Integrating phenotype ontologies with PhenomeNET

Abstract Background Integration and analysis of phenotype data from humans and model organisms is a key challenge in building our understanding of normal biology and pathophysiology. However, the range of phenotypes and anatomical details being captured in clinical and model organism databases presents complex problems when attempting to match classes across species and across phenotypes as diverse as behaviour and neoplasia. We have previously developed PhenomeNET, a system for disease gene prioritization that includes as one of its components an ontology designed to integrate phenotype ontologies. While not applicable to matching arbitrary ontologies, PhenomeNET can be used to identify related phenotypes in different species, including human, mouse, zebrafish, nematode worm, fruit fly, and yeast. Results Here, we apply the PhenomeNET to identify related classes from two phenotype and two disease ontologies using automated reasoning. We demonstrate that we can identify a large number of mappings, some of which require automated reasoning and cannot easily be identified through lexical approaches alone. Combining automated reasoning with lexical matching further improves results in aligning ontologies. Conclusions PhenomeNET can be used to align and integrate phenotype ontologies. The results can be utilized for biomedical analyses in which phenomena observed in model organisms are used to identify causative genes and mutations underlying human disease.

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PID https://www.doi.org/10.6084/m9.figshare.c.3958477
PID https://www.doi.org/10.6084/m9.figshare.c.3958477.v1
URL https://dx.doi.org/10.6084/m9.figshare.c.3958477
URL https://dx.doi.org/10.6084/m9.figshare.c.3958477.v1
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Author RodrĂ­Guez-GarcĂ­A, Miguel
Author Gkoutos, Georgios
Author Schofield, Paul
Author Hoehndorf, Robert
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Collected From Datacite
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Publication Date 2017-12-20
Publisher Figshare
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keyword FOS: Health sciences
keyword FOS: Biological sciences
keyword FOS: Computer and information sciences
system:type dataset
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Source https://science-innovation-policy.openaire.eu/search/dataset?datasetId=dedup_wf_001::db84c58f07cc985077831bab9545a0b0
Author jsonws_user
Last Updated 14 January 2021, 11:15 (CET)
Created 14 January 2021, 11:15 (CET)