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On the Electrodynamics of Neural Networks

In: Neural Fields

Author

Listed:
  • Peter beim Graben

    (Humboldt-Universität zu Berlin, Bernstein Center for Computational Neuroscience, Göttingen, Germany Department of German Studies and Linguistics)

  • Serafim Rodrigues

    (University of Plymouth, School of Computing and Mathematics, Centre for Robotics and Neural Systems)

Abstract

We present a microscopic approach for the coupling of cortical activity, as resulting from proper dipole currents of pyramidal neurons, to the electromagnetic field in extracellular fluid in presence of diffusion Diffusion and Ohmic conduction. Starting from a full-fledged three-compartment model of a single pyramidal neuron, including shunting and dendritic propagation, we derive an observation model for dendritic dipole currents in extracellular space Extracellular space and thereby for the dendritic field potential that contributes to the local field potential of a neural population. Under reasonable simplifications, we then derive a leaky integrate-and-fire model for the dynamics of a neural network, which facilitates comparison with existing neural network and observation models. In particular, we compare our results with a related model by means of numerical simulations. Performing a continuum limit, neural activity becomes represented by a neural field equation, while an observation model for electric field potentials is obtained from the interaction of cortical dipole currents with charge density in non-resistive extracellular space as described by the Nernst-Planck equation. Our work consistently satisfies the widespread dipole assumption discussed in the neuroscientific literature.

Suggested Citation

  • Peter beim Graben & Serafim Rodrigues, 2014. "On the Electrodynamics of Neural Networks," Springer Books, in: Stephen Coombes & Peter beim Graben & Roland Potthast & James Wright (ed.), Neural Fields, edition 127, chapter 0, pages 269-296, Springer.
  • Handle: RePEc:spr:sprchp:978-3-642-54593-1_10
    DOI: 10.1007/978-3-642-54593-1_10
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