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Self-Consistent MUSIC: An approach to the localization of true brain interactions from EEG/MEG data

机译:自洽音乐:一种从EEG / MEG数据定位真实大脑互动的方法

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摘要

MUltiple SIgnal Classification (MUSIC) is a standard localization method which is based on the idea of dividing the vector space of the data into two subspaces: signal subspace and noise subspace. The brain, divided into several grid points, is scanned entirely and the grid point with the maximum consistency with the signal subspace is considered as the source location. In one of the MUSIC variants called Recursively Applied and Projected MUSIC (RAP-MUSIC), multiple iterations are proposed in order to decrease the location estimation uncertainties introduced by subspace estimation errors. In this paper, we suggest a new method called Self-Consistent MUSIC (SC-MUSIC) which extends RAP-MUSIC to a self-consistent algorithm. This method, SC-MUSIC, is based on the idea that the presence of several sources has a bias on the localization of each source. This bias can be reduced by projecting out all other sources mutually rather than iteratively. While the new method is applicable in all situations when MUSIC is applicable we will study here the localization of interacting sources using the imaginary part of the cross-spectrum due to the robustness of this measure to the artifacts of volume conduction. For an odd number of sources this matrix is rank deficient similar to covariance matrices of fully correlated sources. In such cases MUSIC and RAP-MUSIC fail completely while the new method accurately localizes all sources. We present results of the method using simulations of odd and even number of interacting sources in the presence of different noise levels. We compare the method with three other source localization methods: RAP-MUSIC, dipole fit and MOCA (combined with minimum norm estimate) through simulations. SC-MUSIC shows substantial improvement in the localization accuracy compared to these methods. We also show results for real MEG data of a single subject in the resting state. Four sources are localized in the sensorimotor area at f = 11 Hz which is the expected region for the idle rhythm. (C) 2015 Elsevier Inc. All rights reserved.
机译:多信号分类(MUSIC)是一种标准的定位方法,其基于将数据的向量空间划分为两个子空间的思想:信号子空间和噪声子空间。大脑被分为几个网格点,将被完全扫描,并且与信号子空间具有最大一致性的网格点被视为源位置。在称为递归应用和投影MUSIC(RAP-MUSIC)的MUSIC变体之一中,提出了多次迭代,以减少子空间估计误差引入的位置估计不确定性。在本文中,我们提出了一种称为自洽音乐(SC-MUSIC)的新方法,该方法将RAP-MUSIC扩展为自洽算法。此方法SC-MUSIC基于以下想法:多个源的存在会偏向每个源的本地化。可以通过相互而非迭代地投影所有其他来源来减少这种偏差。尽管该新方法适用于MUSIC适用的所有情况,但由于此方法对体积传导伪像的鲁棒性,我们将在这里使用互谱的虚部研究相互作用源的定位。对于奇数个源,此矩阵的秩不足类似于完全相关源的协方差矩阵。在这种情况下,MUSIC和RAP-MUSIC完全失败,而新方法可以准确地定位所有源。我们介绍了在存在不同噪声水平的情况下使用奇数和偶数个交互源的仿真方法的结果。我们通过模拟比较了该方法与其他三种源定位方法:RAP-MUSIC,偶极拟合和MOCA(与最小范数估计值相结合)。与这些方法相比,SC-MUSIC显示出定位精度的显着提高。我们还显示了处于静止状态的单个受试者的真实MEG数据的结果。四个信号源位于f = 11 Hz的感觉运动区域,这是怠速节律的预期区域。 (C)2015 Elsevier Inc.保留所有权利。

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