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Unmixing EEG Inverse Solutions Based on Brain Segmentation

机译:基于脑分割的混合脑电逆解

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摘要

Due to its low resolution, any EEG inverse solution provides a source estimate at each voxel that is a mixture of the true source values over all the voxels of the brain. This mixing effect usually causes notable distortion in estimates of source connectivity based on inverse solutions. To lessen this shortcoming, an unmixing approach is introduced for EEG inverse solutions based on piecewise approximation of the unknown source by means of a brain segmentation formed by specified Regions of Interests (ROIs). The approach is general and flexible enough to be applied to any inverse solution with any specified family of ROIs, including point, surface and 3D brain regions. Two of its variants are elaborated in detail: arbitrary piecewise constant sources over arbitrary regions and sources with piecewise constant intensity of known direction over cortex surface regions. Numerically, the approach requires just solving a system of linear equations. Bounds for the error of unmixed estimates are also given. Furthermore, insights on the advantages and of variants of this approach for connectivity analysis are discussed through a variety of designed simulated examples.
机译:由于分辨率低,任何EEG逆解都可以在每个体素处提供源估计,该估计是大脑所有体素上真实源值的混合。这种混合效应通常会在基于逆解的源连接估计中引起明显的失真。为了减轻这一缺点,针对未知脑源的分段近似,通过由指定的兴趣区域(ROI)形成的脑部分割,为脑电逆解决方案引入了一种混合方法。该方法具有通用性和灵活性,可以应用于具有指定ROI系列的任何逆解,包括点,表面和3D脑区域。详细说明了其两个变体:任意区域上的任意分段恒定源和皮质表面区域上具有已知方向的分段恒定强度的源。从数值上讲,该方法只需要求解线性方程组。还给出了混合估计误差的界线。此外,还将通过各种设计的模拟示例来讨论对这种方法进行连接分析的优点和变体的见解。

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