This contains the models and functions as used in: Rossert C, Solinas S, D'Angelo E, Dean P and Porrill J (2014) Model cerebellar granule cells can faithfully transmit modulated firing rate signals. Front. Cell. Neurosci. 8:304. doi: 10.3389/fncel.2014.00304 The Model of the Granule cell used is from: Solinas S., Nieus T, d'Angelo E. (2010) A Realistic Large-Scale Model of the Cerebellum Granular Layer Predicts Circuit Spatio-Temporal Filtering Properties. Front Cell Neurosci. 2010;4:12. (This code is a snapshot from https://github.com/croessert/AnalyseGranCellRoessertEtAl14 Version 4e8ce79. Here, also the resulting simulation results can be found.) 1. run ./nrncompule to compile .mod files 2. To run the simulations and plot the figures execute the commands below. 3. Figures will be saved to: figs/Pub # FIGURE 1 python Plots_Openloop_Paper_Methods.py -o fig1 # FIGURE 2: python Plots_Openloop_Paper_Methods.py -o fig2 # FIGURE 3: python Plots_Openloop_Paper_Results.py -o fig3 # FIGURE 4: python Plots_Openloop_Paper_Results.py -o fig4 # FIGURE 5: python Plots_Openloop_Paper_Results.py -o fig4b # FIGURE 6: python Plots_Openloop_Paper_Results_syn.py -o fig5 # FIGURE 7: python Plots_Openloop_Paper_Results_syn.py -o fig6 # FIGURE 8: python Plots_Openloop_Paper_Results_syn.py -o fig7 # FIGURE 9: python Plots_Openloop_Paper_Results_syn.py -o fig8b # FIGURE 10: python Plots_Openloop_Paper_Results_syn.py -o fig8a Notes: - When running simulations with MPI the number of nodes has to be <= to number of cells, otherwise error is returned. All analysis scripts were implemented by Christian Rossert (christian.a [4t] roessert.de)