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Correlated coupled matrix tensor factorization method for simultaneous EEG-fMRI data fusion

机译:同时EEG-FMRI数据融合的相关耦合矩阵张量分解方法

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摘要

Objective: Fusion of EEG and fMRI data provides complementary information about the brain functions. Thus, data fusion should employ all dimensions of data to both extract the shared information, and distinguish the dissimilarities of modalities.Method: In this paper, we present a new method based on Advanced Coupled Matrix Tensor Factorization (ACMTF) method to decompose the EEG tensor and fMRI matrix. We remove the confining assumption of identical shared components in ACMTF and propose an approach to maximize the correlation between the shared components of EEG and fMRI in the common mode, while removing the smearing effect of hemodynamic response function on fMRI data. This method is called Correlated Coupled Matrix Tensor Factorization (CCMTF).Results: Two simulation scenarios with different noise levels are performed to evaluate the performance of the proposed CCMTF method. The simulation results show 30.1% and 23.38% average improvement of Match Scores over ACMTF and N-way Partial Least Square (N-PLS) methods, respectively. The proposed method is also applied to a real dataset of an auditory oddball paradigm. The results of real data analysis show that the proposed CCMTF method estimates the unknown number of shared components between EEG and fMRI data, with p-value less than 0.007.Conclusion and Significance: In addition to the improvement of match score, the simulation results demonstrate that CCMTF has higher performance than ACMTF for fusion of EEG and fMRI datasets in case of extracting the dissimilarities in modalities, and it provides more convenient interpretation of the results, in comparison to N-PLS method. (C) 2020 Elsevier Ltd. All rights reserved.
机译:目的:eEG和FMRI数据的融合提供有关大脑功能的互补信息。因此,数据融合应该采用所有数据的所有维度到提取共享信息,并区分模态的异化。方法:在本文中,我们提出了一种基于高级耦合矩阵张量分解(ACMTF)方法的新方法来分解EEG张量和FMRI矩阵。我们在ACMTF中删除了相同共享组件的限制假设,并提出了一种方法来最大化eEG和FMRI的共享组件之间的相关性,同时去除血液动力响应函数对FMRI数据的涂抹效果。该方法称为相关耦合矩阵张量因子(CCMTF)。结果:执行具有不同噪声水平的两个模拟场景,以评估所提出的CCMTF方法的性能。仿真结果分别显示了ACMTF和N-WALE最小二乘(N-PLS)方法的30.1%和23.38%的平均改善。所提出的方法也应用于听觉奇怪范式的真实数据集。实数据分析结果表明,所提出的CCMTF方法估计脑电图和FMRI数据之间的共享组件数量未知数量,P值小于0.007.结论和意义:除了提高匹配分数,仿真结果表明CCMTF在提取模态中的异化和FMRI数据集的情况下,CCMTF具有比ACMTF更高的性能,并且与N-PLS方法相比,它提供更方便的结果的解释。 (c)2020 elestvier有限公司保留所有权利。

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