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"""module contains the code all related to datasets"""
import json
from math import ceil
from collections import defaultdict
from typing import Optional
from typing import List
from dataclasses import dataclass
from MySQLdb import escape_string # type: ignore
import requests
from gn3.settings import GN2_BASE_URL
def retrieve_trait_sample_data(dataset,
trait_name: str,
database,
group_species_id=None) -> List:
"""given the dataset id and trait_name fetch the\
sample_name,value from the dataset"""
# should pass the db as arg all do a setup
(dataset_name, dataset_id, dataset_type) = (dataset.get("name"), dataset.get(
"id"), dataset.get("type"))
dataset_query = get_query_for_dataset_sample(dataset_type)
results = []
sample_query_values = {
"Publish": (trait_name, dataset_id),
"Geno": (group_species_id, trait_name, dataset_name),
"ProbeSet": (trait_name, dataset_name)
}
if dataset_query:
formatted_query = dataset_query % sample_query_values[dataset_type]
results = fetch_from_db_sample_data(formatted_query, database)
return results
def fetch_from_db_sample_data(formatted_query: str, database_instance) -> List:
"""this is the function that does the actual fetching of\
results from the database"""
try:
cursor = database_instance.cursor()
cursor.execute(formatted_query)
results = cursor.fetchall()
except Exception as error:
raise error
cursor.close()
return results
def get_query_for_dataset_sample(dataset_type) -> Optional[str]:
"""this functions contains querys for\
getting sample data from the db depending in
dataset"""
dataset_query = {}
pheno_query = """
SELECT
Strain.Name, PublishData.value, PublishSE.error,NStrain.count, Strain.Name2
FROM
(PublishData, Strain, PublishXRef, PublishFreeze)
left join PublishSE on
(PublishSE.DataId = PublishData.Id AND PublishSE.StrainId = PublishData.StrainId)
left join NStrain on
(NStrain.DataId = PublishData.Id AND
NStrain.StrainId = PublishData.StrainId)
WHERE
PublishXRef.InbredSetId = PublishFreeze.InbredSetId AND
PublishData.Id = PublishXRef.DataId AND PublishXRef.Id = %s AND
PublishFreeze.Id = %s AND PublishData.StrainId = Strain.Id
Order BY
Strain.Name
"""
geno_query = """
SELECT
Strain.Name, GenoData.value, GenoSE.error, "N/A", Strain.Name2
FROM
(GenoData, GenoFreeze, Strain, Geno, GenoXRef)
left join GenoSE on
(GenoSE.DataId = GenoData.Id AND GenoSE.StrainId = GenoData.StrainId)
WHERE
Geno.SpeciesId = %s AND Geno.Name = %s AND GenoXRef.GenoId = Geno.Id AND
GenoXRef.GenoFreezeId = GenoFreeze.Id AND
GenoFreeze.Name = %s AND
GenoXRef.DataId = GenoData.Id AND
GenoData.StrainId = Strain.Id
Order BY
Strain.Name
"""
probeset_query = """
SELECT
Strain.Name, ProbeSetData.value, ProbeSetSE.error, NStrain.count, Strain.Name2
FROM
(ProbeSetData, ProbeSetFreeze,
Strain, ProbeSet, ProbeSetXRef)
left join ProbeSetSE on
(ProbeSetSE.DataId = ProbeSetData.Id AND ProbeSetSE.StrainId = ProbeSetData.StrainId)
left join NStrain on
(NStrain.DataId = ProbeSetData.Id AND
NStrain.StrainId = ProbeSetData.StrainId)
WHERE
ProbeSet.Name = '%s' AND ProbeSetXRef.ProbeSetId = ProbeSet.Id AND
ProbeSetXRef.ProbeSetFreezeId = ProbeSetFreeze.Id AND
ProbeSetFreeze.Name = '%s' AND
ProbeSetXRef.DataId = ProbeSetData.Id AND
ProbeSetData.StrainId = Strain.Id
Order BY
Strain.Name
"""
dataset_query["Publish"] = pheno_query
dataset_query["Geno"] = geno_query
dataset_query["ProbeSet"] = probeset_query
return dataset_query.get(dataset_type)
@dataclass
class Dataset:
"""class for creating datasets"""
name: Optional[str] = None
dataset_type: Optional[str] = None
dataset_id: int = -1
def create_mrna_tissue_dataset(dataset_name, dataset_type):
"""an mrna assay is a quantitative assessment(assay) associated\
with an mrna trait.This used to be called probeset,but that term\
only referes specifically to the afffymetrix platform and is\
far too speficified"""
return Dataset(name=dataset_name, dataset_type=dataset_type)
def dataset_type_getter(dataset_name, redis_instance=None) -> Optional[str]:
"""given the dataset name fetch the type\
of the dataset this in turn enables fetching\
the creation of the correct object could utilize\
redis for the case"""
results = redis_instance.get(dataset_name, None)
if results:
return results
return fetch_dataset_type_from_gn2_api(dataset_name)
def fetch_dataset_type_from_gn2_api(dataset_name):
"""this function is only called when the\
the redis is empty and does have the specificied\
dataset_type"""
# should only run once
dataset_structure = {}
map_dataset_to_new_type = {
"Phenotypes": "Publish",
"Genotypes": "Geno",
"MrnaTypes": "ProbeSet"
}
data = json.loads(requests.get(
GN2_BASE_URL + "/api/v_pre1/gen_dropdown", timeout=5).content)
_name = dataset_name
for species in data['datasets']:
for group in data['datasets'][species]:
for dataset_type in data['datasets'][species][group]:
for dataset in data['datasets'][species][group][dataset_type]:
# assumes the first is dataset_short_name
short_dataset_name = next(
item for item in dataset if item != "None" and item is not None)
dataset_structure[short_dataset_name] = map_dataset_to_new_type.get(
dataset_type, "MrnaTypes")
return dataset_structure
def dataset_creator_store(dataset_type):
"""function contains key value pairs for\
the function need to be called to create\
each dataset_type"""
dataset_obj = {
"ProbeSet": create_mrna_tissue_dataset
}
return dataset_obj[dataset_type]
def create_dataset(dataset_type=None, dataset_name: str = None):
"""function for creating new dataset temp not implemented"""
if dataset_type is None:
dataset_type = dataset_type_getter(dataset_name)
dataset_creator = dataset_creator_store(dataset_type)
results = dataset_creator(
dataset_name=dataset_name, dataset_type=dataset_type)
return results
def fetch_dataset_sample_id(samplelist: List, database, species: str) -> dict:
"""fetch the strain ids from the db only if\
it is in the samplelist"""
# xtodo create an in clause for samplelist
strain_query = """
SELECT Strain.Name, Strain.Id FROM Strain, Species
WHERE Strain.Name IN {}
and Strain.SpeciesId=Species.Id
and Species.name = '{}'
"""
database_cursor = database.cursor()
database_cursor.execute(strain_query.format(samplelist, species))
results = database_cursor.fetchall()
return dict(results)
def divide_into_chunks(the_list, number_chunks):
"""Divides a list into approximately number_chunks
>>> divide_into_chunks([1, 2, 7, 3, 22, 8, 5, 22, 333], 3)
[[1, 2, 7], [3, 22, 8], [5, 22, 333]]"""
length = len(the_list)
if length == 0:
return [[]]
if length <= number_chunks:
number_chunks = length
chunk_size = int(ceil(length/number_chunks))
chunks = []
for counter in range(0, length, chunk_size):
chunks.append(the_list[counter:counter+chunk_size])
return chunks
def escape(string_):
"""function escape sql value"""
return escape_string(string_).decode('utf8')
def mescape(*items) -> List:
"""multiple escape for query values"""
return [escape_string(str(item)).decode('utf8') for item in items]
def get_traits_data(sample_ids, database_instance, dataset_name, dataset_type):
"""function to fetch trait data"""
# MySQL limits the number of tables that can be used in a join to 61,
# so we break the sample ids into smaller chunks
# Postgres doesn't have that limit, so we can get rid of this after we transition
_trait_data = defaultdict(list)
chunk_size = 61
number_chunks = int(ceil(len(sample_ids) / chunk_size))
for sample_ids_step in divide_into_chunks(sample_ids, number_chunks):
if dataset_type == "Publish":
full_dataset_type = "Phenotype"
else:
full_dataset_type = dataset_type
temp = ['T%s.value' % item for item in sample_ids_step]
if dataset_type == "Publish":
query = "SELECT {}XRef.Id,".format(escape(dataset_type))
else:
query = "SELECT {}.Name,".format(escape(full_dataset_type))
query += ', '.join(temp)
query += ' FROM ({}, {}XRef, {}Freeze) '.format(*mescape(full_dataset_type,
dataset_type,
dataset_type))
for item in sample_ids_step:
query += """
left join {}Data as T{} on T{}.Id = {}XRef.DataId
and T{}.StrainId={}\n
""".format(*mescape(dataset_type, item,
item, dataset_type, item, item))
if dataset_type == "Publish":
query += """
WHERE {}XRef.{}FreezeId = {}Freeze.Id
and {}Freeze.Name = '{}'
and {}.Id = {}XRef.{}Id
order by {}.Id
""".format(*mescape(dataset_type, dataset_type,
dataset_type, dataset_type,
dataset_name, full_dataset_type,
dataset_type, dataset_type,
full_dataset_type))
else:
query += """
WHERE {}XRef.{}FreezeId = {}Freeze.Id
and {}Freeze.Name = '{}'
and {}.Id = {}XRef.{}Id
order by {}.Id
""".format(*mescape(dataset_type, dataset_type,
dataset_type, dataset_type,
dataset_name, dataset_type,
dataset_type, dataset_type,
full_dataset_type))
# print(query)
_results = fetch_from_db_sample_data(query, database_instance)
return {}
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