| Literature DB >> 27502585 |
Luke Slater1, Georgios V Gkoutos2,3, Paul N Schofield4, Robert Hoehndorf5.
Abstract
BACKGROUND: Reasoning over biomedical ontologies using their OWL semantics has traditionally been a challenging task due to the high theoretical complexity of OWL-based automated reasoning. As a consequence, ontology repositories, as well as most other tools utilizing ontologies, either provide access to ontologies without use of automated reasoning, or limit the number of ontologies for which automated reasoning-based access is provided.Entities:
Keywords: AberOWL; Description logics; OWL; Ontology; Reasoning; Scalable reasoning
Mesh:
Year: 2016 PMID: 27502585 PMCID: PMC4976511 DOI: 10.1186/s13326-016-0090-0
Source DB: PubMed Journal: J Biomed Semantics
Summary of Ontologies used in our test
| Total | 427 |
|---|---|
| Loadable | 368 |
| Used | 337 |
| Unobtainable | 39 |
| Non-parseable | 17 |
| Inconsistent | 3 |
| No Labels | 31 |
The loadable ontologies are the ones obtained from BioPortal which could be parsed using the OWL API and which were found to be consistent when classified with the ELK reasoner. We exclude 31 ontologies that do not contain any labels from our analysis
Fig. 1Query times as a function of the number of logical axioms in the ontologies, separated by the type of query
Fig. 2Query times as function of the number of logical axioms in the ontologies, separated by the number of queries executed in parallel
Fig. 3Query times over the NCI Thesaurus