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Mixed-norm estimates for the M/EEG inverse problem using accelerated gradient methods

机译:使用加速梯度方法的M / EEG逆问题的混合标准估计

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摘要

Magneto- and electroencephalography (M/EEG) measure the electromagnetic fields produced by the neural electrical currents. Given a conductor model for the head, and the distribution of source currents in the brain, Maxwell’s equations allow one to compute the ensuing M/EEG signals. Given the actual M/EEG measurements and the solution of this forward problem, one can localize, in space and in time, the brain regions than have produced the recorded data. However, due to the physics of the problem, the limited number of sensors compared to the number of possible source locations, and measurement noise, this inverse problem is ill-posed. Consequently, additional constraints are needed. Classical inverse solvers, often called Minimum Norm Estimates (MNE), promote source estimates with a small ℓ2 norm. Here, we consider a more general class of priors based on mixed-norms. Such norms have the ability to structure the prior in order to incorporate some additional assumptions about the sources. We refer to such solvers as Mixed-Norm Estimates (MxNE). In the context of M/EEG, MxNE can promote spatially focal sources with smooth temporal estimates with a two-level ℓ1/ℓ2 mixed-norm, while a three-level mixed-norm can be used to promote spatially non-overlapping sources between different experimental conditions. In order to efficiently solve the optimization problems of MxNE, we introduce fast first-order iterative schemes that for the ℓ1/ℓ2 norm give solutions in a few seconds making such a prior as convenient as the simple MNE. Furhermore, thanks to the convexity of the optimization problem, we can provide optimality conditions that guarantee global convergence. The utility of the methods is demonstrated both with simulations and experimental MEG data.
机译:磁铁和脑电图(M / EEG)测量由神经电流产生的电磁场。给定头部的导体模型,以及大脑中的源电流分布,Maxwell的等式允许一个来计算随后的M / EEG信号。鉴于实际的M / EEG测量和该前进问题的解决方案,人们可​​以在空间和时间内定位大脑区域,而不是产生记录的数据。但是,由于问题的物理,传感器数量有限的传感器与可能的源位置的数量相比,和测量噪声,这种逆问题均未出现。因此,需要额外的约束。经常逆溶剂,通常称为最小规范估计(MNE),促进具有小ℓ2规范的源估计。在这里,我们考虑基于混合规范的更一般的前方。这些规范具有能够构建之前的结构,以便纳入一些关于这些来源的额外假设。我们将这种求解器称为混合规范估计(MXNE)。在M / EEG的上下文中,MXNE可以通过平稳的时间估计,具有双级ℓ1/ℓ2混合标准的平滑时间估计,而三级混合规范可用于促进不同之间的空间非重叠源实验条件。为了有效地解决MXNE的优化问题,我们引入了快速的一阶迭代方案,即ℓ1/ℓ2规范在几秒钟内提供解决方案,使如简单的MNE的方便。 Futhermore,由于优化问题的凸起,我们可以提供保证全球收敛的最佳条件。使用模拟和实验MEG数据来证明该方法的效用。

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