Multilayer processing of spatiotemporal spike patterns in a neuron with active dendrites

Neural Comput. 2010 Aug;22(8):2086-112. doi: 10.1162/neco.2010.06-09-1030.

Abstract

With the advent of new experimental evidence showing that dendrites play an active role in processing a neuron's inputs, we revisit the question of a suitable abstraction for the computing function of a neuron in processing spatiotemporal input patterns. Although the integrative role of a neuron in relation to the spatial clustering of synaptic inputs can be described by a two-layer neural network, no corresponding abstraction has yet been described for how a neuron processes temporal input patterns on the dendrites. We address this void using a real-time aVLSI (analog very-large-scale-integrated) dendritic compartmental model, which incorporates two widely studied classes of regenerative event mechanisms: one is mediated by voltage-gated ion channels and the other by transmitter-gated NMDA channels. From this model, we find that the response of a dendritic compartment can be described as a nonlinear sigmoidal function of both the degree of input temporal synchrony and the synaptic input spatial clustering. We propose that a neuron with active dendrites can be modeled as a multilayer network that selectively amplifies responses to relevant spatiotemporal input spike patterns.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Dendrites / physiology*
  • Ion Channel Gating / physiology
  • Models, Neurological*
  • N-Methylaspartate / physiology
  • Neural Conduction / physiology
  • Neurons / physiology*

Substances

  • N-Methylaspartate