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Dive into the research topics where Claude Beazley is active.

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Featured researches published by Claude Beazley.


Nature Genetics | 2007

Population genomics of human gene expression

Barbara E. Stranger; Alexandra C. Nica; Matthew S. Forrest; Antigone S. Dimas; Christine P. Bird; Claude Beazley; Catherine E. Ingle; Mark Dunning; Paul Flicek; Daphne Koller; Stephen B. Montgomery; Simon Tavaré; Panagiotis Deloukas; Emmanouil T. Dermitzakis

Genetic variation influences gene expression, and this variation in gene expression can be efficiently mapped to specific genomic regions and variants. Here we have used gene expression profiling of Epstein-Barr virus–transformed lymphoblastoid cell lines of all 270 individuals genotyped in the HapMap Consortium to elucidate the detailed features of genetic variation underlying gene expression variation. We find that gene expression is heritable and that differentiation between populations is in agreement with earlier small-scale studies. A detailed association analysis of over 2.2 million common SNPs per population (5% frequency in HapMap) with gene expression identified at least 1,348 genes with association signals in cis and at least 180 in trans. Replication in at least one independent population was achieved for 37% of cis signals and 15% of trans signals, respectively. Our results strongly support an abundance of cis-regulatory variation in the human genome. Detection of trans effects is limited but suggests that regulatory variation may be the key primary effect contributing to phenotypic variation in humans. We also explore several methodologies that improve the current state of analysis of gene expression variation.


Science | 2009

Common regulatory variation impacts gene expression in a cell type dependent manner

Antigone S. Dimas; Samuel Deutsch; Barbara E. Stranger; Stephen B. Montgomery; Christelle Borel; Homa Attar-Cohen; Catherine E. Ingle; Claude Beazley; Maria Gutierrez Arcelus; Magdalena Sekowska; Marilyne Gagnebin; James Nisbett; Panos Deloukas; Emmanouil T. Dermitzakis

Tissue-Specific Control The effect of genetic variation on gene expression and phenotype among individuals is largely unknown. Dimas et al. (p. 1246, published online 30 July 2009) show that in humans there are several genes whose allelic expression varies in a tissue-specific manner and are apparently controlled by cis elements. Up to 80% of variants seem to have tissue-specific functions when compared in fibroblasts, as well as B cells and T cells. This variation among regulatory variants correlated with transcript complexity, which suggests that some of the observed regulatory variation is due to genotype-specific use of transcripts and transcription start sites. Genetic variation in regulatory elements among humans affects gene expression in a tissue-specific manner. Studies correlating genetic variation to gene expression facilitate the interpretation of common human phenotypes and disease. As functional variants may be operating in a tissue-dependent manner, we performed gene expression profiling and association with genetic variants (single-nucleotide polymorphisms) on three cell types of 75 individuals. We detected cell type–specific genetic effects, with 69 to 80% of regulatory variants operating in a cell type–specific manner, and identified multiple expressive quantitative trait loci (eQTLs) per gene, unique or shared among cell types and positively correlated with the number of transcripts per gene. Cell type–specific eQTLs were found at larger distances from genes and at lower effect size, similar to known enhancers. These data suggest that the complete regulatory variant repertoire can only be uncovered in the context of cell-type specificity.


PLOS Genetics | 2012

Patterns of cis regulatory variation in diverse human populations

Barbara E. Stranger; Stephen B. Montgomery; Antigone S. Dimas; Leopold Parts; Oliver Stegle; Catherine E. Ingle; Magda Sekowska; George Davey Smith; David E. Evans; Maria Gutierrez-Arcelus; Alkes L. Price; Towfique Raj; James Nisbett; Alexandra C. Nica; Claude Beazley; Richard Durbin; Panos Deloukas; Emmanouil T. Dermitzakis

The genetic basis of gene expression variation has long been studied with the aim to understand the landscape of regulatory variants, but also more recently to assist in the interpretation and elucidation of disease signals. To date, many studies have looked in specific tissues and population-based samples, but there has been limited assessment of the degree of inter-population variability in regulatory variation. We analyzed genome-wide gene expression in lymphoblastoid cell lines from a total of 726 individuals from 8 global populations from the HapMap3 project and correlated gene expression levels with HapMap3 SNPs located in cis to the genes. We describe the influence of ancestry on gene expression levels within and between these diverse human populations and uncover a non-negligible impact on global patterns of gene expression. We further dissect the specific functional pathways differentiated between populations. We also identify 5,691 expression quantitative trait loci (eQTLs) after controlling for both non-genetic factors and population admixture and observe that half of the cis-eQTLs are replicated in one or more of the populations. We highlight patterns of eQTL-sharing between populations, which are partially determined by population genetic relatedness, and discover significant sharing of eQTL effects between Asians, European-admixed, and African subpopulations. Specifically, we observe that both the effect size and the direction of effect for eQTLs are highly conserved across populations. We observe an increasing proximity of eQTLs toward the transcription start site as sharing of eQTLs among populations increases, highlighting that variants close to TSS have stronger effects and therefore are more likely to be detected across a wider panel of populations. Together these results offer a unique picture and resource of the degree of differentiation among human populations in functional regulatory variation and provide an estimate for the transferability of complex trait variants across populations.


Bioinformatics | 2010

Genevar: A Database and Java Application for the Analysis and Visualization of SNP-Gene Associations in eQTL Studies

Tsun-Po Yang; Claude Beazley; Stephen B. Montgomery; Antigone S. Dimas; Maria Gutierrez-Arcelus; Barbara E. Stranger; Panos Deloukas; Emmanouil T. Dermitzakis

Summary: Genevar (GENe Expression VARiation) is a database and Java tool designed to integrate multiple datasets, and provides analysis and visualization of associations between sequence variation and gene expression. Genevar allows researchers to investigate expression quantitative trait loci (eQTL) associations within a gene locus of interest in real time. The database and application can be installed on a standard computer in database mode and, in addition, on a server to share discoveries among affiliations or the broader community over the Internet via web services protocols. Availability: http://www.sanger.ac.uk/resources/software/genevar Contact: [email protected]


The Lancet | 2012

Identification of new susceptibility loci for osteoarthritis (arcOGEN): A genome-wide association study

Eleftheria Zeggini; Kalliope Panoutsopoulou; Lorraine Southam; N W Rayner; Aaron G. Day-Williams; M C Lopes; Vesna Boraska; T. Esko; Evangelos Evangelou; A Hoffman; Jeanine J. Houwing-Duistermaat; Thorvaldur Ingvarsson; Ingileif Jonsdottir; H Jonnson; Hanneke J. M. Kerkhof; Margreet Kloppenburg; S.D. Bos; Massimo Mangino; Sarah Metrustry; P E Slagboom; Gudmar Thorleifsson; Raine Eva.; Madhushika Ratnayake; M Ricketts; Claude Beazley; Hannah Blackburn; Suzannah Bumpstead; K S Elliott; Sarah Hunt; Simon Potter

Summary Background Osteoarthritis is the most common form of arthritis worldwide and is a major cause of pain and disability in elderly people. The health economic burden of osteoarthritis is increasing commensurate with obesity prevalence and longevity. Osteoarthritis has a strong genetic component but the success of previous genetic studies has been restricted due to insufficient sample sizes and phenotype heterogeneity. Methods We undertook a large genome-wide association study (GWAS) in 7410 unrelated and retrospectively and prospectively selected patients with severe osteoarthritis in the arcOGEN study, 80% of whom had undergone total joint replacement, and 11 009 unrelated controls from the UK. We replicated the most promising signals in an independent set of up to 7473 cases and 42 938 controls, from studies in Iceland, Estonia, the Netherlands, and the UK. All patients and controls were of European descent. Findings We identified five genome-wide significant loci (binomial test p≤5·0×10−8) for association with osteoarthritis and three loci just below this threshold. The strongest association was on chromosome 3 with rs6976 (odds ratio 1·12 [95% CI 1·08–1·16]; p=7·24×10−11), which is in perfect linkage disequilibrium with rs11177. This SNP encodes a missense polymorphism within the nucleostemin-encoding gene GNL3. Levels of nucleostemin were raised in chondrocytes from patients with osteoarthritis in functional studies. Other significant loci were on chromosome 9 close to ASTN2, chromosome 6 between FILIP1 and SENP6, chromosome 12 close to KLHDC5 and PTHLH, and in another region of chromosome 12 close to CHST11. One of the signals close to genome-wide significance was within the FTO gene, which is involved in regulation of bodyweight—a strong risk factor for osteoarthritis. All risk variants were common in frequency and exerted small effects. Interpretation Our findings provide insight into the genetics of arthritis and identify new pathways that might be amenable to future therapeutic intervention. Funding arcOGEN was funded by a special purpose grant from Arthritis Research UK.


Annals of the Rheumatic Diseases | 2011

Insights into the genetic architecture of osteoarthritis from stage 1 of the arcOGEN study

Kalliope Panoutsopoulou; Lorraine Southam; Katherine S. Elliott; N Wrayner; Guangju Zhai; Claude Beazley; Gudmar Thorleifsson; N K Arden; Andrew Carr; Kay Chapman; Panos Deloukas; Michael Doherty; A. W. McCaskie; William Ollier; Stuart H. Ralston; Tim D. Spector; Ana M. Valdes; Gillian A. Wallis; J M Wilkinson; E Arden; K Battley; Hannah Blackburn; F.J. Blanco; Suzannah Bumpstead; L. A. Cupples; Aaron G. Day-Williams; K Dixon; Sally Doherty; Tonu Esko; Evangelos Evangelou

Objectives The genetic aetiology of osteoarthritis has not yet been elucidated. To enable a well-powered genome-wide association study (GWAS) for osteoarthritis, the authors have formed the arcOGEN Consortium, a UK-wide collaborative effort aiming to scan genome-wide over 7500 osteoarthritis cases in a two-stage genome-wide association scan. Here the authors report the findings of the stage 1 interim analysis. Methods The authors have performed a genome-wide association scan for knee and hip osteoarthritis in 3177 cases and 4894 population-based controls from the UK. Replication of promising signals was carried out in silico in five further scans (44 449 individuals), and de novo in 14 534 independent samples, all of European descent. Results None of the association signals the authors identified reach genome-wide levels of statistical significance, therefore stressing the need for corroboration in sample sets of a larger size. Application of analytical approaches to examine the allelic architecture of disease to the stage 1 genome-wide association scan data suggests that osteoarthritis is a highly polygenic disease with multiple risk variants conferring small effects. Conclusions Identifying loci conferring susceptibility to osteoarthritis will require large-scale sample sizes and well-defined phenotypes to minimise heterogeneity.


PLOS Genetics | 2008

Modifier Effects between Regulatory and Protein-Coding Variation

Antigone S. Dimas; Barbara E. Stranger; Claude Beazley; Robert D. Finn; Catherine E. Ingle; Matthew S. Forrest; Matthew E. Ritchie; Panos Deloukas; Simon Tavaré; Emmanouil T. Dermitzakis

Genome-wide associations have shown a lot of promise in dissecting the genetics of complex traits in humans with single variants, yet a large fraction of the genetic effects is still unaccounted for. Analyzing genetic interactions between variants (epistasis) is one of the potential ways forward. We investigated the abundance and functional impact of a specific type of epistasis, namely the interaction between regulatory and protein-coding variants. Using genotype and gene expression data from the 210 unrelated individuals of the original four HapMap populations, we have explored the combined effects of regulatory and protein-coding single nucleotide polymorphisms (SNPs). We predict that about 18% (1,502 out of 8,233 nsSNPs) of protein-coding variants are differentially expressed among individuals and demonstrate that regulatory variants can modify the functional effect of a coding variant in cis. Furthermore, we show that such interactions in cis can affect the expression of downstream targets of the gene containing the protein-coding SNP. In this way, a cis interaction between regulatory and protein-coding variants has a trans impact on gene expression. Given the abundance of both types of variants in human populations, we propose that joint consideration of regulatory and protein-coding variants may reveal additional genetic effects underlying complex traits and disease and may shed light on causes of differential penetrance of known disease variants.


Science | 2007

Relative Impact of Nucleotide and Copy Number Variation on Gene Expression Phenotypes

Barbara E. Stranger; Matthew S. Forrest; Mark Dunning; Catherine E. Ingle; Claude Beazley; Natalie P. Thorne; Richard Redon; Christine P. Bird; Anna de Grassi; Charles Lee; Chris Tyler-Smith; Nigel P. Carter; Stephen W. Scherer; Simon Tavaré; Panagiotis Deloukas; Emmanouil T. Dermitzakis


PLOS Genetics | 2010

Candidate Causal Regulatory Effects by Integration of Expression QTLs with Complex Trait Genetic Associations

Alexandra C. Nica; Stephen B. Montgomery; Antigone S. Dimas; Barbara E. Stranger; Claude Beazley; Inês Barroso; Emmanouil T. Dermitzakis


Genome Biology | 2007

Fast-evolving noncoding sequences in the human genome

Christine P. Bird; Barbara E. Stranger; Maureen Liu; Daryl J. Thomas; Catherine E. Ingle; Claude Beazley; Webb Miller; Emmanouil T. Dermitzakis

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Catherine E. Ingle

Wellcome Trust Sanger Institute

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Panos Deloukas

Queen Mary University of London

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Aaron G. Day-Williams

Wellcome Trust Sanger Institute

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Christine P. Bird

Wellcome Trust Sanger Institute

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Hannah Blackburn

Wellcome Trust Sanger Institute

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