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Dive into the research topics where Nigel W. Rayner is active.

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Featured researches published by Nigel W. Rayner.


Science | 2007

Replication of Genome-Wide Association Signals in UK Samples Reveals Risk Loci for Type 2 Diabetes

Eleftheria Zeggini; Michael N. Weedon; Cecilia M. Lindgren; Timothy M. Frayling; Katherine S. Elliott; Hana Lango; Nicholas J. Timpson; John Perry; Nigel W. Rayner; Rachel M. Freathy; Jeffrey C. Barrett; Beverley M. Shields; Andrew P. Morris; Sian Ellard; Christopher J. Groves; Lorna W. Harries; Jonathan Marchini; Katharine R. Owen; Beatrice Knight; Lon R. Cardon; M. Walker; Graham A. Hitman; Andrew D. Morris; Alex S. F. Doney; Mark I. McCarthy; Andrew T. Hattersley

The molecular mechanisms involved in the development of type 2 diabetes are poorly understood. Starting from genome-wide genotype data for 1924 diabetic cases and 2938 population controls generated by the Wellcome Trust Case Control Consortium, we set out to detect replicated diabetes association signals through analysis of 3757 additional cases and 5346 controls and by integration of our findings with equivalent data from other international consortia. We detected diabetes susceptibility loci in and around the genes CDKAL1, CDKN2A/CDKN2B, and IGF2BP2 and confirmed the recently described associations at HHEX/IDE and SLC30A8. Our findings provide insight into the genetic architecture of type 2 diabetes, emphasizing the contribution of multiple variants of modest effect. The regions identified underscore the importance of pathways influencing pancreatic beta cell development and function in the etiology of type 2 diabetes.


Nature Genetics | 2008

Meta-analysis of genome-wide association data and large-scale replication identifies additional susceptibility loci for type 2 diabetes

Eleftheria Zeggini; Laura J. Scott; Richa Saxena; Benjamin F. Voight; Jonathan Marchini; Tianle Hu; Paul I. W. de Bakker; Gonçalo R. Abecasis; Peter Almgren; Gitte Andersen; Kristin Ardlie; Kristina Bengtsson Boström; Richard N. Bergman; Lori L. Bonnycastle; Knut Borch-Johnsen; Noël P. Burtt; Hong Chen; Peter S. Chines; Mark J. Daly; Parimal Deodhar; Chia-Jen Ding; Alex S. F. Doney; William L. Duren; Katherine S. Elliott; Michael R. Erdos; Timothy M. Frayling; Rachel M. Freathy; Lauren Gianniny; Harald Grallert; Niels Grarup

Genome-wide association (GWA) studies have identified multiple loci at which common variants modestly but reproducibly influence risk of type 2 diabetes (T2D). Established associations to common and rare variants explain only a small proportion of the heritability of T2D. As previously published analyses had limited power to identify variants with modest effects, we carried out meta-analysis of three T2D GWA scans comprising 10,128 individuals of European descent and ∼2.2 million SNPs (directly genotyped and imputed), followed by replication testing in an independent sample with an effective sample size of up to 53,975. We detected at least six previously unknown loci with robust evidence for association, including the JAZF1 (P = 5.0 × 10−14), CDC123-CAMK1D (P = 1.2 × 10−10), TSPAN8-LGR5 (P = 1.1 × 10−9), THADA (P = 1.1 × 10−9), ADAMTS9 (P = 1.2 × 10−8) and NOTCH2 (P = 4.1 × 10−8) gene regions. Our results illustrate the value of large discovery and follow-up samples for gaining further insights into the inherited basis of T2D.


PLOS Genetics | 2012

The Metabochip, a Custom Genotyping Array for Genetic Studies of Metabolic, Cardiovascular, and Anthropometric Traits

Benjamin F. Voight; Hyun Min Kang; Jinhui Ding; C. Palmer; Carlo Sidore; Peter S. Chines; N. P. Burtt; Christian Fuchsberger; Yanming Li; J. Erdmann; Timothy M. Frayling; Iris M. Heid; Anne U. Jackson; Toby Johnson; Tuomas O. Kilpeläinen; Cecilia M. Lindgren; Andrew P. Morris; Inga Prokopenko; Joshua C. Randall; Richa Saxena; Nicole Soranzo; Elizabeth K. Speliotes; Tanya M. Teslovich; Eleanor Wheeler; Jared Maguire; Melissa Parkin; Simon Potter; Nigel W. Rayner; Neil R. Robertson; Kathy Stirrups

Genome-wide association studies have identified hundreds of loci for type 2 diabetes, coronary artery disease and myocardial infarction, as well as for related traits such as body mass index, glucose and insulin levels, lipid levels, and blood pressure. These studies also have pointed to thousands of loci with promising but not yet compelling association evidence. To establish association at additional loci and to characterize the genome-wide significant loci by fine-mapping, we designed the “Metabochip,” a custom genotyping array that assays nearly 200,000 SNP markers. Here, we describe the Metabochip and its component SNP sets, evaluate its performance in capturing variation across the allele-frequency spectrum, describe solutions to methodological challenges commonly encountered in its analysis, and evaluate its performance as a platform for genotype imputation. The metabochip achieves dramatic cost efficiencies compared to designing single-trait follow-up reagents, and provides the opportunity to compare results across a range of related traits. The metabochip and similar custom genotyping arrays offer a powerful and cost-effective approach to follow-up large-scale genotyping and sequencing studies and advance our understanding of the genetic basis of complex human diseases and traits.


Nature Genetics | 2007

A common variant of HMGA2 is associated with adult and childhood height in the general population

Michael N. Weedon; Guillaume Lettre; Rachel M. Freathy; Cecilia M. Lindgren; Benjamin F. Voight; John Perry; Katherine S. Elliott; Rachel Hackett; Candace Guiducci; Beverley M. Shields; Eleftheria Zeggini; Hana Lango; Valeriya Lyssenko; Nicholas J. Timpson; Noël P. Burtt; Nigel W. Rayner; Richa Saxena; Kristin Ardlie; Jonathan H Tobias; Andy R Ness; Susan M. Ring; Colin N. A. Palmer; Andrew D. Morris; Leena Peltonen; Veikko Salomaa; George Davey Smith; Leif Groop; Andrew T. Hattersley; Mark I. McCarthy; Joel N. Hirschhorn

Human height is a classic, highly heritable quantitative trait. To begin to identify genetic variants influencing height, we examined genome-wide association data from 4,921 individuals. Common variants in the HMGA2 oncogene, exemplified by rs1042725, were associated with height (P = 4 × 10−8). HMGA2 is also a strong biological candidate for height, as rare, severe mutations in this gene alter body size in mice and humans, so we tested rs1042725 in additional samples. We confirmed the association in 19,064 adults from four further studies (P = 3 × 10−11, overall P = 4 × 10−16, including the genome-wide association data). We also observed the association in children (P = 1 × 10−6, N = 6,827) and a tall/short case-control study (P = 4 × 10−6, N = 3,207). We estimate that rs1042725 explains ∼0.3% of population variation in height (∼0.4 cm increased adult height per C allele). There are few examples of common genetic variants reproducibly associated with human quantitativetraits; these results represent, to our knowledge, the first consistently replicated association with adult and childhood height.


PLOS Genetics | 2010

Two new Loci for body-weight regulation identified in a joint analysis of Genome-Wide Association Studies for Early-Onset Extreme Obesity in French and German Study Groups

André Scherag; Christian Dina; Anke Hinney; Vincent Vatin; Susann Scherag; Carla I. G. Vogel; Timo D. Müller; Harald Grallert; H.-Erich Wichmann; Beverley Balkau; Barbara Heude; Marjo-Riitta Järvelin; Anna-Liisa Hartikainen; Claire Levy-Marchal; Jacques Weill; Jérôme Delplanque; Antje Körner; Wieland Kiess; Peter Kovacs; Nigel W. Rayner; Inga Prokopenko; Mark McCarthy; Helmut Schäfer; Ivonne Jarick; Heiner Boeing; Eva Fisher; Thomas Reinehr; Joachim Heinrich; Peter Rzehak; Dietrich Berdel

Meta-analyses of population-based genome-wide association studies (GWAS) in adults have recently led to the detection of new genetic loci for obesity. Here we aimed to discover additional obesity loci in extremely obese children and adolescents. We also investigated if these results generalize by estimating the effects of these obesity loci in adults and in population-based samples including both children and adults. We jointly analysed two GWAS of 2,258 individuals and followed-up the best, according to lowest p-values, 44 single nucleotide polymorphisms (SNP) from 21 genomic regions in 3,141 individuals. After this DISCOVERY step, we explored if the findings derived from the extremely obese children and adolescents (10 SNPs from 5 genomic regions) generalized to (i) the population level and (ii) to adults by genotyping another 31,182 individuals (GENERALIZATION step). Apart from previously identified FTO, MC4R, and TMEM18, we detected two new loci for obesity: one in SDCCAG8 (serologically defined colon cancer antigen 8 gene; p = 1.85×10−8 in the DISCOVERY step) and one between TNKS (tankyrase, TRF1-interacting ankyrin-related ADP-ribose polymerase gene) and MSRA (methionine sulfoxide reductase A gene; p = 4.84×10−7), the latter finding being limited to children and adolescents as demonstrated in the GENERALIZATION step. The odds ratios for early-onset obesity were estimated at ∼1.10 per risk allele for both loci. Interestingly, the TNKS/MSRA locus has recently been found to be associated with adult waist circumference. In summary, we have completed a meta-analysis of two GWAS which both focus on extremely obese children and adolescents and replicated our findings in a large followed-up data set. We observed that genetic variants in or near FTO, MC4R, TMEM18, SDCCAG8, and TNKS/MSRA were robustly associated with early-onset obesity. We conclude that the currently known major common variants related to obesity overlap to a substantial degree between children and adults.


Diabetes | 2009

Adiposity-related heterogeneity in patterns of type 2 diabetes susceptibility observed in genome wide association data.

Nicholas J. Timpson; Cecilia M. Lindgren; Michael N. Weedon; Joshua C. Randall; Willem H. Ouwehand; David P. Strachan; Nigel W. Rayner; M Walker; Graham A. Hitman; A. S. F. Doney; Colin N. A. Palmer; Andrew D. Morris; Andrew T. Hattersley; Eleftheria Zeggini; Timothy M. Frayling; Mark I. McCarthy

OBJECTIVE—This study examined how differences in the BMI distribution of type 2 diabetic case subjects affected genome-wide patterns of type 2 diabetes association and considered the implications for the etiological heterogeneity of type 2 diabetes. RESEARCH DESIGN AND METHODS—We reanalyzed data from the Wellcome Trust Case Control Consortium genome-wide association scan (1,924 case subjects, 2,938 control subjects: 393,453 single-nucleotide polymorphisms [SNPs]) after stratifying case subjects (into “obese” and “nonobese”) according to median BMI (30.2 kg/m2). Replication of signals in which alternative case-ascertainment strategies generated marked effect size heterogeneity in type 2 diabetes association signal was sought in additional samples. RESULTS—In the “obese-type 2 diabetes” scan, FTO variants had the strongest type 2 diabetes effect (rs8050136: relative risk [RR] 1.49 [95% CI 1.34–1.66], P = 1.3 × 10−13), with only weak evidence for TCF7L2 (rs7901695 RR 1.21 [1.09–1.35], P = 0.001). This situation was reversed in the “nonobese” scan, with FTO association undetectable (RR 1.07 [0.97–1.19], P = 0.19) and TCF7L2 predominant (RR 1.53 [1.37–1.71], P = 1.3 × 10−14). These patterns, confirmed by replication, generated strong combined evidence for between-stratum effect size heterogeneity (FTO: PDIFF = 1.4 × 10−7; TCF7L2: PDIFF = 4.0 × 10−6). Other signals displaying evidence of effect size heterogeneity in the genome-wide analyses (on chromosomes 3, 12, 15, and 18) did not replicate. Analysis of the current list of type 2 diabetes susceptibility variants revealed nominal evidence for effect size heterogeneity for the SLC30A8 locus alone (RRobese 1.08 [1.01–1.15]; RRnonobese 1.18 [1.10–1.27]: PDIFF = 0.04). CONCLUSIONS—This study demonstrates the impact of differences in case ascertainment on the power to detect and replicate genetic associations in genome-wide association studies. These data reinforce the notion that there is substantial etiological heterogeneity within type 2 diabetes.


European Journal of Human Genetics | 2010

Association of FTO variants with BMI and fat mass in the self-contained population of Sorbs in Germany

Anke Tönjes; Eleftheria Zeggini; Peter Kovacs; Yvonne Böttcher; Dorit Schleinitz; Kerstin Dietrich; Andrew P. Morris; Beate Enigk; Nigel W. Rayner; Moritz Koriath; Markus Eszlinger; Anu Kemppinen; Inga Prokopenko; Katrin Hoffmann; Daniel Teupser; Joachim Thiery; Knut Krohn; Mark McCarthy; Michael Stumvoll

The association between common variants in the FTO gene with weight, adiposity and body mass index (BMI) has now been widely replicated. Although the causal variant has yet to be identified, it most likely maps within a 47 kb region of intron 1 of FTO. We performed a genome-wide association study in the Sorbian population and evaluated the relationships between FTO variants and BMI and fat mass in this isolate of Slavonic origin resident in Germany. In a sample of 948 Sorbs, we could replicate the earlier reported associations of intron 1 SNPs with BMI (eg, P-value=0.003, β=0.02 for rs8050136). However, using genome-wide association data, we also detected a second independent signal mapping to a region in intron 2/3 about 40–60 kb away from the originally reported SNPs (eg, for rs17818902 association with BMI P-value=0.0006, β=−0.03 and with fat mass P-value=0.0018, β=−0.079). Both signals remain independently associated in the conditioned analyses. In conclusion, we extend the evidence that FTO variants are associated with BMI by putatively identifying a second susceptibility allele independent of that described earlier. Although further statistical analysis of these findings is hampered by the finite size of the Sorbian isolate, these findings should encourage other groups to seek alternative susceptibility variants within FTO (and other established susceptibility loci) using the opportunities afforded by analyses in populations with divergent mutational and/or demographic histories.


Human Molecular Genetics | 2009

Genetic variation in GPR133 is associated with height: genome wide association study in the self-contained population of Sorbs

Anke Tönjes; Moritz Koriath; Dorit Schleinitz; Kerstin Dietrich; Yvonne Böttcher; Nigel W. Rayner; Peter Almgren; Beate Enigk; Olaf Richter; Silvio Rohm; Antje Fischer-Rosinsky; Andreas F.H. Pfeiffer; Katrin Hoffmann; Knut Krohn; Gabriela Aust; Joachim Spranger; Leif Groop; Matthias Blüher; Peter Kovacs; Michael Stumvoll

Recently, associations of several common genetic variants with height have been reported in different populations. We attempted to identify further variants associated with adult height in a self-contained population (the Sorbs in Eastern Germany) as discovery set. We performed a genome wide association study (GWAS) (approximately 390,000 genetic polymorphisms, Affymetrix gene arrays) on adult height in 929 Sorbian individuals. Subsequently, the best SNPs (P < 0.001) were taken forward to a meta-analysis together with two independent cohorts [Diabetes Genetics Initiative, British 1958 Birth Cohort, (58BC, publicly available)]. Furthermore, we genotyped our best signal for replication in two additional German cohorts (Leipzig, n = 1044 and Berlin, n = 1728). In the primary Sorbian GWAS, we identified 5 loci with a P-value < 10(-5) and 455 SNPs with P-value < 0.001. In the meta-analysis on those 455 SNPs, only two variants in GPR133 (rs1569019 and rs1976930; in LD with each other) retained a P-value at or below 10(-6) and were associated with height in the three cohorts individually. Upon replication, the SNP rs1569019 showed significant effects on height in the Leipzig cohort (P = 0.004, beta = 1.166) and in 577 men of the Berlin cohort (P = 0.049, beta = 1.127) though not in women. The combined analysis of all five cohorts (n = 6,687) resulted in a P-value of 4.7 x 10(-8) (beta = 0.949). In conclusion, our GWAS suggests novel loci influencing height. In view of the robust replication in five different cohorts, we propose GPR133 to be a novel gene associated with adult height.


BMC Medical Genetics | 2010

Large-scale association analysis of TNF/LTA gene region polymorphisms in type 2 diabetes

Vesna Boraska; Nigel W. Rayner; Christopher J. Groves; Timothy M. Frayling; Mahamadou Diakite; Kirk A. Rockett; Dominic P. Kwiatkowski; Aaron G. Day-Williams; Mark McCarthy; Eleftheria Zeggini

BackgroundThe TNF/LTA locus has been a long-standing T2D candidate gene. Several studies have examined association of TNF/LTA SNPs with T2D but the majority have been small-scale and produced no convincing evidence of association. The purpose of this study is to examine T2D association of tag SNPs in the TNF/LTA region capturing the majority of common variation in a large-scale sample set of UK/Irish origin.MethodsThis study comprised a case-control (1520 cases and 2570 control samples) and a family-based component (423 parent-offspring trios). Eleven tag SNPs (rs928815, rs909253, rs746868, rs1041981 (T60N), rs1800750, rs1800629 (G-308A), rs361525 (G-238A), rs3093662, rs3093664, rs3093665, and rs3093668) were selected across the TNF/LTA locus and genotyped using a fluorescence-based competitive allele specific assay. Quality control of the obtained genotypes was performed prior to single- and multi-point association analyses under the additive model.ResultsWe did not find any consistent SNP associations with T2D in the case-control or family-based datasets.ConclusionsThe present study, designed to analyse a set of tag SNPs specifically selected to capture the majority of common variation in the TNF/LTA gene region, found no robust evidence for association with T2D. To investigate the presence of smaller effects of TNF/LTA gene variation with T2D, a large-scale meta-analysis will be required.


Nature Communications | 2014

Genetic characterization of Greek population isolates reveals strong genetic drift at missense and trait-associated variants

Kalliope Panoutsopoulou; Konstantinos Hatzikotoulas; Dionysia K. Xifara; Vincenza Colonna; Aliki-Eleni Farmaki; Graham R. S. Ritchie; Lorraine Southam; Arthur Gilly; Ioanna Tachmazidou; Segun Fatumo; Angela Matchan; Nigel W. Rayner; Ioanna Ntalla; Massimo Mezzavilla; Yuan Chen; Chrysoula Kiagiadaki; Eleni Zengini; Vasiliki Mamakou; Antonis Athanasiadis; Margarita Giannakopoulou; Vassiliki-Eirini Kariakli; Rebecca N. Nsubuga; Alex Karabarinde; Manjinder S. Sandhu; Gil McVean; Chris Tyler-Smith; Emmanouil Tsafantakis; Maria Karaleftheri; Yali Xue; George Dedoussis

Isolated populations are emerging as a powerful study design in the search for low-frequency and rare variant associations with complex phenotypes. Here we genotype 2,296 samples from two isolated Greek populations, the Pomak villages (HELIC-Pomak) in the North of Greece and the Mylopotamos villages (HELIC-MANOLIS) in Crete. We compare their genomic characteristics to the general Greek population and establish them as genetic isolates. In the MANOLIS cohort, we observe an enrichment of missense variants among the variants that have drifted up in frequency by more than fivefold. In the Pomak cohort, we find novel associations at variants on chr11p15.4 showing large allele frequency increases (from 0.2% in the general Greek population to 4.6% in the isolate) with haematological traits, for example, with mean corpuscular volume (rs7116019, P=2.3 × 10−26). We replicate this association in a second set of Pomak samples (combined P=2.0 × 10−36). We demonstrate significant power gains in detecting medical trait associations.

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Eleftheria Zeggini

Wellcome Trust Sanger Institute

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Lorraine Southam

Wellcome Trust Sanger Institute

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Kalliope Panoutsopoulou

Wellcome Trust Sanger Institute

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Katherine S. Elliott

Wellcome Trust Centre for Human Genetics

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