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Measure Projection Analysis: A Probabilistic Approach to EEG Source Comparison and Multi-Subject Inference

机译:测量投影分析:EEG源比较和多主题推断的概率方法

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摘要

A crucial question for the analysis of multi-subject and/or multi-session electroencephalographic (EEG) data is how to combine information across multiple recordings from different subjects and/or sessions, each associated with its own set of source processes and scalp projections. Here we introduce a novel statistical method for characterizing the spatial consistency of EEG dynamics across a set of data records. Measure Projection Analysis (MPA) first finds voxels in a common template brain space at which a given dynamic measure is consistent across nearby source locations, then computes local-mean EEG measure values for this voxel subspace using a statistical model of source localization error and between-subject anatomical variation. Finally, clustering the mean measure voxel values in this locally consistent brain subspace finds brain spatial domains exhibiting distinguishable measure features and provides 3-D maps plus statistical significance estimates for each EEG measure of interest. Applied to sufficient high-quality data, the scalp projections of many maximally independent component (IC) processes contributing to recorded high-density EEG data closely match the projection of a single equivalent dipole located in or near brain cortex. We demonstrate the application of MPA to a multi-subject EEG study decomposed using independent component analysis (ICA), compare the results to k-means IC clustering in EEGLAB (sccn.ucsd.edu/eeglab), and use surrogate data to test MPA robustness. A Measure Projection Toolbox (MPT) plug-in for EEGLAB is available for download (sccn.ucsd.edu/wiki/MPT). Together, MPA and ICA allow use of EEG as a 3-D cortical imaging modality with near-cm scale spatial resolution.
机译:分析多主体和/或多阶段脑电图(EEG)数据的关键问题是如何组合来自不同主题和/或会话的多个记录中的信息,每个记录都与自己的源过程和头皮预测集相关联。在这里,我们介绍了一种新颖的统计方法,用于表征一组数据记录中脑电动力学的空间一致性。度量投影分析(MPA)首先在公共模板脑空间中找到体素,在该模板脑空间中,给定的动态度量在附近的源位置之间是一致的,然后使用源定位误差的统计模型计算该体素子空间的局部平均EEG度量值。 -受试者的解剖变异。最后,在该局部一致的脑子空间中对平均测量体素值进行聚类,可以找到表现出可区分的测量特征的脑空间域,并提供3-D图以及每个感兴趣的EEG测量的统计显着性估计。应用于足够高质量的数据后,许多最大独立成分(IC)过程的头皮投影有助于记录的高密度EEG数据,非常接近位于大脑皮层或附近大脑皮层的单个等效偶极子的投影。我们展示了MPA在使用独立成分分析(ICA)分解的多主题脑电图研究中的应用,将结果与EEGLAB(sccn.ucsd.edu/eeglab)中的k-均值IC聚类进行了比较,并使用替代数据测试了MPA健壮性。可下载用于EEGLAB的测量投影工具箱(MPT)插件(sccn.ucsd.edu/wiki/MPT)。 MPA和ICA一起允许将EEG用作具有近厘米尺度空间分辨率的3-D皮质成像模式。

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