Electrophysiological Brain Source Imaging via Combinatorial Search with Provable Optimality

Guihong Wan, Meng Jiao, Xinglong Ju, Yu Zhang, H. Schweitzer, Feng Liu
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Abstract

Electrophysiological Source Imaging (ESI) refers to reconstructing the underlying brain source activation from non-invasive Electroencephalography (EEG) and Magnetoencephalography (MEG) measurements on the scalp. Estimating the source locations and their extents is a fundamental tool in clinical and neuroscience applications. However, the estimation is challenging because of the ill-posedness and high coherence in the leadfield matrix as well as the noise in the EEG/MEG data. In this work, we proposed a combinatorial search framework to address the ESI problem with a provable optimality guarantee. Specifically, by exploiting the graph neighborhood information in the brain source space, we converted the ESI problem into a graph search problem and designed a combinatorial search algorithm under the framework of A* to solve it. The proposed algorithm is guaranteed to give an optimal solution to the ESI problem. Experimental results on both synthetic data and real epilepsy EEG data demonstrated that the proposed algorithm could faithfully reconstruct the source activation in the brain.
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基于可证明最优性组合搜索的脑电生理源成像
电生理源成像(Electrophysiological Source Imaging, ESI)是指通过头皮上的无创脑电图(EEG)和脑磁图(MEG)测量重建潜在的脑源激活。估计源位置及其范围是临床和神经科学应用的基本工具。然而,由于前导场矩阵的病态性和高相干性以及脑磁图数据中的噪声,估计是具有挑战性的。在这项工作中,我们提出了一个组合搜索框架来解决ESI问题,并提供了可证明的最优性保证。具体而言,我们利用脑源空间中的图邻域信息,将ESI问题转化为图搜索问题,并设计了a *框架下的组合搜索算法进行求解。该算法保证了ESI问题的最优解。在合成数据和真实癫痫脑电图数据上的实验结果表明,该算法能够真实地重建脑源激活。
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