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Spatio-temporal EEG Source Localization Using a Three-dimensional Subspace FINE Approach in a Realistic Geometry Inhomogeneous Head Model

机译:时空脑电图源本地化使用三维子空间FINE方法在现实的几何不均匀头部模型中

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摘要

The subspace source localization approach, i.e. first principle vectors (FINE), is able to enhance the spatial resolvability and localization accuracy for closely-spaced neural sources from EEG and MEG measurements. Computer simulations were conducted to evaluate the performance of the FINE algorithm in an inhomogeneous realistic geometry head model under a variety of conditions. The source localization abilities of FINE were examined at different cortical regions and at different depths. The present computer simulation results indicate that FINE has enhanced source localization capability, as compared with MUSIC and RAP-MUSIC, when sources are closely spaced, highly noise-contaminated, or inter-correlated. The source localization accuracy of FINE is better, for closely-spaced sources, than MUSIC at various noise levels, i.e. SNR from 6 dB to 16 dB, and RAP-MUSIC at relatively low noise levels, i.e. 6 dB to 12 dB. The FINE approach has been further applied to localize brain sources of motor potentials, obtained during the finger tapping tasks in a human subject. The experimental results suggest that the detailed neural activity distribution could be revealed by FINE. The present study suggests that FINE provides enhanced performance in localizing multiple closely-spaced, and inter-correlated sources under low signal-to-noise ratio, and may become an important alternative to brain source localization from EEG or MEG.
机译:子空间源定位方法,即第一原理向量(FINE),能够根据EEG和MEG测量结果为空间密集的神经源增强空间可分辨性和定位精度。进行了计算机仿真,以评估FINE算法在各种条件下在非均匀逼真的几何头模型中的性能。在不同的皮质区域和不同的深度检查了FINE的源定位能力。当前的计算机仿真结果表明,当信号源紧密间隔,高度受到噪声污染或相互关联时,与MUSIC和RAP-MUSIC相比,FINE具有增强的信号源定位能力。对于紧密间隔的信号源,FINE的信号源定位精度在各种噪声水平(即SNR从6 dB到16 dB)和RAP-MUSIC在相对较低的噪声水平(即6 dB到12 dB)下都比MUSIC更好。 FINE方法已进一步应用于定位在人类受试者的手指轻敲任务期间获得的运动电位的脑源。实验结果表明,FINE可以揭示详细的神经活动分布。本研究表明,FINE在低信噪比的情况下将多个紧密间隔且相互关联的源定位时提供了增强的性能,并且可能成为从EEG或MEG定位脑源的重要替代方法。

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