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M/EEG imaging by learning mean norms in brain tiles

机译:M / EEG成像通过学习脑部瓷砖的均值

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摘要

We present a new approach to the M/EEG inverse problem, formulated in the framework of probabilistic modeling. Given a tiling of the brain into separate regions, we define a model parametrized by the mean source power, or norm, in different regions, as well as the mean noise power. A fast algorithm learns optimal values of these region-specific norms from data, leading to higher-resolution images compared to minimum-norm methods that minimize the total norm of the solution. It also learns the noise power, facilitating automatic regularization. The algorithm produces robust reconstructions of current distributions across time, which are shown to be quite accurate.
机译:我们在概率建模框架中提出了一种新的M / EEG逆问题的方法。给予大脑的平铺分为单独的区域,我们将平均源功率功率或规范在不同区域中的型号以及平均噪声功率定义了模型。快速算法从数据中了解了从数据的这些特定于区域的最佳值,导致更高分辨率的图像,与最小值的最小规范方法,以最小化解决方案的总规范。它还学习噪声功率,促进自动正则化。该算法在时间上产生电流分布的强大重建,显示出相当准确。

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