Integrated registry of biological databases and nomenclatures
Project description
Bioregistry
A community-driven integrative meta-registry of biological databases, ontologies, and other resources.
More information here.
The Bioregistry can be accessed, searched, and queried through its associated website at https://bioregistry.io.
📥 Download
The underlying data of the Bioregistry can be downloaded directly from here. Several exports to YAML, TSV, and RDF can be downloaded via https://bioregistry.io/download.
The manually curated portions of these data are available under the CC0 1.0 Universal License.
🙏 Contributing
If you'd like to request a new prefix, please fill out this issue template. It will automatically generate a pull request!
There are a few other issue templates for certain updates (e.g., update regex, merge two prefixes, etc.) that you can check here. For anything updates that don't have a corresponding template, feel free to leave a freeform issue for us!
If you want to make a direct contribution, feel free to make edits directly to the bioregistry.json file through the GitHub interface.
Things that would be helpful:
- For all entries, add a
["wikidata"]["database"]
entry. Many ontologies and databases don't have a property in Wikidata because the process of adding a new property is incredibly cautious. However, anyone can add a database as normal Wikidata item with a Q prefix. One example is UniPathway, whose Wikidata database item is Q85719315. If there's no database item on Wikidata, you can even make one! Note: don't mix this up with a paper describing the resource, Q35631060. If you see there's a paper, you can add it under the["wikidata"]["paper"]
key. - Adding
["homepage"]
entry for any entry that doesn't have an external reference
A full list of curation to-do's is automatically generated as a web page here. This page also has a more in-depth tutorial on how to contribute.
🧹 Maintenance
🫀 Health Report
The Bioregistry runs some automated tests weekly to check that various metadata haven't gone stale. For example, it checks that the homepages are still available and that each provider URL is still able to resolve. The tests fail if even a single metadata is out of place, so don't be frightened that this badge is almost always red.
♻️ Update
The database is automatically updated daily thanks to scheduled workflows in GitHub Actions. The workflow's configuration can be found here and the last run can be seen here. Further, a changelog can be recapitulated from the commits of the GitHub Actions bot.
If you want to manually update the database after installing in development mode, run the following:
$ bioregistry update
🚀 Installation
The Bioregistry can be installed from PyPI with:
$ pip install bioregistry
It can be installed in development mode for local curation with:
$ git clone https://github.com/bioregistry/bioregistry.git
$ cd bioregistry
$ pip install --editable .
💪 Usage
Normalizing Prefixes
The Bioregistry can be used to normalize prefixes across MIRIAM and all the (very plentiful) variants that pop up in
ontologies in OBO Foundry and the OLS with the normalize_prefix()
function.
import bioregistry
# This works for synonym prefixes, like:
assert 'ncbitaxon' == bioregistry.normalize_prefix('taxonomy')
# This works for common mistaken prefixes, like:
assert 'pubchem.compound' == bioregistry.normalize_prefix('pubchem')
# This works for prefixes that are often written many ways, like:
assert 'eccode' == bioregistry.normalize_prefix('ec-code')
assert 'eccode' == bioregistry.normalize_prefix('EC_CODE')
# If a prefix is not registered, it gives back `None`
assert bioregistry.normalize_prefix('not a real key') is None
Parsing IRIs
The Bioregistry can be used to parse CURIEs from IRIs due to its vast registry of provider URL strings and additional programmatic logic implemented with Python. It can parse OBO Library PURLs, IRIs from the OLS and identifiers.org, IRIs from the Bioregistry website, and any other IRIs from well-formed providers registered in the Bioregistry.
import bioregistry
# First-party IRI
assert ('chebi', '24867') == bioregistry.parse_iri('https://www.ebi.ac.uk/chebi/searchId.do?chebiId=CHEBI:24867')
# OBO Library PURL
assert ('chebi', '24867') == bioregistry.parse_iri('http://purl.obolibrary.org/obo/CHEBI_24867')
# OLS IRI
assert ('chebi', '24867') == bioregistry.parse_iri('https://www.ebi.ac.uk/ols/ontologies/chebi/terms?iri=http://purl.obolibrary.org/obo/CHEBI_24867')
# Identifiers.org IRIs (with varying usage of HTTP(s) and colon/slash separator
assert ('chebi', '24867') == bioregistry.parse_iri('https://identifiers.org/CHEBI:24867')
assert ('chebi', '24867') == bioregistry.parse_iri('http://identifiers.org/CHEBI:24867')
assert ('chebi', '24867') == bioregistry.parse_iri('https://identifiers.org/CHEBI/24867')
assert ('chebi', '24867') == bioregistry.parse_iri('http://identifiers.org/CHEBI/24867')
# Bioregistry IRI
assert ('chebi', '24867') == bioregistry.parse_iri('https://bioregistry.io/chebi:24867')
Getting Metadata
The pattern for an entry in the Bioregistry can be looked up quickly with get_pattern()
if
it exists. It prefers the custom curated, then MIRIAM, then Wikidata pattern.
import bioregistry
assert '^GO:\\d{7}$' == bioregistry.get_pattern('go')
Entries in the Bioregistry can be checked for deprecation with the is_deprecated()
function. MIRIAM and OBO Foundry
don't often agree - OBO Foundry takes precedence since it seems to be updated more often.
import bioregistry
assert bioregistry.is_deprecated('nmr')
assert not bioregistry.is_deprecated('efo')
Entries in the Bioregistry can be looked up with the get_resource()
function.
import bioregistry
entry = bioregistry.get_resource('taxonomy')
# there are lots of mysteries to discover in this dictionary!
The full Bioregistry can be read in a Python project using:
import bioregistry
registry = bioregistry.read_registry()
🕸️ Resolver App
After installing with the [web]
extras, run the resolver CLI with
$ bioregistry web
to run a web app that functions like Identifiers.org, but backed by the Bioregistry. A public instance of this app is hosted by the INDRA Lab at https://bioregistry.io.
⚖️ License
The code in this repository is licensed under the MIT License.
📖 Citation
Hopefully there will be a paper describing this resource on bioRxiv sometime in 2021! Until then, you can use the Zenodo BibTeX or CSL.
🎁 Support
The Bioregistry was developed by the INDRA Lab, a part of the Laboratory of Systems Pharmacology and the Harvard Program in Therapeutic Science (HiTS) at Harvard Medical School.
💰 Funding
The development of the Bioregistry is funded by the DARPA Young Faculty Award W911NF2010255 (PI: Benjamin M. Gyori).
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