Exemplo n.º 1
0
def create_cell(cell_id):
    # type: (str) -> Cell
    """Create a NeuroML Cell.

    Initialises the cell with these properties assigning IDs where applicable:
    - Morphology: "morphology"
    - BiophysicalProperties: "biophys"
    - MembraneProperties
    - IntracellularProperties
    - SegmentGroups: "all", "soma_group", "dendrite_group", "axon_group" which
      can be used to include all, soma, dendrite, and axon segments
      respectively.

    Note that since this cell does not currently include a segment in its
    morphology, it is *not* a valid NeuroML construct. Use the `add_segment`
    function to add segments. `add_segment` will also populate the default
    segment groups this creates.

    :param cell_id: id of the cell
    :type cell_id: str
    :returns: created cell object of type neuroml.Cell

    """
    cell = Cell(id=cell_id)
    cell.morphology = Morphology(id='morphology')
    membrane_properties = MembraneProperties()
    intracellular_properties = IntracellularProperties()

    cell.biophysical_properties = BiophysicalProperties(
        id="biophys",
        intracellular_properties=intracellular_properties,
        membrane_properties=membrane_properties)

    seg_group_all = SegmentGroup(id='all')
    seg_group_soma = SegmentGroup(
        id='soma_group',
        neuro_lex_id=neuro_lex_ids["soma"],
        notes="Default soma segment group for the cell")
    seg_group_axon = SegmentGroup(
        id='axon_group',
        neuro_lex_id=neuro_lex_ids["axon"],
        notes="Default axon segment group for the cell")
    seg_group_dend = SegmentGroup(
        id='dendrite_group',
        neuro_lex_id=neuro_lex_ids["dend"],
        notes="Default dendrite segment group for the cell")
    cell.morphology.segment_groups.append(seg_group_all)
    cell.morphology.segment_groups.append(seg_group_soma)
    cell.morphology.segment_groups.append(seg_group_axon)
    cell.morphology.segment_groups.append(seg_group_dend)

    return cell
Exemplo n.º 2
0
def run():

    cell_num = 2
    
    nml_doc = NeuroMLDocument(id="demo_attraction")

    net = Network(id="demo_attraction")
    nml_doc.networks.append(net)

    for cell_id in range(0,cell_num):

        cell = Cell(id="Cell_%i"%cell_id)

        cell.morphology = generate_with_morphology(db_name,cfg_file)
        
        nml_doc.cells.append(cell)

        pop = Population(id="Pop_%i"%cell_id, component=cell.id, type="populationList")
        net.populations.append(pop)
       
        inst = Instance(id="0")
        pop.instances.append(inst)

        inst.location = Location(x=0, y=0, z=0)
    
        
    
    #######   Write to file  ######    
 
     	nml_file = 'demo_attraction/demo_attraction.net.nml'
     	writers.NeuroMLWriter.write(nml_doc, nml_file)
    
    	print("Written network file to: "+nml_file)


    ###### Validate the NeuroML ######    

    from neuroml.utils import validate_neuroml2

    validate_neuroml2(nml_file)
def create_object(name, color, x=0, y=0, z=0):

    obj = Cell()
    obj.name = name
    obj.id = name
    nml_doc.cells.append(obj)
    morphology = Morphology(id='mm')
    obj.morphology = morphology

    pop = Population(id="Pop_%s" % name,
                     component=obj.id,
                     type="populationList",
                     size=0)
    net.populations.append(pop)
    populations[name] = pop
    pop.properties.append(Property(tag="color", value=color))
    add_instance(name, x, y, z)

    sg = SegmentGroup(id='all')
    obj.morphology.segment_groups.append(sg)

    return obj
Exemplo n.º 4
0
    def create_generic_neuron_cell(self):

        self.generic_neuron_cell = Cell(id="GenericNeuronCell")

        morphology = Morphology()
        morphology.id = "morphology_" + self.generic_neuron_cell.id

        self.generic_neuron_cell.morphology = morphology

        prox_point = Point3DWithDiam(
            x="0",
            y="0",
            z="0",
            diameter=self.get_bioparameter("cell_diameter").value)
        dist_point = Point3DWithDiam(
            x="0",
            y="0",
            z="0",
            diameter=self.get_bioparameter("cell_diameter").value)

        segment = Segment(id="0",
                          name="soma",
                          proximal=prox_point,
                          distal=dist_point)

        morphology.segments.append(segment)

        self.generic_neuron_cell.biophysical_properties = BiophysicalProperties(
            id="biophys_" + self.generic_neuron_cell.id)

        mp = MembraneProperties()
        self.generic_neuron_cell.biophysical_properties.membrane_properties = mp

        mp.init_memb_potentials.append(
            InitMembPotential(
                value=self.get_bioparameter("initial_memb_pot").value))

        mp.specific_capacitances.append(
            SpecificCapacitance(value=self.get_bioparameter(
                "neuron_specific_capacitance").value))

        mp.spike_threshes.append(
            SpikeThresh(
                value=self.get_bioparameter("neuron_spike_thresh").value))

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_leak_cond_density").value,
                           id="Leak_all",
                           ion_channel="Leak",
                           erev=self.get_bioparameter("leak_erev").value,
                           ion="non_specific"))

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_k_slow_cond_density").value,
                           id="k_slow_all",
                           ion_channel="k_slow",
                           erev=self.get_bioparameter("k_slow_erev").value,
                           ion="k"))
        '''
        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("neuron_k_fast_cond_density").value, 
                                                   id="k_fast_all", 
                                                   ion_channel="k_fast", 
                                                   erev=self.get_bioparameter("k_fast_erev").value,
                                                   ion="k"))'''

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_ca_simple_cond_density").value,
                           id="ca_simple_all",
                           ion_channel="ca_simple",
                           erev=self.get_bioparameter("ca_simple_erev").value,
                           ion="ca"))

        ip = IntracellularProperties()
        self.generic_neuron_cell.biophysical_properties.intracellular_properties = ip

        # NOTE: resistivity/axial resistance not used for single compartment cell models, so value irrelevant!
        ip.resistivities.append(Resistivity(value="0.1 kohm_cm"))

        # NOTE: Ca reversal potential not calculated by Nernst, so initial_ext_concentration value irrelevant!
        species = Species(id="ca",
                          ion="ca",
                          concentration_model="CaPool",
                          initial_concentration="0 mM",
                          initial_ext_concentration="2E-6 mol_per_cm3")

        ip.species.append(species)
Exemplo n.º 5
0
    def create_models(self):

        self.generic_cell = Cell(id = "GenericCell")

        morphology = Morphology()
        morphology.id = "morphology_"+self.generic_cell.id

        self.generic_cell.morphology = morphology

        prox_point = Point3DWithDiam(x="0", y="0", z="0", diameter=self.get_bioparameter("cell_diameter").value)
        dist_point = Point3DWithDiam(x="0", y="0", z=self.get_bioparameter("cell_length").value, diameter=self.get_bioparameter("cell_diameter").value)

        segment = Segment(id="0",
                          name="soma",
                          proximal = prox_point, 
                          distal = dist_point)

        morphology.segments.append(segment)

        self.generic_cell.biophysical_properties = BiophysicalProperties(id="biophys_"+self.generic_cell.id)

        mp = MembraneProperties()
        self.generic_cell.biophysical_properties.membrane_properties = mp

        mp.init_memb_potentials.append(InitMembPotential(value=self.get_bioparameter("initial_memb_pot").value))

        mp.specific_capacitances.append(SpecificCapacitance(value=self.get_bioparameter("specific_capacitance").value))

        mp.spike_threshes.append(SpikeThresh(value=self.get_bioparameter("spike_thresh").value))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("leak_cond_density").value, 
                                                   id="Leak_all", 
                                                   ion_channel="Leak", 
                                                   erev=self.get_bioparameter("leak_erev").value,
                                                   ion="non_specific"))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("k_slow_cond_density").value, 
                                                   id="k_slow_all", 
                                                   ion_channel="k_slow", 
                                                   erev=self.get_bioparameter("k_slow_erev").value,
                                                   ion="k"))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("k_fast_cond_density").value, 
                                                   id="k_fast_all", 
                                                   ion_channel="k_fast", 
                                                   erev=self.get_bioparameter("k_fast_erev").value,
                                                   ion="k"))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("ca_boyle_cond_density").value, 
                                                   id="ca_boyle_all", 
                                                   ion_channel="ca_boyle", 
                                                   erev=self.get_bioparameter("ca_boyle_erev").value,
                                                   ion="ca"))

        ip = IntracellularProperties()
        self.generic_cell.biophysical_properties.intracellular_properties = ip

        # NOTE: resistivity/axial resistance not used for single compartment cell models, so value irrelevant!
        ip.resistivities.append(Resistivity(value="0.1 kohm_cm"))


        # NOTE: Ca reversal potential not calculated by Nernst, so initial_ext_concentration value irrelevant!
        species = Species(id="ca", 
                          ion="ca",
                          concentration_model="CaPool",
                          initial_concentration="0 mM",
                          initial_ext_concentration="2E-6 mol_per_cm3")

        ip.species.append(species)


        self.exc_syn = GradedSynapse(id="exc_syn",
                                conductance =        self.get_bioparameter("exc_syn_conductance").value,
                                delta =              self.get_bioparameter("exc_syn_delta").value,
                                Vth =                self.get_bioparameter("exc_syn_vth").value,
                                erev =               self.get_bioparameter("exc_syn_erev").value,
                                k =                  self.get_bioparameter("exc_syn_k").value)


        self.inh_syn = GradedSynapse(id="inh_syn",
                                conductance =        self.get_bioparameter("inh_syn_conductance").value,
                                delta =              self.get_bioparameter("inh_syn_delta").value,
                                Vth =                self.get_bioparameter("inh_syn_vth").value,
                                erev =               self.get_bioparameter("inh_syn_erev").value,
                                k =                  self.get_bioparameter("inh_syn_k").value)

        self.elec_syn = GapJunction(id="elec_syn",
                               conductance =    self.get_bioparameter("elec_syn_gbase").value)


        self.offset_current = PulseGenerator(id="offset_current",
                                delay=self.get_bioparameter("unphysiological_offset_current_del").value,
                                duration=self.get_bioparameter("unphysiological_offset_current_dur").value,
                                amplitude=self.get_bioparameter("unphysiological_offset_current").value)
Exemplo n.º 6
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def neuroml_single_cell(skeleton_id, nodes, pre, post):
    """ Encapsulate a single skeleton into a NeuroML Cell instance.
        
        skeleton_id: the ID of the skeleton to which all nodes belong.
        nodes: a dictionary of node ID vs tuple of node parent ID, location as a tuple of 3 floats, and radius. In nanometers.
        pre: a dictionary of node ID vs list of connector ID
        post: a dictionary of node ID vs list of connector ID

        Returns a Cell with id=skeleton_id.
    """

    # Collect the children of every node
    successors = defaultdict(list) # parent node ID vs list of children node IDs
    rootID = None
    for nodeID, props in nodes.iteritems():
        parentID = props[0]
        if not parentID:
            rootID = nodeID
            continue
        successors[parentID].append(nodeID) 

    # Cache of Point3DWithDiam
    points = {}

    def asPoint(nodeID):
        """ Return the node as a Point3DWithDiam, in micrometers. """
        p = points.get(nodeID)
        if not p:
            props = nodes[nodeID]
            radius = props[2]
            if radius < 0:
                radius = 0.1 # FUTURE Will have to change
            loc = props[1]
            # Point in micrometers
            p = Point3DWithDiam(loc[0] / 1000.0, loc[1] / 1000.0, loc[2] / 1000.0, radius)
            points[nodeID] = p
        return p

    
    # Starting from the root node, iterate towards the end nodes, adding a segment
    # for each parent-child pair.

    segments = []
    segment_id = 1
    todo = [rootID]

    # VERY CONFUSINGLY, the Segment.parent is a SegmentParent with the same id as the parent Segment. An unseemly overheady way to reference the parent Segment.

    while todo:
        nodeID = todo.pop()
        children = successors[nodeID]
        if not children:
            continue
        p1 = asPoint(nodeID)
        parent = segments[-1] if segments else None
        segment_parent = SegmentParent(segments=parent.id) if parent else None
        for childID in children:
            p2 = asPoint(childID)
            segment_id += 1
            segment = Segment(proximal=p1, distal=p2, parent=segment_parent)
            segment.id = segment_id
            segment.name = "%s-%s" % (nodeID, childID)
            segments.append(segment)
            todo.append(childID)

    # Pack the segments into a Cell
    morphology = Morphology()
    morphology.segments.extend(segments)
    morphology.id = "Skeleton #%s" % skeleton_id

    # Synapses: TODO requires input from Padraig Gleeson

    cell = Cell()
    cell.name = 'Cell'
    cell.id = skeleton_id
    cell.morphology = morphology

    return cell
Exemplo n.º 7
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    def create_neuron_cell(self, cell_name, morphology):
    
        cell = Cell(id = cell_name)
        
        cell.notes = "Cell model created by c302 with custom electrical parameters"
    
        cell.morphology = morphology


        cell.biophysical_properties = BiophysicalProperties(id="biophys_"+cell.id)

        mp = MembraneProperties()
        cell.biophysical_properties.membrane_properties = mp

        mp.init_memb_potentials.append(InitMembPotential(value=self.get_bioparameter("initial_memb_pot").value))

        mp.specific_capacitances.append(SpecificCapacitance(value=self.get_bioparameter("specific_capacitance").value))

        mp.spike_threshes.append(SpikeThresh(value=self.get_bioparameter("neuron_spike_thresh").value))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("neuron_leak_cond_density").value, 
                                                   id="Leak_all", 
                                                   ion_channel="Leak", 
                                                   erev=self.get_bioparameter("leak_erev").value,
                                                   ion="non_specific"))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("neuron_k_slow_cond_density").value, 
                                                   id="k_slow_all", 
                                                   ion_channel="k_slow", 
                                                   erev=self.get_bioparameter("k_slow_erev").value,
                                                   ion="k"))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("neuron_k_fast_cond_density").value, 
                                                   id="k_fast_all", 
                                                   ion_channel="k_fast", 
                                                   erev=self.get_bioparameter("k_fast_erev").value,
                                                   ion="k"))

        mp.channel_densities.append(ChannelDensity(cond_density=self.get_bioparameter("neuron_ca_boyle_cond_density").value, 
                                                   id="ca_boyle_all", 
                                                   ion_channel="ca_boyle", 
                                                   erev=self.get_bioparameter("ca_boyle_erev").value,
                                                   ion="ca"))

        ip = IntracellularProperties()
        cell.biophysical_properties.intracellular_properties = ip

        # NOTE: resistivity/axial resistance not used for single compartment cell models, so value irrelevant!
        ip.resistivities.append(Resistivity(value=self.get_bioparameter("resistivity").value))


        # NOTE: Ca reversal potential not calculated by Nernst, so initial_ext_concentration value irrelevant!
        species = Species(id="ca", 
                          ion="ca",
                          concentration_model="CaPool",
                          initial_concentration="0 mM",
                          initial_ext_concentration="2E-6 mol_per_cm3")

        ip.species.append(species)
        
        return cell
Exemplo n.º 8
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def neuroml_single_cell(skeleton_id, nodes, pre, post):
    """ Encapsulate a single skeleton into a NeuroML Cell instance.
        
        skeleton_id: the ID of the skeleton to which all nodes belong.
        nodes: a dictionary of node ID vs tuple of node parent ID, location as a tuple of 3 floats, and radius. In nanometers.
        pre: a dictionary of node ID vs list of connector ID
        post: a dictionary of node ID vs list of connector ID

        Returns a Cell with id=skeleton_id.
    """

    # Collect the children of every node
    successors = defaultdict(
        list)  # parent node ID vs list of children node IDs
    rootID = None
    for nodeID, props in nodes.iteritems():
        parentID = props[0]
        if not parentID:
            rootID = nodeID
            continue
        successors[parentID].append(nodeID)

    # Cache of Point3DWithDiam
    points = {}

    def asPoint(nodeID):
        """ Return the node as a Point3DWithDiam, in micrometers. """
        p = points.get(nodeID)
        if not p:
            props = nodes[nodeID]
            radius = props[2]
            if radius < 0:
                radius = 0.1  # FUTURE Will have to change
            loc = props[1]
            # Point in micrometers
            p = Point3DWithDiam(loc[0] / 1000.0, loc[1] / 1000.0,
                                loc[2] / 1000.0, radius)
            points[nodeID] = p
        return p

    # Starting from the root node, iterate towards the end nodes, adding a segment
    # for each parent-child pair.

    segments = []
    segment_id = 1
    todo = [rootID]

    # VERY CONFUSINGLY, the Segment.parent is a SegmentParent with the same id as the parent Segment. An unseemly overheady way to reference the parent Segment.

    while todo:
        nodeID = todo.pop()
        children = successors[nodeID]
        if not children:
            continue
        p1 = asPoint(nodeID)
        parent = segments[-1] if segments else None
        segment_parent = SegmentParent(segments=parent.id) if parent else None
        for childID in children:
            p2 = asPoint(childID)
            segment_id += 1
            segment = Segment(proximal=p1, distal=p2, parent=segment_parent)
            segment.id = segment_id
            segment.name = "%s-%s" % (nodeID, childID)
            segments.append(segment)
            todo.append(childID)

    # Pack the segments into a Cell
    morphology = Morphology()
    morphology.segments.extend(segments)
    morphology.id = "Skeleton #%s" % skeleton_id

    # Synapses: TODO requires input from Padraig Gleeson

    cell = Cell()
    cell.name = 'Cell'
    cell.id = skeleton_id
    cell.morphology = morphology

    return cell
Exemplo n.º 9
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def run():

    cell_num = 10
    x_size = 500
    y_size = 500
    z_size = 500
    
    nml_doc = NeuroMLDocument(id="Net3DExample")

    syn0 = ExpOneSynapse(id="syn0", gbase="65nS", erev="0mV", tau_decay="3ms")
    nml_doc.exp_one_synapses.append(syn0)
    
    net = Network(id="Net3D")
    nml_doc.networks.append(net)

    
    proj_count = 0
    #conn_count = 0

    for cell_id in range(0,cell_num):

        cell = Cell(id="Cell_%i"%cell_id)

        cell.morphology = generateRandomMorphology()
        
        nml_doc.cells.append(cell)

        pop = Population(id="Pop_%i"%cell_id, component=cell.id, type="populationList")
        net.populations.append(pop)

        inst = Instance(id="0")
        pop.instances.append(inst)

        inst.location = Location(x=str(x_size*random()), y=str(y_size*random()), z=str(z_size*random()))
    
        prob_connection = 0.5
        for post in range(0,cell_num):
            if post is not cell_id and random() <= prob_connection:

                from_pop = "Pop_%i"%cell_id
                to_pop = "Pop_%i"%post

                pre_seg_id = 0
                post_seg_id = 1
                

                projection = Projection(id="Proj_%i"%proj_count, presynaptic_population=from_pop, postsynaptic_population=to_pop, synapse=syn0.id)
                net.projections.append(projection)
                connection = Connection(id=proj_count, \
                                        pre_cell_id="%s[%i]"%(from_pop,0), \
                                        pre_segment_id=pre_seg_id, \
                                        pre_fraction_along=random(),
                                        post_cell_id="%s[%i]"%(to_pop,0), \
                                        post_segment_id=post_seg_id,
                                        post_fraction_along=random())

                projection.connections.append(connection)
                proj_count += 1
                #net.synaptic_connections.append(SynapticConnection(from_="%s[%i]"%(from_pop,0),  to="%s[%i]"%(to_pop,0)))
        
    
    #######   Write to file  ######    
 
    nml_file = 'tmp/net3d.nml'
    writers.NeuroMLWriter.write(nml_doc, nml_file)
    
    print("Written network file to: "+nml_file)


    ###### Validate the NeuroML ######    

    from neuroml.utils import validate_neuroml2

    validate_neuroml2(nml_file)
Exemplo n.º 10
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def run():

    cell_num = 10
    x_size = 500
    y_size = 500
    z_size = 500

    nml_doc = NeuroMLDocument(id="Net3DExample")

    syn0 = ExpOneSynapse(id="syn0", gbase="65nS", erev="0mV", tau_decay="3ms")
    nml_doc.exp_one_synapses.append(syn0)

    net = Network(id="Net3D")
    nml_doc.networks.append(net)

    proj_count = 0
    #conn_count = 0

    for cell_id in range(0, cell_num):

        cell = Cell(id="Cell_%i" % cell_id)

        cell.morphology = generateRandomMorphology()

        nml_doc.cells.append(cell)

        pop = Population(id="Pop_%i" % cell_id,
                         component=cell.id,
                         type="populationList")
        net.populations.append(pop)
        pop.properties.append(Property(tag="color", value="1 0 0"))

        inst = Instance(id="0")
        pop.instances.append(inst)

        inst.location = Location(x=str(x_size * random()),
                                 y=str(y_size * random()),
                                 z=str(z_size * random()))

        prob_connection = 0.5
        for post in range(0, cell_num):
            if post is not cell_id and random() <= prob_connection:

                from_pop = "Pop_%i" % cell_id
                to_pop = "Pop_%i" % post

                pre_seg_id = 0
                post_seg_id = 1

                projection = Projection(id="Proj_%i" % proj_count,
                                        presynaptic_population=from_pop,
                                        postsynaptic_population=to_pop,
                                        synapse=syn0.id)
                net.projections.append(projection)
                connection = Connection(id=proj_count, \
                                        pre_cell_id="%s[%i]"%(from_pop,0), \
                                        pre_segment_id=pre_seg_id, \
                                        pre_fraction_along=random(),
                                        post_cell_id="%s[%i]"%(to_pop,0), \
                                        post_segment_id=post_seg_id,
                                        post_fraction_along=random())

                projection.connections.append(connection)
                proj_count += 1
                #net.synaptic_connections.append(SynapticConnection(from_="%s[%i]"%(from_pop,0),  to="%s[%i]"%(to_pop,0)))

    #######   Write to file  ######

    nml_file = 'tmp/net3d.nml'
    writers.NeuroMLWriter.write(nml_doc, nml_file)

    print("Written network file to: " + nml_file)

    ###### Validate the NeuroML ######

    from neuroml.utils import validate_neuroml2

    validate_neuroml2(nml_file)
Exemplo n.º 11
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def create_cell():
    """Create the cell.

    :returns: name of the cell nml file
    """
    # Create the nml file and add the ion channels
    hh_cell_doc = NeuroMLDocument(id="cell", notes="HH cell")
    hh_cell_fn = "HH_example_cell.nml"
    hh_cell_doc.includes.append(IncludeType(href=create_na_channel()))
    hh_cell_doc.includes.append(IncludeType(href=create_k_channel()))
    hh_cell_doc.includes.append(IncludeType(href=create_leak_channel()))

    # Define a cell
    hh_cell = Cell(id="hh_cell", notes="A single compartment HH cell")

    # Define its biophysical properties
    bio_prop = BiophysicalProperties(id="hh_b_prop")
    #  notes="Biophysical properties for HH cell")

    # Membrane properties are a type of biophysical properties
    mem_prop = MembraneProperties()
    # Add membrane properties to the biophysical properties
    bio_prop.membrane_properties = mem_prop

    # Append to cell
    hh_cell.biophysical_properties = bio_prop

    # Channel density for Na channel
    na_channel_density = ChannelDensity(id="na_channels", cond_density="120.0 mS_per_cm2", erev="50.0 mV", ion="na", ion_channel="na_channel")
    mem_prop.channel_densities.append(na_channel_density)

    # Channel density for k channel
    k_channel_density = ChannelDensity(id="k_channels", cond_density="360 S_per_m2", erev="-77mV", ion="k", ion_channel="k_channel")
    mem_prop.channel_densities.append(k_channel_density)

    # Leak channel
    leak_channel_density = ChannelDensity(id="leak_channels", cond_density="3.0 S_per_m2", erev="-54.3mV", ion="non_specific", ion_channel="leak_channel")
    mem_prop.channel_densities.append(leak_channel_density)

    # Other membrane properties
    mem_prop.spike_threshes.append(SpikeThresh(value="-20mV"))
    mem_prop.specific_capacitances.append(SpecificCapacitance(value="1.0 uF_per_cm2"))
    mem_prop.init_memb_potentials.append(InitMembPotential(value="-65mV"))

    intra_prop = IntracellularProperties()
    intra_prop.resistivities.append(Resistivity(value="0.03 kohm_cm"))

    # Add to biological properties
    bio_prop.intracellular_properties = intra_prop

    # Morphology
    morph = Morphology(id="hh_cell_morph")
    #  notes="Simple morphology for the HH cell")
    seg = Segment(id="0", name="soma", notes="Soma segment")
    # We want a diameter such that area is 1000 micro meter^2
    # surface area of a sphere is 4pi r^2 = 4pi diam^2
    diam = math.sqrt(1000 / math.pi)
    proximal = distal = Point3DWithDiam(x="0", y="0", z="0", diameter=str(diam))
    seg.proximal = proximal
    seg.distal = distal
    morph.segments.append(seg)
    hh_cell.morphology = morph

    hh_cell_doc.cells.append(hh_cell)
    pynml.write_neuroml2_file(nml2_doc=hh_cell_doc, nml2_file_name=hh_cell_fn, validate=True)
    return hh_cell_fn
Exemplo n.º 12
0
    def create_neuron_cell(self, cell_name, morphology):

        cell = Cell(id=cell_name)

        cell.notes = "Cell model created by c302 with custom electrical parameters"

        cell.morphology = morphology

        cell.biophysical_properties = BiophysicalProperties(id="biophys_" +
                                                            cell.id)

        mp = MembraneProperties()
        cell.biophysical_properties.membrane_properties = mp

        mp.init_memb_potentials.append(
            InitMembPotential(
                value=self.get_bioparameter("initial_memb_pot").value))

        mp.specific_capacitances.append(
            SpecificCapacitance(
                value=self.get_bioparameter("specific_capacitance").value))

        mp.spike_threshes.append(
            SpikeThresh(
                value=self.get_bioparameter("neuron_spike_thresh").value))

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_leak_cond_density").value,
                           id="Leak_all",
                           ion_channel="Leak",
                           erev=self.get_bioparameter("leak_erev").value,
                           ion="non_specific"))

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_k_slow_cond_density").value,
                           id="k_slow_all",
                           ion_channel="k_slow",
                           erev=self.get_bioparameter("k_slow_erev").value,
                           ion="k"))

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_k_fast_cond_density").value,
                           id="k_fast_all",
                           ion_channel="k_fast",
                           erev=self.get_bioparameter("k_fast_erev").value,
                           ion="k"))

        mp.channel_densities.append(
            ChannelDensity(cond_density=self.get_bioparameter(
                "neuron_ca_boyle_cond_density").value,
                           id="ca_boyle_all",
                           ion_channel="ca_boyle",
                           erev=self.get_bioparameter("ca_boyle_erev").value,
                           ion="ca"))

        ip = IntracellularProperties()
        cell.biophysical_properties.intracellular_properties = ip

        # NOTE: resistivity/axial resistance not used for single compartment cell models, so value irrelevant!
        ip.resistivities.append(
            Resistivity(value=self.get_bioparameter("resistivity").value))

        # NOTE: Ca reversal potential not calculated by Nernst, so initial_ext_concentration value irrelevant!
        species = Species(id="ca",
                          ion="ca",
                          concentration_model="CaPool",
                          initial_concentration="0 mM",
                          initial_ext_concentration="2E-6 mol_per_cm3")

        ip.species.append(species)

        return cell