Motivation: Ontologies contain formal and structured information about a domain and are widely used in bioinformatics for annotation and integration of data. Several methods use ontologies to provide background knowledge in machine learning tasks, which is of particular importance in bioinformatics. These methods rely on a set of common primitives that are not readily available in a software library; a library providing these primitives would facilitate the use of current machine learning methods with ontologies and the development of novel methods for other ontology-based biomedical applications. Results: We developed mOWL, a Python library for machine learning with ontologies formalized in the Web Ontology Language (OWL). mOWL implements ontology embedding methods that map information contained in formal knowledge bases and ontologies into vector spaces while preserving some of the properties and relations in ontologies, as well as methods to use these embeddings for similarity computation, deductive inference and zero-shot learning. We demonstrate mOWL on the knowledge-based prediction of protein–protein interactions using the gene ontology and gene–disease associations using phenotype ontologies.
CITATION STYLE
Zhapa-Camacho, F., Kulmanov, M., & Hoehndorf, R. (2023). mOWL: Python library for machine learning with biomedical ontologies. Bioinformatics, 39(1). https://doi.org/10.1093/bioinformatics/btac811
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