A Mixed Finite Element Method to Solve the EEG Forward Problem
Johannes Vorwerk, Christian Engwer, Sampsa Pursiainen, Carsten H., Wolters

TL;DR
This paper introduces a novel mixed finite element method for solving the EEG forward problem, which preserves current and can improve accuracy in modeling complex head geometries compared to traditional methods.
Contribution
A new mixed finite element formulation for EEG forward modeling is proposed, incorporating electric current as an unknown to enhance accuracy and current preservation.
Findings
Mixed-FEM is current preserving, unlike CG-FEM.
Mixed-FEM can outperform CG-FEM in certain scenarios.
Theoretical derivation and initial evaluations demonstrate its potential.
Abstract
Finite element methods have been shown to achieve high accuracies in numerically solving the EEG forward problem and they enable the realistic modeling of complex geometries and important conductive features such as anisotropic conductivities. To date, most of the presented approaches rely on the same underlying formulation, the continuous Galerkin (CG)-FEM. In this article, a novel approach to solve the EEG forward problem based on a mixed finite element method (Mixed-FEM) is introduced. To obtain the Mixed-FEM formulation, the electric current is introduced as an additional unknown besides the electric potential. As a consequence of this derivation, the Mixed-FEM is, by construction, current preserving, in contrast to the CG-FEM. Consequently, a higher simulation accuracy can be achieved in certain scenarios, e.g., when the diameter of thin insulating structures, such as the skull, is…
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