| Literature DB >> 28758174 |
Antje K Grotz1, Anna L Gloyn1,2,3, Soren K Thomsen4.
Abstract
PURPOSE OF REVIEW: Genome-wide association studies (GWAS) for type 2 diabetes (T2D) risk have identified a large number of genetic loci associated with disease susceptibility. However, progress moving from association signals through causal genes to functional understanding has so far been slow, hindering clinical translation. This review discusses the benefits and limitations of emerging, unbiased approaches for prioritising causal genes at T2D risk loci. RECENTEntities:
Keywords: Causal gene; Effector transcript; Functional genomics; Genetic mechanism; Genome-wide association study; Type 2 diabetes
Mesh:
Year: 2017 PMID: 28758174 PMCID: PMC5534459 DOI: 10.1007/s11892-017-0907-y
Source DB: PubMed Journal: Curr Diab Rep ISSN: 1534-4827 Impact factor: 4.810
Fig. 1Using genetic data, genomic annotations, and functional screening for prioritising causal genes at T2D GWAS loci. GWAS for T2D risk have identified more than 100 independent association signals to date (Manhattan plot; top left), but the majority of causal genes driving the effects on disease susceptibility remain unknown. Fine-mapping of associated regions can aid the prioritisation efforts by narrowing down the credible sets of causal variants (see main text). Emerging strategies for prioritising causal genes are highlighted for a hypothetical T2D risk locus (bottom left); the regional association plot shows a primary, non-coding association signal located upstream of gene 2 and downstream of gene 3 (lead variant; red diamond). An independent, coding variant in gene 3 displays moderate (sub-significant) association with T2D risk, providing evidence hinting at this gene as causal at this locus. Further, genomic annotations for different cell types (A, B, and C, for illustration) reveal the primary association signal to be located in a region that displays tissue-specific activity in cell type B. This information provides valuable information for two independent prioritisation strategies. Firstly, functional genetic screening of all regional genes (e.g. genes 1–3 [shown] and 4–5 [not shown]) can be performed in a disease-relevant context, measuring a phenotype specific to cell type B. Further, variant-gene links can be established through experimental studies in tissue B, using, for example, cis-eQTL or chromatin confirmation capture methodologies. Importantly, each of the methods outlined have their own set of limitations (see main text), and integration is thus important for establishing confidence in particular candidates. In this case (graph; bottom right), gene 3, which was highlighted by genetic data (purple bar), has also been found in a functional screen to cause defects in a disease-relevant tissue, adding further evidence in support of this gene as causal (red bar). Finally, variant-gene annotations have shown some degree of evidence for associations between the non-coding signal and genes 1–4 (yellow bars), with gene 3 being the most significant target. Taken together, the aggregate burden of priors provides a high degree of confidence in gene 3 as the candidate causal gene at this locus, which can be used to prioritise the gene for follow-up in-depth validation studies