Litcius/Paper detail

Chemical reaction network knowledge graphs: the OntoRXN ontology

Diego Garay‐Ruiz, Carles Bó

2022Journal of Cheminformatics15 citationsDOIOpen Access PDF

Abstract

The organization and management of large amounts of data has become a major point in almost all areas of human knowledge. In this context, semantic approaches propose a structure for the target data, defining ontologies that state the types of entities on a certain field and how these entities are interrelated. In this work, we introduce OntoRXN, a novel ontology describing the reaction networks constructed from computational chemistry calculations. Under our paradigm, these networks are handled as undirected graphs, without assuming any traversal direction. From there, we propose a core class structure including reaction steps, network stages, chemical species, and the lower-level entities for the individual computational calculations. These individual calculations are founded on the OntoCompChem ontology and on the ioChem-BD database, where information is parsed and stored in CML format. OntoRXN is introduced through several examples in which knowledge graphs based on the ontology are generated for different chemical systems available on ioChem-BD. Finally, the resulting knowledge graphs are explored through SPARQL queries, illustrating the power of the semantic approach to standardize the analysis of intricate datasets and to simplify the development of complex workflows.

Topics & Concepts

Computer scienceOntologyTree traversalWorkflowSPARQLContext (archaeology)Information retrievalTheoretical computer scienceRDFSemantic WebDatabaseAlgorithmPaleontologyBiologyEpistemologyPhilosophyComputational Drug Discovery MethodsBioinformatics and Genomic NetworksMachine Learning in Materials Science