Finite element analysis of neuronal electric fields: the effect of heterogeneous resistivity
Pavol Bauer, Sanja Mikulovic, Stefan Engblom, Katarina E. Le\~ao,, Frank Rattay, Richardson N. Le\~ao

TL;DR
This paper uses finite element analysis to show that accounting for heterogeneous resistivity in extracellular tissue significantly improves the accuracy of neuronal electric field models, especially in hippocampal layers.
Contribution
It introduces a FEM-based modeling approach incorporating heterogeneous resistivity and neuronal arrangements, advancing beyond traditional homogeneous models.
Findings
Heterogeneous resistivity increases extracellular potentials near neurons.
Modeling results differ substantially when heterogeneity is included.
Heterogeneity impacts neuronal communication modeling.
Abstract
Simulation of extracellular fields is one of the substantial methods used in the area of computational neuroscience. Its most common usage is validation of experimental methods as EEG and extracellular spike recordings or modeling of physiological phenomena which can not be easily determined empirically. Continuous experimental work has been re-raising the importance of polarization effects between neuronal structures to neuronal communication. As this effects relies on very small potential changes, better modeling methods are necessary to quantify the weak electrical fields in the microscopic scale in a more realistic way. An important factor of influence on local field effects in the hippocampal formation is the heterogeneous resistivity of extracellular tissue. The vast majority of modeling studies consider the extracellular space to be homogeneous while experimentally, it has been…
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Taxonomy
TopicsNeural dynamics and brain function · Neuroscience and Neural Engineering · EEG and Brain-Computer Interfaces
