Excitatory-Inhibitory Balance, Imbalance, and Amplification in Cortical Network Models
Understanding the relationship between a sensory stimulus and the spiking activity of cortical populations is a central problem in neuroscience. Dense recurrent connectivity in local cortical circuits can lead to counterintuitive response properties, raising the question of whether there are simple arithmetical rules for relating circuits' connectivity structure to their response properties. One such arithmetic is provided by the mean field theory of balanced networks, which is derived in a limit where excitatory and inhibitory synaptic currents precisely balance on average. However, balanced network theory is not applicable to some biologically relevant connectivity structures. We show that cortical circuits with such structure are susceptible to an amplification mechanism arising when excitatory-inhibitory balance is broken at the level of local subpopulations, but maintained at a global level. This amplification, which can be quantified by a linear correction to the classical mean field theory of balanced networks, explains several response properties observed in cortical recordings and provides fundamental insights into the relationship between connectivity structure and neural responses in cortical circuits.
History
Date Modified
2019-06-29Defense Date
2019-03-29CIP Code
- 27.9999
Research Director(s)
Robert RosenbaumDegree
- Doctor of Philosophy
Degree Level
- Doctoral Dissertation
Alternate Identifier
1105929560Library Record
5114067OCLC Number
1105929560Additional Groups
- Applied and Computational Mathematics and Statistics
Program Name
- Applied and Computational Mathematics and Statistics