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Dive into the research topics where Helen Stevens is active.

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Featured researches published by Helen Stevens.


Nature Genetics | 2007

Robust associations of four new chromosome regions from genome-wide analyses of type 1 diabetes

John A. Todd; Neil M Walker; Jason D. Cooper; Deborah J. Smyth; Kate Downes; Vincent Plagnol; Rebecca Bailey; Sergey Nejentsev; Sarah Field; Felicity Payne; Christopher E. Lowe; Jeffrey S. Szeszko; Jason P. Hafler; Lauren Zeitels; Jennie H. M. Yang; Adrian Vella; Sarah Nutland; Helen Stevens; Helen Schuilenburg; Gillian Coleman; Meeta Maisuria; William Meadows; Luc J. Smink; Barry Healy; Oliver Burren; Alex C. Lam; Nigel R Ovington; James E Allen; Ellen C. Adlem; Hin-Tak Leung

The Wellcome Trust Case Control Consortium (WTCCC) primary genome-wide association (GWA) scan on seven diseases, including the multifactorial autoimmune disease type 1 diabetes (T1D), shows associations at P < 5 × 10−7 between T1D and six chromosome regions: 12q24, 12q13, 16p13, 18p11, 12p13 and 4q27. Here, we attempted to validate these and six other top findings in 4,000 individuals with T1D, 5,000 controls and 2,997 family trios independent of the WTCCC study. We confirmed unequivocally the associations of 12q24, 12q13, 16p13 and 18p11 (Pfollow-up ≤ 1.35 × 10−9; Poverall ≤ 1.15 × 10−14), leaving eight regions with small effects or false-positive associations. We also obtained evidence for chromosome 18q22 (Poverall = 1.38 × 10−8) from a GWA study of nonsynonymous SNPs. Several regions, including 18q22 and 18p11, showed association with autoimmune thyroid disease. This study increases the number of T1D loci with compelling evidence from six to at least ten.


Nature Genetics | 2009

Genome-wide association study and meta-analysis find that over 40 loci affect risk of type 1 diabetes

Jeffrey C. Barrett; David G. Clayton; Patrick Concannon; Beena Akolkar; Jason D. Cooper; Henry A. Erlich; Cécile Julier; Grant Morahan; Jørn Nerup; Concepcion Nierras; Vincent Plagnol; Flemming Pociot; Helen Schuilenburg; Deborah J. Smyth; Helen Stevens; John A. Todd; Neil M Walker; Stephen S. Rich

Type 1 diabetes (T1D) is a common autoimmune disorder that arises from the action of multiple genetic and environmental risk factors. We report the findings of a genome-wide association study of T1D, combined in a meta-analysis with two previously published studies. The total sample set included 7,514 cases and 9,045 reference samples. Forty-one distinct genomic locations provided evidence for association with T1D in the meta-analysis (P < 10−6). After excluding previously reported associations, we further tested 27 regions in an independent set of 4,267 cases, 4,463 controls and 2,319 affected sib-pair (ASP) families. Of these, 18 regions were replicated (P < 0.01; overall P < 5 × 10−8) and 4 additional regions provided nominal evidence of replication (P < 0.05). The many new candidate genes suggested by these results include IL10, IL19, IL20, GLIS3, CD69 and IL27.


Nature Genetics | 2001

Haplotype tagging for the identification of common disease genes

Gillian C.L. Johnson; Laura Esposito; Bryan J. Barratt; Annabel N. Smith; Joanne M. Heward; Gianfranco Di Genova; Hironori Ueda; Heather J. Cordell; Iain A. Eaves; Frank Dudbridge; Rebecca C.J. Twells; Felicity Payne; Wil Hughes; Sarah Nutland; Helen Stevens; Phillipa Carr; Eva Tuomilehto-Wolf; Jaakko Tuomilehto; S. C. L. Gough; David G. Clayton; John A. Todd

Genome-wide linkage disequilibrium (LD) mapping of common disease genes could be more powerful than linkage analysis if the appropriate density of polymorphic markers were known and if the genotyping effort and cost of producing such an LD map could be reduced. Although different metrics that measure the extent of LD have been evaluated, even the most recent studies have not placed significant emphasis on the most informative and cost-effective method of LD mapping—that based on haplotypes. We have scanned 135 kb of DNA from nine genes, genotyped 122 single-nucleotide polymorphisms (SNPs; approximately 184,000 genotypes) and determined the common haplotypes in a minimum of 384 European individuals for each gene. Here we show how knowledge of the common haplotypes and the SNPs that tag them can be used to (i) explain the often complex patterns of LD between adjacent markers, (ii) reduce genotyping significantly (in this case from 122 to 34 SNPs), (iii) scan the common variation of a gene sensitively and comprehensively and (iv) provide key fine-mapping data within regions of strong LD. Our results also indicate that, at least for the genes studied here, the current version of dbSNP would have been of limited utility for LD mapping because many common haplotypes could not be defined. A directed re-sequencing effort of the approximately 10% of the genome in or near genes in the major ethnic groups would aid the systematic evaluation of the common variant model of common disease.


WOS | 2013

Common genetic determinants of vitamin D insufficiency: a genome-wide association study

Thomas J. Wang; Feng Zhang; J. Brent Richards; Bryan Kestenbaum; Joyce B. J. van Meurs; Diane J. Berry; Douglas P. Kiel; Elizabeth A. Streeten; Claes Ohlsson; Daniel L. Koller; Leena Peltonen; Jason D. Cooper; Paul F. O'Reilly; Denise K. Houston; Nicole L. Glazer; Liesbeth Vandenput; Munro Peacock; J. Shi; Fernando Rivadeneira; Mark McCarthy; Pouta Anneli; Ian H. de Boer; Massimo Mangino; Bernet Kato; Deborah J. Smyth; Sarah L. Booth; Paul F. Jacques; Greg Burke; Mark O. Goodarzi; Ching-Lung Cheung

BACKGROUND Vitamin D is crucial for maintenance of musculoskeletal health, and might also have a role in extraskeletal tissues. Determinants of circulating 25-hydroxyvitamin D concentrations include sun exposure and diet, but high heritability suggests that genetic factors could also play a part. We aimed to identify common genetic variants affecting vitamin D concentrations and risk of insufficiency. METHODS We undertook a genome-wide association study of 25-hydroxyvitamin D concentrations in 33 996 individuals of European descent from 15 cohorts. Five epidemiological cohorts were designated as discovery cohorts (n=16 125), five as in-silico replication cohorts (n=9367), and five as de-novo replication cohorts (n=8504). 25-hydroxyvitamin D concentrations were measured by radioimmunoassay, chemiluminescent assay, ELISA, or mass spectrometry. Vitamin D insufficiency was defined as concentrations lower than 75 nmol/L or 50 nmol/L. We combined results of genome-wide analyses across cohorts using Z-score-weighted meta-analysis. Genotype scores were constructed for confirmed variants. FINDINGS Variants at three loci reached genome-wide significance in discovery cohorts for association with 25-hydroxyvitamin D concentrations, and were confirmed in replication cohorts: 4p12 (overall p=1.9x10(-109) for rs2282679, in GC); 11q12 (p=2.1x10(-27) for rs12785878, near DHCR7); and 11p15 (p=3.3x10(-20) for rs10741657, near CYP2R1). Variants at an additional locus (20q13, CYP24A1) were genome-wide significant in the pooled sample (p=6.0x10(-10) for rs6013897). Participants with a genotype score (combining the three confirmed variants) in the highest quartile were at increased risk of having 25-hydroxyvitamin D concentrations lower than 75 nmol/L (OR 2.47, 95% CI 2.20-2.78, p=2.3x10(-48)) or lower than 50 nmol/L (1.92, 1.70-2.16, p=1.0x10(-26)) compared with those in the lowest quartile. INTERPRETATION Variants near genes involved in cholesterol synthesis, hydroxylation, and vitamin D transport affect vitamin D status. Genetic variation at these loci identifies individuals who have substantially raised risk of vitamin D insufficiency. FUNDING Full funding sources listed at end of paper (see Acknowledgments).


The New England Journal of Medicine | 2008

Shared and Distinct Genetic Variants in Type 1 Diabetes and Celiac Disease

Deborah J. Smyth; Vincent Plagnol; Neil M Walker; Jason D. Cooper; Kate Downes; Jennie H. M. Yang; Joanna M. M. Howson; Helen Stevens; Ross McManus; Cisca Wijmenga; Graham A. Heap; P Dubois; David G. Clayton; Karen A. Hunt; David A. van Heel; John A. Todd

BACKGROUND Two inflammatory disorders, type 1 diabetes and celiac disease, cosegregate in populations, suggesting a common genetic origin. Since both diseases are associated with the HLA class II genes on chromosome 6p21, we tested whether non-HLA loci are shared. METHODS We evaluated the association between type 1 diabetes and eight loci related to the risk of celiac disease by genotyping and statistical analyses of DNA samples from 8064 patients with type 1 diabetes, 9339 control subjects, and 2828 families providing 3064 parent-child trios (consisting of an affected child and both biologic parents). We also investigated 18 loci associated with type 1 diabetes in 2560 patients with celiac disease and 9339 control subjects. RESULTS Three celiac disease loci--RGS1 on chromosome 1q31, IL18RAP on chromosome 2q12, and TAGAP on chromosome 6q25--were associated with type 1 diabetes (P<1.00x10(-4)). The 32-bp insertion-deletion variant on chromosome 3p21 was newly identified as a type 1 diabetes locus (P=1.81x10(-8)) and was also associated with celiac disease, along with PTPN2 on chromosome 18p11 and CTLA4 on chromosome 2q33, bringing the total number of loci with evidence of a shared association to seven, including SH2B3 on chromosome 12q24. The effects of the IL18RAP and TAGAP alleles confer protection in type 1 diabetes and susceptibility in celiac disease. Loci with distinct effects in the two diseases included INS on chromosome 11p15, IL2RA on chromosome 10p15, and PTPN22 on chromosome 1p13 in type 1 diabetes and IL12A on 3q25 and LPP on 3q28 in celiac disease. CONCLUSIONS A genetic susceptibility to both type 1 diabetes and celiac disease shares common alleles. These data suggest that common biologic mechanisms, such as autoimmunity-related tissue damage and intolerance to dietary antigens, may be etiologic features of both diseases.


Nature Genetics | 2005

Population structure, differential bias and genomic control in a large-scale, case-control association study

David G. Clayton; Neil M Walker; Deborah J. Smyth; Rebecca Pask; Jason D. Cooper; Lisa M. Maier; Luc J. Smink; Alex C. Lam; Nigel R Ovington; Helen Stevens; Sarah Nutland; Joanna M. M. Howson; Malek Faham; Martin Moorhead; Hywel B. Jones; Matthew Falkowski; Paul Hardenbol; Thomas D. Willis; John A. Todd

The main problems in drawing causal inferences from epidemiological case-control studies are confounding by unmeasured extraneous factors, selection bias and differential misclassification of exposure. In genetics the first of these, in the form of population structure, has dominated recent debate. Population structure explained part of the significant +11.2% inflation of test statistics we observed in an analysis of 6,322 nonsynonymous SNPs in 816 cases of type 1 diabetes and 877 population-based controls from Great Britain. The remainder of the inflation resulted from differential bias in genotype scoring between case and control DNA samples, which originated from two laboratories, causing false-positive associations. To avoid excluding SNPs and losing valuable information, we extended the genomic control method by applying a variable downweighting to each SNP.


Nature | 2007

Localization of type 1 diabetes susceptibility to the MHC class I genes HLA-B and HLA-A

Sergey Nejentsev; Joanna M. M. Howson; Neil Walker; Jeffrey S. Szeszko; Sarah Field; Helen Stevens; Reynolds P; Matthew Hardy; Emma King; Jennifer Masters; John S. Hulme; Lisa M. Maier; Deborah J. Smyth; Rebecca Bailey; Jason D. Cooper; Ribas G; Campbell Rd; David G. Clayton; John A. Todd

The major histocompatibility complex (MHC) on chromosome 6 is associated with susceptibility to more common diseases than any other region of the human genome, including almost all disorders classified as autoimmune. In type 1 diabetes the major genetic susceptibility determinants have been mapped to the MHC class II genes HLA-DQB1 and HLA-DRB1 (refs 1–3), but these genes cannot completely explain the association between type 1 diabetes and the MHC region. Owing to the region’s extreme gene density, the multiplicity of disease-associated alleles, strong associations between alleles, limited genotyping capability, and inadequate statistical approaches and sample sizes, which, and how many, loci within the MHC determine susceptibility remains unclear. Here, in several large type 1 diabetes data sets, we analyse a combined total of 1,729 polymorphisms, and apply statistical methods—recursive partitioning and regression—to pinpoint disease susceptibility to the MHC class I genes HLA-B and HLA-A (risk ratios >1.5; Pcombined = 2.01 × 10-19 and 2.35 × 10-13, respectively) in addition to the established associations of the MHC class II genes. Other loci with smaller and/or rarer effects might also be involved, but to find these, future searches must take into account both the HLA class II and class I genes and use even larger samples. Taken together with previous studies, we conclude that MHC-class-I-mediated events, principally involving HLA-B*39, contribute to the aetiology of type 1 diabetes.


Nature Genetics | 2002

Parameters for reliable results in genetic association studies in common disease

Ingrid Dahlman; Iain A. Eaves; Roman Kosoy; V. Anne Morrison; Joanne M. Heward; S. C. L. Gough; Amit Allahabadia; Jayne A. Franklyn; Jaakko Tuomilehto; Eva Tuomilehto-Wolf; Francesco Cucca; Cristian Guja; Constantin Ionescu-Tirgoviste; Helen Stevens; Philippa Carr; Sarah Nutland; Patricia A. McKinney; Julian Shield; W. Wang; Heather J. Cordell; Neil M Walker; John A. Todd; Patrick Concannon

It is increasingly apparent that the identification of true genetic associations in common multifactorial disease will require studies comprising thousands rather than the hundreds of individuals employed to date. Using 2,873 families, we were unable to confirm a recently published association of the interleukin 12B gene in 422 type I diabetic families. These results emphasize the need for large datasets, small P values and independent replication if results are to be reliable.


Genes and Immunity | 2009

Analysis of 17 autoimmune disease-associated variants in type 1 diabetes identifies 6q23/ TNFAIP3 as a susceptibility locus

Erik Fung; Deborah J. Smyth; Joanna M. M. Howson; Jason D. Cooper; Neil Walker; Helen Stevens; Linda S. Wicker; John A. Todd

As a result of genome-wide association studies in larger sample sets, there has been an increase in identifying genes that influence susceptibility to individual immune-mediated diseases, as well as evidence that some genes are associated with more than one disease. In this study, we tested 17 single nucleotide polymorphisms (SNP) from 16 gene regions that have been reported in several autoimmune diseases including rheumatoid arthritis (RA), systemic lupus erythematosus (SLE), multiple sclerosis (MS), ankylosing spondylitis (AS) and Crohns disease (CD) to determine whether the variants are also associated with type 1 diabetes (T1D). In up to 8010 cases and 9733 controls we found some evidence for an association with T1D in the regions containing genes: 2q32/STAT4, 17q21/STAT3, 5p15/ERAP1 (ARTS1), 6q23/TNFAIP3 and 12q13/KIF5A/PIP4K2C with allelic P-values ranging from 3.70 × 10−3 to 3.20 × 10−5. These findings extend our knowledge of susceptibility locus sharing across different autoimmune diseases, and provide convincing evidence that the RA/SLE locus 6q23/TNFAIP3 is a newly identified T1D locus.


Diabetes | 2011

Inherited Variation in Vitamin D Genes Is Associated With Predisposition to Autoimmune Disease Type 1 Diabetes

Jason D. Cooper; Deborah J. Smyth; Neil Walker; Helen Stevens; Oliver Burren; Chris Wallace; Christopher Greissl; Elizabeth Ramos-Lopez; Elina Hyppönen; David B. Dunger; Tim D. Spector; Willem H. Ouwehand; Thomas J. Wang; Klaus Badenhoop; John A. Todd

OBJECTIVE Vitamin D deficiency (25-hydroxyvitamin D [25(OH)D] <50 nmol/L) is commonly reported in both children and adults worldwide, and growing evidence indicates that vitamin D deficiency is associated with many extraskeletal chronic disorders, including the autoimmune diseases type 1 diabetes and multiple sclerosis. RESEARCH DESIGN AND METHODS We measured 25(OH)D concentrations in 720 case and 2,610 control plasma samples and genotyped single nucleotide polymorphisms from seven vitamin D metabolism genes in 8,517 case, 10,438 control, and 1,933 family samples. We tested genetic variants influencing 25(OH)D metabolism for an association with both circulating 25(OH)D concentrations and disease status. RESULTS Type 1 diabetic patients have lower circulating levels of 25(OH)D than similarly aged subjects from the British population. Only 4.3 and 18.6% of type 1 diabetic patients reached optimal levels (≥75 nmol/L) of 25(OH)D for bone health in the winter and summer, respectively. We replicated the associations of four vitamin D metabolism genes (GC, DHCR7, CYP2R1, and CYP24A1) with 25(OH)D in control subjects. In addition to the previously reported association between type 1 diabetes and CYP27B1 (P = 1.4 × 10−4), we obtained consistent evidence of type 1 diabetes being associated with DHCR7 (P = 1.2 × 10−3) and CYP2R1 (P = 3.0 × 10−3). CONCLUSIONS Circulating levels of 25(OH)D in children and adolescents with type 1 diabetes vary seasonally and are under the same genetic control as in the general population but are much lower. Three key 25(OH)D metabolism genes show consistent evidence of association with type 1 diabetes risk, indicating a genetic etiological role for vitamin D deficiency in type 1 diabetes.

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John A. Todd

Wellcome Trust Centre for Human Genetics

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Neil Walker

University of Edinburgh

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Vincent Plagnol

University College London

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