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Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression

Genome-wide association studies (GWAS) have heralded a new era in susceptibility locus discovery in complex diseases. For type 1 diabetes, >40 susceptibility loci have been discovered. However, GWAS do not inevitably lead to identification of the gene or genes in a given locus associated with dis...

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Autores principales: Bergholdt, Regine, Brorsson, Caroline, Palleja, Albert, Berchtold, Lukas A., Fløyel, Tina, Bang-Berthelsen, Claus Heiner, Frederiksen, Klaus Stensgaard, Jensen, Lars Juhl, Størling, Joachim, Pociot, Flemming
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Diabetes Association 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3314366/
https://www.ncbi.nlm.nih.gov/pubmed/22344559
http://dx.doi.org/10.2337/db11-1263
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author Bergholdt, Regine
Brorsson, Caroline
Palleja, Albert
Berchtold, Lukas A.
Fløyel, Tina
Bang-Berthelsen, Claus Heiner
Frederiksen, Klaus Stensgaard
Jensen, Lars Juhl
Størling, Joachim
Pociot, Flemming
author_facet Bergholdt, Regine
Brorsson, Caroline
Palleja, Albert
Berchtold, Lukas A.
Fløyel, Tina
Bang-Berthelsen, Claus Heiner
Frederiksen, Klaus Stensgaard
Jensen, Lars Juhl
Størling, Joachim
Pociot, Flemming
author_sort Bergholdt, Regine
collection PubMed
description Genome-wide association studies (GWAS) have heralded a new era in susceptibility locus discovery in complex diseases. For type 1 diabetes, >40 susceptibility loci have been discovered. However, GWAS do not inevitably lead to identification of the gene or genes in a given locus associated with disease, and they do not typically inform the broader context in which the disease genes operate. Here, we integrated type 1 diabetes GWAS data with protein-protein interactions to construct biological networks of relevance for disease. A total of 17 networks were identified. To prioritize and substantiate these networks, we performed expressional profiling in human pancreatic islets exposed to proinflammatory cytokines. Three networks were significantly enriched for cytokine-regulated genes and, thus, likely to play an important role for type 1 diabetes in pancreatic islets. Eight of the regulated genes (CD83, IFNGR1, IL17RD, TRAF3IP2, IL27RA, PLCG2, MYO1B, and CXCR7) in these networks also harbored single nucleotide polymorphisms nominally associated with type 1 diabetes. Finally, the expression and cytokine regulation of these new candidate genes were confirmed in insulin-secreting INS-1 β-cells. Our results provide novel insight to the mechanisms behind type 1 diabetes pathogenesis and, thus, may provide the basis for the design of novel treatment strategies.
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spelling pubmed-33143662013-04-01 Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression Bergholdt, Regine Brorsson, Caroline Palleja, Albert Berchtold, Lukas A. Fløyel, Tina Bang-Berthelsen, Claus Heiner Frederiksen, Klaus Stensgaard Jensen, Lars Juhl Størling, Joachim Pociot, Flemming Diabetes Genetics/Genomes/Proteomics/Metabolomics Genome-wide association studies (GWAS) have heralded a new era in susceptibility locus discovery in complex diseases. For type 1 diabetes, >40 susceptibility loci have been discovered. However, GWAS do not inevitably lead to identification of the gene or genes in a given locus associated with disease, and they do not typically inform the broader context in which the disease genes operate. Here, we integrated type 1 diabetes GWAS data with protein-protein interactions to construct biological networks of relevance for disease. A total of 17 networks were identified. To prioritize and substantiate these networks, we performed expressional profiling in human pancreatic islets exposed to proinflammatory cytokines. Three networks were significantly enriched for cytokine-regulated genes and, thus, likely to play an important role for type 1 diabetes in pancreatic islets. Eight of the regulated genes (CD83, IFNGR1, IL17RD, TRAF3IP2, IL27RA, PLCG2, MYO1B, and CXCR7) in these networks also harbored single nucleotide polymorphisms nominally associated with type 1 diabetes. Finally, the expression and cytokine regulation of these new candidate genes were confirmed in insulin-secreting INS-1 β-cells. Our results provide novel insight to the mechanisms behind type 1 diabetes pathogenesis and, thus, may provide the basis for the design of novel treatment strategies. American Diabetes Association 2012-04 2012-03-14 /pmc/articles/PMC3314366/ /pubmed/22344559 http://dx.doi.org/10.2337/db11-1263 Text en © 2012 by the American Diabetes Association. Readers may use this article as long as the work is properly cited, the use is educational and not for profit, and the work is not altered. See http://creativecommons.org/licenses/by-nc-nd/3.0/ for details.
spellingShingle Genetics/Genomes/Proteomics/Metabolomics
Bergholdt, Regine
Brorsson, Caroline
Palleja, Albert
Berchtold, Lukas A.
Fløyel, Tina
Bang-Berthelsen, Claus Heiner
Frederiksen, Klaus Stensgaard
Jensen, Lars Juhl
Størling, Joachim
Pociot, Flemming
Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression
title Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression
title_full Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression
title_fullStr Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression
title_full_unstemmed Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression
title_short Identification of Novel Type 1 Diabetes Candidate Genes by Integrating Genome-Wide Association Data, Protein-Protein Interactions, and Human Pancreatic Islet Gene Expression
title_sort identification of novel type 1 diabetes candidate genes by integrating genome-wide association data, protein-protein interactions, and human pancreatic islet gene expression
topic Genetics/Genomes/Proteomics/Metabolomics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3314366/
https://www.ncbi.nlm.nih.gov/pubmed/22344559
http://dx.doi.org/10.2337/db11-1263
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