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将自发脑电图图谱系列自适应分割为空间定义的微状态。

Adaptive segmentation of spontaneous EEG map series into spatially defined microstates.

作者信息

Wackermann J, Lehmann D, Michel C M, Strik W K

机构信息

Department of Neurology, University Hospital, Zürich, Switzerland.

出版信息

Int J Psychophysiol. 1993 May;14(3):269-83. doi: 10.1016/0167-8760(93)90041-m.

DOI:10.1016/0167-8760(93)90041-m
PMID:8340245
Abstract

Space-oriented segmentation can decompose multi-channel EEG map series into time segments characterized by quasi-stationary field map configurations. This assesses the dynamics of the underlying processes as activities of different neural generator ensembles. Our method of space-oriented segmentation describes the scalp field at times of maximal field strength (Global Field Power) by the locations of the centroids of positive and negative map areas. A quantitative measure of the simultaneous distance of the centroid locations evaluates the similarity between consecutive maps. A segment is defined as a sequence of maps that do not differ from each other by more than a present value. Finally, the average centroid locations for each segment are entered into an agglomerative clustering procedure to obtain a set of distinct classes of field configurations. Four records of 16 s of 42-channel resting EEG (band-pass filtered 2-16 Hz) from six subjects were analyzed. Average segment duration was 157.9 ms. Most segments belonged to a small number of classes (from 2 to 6, mean 3.7 classes for 90% of analysis time). The most frequent class showed an anterior-posterior field orientation and covered from 45 to 74% (mean 55% across subjects) of total time, with an average duration of 265 ms. The procedure was also tested using temporally and spatially unstructured data (white noise and randomly shuffled EEG) to ascertain that the methods reflect the spatio-temporal structure of the EEG processes.

摘要

面向空间的分割可以将多通道脑电图地图序列分解为以准静态场地图配置为特征的时间段。这将潜在过程的动态评估为不同神经发生器集合的活动。我们的面向空间的分割方法通过正负地图区域质心的位置来描述场强最大时(全局场功率)的头皮场。质心位置同时距离的定量测量评估连续地图之间的相似性。一个片段被定义为彼此差异不超过当前值的地图序列。最后,将每个片段的平均质心位置输入到凝聚聚类过程中,以获得一组不同的场配置类别。分析了来自六名受试者的42通道静息脑电图(带通滤波2 - 16 Hz)的4条16秒记录。平均片段持续时间为157.9毫秒。大多数片段属于少数几类(2至6类,90%的分析时间平均为3.7类)。最常见的类别显示出前后场方向,占总时间的45%至74%(受试者平均为55%),平均持续时间为265毫秒。该程序还使用时间和空间上无结构的数据(白噪声和随机打乱的脑电图)进行了测试,以确定这些方法反映了脑电图过程的时空结构。

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