Sensor space time-varying information flow analysis of multiclass motor imagery through Kalman Smoother and EM algorithm

M. Hamedi, S. Salleh, C. Ting, S. Samdin, alias mohd noor
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引用次数: 5

Abstract

Inter-channel time-varying (TV) relationships of scalp neural recordings offer deep understanding of the brain sensory and cognitive functions. This paper develops a state space-based TV multivariate autoregressive (MVAR) model for estimating TV-information flow (IF) recruited by different motor imagery (MI) movements. TV model coefficients are computed through Kalman filter (KF) by incorporating Kalman smoothing approach and expectation-maximization algorithm for model parameter estimation, KS-EM. Volume conduction (VC) problem is also addressed by considering full noise covariate in observation equation. An automated model initialization is also implemented to deliver optimal estimates. TV-partial directed coherence derived from the proposed model is applied for IF analysis. The performance of KS-EM is assessed and compared with dual extended KF and overlapping sliding window-based MVAR models using simulated data. Finally, TV-IF during four different MI movements is studied. Results show the superiority of KS-EM for tracking the rapid signal parameter changes and eliminating the VC effect in the sensor space EEG. Differences in contralateral/ipsilateral TV-IF around alpha and lower beta bands during each MI task reveal the high potential of this feature for BCI applications.
基于卡尔曼平滑和EM算法的多类运动图像传感器空间时变信息流分析
头皮神经记录的通道间时变(TV)关系提供了对大脑感觉和认知功能的深入了解。提出了一种基于状态空间的电视多元自回归(MVAR)模型,用于估计不同运动想象(MI)运动所吸收的电视信息流(IF)。结合卡尔曼平滑法和模型参数估计的期望最大化算法KS-EM,通过卡尔曼滤波(KF)计算电视模型系数。通过考虑观测方程的全噪声协变量,解决了体积传导问题。还实现了自动模型初始化,以提供最佳估计。由该模型导出的电视部分定向相干被应用于中频分析。利用仿真数据对KS-EM模型的性能进行了评估,并与双扩展KF模型和基于重叠滑动窗的MVAR模型进行了比较。最后,研究了四种不同MI动作中的TV-IF。结果表明,KS-EM在跟踪信号参数的快速变化和消除传感器空间脑电中的VC效应方面具有优势。在每个MI任务中,对侧/同侧在α和下β波段周围的TV-IF的差异揭示了该特征在脑机接口应用中的高潜力。
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