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首页> 外文期刊>NeuroImage >Source-space ICA for EEG source separation, localization, and time-course reconstruction
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Source-space ICA for EEG source separation, localization, and time-course reconstruction

机译:用于脑电信号源分离,定位和时程重建的源空间ICA

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摘要

We propose source-space independent component analysis (ICA) for separation, tomography, and time-course reconstruction of EEG and MEG source signals. Source-space ICA is based on the application of singular value decomposition and ICA on the neuroelectrical signals from all brain voxels obtained post minimum-variance beamforming of sensor-space EEG or MEG. We describe the theoretical background and equations, then evaluate the performance of this technique in several different situations, including weak sources, bilateral correlated sources, multiple sources, and cluster sources. In this approach, tomographic maps of sources are obtained by back-projection of the ICA mixing coefficients into the source-space (3-D brain template). The advantages of source-space ICA over the popular alternative approaches of sensor-space ICA together with dipole fitting and power mapping via minimum-variance beamforming are demonstrated. Simulated EEG data were produced by forward head modeling to project the simulated sources onto scalp sensors, then superimposed on real EEG background. To illustrate the application of source-space ICA to real EEG source reconstruction, we show the localization and time-course reconstruction of visual evoked potentials. Source-space ICA is superior to the minimum-variance beamforming in the reconstruction of multiple weak and strong sources, as ICA allows weak sources to be identified and reconstructed in the presence of stronger sources. Source-space ICA is also superior to sensor-space ICA on accuracy of localization of sources, as source-space ICA applies ICA to the time-courses of voxels reconstructed from minimum-variance beamforming on a 3D scanning grid and these time-courses are optimally unmixed via the beamformer. Each component identified by source-space ICA has its own tomographic map which shows the extent to which each voxel has contributed to that component. (C) 2014 Elsevier Inc. All rights reserved.
机译:我们提出源空间独立分量分析(ICA),用于EEG和MEG源信号的分离,层析成像以及时程重建。源空间ICA基于奇异值分解和ICA对来自传感器空间EEG或MEG的最小方差波束形成后获得的所有脑素的神经电信号的应用。我们描述了理论背景和方程,然后评估了该技术在几种不同情况下的性能,包括弱信号源,双边相关信号源,多个信号源和群集信号源。在这种方法中,通过将ICA混合系数反投影到源空间(3-D脑模板)中,可以获得源的断层图。证明了源空间ICA相对于传感器空间ICA流行的替代方法的优势,以及偶极子拟合和通过最小方差波束形成的功率映射。通过前向头建模产生模拟的EEG数据,以将模拟的源投影到头皮传感器上,然后叠加在真实的EEG背景上。为了说明源空间ICA在实际EEG源重构中的应用,我们展示了视觉诱发电位的定位和时程重构。在多个弱和强源的重建中,源空间ICA优于最小方差波束成形,因为ICA允许在存在更强源的情况下识别和重建弱源。源空间ICA在源的定位精度上也优于传感器空间ICA,因为源空间ICA将ICA应用于从3D扫描网格上的最小方差波束形成重建的体素的时程,并且这些时程是通过波束形成器最佳地未混合。由源空间ICA标识的每个组件都有其自己的断层扫描图,该图显示了每个体素对该组件的贡献程度。 (C)2014 Elsevier Inc.保留所有权利。

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