A python library to fetch metadata from NCBI and MetaSRA for a list of NCBI accessions and data extraction from ARCHS4
Simply run the following
pip install metadatamapping
or clone the repository
git clone git@github.com:dmalzl/metadatamapping.git
and run
cd metadatamapping
pip install .
you should then be able to import the package as usual
NCBI sample, experiment, biosample or geo accessions can be mapped to SRA uids using the map_accessions_to_srauids
function from the metadata
module of the package. The call to the function as shown below invokes two processes that concurrently fetch the SRA UIDs for the accessions in batches and write the results to the outputfile "/path/to/outputfile"
.
from metadatamapping import metadata
sra_uids = metadata.map_accessions_to_srauids(
accessions,
"/path/to/outputfile",
n_processes = 2
)
The resulting SRA UIDs can then either be used to retrieve all associated accessions from the SRA with the srauids_to_accessions
function from the metadata
module like so
from metadatamapping import metadata
ncbi_accessions = metadata.srauids_to_accessions(
sra_uids
)
or link them to BioSample UIDs and then retrieve the associated metadata with the link_sra_to_biosample
function from the link
module and the biosampleuids_to_metadata
function from the metadata module
from metadatamapping import metadata, link
srauids_to_biosampleuids = link.link_sra_to_biosample(
sra_uids.uid
)
biosample_metadata = metadata.biosample_uids_to_metadata(
srauids_to_biosampleuids.biosample
)
Finally we can retrieve normalized metadata for the samples from MetaSRA using the metasra_from_study_id
function of the metadata
module (note that this database might not contain data for all your samples so the function may only returns normalized metadata for some of your samples)
from metadatamapping import metadata
metasra_metadata = metadata.metasra_from_study_id(
ncbi_accessions.study.unique()
)
While most of the biosample metadata is also found in GEO entries some of the metadata provided in GEO (e.g. treatment protocol) is GEO exclusive but may contain vital information. Because this data is not retrievable from the Entrez API, we adopted a similar approach to geofetch
and download the data from the GEO FTP. An example usage would be as follows:
from metadatamapping import metadata
import pandas as pd
geo_accessions = pd.DataFrame(
[
('GSM2791352', 'GSE104174'),
('GSM2771062', 'GSE103424'),
('GSM6271252', 'GSE207049'),
('GSM4329764', 'GSE145668,GSE145669'),
('GSM5064568', 'GSE166148,GSE166150')
],
columns = ['GSM', 'GSE']
)
geo_metadata = metadata.fetch_geo_metadata(
geo_accessions,
'/path/to/outputfile',
n_processes = 24
)
Additionally, the package provides an interface for parsing the ARCHS4 HDF5 format which is located in the archs4
module and handles parsing of associated metadata with the get_filtered_sample_metadata
function as well as extraction of expression data in the AnnData
format with the samples
function
archs4_file = "/path/to/archs4.h5"
retain_keys = [
'geo_accession', 'characteristics_ch1', 'molecule_ch1', 'readsaligned', 'relation',
'series_id', 'singlecellprobability', 'source_name_ch1', 'title'
]
archs4_metadata = archs4.get_filtered_sample_metadata(
archs4_file,
retain_keys
)
archs4_adata = archs4.samples(
archs4_file,
dataframe_indexed_by_geo_accessions,
n_processes = 2
)
For a full demonstration of usage please refer to the Snakefile
in the examples
directory which gives an overview of how the intended usage looks like.
metadatamapping
retrieves data from the Entrez eUtilities using the biopython
interface. By default the Entrez API only allows 3 requests per second if Entrez.email
and Entrez.api_key
are not set. This can be increased by setting these properties accordingly which also speeds up the most timeconsuming part of the pipeline which is the accession -> SRA UID mapping as this relies on eSearch which only allows for one accession at a time (maybe it also takes several but I did not test this as I expect it to be cumbersome to pull apart then). So please make sure to set the Entrez
properties accordingly like so
from Bio import Entrez
Entrez.email = "<user>@<provider>.<domain>"
Entrez.api_key = "<NCBI API key>
The email typically is the email associated to your NCBI account. The API key can be generated as described here