Highly interconnected genes in disease-specific networks are enriched for disease-associated polymorphisms
Highly interconnected genes in disease-specific networks are enriched for disease-associated polymorphisms
Background: complex diseases are associated with altered interactions between thousands of genes. We developed a novel method to identify and prioritize disease genes, which was generally applicable to complex diseases.
Results: we identified modules of highly interconnected genes in disease-specific networks derived from integrating gene-expression and protein interaction data. We examined if those modules were enriched for disease-associated SNPs, and could be used to find novel genes for functional studies. First, we analyzed publicly available gene expression microarray and genome-wide association study (GWAS) data from 13, highly diverse, complex diseases. In each disease, highly interconnected genes formed modules, which were significantly enriched for genes harboring disease-associated SNPs. To test if such modules could be used to find novel genes for functional studies, we repeated the analyses using our own gene expression microarray and GWAS data from seasonal allergic rhinitis. We identified a novel gene, FGF2, whose relevance was supported by functional studies using combined small interfering RNA-mediated knock-down and gene expression microarrays. The modules in the 13 complex diseases analyzed here tended to overlap and were enriched for pathways related to oncological, metabolic and inflammatory diseases. This suggested that this union of the modules would be associated with a general increase in susceptibility for complex diseases. Indeed, we found that this union was enriched with GWAS genes for 145 other complex diseases.
Conclusions: modules of highly interconnected complex disease genes were enriched for disease-associated SNPs, and could be used to find novel genes for functional studies.
Barrenäs, Fredrik
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Chavali, Sreenivas
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Alves, Alexessander Couto
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Coin, Lachlan
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Jarvelin, Marjo Riitta
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Jörnsten, Rebecka
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Langston, Michael A.
ed441a11-9cf9-47d9-83ec-975189736ba6
Ramasamy, Adaikalavan
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Rogers, Gary
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Wang, Hui
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Benson, Mikael
3fe8b4c8-479a-4d4f-b341-581049425b23
15 June 2012
Barrenäs, Fredrik
55ef2558-f310-4701-acd8-0994d22042bb
Chavali, Sreenivas
ba20e16d-329a-4b2e-9f09-831dbac3ec67
Alves, Alexessander Couto
87b9179e-abde-4ca5-abfc-4b7c5ac8b03b
Coin, Lachlan
ff460121-4ac3-40f0-8f72-546ac0485023
Jarvelin, Marjo Riitta
54bf0cc8-8f32-47db-b22d-6e694f1c1b26
Jörnsten, Rebecka
7ad4d3f5-d059-4fb3-a63d-974514bb04d8
Langston, Michael A.
ed441a11-9cf9-47d9-83ec-975189736ba6
Ramasamy, Adaikalavan
3b377e78-09c4-451f-8010-e1b9b7414739
Rogers, Gary
d2fc5305-0aca-4cb5-aa25-564b38ff4593
Wang, Hui
4ca51a6b-c1ee-4daf-93d6-36a6e6a08941
Benson, Mikael
3fe8b4c8-479a-4d4f-b341-581049425b23
Barrenäs, Fredrik, Chavali, Sreenivas, Alves, Alexessander Couto, Coin, Lachlan, Jarvelin, Marjo Riitta, Jörnsten, Rebecka, Langston, Michael A., Ramasamy, Adaikalavan, Rogers, Gary, Wang, Hui and Benson, Mikael
(2012)
Highly interconnected genes in disease-specific networks are enriched for disease-associated polymorphisms.
Genome Biology, 13 (6), [R46].
(doi:10.1186/gb-2012-13-6-r46).
Abstract
Background: complex diseases are associated with altered interactions between thousands of genes. We developed a novel method to identify and prioritize disease genes, which was generally applicable to complex diseases.
Results: we identified modules of highly interconnected genes in disease-specific networks derived from integrating gene-expression and protein interaction data. We examined if those modules were enriched for disease-associated SNPs, and could be used to find novel genes for functional studies. First, we analyzed publicly available gene expression microarray and genome-wide association study (GWAS) data from 13, highly diverse, complex diseases. In each disease, highly interconnected genes formed modules, which were significantly enriched for genes harboring disease-associated SNPs. To test if such modules could be used to find novel genes for functional studies, we repeated the analyses using our own gene expression microarray and GWAS data from seasonal allergic rhinitis. We identified a novel gene, FGF2, whose relevance was supported by functional studies using combined small interfering RNA-mediated knock-down and gene expression microarrays. The modules in the 13 complex diseases analyzed here tended to overlap and were enriched for pathways related to oncological, metabolic and inflammatory diseases. This suggested that this union of the modules would be associated with a general increase in susceptibility for complex diseases. Indeed, we found that this union was enriched with GWAS genes for 145 other complex diseases.
Conclusions: modules of highly interconnected complex disease genes were enriched for disease-associated SNPs, and could be used to find novel genes for functional studies.
Text
gb-2012-13-6-r46
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Accepted/In Press date: 15 June 2012
Published date: 15 June 2012
Identifiers
Local EPrints ID: 509231
URI: http://eprints.soton.ac.uk/id/eprint/509231
ISSN: 1465-6906
PURE UUID: c1ca2058-d50d-44fd-96d7-eb912c40ab37
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Date deposited: 13 Feb 2026 17:49
Last modified: 14 Feb 2026 03:15
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Contributors
Author:
Fredrik Barrenäs
Author:
Sreenivas Chavali
Author:
Alexessander Couto Alves
Author:
Lachlan Coin
Author:
Marjo Riitta Jarvelin
Author:
Rebecka Jörnsten
Author:
Michael A. Langston
Author:
Adaikalavan Ramasamy
Author:
Gary Rogers
Author:
Hui Wang
Author:
Mikael Benson
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