时频域非凸惩罚的MEG/EEG源成像

D. Strohmeier, Alexandre Gramfort, J. Haueisen
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引用次数: 7

摘要

由于具有优异的时间分辨率,脑电信号源成像是研究脑动态过程的重要测量方式。由于生物电磁反问题是病态的,为了找到唯一解,必须对源估计施加约束。这些约束既可以应用于标准域中,也可以应用于转换后的域中。时频混合范数估计(Time-Frequency Mixed Norm Estimate)通过对源信号的Gabor TF分解系数进行l2、1混合范数和11范数惩罚,采用复合凸正则化泛函提高时频域的结构化稀疏性,以改进具有非平稳和瞬态信号的空间稀疏神经激活的重建。然而,由于基于11范数的约束,所得到的源估计在振幅上是有偏差的,并且在源选择方面往往是次优的。在这项工作中,我们提出了迭代重加权时频混合范数估计,它采用了由l2、0.5-拟范数和l0.5-拟范数惩罚和组成的复合非凸惩罚。采用一种重新加权的凸优化方案求解非凸问题,其中每次迭代等效于加权时频混合范数估计,该优化方案使用块坐标下降方案和主动集策略有效地求解。我们通过对MEG数据的模拟和分析,将我们的方法与其他求解方法进行了比较,并证明了迭代重加权时频混合范数估计在有源识别、振幅偏差校正和激活时间解混方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MEG/EEG Source Imaging with a Non-Convex Penalty in the Time-Frequency Domain
Due to the excellent temporal resolution, MEG/EEG source imaging is an important measurement modality to study dynamic processes in the brain. As the bio electromagnetic inverse problem is ill-posed, constraints have to be imposed on the source estimates to find a unique solution. These constraints can be applied either in the standard or a transformed domain. The Time-Frequency Mixed Norm Estimate applies a composite convex regularization functional promoting structured sparsity in the time-frequency domain by combining an l2,1-mixed-norm and an l1-norm penalty on the coefficients of the Gabor TF decomposition of the source signals, to improve the reconstruction of spatially sparse neural activations with non-stationary and transient signals. Due to the l1-norm based constraints, the resulting source estimates are however biased in amplitude and often suboptimal in terms of source selection. In this work, we present the iterative reweighted Time-Frequency Mixed Norm Estimate, which employs a composite non-convex penalty formed by the sum of an l2,0.5-quasinorm and an l0.5-quasinorm penalty. The resulting non-convex problem is solved with a reweighted convex optimization scheme, in which each iteration is equivalent to a weighted Time-Frequency Mixed-Norm Estimate solved efficiently using a block coordinate descent scheme and an active set strategy. We compare our approach to alternative solvers using simulations and analysis of MEG data and demonstrate the benefit of the iterative reweighted Time-Frequency Mixed Norm Estimate with regard to active source identification, amplitude bias correction, and temporal unmixing of activations.
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