网络之间复杂的动态相互作用,这些脑网络在有序和无序之间的最佳平衡附近运作。