medcat2.utils.legacy.helpers
Attributes
Classes
This is a collection of serialisable model parts. |
|
The abstract serialisable base class. |
|
Functions
|
Generates different forms of a name. Will edit the provided names |
|
|
|
Module Contents
- class medcat2.utils.legacy.helpers.CAT(cdb, vocab=None, config=None, model_load_path=None)
Bases:
medcat2.storage.serialisables.AbstractSerialisableThis is a collection of serialisable model parts.
- Parameters:
cdb (medcat2.cdb.CDB)
vocab (Union[medcat2.vocab.Vocab, None])
config (Optional[medcat2.config.config.Config])
model_load_path (Optional[str])
- __init__(cdb, vocab=None, config=None, model_load_path=None)
- Parameters:
cdb (medcat2.cdb.CDB)
vocab (Union[medcat2.vocab.Vocab, None])
config (Optional[medcat2.config.config.Config])
model_load_path (Optional[str])
- Return type:
None
- cdb
- vocab = None
- config = None
- _trainer: medcat2.trainer.Trainer | None = None
- _pipeline
- _recreate_pipe(model_load_path=None)
- Parameters:
model_load_path (Optional[str])
- Return type:
- classmethod get_init_attrs()
- Return type:
list[str]
- classmethod ignore_attrs()
- Return type:
list[str]
- __call__(text)
- Parameters:
text (str)
- Return type:
- _ensure_not_training()
Method to ensure config is not set to train.
config.components.linking.train should only be True while training and not during inference. This aalso corrects the setting if necessary.
- Return type:
None
- get_entities(text: str, only_cui: Literal[False] = False) medcat2.data.entities.Entities
- get_entities(text: str, only_cui: Literal[True] = True) medcat2.data.entities.OnlyCUIEntities
- get_entities(text: str, only_cui: bool = False) dict | medcat2.data.entities.Entities | medcat2.data.entities.OnlyCUIEntities
Get the entities recognised and linked within the provided text.
This will run the text through the pipeline and annotated the recognised and linked entities.
- Parameters:
text (str) – The text to use.
only_cui (bool, optional) – Whether to only output the CUIs rather than the entire context. Defaults to False.
- Returns:
Union[dict, Entities, OnlyCUIEntities] – The entities found and linked within the text.
- _get_entity(ent, doc_tokens, cui)
- Parameters:
doc_tokens (list[str])
cui (str)
- Return type:
- _doc_to_out_entity(ent, doc_tokens, only_cui)
- Parameters:
doc_tokens (list[str])
only_cui (bool)
- Return type:
tuple[int, Union[medcat2.data.entities.Entity, str]]
- _doc_to_out(doc, only_cui, out_with_text=False)
- Parameters:
only_cui (bool)
out_with_text (bool)
- Return type:
Union[medcat2.data.entities.Entities, medcat2.data.entities.OnlyCUIEntities]
- property trainer
The trainer object.
- save_model_pack(target_folder, pack_name=DEFAULT_PACK_NAME, serialiser_type='dill', make_archive=True)
Save model pack.
The resulting model pack name will have the hash of the model pack in its name if (and only if) the default model pack name is used.
- Parameters:
target_folder (str) – The folder to save the pack in.
pack_name (str, optional) – The model pack name. Defaults to DEFAULT_PACK_NAME.
serialiser_type (Union[str, AvailableSerialisers], optional) – The serialiser type. Defaults to ‘dill’.
make_archive (bool) – Whether to make the arhive /.zip file. Defaults to True.
- Returns:
str – The final model pack path.
- Return type:
str
- _versioning()
- Return type:
str
- classmethod load_model_pack(model_pack_path)
Load the model pack from file.
- Parameters:
model_pack_path (str) – The model pack path.
- Raises:
ValueError – If the saved data does not represent a model pack.
- Returns:
CAT – The loaded model pack.
- Return type:
- get_model_card(as_dict: Literal[True]) medcat2.data.model_card.ModelCard
- get_model_card(as_dict: Literal[False]) str
Get the model card either a (nested) dict or a json string.
- Parameters:
as_dict (bool) – Whether to return as dict. Defaults to False.
- Returns:
Union[str, ModelCard] – The model card.
- __eq__(other)
- Parameters:
other (Any)
- Return type:
bool
- add_addon(addon)
- Parameters:
- Return type:
None
- get_strategy()
- Return type:
- classmethod include_properties()
- Return type:
list[str]
- class medcat2.utils.legacy.helpers.CDB(config)
Bases:
medcat2.storage.serialisables.AbstractSerialisableThe abstract serialisable base class.
This defines some common defaults.
- Parameters:
config (medcat2.config.Config)
- __init__(config)
- Parameters:
config (medcat2.config.Config)
- Return type:
None
- config
- cui2info: dict[str, medcat2.cdb.concepts.CUIInfo]
- name2info: dict[str, medcat2.cdb.concepts.NameInfo]
- type_id2info: dict[str, medcat2.cdb.concepts.TypeInfo]
- token_counts: dict[str, int]
- addl_info: dict[str, Any]
- _subnames: set[str]
- is_dirty = False
- has_changed_names = False
- classmethod get_init_attrs()
- Return type:
list[str]
- _reset_subnames()
- has_subname(name)
Whether the CDB has the specified subname.
- Parameters:
name (str) – The subname to check.
- Returns:
bool – Whether the subname is present in this CDB.
- Return type:
bool
- get_name(cui)
Returns preferred name if it exists, otherwise it will return the longest name assigned to the concept.
- Parameters:
cui (str) – Concept ID or unique identifier in this database.
- Returns:
str – The name of the concept.
- Return type:
str
- weighted_average_function(step)
Get the weighted average for steop.
- Parameters:
step (int) – The steop.
- Returns:
float – The weighted average.
- Return type:
float
- add_types(types)
Add type info to CDB.
- Parameters:
types (Iterable[tuple[str, str]]) – The raw type info.
- Return type:
None
- add_names(cui, names, name_status=ST.AUTOMATIC, full_build=False)
Adds a name to an existing concept.
- Parameters:
cui (str) – Concept ID or unique identifier in this database, all concepts that have the same CUI will be merged internally.
names (dict[str, NameDescriptor]) –
Names for this concept, or the value that if found in free text can be linked to this concept. Names is an dict like: `{name: {‘tokens’: tokens, ‘snames’: snames,
’raw_name’: raw_name}, …}`
Names should be generated by helper function ‘medcat.preprocessing.cleaners.prepare_name’
name_status (str) – One of P, N, A. Defaults to ‘A’.
full_build (bool) – If True the dictionary self.addl_info will also be populated, contains a lot of extra information about concepts, but can be very memory consuming. This is not necessary for normal functioning of MedCAT (Default value False).
- Return type:
None
- _add_concept_names(cui, names, name_status)
- Parameters:
cui (str)
names (dict[str, medcat2.preprocessors.cleaners.NameDescriptor])
name_status (str)
- Return type:
None
- _add_full_build(cui, names, ontologies, description, type_ids)
- Parameters:
cui (str)
names (dict[str, medcat2.preprocessors.cleaners.NameDescriptor])
ontologies (set[str])
description (str)
type_ids (set[str])
- Return type:
None
- _add_concept(cui, names, ontologies, name_status, type_ids, description, full_build=False)
Add a concept to internal Concept Database (CDB). Depending on what you are providing this will add a large number of properties for each concept.
- Parameters:
cui (str) – Concept ID or unique identifier in this database, all concepts that have the same CUI will be merged internally.
names (dict[str, NameDescriptor]) –
Names for this concept, or the value that if found in free text can be linked to this concept. Names is a dict like: `{name: {‘tokens’: tokens, ‘snames’: snames,
’raw_name’: raw_name}, …}`
Names should be generated by helper function ‘medcat.preprocessing.cleaners.prepare_name’
ontologies (set[str]) – ontologies in which the concept exists (e.g. SNOMEDCT, HPO)
name_status (str) – One of P, N, A
type_ids (set[str]) – Semantic type identifier (have a look at TUIs in UMLS or SNOMED-CT)
description (str) – Description of this concept.
full_build (bool) – If True the dictionary self.addl_info will also be populated, contains a lot of extra information about concepts, but can be very memory consuming. This is not necessary for normal functioning of MedCAT (Default Value False).
- Return type:
None
- reset_training()
Will remove all training efforts - in other words all embeddings that are learnt for concepts in the current CDB. Please note that this does not remove synonyms (names) that were potentially added during supervised/online learning.
- Return type:
None
- filter_by_cui(cuis_to_keep)
Subset the core CDB fields (dictionaries/maps).
Note that this will potenitally keep a bit more CUIs then in cuis_to_keep. It will first find all names that link to the cuis_to_keep and then find all CUIs that link to those names and keep all of them.
This also will not remove any data from cdb.addl_info - as this field can contain data of unknown structure.
- Parameters:
cuis_to_keep (Collection[str]) – CUIs that will be kept, the rest will be removed (not completely, look above).
- Raises:
Exception – If no snames and subsetting is not possible.
- Return type:
None
- remove_cui(cui)
This function takes a CUI and removes it the CDB.
It also removes the CUI from name specific per_cui_status maps as well as well as removes all the names that do not correspond to any CUIs after the removal of this one.
- Parameters:
cui (str) – The CUI to remove.
- Return type:
None
- _remove_names(cui, names)
Remove names from an existing concept - effect is this name will never again be used to link to this concept. This will only remove the name from the linker (namely name2cuis and name2cuis2status), the name will still be present everywhere else. Why? Because it is bothersome to remove it from everywhere, but could also be useful to keep the removed names in e.g. cui2names.
- Parameters:
cui (str) – Concept ID or unique identifier in this database.
names (Iterable[str]) – Names to be removed (e.g list, set, or even a dict (in which case keys will be used)).
- Return type:
None
- __eq__(other)
- Parameters:
other (Any)
- Return type:
bool
- get_cui2count_train()
- Return type:
dict[str, int]
- get_name2count_train()
- Return type:
dict[str, int]
- get_hash()
- Return type:
str
- get_basic_info()
- Return type:
medcat2.data.model_card.CDBInfo
- get_strategy()
- Return type:
- classmethod ignore_attrs()
- Return type:
list[str]
- classmethod include_properties()
- Return type:
list[str]
- medcat2.utils.legacy.helpers.prepare_name(raw_name, nlp, names, configs)
Generates different forms of a name. Will edit the provided names dictionary and add information generated from the name.
- Parameters:
nlp (BaseTokenizer) – The tokenizer.
names (dict[str, NameDescriptor]) – Dictionary of existing names for this concept in this row of a CSV. The new generated name versions and other required information will be added here.
configs (tuple[LGeneral, LPreprocessing, LCDBMaker]) – Applicable configs for medcat.
raw_name (str)
- Returns:
names (dict) – The updated dictionary of prepared names.
- Return type:
dict[str, NameDescriptor]
- class medcat2.utils.legacy.helpers.NameDescriptor
- tokens: list[str]
- snames: set[str]
- raw_name: str
- is_upper: bool
- medcat2.utils.legacy.helpers.logger
- medcat2.utils.legacy.helpers.has_per_concept_subnames(cdb)
- Parameters:
cdb (medcat2.cdb.cdb.CDB)
- Return type:
bool
- medcat2.utils.legacy.helpers._fix_subnames(cat)
- Parameters:
cat (medcat2.cat.CAT)
- Return type:
None
- medcat2.utils.legacy.helpers.fix_subnames(cat)
- Parameters:
cat (medcat2.cat.CAT)
- Return type:
None