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Title: ConceptMetab: exploring relationships among metabolite sets to identify links among biomedical concepts.

Authors: Cavalcante, Raymond G; Patil, Snehal; Weymouth, Terry E; Bendinskas, Kestutis G; Karnovsky, Alla; Sartor, Maureen A

Published In Bioinformatics, (2016 May 15)

Abstract: Capabilities in the field of metabolomics have grown tremendously in recent years. Many existing resources contain the chemical properties and classifications of commonly identified metabolites. However, the annotation of small molecules (both endogenous and synthetic) to meaningful biological pathways and concepts still lags behind the analytical capabilities and the chemistry-based annotations. Furthermore, no tools are available to visually explore relationships and networks among functionally related groups of metabolites (biomedical concepts). Such a tool would provide the ability to establish testable hypotheses regarding links among metabolic pathways, cellular processes, phenotypes and diseases.Here we present ConceptMetab, an interactive web-based tool for mapping and exploring the relationships among 16 069 biologically defined metabolite sets developed from Gene Ontology, KEGG and Medical Subject Headings, using both KEGG and PubChem compound identifiers, and based on statistical tests for association. We demonstrate the utility of ConceptMetab with multiple scenarios, showing it can be used to identify known and potentially novel relationships among metabolic pathways, cellular processes, phenotypes and diseases, and provides an intuitive interface for linking compounds to their molecular functions and higher level biological effects.http://conceptmetab.med.umich.eduakarnovsky@umich.edu or sartorma@umich.eduSupplementary data are available at Bioinformatics online.

PubMed ID: 26794319 Exiting the NIEHS site

MeSH Terms: No MeSH terms associated with this publication

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