Parallel odor processing by mitral and middle tufted cells in the OB (Cavarretta et al 2016, 2018)

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Accession:240116
"[...] experimental findings suggest that MC and mTC may encode parallel and complementary odor representations. We have analyzed the functional roles of these pathways by using a morphologically and physiologically realistic three-dimensional model to explore the MC and mTC microcircuits in the glomerular layer and deeper plexiform layers. [...]"
Reference:
1 . Cavarretta F, Burton SD, Igarashi KM, Shepherd GM, Hines ML, Migliore M (2018) Parallel odor processing by mitral and middle tufted cells in the olfactory bulb. Sci Rep 8:7625 [PubMed]
2 . Cavarretta F, Marasco A, Hines ML, Shepherd GM, Migliore M (2016) Glomerular and Mitral-Granule Cell Microcircuits Coordinate Temporal and Spatial Information Processing in the Olfactory Bulb. Front Comput Neurosci 10:67 [PubMed]
Citations  Citation Browser
Model Information (Click on a link to find other models with that property)
Model Type: Realistic Network;
Brain Region(s)/Organism: Olfactory bulb;
Cell Type(s): Olfactory bulb main tufted middle GLU cell; Olfactory bulb main interneuron granule MC GABA cell; Olfactory bulb main interneuron granule TC GABA cell; Olfactory bulb (accessory) mitral cell; Olfactory bulb main tufted cell external; Olfactory bulb short axon cell;
Channel(s): I A; I Na,t; I_Ks; I K;
Gap Junctions: Gap junctions;
Receptor(s): AMPA; GabaA; NMDA;
Gene(s):
Transmitter(s): Glutamate; Gaba;
Simulation Environment: NEURON;
Model Concept(s): Action Potentials; Action Potential Initiation; Active Dendrites; Long-term Synaptic Plasticity; Synaptic Integration; Synchronization; Pattern Recognition; Spatio-temporal Activity Patterns; Temporal Pattern Generation; Sensory coding; Sensory processing; Olfaction;
Implementer(s): Cavarretta, Francesco [francescocavarretta at hotmail.it]; Hines, Michael [Michael.Hines at Yale.edu];
Search NeuronDB for information about:  Olfactory bulb main interneuron granule MC GABA cell; Olfactory bulb main tufted middle GLU cell; Olfactory bulb main interneuron granule TC GABA cell; GabaA; AMPA; NMDA; I Na,t; I A; I K; I_Ks; Gaba; Glutamate;
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modeldb-bulb3d
vis
bulbdef.py
bulbdict.py
bulbgui.py
bulbvis.py
cellreader.py
cellwriter.py
cfg27.py
dummysyns.txt
Eta.txt *
firing.py
geodist.py
geodist.txt
ggid2type.txt
gidfunc.py
glomdist.py
granules.py
granules.txt
graphmeat.py
growdef.py *
ipsc.py
ispkdata.py
Kod.txt *
misc.py
Nod.txt *
odors.py
odstim2.txt *
pad.txt *
realgloms.txt *
spikes.py
spikesreader.py
spk2gd.py
spk2weight.py
spkgraph.py
winflag.txt
                            
from spikesreader import SpikesReader as SR
filename = 'sync-no-learning-hc.spk2'
fileout = '../out-no-learning-hc.txt'
base1=78*5
base2=78*10+635
base3=37*5
base4=37*10+635
def spk(gid):
  return len(sr.retrieve(gid))*1000.0/sr.tstop

with open(fileout, 'w') as fo:
  sr = SR(filename)
  for i in range(10):
    if i < 5:
      fo.write('%g\t'%spk(base1+i))
    else:
      fo.write('\t')
    fo.write('%g\t'%spk(base2+i))
    if i < 5:
      fo.write('%g\t'%spk(base3+i))
    else:
      fo.write('\t')
    fo.write('%g'%spk(base4+i))
    fo.write('\n')