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Article abstract
REFERENCE
Meta-analysis of heterogeneous data sources for genome-scale
identification of risk genes in complex phenotypes
Tune H. Pers, Niclas Tue Hansen, Kasper Lage, Pernille Koefoed, Piotr
Dworzynski, Martin Lee Miller, Tracey J. Flint, Erling Mellerup, Henrik
Dam, Ole A. Andreassen, Srdjan Djurovic, Ingrid Melle, Anders D. Boerglum,
Thomas Werge, Shaun Purcell, Manuel A. Ferreira, Irene Kouskoumvekaki,
Christopher T. Workman, Torben Hansen, Ole Mors, Soeren Brunak
Genetic Epidemiology, Volume 35, Issue 5, pages 318-332, July 2011
Center for Biological Sequence Analysis, Department of Systems Biology,
The Technical University of Denmark, DK-2800 Lyngby, Denmark
ABSTRACT
Meta-analyses of large-scale association studies typically proceed
solely within one data type and do not exploit the potential
complementarities in other sources of molecular evidence. Here, we
present an approach to combine heterogeneous data from genome-wide
association (GWA) studies, protein-protein interaction screens, disease
similarity, linkage studies, and gene expression experiments into a
multi-layered evidence network which is used to prioritize the entire
protein-coding part of the genome identifying a shortlist of candidate
genes. We report specifically results on bipolar disorder, a genetically
complex disease where GWA studies have only been moderately successful.
We validate one such candidate experimentally, YWHAH, by genotyping 5
variations in 640 patients and 1,377 controls. We found a significant
allelic association for the rs1049583 polymorphism in YWHAH (p=5.0e-4)
with an odds ratio of 1.28 [1.12-1.48], which replicates a previous
case-control study. In addition, we demonstrate our approach's
general applicability by use of type 2 diabetes data sets. The method
presented augments moderately powered GWA data, and represents a
validated, flexible and publicly available framework for identifying
risk genes in highly polygenic diseases.
CORRESPONDENCE
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