论文标题
CUTFEM向前建模用于EEG源分析
CutFEM forward modeling for EEG source analysis
论文作者
论文摘要
脑电图(EEG)数据的来源分析需要计算大脑中电流源引起的头皮电势。这个所谓的脑电图前进问题是基于对人头体积传导效应的准确估计,该效应由偏微分方程表示,可以使用有限元方法(FEM)求解。 FEM在建模各向异性组织电导率时具有灵活性,但需要大容量的离散化(网格)的头部域。结构化的六面体网眼很容易以自动方式创建,而四面体网格更适合于建模弯曲的几何形状。因此,四面体网格提供了更好的准确性,但更难创建。方法:我们介绍了用于脑电图前进模拟的CutFem,以整合六面卫星和四面体的优势。它属于未有限元方法的家族,分解网格和几何表示。按照该方法的描述,我们将在受控的球形场景和体感诱发电位的重建中采用CutFem。结果:CutFEM在数值准确性,内存消耗和计算速度方面优于竞争的FEM方法,同时能够任意接触隔室。结论:CutFem平衡了数值准确性,计算效率和复杂几何形状的平滑近似,这些几何形状以前在基于FEM的EEG正向建模中尚未获得。
Source analysis of Electroencephalography (EEG) data requires the computation of the scalp potential induced by current sources in the brain. This so-called EEG forward problem is based on an accurate estimation of the volume conduction effects in the human head, represented by a partial differential equation which can be solved using the finite element method (FEM). FEM offers flexibility when modeling anisotropic tissue conductivities but requires a volumetric discretization, a mesh, of the head domain. Structured hexahedral meshes are easy to create in an automatic fashion, while tetrahedral meshes are better suited to model curved geometries. Tetrahedral meshes thus offer better accuracy, but are more difficult to create. Methods: We introduce CutFEM for EEG forward simulations to integrate the strengths of hexahedra and tetrahedra. It belongs to the family of unfitted finite element methods, decoupling mesh and geometry representation. Following a description of the method, we will employ CutFEM in both controlled spherical scenarios and the reconstruction of somatosensory evoked potentials. Results: CutFEM outperforms competing FEM approaches with regard to numerical accuracy, memory consumption and computational speed while being able to mesh arbitrarily touching compartments. Conclusion: CutFEM balances numerical accuracy, computational efficiency and a smooth approximation of complex geometries that has previously not been available in FEM-based EEG forward modeling.