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Variation sparse source imaging based on conditional mean for electromagnetic extended sources

机译:基于条件均值的电磁扩展源变异稀疏源成像

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Electromagnetic (E/MEG) brain source imaging involves challenging problems that make it particularly difficult to estimate both the locations and extents of extended sources. In this study, we propose a new method called Variation Sparse Source Imaging based on Conditional Mean of the posterior (VSSI-CM), which is built upon a Bayesian framework, to reconstruct extended E/MEG generators. Based on the proposed framework, VSSI-CM can employ various spatial priors (e.g., the Laplace prior) to explore sparseness of current sources in transform domains (e.g., the variation transform in this study). Considering the complexity of posterior density in the estimated sources, we propose using the posterior mean instead of the typical maximum a posterior (MAP) estimate as a more accurate inverse solution. The posterior mean is obtained by fitting an approximated Gaussian distribution to the intractable true posterior distribution. An efficient double-loop algorithm is also proposed using convex analysis skills. Validation using synthetic and human experimental data sets indicates that VSSI-CM outperforms the well-studied L-2-norm methods (i.e., sLORETA and dSPM) and the sparse constrained methods that explore sparseness in the original source domain. The estimates from VSSI-CM are also more accurate than that from MAP. (C) 2018 Elsevier B.V. All rights reserved.
机译:电磁(E / MEG)脑源成像涉及具有挑战性的问题,这使得很难估计扩展源的位置和范围。在这项研究中,我们提出了一种基于后验条件均值(VSSI-CM)的新方法,该方法基于贝叶斯框架,用于重建扩展的E / MEG发生器。基于提出的框架,VSSI-CM可以采用各种空间先验(例如Laplace先验)来探索变换域中电流源的稀疏性(例如本研究中的变体变换)。考虑到估计源中后验密度的复杂性,我们建议使用后验均值代替典型的最大后验(MAP)估计作为更准确的逆解。通过将近似高斯分布与难处理的真实后验分布拟合,可以得到后验均值。还利用凸分析技巧提出了一种有效的双循环算法。使用合成和人类实验数据集进行的验证表明,VSSI-CM优于经过充分研究的L-2-norm方法(即sLORETA和dSPM)以及在原始源域中探索稀疏性的稀疏约束方法。 VSSI-CM的估计也比MAP的估计更准确。 (C)2018 Elsevier B.V.保留所有权利。

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