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Localization of Active Brain Sources From EEG Signals Using Empirical Mode Decomposition: A Comparative Study

机译:使用经验模式分解从EEG信号中定位主动脑源的比较研究

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摘要

The localization of active brain sources from Electroencephalogram (EEG) is a useful method in clinical applications, such as the study of localized epilepsy, evoked-related-potentials, and attention deficit/hyperactivity disorder. The distributed-source model is a common method to estimate neural activity in the brain. The location and amplitude of each active source are estimated by solving the inverse problem by regularization or using Bayesian methods with spatio-temporal constraints. Frequency and spatio-temporal constraints improve the quality of the reconstructed neural activity. However, separation into frequency bands is beneficial when the relevant information is in specific sub-bands. We improved frequency-band identification and preserved good temporal resolution using EEG pre-processing techniques with good frequency band separation and temporal resolution properties. The identified frequency bands were included as constraints in the solution of the inverse problem by decomposing the EEG signals into frequency bands through various methods that offer good frequency and temporal resolution, such as empirical mode decomposition (EMD) and wavelet transform (WT). We present a comparative analysis of the accuracy of brain-source reconstruction using these techniques. The accuracy of the spatial reconstruction was assessed using the Wasserstein metric for real and simulated signals. We approached the mode-mixing problem, inherent to EMD, by exploring three variants of EMD: masking EMD, Ensemble-EMD (EEMD), and multivariate EMD (MEMD). The results of the spatio-temporal brain source reconstruction using these techniques show that masking EMD and MEMD can largely mitigate the mode-mixing problem and achieve a good spatio-temporal reconstruction of the active sources. Masking EMD and EEMD achieved better reconstruction than standard EMD, Multiple Sparse Priors, or wavelet packet decomposition when EMD was used as a pre-processing tool for the spatial reconstruction (averaged over time) of the brain sources. The spatial resolution obtained using all three EMD variants was substantially better than the use of EMD alone, as the mode-mixing problem was mitigated, particularly with masking EMD and EEMD. These findings encourage further exploration into the use of EMD-based pre-processing, the mode-mixing problem, and its impact on the accuracy of brain source activity reconstruction.
机译:脑电图(EEG)对活动脑源的定位在临床应用中是一种有用的方法,例如对局部性癫痫,诱发相关电位和注意力不足/多动障碍的研究。分布式源模型是估计大脑神经活动的常用方法。通过使用正则化解决反问题或使用具有时空约束的贝叶斯方法,可以估算每个有源源的位置和幅度。频率和时空约束提高了重建神经活动的质量。然而,当相关信息在特定子带中时,分成频带是有益的。我们使用具有良好频带分离和时间分辨率特性的EEG预处理技术,改进了频带识别并保留了良好的时间分辨率。通过使用多种提供良好的频率和时间分辨率的方法将EEG信号分解为频带,可以将识别出的频带作为约束条件解决反问题,例如经验模式分解(EMD)和小波变换(WT)。我们提出了使用这些技术的脑源重建准确性的比较分析。使用Wasserstein度量评估真实和模拟信号的空间重构精度。我们通过研究EMD的三个变体来解决EMD固有的模式混合问题:掩盖EMD,集成EMD(EEMD)和多元EMD(MEMD)。使用这些技术进行时空脑源重建的结果表明,掩盖EMD和MEMD可以大大减轻模式混合问题,并实现有源源的良好时空重建。当将EMD用作脑源空间重构(按时间平均)的预处理工具时,与标准EMD,多重稀疏先验或小波包分解相比,掩盖EMD和EEMD可以实现更好的重构。使用所有三种EMD变体获得的空间分辨率都比单独使用EMD更好,因为可以减轻模式混合问题,尤其是在掩盖EMD和EEMD的情况下。这些发现鼓励进一步探索基于EMD的预处理方法的使用,模式混合问题及其对脑源活动重建准确性的影响。

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