def test_find_constrained_pure_metabolic_reactions(model): """ Expect zero or more purely metabolic reactions to have fixed constraints. If a reaction is neither a transport reaction, a biomass reaction nor a boundary reaction, it is counted as a purely metabolic reaction. This test requires the presence of metabolite formula to be able to identify transport reactions. This test simply reports the number of purely metabolic reactions that have fixed constraints and does not have any mandatory 'pass' criteria. Implementation: From the pool of pure metabolic reactions identify reactions which are constrained to values other than the model's minimal or maximal possible bounds. """ ann = test_find_constrained_pure_metabolic_reactions.annotation pmr = basic.find_pure_metabolic_reactions(model) ann["data"] = get_ids_and_bounds( [rxn for rxn in pmr if basic.is_constrained_reaction( model, rxn)]) ann["metric"] = len(ann["data"]) / len(pmr) ann["message"] = wrapper.fill( """A total of {:d} ({:.2%}) purely metabolic reactions have fixed constraints in the model, this excludes transporters, exchanges, or pseudo-reactions: {}""".format(len(ann["data"]), ann["metric"], truncate(ann["data"])))
def test_metabolic_reaction_specific_sbo_presence(read_only_model): """Expect all metabolic reactions to be annotated with SBO:0000176. SBO:0000176 represents the term 'biochemical reaction'. Every metabolic reaction that is not a transport or boundary reaction should be annotated with this. The results shown are relative to the total amount of pure metabolic reactions. """ ann = test_metabolic_reaction_specific_sbo_presence.annotation pure = basic.find_pure_metabolic_reactions(read_only_model) ann["data"] = get_ids(sbo.check_component_for_specific_sbo_term( pure, "SBO:0000176")) try: ann["metric"] = len(ann["data"]) / len(pure) ann["message"] = wrapper.fill( """A total of {} metabolic reactions ({:.2%} of all purely metabolic reactions) lack annotation with the SBO term "SBO:0000176" for 'biochemical reaction': {}""".format( len(ann["data"]), ann["metric"], truncate(ann["data"]))) except ZeroDivisionError: ann["metric"] = 1.0 ann["message"] = "The model has no metabolic reactions." pytest.skip(ann["message"]) assert len(ann["data"]) == len(pure), ann["message"]
def test_find_constrained_pure_metabolic_reactions(model): """ Expect zero or more purely metabolic reactions to have fixed constraints. If a reaction is neither a transport reaction, a biomass reaction nor a boundary reaction, it is counted as a purely metabolic reaction. This test requires the presence of metabolite formula to be able to identify transport reactions. This test simply reports the number of purely metabolic reactions that have fixed constraints and does not have any mandatory 'pass' criteria. Implementation: From the pool of pure metabolic reactions identify reactions which are constrained to values other than the model's minimal or maximal possible bounds. """ ann = test_find_constrained_pure_metabolic_reactions.annotation pmr = basic.find_pure_metabolic_reactions(model) ann["data"] = get_ids_and_bounds( [rxn for rxn in pmr if basic.is_constrained_reaction(model, rxn)]) ann["metric"] = len(ann["data"]) / len(pmr) ann["message"] = wrapper.fill( """A total of {:d} ({:.2%}) purely metabolic reactions have fixed constraints in the model, this excludes transporters, exchanges, or pseudo-reactions: {}""".format(len(ann["data"]), ann["metric"], truncate(ann["data"])))
def test_find_pure_metabolic_reactions(model): """ Expect at least one pure metabolic reaction to be defined in the model. If a reaction is neither a transport reaction, a biomass reaction nor a boundary reaction, it is counted as a purely metabolic reaction. This test requires the presence of metabolite formula to be able to identify transport reactions. This test is passed when the model contains at least one purely metabolic reaction i.e. a conversion of one metabolite into another. Implementation: From the list of all reactions, those that are boundary, transport and biomass reactions are removed and the remainder assumed to be pure metabolic reactions. Boundary reactions are identified using the attribute cobra.Model.boundary. Please read the description of "Transport Reactions" and "Biomass Reaction Identified" to learn how they are identified. """ ann = test_find_pure_metabolic_reactions.annotation ann["data"] = get_ids( basic.find_pure_metabolic_reactions(model)) ann["metric"] = len(ann["data"]) / len(model.reactions) ann["message"] = wrapper.fill( """A total of {:d} ({:.2%}) purely metabolic reactions are defined in the model, this excludes transporters, exchanges, or pseudo-reactions: {}""".format(len(ann["data"]), ann["metric"], truncate(ann["data"]))) assert len(ann["data"]) >= 1, ann["message"]
def test_find_pure_metabolic_reactions(model): """ Expect at least one pure metabolic reaction to be defined in the model. If a reaction is neither a transport reaction, a biomass reaction nor a boundary reaction, it is counted as a purely metabolic reaction. This test requires the presence of metabolite formula to be able to identify transport reactions. This test is passed when the model contains at least one purely metabolic reaction i.e. a conversion of one metabolite into another. Implementation: From the list of all reactions, those that are boundary, transport and biomass reactions are removed and the remainder assumed to be pure metabolic reactions. Boundary reactions are identified using the attribute cobra.Model.boundary. Please read the description of "Transport Reactions" and "Biomass Reaction Identified" to learn how they are identified. """ ann = test_find_pure_metabolic_reactions.annotation ann["data"] = get_ids(basic.find_pure_metabolic_reactions(model)) ann["metric"] = len(ann["data"]) / len(model.reactions) ann["message"] = wrapper.fill( """A total of {:d} ({:.2%}) purely metabolic reactions are defined in the model, this excludes transporters, exchanges, or pseudo-reactions: {}""".format(len(ann["data"]), ann["metric"], truncate(ann["data"]))) assert len(ann["data"]) >= 1, ann["message"]
def test_metabolic_reaction_specific_sbo_presence(model): """Expect all metabolic reactions to be annotated with SBO:0000176. SBO:0000176 represents the term 'biochemical reaction'. Every metabolic reaction that is not a transport or boundary reaction should be annotated with this. The results shown are relative to the total amount of pure metabolic reactions. Implementation: Check if each pure metabolic reaction has a non-zero "annotation" attribute that contains the key "sbo" with the associated value being the SBO term above. """ ann = test_metabolic_reaction_specific_sbo_presence.annotation pure = basic.find_pure_metabolic_reactions(model) ann["data"] = get_ids(sbo.check_component_for_specific_sbo_term( pure, "SBO:0000176")) try: ann["metric"] = len(ann["data"]) / len(pure) ann["message"] = wrapper.fill( """A total of {} metabolic reactions ({:.2%} of all purely metabolic reactions) lack annotation with the SBO term "SBO:0000176" for 'biochemical reaction': {}""".format( len(ann["data"]), ann["metric"], truncate(ann["data"]))) except ZeroDivisionError: ann["metric"] = 1.0 ann["message"] = "The model has no metabolic reactions." pytest.skip(ann["message"]) assert len(ann["data"]) == len(pure), ann["message"]
def test_find_pure_metabolic_reactions(read_only_model, store): """Expect >= 1 pure metabolic reactions are present in the model.""" store["metabolic_reactions"] = [ rxn.id for rxn in basic.find_pure_metabolic_reactions(read_only_model) ] store["num_metabolic_reactions"] = len(store["metabolic_reactions"]) assert store["num_metabolic_reactions"] >= 1
def test_find_pure_metabolic_reactions(read_only_model): """ Expect at least one pure metabolic reaction to be defined in the model. If a reaction is neither a transport reaction, a biomass reaction nor a boundary reaction, it is counted as a purely metabolic reaction. This test requires the presence of metabolite formula to be able to identify transport reactions. This test is passed when the model contains at least one purely metabolic reaction i.e. a conversion of one metabolite into another. """ ann = test_find_pure_metabolic_reactions.annotation ann["data"] = get_ids(basic.find_pure_metabolic_reactions(read_only_model)) ann["metric"] = len(ann["data"]) / len(read_only_model.reactions) ann["message"] = wrapper.fill( """A total of {:d} ({:.2%}) purely metabolic reactions are defined in the model, this excludes transporters, exchanges, or pseudo-reactions: {}""".format(len(ann["data"]), ann["metric"], truncate(ann["data"]))) assert len(ann["data"]) >= 1, ann["message"]
def test_find_constrained_pure_metabolic_reactions(model, num): """Expect num of contrained metabolic rxns to be identified correctly.""" pmr = basic.find_pure_metabolic_reactions(model) contrained_pmr = set( [rxn for rxn in pmr if basic.is_constrained_reaction(model, rxn)]) assert len(contrained_pmr) == num
def test_find_pure_metabolic_reactions(model, num): """Expect amount of metabolic reactions to be identified correctly.""" assert len(basic.find_pure_metabolic_reactions(model)) == num
def test_find_candidate_irreversible_reactions(model): u""" Identify reversible reactions that could be irreversible. If a reaction is neither a transport reaction, a biomass reaction nor a boundary reaction, it is counted as a purely metabolic reaction. This test checks if the reversibility attribute of each reaction agrees with a thermodynamics-based calculation of reversibility. Implementation: To determine reversibility we calculate the reversibility index ln_gamma (natural logarithm of gamma) of each reaction using the eQuilibrator API. We consider reactions, whose reactants' concentrations would need to change by more than three orders of magnitude for the reaction flux to reverse direction, to be likely candidates of irreversible reactions. This assume default concentrations around 100 μM (~3 μM—3 mM) at pH = 7, I = 0.1 M and T = 298 K. The corresponding reversibility index is approximately 7. For further information on the thermodynamic and implementation details please refer to https://doi.org/10.1093/bioinformatics/bts317 and https://pypi.org/project/equilibrator-api/. Please note that currently eQuilibrator can only determine the reversibility index for chemically and redox balanced reactions whose metabolites can be mapped to KEGG compound identifiers (e.g. C00001). In addition to not being mappable to KEGG or the reaction not being balanced, there is a possibility that the metabolite cannot be broken down into chemical groups which is essential for the calculation of Gibbs energy using group contributions. This test collects each erroneous reaction and returns them as a tuple containing each list in the following order: 1. Reactions with reversibility index 2. Reactions with incomplete mapping to KEGG 3. Reactions with metabolites that are problematic during calculation 4. Chemically or redox unbalanced Reactions (after mapping to KEGG) This test simply reports the number of reversible reactions that, according to the reversibility index, are likely to be irreversible. """ # With gamma = 1000, ln_gamma ~ 6.9. We use 7 as the cut-off. threshold = 7.0 ann = test_find_candidate_irreversible_reactions.annotation met_rxns = basic.find_pure_metabolic_reactions(model) rev_index, incomplete, problematic, unbalanced = \ thermo.find_thermodynamic_reversibility_index(met_rxns) ann["data"] = ( # The reversibility index can be infinite so we convert it to a JSON # compatible string. [(r.id, str(i)) for r, i in rev_index], get_ids(incomplete), get_ids(problematic), get_ids(unbalanced) ) num_irrev = sum(1 for r, i in rev_index if abs(i) >= threshold) ann["message"] = wrapper.fill( """Out of {} purely metabolic reactions, {} have an absolute reversibility index greater or equal to 7 and are therefore likely candidates for being irreversible. {} reactions could not be mapped to KEGG completely, {} contained 'problematic' metabolites, and {} are chemically or redox imbalanced. """.format(len(met_rxns), num_irrev, len(incomplete), len(problematic), len(unbalanced)) ) ann["metric"] = num_irrev / len(rev_index)