Dentate gyrus network model (Tejada et al 2014)

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Accession:155568
" ... Here we adapted an existing computational model of the dentate gyrus (J Neurophysiol 93: 437-453, 2005) by replacing the reduced granule cell models with morphologically detailed models coming from (3D) reconstructions of mature cells. ... Different fractions of the mature granule cell models were replaced by morphologically reconstructed models of newborn dentate granule cells from animals with PILO-induced Status Epilepticus, which have apical dendritic alterations and spine loss, and control animals, which do not have these alterations. This complex arrangement of cells and processes allowed us to study the combined effect of mossy fiber sprouting, altered apical dendritic tree and dendritic spine loss in newborn granule cells on the excitability of the dentate gyrus model. Our simulations suggest that alterations in the apical dendritic tree and dendritic spine loss in newborn granule cells have opposing effects on the excitability of the dentate gyrus after Status Epilepticus. Apical dendritic alterations potentiate the increase of excitability provoked by mossy fiber sprouting while spine loss curtails this increase. "
References:
1 . Tejada J, Garcia-Cairasco N, Roque AC (2014) Combined role of seizure-induced dendritic morphology alterations and spine loss in newborn granule cells with mossy fiber sprouting on the hyperexcitability of a computer model of the dentate gyrus. PLoS Comput Biol 10:e1003601 [PubMed]
2 . Tejada J, Arisi GM, García-Cairasco N, Roque AC (2012) Morphological alterations in newly born dentate gyrus granule cells that emerge after status epilepticus contribute to make them less excitable. PLoS One 7:e40726 [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):
Gene(s):
Transmitter(s):
Simulation Environment: NEURON;
Model Concept(s): Activity Patterns; Spatio-temporal Activity Patterns; Epilepsy; Neurogenesis;
Implementer(s): Tejada, Julian [julian.tejada at gmail.com];
Search NeuronDB for information about:  Dentate gyrus granule GLU cell; I L high threshold; I T low threshold; I K; I h; I K,Ca; I Calcium; I Potassium;
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TejadaEtAl2014
readme.html
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NumberOfDendrites.dat
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SimCtrl.ses
                            
TITLE hyperde3.mod  
 
COMMENT
Chen K, Aradi I, Thon N, Eghbal-Ahmadi M, Baram TZ, Soltesz I: Persistently
modified
h-channels after complex febrile seizures convert the seizure-induced
enhancement of
inhibition to hyperexcitability. Nature Medicine, 7(3) pp. 331-337, 2001.
(modeling by Ildiko Aradi, iaradi@uci.edu)
distal dendritic Ih channel kinetics for both HT and Control anlimals
ENDCOMMENT
 
UNITS {
        (mA) =(milliamp)
        (mV) =(millivolt)
        (uF) = (microfarad)
	(molar) = (1/liter)
	(nA) = (nanoamp)
	(mM) = (millimolar)
	(um) = (micron)
	FARADAY = 96520 (coul)
	R = 8.3134	(joule/degC)
}
 
? interface 
NEURON { 
SUFFIX hyperde3 
USEION hyf READ ehyf WRITE ihyf VALENCE 1
USEION hys READ ehys WRITE ihys VALENCE 1
USEION hyhtf READ ehyhtf WRITE ihyhtf VALENCE 1
USEION hyhts READ ehyhts WRITE ihyhts VALENCE 1
RANGE  ghyf, ghys, ghyhtf, ghyhts
RANGE ghyfbar, ghysbar, ghyhtfbar, ghyhtsbar
RANGE hyfinf, hysinf, hyftau, hystau
RANGE hyhtfinf, hyhtsinf, hyhtftau, hyhtstau, ihyf, ihys
}
 
INDEPENDENT {t FROM 0 TO 100 WITH 100 (ms)}
 
PARAMETER {
      v (mV) 
      celsius = 6.3 (degC)
      dt (ms) 

	ghyfbar (mho/cm2)
	ghysbar (mho/cm2)
	ehyf (mV)
	ehys (mV)
	ghyhtfbar (mho/cm2)
	ghyhtsbar (mho/cm2)
	ehyhtf (mV)
	ehyhts (mV)
}
 
STATE {
	hyf hys hyhtf hyhts
}
 
ASSIGNED {
         
  
	ghyf (mho/cm2)
 	ghys (mho/cm2)

	ghyhtf (mho/cm2)
	ghyhts (mho/cm2)

  
	ihyf (mA/cm2)
	ihys (mA/cm2)
	ihyhtf (mA/cm2)
	ihyhts (mA/cm2)

	hyfinf hysinf hyhtfinf hyhtsinf
 	hyftau (ms) hystau (ms) hyhtftau (ms) hyhtstau (ms)
	hyfexp hysexp hyhtfexp hyhtsexp     
} 

? currents
BREAKPOINT {

	SOLVE states

	ghyf = ghyfbar * hyf*hyf
	ihyf = ghyf * (v-ehyf)
	ghys = ghysbar * hys*hys
	ihys = ghys * (v-ehys)

	ghyhtf = ghyhtfbar * hyhtf* hyhtf
	ihyhtf = ghyhtf * (v-ehyhtf)
	ghyhts = ghyhtsbar * hyhts* hyhts
	ihyhts = ghyhts * (v-ehyhts)
		
		}
 
UNITSOFF
 
INITIAL {
	trates(v)
	
	hyf = hyfinf
	hys = hysinf
	hyhtf = hyhtfinf
	hyhts = hyhtsinf
	VERBATIM
	return;
	ENDVERBATIM
}

? states
PROCEDURE states() {	:Computes state variables m, h, and n 
        trates(v)	:      at the current v and dt.
        
        hyf = hyf + hyfexp*(hyfinf-hyf)
        hys = hys + hysexp*(hysinf-hys)
	  hyhtf = hyhtf + hyhtfexp*(hyhtfinf-hyhtf)
	  hyhts = hyhts + hyhtsexp*(hyhtsinf-hyhts)

        VERBATIM
        return 0;
        ENDVERBATIM
}
 
LOCAL q10

? rates
PROCEDURE rates(v) {  :Computes rate and other constants at current v.
                      :Call once from HOC to initialize inf at resting v.
        LOCAL  alpha, beta, sum
       q10 = 3^((celsius - 6.3)/10)
       
	:"hyf" FAST CONTROL Hype activation system
	hyfinf =  1 / (1 + exp( (v+91)/10 ))
	hyftau = 14.9 + 14.1 / (1+exp(-(v+95.2)/0.5))

	:"hys" SLOW CONTROL Hype activation system
	hysinf =  1 / (1 + exp( (v+91)/10 ))
	hystau = 80 + 172.7 / (1+exp(-(v+59.3)/-0.83))

		:"hyhtf" FAST HT Hypeht activation system
	hyhtfinf =  1 / (1 + exp( (v+87)/10 ))
	hyhtftau = 23.2 + 16.1 / (1+exp(-(v+91.2)/0.83))

		:"hyhts" SLOW HT Hypeht activation system
	hyhtsinf =  1 / (1 + exp( (v+87)/10 ))
	hyhtstau = 227.3 + 170.7*exp(-0.5*((v+80.4)/11)^2)
}
 
PROCEDURE trates(v) {  :Computes rate and other constants at current v.
                      :Call once from HOC to initialize inf at resting v.
	LOCAL tinc
      TABLE hyfinf, hyhtfinf, hyfexp, hyhtfexp, hyftau, hyhtftau, 
		hysinf, hyhtsinf, hysexp, hyhtsexp, hystau, hyhtstau	
	DEPEND dt, celsius FROM -120 TO 100 WITH 220
                           
	rates(v)	: not consistently executed from here if usetable_hh == 1
		: so don't expect the tau values to be tracking along with
		: the inf values in hoc

	       tinc = -dt * q10
        
        hyfexp = 1 - exp(tinc/hyftau)
	  hysexp = 1 - exp(tinc/hystau)
	  hyhtfexp = 1 - exp(tinc/hyhtftau)
	  hyhtsexp = 1 - exp(tinc/hyhtstau)
}
 
FUNCTION vtrap(x,y) {  :Traps for 0 in denominator of rate eqns.
        if (fabs(x/y) < 1e-6) {
                vtrap = y*(1 - x/y/2)
        }else{  
                vtrap = x/(exp(x/y) - 1)
        }
}
 
UNITSON


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