wetlab.EnvironmentalPerturbation¶
- class wetlab.EnvironmentalPerturbation(*args, **kwargs)¶
Bases:
SQLRecord,CanCurate,TracksRun,TracksUpdatesModels environmental perturbations such as heat, acid, or smoke perturbations.
- Parameters:
name – Name of the environmental perturbation.
ontology_id – Ontology ID of the environmental perturbation (EFO).
value – A value such as a temperature.
unit – A unit such as ‘degrees celsius’.
duration – Time duration of how long the perturbation was applied.
Example:
import wetlab as wl acid_perturbation = EnvironmentalPerturbation( name='Acid perturbation', ontology_id='EFO:0004416', value=1.5, unit='pH', ).save()
Simple fields¶
- uid: int¶
Universal id, valid across DB instances.
- name: str¶
Name of the environmental perturbation.
- ontology_id¶
Ontology ID (EFO) of the environmental perturbation.
- description: str | None¶
Description of the environmental perturbation.
- value: float | None¶
The value of the environmental perturbation such as a temperature.
- unit: str | None¶
Unit of the value such as ‘degrees celsius’
- duration: timedelta | None¶
Duration of the environmental perturbation.
- is_locked: bool¶
Whether the record is locked for edits.
- created_at: datetime¶
Time of creation of record.
- updated_at: datetime¶
Time of last update to record.
Relational fields¶
- branch: Branch¶
Whether record is on a branch or in another “special state”.
- targets: PerturbationTarget¶
Targets of the environmental perturbation.
Class methods¶
- classmethod filter(*queries, **expressions)¶
Query records.
- Parameters:
queries – One or multiple
Qobjects.expressions – Fields and values passed as Django query expressions.
- Return type:
- Returns:
A
QuerySet.
See also
Guide: Query & search registries
Django documentation: Queries
Examples
>>> ln.ULabel(name="my label").save() >>> ln.ULabel.filter(name__startswith="my").to_dataframe()
- classmethod get(idlike=None, **expressions)¶
Get a single record.
- Parameters:
idlike (
int|str|None, default:None) – Either a uid stub, uid or an integer id.expressions – Fields and values passed as Django query expressions.
- Raises:
docs:lamindb.errors.DoesNotExist – In case no matching record is found.
- Return type:
See also
Guide: Query & search registries
Django documentation: Queries
Examples
ulabel = ln.ULabel.get("FvtpPJLJ") ulabel = ln.ULabel.get(name="my-label")
- classmethod to_dataframe(include=None, features=False, limit=100)¶
Evaluate and convert to
pd.DataFrame.By default, maps simple fields and foreign keys onto
DataFramecolumns.Guide: Query & search registries
- Parameters:
include (
str|list[str] |None, default:None) – Related data to include as columns. Takes strings of form"records__name","cell_types__name", etc. or a list of such strings. ForArtifact,Record, andRun, can also pass"features"to include features with data types pointing to entities in the core schema. If"privates", includes private fields (fields starting with_).features (
bool|list[str], default:False) – Configure the features to include. Can be a feature name or a list of such names. If"queryset", infers the features used within the current queryset. Only available forArtifact,Record, andRun.limit (
int, default:100) – Maximum number of rows to display. IfNone, includes all results.order_by – Field name to order the records by. Prefix with ‘-’ for descending order. Defaults to ‘-id’ to get the most recent records. This argument is ignored if the queryset is already ordered or if the specified field does not exist.
- Return type:
DataFrame
Examples
Include the name of the creator:
ln.Record.to_dataframe(include="created_by__name"])
Include features:
ln.Artifact.to_dataframe(include="features")
Include selected features:
ln.Artifact.to_dataframe(features=["cell_type_by_expert", "cell_type_by_model"])
- classmethod search(string, *, field=None, limit=20, case_sensitive=False)¶
Search.
- Parameters:
string (
str) – The input string to match against the field ontology values.field (
str|DeferredAttribute|None, default:None) – The field or fields to search. Search all string fields by default.limit (
int|None, default:20) – Maximum amount of top results to return.case_sensitive (
bool, default:False) – Whether the match is case sensitive.
- Return type:
- Returns:
A sorted
DataFrameof search results with a score in columnscore. Ifreturn_querysetisTrue.QuerySet.
Examples
>>> ulabels = ln.ULabel.from_values(["ULabel1", "ULabel2", "ULabel3"], field="name") >>> ln.save(ulabels) >>> ln.ULabel.search("ULabel2")
- classmethod lookup(field=None, return_field=None)¶
Return an auto-complete object for a field.
- Parameters:
field (
str|DeferredAttribute|None, default:None) – The field to look up the values for. Defaults to first string field.return_field (
str|DeferredAttribute|None, default:None) – The field to return. IfNone, returns the whole record.keep – When multiple records are found for a lookup, how to return the records. -
"first": return the first record. -"last": return the last record. -False: return all records.
- Return type:
NamedTuple- Returns:
A
NamedTupleof lookup information of the field values with a dictionary converter.
See also
Examples
>>> import bionty as bt >>> bt.settings.organism = "human" >>> bt.Gene.from_source(symbol="ADGB-DT").save() >>> lookup = bt.Gene.lookup() >>> lookup.adgb_dt >>> lookup_dict = lookup.dict() >>> lookup_dict['ADGB-DT'] >>> lookup_by_ensembl_id = bt.Gene.lookup(field="ensembl_gene_id") >>> genes.ensg00000002745 >>> lookup_return_symbols = bt.Gene.lookup(field="ensembl_gene_id", return_field="symbol")
- classmethod using(instance)¶
Use a non-default LaminDB instance.
- Parameters:
instance (
str|None) – An instance identifier of form “account_handle/instance_name”.- Return type:
Examples
>>> ln.ULabel.using("account_handle/instance_name").search("ULabel7", field="name") uid score name ULabel7 g7Hk9b2v 100.0 ULabel5 t4Jm6s0q 75.0 ULabel6 r2Xw8p1z 75.0
- classmethod inspect(values, field=None, *, mute=False, organism=None, source=None, from_source=True, strict_source=False)¶
Inspect if values are mappable to a field.
Being mappable means that an exact match exists.
- Parameters:
values (
list[str] |Series|array) – Values that will be checked against the field.field (
str|DeferredAttribute|None, default:None) – The field of values. Examples are'ontology_id'to map against the source ID or'name'to map against the ontologies field names.mute (
bool, default:False) – Whether to mute logging.organism (
str|SQLRecord|None, default:None) – An Organism name or record.source (
SQLRecord|None, default:None) – Abionty.Sourcerecord that specifies the version to inspect against.strict_source (
bool, default:False) – Determines the validation behavior against records in the registry. - IfFalse, validation will include all records in the registry, ignoring the specified source. - IfTrue, validation will only include records in the registry that are linked to the specified source. Note: this parameter won’t affect validation against public sources.
- Return type:
bionty.base.dev.InspectResult
See also
Example:
import bionty as bt # save some gene records bt.Gene.from_values(["A1CF", "A1BG", "BRCA2"], field="symbol", organism="human").save() # inspect gene symbols gene_symbols = ["A1CF", "A1BG", "FANCD1", "FANCD20"] result = bt.Gene.inspect(gene_symbols, field=bt.Gene.symbol, organism="human") assert result.validated == ["A1CF", "A1BG"] assert result.non_validated == ["FANCD1", "FANCD20"]
- classmethod validate(values, field=None, *, mute=False, organism=None, source=None, strict_source=False)¶
Validate values against existing values of a string field.
Note this is strict_source validation, only asserts exact matches.
- Parameters:
values (
list[str] |Series|array) – Values that will be validated against the field.field (
str|DeferredAttribute|None, default:None) – The field of values. Examples are'ontology_id'to map against the source ID or'name'to map against the ontologies field names.mute (
bool, default:False) – Whether to mute logging.organism (
str|SQLRecord|None, default:None) – An Organism name or record.source (
SQLRecord|None, default:None) – Abionty.Sourcerecord that specifies the version to validate against.strict_source (
bool, default:False) – Determines the validation behavior against records in the registry. - IfFalse, validation will include all records in the registry, ignoring the specified source. - IfTrue, validation will only include records in the registry that are linked to the specified source. Note: this parameter won’t affect validation against public sources.
- Return type:
ndarray- Returns:
A vector of booleans indicating if an element is validated.
See also
Example:
import bionty as bt bt.Gene.from_values(["A1CF", "A1BG", "BRCA2"], field="symbol", organism="human").save() gene_symbols = ["A1CF", "A1BG", "FANCD1", "FANCD20"] bt.Gene.validate(gene_symbols, field=bt.Gene.symbol, organism="human") #> array([ True, True, False, False])
- classmethod from_values(values, field=None, create=False, organism=None, source=None, mute=False)¶
Bulk create validated records by parsing values for an identifier such as a name or an id).
- Parameters:
values (
list[str] |Series|array) – A list of values for an identifier, e.g.["name1", "name2"].field (
str|DeferredAttribute|None, default:None) – ASQLRecordfield to look up, e.g.,bt.CellMarker.name.create (
bool, default:False) – Whether to create records if they don’t exist.organism (
SQLRecord|str|None, default:None) – Abionty.Organismname or record.source (
SQLRecord|None, default:None) – Abionty.Sourcerecord to validate against to create records for.mute (
bool, default:False) – Whether to mute logging.
- Return type:
- Returns:
A list of validated records. For bionty registries. Also returns knowledge-coupled records.
Notes
For more info, see tutorial: Manage biological ontologies.
Example:
import bionty as bt # Bulk create from non-validated values will log warnings & returns empty list ulabels = ln.ULabel.from_values(["benchmark", "prediction", "test"]) assert len(ulabels) == 0 # Bulk create records from validated values returns the corresponding existing records ulabels = ln.ULabel.from_values(["benchmark", "prediction", "test"], create=True).save() assert len(ulabels) == 3 # Bulk create records from public reference bt.CellType.from_values(["T cell", "B cell"]).save()
- classmethod standardize(values, field=None, *, return_field=None, return_mapper=False, case_sensitive=False, mute=False, source_aware=True, keep='first', synonyms_field='synonyms', organism=None, source=None, strict_source=False)¶
Maps input synonyms to standardized names.
- Parameters:
values (
Iterable) – Identifiers that will be standardized.field (
str|DeferredAttribute|None, default:None) – The field representing the standardized names.return_field (
str|DeferredAttribute|None, default:None) – The field to return. Defaults to field.return_mapper (
bool, default:False) – IfTrue, returns{input_value: standardized_name}.case_sensitive (
bool, default:False) – Whether the mapping is case sensitive.mute (
bool, default:False) – Whether to mute logging.source_aware (
bool, default:True) – Whether to standardize from public source. Defaults toTruefor BioRecord registries.keep (
Literal['first','last',False], default:'first') –When a synonym maps to multiple names, determines which duplicates to mark as
pd.DataFrame.duplicated: -"first": returns the first mapped standardized name -"last": returns the last mapped standardized name -False: returns all mapped standardized name.When
keepisFalse, the returned list of standardized names will contain nested lists in case of duplicates.When a field is converted into return_field, keep marks which matches to keep when multiple return_field values map to the same field value.
synonyms_field (
str, default:'synonyms') – A field containing the concatenated synonyms.organism (
str|SQLRecord|None, default:None) – An Organism name or record.source (
SQLRecord|None, default:None) – Abionty.Sourcerecord that specifies the version to validate against.strict_source (
bool, default:False) – Determines the validation behavior against records in the registry. - IfFalse, validation will include all records in the registry, ignoring the specified source. - IfTrue, validation will only include records in the registry that are linked to the specified source. Note: this parameter won’t affect validation against public sources.
- Return type:
list[str] |dict[str,str]- Returns:
If
return_mapperisFalse– a list of standardized names. Otherwise, a dictionary of mapped values with mappable synonyms as keys and standardized names as values.
See also
add_synonym()Add synonyms.
remove_synonym()Remove synonyms.
Example:
import bionty as bt # save some gene records bt.Gene.from_values(["A1CF", "A1BG", "BRCA2"], field="symbol", organism="human").save() # standardize gene synonyms gene_synonyms = ["A1CF", "A1BG", "FANCD1", "FANCD20"] bt.Gene.standardize(gene_synonyms) #> ['A1CF', 'A1BG', 'BRCA2', 'FANCD20']
Methods¶
- restore()¶
Restore from trash onto the main branch.
- Return type:
None
- delete(permanent=None, **kwargs)¶
Delete record.
- Parameters:
permanent (
bool|None, default:None) – Whether to permanently delete the record (skips trash). IfNone, performs soft delete if the record is not already in the trash.- Return type:
None
Examples
For any
SQLRecordobjectrecord, call:>>> record.delete()
- save(*args, **kwargs)¶
Save.
Always saves to the default database.
- Return type:
TypeVar(T, bound= SQLRecord)
- add_synonym(synonym, force=False, save=None)¶
Add synonyms to a record.
- Parameters:
synonym (
str|list[str] |Series|array) – The synonyms to add to the record.force (
bool, default:False) – Whether to add synonyms even if they are already synonyms of other records.save (
bool|None, default:None) – Whether to save the record to the database.
See also
remove_synonym()Remove synonyms.
Example:
import bionty as bt # save "T cell" record record = bt.CellType.from_source(name="T cell").save() record.synonyms #> "T-cell|T lymphocyte|T-lymphocyte" # add a synonym record.add_synonym("T cells") record.synonyms #> "T cells|T-cell|T-lymphocyte|T lymphocyte"
- remove_synonym(synonym)¶
Remove synonyms from a record.
- Parameters:
synonym (
str|list[str] |Series|array) – The synonym values to remove.
See also
add_synonym()Add synonyms
Example:
import bionty as bt # save "T cell" record record = bt.CellType.from_source(name="T cell").save() record.synonyms #> "T-cell|T lymphocyte|T-lymphocyte" # remove a synonym record.remove_synonym("T-cell") record.synonyms #> "T lymphocyte|T-lymphocyte"
- set_abbr(value)¶
Set value for abbr field and add to synonyms.
- Parameters:
value (
str) – A value for an abbreviation.
See also
Example:
import bionty as bt # save an experimental factor record scrna = bt.ExperimentalFactor.from_source(name="single-cell RNA sequencing").save() assert scrna.abbr is None assert scrna.synonyms == "single-cell RNA-seq|single-cell transcriptome sequencing|scRNA-seq|single cell RNA sequencing" # set abbreviation scrna.set_abbr("scRNA") assert scrna.abbr == "scRNA" # synonyms are updated assert scrna.synonyms == "scRNA|single-cell RNA-seq|single cell RNA sequencing|single-cell transcriptome sequencing|scRNA-seq"