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Featured researches published by Amy J. Swift.


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.


Diabetes | 2010

Detailed Physiologic Characterization Reveals Diverse Mechanisms for Novel Genetic Loci Regulating Glucose and Insulin Metabolism in Humans

Erik Ingelsson; Claudia Langenberg; Marie-France Hivert; Inga Prokopenko; Valeriya Lyssenko; Josée Dupuis; Reedik Mägi; Stephen J. Sharp; Anne U. Jackson; Themistocles L. Assimes; Peter Shrader; Joshua W. Knowles; Björn Zethelius; Fahim Abbasi; Richard N. Bergman; Antje Bergmann; Christian Berne; Michael Boehnke; Lori L. Bonnycastle; Stefan R. Bornstein; Thomas A. Buchanan; Suzannah Bumpstead; Yvonne Böttcher; Peter S. Chines; Francis S. Collins; C Cooper; Elaine M. Dennison; Michael R. Erdos; Ele Ferrannini; Caroline S. Fox

OBJECTIVE Recent genome-wide association studies have revealed loci associated with glucose and insulin-related traits. We aimed to characterize 19 such loci using detailed measures of insulin processing, secretion, and sensitivity to help elucidate their role in regulation of glucose control, insulin secretion and/or action. RESEARCH DESIGN AND METHODS We investigated associations of loci identified by the Meta-Analyses of Glucose and Insulin-related traits Consortium (MAGIC) with circulating proinsulin, measures of insulin secretion and sensitivity from oral glucose tolerance tests (OGTTs), euglycemic clamps, insulin suppression tests, or frequently sampled intravenous glucose tolerance tests in nondiabetic humans (n = 29,084). RESULTS The glucose-raising allele in MADD was associated with abnormal insulin processing (a dramatic effect on higher proinsulin levels, but no association with insulinogenic index) at extremely persuasive levels of statistical significance (P = 2.1 × 10−71). Defects in insulin processing and insulin secretion were seen in glucose-raising allele carriers at TCF7L2, SCL30A8, GIPR, and C2CD4B. Abnormalities in early insulin secretion were suggested in glucose-raising allele carriers at MTNR1B, GCK, FADS1, DGKB, and PROX1 (lower insulinogenic index; no association with proinsulin or insulin sensitivity). Two loci previously associated with fasting insulin (GCKR and IGF1) were associated with OGTT-derived insulin sensitivity indices in a consistent direction. CONCLUSIONS Genetic loci identified through their effect on hyperglycemia and/or hyperinsulinemia demonstrate considerable heterogeneity in associations with measures of insulin processing, secretion, and sensitivity. Our findings emphasize the importance of detailed physiological characterization of such loci for improved understanding of pathways associated with alterations in glucose homeostasis and eventually type 2 diabetes.


Genome Research | 2010

Systematic comparison of three genomic enrichment methods for massively parallel DNA sequencing

Jamie K. Teer; Lori L. Bonnycastle; Peter S. Chines; Nancy F. Hansen; Natsuyo Aoyama; Amy J. Swift; Hatice Ozel Abaan; Thomas J. Albert; Nisc Comparative Sequencing Program; Elliott H. Margulies; Eric D. Green; Francis S. Collins; James C. Mullikin; Leslie G. Biesecker

Massively parallel DNA sequencing technologies have greatly increased our ability to generate large amounts of sequencing data at a rapid pace. Several methods have been developed to enrich for genomic regions of interest for targeted sequencing. We have compared three of these methods: Molecular Inversion Probes (MIP), Solution Hybrid Selection (SHS), and Microarray-based Genomic Selection (MGS). Using HapMap DNA samples, we compared each of these methods with respect to their ability to capture an identical set of exons and evolutionarily conserved regions associated with 528 genes (2.61 Mb). For sequence analysis, we developed and used a novel Bayesian genotype-assigning algorithm, Most Probable Genotype (MPG). All three capture methods were effective, but sensitivities (percentage of targeted bases associated with high-quality genotypes) varied for an equivalent amount of pass-filtered sequence: for example, 70% (MIP), 84% (SHS), and 91% (MGS) for 400 Mb. In contrast, all methods yielded similar accuracies of >99.84% when compared to Infinium 1M SNP BeadChip-derived genotypes and >99.998% when compared to 30-fold coverage whole-genome shotgun sequencing data. We also observed a low false-positive rate with all three methods; of the heterozygous positions identified by each of the capture methods, >99.57% agreed with 1M SNP BeadChip, and >98.840% agreed with the whole-genome shotgun data. In addition, we successfully piloted the genomic enrichment of a set of 12 pooled samples via the MGS method using molecular bar codes. We find that these three genomic enrichment methods are highly accurate and practical, with sensitivities comparable to that of 30-fold coverage whole-genome shotgun data.


Diabetes | 2014

Impact of type 2 diabetes susceptibility variants on quantitative glycemic traits reveals mechanistic heterogeneity

Antigone S. Dimas; Vasiliki Lagou; Adam Barker; Joshua W. Knowles; Reedik Mägi; Marie-France Hivert; Andrea Benazzo; Denis Rybin; Anne U. Jackson; Heather M. Stringham; Ci Song; Antje Fischer-Rosinsky; Trine Welløv Boesgaard; Niels Grarup; Fahim Abbasi; Themistocles L. Assimes; Ke Hao; Xia Yang; Cécile Lecoeur; Inês Barroso; Lori L. Bonnycastle; Yvonne Böttcher; Suzannah Bumpstead; Peter S. Chines; Michael R. Erdos; Jürgen Graessler; Peter Kovacs; Mario A. Morken; Felicity Payne; Alena Stančáková

Patients with established type 2 diabetes display both β-cell dysfunction and insulin resistance. To define fundamental processes leading to the diabetic state, we examined the relationship between type 2 diabetes risk variants at 37 established susceptibility loci, and indices of proinsulin processing, insulin secretion, and insulin sensitivity. We included data from up to 58,614 nondiabetic subjects with basal measures and 17,327 with dynamic measures. We used additive genetic models with adjustment for sex, age, and BMI, followed by fixed-effects, inverse-variance meta-analyses. Cluster analyses grouped risk loci into five major categories based on their relationship to these continuous glycemic phenotypes. The first cluster (PPARG, KLF14, IRS1, GCKR) was characterized by primary effects on insulin sensitivity. The second cluster (MTNR1B, GCK) featured risk alleles associated with reduced insulin secretion and fasting hyperglycemia. ARAP1 constituted a third cluster characterized by defects in insulin processing. A fourth cluster (TCF7L2, SLC30A8, HHEX/IDE, CDKAL1, CDKN2A/2B) was defined by loci influencing insulin processing and secretion without a detectable change in fasting glucose levels. The final group contained 20 risk loci with no clear-cut associations to continuous glycemic traits. By assembling extensive data on continuous glycemic traits, we have exposed the diverse mechanisms whereby type 2 diabetes risk variants impact disease predisposition.


Journal of Clinical Investigation | 2008

Variations in the G6PC2/ABCB11 genomic region are associated with fasting glucose levels

Wei-Min Chen; Michael R. Erdos; Anne U. Jackson; Richa Saxena; Serena Sanna; Kristi Silver; Nicholas J. Timpson; Torben Hansen; Marco Orru; Maria Grazia Piras; Lori L. Bonnycastle; Cristen J. Willer; Valeriya Lyssenko; Haiqing Shen; Johanna Kuusisto; Shah Ebrahim; Natascia Sestu; William L. Duren; Maria Cristina Spada; Heather M. Stringham; Laura J. Scott; Nazario Olla; Amy J. Swift; Samer S. Najjar; Braxton D. Mitchell; Debbie A. Lawlor; George Davey Smith; Yoav Ben-Shlomo; Gitte Andersen; Knut Borch-Johnsen

Identifying the genetic variants that regulate fasting glucose concentrations may further our understanding of the pathogenesis of diabetes. We therefore investigated the association of fasting glucose levels with SNPs in 2 genome-wide scans including a total of 5,088 nondiabetic individuals from Finland and Sardinia. We found a significant association between the SNP rs563694 and fasting glucose concentrations (P = 3.5 x 10(-7)). This association was further investigated in an additional 18,436 nondiabetic individuals of mixed European descent from 7 different studies. The combined P value for association in these follow-up samples was 6.9 x 10(-26), and combining results from all studies resulted in an overall P value for association of 6.4 x 10(-33). Across these studies, fasting glucose concentrations increased 0.01-0.16 mM with each copy of the major allele, accounting for approximately 1% of the total variation in fasting glucose. The rs563694 SNP is located between the genes glucose-6-phosphatase catalytic subunit 2 (G6PC2) and ATP-binding cassette, subfamily B (MDR/TAP), member 11 (ABCB11). Our results in combination with data reported in the literature suggest that G6PC2, a glucose-6-phosphatase almost exclusively expressed in pancreatic islet cells, may underlie variation in fasting glucose, though it is possible that ABCB11, which is expressed primarily in liver, may also contribute to such variation.


Diabetes | 2007

Screening of 134 Single Nucleotide Polymorphisms (SNPs) Previously Associated With Type 2 Diabetes Replicates Association With 12 SNPs in Nine Genes

Cristen J. Willer; Lori L. Bonnycastle; Karen N. Conneely; William L. Duren; Anne U. Jackson; Laura J. Scott; Peter S. Chines; Andrew D. Skol; Heather M. Stringham; John L. Petrie; Michael R. Erdos; Amy J. Swift; Sareena T. Enloe; Andrew G. Sprau; Eboni Smith; Maurine Tong; Kimberly F. Doheny; Elizabeth W. Pugh; Richard M. Watanabe; Thomas A. Buchanan; Timo T. Valle; Richard N. Bergman; Jaakko Tuomilehto; Karen L. Mohlke; Francis S. Collins; Michael Boehnke

More than 120 published reports have described associations between single nucleotide polymorphisms (SNPs) and type 2 diabetes. However, multiple studies of the same variant have often been discordant. From a literature search, we identified previously reported type 2 diabetes–associated SNPs. We initially genotyped 134 SNPs on 786 index case subjects from type 2 diabetes families and 617 control subjects with normal glucose tolerance from Finland and excluded from analysis 20 SNPs in strong linkage disequilibrium (r2 > 0.8) with another typed SNP. Of the 114 SNPs examined, we followed up the 20 most significant SNPs (P < 0.10) on an additional 384 case subjects and 366 control subjects from a population-based study in Finland. In the combined data, we replicated association (P < 0.05) for 12 SNPs: PPARG Pro12Ala and His447, KCNJ11 Glu23Lys and rs5210, TNF −857, SLC2A2 Ile110Thr, HNF1A/TCF1 rs2701175 and GE117881_360, PCK1 −232, NEUROD1 Thr45Ala, IL6 −598, and ENPP1 Lys121Gln. The replication of 12 SNPs of 114 tested was significantly greater than expected by chance under the null hypothesis of no association (P = 0.012). We observed that SNPs from genes that had three or more previous reports of association were significantly more likely to be replicated in our sample (P = 0.03), although we also replicated 4 of 58 SNPs from genes that had only one previous report of association.


Human Molecular Genetics | 2009

Tissue-specific alternative splicing of TCF7L2.

Ludmila Prokunina-Olsson; Cullan Welch; Ola Hansson; Neeta Adhikari; Laura J. Scott; Nicolle Usher; Maurine Tong; Andrew G. Sprau; Amy J. Swift; Lori L. Bonnycastle; Michael R. Erdos; Zhi He; Richa Saxena; Brennan Harmon; Olga Kotova; Eric P. Hoffman; David Altshuler; Leif Groop; Michael Boehnke; Francis S. Collins; Jennifer L. Hall

Common variants in the transcription factor 7-like 2 (TCF7L2) gene have been identified as the strongest genetic risk factors for type 2 diabetes (T2D). However, the mechanisms by which these non-coding variants increase risk for T2D are not well-established. We used 13 expression assays to survey mRNA expression of multiple TCF7L2 splicing forms in up to 380 samples from eight types of human tissue (pancreas, pancreatic islets, colon, liver, monocytes, skeletal muscle, subcutaneous adipose tissue and lymphoblastoid cell lines) and observed a tissue-specific pattern of alternative splicing. We tested whether the expression of TCF7L2 splicing forms was associated with single nucleotide polymorphisms (SNPs), rs7903146 and rs12255372, located within introns 3 and 4 of the gene and most strongly associated with T2D. Expression of two splicing forms was lower in pancreatic islets with increasing counts of T2D-associated alleles of the SNPs: a ubiquitous splicing form (P = 0.018 for rs7903146 and P = 0.020 for rs12255372) and a splicing form found in pancreatic islets, pancreas and colon but not in other tissues tested here (P = 0.009 for rs12255372 and P = 0.053 for rs7903146). Expression of this form in glucose-stimulated pancreatic islets correlated with expression of proinsulin (r2 = 0.84–0.90, P < 0.00063). In summary, we identified a tissue-specific pattern of alternative splicing of TCF7L2. After adjustment for multiple tests, no association between expression of TCF7L2 in eight types of human tissue samples and T2D-associated genetic variants remained significant. Alternative splicing of TCF7L2 in pancreatic islets warrants future studies. GenBank Accession Numbers: FJ010164–FJ010174.

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Lori L. Bonnycastle

National Institutes of Health

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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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Michael R. Erdos

National Institutes of Health

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