Neuronal Dynamics: Computational Neuroscience of Single Neurons

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Week 4 part 5: Nonlinear Integrate-and-Fire Model 4.1 From Hodgkin-Huxley to 2D Neuronal Dynamics: Computational Neuroscience of Single Neurons Week 4 Recing detail: Two-dimensional neuron models Wulfram Gerstner EPFL, Lausanne, Switzerland 4.2 Phase Plane Analysis 4.3 Analysis of a 2D Neuron Model 4.4 Type I and II Neuron Models - where is the firing threshold? - MathDetour 4: separation of time scales 4.5. Nonlinear Integrate-and-fire - from two to one dimension

Week 4 part 5: Nonlinear Integrate-and-Fire Model 4.1 From Hodgkin-Huxley to 2D 4.2 Phase Plane Analysis 4.3 Analysis of a 2D Neuron Model 4.4 Type I and II Neuron Models - where is the firing threshold? - MathDetour 4: separation of time scales 4.5. Nonlinear Integrate-and-fire - from two to one dimension

Neuronal Dynamics 4.5. Further rection to 1 dimension 2-dimensional equation stimulus τ = Fuw (, ) + RIt ( ) dw τ w = G( u, w) slow! Separation of time scales - w is nearly constant (most of the time)

Neuronal Dynamics 4.5 sparse activity in vivo Spontaneous activity in vivo awake mouse, cortex, freely whisking, -spikes are rare events Crochet et al., 2011 -membrane potential fluctuates around rest Aims of Modeling: - predict spike initation times - predict subthreshold voltage

Neuronal Dynamics 4.5. Further rection to 1 dimension τ = dw τ w = stimulus F( u, w) + I( t) G( u, w) Separation of time scales τ w >> τ u w dw = 0 I(t)=0 u à Flux nearly horizontal Stable fixed point = 0

Neuronal Dynamics 4.5. Further rection to 1 dimension Hodgkin-Huxley reced to 2dim τ = F( u, w) + I( t) dw τ w = G( u, w) Separation of time scales τ w >> τ u dw τ w 0 w wrest τ = Fuw (, rest ) + RIt ( ) Stable fixed point dw = 0 = 0

Neuronal Dynamics 4.5. Nonlinear Integrate-and-Fire Model τ = Fuw (, rest ) + RIt ( ) = f( u) + RIt ( ) à Nonlinear I&F (see week 1!) Image: Neuronal Dynamics, Gerstner et al., Cambridge Univ. Press (2014)

Neuronal Dynamics 4.5. Nonlinear Integrate-and-Fire Model Exponential integrate-and-fire model (EIF) u ϑ f( u) = ( u u ) +Δexp( ) rest Δ τ = Fuw (, rest ) + RIt ( ) = f( u) + RIt ( ) à Nonlinear I&F (see week 1!) Image: Neuronal Dynamics, Gerstner et al., Cambridge Univ. Press (2014)

Neuronal Dynamics 4.5. Exponential Integrate-and-Fire Model Exponential integrate-and-fire model (EIF) u ϑ f( u) = ( u u ) +Δexp( ) rest Δ linear Image: Neuronal Dynamics, Gerstner et al., Cambridge Univ. Press (2014)

Neuronal Dynamics 4.5 sparse activity in vivo Spontaneous activity in vivo awake mouse, cortex, freely whisking, -spikes are rare events Crochet et al., 2011 -membrane potential fluctuates around rest Aims of Modeling: - predict spike initation times - predict subthreshold voltage

Neuronal Dynamics 4.5.How good are integrate-and-fire models? Aims: - predict spike initation times - predict subthreshold voltage Badel et al., 2008 Add adaptation and refractoriness (week 7)

Neuronal Dynamics 4.5. Exponential Integrate-and-Fire Model Direct derivation from Hodgkin-Huxley C g m h( u E ) g n ( u E ) g ( u E ) I( t) 3 4 Na Na K K l l = + C g m u h u E g n u E g u E I t = + 3 4 Na[ 0( )] rest ( Na) K[ rest ] ( K ) l ( l ) ( ) Fourcaud-Trocme et al, J. Neurosci. 2003 u ϑ f( u) = ( u u ) +Δexp( ) rest Δ τ = Fuh (, rest, nrest ) + RIt ( ) = f( u) + RIt ( ) gives expon. I&F

Neuronal Dynamics 4.5. Nonlinear Integrate-and-Fire Model Relevant ring spike and downswing of AP 2-dimensional equation τ = Fuw (, ) + RIt ( ) dw τ w = G( u, w) Separation of time scales - w is constant (if not firing) τ = f( u) + RI( t) threshold+reset for firing

Neuronal Dynamics 4.5. Nonlinear Integrate-and-Fire Model 2-dimensional equation τ = Fuw (, ) + RIt ( ) dw τ w = G( u, w) Separation of time scales - w is constant (if not firing) τ = f( u) + RI( t) Linear plus exponential

Neuronal Dynamics Quiz 4.7. A. Exponential integrate-and-fire model. The model can be derived [ ] from a 2-dimensional model, assuming that the auxiliary variable w is constant. [ ] from the HH model, assuming that the gating variables h and n are constant. [ ] from the HH model, assuming that the gating variables m is constant. [ ] from the HH model, assuming that the gating variables m is instantaneous. B. Reset. [ ] In a 2-dimensional model, the auxiliary variable w is necessary to implement a reset of the voltage after a spike [ ] In a nonlinear integrate-and-fire model, the auxiliary variable w is necessary to implement a reset of the voltage after a spike [ ] In a nonlinear integrate-and-fire model, a reset of the voltage after a spike is implemented algorithmically/explicitly

Neuronal Dynamics 4.4 Literature Reading: W. Gerstner, W.M. Kistler, R. Naud and L. Paninski, Neuronal Dynamics: from single neurons to networks and models of cognition. Chapter 4: Introction. Cambridge Univ. Press, 2014 OR W. Gerstner and W.M. Kistler, Spiking Neuron Models, Ch.3. Cambridge 2002 OR J. Rinzel and G.B. Ermentrout, (1989). Analysis of neuronal excitability and oscillations. In Koch, C. Segev, I., editors, Methods in neuronal modeling. MIT Press, Cambridge, MA. Selected references. -Ermentrout, G. B. (1996). Type I membranes, phase resetting curves, and synchrony. Neural Computation, 8(5):979-1001. - Fourcaud-Trocme, N., Hansel, D., van Vreeswijk, C., and Brunel, N. (2003). How spike generation mechanisms determine the neuronal response to fluctuating input. J. Neuroscience, 23:11628-11640. - Badel, L., Lefort, S., Berger, T., Petersen, C., Gerstner, W., and Richardson, M. (2008). Biological Cybernetics, 99(4-5):361-370. - E.M. Izhikevich, Dynamical Systems in Neuroscience, MIT Press (2007)