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Dive into the research topics where Anne U. Jackson is active.

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Featured researches published by Anne U. Jackson.


Science | 2007

A genome-wide association study of type 2 diabetes in Finns detects multiple susceptibility variants.

Laura J. Scott; Karen L. Mohlke; Lori L. Bonnycastle; Cristen J. Willer; Yun Li; William L. Duren; Michael R. Erdos; Heather M. Stringham; Peter S. Chines; Anne U. Jackson; Ludmila Prokunina-Olsson; Chia-Jen Ding; Amy J. Swift; Tianle Hu; Randall Pruim; Rui Xiao; Xiao-Yi Li; Karen N. Conneely; Nancy Riebow; Andrew G. Sprau; Maurine Tong; Peggy P. White; Kurt N. Hetrick; Michael W. Barnhart; Craig W. Bark; Janet L. Goldstein; Lee Watkins; Fang Xiang; Jouko Saramies; Thomas A. Buchanan

Identifying the genetic variants that increase the risk of type 2 diabetes (T2D) in humans has been a formidable challenge. Adopting a genome-wide association strategy, we genotyped 1161 Finnish T2D cases and 1174 Finnish normal glucose-tolerant (NGT) controls with >315,000 single-nucleotide polymorphisms (SNPs) and imputed genotypes for an additional >2 million autosomal SNPs. We carried out association analysis with these SNPs to identify genetic variants that predispose to T2D, compared our T2D association results with the results of two similar studies, and genotyped 80 SNPs in an additional 1215 Finnish T2D cases and 1258 Finnish NGT controls. We identify T2D-associated variants in an intergenic region of chromosome 11p12, contribute to the identification of T2D-associated variants near the genes IGF2BP2 and CDKAL1 and the region of CDKN2A and CDKN2B, and confirm that variants near TCF7L2, SLC30A8, HHEX, FTO, PPARG, and KCNJ11 are associated with T2D risk. This brings the number of T2D loci now confidently identified to at least 10.


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.


Nature Genetics | 2008

Newly identified loci that influence lipid concentrations and risk of coronary artery disease

Cristen J. Willer; Serena Sanna; Anne U. Jackson; Angelo Scuteri; Lori L. Bonnycastle; Robert Clarke; Simon Heath; Nicholas J. Timpson; Samer S. Najjar; Heather M. Stringham; James B. Strait; William L. Duren; Andrea Maschio; Fabio Busonero; Antonella Mulas; Giuseppe Albai; Amy J. Swift; Mario A. Morken; Derrick Bennett; Sarah Parish; Haiqing Shen; Pilar Galan; Pierre Meneton; Serge Hercberg; Diana Zelenika; Wei-Min Chen; Yun Li; Laura J. Scott; Paul Scheet; Jouko Sundvall

To identify genetic variants influencing plasma lipid concentrations, we first used genotype imputation and meta-analysis to combine three genome-wide scans totaling 8,816 individuals and comprising 6,068 individuals specific to our study (1,874 individuals from the FUSION study of type 2 diabetes and 4,184 individuals from the SardiNIA study of aging-associated variables) and 2,758 individuals from the Diabetes Genetics Initiative, reported in a companion study in this issue. We subsequently examined promising signals in 11,569 additional individuals. Overall, we identify strongly associated variants in eleven loci previously implicated in lipid metabolism (ABCA1, the APOA5-APOA4-APOC3-APOA1 and APOE-APOC clusters, APOB, CETP, GCKR, LDLR, LPL, LIPC, LIPG and PCSK9) and also in several newly identified loci (near MVK-MMAB and GALNT2, with variants primarily associated with high-density lipoprotein (HDL) cholesterol; near SORT1, with variants primarily associated with low-density lipoprotein (LDL) cholesterol; near TRIB1, MLXIPL and ANGPTL3, with variants primarily associated with triglycerides; and a locus encompassing several genes near NCAN, with variants strongly associated with both triglycerides and LDL cholesterol). Notably, the 11 independent variants associated with increased LDL cholesterol concentrations in our study also showed increased frequency in a sample of coronary artery disease cases versus controls.


Nature Genetics | 2009

Common variants at 30 loci contribute to polygenic dyslipidemia

Sekar Kathiresan; Cristen J. Willer; Gina M. Peloso; Serkalem Demissie; Kiran Musunuru; Eric E. Schadt; Lee M. Kaplan; Derrick Bennett; Yun Li; Toshiko Tanaka; Benjamin F. Voight; Lori L. Bonnycastle; Anne U. Jackson; Gabriel Crawford; Aarti Surti; Candace Guiducci; Noël P. Burtt; Sarah Parish; Robert Clarke; Diana Zelenika; Kari Kubalanza; Mario A. Morken; Laura J. Scott; Heather M. Stringham; Pilar Galan; Amy J. Swift; Johanna Kuusisto; Richard N. Bergman; Jouko Sundvall; Markku Laakso

Blood low-density lipoprotein (LDL) cholesterol, high-density lipoprotein (HDL) cholesterol and triglyceride levels are risk factors for cardiovascular disease. To dissect the polygenic basis of these traits, we conducted genome-wide association screens in 19,840 individuals and replication in up to 20,623 individuals. We identified 30 distinct loci associated with lipoprotein concentrations (each with P < 5 × 10−8), including 11 loci that reached genome-wide significance for the first time. The 11 newly defined loci include common variants associated with LDL cholesterol near ABCG8, MAFB, HNF1A and TIMD4; with HDL cholesterol near ANGPTL4, FADS1-FADS2-FADS3, HNF4A, LCAT, PLTP and TTC39B; and with triglycerides near AMAC1L2, FADS1-FADS2-FADS3 and PLTP. The proportion of individuals exceeding clinical cut points for high LDL cholesterol, low HDL cholesterol and high triglycerides varied according to an allelic dosage score (P < 10−15 for each trend). These results suggest that the cumulative effect of multiple common variants contributes to polygenic dyslipidemia.


Nature Genetics | 2008

Identification of ten loci associated with height highlights new biological pathways in human growth

Guillaume Lettre; Anne U. Jackson; Christian Gieger; Fredrick R. Schumacher; Sonja I. Berndt; Serena Sanna; Susana Eyheramendy; Benjamin F. Voight; Johannah L. Butler; Candace Guiducci; Thomas Illig; Rachel Hackett; Iris M. Heid; Kevin B. Jacobs; Valeriya Lyssenko; Manuela Uda; Michael Boehnke; Stephen J. Chanock; Leif Groop; Frank B. Hu; Bo Isomaa; Peter Kraft; Leena Peltonen; Veikko Salomaa; David Schlessinger; David J. Hunter; Richard B. Hayes; Gonçalo R. Abecasis; H.-Erich Wichmann; Karen L. Mohlke

Height is a classic polygenic trait, reflecting the combined influence of multiple as-yet-undiscovered genetic factors. We carried out a meta-analysis of genome-wide association study data of height from 15,821 individuals at 2.2 million SNPs, and followed up the strongest findings in >10,000 subjects. Ten newly identified and two previously reported loci were strongly associated with variation in height (P values from 4 × 10−7 to 8 × 10−22). Together, these 12 loci account for ∼2% of the population variation in height. Individuals with ≤8 height-increasing alleles and ≥16 height-increasing alleles differ in height by ∼3.5 cm. The newly identified loci, along with several additional loci with strongly suggestive associations, encompass both strong biological candidates and unexpected genes, and highlight several pathways (let-7 targets, chromatin remodeling proteins and Hedgehog signaling) as important regulators of human stature. These results expand the picture of the biological regulation of human height and of the genetic architecture of this classical complex trait.


Nature Genetics | 2009

Common variant in MTNR1B associated with increased risk of type 2 diabetes and impaired early insulin secretion

Valeriya Lyssenko; Cecilia Nagorny; Michael R. Erdos; Nils Wierup; Anna Maria Jönsson; Peter Spégel; Marco Bugliani; Richa Saxena; Malin Fex; N. Pulizzi; Bo Isomaa; Tiinamaija Tuomi; Peter Nilsson; Johanna Kuusisto; Jaakko Tuomilehto; Michael Boehnke; David Altshuler; F. Sundler; Johan G. Eriksson; Anne U. Jackson; Markku Laakso; Piero Marchetti; Richard M. Watanabe; Hindrik Mulder; Leif Groop

Genome-wide association studies have shown that variation in MTNR1B (melatonin receptor 1B) is associated with insulin and glucose concentrations. Here we show that the risk genotype of this SNP predicts future type 2 diabetes (T2D) in two large prospective studies. Specifically, the risk genotype was associated with impairment of early insulin response to both oral and intravenous glucose and with faster deterioration of insulin secretion over time. We also show that the MTNR1B mRNA is expressed in human islets, and immunocytochemistry confirms that it is primarily localized in β cells in islets. Nondiabetic individuals carrying the risk allele and individuals with T2D showed increased expression of the receptor in islets. Insulin release from clonal β cells in response to glucose was inhibited in the presence of melatonin. These data suggest that the circulating hormone melatonin, which is predominantly released from the pineal gland in the brain, is involved in the pathogenesis of T2D. Given the increased expression of MTNR1B in individuals at risk of T2D, the pathogenic effects are likely exerted via a direct inhibitory effect on β cells. In view of these results, blocking the melatonin ligand-receptor system could be a therapeutic avenue in 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 | 2008

Common variants in the GDF5-UQCC region are associated with variation in human height

Serena Sanna; Anne U. Jackson; Ramaiah Nagaraja; Cristen J. Willer; Wei-Min Chen; Lori L. Bonnycastle; Haiqing Shen; Nicholas J. Timpson; Guillaume Lettre; Gianluca Usala; Peter S. Chines; Heather M. Stringham; Laura J. Scott; Mariano Dei; Sandra Lai; Giuseppe Albai; Laura Crisponi; Silvia Naitza; Kimberly F. Doheny; Elizabeth W. Pugh; Yoav Ben-Shlomo; Shah Ebrahim; Debbie A. Lawlor; Richard N. Bergman; Richard M. Watanabe; Manuela Uda; Jaakko Tuomilehto; Josef Coresh; Joel N. Hirschhorn; Alan R. Shuldiner

Identifying genetic variants that influence human height will advance our understanding of skeletal growth and development. Several rare genetic variants have been convincingly and reproducibly associated with height in mendelian syndromes, and common variants in the transcription factor gene HMGA2 are associated with variation in height in the general population. Here we report genome-wide association analyses, using genotyped and imputed markers, of 6,669 individuals from Finland and Sardinia, and follow-up analyses in an additional 28,801 individuals. We show that common variants in the osteoarthritis-associated locus GDF5-UQCC contribute to variation in height with an estimated additive effect of 0.44 cm (overall P < 10−15). Our results indicate that there may be a link between the genetic basis of height and osteoarthritis, potentially mediated through alterations in bone growth and development.


Diabetes | 2006

Association of transcription factor 7-like 2 (TCF7L2) variants with type 2 diabetes in a Finnish sample.

Laura J. Scott; Lori L. Bonnycastle; Cristen J. Willer; Andrew G. Sprau; Anne U. Jackson; William L. Duren; Peter S. Chines; Heather M. Stringham; Michael R. Erdos; Timo T. Valle; Jaakko Tuomilehto; Richard N. Bergman; Karen L. Mohlke; Francis S. Collins; Michael Boehnke

Transcription factor 7-like 2 (TCF7L2) is part of the Wnt signaling pathway. Genetic variants within TCF7L2 on chromosome 10q were recently reported to be associated with type 2 diabetes in Icelandic, Danish, and American (U.S.) samples. We previously observed a modest logarithm of odds score of 0.61 on chromosome 10q, ∼1 Mb from TCF7L2, in the Finland-United States Investigation of NIDDM Genetics study. We tested the five associated TCF7L2 single nucleotide polymorphism (SNP) variants in a Finnish sample of 1,151 type 2 diabetic patients and 953 control subjects. We confirmed the association with the same risk allele (P value <0.05) for all five SNPs. Our strongest results were for rs12255372 (odds ratio [OR] 1.36 [95% CI 1.15–1.61], P = 0.00026) and rs7903146 (1.33 [1.14–1.56], P = 0.00042). Based on the CEU HapMap data, we selected and tested 12 additional SNPs to tag SNPs in linkage disequilibrium with rs12255372. None of these SNPs showed stronger evidence of association than rs12255372 or rs7903146 (OR ≤1.26, P ≥ 0.0054). Our results strengthen the evidence that one or more variants in TCF7L2 are associated with increased risk of type 2 diabetes.


Nature Genetics | 2013

Exome array analysis identifies new loci and low-frequency variants influencing insulin processing and secretion

Jeroen R. Huyghe; Anne U. Jackson; Marie P. Fogarty; Martin L. Buchkovich; Alena Stančáková; Heather M. Stringham; Xueling Sim; Lingyao Yang; Christian Fuchsberger; Henna Cederberg; Peter S. Chines; Tanya M. Teslovich; Jane Romm; Hua Ling; Ivy McMullen; Roxann G. Ingersoll; Elizabeth W. Pugh; Kimberly F. Doheny; Benjamin M. Neale; Mark J. Daly; Johanna Kuusisto; Laura J. Scott; Hyun Min Kang; Francis S. Collins; Gonçalo R. Abecasis; Richard M. Watanabe; Michael Boehnke; Markku Laakso; Karen L. Mohlke

Insulin secretion has a crucial role in glucose homeostasis, and failure to secrete sufficient insulin is a hallmark of type 2 diabetes. Genome-wide association studies (GWAS) have identified loci contributing to insulin processing and secretion; however, a substantial fraction of the genetic contribution remains undefined. To examine low-frequency (minor allele frequency (MAF) 0.5–5%) and rare (MAF < 0.5%) nonsynonymous variants, we analyzed exome array data in 8,229 nondiabetic Finnish males using the Illumina HumanExome Beadchip. We identified low-frequency coding variants associated with fasting proinsulin concentrations at the SGSM2 and MADD GWAS loci and three new genes with low-frequency variants associated with fasting proinsulin or insulinogenic index: TBC1D30, KANK1 and PAM. We also show that the interpretation of single-variant and gene-based tests needs to consider the effects of noncoding SNPs both nearby and megabases away. This study demonstrates that exome array genotyping is a valuable approach to identify low-frequency variants that contribute to complex traits.

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Francis S. Collins

National Institutes of Health

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Peter S. Chines

National Institutes of Health

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Karen L. Mohlke

University of North Carolina at Chapel Hill

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Lori L. Bonnycastle

National Institutes of Health

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Michael R. Erdos

National Institutes of Health

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Richard N. Bergman

Cedars-Sinai Medical Center

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Johanna Kuusisto

University of Eastern Finland

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