Koles Z J, Lazar M S, Zhou S Z
Department of Applied Sciences in Medicine, University of Alberta, Edmonton, Canada.
Brain Topogr. 1990 Summer;2(4):275-84. doi: 10.1007/BF01129656.
A method is described which can be used to extract common spatial patterns underlying the EEGs from two human populations. These spatial patterns account, in the least-squares sense, maximally for the variance in the EEGs from one population and minimally for the variance in the other population and therefore would seem to be optimal for quantitatively discriminating between the individual EEGs in the two populations. By using this method, it is suggested that the problems associated with the more common approach to discriminating EEGs, significance probability mapping, can be avoided. The method is tested using EEGs from a population of normal subjects and using the EEGs from a population of patients with neurologic disorders. The results in most cases are excellent and the misclassification which occurs in some cases is attributed to the nonhomogeneity of the patient population particularly. The advantages of the method for feature selection, for automatically classifying the clinical EEG, and with respect to the reference-free nature of the selected features are discussed.
本文描述了一种方法,可用于从两个人群的脑电图中提取潜在的共同空间模式。这些空间模式在最小二乘意义上,最大程度地解释了一个人群脑电图的方差,而最小程度地解释了另一人群脑电图的方差,因此似乎是用于定量区分两个人群个体脑电图的最佳方法。通过使用这种方法,有人认为可以避免与更常见的脑电图区分方法(显著性概率映射)相关的问题。该方法通过使用正常受试者人群的脑电图以及患有神经系统疾病患者人群的脑电图进行测试。大多数情况下结果都非常好,某些情况下出现的错误分类尤其归因于患者人群的非均质性。讨论了该方法在特征选择、自动分类临床脑电图以及所选特征无参考性质方面的优势。