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Empirical Mode Decomposition (EMD) - Based Spatiotemporal Approach for Single-Trial Extraction of Post-Movement MEG Beta Synchronization

机译:基于经验模式分解(EMD)的时空方法用于运动后MEG Beta同步单次提取

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Due to the non-phaselocked nature and variability from trial to trial, the extraction of event-related oscillatory neuromagnetic activities from single-trial measurement is challenging. The present study proposes a method based on empirical mode decomposition (EMD) and uses a template-based correlation approach to extract Rolandic beta rhythm from magnetoencephalographic (MEG) during right finger lifting movements. The longitudinal gradiometer of the sensor unit which presented most prominent SEF was selected as channel of interest (CI) on which each single-trial recording was decomposed by EMD into a set of intrinsic mode functions (IMFs). Correlation coefficients were calculated between each IMF and data recorded in other MEG channels. These correlation values can be viewed as the spatial weights of the IMF over all MEG channels, which can then be arranged as a spatial map. One spatial template with a focal spatial distribution over left sensorimotor area was used to facilitate a sernsorimo-tor-related IMF selection process, by matching the spatial map of each IMF with the spatial template. Only those IMFs survived high correlation values with the spatial template were chosen as sensorimotor-related IMFs, which were then subjected to a following data reconstruction process. Results demonstrated that amplitudes and phases with high SNR were retained in the extracted oscillatory activities. The preservation of spatial-temporal features in oscillatory activities allows various methods of source estimation can be applied to study the intricate brain dynamics of motor control mechanisms. The present study enables the possibility of investigating cortical pathophysiology of movement disorder on a trial-by-trial basis which also permits an effective alternative for participants or patients who can not endure lengthy procedures or are incapable of sustaining long experiments.
机译:由于试验之间的非锁相性质和可变性,从单次试验测量中提取事件相关的振荡神经磁活动具有挑战性。本研究提出了一种基于经验模态分解(EMD)的方法,并使用基于模板的相关方法从右脑抬起运动中的脑磁图(MEG)中提取Rolandicβ节律。选择表现出最突出SEF的传感器单元的纵向梯度仪作为目标通道(CI),在该通道上,每个单次记录被EMD分解为一组固有模式函数(IMF)。计算每个IMF与记录在其他MEG通道中的数据之间的相关系数。这些相关值可以视为所有MEG通道上IMF的空间权重,然后可以将其安排为空间图。通过将每个IMF的空间图与空间模板进行匹配,可以使用一种在左感觉运动区域上具有局灶性空间分布的空间模板来促进与Sernsorimotor-tor相关的IMF选择过程。只有那些与空间模板具有较高相关值的IMF才被选作与感觉运动相关的IMF,然后对其进行以下数据重建过程。结果表明,在提取的振荡活动中保留了具有高SNR的振幅和相位。振荡活动中时空特征的保留使各种来源估计方法可用于研究运动控制机制的复杂脑动力学。本研究使得有可能在逐个试验的基础上研究运动障碍的皮质病理生理学,这也为不能忍受冗长的程序或无法维持长时间实验的参与者或患者提供了一种有效的替代方法。

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