| Literature DB >> 21324932 |
Roger D Cox1, Christopher D Church.
Abstract
Within the last 3 years, genome-wide association studies (GWAS) have had unprecedented success in identifying loci that are involved in common diseases. For example, more than 35 susceptibility loci have been identified for type 2 diabetes and 32 for obesity thus far. However, the causal gene and variant at a specific linkage disequilibrium block is often unclear. Using a combination of different mouse alleles, we can greatly facilitate the understanding of which candidate gene at a particular disease locus is associated with the disease in humans, and also provide functional analysis of variants through an allelic series, including analysis of hypomorph and hypermorph point mutations, and knockout and overexpression alleles. The phenotyping of these alleles for specific traits of interest, in combination with the functional analysis of the genetic variants, may reveal the molecular and cellular mechanism of action of these disease variants, and ultimately lead to the identification of novel therapeutic strategies for common human diseases. In this Commentary, we discuss the progress of GWAS in identifying common disease loci for metabolic disease, and the use of the mouse as a model to confirm candidate genes and provide mechanistic insights.Entities:
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Year: 2011 PMID: 21324932 PMCID: PMC3046087 DOI: 10.1242/dmm.000414
Source DB: PubMed Journal: Dis Model Mech ISSN: 1754-8403 Impact factor: 5.758
Type 2 diabetes susceptibility loci identified through GWAS
Obesity-associated loci identified through GWAS
Fig. 1.A strategy for functional interpretation of GWAS. GWAS candidate genes are selected on the basis of SNP proximity, expression and the trait of interest. An allelic series in the mouse can be identified using ENU mutagenesis archive screens and mutations selected on the basis of potential functional consequences and evolutionary conservation. Next generation sequencing (NGS) can allow a catalogue of mutations to be made. Each variant is characterised for the trait of interest – for example, glucose tolerance or body weight. Conditional mouse models can also be generated to investigate the tissue specificity and temporal role of candidate genes in disease using mice expressing Cre recombinase. Further functional analysis using expression analysis and proteomics can reveal novel therapeutic targets for common diseases. This scheme is based on proof-of-principle studies that defined a function for FTO, a gene of previously unknown function in an unknown pathway (Frayling et al., 2007), in obesity.