Web-based Gene Pathogenicity Analysis (WGPA): a web platform to interpret gene pathogenicity from personal genome data
Web-based Gene Pathogenicity Analysis (WGPA): a web platform to interpret gene pathogenicity from personal genome data
UNLABELLED: As the volume of patient-specific genome sequences increases the focus of biomedical research is switching from the detection of disease-mutations to their interpretation. To this end a number of techniques have been developed that use mutation data collected within a population to predict whether individual genes are likely to be disease-causing or not. As both sequence data and associated analysis tools proliferate, it becomes increasingly difficult for the community to make sense of these data and their implications. Moreover, no single analysis tool is likely to capture all relevant genomic features that contribute to the gene's pathogenicity. Here, we introduce Web-based Gene Pathogenicity Analysis (WGPA), a web-based tool to analyze genes impacted by mutations and rank them through the integration of existing prioritization tools, which assess different aspects of gene pathogenicity using population-level sequence data. Additionally, to explore the polygenic contribution of mutations to disease, WGPA implements gene set enrichment analysis to prioritize disease-causing genes and gene interaction networks, therefore providing a comprehensive annotation of personal genomes data in disease.
AVAILABILITY AND IMPLEMENTATION: wgpa.systems-genetics.net.
Disease/genetics, Genome, Human, Genomics, Humans, Internet, Mutation, Software, Virulence Factors/genetics
635-367
Diaz-Montana, Juan J
a005cb4b-9461-46c7-ac9d-7e3fe0900d77
Rackham, Owen J L
8122eb1f-6e9f-4da5-90e1-ce108ccbbcbf
Diaz-Diaz, Norberto
adef22eb-10f0-478a-8b3b-a5536a92e1ef
Petretto, Enrico
a8a7d254-ea06-4ab3-ba7e-b653349a29f4
15 February 2016
Diaz-Montana, Juan J
a005cb4b-9461-46c7-ac9d-7e3fe0900d77
Rackham, Owen J L
8122eb1f-6e9f-4da5-90e1-ce108ccbbcbf
Diaz-Diaz, Norberto
adef22eb-10f0-478a-8b3b-a5536a92e1ef
Petretto, Enrico
a8a7d254-ea06-4ab3-ba7e-b653349a29f4
Diaz-Montana, Juan J, Rackham, Owen J L, Diaz-Diaz, Norberto and Petretto, Enrico
(2016)
Web-based Gene Pathogenicity Analysis (WGPA): a web platform to interpret gene pathogenicity from personal genome data.
Bioinformatics, 32 (4), .
(doi:10.1093/bioinformatics/btv598).
Abstract
UNLABELLED: As the volume of patient-specific genome sequences increases the focus of biomedical research is switching from the detection of disease-mutations to their interpretation. To this end a number of techniques have been developed that use mutation data collected within a population to predict whether individual genes are likely to be disease-causing or not. As both sequence data and associated analysis tools proliferate, it becomes increasingly difficult for the community to make sense of these data and their implications. Moreover, no single analysis tool is likely to capture all relevant genomic features that contribute to the gene's pathogenicity. Here, we introduce Web-based Gene Pathogenicity Analysis (WGPA), a web-based tool to analyze genes impacted by mutations and rank them through the integration of existing prioritization tools, which assess different aspects of gene pathogenicity using population-level sequence data. Additionally, to explore the polygenic contribution of mutations to disease, WGPA implements gene set enrichment analysis to prioritize disease-causing genes and gene interaction networks, therefore providing a comprehensive annotation of personal genomes data in disease.
AVAILABILITY AND IMPLEMENTATION: wgpa.systems-genetics.net.
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More information
Accepted/In Press date: 9 October 2015
e-pub ahead of print date: 21 October 2015
Published date: 15 February 2016
Additional Information:
© The Author 2015. Published by Oxford University Press.
Keywords:
Disease/genetics, Genome, Human, Genomics, Humans, Internet, Mutation, Software, Virulence Factors/genetics
Identifiers
Local EPrints ID: 447556
URI: http://eprints.soton.ac.uk/id/eprint/447556
ISSN: 1367-4803
PURE UUID: 100d8de3-cd9c-4345-9ec2-6b351f6c85a6
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Date deposited: 16 Mar 2021 17:31
Last modified: 17 Mar 2024 04:03
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Contributors
Author:
Juan J Diaz-Montana
Author:
Norberto Diaz-Diaz
Author:
Enrico Petretto
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