Dentate gyrus network model (Santhakumar et al 2005)

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Accession:51781
Mossy cell loss and mossy fiber sprouting are two characteristic consequences of repeated seizures and head trauma. However, their precise contributions to the hyperexcitable state are not well understood. Because it is difficult, and frequently impossible, to independently examine using experimental techniques whether it is the loss of mossy cells or the sprouting of mossy fibers that leads to dentate hyperexcitability, we built a biophysically realistic and anatomically representative computational model of the dentate gyrus to examine this question. The 527-cell model, containing granule, mossy, basket, and hilar cells with axonal projections to the perforant-path termination zone, showed that even weak mossy fiber sprouting (10-15% of the strong sprouting observed in the pilocarpine model of epilepsy) resulted in the spread of seizure-like activity to the adjacent model hippocampal laminae after focal stimulation of the perforant path. See reference for more and details.
Reference:
1 . Santhakumar V, Aradi I, Soltesz I (2005) Role of mossy fiber sprouting and mossy cell loss in hyperexcitability: a network model of the dentate gyrus incorporating cell types and axonal topography. J Neurophysiol 93:437-53 [PubMed]
Model Information (Click on a link to find other models with that property)
Model Type: Realistic Network;
Brain Region(s)/Organism: Dentate gyrus;
Cell Type(s): Dentate gyrus granule GLU cell; Dentate gyrus mossy cell; Dentate gyrus basket cell; Dentate gyrus hilar cell;
Channel(s): I L high threshold; I T low threshold; I K; I h; I K,Ca; I Calcium; I Potassium;
Gap Junctions:
Receptor(s): GabaA; AMPA;
Gene(s):
Transmitter(s):
Simulation Environment: NEURON; neuroConstruct (web link to model);
Model Concept(s): Activity Patterns; Spatio-temporal Activity Patterns; Axonal Action Potentials; Epilepsy; Synaptic Integration;
Implementer(s): Santhakumar, Vijayalakshmi [santhavi at umdnj.edu];
Search NeuronDB for information about:  Dentate gyrus granule GLU cell; GabaA; AMPA; I L high threshold; I T low threshold; I K; I h; I K,Ca; I Calcium; I Potassium;
Files displayed below are from the implementation
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dentategyrusnet2005
readme.html *
bgka.mod *
CaBK.mod *
ccanl.mod *
Gfluct2.mod *
gskch.mod *
hyperde3.mod *
ichan2.mod *
LcaMig.mod *
nca.mod *
tca.mod *
DG500_M7.hoc *
dgnetactivity.jpg *
dgnettraces.jpg *
mosinit.hoc *
RI10sp.hoc
testnet.hoc
                            
TITLE Fluctuating conductances

COMMENT
-----------------------------------------------------------------------------

	Fluctuating conductance model for synaptic bombardment
	======================================================

THEORY

  Synaptic bombardment is represented by a stochastic model containing
  two fluctuating conductances g_e(t) and g_i(t) descibed by:

     Isyn = g_e(t) * [V - E_e] + g_i(t) * [V - E_i]
     d g_e / dt = -(g_e - g_e0) / tau_e + sqrt(D_e) * Ft
     d g_i / dt = -(g_i - g_i0) / tau_i + sqrt(D_i) * Ft

  where E_e, E_i are the reversal potentials, g_e0, g_i0 are the average
  conductances, tau_e, tau_i are time constants, D_e, D_i are noise diffusion
  coefficients and Ft is a gaussian white noise of unit standard deviation.

  g_e and g_i are described by an Ornstein-Uhlenbeck (OU) stochastic process
  where tau_e and tau_i represent the "correlation" (if tau_e and tau_i are 
  zero, g_e and g_i are white noise).  The estimation of OU parameters can
  be made from the power spectrum:

     S(w) =  2 * D * tau^2 / (1 + w^2 * tau^2)

  and the diffusion coeffient D is estimated from the variance:

     D = 2 * sigma^2 / tau


NUMERICAL RESOLUTION

  The numerical scheme for integration of OU processes takes advantage 
  of the fact that these processes are gaussian, which led to an exact
  update rule independent of the time step dt (see Gillespie DT, Am J Phys 
  64: 225, 1996):

     x(t+dt) = x(t) * exp(-dt/tau) + A * N(0,1)

  where A = sqrt( D*tau/2 * (1-exp(-2*dt/tau)) ) and N(0,1) is a normal
  random number (avg=0, sigma=1)


IMPLEMENTATION

  This mechanism is implemented as a nonspecific current defined as a
  point process.


PARAMETERS

  The mechanism takes the following parameters:

     E_e = 0  (mV)		: reversal potential of excitatory conductance
     E_i = -75 (mV)		: reversal potential of inhibitory conductance

     g_e0 = 0.0121 (umho)	: average excitatory conductance
     g_i0 = 0.0573 (umho)	: average inhibitory conductance

     std_e = 0.0030 (umho)	: standard dev of excitatory conductance
     std_i = 0.0066 (umho)	: standard dev of inhibitory conductance

     tau_e = 2.728 (ms)		: time constant of excitatory conductance
     tau_i = 10.49 (ms)		: time constant of inhibitory conductance


Gfluct2: conductance cannot be negative


REFERENCE

  Destexhe, A., Rudolph, M., Fellous, J-M. and Sejnowski, T.J.  
  Fluctuating synaptic conductances recreate in-vivo--like activity in
  neocortical neurons. Neuroscience 107: 13-24 (2001).

  (electronic copy available at http://cns.iaf.cnrs-gif.fr)


  A. Destexhe, 1999

-----------------------------------------------------------------------------
ENDCOMMENT



INDEPENDENT {t FROM 0 TO 1 WITH 1 (ms)}

NEURON {
	POINT_PROCESS Gfluct2
	RANGE g_e, g_i, E_e, E_i, g_e0, g_i0, g_e1, g_i1
	RANGE std_e, std_i, tau_e, tau_i, D_e, D_i
	NONSPECIFIC_CURRENT i
}

UNITS {
	(nA) = (nanoamp) 
	(mV) = (millivolt)
	(umho) = (micromho)
}

PARAMETER {
	dt		(ms)

	E_e	= 0 	(mV)	: reversal potential of excitatory conductance
	E_i	= -75 	(mV)	: reversal potential of inhibitory conductance

	g_e0	= 0.0121 (umho)	: average excitatory conductance
	g_i0	= 0.0573 (umho)	: average inhibitory conductance

	std_e	= 0.0030 (umho)	: standard dev of excitatory conductance
	std_i	= 0.0066 (umho)	: standard dev of inhibitory conductance

	tau_e	= 2.728	(ms)	: time constant of excitatory conductance
	tau_i	= 10.49	(ms)	: time constant of inhibitory conductance
}

ASSIGNED {
	v	(mV)		: membrane voltage
	i 	(nA)		: fluctuating current
	g_e	(umho)		: total excitatory conductance
	g_i	(umho)		: total inhibitory conductance
	g_e1	(umho)		: fluctuating excitatory conductance
	g_i1	(umho)		: fluctuating inhibitory conductance
	D_e	(umho umho /ms) : excitatory diffusion coefficient
	D_i	(umho umho /ms) : inhibitory diffusion coefficient
	exp_e
	exp_i
	amp_e	(umho)
	amp_i	(umho)
}

INITIAL {
	g_e1 = 0
	g_i1 = 0
	if(tau_e != 0) {
		D_e = 2 * std_e * std_e / tau_e
		exp_e = exp(-dt/tau_e)
		amp_e = std_e * sqrt( (1-exp(-2*dt/tau_e)) )
	}
	if(tau_i != 0) {
		D_i = 2 * std_i * std_i / tau_i
		exp_i = exp(-dt/tau_i)
		amp_i = std_i * sqrt( (1-exp(-2*dt/tau_i)) )
	}
}

BREAKPOINT {
	SOLVE oup
	if(tau_e==0) {
	   g_e = std_e * normrand(0,1)
	}
	if(tau_i==0) {
	   g_i = std_i * normrand(0,1)
	}
	g_e = g_e0 + g_e1
	if(g_e < 0) { g_e = 0 }
	g_i = g_i0 + g_i1
	if(g_i < 0) { g_i = 0 }
	i = g_e * (v - E_e) + g_i * (v - E_i)
}


PROCEDURE oup() {		: use Scop function normrand(mean, std_dev)
   if(tau_e!=0) {
	g_e1 =  exp_e * g_e1 + amp_e * normrand(0,1)
   }
   if(tau_i!=0) {
	g_i1 =  exp_i * g_i1 + amp_i * normrand(0,1)
   }
}


PROCEDURE new_seed(seed) {		: procedure to set the seed
	set_seed(seed)
	VERBATIM
	  printf("Setting random generator with seed = %g\n", _lseed);
	ENDVERBATIM
}


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