Li Ying, Qin Jing, Hsin Yue-Loong, Osher Stanley, Liu Wentai
Biomimetic Research Lab, Department of Bioengineering, University of California, Los Angeles Los Angeles, CA, USA.
Department of Mathematical Sciences, Montana State University Bozeman, MT, USA.
Front Neurosci. 2016 Nov 28;10:543. doi: 10.3389/fnins.2016.00543. eCollection 2016.
EEG source imaging enables us to reconstruct current density in the brain from the electrical measurements with excellent temporal resolution (~ ). The corresponding EEG inverse problem is an ill-posed one that has infinitely many solutions. This is due to the fact that the number of EEG sensors is usually much smaller than that of the potential dipole locations, as well as noise contamination in the recorded signals. To obtain a unique solution, regularizations can be incorporated to impose additional constraints on the solution. An appropriate choice of regularization is critically important for the reconstruction accuracy of a brain image. In this paper, we propose a novel Sparsity and SMOOthness enhanced brain TomograpHy (s-SMOOTH) method to improve the reconstruction accuracy by integrating two recently proposed regularization techniques: Total Generalized Variation (TGV) regularization and ℓ regularization. TGV is able to preserve the source edge and recover the spatial distribution of the source intensity with high accuracy. Compared to the relevant total variation (TV) regularization, TGV enhances the smoothness of the image and reduces staircasing artifacts. The traditional TGV defined on a 2D image has been widely used in the image processing field. In order to handle 3D EEG source images, we propose a voxel-based Total Generalized Variation (vTGV) regularization that extends the definition of second-order TGV from 2D planar images to 3D irregular surfaces such as cortex surface. In addition, the ℓ regularization is utilized to promote sparsity on the current density itself. We demonstrate that ℓ regularization is able to enhance sparsity and accelerate computations than ℓ regularization. The proposed model is solved by an efficient and robust algorithm based on the difference of convex functions algorithm (DCA) and the alternating direction method of multipliers (ADMM). Numerical experiments using synthetic data demonstrate the advantages of the proposed method over other state-of-the-art methods in terms of total reconstruction accuracy, localization accuracy and focalization degree. The application to the source localization of event-related potential data further demonstrates the performance of the proposed method in real-world scenarios.
脑电图源成像使我们能够根据具有出色时间分辨率(~)的电测量来重建大脑中的电流密度。相应的脑电图逆问题是一个不适定问题,有无数个解。这是因为脑电图传感器的数量通常远小于潜在偶极位置的数量,以及记录信号中的噪声污染。为了获得唯一解,可以纳入正则化以对解施加额外约束。正则化的适当选择对于脑图像的重建精度至关重要。在本文中,我们提出了一种新颖的稀疏性和平滑性增强脑断层扫描(s-SMOOTH)方法,通过整合两种最近提出的正则化技术来提高重建精度:全广义变分(TGV)正则化和ℓ正则化。TGV能够保留源边缘并高精度恢复源强度的空间分布。与相关的总变分(TV)正则化相比,TGV增强了图像的平滑性并减少了阶梯状伪影。在二维图像上定义的传统TGV已在图像处理领域广泛使用。为了处理三维脑电图源图像,我们提出了一种基于体素的全广义变分(vTGV)正则化,将二阶TGV的定义从二维平面图像扩展到三维不规则表面,如皮质表面。此外,利用ℓ正则化来促进电流密度本身的稀疏性。我们证明,与ℓ正则化相比,ℓ正则化能够增强稀疏性并加速计算。所提出的模型通过基于凸函数差算法(DCA)和交替方向乘子法(ADMM)的高效且稳健的算法求解。使用合成数据的数值实验证明了所提出的方法在总重建精度、定位精度和聚焦程度方面优于其他现有方法。将其应用于事件相关电位数据的源定位进一步证明了所提出方法在实际场景中的性能。