A neural microcircuit model for a scalable scale‐invariant representation of time

Abstract

Scale‐invariant timing has been observed in a wide range of behavioral experiments. The firing properties of recently described time cells provide a possible neural substrate for scale‐invariant behavior. Earlier neural circuit models do not produce scale‐invariant neural sequences. In this article, we present a biologically detailed network model based on an earlier mathematical algorithm. The simulations incorporate exponentially decaying persistent firing maintained by the calcium‐activated nonspecific (CAN) cationic current and a network structure given by the inverse Laplace transform to generate time cells with scale‐invariant firing rates. This model provides the first biologically detailed neural circuit for generating scale‐invariant time cells. The circuit that implements the inverse Laplace transform merely consists of off‐center/on‐surround receptive fields. Critically, rescaling temporal sequences can be accomplished simply via cortical gain control (changing the slope of the f–I curve).

Document Details

Document Type
Pub Defense Publication
Publication Date
Nov 13, 2018
Source ID
10.1002/hipo.22994

Entities

People

  • Marc W Howard
  • Michael Hasselmo
  • Yue Liu
  • Zoran Tiganj

Organizations

  • Boston University
  • National Institute of Biomedical Imaging and Bioengineering
  • Office of Naval Research

Tags

Fields of Study

  • Biology

Readers

  • Computational Modeling and Simulation
  • Control Systems Engineering.
  • Vision Science/Vision Psychology/Cognitive Neuroscience.

Technology Areas

  • Microelectronics