Improving M/EEG source localizationwith an inter-condition sparse prior

Alexandre Gramfort, M. Kowalski
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引用次数: 22

Abstract

The inverse problem with distributed dipoles models in M/EEG is strongly ill-posed requiring to set priors on the solution. Most common priors are based on a convenient ℓ2 norm. However such methods are known to smear the estimated distribution of cortical currents. In order to provide sparser solutions, other norms than ℓ2 have been proposed in the literature, but they often do not pass the test of real data. Here we propose to perform the inverse problem on multiple experimental conditions simultaneously and to constrain the corresponding active regions to be different, while preserving the robust ℓ2 prior over space and time. This approach is based on a mixed norm that sets a ℓ1 prior between conditions. The optimization is performed with an efficient iterative algorithm able to handle highly sampled distributed models. The method is evaluated on two synthetic datasets reproducing the organization of the primary somatosensory cortex (S1) and the primary visual cortex (V1), and validated with MEG somatosensory data.
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利用条件间稀疏先验改进M/EEG源定位
具有分布偶极子模型的脑电反问题是强不适定的,需要对解设置先验。最常见的先验是基于一个方便的l2范数。然而,已知这种方法会涂抹估计的皮质电流分布。为了提供更稀疏的解,文献中已经提出了其他规范,但它们往往不能通过实际数据的检验。在此,我们提出在多个实验条件下同时执行反问题,并约束相应的活动区域不同,同时保持在空间和时间上的鲁棒性。这种方法是基于一个混合范数,它在条件之间设置了一个v1先验。优化是通过一种有效的迭代算法来实现的,该算法能够处理高采样的分布式模型。在再现初级体感皮层(S1)和初级视觉皮层(V1)组织的两个合成数据集上对该方法进行了评估,并用MEG体感数据对该方法进行了验证。
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