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A realistic, accurate and fast source modeling approach for the EEG forward problem.

Authors :
Miinalainen, Tuuli
Rezaei, Atena
Us, Defne
Nüßing, Andreas
Engwer, Christian
Wolters, Carsten H.
Pursiainen, Sampsa
Source :
NeuroImage. Jan2019, Vol. 184, p56-67. 12p.
Publication Year :
2019

Abstract

Abstract The aim of this paper is to advance electroencephalography (EEG) source analysis using finite element method (FEM) head volume conductor models that go beyond the standard three compartment (skin, skull, brain) approach and take brain tissue inhomogeneity (gray and white matter and cerebrospinal fluid) into account. The new approach should enable accurate EEG forward modeling in the thin human cortical structures and, more specifically, in the especially thin cortices in children brain research or in pathological applications. The source model should thus be focal enough to be usable in the thin cortices, but should on the other side be more realistic than the current standard mathematical point dipole. Furthermore, it should be numerically accurate and computationally fast. We propose to achieve the best balance between these demands with a current preserving (divergence conforming) dipolar source model. We develop and investigate a varying number of current preserving source basis elements n (n = 1 , ... , n = 5). For validation, we conducted numerical experiments within a multi-layered spherical domain, where an analytical solution exists. We show that the accuracy increases along with the number of basis elements, while focality decreases. The results suggest that the best balance between accuracy and focality in thin cortices is achieved with n = 4 (or in extreme cases even n = 3) basis functions, while in thicker cortices n = 5 is recommended to obtain the highest accuracy. We also compare the current preserving approach to two further FEM source modeling techniques, namely partial integration and St. Venant, and show that the best current preserving source model outperforms the competing methods with regard to overall balance. For all tested approaches, FEM transfer matrices enable high computational speed. We implemented the new EEG forward modeling approaches into the open source duneuro library for forward modeling in bioelectromagnetism to enable its broader use by the brain research community. This library is build upon the DUNE framework for parallel finite elements simulations and integrates with high-level toolboxes like FieldTrip. Additionally, an inversion test has been implemented using the realistic head model to demonstrate and compare the differences between the aforementioned source models. Highlights • Current preserving H(div) source model was found to perform well near surfaces. • The performance compare to Partial Integration and St.Venant using a spherical model. • A realistic head model was used in an inversion test. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10538119
Volume :
184
Database :
Academic Search Index
Journal :
NeuroImage
Publication Type :
Academic Journal
Accession number :
132870995
Full Text :
https://doi.org/10.1016/j.neuroimage.2018.08.054