Sekihara K, Nagarajan S S, Poeppel D, Marantz A, Miyashita Y
Department of Electronic Systems and Engineering, Tokyo Metropolitan Institute of Technology, Hino, Japan.
IEEE Trans Biomed Eng. 2001 Jul;48(7):760-71. doi: 10.1109/10.930901.
We have developed a method suitable for reconstructing spatio-temporal activities of neural sources by using magnetoencephalogram (MEG) data. The method extends the adaptive beamformer technique originally proposed by Borgiotti and Kaplan to incorporate the vector beamformer formulation in which a set of three weight vectors are used to detect the source activity in three orthogonal directions. The weight vectors of the vector-extended version of the Borgiotti-Kaplan beamformer are then projected onto the signal subspace of the measurement covariance matrix to obtain the final form of the proposed beamformer's weight vectors. Our numerical experiments show that both spatial resolution and output signal-to-noise ratio of the proposed beamformer are significantly higher than those of the minimum-variance-based vector beamformer used in previous investigations. We also applied the proposed beamformer to two sets of auditory-evoked MEG data, and the results clearly demonstrated the method's capability of reconstructing spatio-temporal activities of neural sources.
我们已经开发出一种适用于利用脑磁图(MEG)数据重建神经源时空活动的方法。该方法扩展了最初由博尔乔蒂和卡普兰提出的自适应波束形成器技术,纳入了矢量波束形成器公式,其中使用一组三个权重向量在三个正交方向上检测源活动。然后将博尔乔蒂 - 卡普兰波束形成器的矢量扩展版本的权重向量投影到测量协方差矩阵的信号子空间上,以获得所提出波束形成器权重向量的最终形式。我们的数值实验表明,所提出的波束形成器的空间分辨率和输出信噪比均显著高于先前研究中使用的基于最小方差的矢量波束形成器。我们还将所提出的波束形成器应用于两组听觉诱发的MEG数据,结果清楚地证明了该方法重建神经源时空活动的能力。