Topographical segmentation: A new tool to optimally define temporal region-of-interests of significant difference in ERPs

Li Hu, Jiasi Shen, Zhiguo Zhang
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Abstract

The statistical identification of temporal region-of-interests (ROIs) of the significant difference in event-related potentials (ERPs) was popularly achieved using the cluster-based approach, in which the clustering was achieved based on the temporal adjacency of statistical significance if data from single-electrode were tested, or based on the spatial and temporal adjacency of statistical significance if data from multi-electrodes were tested. However, this cluster-based approach would be problematic if the significant differences were strong and sustained in time, but varied greatly in space. In other words, neural generators, which contributed to the detected significant differences, changed markedly within the explored temporal-cluster. To solve this problem, we implemented a statistical approach based on topographical segmentation analysis, which did not only make use of the temporal adjacency of significance, but also utilized the scalp distribution of statistical difference. We applied this technique to assess the significant difference of SEPs between deviant and standard conditions, and we observed that temporal ROIs, captured distinct spatial distributions of statistical difference, could be correctly identified using the topographical segmentation analysis be means of quasi-stable scalp distribution.
地形分割:一个新的工具,以最佳地定义在erp显著差异的时间利益区域
事件相关电位(ERPs)显著性差异的时间兴趣区域(roi)的统计识别通常采用基于聚类的方法来实现,其中单电极数据的聚类是基于统计显著性的时间邻接性,多电极数据的聚类是基于统计显著性的时空邻接性。但是,如果显著差异在时间上很强且持续,但在空间上差异很大,那么这种基于集群的方法就会出现问题。换句话说,在探索的时间簇中,导致检测到显著差异的神经发生器发生了显著变化。为了解决这一问题,我们实现了一种基于地形分割分析的统计方法,该方法既利用了显著性的时间邻接性,又利用了统计差异的头皮分布。我们将该技术应用于评估异常条件和标准条件下sep的显著性差异,并观察到,利用准稳定头皮分布的地形分割分析方法可以正确识别捕获不同空间分布的统计差异的时间roi。
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