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Deep Source Localization with Magnetoencephalography Based on Sensor Array Decomposition and Beamforming

机译:基于传感器阵列分解和波束成形的磁性脑素深源定位

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摘要

In recent years, the source localization technique of magnetoencephalography (MEG) has played a prominent role in cognitive neuroscience and in the diagnosis and treatment of neurological and psychological disorders. However, locating deep brain activities such as in the mesial temporal structures, especially in preoperative evaluation of epilepsy patients, may be more challenging. In this work we have proposed a modified beamforming approach for finding deep sources. First, an iterative spatiotemporal signal decomposition was employed for reconstructing the sensor arrays, which could characterize the intrinsic discriminant features for interpreting sensor signals. Next, a sensor covariance matrix was estimated under the new reconstructed space. Then, a well-known vector beamforming approach, which was a linearly constraint minimum variance (LCMV) approach, was applied to compute the solution for the inverse problem. It can be shown that the proposed source localization approach can give better localization accuracy than two other commonly-used beamforming methods (LCMV, MUSIC) in simulated MEG measurements generated with deep sources. Further, we applied the proposed approach to real MEG data recorded from ten patients with medically-refractory mesial temporal lobe epilepsy (mTLE) for finding epileptogenic zone(s), and there was a good agreement between those findings by the proposed approach and the clinical comprehensive results.
机译:近年来,磁脑(MEG)的源定位技术在认知神经科学和神经系统和心理障碍的诊断和治疗中起着突出的作用。然而,定位深层大脑活动,例如在薄弱的患者术前评估中,可能更具挑战性。在这项工作中,我们提出了一种用于寻找深度的修改的波束形成方法。首先,采用迭代时空信号分解来重建传感器阵列,该传感器阵列可以表征用于解释传感器信号的内在判别特征。接下来,在新的重建空间下估计传感器协方差矩阵。然后,应用了作为线性约束最小方差(LCMV)方法的众所周知的矢量波束形成方法,以计算逆问题的解决方案。可以表明,所提出的源定位方法可以在利用深源产生的模拟MEG测量中提供比另外两种常用的波束形成方法(LCMV,音乐)提供更好的定位精度。此外,我们将提议的方法应用于从十个患者记录的患者中令人难治的患患者记录的真实MEG数据,以寻找癫痫素区,并通过所提出的方法和临床研究综合结果。

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