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Improving the Nulling Beamformer Using Subspace Suppression

机译:使用子空间抑制来改善Nulling Beamformer

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摘要

Magnetoencephalography (MEG) captures the magnetic fields generated by neuronal current sources with sensors outside the head. In MEG analysis these current sources are estimated from the measured data to identify the locations and time courses of neural activity. Since there is no unique solution to this so-called inverse problem, multiple source estimation techniques have been developed. The nulling beamformer (NB), a modified form of the linearly constrained minimum variance (LCMV) beamformer, is specifically used in the process of inferring interregional interactions and is designed to eliminate shared signal contributions, or cross-talk, between regions of interest (ROIs) that would otherwise interfere with the connectivity analyses. The nulling beamformer applies the truncated singular value decomposition (TSVD) to remove small signal contributions from a ROI to the sensor signals. However, ROIs with strong crosstalk will have high separating power in the weaker components, which may be removed by the TSVD operation. To address this issue we propose a new method, the nulling beamformer with subspace suppression (NBSS). This method, controlled by a tuning parameter, reweights the singular values of the gain matrix mapping from source to sensor space such that components with high overlap are reduced. By doing so, we are able to measure signals between nearby source locations with limited cross-talk interference, allowing for reliable cortical connectivity analysis between them. In two simulations, we demonstrated that NBSS reduces cross-talk while retaining ROIs' signal power, and has higher separating power than both the minimum norm estimate (MNE) and the nulling beamformer without subspace suppression. We also showed that NBSS successfully localized the auditory M100 event-related field in primary auditory cortex, measured from a subject undergoing an auditory localizer task, and suppressed cross-talk in a nearby region in the superior temporal sulcus.
机译:磁脑电图(MEG)通过头部外部的传感器捕获神经元电流源产生的磁场。在MEG分析中,从测量数据中估算出这些电流源,以识别神经活动的位置和时程。由于没有所谓的逆问题的唯一解决方案,因此已经开发了多种源估计技术。归零波束形成器(NB)是线性约束最小方差(LCMV)波束形成器的一种改进形式,专门用于推断区域间相互作用的过程中,旨在消除感兴趣区域之间的共享信号贡献或串扰( ROI),否则将干扰连通性分析。归零波束形成器应用截断后的奇异值分解(TSVD),以去除小信号从ROI对传感器信号的贡献。但是,具有强串扰的ROI在较弱的组件中具有较高的分离能力,可以通过TSVD操作将其去除。为了解决这个问题,我们提出了一种新的方法,带子空间抑制的调零波束形成器(NBSS)。该方法由调整参数控制,可以对从源到传感器空间的增益矩阵映射的奇异值进行加权,从而减少具有高重叠度的分量。这样,我们就能够以有限的串扰干扰测量附近信号源位置之间的信号,从而在它们之间进行可靠的皮质连通性分析。在两个仿真中,我们证明了NBSS在保持ROI信号功率的同时,减少了串扰,并且比最小范数估计(MNE)和没有子空间抑制的零波束形成器具有更高的分离功率。我们还显示,NBSS成功地将初级听觉皮层中与听觉M100事件相关的区域定位到了接受听觉定位器任务的对象,并抑制了颞上沟附近区域的串扰。

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