Ejemplo n.º 1
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def test_simple_assembly():
    st1 = Activation(Agent('a'), Agent('b'))
    st2 = Inhibition(Agent('a'), Agent('c'))
    sa = SifAssembler([st1, st2])
    sa.make_model()
    assert(len(sa.graph.nodes()) == 3)
    assert(len(sa.graph.edges()) == 2)
Ejemplo n.º 2
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def test_simple_assembly():
    st1 = Activation(Agent('a'), Agent('b'))
    st2 = Inhibition(Agent('a'), Agent('c'))
    sa = SifAssembler([st1, st2])
    sa.make_model()
    assert (len(sa.graph.nodes()) == 3)
    assert (len(sa.graph.edges()) == 2)
Ejemplo n.º 3
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def assemble_loopy():
    """Assemble INDRA Statements into a Loopy model using SIF Assembler."""
    response = request.body.read().decode('utf-8')
    body = json.loads(response)
    stmts_json = body.get('statements')
    stmts = stmts_from_json(stmts_json)
    sa = SifAssembler(stmts)
    sa.make_model(use_name_as_key=True)
    model_str = sa.print_loopy(as_url=True)
    res = {'loopy_url': model_str}
    return res
Ejemplo n.º 4
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def test_evidence_assembly():
    ev1 = Evidence(pmid='1')
    ev2 = Evidence(pmid='2')
    ev3 = Evidence(pmid='3')
    ev4 = Evidence(pmid='4')
    st1 = Activation(Agent('a'), Agent('b'), evidence=[ev1])
    st2 = Inhibition(Agent('a'), Agent('c'), evidence=[ev1, ev2, ev3])
    sa = SifAssembler([st1, st2])
    sa.make_model()
    assert(len(sa.graph.nodes()) == 3)
    assert(len(sa.graph.edges()) == 2)
    sa.set_edge_weights('support_pmid')
Ejemplo n.º 5
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def assemble_pysb(stmts, data_genes, out_file):
    """Return an assembled PySB model."""
    base_file, _ = os.path.splitext(out_file)
    #stmts = ac.load_statements('%s.pkl' % base_file)
    stmts = preprocess_stmts(stmts, data_genes)

    # Make a SIF model equivalent to the PySB model
    # Useful for making direct comparisons in pathfinding
    sa = SifAssembler(stmts)
    sa.make_model(use_name_as_key=True,
                  include_mods=True,
                  include_complexes=True)
    sif_str = sa.print_model(include_unsigned_edges=True)
    with open('%s_pysb.sif' % base_file, 'wt') as f:
        f.write(sif_str)

    # This is the "final" set of statements going into the assembler so it
    # makes sense to cache these.
    # This is also the point where index cards can be generated
    ac.dump_statements(stmts, '%s_before_pa.pkl' % base_file)
    assemble_index_cards(stmts, 'output/index_cards')

    # Save a version of statements with no evidence for faster loading
    for s in stmts:
        s.evidence = []
        for ss in s.supports + s.supported_by:
            ss.evidence = []
    ac.dump_statements(stmts, '%s_no_evidence.pkl' % base_file)

    # Assemble model
    pa = PysbAssembler()
    pa.add_statements(stmts)
    pa.make_model(reverse_effects=False)
    #ac.dump_statements(pa.statements, '%s_after_pa.pkl' % base_file)
    # Set context
    set_context(pa)
    # Add observables
    add_observables(pa.model)
    pa.save_model(out_file)
    with open('korkut_pysb.pkl', 'wb') as fh:
        pickle.dump(pa.model, fh)
    #pa.export_model('kappa', '%s.ka' % base_file)
    return pa.model
Ejemplo n.º 6
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def test_modification():
    st1 = Phosphorylation(Agent('BRAF'), Agent('MAP2K1'), 'S', '222')
    sa = SifAssembler([st1])
    sa.make_model(True, True, True)
    assert (len(sa.graph.nodes()) == 2)
    assert (len(sa.graph.edges()) == 1)
    sa.save_model('test_sif.sif', True)
    with open('test_sif.sif', 'rb') as fh:
        txt = fh.read().decode('utf-8')
        assert txt == 'BRAF 0 MAP2K1\n', txt
Ejemplo n.º 7
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def test_evidence_assembly():
    ev1 = Evidence(pmid='1')
    ev2 = Evidence(pmid='2')
    ev3 = Evidence(pmid='3')
    Evidence(pmid='4')
    st1 = Activation(Agent('a'), Agent('b'), evidence=[ev1])
    st2 = Inhibition(Agent('a'), Agent('c'), evidence=[ev1, ev2, ev3])
    sa = SifAssembler([st1, st2])
    sa.make_model()
    assert (len(sa.graph.nodes()) == 3)
    assert (len(sa.graph.edges()) == 2)
    sa.set_edge_weights('support_pmid')
Ejemplo n.º 8
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def assemble_sif(stmts, data, out_file):
    """Return an assembled SIF."""
    # Filter for high-belief statements
    stmts = ac.filter_belief(stmts, 0.99)
    stmts = ac.filter_top_level(stmts)
    # Filter for Activation / Inhibition
    stmts_act = ac.filter_by_type(stmts, Activation)
    stmts_inact = ac.filter_by_type(stmts, Inhibition)
    stmts = stmts_act + stmts_inact
    # Get Ras227 and filter statments
    ras_genes = process_data.get_ras227_genes()
    ras_genes = [x for x in ras_genes if x not in ['YAP1']]
    stmts = ac.filter_gene_list(stmts, ras_genes, 'all')
    # Get the drugs inhibiting their targets as INDRA
    # statements
    def get_drug_statements():
        drug_targets = process_data.get_drug_targets()
        drug_stmts = []
        for dn, tns in drug_targets.items():
            da = Agent(dn + ':Drugs')
            for tn in tns:
                ta = Agent(tn)
                drug_stmt = Inhibition(da, ta)
                drug_stmts.append(drug_stmt)
        return drug_stmts
    drug_stmts = get_drug_statements()
    stmts = stmts + drug_stmts
    # Because of a bug in CNO, node names containing AND
    # need to be replaced
    def rename_and_nodes(st):
        for s in st:
            for a in s.agent_list():
                if a is not None:
                    if a.name.find('AND') != -1:
                        a.name = a.name.replace('AND', 'A_ND')
    rename_and_nodes(stmts)
    # Rewrite statements to replace genes with their corresponding
    # antibodies when possible
    stmts = rewrite_ab_stmts(stmts, data)
    def filter_ab_edges(st, policy='all'):
        st_out = []
        for s in st:
            if policy == 'all':
                all_ab = True
                for a in s.agent_list():
                    if a is not None:
                        if a.name.find('_p') == -1 and \
                           a.name.find('Drugs') == -1:
                            all_ab = False
                            break
                if all_ab:
                    st_out.append(s)
            elif policy == 'one':
                any_ab = False
                for a in s.agent_list():
                    if a is not None and a.name.find('_p') != -1:
                        any_ab = True
                        break
                if any_ab:
                    st_out.append(s)
        return st_out
    stmts = filter_ab_edges(stmts, 'all')
    # Get a list of the AB names that end up being covered in the prior network
    # This is important because other ABs will need to be taken out of the
    # MIDAS file to work.
    def get_ab_names(st):
        prior_abs = set()
        for s in st:
            for a in s.agent_list():
                if a is not None:
                    if a.name.find('_p') != -1:
                        prior_abs.add(a.name)
        return sorted(list(prior_abs))
    pkn_abs = get_ab_names(stmts)
    print('Boolean PKN contains these antibodies: %s' % ', '.join(pkn_abs))
    # Make the SIF model
    sa = SifAssembler(stmts)
    sa.make_model(use_name_as_key=True)
    sif_str = sa.print_model()
    with open(out_file, 'wb') as fh:
        fh.write(sif_str.encode('utf-8'))
    # Make the MIDAS data file used for training the model
    midas_data = process_data.get_midas_data(data, pkn_abs)
    return sif_str
Ejemplo n.º 9
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        on_nodes = []
    else:
        on_nodes = on
    coll = boolean2.util.Collector()
    bn_str = boolean2.modify_states(bn_str, turnon=on, turnoff=off)
    model = boolean2.Model(text=bn_str, mode='async')
    for i in range(nsim):
        model.initialize()
        model.iterate(steps=nsteps)
        coll.collect(states=model.states, nodes=model.nodes)
    avgs = coll.get_averages(normalize=True)
    return avgs


st = pickle.load(open('statements.pkl', 'rb'))
sa = SifAssembler(st)
sa.make_model()
bn_str = sa.print_boolean_net('ras_pathway_bn.txt')
# Condition 1
off = []
on = ['Growth_factor_proteins']
avgs = get_sim_avgs(bn_str, off=off, on=on)
jun_basic_noinh = avgs['JUN']
# Condition 2
off = ['MAP2K1', 'MAP2K2']
on = ['Growth_factor_proteins']
avgs = get_sim_avgs(bn_str, off=off, on=on)
jun_basic_inh = avgs['JUN']

st_ext = pickle.load(open('extension.pkl', 'rb'))
sa = SifAssembler(st + st_ext)
Ejemplo n.º 10
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        on_nodes = []
    else:
        on_nodes = on
    coll = boolean2.util.Collector()
    bn_str = boolean2.modify_states(bn_str, turnon=on, turnoff=off)
    model = boolean2.Model(text=bn_str, mode='async')
    for i in range(nsim):
        model.initialize()
        model.iterate(steps=nsteps)
        coll.collect(states=model.states, nodes=model.nodes)
    avgs = coll.get_averages(normalize=True)
    return avgs


st = pickle.load(open('statements.pkl', 'rb'))
sa = SifAssembler(st)
sa.make_model()
bn_str = sa.print_boolean_net('ras_pathway_bn.txt')
# Condition 1
off = []
on = ['Growth_factor_proteins']
avgs = get_sim_avgs(bn_str, off=off, on=on)
jun_basic_noinh = avgs['JUN']
# Condition 2
off = ['MAP2K1', 'MAP2K2']
on = ['Growth_factor_proteins']
avgs = get_sim_avgs(bn_str, off=off, on=on)
jun_basic_inh = avgs['JUN']

st_ext = pickle.load(open('extension.pkl', 'rb'))
sa = SifAssembler(st + st_ext)
Ejemplo n.º 11
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        on_nodes = on
    coll = boolean2.util.Collector()
    bn_str = boolean2.modify_states(bn_str, turnon=on, turnoff=off)
    model = boolean2.Model(text=bn_str, mode='async')
    for i in range(nsim):
        model.initialize()
        model.iterate(steps=nsteps)
        coll.collect(states=model.states, nodes=model.nodes)
    avgs = coll.get_averages(normalize=True)
    return avgs


if __name__ == '__main__':
    # Build Boolean net for basic pathway
    st = ac.load_statements('ras_pathway.pkl')
    sa = SifAssembler(st)
    sa.make_model(use_name_as_key=True)
    sa.save_model('ras_pathway.sif')
    bn_str = sa.print_boolean_net('ras_pathway_bn.txt')

    # Build Boolean net for extended pathway
    st_ext = ac.load_statements('ras_pathway_extension.pkl')
    sa = SifAssembler(st + st_ext)
    sa.make_model(use_name_as_key=True)
    sa.save_model('ras_pathway_extension.sif')
    bn_str = sa.print_boolean_net('ras_pathway_extension_bn.txt')

    # Condition 1
    off = []
    on = ['GROWTH-FACTOR']
    avgs = get_sim_avgs(bn_str, off=off, on=on)