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tcm_params.py
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tcm_params.py
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"""
@author: Celine Soeiro
@description: Thalamo-Cortical microcircuit by AmirAli Farokhniaee and Madeleine M. Lowery - 2021
This info was found in the IEEE conference paper provided by the authors
# Abreviations:
PD: Parkinson Desease
S: Superficial layer
M: Medium layer
D: Deep layer
CI: Cortical Interneurons
TC: Thalamo-Cortical Relay Nucleus (TC)
TR: Thalamic Reticular Nucleus (TR)
PD: Poissonian Distribution
DBS: Deep Brain Stimulation
This model consists of populations of excitatory and inhibitory point-like spiking neurns in the motor cortex
and thalamus.
The excitatory neurons in the motor cortex were divided into 3 layers of pyramidal neurons (PN), surface (S),
middle (M) and deep (D).
The inhibitory neurons in the motor cortex were considered as a single population of cortical interneurons (CI).
The excitatory neurons in the thalamus formed the thalamocortical relay nucleus (TCR) and the inhibitory neurons
comprised the thalamic retcular nucleus (TRN).
S: Excitatory
M: Excitatory
D: Excitatory
CI: Inhibitory
TC: Excitatory
TR: Inhibitory
# NEURONS PER STRUCTURE
Layer S:
- Regular Spiking (RS)
- Intrinsically Bursting (IB)
Layer M:
- Regular Spiking (RS)
Layer D:
- Regular Spiking (RS)
- Intrinsically Bursting (IB)
CI:
- Fast spiking (FS)
- Low Threshold Spiking (LTS)
TCR:
- Thalamocortical (TC)
TRN:
- Thalamic Reticular (TR)
# SYNAPTIC INPUTS
Connections between the neurons in the network modal were considered as a
combination of Facilitating (F), Depressing (D) and Pseudo-Linear (P)
synapses with distribution:
F: 8%
D: 75%
P: 15%
Connection between layer D and Thamalus -> Pure Facilitating
Connection between TCR and Layer D -> Pure Depressing
# NETWORK CONNECTIONS
"""
import random
import numpy as np
from model_functions import poisson_spike_generator, tm_synapse_poisson_eq
def TCM_model_parameters():
random.seed(0)
random_factor = np.round(random.random(),2)
ms = 1000 # 1 second = 1000 miliseconds
dt = 100/ms # time step of 10 ms
simulation_time = 15 # simulation time in seconds
samp_freq = int(ms/dt) # sampling frequency in Hz
T = int((simulation_time)*ms) # Simulation time in ms with 1 extra second to reach the steady state and trash later
sim_steps = int(T/dt) # number of simulation steps
chop_till = 1*samp_freq; # Cut the first 1 seconds of the simulation
td_synapse = 1 # Synaptic transmission delay (fixed for all synapses in the TCM)
td_thalamus_cortex = 15 # time delay from thalamus to cortex (ms) (transmission time delay)
td_cortex_thalamus = 20 # time delay from cortex to thalamus (ms) (transmission time delay)
td_layers = 8 # time delay between the layers in cortex and nuclei in thalamus (ms) (PSC delay)
td_within_layers = 1 # time delay within a structure (ms)
# Time vector
if (td_thalamus_cortex >= td_cortex_thalamus):
t_vec = np.arange(td_thalamus_cortex + td_synapse, sim_steps)
else:
t_vec = np.arange(td_cortex_thalamus + td_synapse, sim_steps)
Idc_tune = 0.1 #
vr = -65 # membrane potential resting value
vp = 30 # membrane peak voltage value
hyperdirect_neurons = 0.1 # percentage of PNs that are hyperdirect -> For DBS
connectivity_factor_normal = 2.5 # For 100 neurons
connectivity_factor_PD = 5 # For 100 neurons
dbs_on = int(5*67) # value of synaptic fidelity when DBS on
dbs_off = 0 # value of synaptic fidelity when DBS off
dbs_amplitude = 1 # 1 uA
dbs_freq = 80
# Neuron quantities
qnt_neurons_s = 100 # Excitatory
qnt_neurons_m = 100 # Excitatory
qnt_neurons_d = 100 # Excitatory
qnt_neurons_ci = 100 # Inhibitory
qnt_neurons_tc = 100 # Excitatory
qnt_neurons_tr = 40 # Inhibitory
neuron_quantities = {
'S': qnt_neurons_s, # Number of neurons in Superficial layer
'M': qnt_neurons_m, # Number of neurons in Medium layer
'D': qnt_neurons_d, # Number of neurons in Deep layer
'CI': qnt_neurons_ci, # Number of IC neurons
'TC': qnt_neurons_tc, # Number of neurons in TC
'TR': qnt_neurons_tr, # Number of neurons in TR
'HD': qnt_neurons_d*hyperdirect_neurons, # Number of hyperdirect neurons
'total': qnt_neurons_s + qnt_neurons_m + qnt_neurons_d + qnt_neurons_ci + qnt_neurons_tc + qnt_neurons_tr,
}
# Distribution of neurons in each structure
neurons_s_1 = int(0.5*qnt_neurons_s) # RS neurons
neurons_s_2 = int(0.5*qnt_neurons_s) # IB neurons
neurons_m_1 = int(1*qnt_neurons_m) # RS neurons
neurons_m_2 = int(0*qnt_neurons_m) # IB neurons
neurons_d_1 = int(0.7*qnt_neurons_d) # RS neurons
neurons_d_2 = int(0.3*qnt_neurons_d) # IB neurons
neurons_ci_1 = int(0.5*qnt_neurons_ci) # FS neurons
neurons_ci_2 = int(0.5*qnt_neurons_ci) # LTS neurons
neurons_tr_1 = int(0.5*qnt_neurons_tr) # TR neurons
neurons_tr_2 = int(0.5*qnt_neurons_tr) # TR neurons
neurons_tc_1 = int(0.7*qnt_neurons_tc) # TC neurons
neurons_tc_2 = int(0.3*qnt_neurons_tc) # TC neurons
neuron_types_S = ['RS']*neurons_s_1 + ['IB']*neurons_s_2
neuron_types_M = ['RS']*neurons_m_1 + ['IB']*neurons_m_2
neuron_types_D = ['RS']*neurons_d_1 + ['IB']*neurons_d_2
neuron_types_CI = ['FS']*neurons_ci_1 + ['LTS']*neurons_ci_2
neuron_types_TC = ['TC']*neurons_ci_1 + ['TC']*neurons_ci_2
neuron_types_TR = ['TR']*neurons_ci_1 + ['TR']*neurons_ci_2
neuron_per_structure = {
'neurons_s_1': neurons_s_1, # Regular Spiking
'neurons_s_2': neurons_s_2, # Intrinsically Bursting
'neurons_m_1': neurons_m_1, # Regular Spiking
'neurons_m_2': neurons_m_2, # Regular Spiking
'neurons_d_1': neurons_d_1, # Regular Spiking
'neurons_d_2': neurons_d_2, # Intrinsically bursting
'neurons_ci_1': neurons_ci_1, # Fast spiking
'neurons_ci_2': neurons_ci_2, # Low threshold spiking
'neurons_tc_1': neurons_tc_1, # Reley
'neurons_tc_2': neurons_tc_2, # Relay
'neurons_tr_1': neurons_tr_1, # Reticular
'neurons_tr_2': neurons_tr_2, # Reticular
}
neuron_types_per_structure = {
'S': neuron_types_S,
'M': neuron_types_M,
'D': neuron_types_D,
'CI': neuron_types_CI,
'TC': neuron_types_TC,
'TR': neuron_types_TR
}
# Neuron parameters to model Izhikevich Neurons
# 0 - RS - Regular Spiking
# 1 - IB - Intrinsically Bursting
# 2 - FS - Fast Spiking
# 3 - LTS - Low Threshold Spiking
# 4 - TC (rel) - Thalamo-Cortical Relay
# 5 - TR - Thalamic Reticular
# =============================================================================
# Making neuron variations (all neurons must be different from one another)
# =============================================================================
# 0-RS 1-IB 2-FS 3-LTS 4-TC 5-TR
a = [0.02, 0.02, 0.1, 0.02, 0.02, 0.02]
b = [0.2, 0.2, 0.2, 0.25, 0.25, 0.25]
c = [-65, -55, -65, -65, -65, -65]
d = [8, 4, 2, 2, 0.05, 2.05]
r_s_1 = np.random.rand(1,neurons_s_1); r_s_2 = np.random.rand(1,neurons_s_2);
a_S = np.c_[a[0]*np.ones((1, neurons_s_1)), a[1]*np.ones((1, neurons_s_2))]
b_S = np.c_[b[0]*np.ones((1, neurons_s_1)), b[1]*np.ones((1, neurons_s_2))]
c_S = np.c_[c[0] + 15*r_s_1**2, c[1] + 15*r_s_2**2]
d_S = np.c_[d[0] - 0.6*r_s_1**2, d[1] -0.6*r_s_2**2]
r_m_1 = np.random.rand(1,neurons_m_1); r_m_2 = np.random.rand(1,neurons_m_2);
a_M = np.c_[a[0]*np.ones((1, neurons_m_1)), a[0]*np.ones((1, neurons_m_2))]
b_M = np.c_[b[0]*np.ones((1, neurons_m_1)), b[0]*np.ones((1, neurons_m_2))]
c_M = np.c_[c[0] + 15*r_m_1**2, c[0] + 15*r_m_2**2]
d_M = np.c_[d[0] - 0.6*r_m_1**2, d[0] -0.6*r_m_2**1]
r_d_1 = np.random.rand(1,neurons_d_1); r_d_2 = np.random.rand(1,neurons_d_2);
a_D = np.c_[a[0]*np.ones((1, neurons_d_1)), a[1]*np.ones((1, neurons_d_2))]
b_D = np.c_[b[0]*np.ones((1, neurons_d_1)), b[1]*np.ones((1, neurons_d_2))]
c_D = np.c_[c[0] + 15*r_d_1**2, c[1] + 15*r_d_2**2]
d_D = np.c_[d[0] - 0.6*r_d_1**2, d[1] - 0.6*r_d_2**2]
r_ci_1 = np.random.rand(1,neurons_ci_1); r_ci_2 = np.random.rand(1,neurons_ci_2);
a_CI = np.c_[a[2] + 0.008*r_ci_1, a[3] + 0.008*r_ci_2]
b_CI = np.c_[b[2] - 0.005*r_ci_1, b[3] - 0.005*r_ci_2]
c_CI = np.c_[c[2]*np.ones((1, neurons_ci_1)), c[3]*np.ones((1, neurons_ci_2))]
d_CI = np.c_[d[2]*np.ones((1, neurons_ci_1)), d[3]*np.ones((1, neurons_ci_2))]
r_tc_1 = np.random.rand(1,neurons_tc_1); r_tc_2 = np.random.rand(1,neurons_tc_2);
a_TC = np.c_[a[4] + 0.008*r_tc_1, a[4] + 0.008*r_tc_2]
b_TC = np.c_[b[4] - 0.005*r_tc_1, b[4] - 0.005*r_tc_2]
c_TC = np.c_[c[4]*np.ones((1, neurons_tc_1)), c[4]*np.ones((1, neurons_tc_2))]
d_TC = np.c_[d[4]*np.ones((1, neurons_tc_1)), d[4]*np.ones((1, neurons_tc_2))]
r_tr_1 = np.random.rand(1,neurons_tr_1); r_tr_2 = np.random.rand(1,neurons_tr_2);
a_TR = np.c_[a[5] + 0.008*r_tr_1, a[5] + 0.008*r_tr_2]
b_TR = np.c_[b[5] - 0.005*r_tr_1, b[5] - 0.005*r_tr_2]
c_TR = np.c_[c[5]*np.ones((1, neurons_tr_1)), c[5]*np.ones((1, neurons_tr_2))]
d_TR = np.c_[d[5]*np.ones((1, neurons_tr_1)), d[5]*np.ones((1, neurons_tr_2))]
neuron_params = {
'a_S': a_S,
'b_S': b_S,
'c_S': c_S,
'd_S': d_S,
'a_M': a_M,
'b_M': b_M,
'c_M': c_M,
'd_M': d_M,
'a_D': a_D,
'b_D': b_D,
'c_D': c_D,
'd_D': d_D,
'a_CI': a_CI,
'b_CI': b_CI,
'c_CI': c_CI,
'd_CI': d_CI,
'a_TR': a_TR,
'b_TR': b_TR,
'c_TR': c_TR,
'd_TR': d_TR,
'a_TC': a_TC,
'b_TC': b_TC,
'c_TC': c_TC,
'd_TC': d_TC,
}
# =============================================================================
# Noise terms
# =============================================================================
white_gaussian_add = 1.5; cn = 1; # additive white Gaussian noise strength
white_gaussian_thr = 0.5 # threshold white Gaussian noise strength
random_S = np.random.randn(qnt_neurons_s, samp_freq)
random_M = np.random.randn(qnt_neurons_m, samp_freq)
random_D = np.random.randn(qnt_neurons_d, samp_freq)
random_CI = np.random.randn(qnt_neurons_ci, samp_freq)
random_TR = np.random.randn(qnt_neurons_tr, samp_freq)
random_TC = np.random.randn(qnt_neurons_tc, samp_freq)
random_S_diff = np.random.randn(qnt_neurons_s, sim_steps - samp_freq)
random_M_diff = np.random.randn(qnt_neurons_m, sim_steps - samp_freq)
random_D_diff = np.random.randn(qnt_neurons_d, sim_steps - samp_freq)
random_CI_diff = np.random.randn(qnt_neurons_ci, sim_steps - samp_freq)
random_TR_diff = np.random.randn(qnt_neurons_tr, sim_steps - samp_freq)
random_TC_diff = np.random.randn(qnt_neurons_tc, sim_steps - samp_freq)
zeta_S_E = white_gaussian_thr*np.c_[ random_S, cn*random_S_diff ]
zeta_M_E = white_gaussian_thr*np.c_[ random_M, cn*random_M_diff ]
zeta_D_E = white_gaussian_thr*np.c_[random_D, cn*random_D_diff ]
zeta_CI_I = white_gaussian_thr*np.c_[random_CI, cn*random_CI_diff ]
zeta_TR_I = white_gaussian_thr*np.c_[random_TR, cn*random_TR_diff ]
zeta_TC_E = white_gaussian_thr*np.c_[random_TC, cn*random_TC_diff ]
kisi_S_E = white_gaussian_add*np.c_[ random_S, cn*random_S_diff ]
kisi_M_E = white_gaussian_add*np.c_[ random_M, cn*random_M_diff ]
kisi_D_E = white_gaussian_add*np.c_[random_D, cn*random_D_diff ]
kisi_CI_I = white_gaussian_add*np.c_[ random_CI, cn*random_CI_diff ]
kisi_TC_E = white_gaussian_add*np.c_[ random_TC, cn*random_TC_diff ]
kisi_TR_I = white_gaussian_add*np.c_[ random_TR, cn*random_TR_diff ]
noise = {
'kisi_S': kisi_S_E,
'kisi_M': kisi_M_E,
'kisi_D': kisi_D_E,
'kisi_CI': kisi_CI_I,
'kisi_TC': kisi_TC_E,
'kisi_TR': kisi_TR_I,
'zeta_S': zeta_S_E,
'zeta_M': zeta_M_E,
'zeta_D': zeta_D_E,
'zeta_CI': zeta_CI_I,
'zeta_TC': zeta_TC_E,
'zeta_TR': zeta_TR_I,
}
# Bias currents (Subthreshold CTX and Suprethreshold THM) - Will be used in the neurons
Idc = [3.6, 3.7, 3.9, 0.5, 0.7]
I_S_1 = Idc[0]
I_S_2 = Idc[1]
I_M_1 = Idc[0]
I_M_2 = Idc[0]
I_D_1 = Idc[0]
I_D_2 = Idc[1]
I_CI_1 = Idc[2]
I_CI_2 = Idc[3]
I_TR_1 = Idc[4]
I_TR_2 = Idc[4]
I_TC_1 = Idc[4]
I_TC_2 = Idc[4]
I_S = np.concatenate((I_S_1*np.ones((1, neurons_s_1)), I_S_2*np.ones((1, neurons_s_2))), axis=None)
I_M = np.concatenate((I_M_1*np.ones((1, neurons_m_1)), I_M_2*np.ones((1, neurons_m_2))), axis=None)
I_D = np.concatenate((I_D_1*np.ones((1, neurons_d_1)), I_D_2*np.ones((1, neurons_d_2))), axis=None)
I_CI = np.concatenate((I_CI_1*np.ones((1, neurons_ci_1)), I_CI_2*np.ones((1, neurons_ci_2))), axis=None)
I_TR = np.concatenate((I_TR_1*np.ones((1, neurons_tr_1)), I_TR_2*np.ones((1, neurons_tr_2))), axis=None)
I_TC = np.concatenate((I_TC_1*np.ones((1, neurons_tc_1)), I_TC_2*np.ones((1, neurons_tc_2))), axis=None)
currents_per_structure = {
'S': I_S,
'M': I_M,
'D': I_D,
'CI': I_CI,
'TR': I_TR,
'TC': I_TC,
}
# =============================================================================
# SYNAPSE INITIAL VALUES
# =============================================================================
p = 3
synapse_params_excitatory = {
't_f': [670, 17, 326],
't_d': [138, 671, 329],
'U': [0.09, 0.5, 0.29],
'distribution': [0.2, 0.63, 0.17],
'distribution_T_D': [0, 1, 0], # Depressing
'distribution_D_T': [1, 0, 0], # Facilitating
't_s': 3,
}
synapse_params_inhibitory = {
't_f': [376, 21, 62],
't_d': [45, 706, 144],
'U': [0.016, 0.25, 0.32],
'distribution': [0.08, 0.75, 0.17],
't_s': 11,
}
# =============================================================================
# POISSONIAN BACKGROUND ACTIVITY
# - Poissonian postsynaptic input to the E and I neurons for all layers
# =============================================================================
w_ps = 1
I_ps_S = np.zeros((2, sim_steps))
I_ps_M = np.zeros((2, sim_steps))
I_ps_D = np.zeros((2, sim_steps))
I_ps_CI = np.zeros((2, sim_steps))
I_ps_TR = np.zeros((2, sim_steps))
I_ps_TC = np.zeros((2, sim_steps))
ps_firing_rates = np.zeros((1,6))
for i in range(6):
ps_firing_rates[0][i] = poisson_firing = 20 + 2 * np.random.randn()
W_ps = [[w_ps * np.random.randn() for _ in range(2)] for _ in range(6)]
[spike_PS, I_PS] = poisson_spike_generator(num_steps = sim_steps,
dt = dt,
num_neurons = 1,
thalamic_firing_rate = poisson_firing,
current_value=None)
# Mudar I_E e I_I para gerar um array e colocar o I_PS_x para receber esse array * o peso
I_E = tm_synapse_poisson_eq(spikes = spike_PS,
sim_steps = sim_steps,
t_delay = td_synapse,
dt = dt,
t_f = synapse_params_excitatory['t_f'],
t_d = synapse_params_excitatory['t_d'],
t_s = synapse_params_excitatory['t_s'],
U = synapse_params_excitatory['U'],
A = synapse_params_excitatory['distribution'],
time = t_vec)
I_I = tm_synapse_poisson_eq(spikes = spike_PS,
sim_steps = sim_steps,
t_delay = td_synapse,
dt = dt,
t_f = synapse_params_inhibitory['t_f'],
t_d = synapse_params_inhibitory['t_d'],
t_s = synapse_params_inhibitory['t_s'],
U = synapse_params_inhibitory['U'],
A = synapse_params_inhibitory['distribution'],
time = t_vec)
# Excitatory
I_ps_S[0] = W_ps[0][0]*I_E
I_ps_M[0] = W_ps[1][0]*I_E
I_ps_D[0] = W_ps[2][0]*I_E
I_ps_CI[0] = W_ps[3][0]*I_E
I_ps_TR[0] = W_ps[4][0]*I_E
I_ps_TC[0] = W_ps[5][0]*I_E
# Inhibitory
I_ps_S[1] = W_ps[0][1]*I_I
I_ps_M[1] = W_ps[1][1]*I_I
I_ps_D[1] = W_ps[2][1]*I_I
I_ps_CI[1] = W_ps[3][1]*I_I
I_ps_TR[1] = W_ps[4][1]*I_I
I_ps_TC[1] = W_ps[5][1]*I_I
I_ps = {
'S': I_ps_S,
'M': I_ps_M,
'D': I_ps_D,
'CI': I_ps_CI,
'TC': I_ps_TC,
'TR': I_ps_TR,
}
# =============================================================================
# DBS
# =============================================================================
# synaptic_fidelity = 0 # DBS off
synaptic_fidelity = 5*67 # DBS on
fid_CI = np.abs(1*synaptic_fidelity)
fid_S = np.abs(1*synaptic_fidelity)
fid_M = np.abs(0*synaptic_fidelity)
fid_D = np.abs(1*synaptic_fidelity)
fid_TC = np.abs(1*synaptic_fidelity)
fid_TR = np.abs(1*synaptic_fidelity)
nS = 1; nM = 0; nCI = 1; nTC = 1; nTR = 1;
# Percentage of neurons that have synaptic contact with hyperdirect neurons axon arbors
neurons_connected_with_hyperdirect_neurons = {
'S': nS*hyperdirect_neurons*qnt_neurons_s, # percentage of S neurons that have synaptic contact with hyperdirect neurons axon arbors
'M': nM*hyperdirect_neurons*qnt_neurons_m, # percentage of M neurons that have synaptic contact with hyperdirect neurons axon arbors
'D': hyperdirect_neurons*qnt_neurons_d,
'CI': nCI*hyperdirect_neurons*qnt_neurons_ci,# percentage of CI neurons that have synaptic contact with hyperdirect neurons axon arbors
'TR': nTR*hyperdirect_neurons*qnt_neurons_tr, # percentage of R neurons that have synaptic contact with hyperdirect neurons axon arbors
'TC': nTC*hyperdirect_neurons*qnt_neurons_tc, # percentage of N neurons that have synaptic contact with hyperdirect neurons axon arbors
}
synaptic_fidelity_layers = {
'S': fid_S,
'M': fid_M,
'D': fid_D,
'CI': fid_CI,
'TC': fid_TC,
'TR': fid_TR,
}
# Export all dictionaries
data = {
'hyperdirect_neurons': hyperdirect_neurons, # Percentage of PNs affected in D by DBS
'simulation_time': simulation_time, # simulation time in seconds (must be a multiplacative of 3 under PD+DBS condition)
'simulation_time_ms': T,
'dt': dt, # time step
'sampling_frequency': samp_freq, # in Hz
'simulation_steps': sim_steps,
'chop_till': chop_till, # cut the first 1s of simulation
'time_delay_between_layers': td_layers,
'time_delay_within_layers': td_within_layers,
'time_delay_thalamus_cortex': td_thalamus_cortex,
'time_delay_cortex_thalamus': td_cortex_thalamus,
'time_delay_synapse': td_synapse,
'time_vector': t_vec,
'connectivity_factor_normal_condition': connectivity_factor_normal,
'connectivity_factor_PD_condition': connectivity_factor_PD,
'vr': vr,
'vp': vp,
'Idc_tune': Idc_tune,
'neuron_types_per_structure': neuron_types_per_structure,
'neuron_quantities': neuron_quantities,
'neuron_per_structure': neuron_per_structure,
'neurons_connected_with_hyperdirect_neurons': neurons_connected_with_hyperdirect_neurons,
'neuron_paramaters': neuron_params,
'bias_current': Idc,
'currents_per_structure': currents_per_structure,
'noise': noise,
'random_factor': random_factor,
'synapse_params_excitatory': synapse_params_excitatory,
'synapse_params_inhibitory': synapse_params_inhibitory,
'synapse_total_params': p,
'dbs': [dbs_off, dbs_on],
'poisson_bg_activity': I_ps,
'synaptic_fidelity_layers': synaptic_fidelity_layers,
'dbs_amplitude': dbs_amplitude,
'dbs_freq': dbs_freq
}
return data
def coupling_matrix_normal():
neuron_quantities = TCM_model_parameters()['neuron_quantities']
facilitating_factor = TCM_model_parameters()['connectivity_factor_normal_condition']
n_s = neuron_quantities['S']
n_m = neuron_quantities['M']
n_d = neuron_quantities['D']
n_ci = neuron_quantities['CI']
n_tc = neuron_quantities['TC']
n_tr = neuron_quantities['TR']
initial = 0
final = 1
interval = final - initial
# =============================================================================
# These are to restrict the normalized distribution variance or deviation from the mean
# =============================================================================
r_s = initial + interval*np.random.rand(n_s,1)
r_m = initial + interval*np.random.rand(n_m, 1)
r_d = initial + interval*np.random.rand(n_d, 1)
r_ci = initial + interval*np.random.rand(n_ci, 1)
r_tr = initial + interval*np.random.rand(n_tr, 1)
r_tc = initial + interval*np.random.rand(n_tc, 1)
# =============================================================================
# COUPLING STRENGTHs within each structure (The same in Normal and PD)
# EE -> Excitatory to Excitatory
# II -> Inhibitory to Inhibitory
# =============================================================================
## Layer S (was -1e-2 for IEEE paper)
aee_s = -1e1/facilitating_factor; W_EE_s = aee_s*r_s;
## Layer M (was -1e-2 for IEEE paper)
aee_m = -1e1/facilitating_factor; W_EE_m = aee_m*r_m;
## Layer D (was -1e-2 for IEEE paper)
aee_d = -1e1/facilitating_factor; W_EE_d = aee_d*r_d;
## INs
aii_ci = -5e2/facilitating_factor; W_II_ci = aii_ci*r_ci;
## Reticular cells
aii_tr = -5e1/facilitating_factor; W_II_tr = aii_tr*r_tr;
## Relay cells
aee_tc = 0/facilitating_factor; W_EE_tc = aee_tc*r_tc;
# =============================================================================
# COUPLING STRENGTHs between structures
# =============================================================================
# S
# =============================================================================
# M to S coupling
aee_sm = 1e1/facilitating_factor; W_EE_s_m = aee_sm*r_s;
# D to S coupling
aee_sd = 5e2/facilitating_factor; W_EE_s_d = aee_sd*r_s;
# CI to S coupling
aei_sci = -5e2/facilitating_factor; W_EI_s_ci = aei_sci*r_s;
# Reticular to S coupling
aei_str = 0/facilitating_factor; W_EI_s_tr = aei_str*r_s;
# Rel. to S couplings
aee_stc = 0/facilitating_factor; W_EE_s_tc = aee_stc*r_s;
# =============================================================================
# M
# =============================================================================
# S to M
aee_ms = 3e2/facilitating_factor; W_EE_m_s = aee_ms*r_m;
# D to M couplings
aee_md = 0/facilitating_factor; W_EE_m_d = aee_md*r_m;
# CI to M couplings
aei_mci = -3e2/facilitating_factor; W_EI_m_ci = aei_mci*r_m;
# Ret. to M couplings
aei_mtr = 0/facilitating_factor; W_EI_m_tr = aei_mtr*r_m;
# Rel. to M couplings
aee_mtc = 0/facilitating_factor; W_EE_m_tc = aee_mtc*r_m;
# =============================================================================
# D
# =============================================================================
# S to D couplings
aee_ds = 3e2/facilitating_factor; W_EE_d_s = aee_ds*r_d;
# M to D couplings
aee_dm = 0/facilitating_factor; W_EE_d_m = aee_dm*r_d;
# CI to D couplings
aei_dci = -7.5e3/facilitating_factor; W_EI_d_ci = aei_dci*r_d;
# Ret. to D couplings
aei_dtr = 0/facilitating_factor; W_EI_d_tr = aei_dtr*r_d;
# Rel. to D couplings
aee_dtc = 1e1/facilitating_factor; W_EE_d_tc = aee_dtc*r_d;
# =============================================================================
# CI
# =============================================================================
# S to CIs couplings
aie_CIs = 2e2/facilitating_factor; W_IE_ci_s = aie_CIs*r_ci;
# M to CIs couplings
aie_CIm = 2e2/facilitating_factor; W_IE_ci_m = aie_CIm*r_ci;
# D to CIs couplings
aie_CId = 2e2/facilitating_factor; W_IE_ci_d = aie_CId*r_ci;
# Ret. to CIs couplings
aii_CITR = 0/facilitating_factor; W_II_ci_tr = aii_CITR*r_ci;
# Rel. to CIs couplings
aie_CITC = 1e1/facilitating_factor; W_IE_ci_tc = aie_CITC*r_ci;
# =============================================================================
# TR
# =============================================================================
# S to Ret couplings
aie_trs = 0/facilitating_factor; W_IE_tr_s = aie_trs*r_tr;
# M to Ret couplings
aie_trm = 0/facilitating_factor; W_IE_tr_m = aie_trm*r_tr;
# D to Ret couplings
aie_trd = 7e2/facilitating_factor; W_IE_tr_d = aie_trd*r_tr;
# CI to Ret couplings
aii_trci = 0/facilitating_factor; W_II_tr_ci = aii_trci*r_tr;
# Rel. to Ret couplings
aie_trtc = 1e3/facilitating_factor; W_IE_tr_tc = aie_trtc*r_tr;
# =============================================================================
# TC
# =============================================================================
# S to Rel couplings
aee_tcs = 0/facilitating_factor; W_EE_tc_s = aee_tcs*r_tc;
# M to Rel couplings
aee_tcm = 0/facilitating_factor; W_EE_tc_m = aee_tcm*r_tc;
# D to Rel couplings
aee_tcd = 7e2/facilitating_factor; W_EE_tc_d = aee_tcd*r_tc;
# CI to Rel couplings
aei_tcci = 0/facilitating_factor; W_EI_tc_ci = aei_tcci*r_tc;
# Ret to Rel couplings
aei_tctr = -5e2/facilitating_factor; W_EI_tc_tr = aei_tctr*r_tc;
# Initialize matrix (6 structures -> 6x6 matrix)
matrix = np.zeros((6,6))
# Populating the matrix
# 0 -> Layer S
# 1 -> Layer M
# 2 -> Layer D
# 3 -> CI
# 4 -> TR
# 5 -> TC
# Main Diagonal
matrix[0][0] = np.mean(W_EE_s)
matrix[1][1] = np.mean(W_EE_m)
matrix[2][2] = np.mean(W_EE_d)
matrix[3][3] = np.mean(W_II_ci)
matrix[4][4] = np.mean(W_EE_tc)
matrix[5][5] = np.mean(W_II_tr)
# First column - Layer S
matrix[1][0] = np.mean(W_EE_s_m)
matrix[2][0] = np.mean(W_EE_s_d)
matrix[3][0] = np.mean(W_EI_s_ci)
matrix[4][0] = np.mean(W_EE_s_tc)
matrix[5][0] = np.mean(W_EI_s_tr)
# Second column - Layer M
matrix[0][1] = np.mean(W_EE_m_s)
matrix[2][1] = np.mean(W_EE_m_d)
matrix[3][1] = np.mean(W_EI_m_ci)
matrix[4][1] = np.mean(W_EE_m_tc)
matrix[5][1] = np.mean(W_EI_m_tr)
# Thid column - Layer D
matrix[0][2] = np.mean(W_EE_d_s)
matrix[1][2] = np.mean(W_EE_d_m)
matrix[3][2] = np.mean(W_EI_d_ci)
matrix[4][2] = np.mean(W_EE_d_tc)
matrix[5][2] = np.mean(W_EI_d_tr)
# Fourth column - Structure CI
matrix[0][3] = np.mean(W_IE_ci_s)
matrix[1][3] = np.mean(W_IE_ci_m)
matrix[2][3] = np.mean(W_IE_ci_d)
matrix[4][3] = np.mean(W_IE_ci_tc)
matrix[5][3] = np.mean(W_II_ci_tr)
# Fifth column - Structure TC
matrix[0][4] = np.mean(W_EE_tc_s)
matrix[1][4] = np.mean(W_EE_tc_m)
matrix[2][4] = np.mean(W_EE_tc_d)
matrix[3][4] = np.mean(W_EI_tc_ci)
matrix[5][4] = np.mean(W_EI_tc_tr)
# Sixth column - Structure TR
matrix[0][5] = np.mean(W_IE_tr_s)
matrix[1][5] = np.mean(W_IE_tr_m)
matrix[2][5] = np.mean(W_IE_tr_d)
matrix[3][5] = np.mean(W_II_tr_ci)
matrix[4][5] = np.mean(W_IE_tr_tc)
weights = {
'W_EE_s': W_EE_s,
'W_EE_m': W_EE_m,
'W_EE_d': W_EE_d,
'W_II_ci': W_II_ci,
'W_II_tr': W_II_tr,
'W_EE_tc': W_EE_tc,
'W_EE_s_m': W_EE_s_m,
'W_EE_s_d': W_EE_s_d,
'W_EI_s_ci': W_EI_s_ci,
'W_EI_s_tr': W_EI_s_tr,
'W_EE_s_tc': W_EE_s_tc,
'W_EE_m_s': W_EE_m_s,
'W_EE_m_d': W_EE_m_d,
'W_EI_m_ci': W_EI_m_ci,
'W_EI_m_tr': W_EI_m_tr,
'W_EE_m_tc': W_EE_m_tc,
'W_EE_d_s': W_EE_d_s,
'W_EE_d_m': W_EE_d_m,
'W_EI_d_ci': W_EI_d_ci,
'W_EI_d_tr': W_EI_d_tr,
'W_EE_d_tc': W_EE_d_tc,
'W_IE_ci_s': W_IE_ci_s,
'W_IE_ci_m': W_IE_ci_m,
'W_IE_ci_d': W_IE_ci_d,
'W_II_ci_tr': W_II_ci_tr,
'W_IE_ci_tc': W_IE_ci_tc,
'W_IE_tr_s': W_IE_tr_s,
'W_IE_tr_m': W_IE_tr_m,
'W_IE_tr_d': W_IE_tr_d,
'W_II_tr_ci': W_II_tr_ci,
'W_IE_tr_tc': W_IE_tr_tc,
'W_EE_tc_s': W_EE_tc_s,
'W_EE_tc_m': W_EE_tc_m,
'W_EE_tc_d': W_EE_tc_d,
'W_EI_tc_ci': W_EI_tc_ci,
'W_EI_tc_tr': W_EI_tc_tr,
}
return { 'matrix': matrix, 'weights': weights }
def coupling_matrix_PD():
neuron_quantities = TCM_model_parameters()['neuron_quantities']
facilitating_factor = TCM_model_parameters()['connectivity_factor_PD_condition']
n_s = neuron_quantities['S']
n_m = neuron_quantities['M']
n_d = neuron_quantities['D']
n_ci = neuron_quantities['CI']
n_tc = neuron_quantities['TC']
n_tr = neuron_quantities['TR']
initial = 0
final = 1
interval = final - initial
# =============================================================================
# These are to restrict the normalized distribution variance or deviation from the mean
# =============================================================================
r_s = initial + interval*np.random.rand(n_s, 1)
r_m = initial + interval*np.random.rand(n_m, 1)
r_d = initial + interval*np.random.rand(n_d, 1)
r_ci = initial + interval*np.random.rand(n_ci, 1)
r_tr = initial + interval*np.random.rand(n_tr, 1)
r_tc = initial + interval*np.random.rand(n_tc, 1)
# =============================================================================
# COUPLING STRENGTHs within each structure (The same in Normal and PD)
# EE -> Excitatory to Excitatory
# II -> Inhibitory to Inhibitory
# =============================================================================
## Layer S (was -1e-2 for IEEE paper)
aee_s = -5e1/facilitating_factor; W_EE_s = aee_s*r_s;
## Layer M (was -1e-2 for IEEE paper)
aee_m = -5e1/facilitating_factor; W_EE_m = aee_m*r_m;
## Layer D (was -1e-2 for IEEE paper)
aee_d = -5e1/facilitating_factor; W_EE_d = aee_d*r_d;
## INs
aii_ci = -5e1/facilitating_factor; W_II_ci = aii_ci*r_ci;
## Reticular cells
aii_tr = -5e1/facilitating_factor; W_II_tr = aii_tr*r_tr;
## Relay cells
aee_tc = 0/facilitating_factor; W_EE_tc = aee_tc*r_tc;
# =============================================================================
# COUPLING STRENGTHs between structures
# =============================================================================
# S
# =============================================================================
# M to S coupling
aee_sm = 3e2/facilitating_factor; W_EE_s_m = aee_sm*r_s;
# D to S coupling
aee_sd = 5e2/facilitating_factor; W_EE_s_d = aee_sd*r_s;
# CI (INs) to S coupling
aei_sci = -7.5e2/facilitating_factor; W_EI_s_ci = aei_sci*r_s;
# Reticular to S coupling
aei_str = 0/facilitating_factor; W_EI_s_tr = aei_str*r_s;
# Rel. to S couplings
aee_stc = 0/facilitating_factor; W_EE_s_tc = aee_stc*r_s;
# =============================================================================
# M
# =============================================================================
# S to M
aee_ms = 1e1/facilitating_factor; W_EE_m_s = aee_ms*r_m;
# D to M couplings
aee_md = 0/facilitating_factor; W_EE_m_d = aee_md*r_m;
# INs to M couplings
aei_mci = -7.5e2/facilitating_factor; W_EI_m_ci = aei_mci*r_m;
# Ret. to M couplings
aei_mtr = 0/facilitating_factor; W_EI_m_tr = aei_mtr*r_m;
# Rel. to M couplings
aee_mtc = 0/facilitating_factor; W_EE_m_tc = aee_mtc*r_m;
# =============================================================================
# D
# =============================================================================
# S to D couplings
aee_ds = 3e2/facilitating_factor; W_EE_d_s = aee_ds*r_d;
# M to D couplings
aee_dm = 0/facilitating_factor; W_EE_d_m = aee_dm*r_d;
# INs to D couplings
aei_dci = -5e3/facilitating_factor; W_EI_d_ci = aei_dci*r_d;
# Ret. to D couplings
aei_dtr = 0/facilitating_factor; W_EI_d_tr = aei_dtr*r_d;
# Rel. to D couplings
aee_dtc = 1e3/facilitating_factor; W_EE_d_tc = aee_dtc*r_d;
# =============================================================================
# INs (CI)
# =============================================================================
# S to INs couplings
aie_cis = 2e2/facilitating_factor; W_IE_ci_s = aie_cis*r_ci;
# M to INs couplings
aie_cim = 2e2/facilitating_factor; W_IE_ci_m = aie_cim*r_ci;
# D to INs couplings
aie_cid = 2e2/facilitating_factor; W_IE_ci_d = aie_cid*r_ci;
# Ret. to INs couplings
aii_citr = 0/facilitating_factor; W_II_ci_tr = aii_citr*r_ci;
# Rel. to INs couplings
aie_citc = 1e3/facilitating_factor; W_IE_ci_tc = aie_citc*r_ci;
# =============================================================================
# Reticular
# =============================================================================
# S to Ret couplings
aie_trs = 0/facilitating_factor; W_IE_tr_s = aie_trs*r_tr;
# M to Ret couplings
aie_trm = 0/facilitating_factor; W_IE_tr_m = aie_trm*r_tr;
# D to Ret couplings
aie_trd = 1e2/facilitating_factor; W_IE_tr_d = aie_trd*r_tr;
# Ret. Ret INs couplings
aii_trci = 0/facilitating_factor; W_II_tr_ci = aii_trci*r_tr;
# Rel. Ret INs couplings
aie_trtc = 5e2/facilitating_factor; W_IE_tr_tc = aie_trtc*r_tr;
# =============================================================================
# Rele
# =============================================================================
# S to Rel couplings
aee_tcs = 0/facilitating_factor; W_EE_tc_s = aee_tcs*r_tc;
# M to Rel couplings
aee_tcm = 0/facilitating_factor; W_EE_tc_m = aee_tcm*r_tc;
# D to Rel couplings
aee_tcd = 1e2/facilitating_factor; W_EE_tc_d = aee_tcd*r_tc;
# INs to Rel couplings
aei_tcci = 0/facilitating_factor; W_EI_tc_ci = aei_tcci*r_tc;
# Ret to Rel couplings
aei_tctr = -2.5e3/facilitating_factor; W_EI_tc_tr = aei_tctr*r_tc;
# Initialize matrix (6 structures -> 6x6 matrix)
matrix = np.zeros((6,6))
# Populating the matrix
# Main Diagonal
matrix[0][0] = np.mean(W_EE_s)
matrix[1][1] = np.mean(W_EE_m)
matrix[2][2] = np.mean(W_EE_d)
matrix[3][3] = np.mean(W_II_ci)
matrix[4][4] = np.mean(W_EE_tc)
matrix[5][5] = np.mean(W_II_tr)
# First column - Layer S
matrix[1][0] = np.mean(W_EE_s_m)
matrix[2][0] = np.mean(W_EE_s_d)
matrix[3][0] = np.mean(W_EI_s_ci)
matrix[4][0] = np.mean(W_EE_s_tc)
matrix[5][0] = np.mean(W_EI_s_tr)
# Second column - Layer M
matrix[0][1] = np.mean(W_EE_m_s)
matrix[2][1] = np.mean(W_EE_m_d)
matrix[3][1] = np.mean(W_EI_m_ci)
matrix[4][1] = np.mean(W_EE_m_tc)
matrix[5][1] = np.mean(W_EI_m_tr)
# Thid column - Layer D
matrix[0][2] = np.mean(W_EE_d_s)
matrix[1][2] = np.mean(W_EE_d_m)
matrix[3][2] = np.mean(W_EI_d_ci)
matrix[4][2] = np.mean(W_EE_d_tc)
matrix[5][2] = np.mean(W_EI_d_tr)
# Fourth column - Structure CI
matrix[0][3] = np.mean(W_IE_ci_s)
matrix[1][3] = np.mean(W_IE_ci_m)
matrix[2][3] = np.mean(W_IE_ci_d)
matrix[4][3] = np.mean(W_IE_ci_tc)
matrix[5][3] = np.mean(W_II_ci_tr)
# Fifth column - Structure TCR
matrix[0][4] = np.mean(W_EE_tc_s)
matrix[1][4] = np.mean(W_EE_tc_m)
matrix[2][4] = np.mean(W_EE_tc_d)
matrix[3][4] = np.mean(W_EI_tc_ci)
matrix[5][4] = np.mean(W_EI_tc_tr)
# Sixth column - Structure TRN
matrix[0][5] = np.mean(W_IE_tr_s)
matrix[1][5] = np.mean(W_IE_tr_m)
matrix[2][5] = np.mean(W_IE_tr_d)
matrix[3][5] = np.mean(W_II_tr_ci)
matrix[4][5] = np.mean(W_IE_tr_tc)
weights = {
'W_EE_s': W_EE_s,
'W_EE_m': W_EE_m,
'W_EE_d': W_EE_d,
'W_II_ci': W_II_ci,
'W_II_tr': W_II_tr,
'W_EE_tc': W_EE_tc,
'W_EE_s_m': W_EE_s_m,
'W_EE_s_d': W_EE_s_d,
'W_EI_s_ci': W_EI_s_ci,
'W_EI_s_tr': W_EI_s_tr,
'W_EE_s_tc': W_EE_s_tc,
'W_EE_m_s': W_EE_m_s,
'W_EE_m_d': W_EE_m_d,
'W_EI_m_ci': W_EI_m_ci,
'W_EI_m_tr': W_EI_m_tr,
'W_EE_m_tc': W_EE_m_tc,
'W_EE_d_s': W_EE_d_s,
'W_EE_d_m': W_EE_d_m,
'W_EI_d_ci': W_EI_d_ci,
'W_EI_d_tr': W_EI_d_tr,
'W_EE_d_tc': W_EE_d_tc,
'W_IE_ci_s': W_IE_ci_s,
'W_IE_ci_m': W_IE_ci_m,
'W_IE_ci_d': W_IE_ci_d,
'W_II_ci_tr': W_II_ci_tr,
'W_IE_ci_tc': W_IE_ci_tc,
'W_IE_tr_s': W_IE_tr_s,
'W_IE_tr_m': W_IE_tr_m,
'W_IE_tr_d': W_IE_tr_d,
'W_II_tr_ci': W_II_tr_ci,
'W_IE_tr_tc': W_IE_tr_tc,
'W_EE_tc_s': W_EE_tc_s,
'W_EE_tc_m': W_EE_tc_m,
'W_EE_tc_d': W_EE_tc_d,
'W_EI_tc_ci': W_EI_tc_ci,
'W_EI_tc_tr': W_EI_tc_tr,
}
return { 'matrix': matrix, 'weights': weights }