Pascual-Marqui R D, Michel C M, Lehmann D
Cuban Neuroscience Center, Havana.
IEEE Trans Biomed Eng. 1995 Jul;42(7):658-65. doi: 10.1109/10.391164.
A brain microstate is defined as a functional/physiological state of the brain during which specific neural computations are performed. It is characterized uniquely by a fixed spatial distribution of active neuronal generators with time varying intensity. Brain electrical activity is modeled as being composed of a time sequence of nonoverlapping microstates with variable duration. A precise mathematical formulation of the model for evoked potential recordings is presented, where the microstates are represented as normalized vectors constituted by scalp electric potentials due to the underlying generators. An algorithm is developed for estimating the microstates, based on a modified version of the classical k-means clustering method, in which cluster orientations are estimated. Consequently, each instantaneous multichannel evoked potential measurement is classified as belonging to some microstate, thus producing a natural segmentation of brain activity. Use is made of statistical image segmentation techniques for obtaining smooth continuous segments. Time varying intensities are estimated by projecting the measurements onto their corresponding microstates. A goodness of fit statistic for the model is presented. Finally, a method is introduced for estimating the number of microstates, based on nonparametric data-driven statistical resampling techniques.
脑微状态被定义为大脑在执行特定神经计算时的一种功能/生理状态。它的独特特征是具有随时间变化强度的活跃神经元发生器的固定空间分布。脑电活动被建模为由持续时间可变的非重叠微状态的时间序列组成。本文给出了诱发电位记录模型的精确数学公式,其中微状态表示为由潜在发生器产生的头皮电位构成的归一化向量。基于经典k均值聚类方法的改进版本开发了一种估计微状态的算法,在该算法中估计聚类方向。因此,每个瞬时多通道诱发电位测量值被分类为属于某个微状态,从而产生脑活动的自然分割。利用统计图像分割技术来获得平滑连续的片段。通过将测量值投影到其相应的微状态上来估计随时间变化的强度。给出了该模型的拟合优度统计量。最后,引入了一种基于非参数数据驱动统计重采样技术来估计微状态数量的方法。