4.6 Article

GOnet: a tool for interactive Gene Ontology analysis

Journal

BMC BIOINFORMATICS
Volume 19, Issue -, Pages -

Publisher

BMC
DOI: 10.1186/s12859-018-2533-3

Keywords

Gene ontology; GSEA; Interactive; Web-app; Genomics; Proteomics; Data analysis

Funding

  1. NIH Common Fund, through the Office of Strategic Coordination/Office of the NIH Director
  2. National Institute of General Medical Sciences (NIGMS)
  3. National Human Genome Research Institute (NHGRI) [R24 HG010032]
  4. National Institute Of Allergy And Infectious Diseases (NIAID) [U19 AI118610, U19 AI118626]

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BackgroundBiological interpretation of gene/protein lists resulting from -omics experiments can be a complex task. A common approach consists of reviewing Gene Ontology (GO) annotations for entries in such lists and searching for enrichment patterns. Unfortunately, there is a gap between machine-readable output of GO software and its human-interpretable form. This gap can be bridged by allowing users to simultaneously visualize and interact with term-term and gene-term relationships.ResultsWe created the open-source GOnet web-application (available at http://tools.dice-database.org/GOnet/), which takes a list of gene or protein entries from human or mouse data and performs GO term annotation analysis (mapping of provided entries to GO subsets) or GO term enrichment analysis (scanning for GO categories overrepresented in the input list). The application is capable of producing parsable data formats and importantly, interactive visualizations of the GO analysis results. The interactive results allow exploration of genes and GO terms as a graph that depicts the natural hierarchy of the terms and retains relationships between terms and genes/proteins. As a result, GOnet provides insight into the functional interconnection of the submitted entries.ConclusionsThe application can be used for GO analysis of any biological data sources resulting in gene/protein lists. It can be helpful for experimentalists as well as computational biologists working on biological interpretation of -omics data resulting in such lists.

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