A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting?
In 2007, Modolo and colleagues derived a population density equation for a population of Izhekevich neurons. This population density equation can describe oscillations in the brain that occur in Parkinson’s disease. Numerical simulations of the population density equation showed bursting behaviou...
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ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-117002020-05-01T03:33:01Z A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? Xie, Rongzheng Ibrahim, Slim Edwards, Roderick Izhikevich neurons Population density equation Neuron interaction Bursting Poincaré map Fixed point Bifurcation In 2007, Modolo and colleagues derived a population density equation for a population of Izhekevich neurons. This population density equation can describe oscillations in the brain that occur in Parkinson’s disease. Numerical simulations of the population density equation showed bursting behaviour even though the individual neurons had parameters that put them in the tonic firing regime. The bursting comes from neuron interactions but the mechanism producing this behaviour was not clear. In this thesis we study numerical behaviour of the population density equation and then use a combination of analysis and numerical simulation to analyze the basic qualitative behaviour of the population model by means of a simplifying assumption: that the initial density is a Dirac function and all neurons are identical, including the number of inputs they receive, so they remain as a point mass over time. This leads to a new ODE model for the population. For the new ODE system, we define a Poincaré map and then to describe and analyze it under conditions on model parameters that are met by the typical values adopted by Modolo and colleagues. We show that there is a unique fixed point for this map and that under changes in a bifurcation parameter, the system transitions from fast tonic firing, through an interval where bursting occurs, the number of spikes decreasing as the bifurcation parameter increases, and finally to slow tonic firing. Graduate 2020-04-30T03:56:39Z 2020-04-30T03:56:39Z 2020 2020-04-29 Thesis http://hdl.handle.net/1828/11700 English en Available to the World Wide Web application/pdf |
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Izhikevich neurons Population density equation Neuron interaction Bursting Poincaré map Fixed point Bifurcation |
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Izhikevich neurons Population density equation Neuron interaction Bursting Poincaré map Fixed point Bifurcation Xie, Rongzheng A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? |
description |
In 2007, Modolo and colleagues derived a population density equation for a population
of Izhekevich neurons. This population density equation can describe oscillations in
the brain that occur in Parkinson’s disease. Numerical simulations of the population
density equation showed bursting behaviour even though the individual neurons had
parameters that put them in the tonic firing regime. The bursting comes from neuron
interactions but the mechanism producing this behaviour was not clear. In this thesis
we study numerical behaviour of the population density equation and then use a
combination of analysis and numerical simulation to analyze the basic qualitative
behaviour of the population model by means of a simplifying assumption: that the
initial density is a Dirac function and all neurons are identical, including the number
of inputs they receive, so they remain as a point mass over time. This leads to a new
ODE model for the population. For the new ODE system, we define a Poincaré map
and then to describe and analyze it under conditions on model parameters that are
met by the typical values adopted by Modolo and colleagues. We show that there is a
unique fixed point for this map and that under changes in a bifurcation parameter, the
system transitions from fast tonic firing, through an interval where bursting occurs,
the number of spikes decreasing as the bifurcation parameter increases, and finally to
slow tonic firing. === Graduate |
author2 |
Ibrahim, Slim |
author_facet |
Ibrahim, Slim Xie, Rongzheng |
author |
Xie, Rongzheng |
author_sort |
Xie, Rongzheng |
title |
A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? |
title_short |
A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? |
title_full |
A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? |
title_fullStr |
A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? |
title_full_unstemmed |
A population approach to systems of Izhikevich neurons: can neuron interaction cause bursting? |
title_sort |
population approach to systems of izhikevich neurons: can neuron interaction cause bursting? |
publishDate |
2020 |
url |
http://hdl.handle.net/1828/11700 |
work_keys_str_mv |
AT xierongzheng apopulationapproachtosystemsofizhikevichneuronscanneuroninteractioncausebursting AT xierongzheng populationapproachtosystemsofizhikevichneuronscanneuroninteractioncausebursting |
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