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NetworkX-based Python library for representing ontologies

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Summary

nxontology is a Python library for representing ontologies using a NetworkX graph. Currently, the main area of functionality is computing similarity measures between pairs of nodes.

Usage

Here, we'll use the example metals ontology:

Metals ontology from Couto & Silva (2011)

Note that NXOntology represents the ontology as a networkx.DiGraph, where edge direction goes from superterm to subterm.

Given an NXOntology instance, here how to compute intrinsic similarity metrics.

from nxontology.examples import create_metal_nxo
metals = create_metal_nxo()
# Freezing the ontology prevents adding or removing nodes or edges.
# Frozen ontologies cache expensive computations.
metals.freeze()
# Get object for computing similarity, using the Sanchez et al metric for information content.
similarity = metals.similarity("gold", "silver", ic_metric="intrinsic_ic_sanchez")
# Access a single similarity metric
similarity.lin
# Access all similarity metrics
similarity.results()

The final line outputs a dictionary like:

{
    'node_0': 'gold',
    'node_1': 'silver',
    'node_0_subsumes_1': False,
    'node_1_subsumes_0': False,
    'n_common_ancestors': 3,
    'n_union_ancestors': 5,
    'batet': 0.6,
    'batet_log': 0.5693234419266069,
    'ic_metric': 'intrinsic_ic_sanchez',
    'mica': 'coinage',
    'resnik': 0.8754687373538999,
    'resnik_scaled': 0.48860840553061435,
    'lin': 0.5581154235118403, 
    'jiang': 0.41905978419640516,
    'jiang_seco': 0.6131471927654584,
}

It's also possible to visualize the similarity between two nodes like:

from nxontology.viz import create_similarity_graphviz
gviz = create_similarity_graphviz(
    # similarity instance from above
    similarity,
    # show all nodes (defaults to union of ancestors)
    nodes=list(metals.graph),
)
# draw to PNG file
gviz.draw("metals-sim-gold-silver-all.png"))

Resulting in the following figure:

Metals ontology from Couto & Silva (2011) showing similarity between gold and silver

The two query nodes (gold & silver) are outlined with a bold dashed line. Node fill color corresponds to the Sánchez information content, such that darker nodes have higher IC. The most informative common ancestor (coinage) is outlined with a bold solid line. Nodes that are not an ancestor of gold or silver have an invisible outline.

Loading ontologies

Pronto supports reading ontologies from the following file formats:

  1. Open Biomedical Ontologies 1.4: .obo extension, uses the fastobo parser.
  2. OBO Graphs JSON: .json extension, uses the fastobo parser.
  3. Ontology Web Language 2 RDF/XML: .owl extension, uses the pronto RdfXMLParser.

The files can be local or at a network location (URL starting with https, http, or ftp). Pronto detects and handles gzip, bzip2, and xz compression.

Here are examples operations on the Gene Ontology, using pronto to load the ontology:

>>> from nxontology.imports import from_file
>>> # versioned URL for the Gene Ontology
>>> url = "http://release.geneontology.org/2021-02-01/ontology/go-basic.json.gz"
>>> nxo = from_file(url)
>>> nxo.n_nodes
44085
>>> # similarity between "myelination" and "neurogenesis"
>>> sim = nxo.similarity("GO:0042552", "GO:0022008")
>>> round(sim.lin, 2)
0.21
>>> import networkx as nx
>>> # Gene Ontology domains are disconnected, expect 3 components
>>> nx.number_weakly_connected_components(nxo.graph)
3
>>> # Note however that the default from_file reader only uses "is a" relationships.
>>> # We can preserve all GO relationship types as follows
>>> from collections import Counter
>>> import pronto
>>> from nxontology import NXOntology
>>> from nxontology.imports import pronto_to_multidigraph, multidigraph_to_digraph
>>> go_pronto = pronto.Ontology(handle=url)
>>> go_multidigraph = pronto_to_multidigraph(go_pronto)
>>> Counter(key for _, _, key in go_multidigraph.edges(keys=True))
Counter({'is a': 71509,
         'part of': 7187,
         'regulates': 3216,
         'negatively regulates': 2768,
         'positively regulates': 2756})
>>> go_digraph = multidigraph_to_digraph(go_multidigraph, reduce=True)
>>> go_nxo = NXOntology(go_digraph)
>>> # Notice the similarity increases due to the full set of edges
>>> round(go_nxo.similarity("GO:0042552", "GO:0022008").lin, 3)
0.699
>>> # Note that there is also a dedicated reader for the Gene Ontology
>>> from nxontology.imports import read_gene_ontology
>>> read_gene_ontology(release="2021-02-01")

Users can also create their own networkx.DiGraph to use this package.

Prebuilt Ontologies

The nxontology-data repository creates NXOntology objects for many popular ontologies / taxonomies.

Installation

nxontology can be installed with pip from PyPI like:

# standard installation
pip install nxontology

# installation with viz extras
pip install nxontology[viz]

The extra viz dependencies are required for the nxontology.viz module. This includes pygraphviz, which requires a pre-existing graphviz installation.

Development

Some helpful development commands:

# create a virtual environment for development
python3 -m venv .venv

# activate virtual environment
source .venv/bin/activate

# install package for development
pip install --editable ".[dev,viz]"

# Set up the git pre-commit hooks.
# `git commit` will now trigger automatic checks including linting.
pre-commit install

# Run all pre-commit checks (CI will also run this).
pre-commit run --all

# run tests
pytest

Releases are created on GitHub. The release action defined by release.yaml will build the distribution and upload to PyPI. The package version is automatically generated from the git tag by setuptools_scm.

Bibliography

Here's a list of alternative projects with code for computing semantic similarity measures on ontologies:

Below are a list of references related to ontology-derived measures of similarity. Feel free to add any reference that provides useful context and details for algorithms supported by this package. Metadata for a reference can be generated like manubot cite --yml doi:10.1016/j.jbi.2011.03.013. Adding CSL YAML output to media/bibliography.yaml will cache the metadata and allow manual edits in case of errors.

  1. Semantic Similarity in Biomedical Ontologies
    Catia Pesquita, Daniel Faria, André O. Falcão, Phillip Lord, Francisco M. Couto
    PLoS Computational Biology (2009-07-31) https://doi.org/cx8h87
    DOI: 10.1371/journal.pcbi.1000443 · PMID: 19649320 · PMCID: PMC2712090

  2. An Intrinsic Information Content Metric for Semantic Similarity in WordNet.
    Nuno Seco, Tony Veale, Jer Hayes
    In Proceedings of the 16th European Conference on Artificial Intelligence (ECAI-04), (2004) https://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.1065.1695

  3. Metrics for GO based protein semantic similarity: a systematic evaluation
    Catia Pesquita, Daniel Faria, Hugo Bastos, António EN Ferreira, André O Falcão, Francisco M Couto
    BMC Bioinformatics (2008-04-29) https://doi.org/cmcgw6
    DOI: 10.1186/1471-2105-9-s5-s4 · PMID: 18460186 · PMCID: PMC2367622

  4. Semantic similarity and machine learning with ontologies
    Maxat Kulmanov, Fatima Zohra Smaili, Xin Gao, Robert Hoehndorf
    Briefings in Bioinformatics (2020-10-13) https://doi.org/ghfqkt
    DOI: 10.1093/bib/bbaa199 · PMID: 33049044

  5. Semantic Similarity in a Taxonomy: An Information-Based Measure and its Application to Problems of Ambiguity in Natural Language
    P. Resnik
    Journal of Artificial Intelligence Research (1999-07-01) https://doi.org/gftcpz
    DOI: 10.1613/jair.514

  6. An Information-Theoretic Definition of Similarity
    Dekang Lin
    ICML (1998) https://api.semanticscholar.org/CorpusID:5659557

  7. ontologyX: a suite of R packages for working with ontological data
    Daniel Greene, Sylvia Richardson, Ernest Turro
    Bioinformatics (2017-01-05) https://doi.org/f9k7sx
    DOI: 10.1093/bioinformatics/btw763 · PMID: 28062448 · PMCID: PMC5386138

  8. Metric of intrinsic information content for measuring semantic similarity in an ontology
    Md. Hanif Seddiqui, Masaki Aono
    Proceedings of the Seventh Asia-Pacific Conference on Conceptual Modelling - Volume 110 (2010-01-01) https://dl.acm.org/doi/10.5555/1862330.1862343
    ISBN: 9781920682927

  9. Disjunctive shared information between ontology concepts: application to Gene Ontology
    Francisco M Couto, Mário J Silva
    Journal of Biomedical Semantics (2011) https://doi.org/fnb73v
    DOI: 10.1186/2041-1480-2-5 · PMID: 21884591 · PMCID: PMC3200982

  10. A framework for unifying ontology-based semantic similarity measures: A study in the biomedical domain
    Sébastien Harispe, David Sánchez, Sylvie Ranwez, Stefan Janaqi, Jacky Montmain
    Journal of Biomedical Informatics (2014-04) https://doi.org/f52557
    DOI: 10.1016/j.jbi.2013.11.006 · PMID: 24269894

  11. Semantic Similarity in Cheminformatics
    João D. Ferreira, Francisco M. Couto
    IntechOpen (2020-07-15) https://doi.org/ghh2d4
    DOI: 10.5772/intechopen.89032

  12. An ontology-based measure to compute semantic similarity in biomedicine
    Montserrat Batet, David Sánchez, Aida Valls
    Journal of Biomedical Informatics (2011-02) https://doi.org/dfhkjv
    DOI: 10.1016/j.jbi.2010.09.002 · PMID: 20837160

  13. Semantic similarity in the biomedical domain: an evaluation across knowledge sources
    Vijay N Garla, Cynthia Brandt
    BMC Bioinformatics (2012-10-10) https://doi.org/gb8vpn
    DOI: 10.1186/1471-2105-13-261 · PMID: 23046094 · PMCID: PMC3533586

  14. Semantic similarity estimation in the biomedical domain: An ontology-based information-theoretic perspective
    David Sánchez, Montserrat Batet
    Journal of Biomedical Informatics (2011-10) https://doi.org/d2436q
    DOI: 10.1016/j.jbi.2011.03.013 · PMID: 21463704

  15. Ontology-based information content computation
    David Sánchez, Montserrat Batet, David Isern
    Knowledge-Based Systems (2011-03) https://doi.org/cwzw4r
    DOI: 10.1016/j.knosys.2010.10.001

  16. Leveraging synonymy and polysemy to improve semantic similarity assessments based on intrinsic information content
    Montserrat Batet, David Sánchez
    Artificial Intelligence Review (2019-06-03) https://doi.org/ghnfmt
    DOI: 10.1007/s10462-019-09725-4

  17. An intrinsic information content-based semantic similarity measure considering the disjoint common subsumers of concepts of an ontology
    Abhijit Adhikari, Biswanath Dutta, Animesh Dutta, Deepjyoti Mondal, Shivang Singh
    Journal of the Association for Information Science and Technology (2018-08) https://doi.org/gd2j5b
    DOI: 10.1002/asi.24021