Joint MEG-EEG signal decomposition using the coupled SECSI framework: Validation on a controlled experiment

Kristina Naskovska, S. Lau, Amr Aboughazala, M. Haardt, J. Haueisen
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引用次数: 6

Abstract

Simultaneously recorded magnetoencephalography (MEG) and electroencephalography (EEG) signals can benefit from a joint analysis based on coupled Canonical Polyadic (CP) tensor decompositions. The coupled CP decomposition jointly decomposes tensors that have at least one factor matrix in common. The Coupled — Semi-Algebraic framework for approximate CP decomposition via SImultaneous matrix diagonalization framework (C-SECSI) efficiently estimates the factor matrices with adjustable complexity-accuracy trade-offs. Our objective is to decompose simultaneously recorded MEG and EEG signals above intact skull and above two conducting skull defects using C-SECSI in order to determine how such a tissue anomaly of the head is reflected in the tensor rank. The source of the MEG and EEG signals is a miniaturized electric dipole that is implanted into a rabbit's brain. The dipole is shifted along a line under the skull defects, and measurements are taken at regularly spaced points. The coupled SECSI analysis is conducted for MEG and EEG measurement series and ranks 1–3. This coupled decomposition produces meaningful components representing the three characteristic signal topographies for source positions under defect 1 and the positions on either side of defect 1. The rank estimation with respect to the complexity-accuracy trade-off of rank 3 reflects the three characteristic cases well and matches the dimensions spanned by the data set. The intact skull MEG signals show a higher complexity (rank 3) than the corresponding EEG signals (rank 1). The C-SECSI framework is a very promising method for blind signal separation in multidimensional data with coupled modalities, such as simultaneous MEG-EEG.
基于耦合SECSI框架的脑电-脑电信号联合分解:对照实验验证
同时记录的脑磁图(MEG)和脑电图(EEG)信号可以受益于基于耦合正则多进(CP)张量分解的联合分析。耦合CP分解联合分解至少有一个共同因子矩阵的张量。基于同步矩阵对角化框架(C-SECSI)的近似CP分解的耦合半代数框架有效地估计了具有可调复杂性和精度权衡的因子矩阵。我们的目标是使用C-SECSI对完整颅骨和两个导电颅骨缺损上方同时记录的MEG和EEG信号进行分解,以确定头部的这种组织异常是如何在张量秩中反映出来的。MEG和EEG信号的来源是一个微型的电偶极子,它被植入兔子的大脑。偶极子沿着颅骨缺陷下的一条线移动,并在规则间隔的点上进行测量。对MEG和EEG测量序列进行耦合SECSI分析,排名1-3。这种耦合分解产生有意义的分量,表示缺陷1下的源位置和缺陷1两侧的位置的三个特征信号拓扑。秩估计对秩3的复杂度-精度权衡很好地反映了这三种特征情况,并且与数据集所跨越的维度相匹配。完整颅骨MEG信号的复杂度(rank 3)高于相应的EEG信号(rank 1)。C-SECSI框架是一种非常有前途的方法,用于同时进行MEG-EEG等耦合模式的多维数据的盲信号分离。
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