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首页> 外文期刊>NeuroImage >A distributed spatio-temporal EEG/MEG inverse solver.
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A distributed spatio-temporal EEG/MEG inverse solver.

机译:分布式时空EEG / MEG逆求解器。

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摘要

We propose a novel l(1)l(2)-norm inverse solver for estimating the sources of EEG/MEG signals. Based on the standard l(1)-norm inverse solvers, this sparse distributed inverse solver integrates the l(1)-norm spatial model with a temporal model of the source signals in order to avoid unstable activation patterns and spiky solvers. The joint spatio-temporal model leads to a cost function with an l(1)l(2)-norm regularizer whose minimization can be reduced to a convex second-order cone programming (SOCP) problem and efficiently solved using the interior-point method. The efficient computation of the SOCP problem allows us to implement permutation tests for estimating statistical significance of the inverse solution. Validation with simulated and human MEG data shows that the proposed solver yields source time course estimates qualitatively similar to those obtained through dipole fitting, but without the need to specify the number of dipole sources in advance. Furthermore, the l(1)l(2)-norm solver achievesfewer false positives and a better representation of the source locations than the conventional l(2) minimum-norm estimates.
机译:我们提出了一种新颖的l(1)l(2)-范数逆求解器,用于估计EEG / MEG信号的来源。基于标准的l(1)-范数逆解算器,此稀疏分布式逆求解器将l(1)-范数空间模型与源信号的时间模型集成在一起,以避免不稳定的激活模式和尖峰的解算器。联合时空模型使用l(1)l(2)-范数正则化函数生成成本函数,其最小化可简化为凸二阶锥规划(SOCP)问题,并使用内点法有效求解。 SOCP问题的有效计算使我们能够实施置换测试以估计逆解的统计显着性。用模拟的和人类的MEG数据进行的验证表明,所提出的求解器在质量上与通过偶极子拟合获得的源时程估计在质量上相似,但无需事先指定偶极子源的数量。此外,与常规的l(2)最小范数估计相比,l(1)l(2)范数解算器可实现更少的误报和源位置的更好表示。

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