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Showing papers by "Michael Boehnke published in 2012"


Journal ArticleDOI
Nichole D. Palmer1, Caitrin W. McDonough1, Pamela J. Hicks1, B H Roh1  +381 moreInstitutions (6)
04 Jan 2012-PLOS ONE
TL;DR: It is suggested that multiple loci underlie T2DM susceptibility in the African-American population and that these loci are distinct from those identified in other ethnic populations.
Abstract: African Americans are disproportionately affected by type 2 diabetes (T2DM) yet few studies have examined T2DM using genome-wide association approaches in this ethnicity. The aim of this study was to identify genes associated with T2DM in the African American population. We performed a Genome Wide Association Study (GWAS) using the Affymetrix 6.0 array in 965 African-American cases with T2DM and end-stage renal disease (T2DM-ESRD) and 1029 population-based controls. The most significant SNPs (n = 550 independent loci) were genotyped in a replication cohort and 122 SNPs (n = 98 independent loci) were further tested through genotyping three additional validation cohorts followed by meta-analysis in all five cohorts totaling 3,132 cases and 3,317 controls. Twelve SNPs had evidence of association in the GWAS (P<0.0071), were directionally consistent in the Replication cohort and were associated with T2DM in subjects without nephropathy (P<0.05). Meta-analysis in all cases and controls revealed a single SNP reaching genome-wide significance (P<2.5×10(-8)). SNP rs7560163 (P = 7.0×10(-9), OR (95% CI) = 0.75 (0.67-0.84)) is located intergenically between RND3 and RBM43. Four additional loci (rs7542900, rs4659485, rs2722769 and rs7107217) were associated with T2DM (P<0.05) and reached more nominal levels of significance (P<2.5×10(-5)) in the overall analysis and may represent novel loci that contribute to T2DM. We have identified novel T2DM-susceptibility variants in the African-American population. Notably, T2DM risk was associated with the major allele and implies an interesting genetic architecture in this population. These results suggest that multiple loci underlie T2DM susceptibility in the African-American population and that these loci are distinct from those identified in other ethnic populations.

1,957 citations


Journal ArticleDOI
TL;DR: This article conducted a meta-analysis of genetic variants on the Metabochip, including 34,840 cases and 114,981 controls, overwhelmingly of European descent, and identified ten previously unreported T2D susceptibility loci, including two showing sex-differentiated association.
Abstract: To extend understanding of the genetic architecture and molecular basis of type 2 diabetes (T2D), we conducted a meta-analysis of genetic variants on the Metabochip, including 34,840 cases and 114,981 controls, overwhelmingly of European descent. We identified ten previously unreported T2D susceptibility loci, including two showing sex-differentiated association. Genome-wide analyses of these data are consistent with a long tail of additional common variant loci explaining much of the variation in susceptibility to T2D. Exploration of the enlarged set of susceptibility loci implicates several processes, including CREBBP-related transcription, adipocytokine signaling and cell cycle regulation, in diabetes pathogenesis.

1,899 citations


Journal ArticleDOI
Benjamin F. Voight1, Benjamin F. Voight2, Benjamin F. Voight3, Gina M. Peloso4, Gina M. Peloso5, Marju Orho-Melander6, Ruth Frikke-Schmidt7, Maja Barbalić8, Majken K. Jensen3, George Hindy6, Hilma Holm9, Eric L. Ding3, Toby Johnson10, Heribert Schunkert11, Nilesh J. Samani12, Nilesh J. Samani13, Robert Clarke14, Jemma C. Hopewell14, John F. Thompson12, Mingyao Li1, Gudmar Thorleifsson9, Christopher Newton-Cheh, Kiran Musunuru2, Kiran Musunuru3, James P. Pirruccello3, James P. Pirruccello2, Danish Saleheen15, Li Chen16, Alexandre F.R. Stewart16, Arne Schillert11, Unnur Thorsteinsdottir17, Unnur Thorsteinsdottir9, Gudmundur Thorgeirsson17, Sonia S. Anand18, James C. Engert19, Thomas M. Morgan20, John A. Spertus21, Monika Stoll22, Klaus Berger22, Nicola Martinelli23, Domenico Girelli23, Pascal P. McKeown24, Christopher Patterson24, Stephen E. Epstein25, Joseph M. Devaney25, Mary Susan Burnett25, Vincent Mooser26, Samuli Ripatti27, Ida Surakka27, Markku S. Nieminen27, Juha Sinisalo27, Marja-Liisa Lokki27, Markus Perola5, Aki S. Havulinna5, Ulf de Faire28, Bruna Gigante28, Erik Ingelsson28, Tanja Zeller29, Philipp S. Wild29, Paul I.W. de Bakker, Olaf H. Klungel30, Anke-Hilse Maitland-van der Zee30, Bas J M Peters30, Anthonius de Boer30, Diederick E. Grobbee30, Pieter Willem Kamphuisen31, Vera H.M. Deneer, Clara C. Elbers30, N. Charlotte Onland-Moret30, Marten H. Hofker31, Cisca Wijmenga31, W. M. Monique Verschuren, Jolanda M. A. Boer, Yvonne T. van der Schouw30, Asif Rasheed, Philippe M. Frossard, Serkalem Demissie5, Serkalem Demissie4, Cristen J. Willer32, Ron Do3, Jose M. Ordovas33, Jose M. Ordovas34, Gonçalo R. Abecasis32, Michael Boehnke32, Karen L. Mohlke35, Mark J. Daly3, Mark J. Daly2, Candace Guiducci2, Noël P. Burtt2, Aarti Surti2, Elena Gonzalez2, Shaun Purcell2, Shaun Purcell3, Stacey Gabriel2, Jaume Marrugat, John F. Peden14, Jeanette Erdmann11, Patrick Diemert11, Christina Willenborg11, Inke R. König11, Marcus Fischer36, Christian Hengstenberg36, Andreas Ziegler11, Ian Buysschaert37, Diether Lambrechts37, Frans Van de Werf37, Keith A.A. Fox38, Nour Eddine El Mokhtari39, Diana Rubin, Jürgen Schrezenmeir, Stefan Schreiber39, Arne Schäfer39, John Danesh15, Stefan Blankenberg29, Robert Roberts16, Ruth McPherson16, Hugh Watkins14, Alistair S. Hall40, Kim Overvad41, Eric B. Rimm3, Eric Boerwinkle8, Anne Tybjærg-Hansen7, L. Adrienne Cupples5, L. Adrienne Cupples4, Muredach P. Reilly1, Olle Melander6, Pier Mannuccio Mannucci42, Diego Ardissino, David S. Siscovick43, Roberto Elosua, Kari Stefansson17, Kari Stefansson9, Christopher J. O'Donnell5, Christopher J. O'Donnell3, Veikko Salomaa5, Daniel J. Rader1, Leena Peltonen44, Leena Peltonen27, Stephen M. Schwartz43, David Altshuler, Sekar Kathiresan 
11 Aug 2012
TL;DR: In this paper, a Mendelian randomisation analysis was performed to compare the effect of HDL cholesterol, LDL cholesterol, and genetic score on risk of myocardial infarction.
Abstract: Methods We performed two mendelian randomisation analyses. First, we used as an instrument a single nucleotide polymorphism (SNP) in the endothelial lipase gene (LIPG Asn396Ser) and tested this SNP in 20 studies (20 913 myocardial infarction cases, 95 407 controls). Second, we used as an instrument a genetic score consisting of 14 common SNPs that exclusively associate with HDL cholesterol and tested this score in up to 12 482 cases of myocardial infarction and 41 331 controls. As a positive control, we also tested a genetic score of 13 common SNPs exclusively associated with LDL cholesterol. – ¹³) but similar levels of other lipid and non-lipid risk factors for myocardial infarction compared with noncarriers. This diff erence in HDL cholesterol is expected to decrease risk of myocardial infarction by 13% (odds ratio [OR] 0·87, 95% CI 0·84–0·91). However, we noted that the 396Ser allele was not associated with risk of myocardial infarction (OR 0·99, 95% CI 0·88–1·11, p=0·85). From observational epidemiology, an increase of 1 SD in HDL cholesterol was associated with reduced risk of myocardial infarction (OR 0·62, 95% CI 0·58–0·66). However, a 1 SD increase in HDL cholesterol due to genetic score was not associated with risk of myocardial infarction (OR 0·93, 95% CI 0·68–1·26, p=0·63). For LDL cholesterol, the estimate from observational epidemiology (a 1 SD increase in LDL cholesterol associated with OR 1·54, 95% CI 1·45–1·63) was concordant with that from genetic score (OR 2·13, 95% CI 1·69–2·69, p=2×10

1,878 citations


Benjamin F. Voight, Gina M. Peloso, Marju Orho-Melander, Ruth Frikke-Schmidt, Maja Barbalić, Majken K. Jensen, George Hindy, Hilma Holm, Eric L. Ding, Toby Johnson, Heribert Schunkert, Nilesh J. Samani, Robert Clarke, Jemma C. Hopewell, John F. Thompson, Mingyao Li, Gudmar Thorleifsson, Christopher Newton-Cheh, Kiran Musunuru, James P. Pirruccello, Danish Saleheen, Li Chen, Alexandre F.R. Stewart, Arne Schillert, Unnur Thorsteinsdottir, Gudmundur Thorgeirsson, Sonia S. Anand, James C. Engert, Thomas M. Morgan, John A. Spertus, Monika Stoll, Klaus Berger, Nicola Martinelli, Domenico Girelli, Pascal P. McKeown, Christopher Patterson, Stephen E. Epstein, Joseph M. Devaney, Mary-Susan Burnett, Vincent Mooser, Samuli Ripatti, Ida Surakka, Markku S. Nieminen, Juha Sinisalo, Marja-Liisa Lokki, Markus Perola, Aki S. Havulinna, Ulf de Faire, Bruna Gigante, Erik Ingelsson, Tanja Zeller, Philipp S. Wild, Paul I.W. de Bakker, Olaf H. Klungel, Anke-Hilse Maitland-van der Zee, Bas J M Peters, Anthonius de Boer, Diederick E. Grobbee, Pieter Willem Kamphuisen, Vera H.M. Deneer, Clara C. Elbers, N. Charlotte Onland-Moret, Marten H. Hofker, Cisca Wijmenga, W. M. Monique Verschuren, Jolanda M. A. Boer, Yvonne T. van der Schouw, Asif Rasheed, Philippe M. Frossard, Serkalem Demissie, Cristen J. Willer, Ron Do, Jose M. Ordovas, Gonçalo R. Abecasis, Michael Boehnke, Karen L. Mohlke, Mark J. Daly, Candace Guiducci, Noël P. Burtt, Aarti Surti, Elena Gonzalez, Shaun Purcell, Stacey Gabriel, Jaume Marrugat, John F. Peden, Jeanette Erdmann, Patrick Diemert, Christina Willenborg, Inke R. Koenig, Marcus Fischer, Christian Hengstenberg, Andreas Ziegler, Ian Buysschaert, Diether Lambrechts, Frans Van de Werf, Keith A.A. Fox, Nour Eddine El Mokhtari, Diana Rubin, Juergen Schrezenmeir, Stefan Schreiber, Arne S. Schaefer, John Danesh, Stefan Blankenberg, Robert Roberts, Ruth McPherson, Hugh Watkins, Alistair S. Hall, Kim Overvad, Eric B. Rimm, Eric Boerwinkle, Anne Tybjærg-Hansen, L. Adrienne Cupples, Muredach P. Reilly, Olle Melander, Pier Mannuccio Mannucci, Diego Ardissino, David S. Siscovick, Roberto Elosua, Kari Stefansson, Christopher J. O'Donnell, Veikko Salomaa, Daniel J. Rader, Leena Peltonen, Stephen M. Schwartz, David Altshuler, Sekar Kathiresan 
01 Jan 2012
TL;DR: Mendelian randomisation analyses challenge the concept that raising of plasma HDL cholesterol will uniformly translate into reductions in risk of myocardial infarction.
Abstract: Summary Background High plasma HDL cholesterol is associated with reduced risk of myocardial infarction, but whether this association is causal is unclear. Exploiting the fact that genotypes are randomly assigned at meiosis, are independent of non-genetic confounding, and are unmodified by disease processes, mendelian randomisation can be used to test the hypothesis that the association of a plasma biomarker with disease is causal. Methods We performed two mendelian randomisation analyses. First, we used as an instrument a single nucleotide polymorphism (SNP) in the endothelial lipase gene (LIPG Asn396Ser) and tested this SNP in 20 studies (20 913 myocardial infarction cases, 95 407 controls). Second, we used as an instrument a genetic score consisting of 14 common SNPs that exclusively associate with HDL cholesterol and tested this score in up to 12 482 cases of myocardial infarction and 41 331 controls. As a positive control, we also tested a genetic score of 13 common SNPs exclusively associated with LDL cholesterol. Findings Carriers of the LIPG 396Ser allele (2·6% frequency) had higher HDL cholesterol (0·14 mmol/L higher, p=8×10−13) but similar levels of other lipid and non-lipid risk factors for myocardial infarction compared with non-carriers. This difference in HDL cholesterol is expected to decrease risk of myocardial infarction by 13% (odds ratio [OR] 0·87, 95% CI 0·84–0·91). However, we noted that the 396Ser allele was not associated with risk of myocardial infarction (OR 0·99, 95% CI 0·88–1·11, p=0·85). From observational epidemiology, an increase of 1 SD in HDL cholesterol was associated with reduced risk of myocardial infarction (OR 0·62, 95% CI 0·58–0·66). However, a 1 SD increase in HDL cholesterol due to genetic score was not associated with risk of myocardial infarction (OR 0·93, 95% CI 0·68–1·26, p=0·63). For LDL cholesterol, the estimate from observational epidemiology (a 1 SD increase in LDL cholesterol associated with OR 1·54, 95% CI 1·45–1·63) was concordant with that from genetic score (OR 2·13, 95% CI 1·69–2·69, p=2×10−10). Interpretation Some genetic mechanisms that raise plasma HDL cholesterol do not seem to lower risk of myocardial infarction. These data challenge the concept that raising of plasma HDL cholesterol will uniformly translate into reductions in risk of myocardial infarction. Funding US National Institutes of Health, The Wellcome Trust, European Union, British Heart Foundation, and the German Federal Ministry of Education and Research.

1,550 citations


Journal ArticleDOI
TL;DR: Six previously unknown loci associated with fasting insulin at P < 5 × 10−8 in combined discovery and follow-up analyses of 52 studies comprising up to 96,496 non-diabetic individuals are presented.
Abstract: Recent genome-wide association studies have described many loci implicated in type 2 diabetes (T2D) pathophysiology and β-cell dysfunction but have contributed little to the understanding of the genetic basis of insulin resistance. We hypothesized that genes implicated in insulin resistance pathways might be uncovered by accounting for differences in body mass index (BMI) and potential interactions between BMI and genetic variants. We applied a joint meta-analysis approach to test associations with fasting insulin and glucose on a genome-wide scale. We present six previously unknown loci associated with fasting insulin at P < 5 × 10(-8) in combined discovery and follow-up analyses of 52 studies comprising up to 96,496 non-diabetic individuals. Risk variants were associated with higher triglyceride and lower high-density lipoprotein (HDL) cholesterol levels, suggesting a role for these loci in insulin resistance pathways. The discovery of these loci will aid further characterization of the role of insulin resistance in T2D pathophysiology.

811 citations


Journal ArticleDOI
Robert A. Scott, Vasiliki Lagou1, Ryan P. Welch2, Eleanor Wheeler3  +213 moreInstitutions (67)
TL;DR: Gene-based analyses identified further biologically plausible loci, suggesting that additional loci beyond those reaching genome-wide significance are likely to represent real associations and further functional analysis of these newly discovered loci will further improve the understanding of glycemic control.
Abstract: Through genome-wide association meta-analyses of up to 133,010 individuals of European ancestry without diabetes, including individuals newly genotyped using the Metabochip, we have increased the number of confirmed loci influencing glycemic traits to 53, of which 33 also increase type 2 diabetes risk (q < 0.05). Loci influencing fasting insulin concentration showed association with lipid levels and fat distribution, suggesting impact on insulin resistance. Gene-based analyses identified further biologically plausible loci, suggesting that additional loci beyond those reaching genome-wide significance are likely to represent real associations. This conclusion is supported by an excess of directionally consistent and nominally significant signals between discovery and follow-up studies. Functional analysis of these newly discovered loci will further improve our understanding of glycemic control.

753 citations


Journal ArticleDOI
Nadeem Sarwar1, Adam S. Butterworth1, Daniel F. Freitag1, John Gregson1, Peter Willeit1, Donal Gorman1, Pei Gao1, Danish Saleheen1, Augusto Rendon1, Christopher P. Nelson1, Peter S. Braund1, Alistair S. Hall1, Daniel I. Chasman1, Anne Tybjærg-Hansen1, John C. Chambers1, Emelia J. Benjamin1, Paul W. Franks, Robert Clarke1, Arthur A. M. Wilde1, Mieke D. Trip1, Maristella Steri1, Jacqueline C. M. Witteman1, Lu Qi1, C. Ellen van der Schoot1, Ulf de Faire1, Jeanette Erdmann1, Heather M. Stringham1, Wolfgang Koenig1, Daniel J. Rader1, David Melzer1, David Reich1, Bruce M. Psaty1, Marcus E. Kleber1, Demosthenes B. Panagiotakos1, Johann Willeit1, Patrik Wennberg1, Mark Woodward1, Svetlana Adamovic1, Eric B. Rimm1, Tom W. Meade1, Richard F. Gillum1, Jonathan A. Shaffer1, Albert Hofman1, Altan Onat1, Johan Sundström1, S. Wassertheil-Smoller1, Dan Mellström1, John Gallacher1, Mary Cushman1, Russell P. Tracy2, Jussi Kauhanen3, Magnus Karlsson, Jukka T. Salonen4, Lars Wilhelmsen5, Philippe Amouyel6, Bernard Cantin7, Lyle G. Best, Yoav Ben-Shlomo, JoAnn E. Manson8, George Davey-Smith2, Paul I.W. de Bakker8, Christopher J. O'Donnell8, James F. Wilson9, Anthony G. Wilson10, Themistocles L. Assimes11, John-Olov Jansson5, Claes Ohlsson5, Åsa Tivesten5, Östen Ljunggren12, Muredach P. Reilly13, Anders Hamsten14, Erik Ingelsson14, François Cambien15, Joseph Hung, G. Neil Thomas16, Michael Boehnke17, Heribert Schunkert18, Folkert W. Asselbergs19, John J.P. Kastelein20, Vilmundur Gudnason21, Veikko Salomaa22, Tamara B. Harris23, Jaspal S. Kooner24, Kristine H. Allin25, Kristine H. Allin26, Børge G. Nordestgaard25, Jemma C. Hopewell27, Alison H. Goodall28, Paul M. Ridker8, Hilma Holm29, Hugh Watkins30, Willem H. Ouwehand1, Nilesh J. Samani28, Stephen Kaptoge1, Emanuele Di Angelantonio1, Olivier Harari, John Danesh1 
31 Mar 2012
TL;DR: In this article, a functional genetic variant known to affect IL6R signalling was studied to assess whether this pathway is causally relevant to coronary heart disease, and Asp358Ala was not associated with lipid concentrations, blood pressure, adiposity, dysglycaemia, or smoking.
Abstract: Background Persistent inflammation has been proposed to contribute to various stages in the pathogenesis of cardiovascular disease. Interleukin-6 receptor (IL6R) signalling propagates downstream inflammation cascades. To assess whether this pathway is causally relevant to coronary heart disease, we studied a functional genetic variant known to affect IL6R signalling. Methods In a collaborative meta-analysis, we studied Asp358Ala (rs2228145) in IL6R in relation to a panel of conventional risk factors and inflammation biomarkers in 125 222 participants. We also compared the frequency of Asp358Ala in 51 441 patients with coronary heart disease and in 136 226 controls. To gain insight into possible mechanisms, we assessed Asp358Ala in relation to localised gene expression and to postlipopolysaccharide stimulation of interleukin 6. Findings The minor allele frequency of Asp358Ala was 39%. Asp358Ala was not associated with lipid concentrations, blood pressure, adiposity, dysglycaemia, or smoking (p value for association per minor allele >= 0.04 for each). By contrast, for every copy of 358Ala inherited, mean concentration of IL6R increased by 34.3% (95% CI 30.4-38.2) and of interleukin 6 by 14.6% (10.7-18.4), and mean concentration of C-reactive protein was reduced by 7.5% (5.9-9.1) and of fibrinogen by 1.0% (0.7-1.3). For every copy of 358Ala inherited, risk of coronary heart disease was reduced by 3.4% (1.8-5.0). Asp358Ala was not related to IL6R mRNA levels or interleukin-6 production in monocytes. Interpretation Large-scale human genetic and biomarker data are consistent with a causal association between IL6R-related pathways and coronary heart disease.

628 citations


Journal ArticleDOI
TL;DR: The Metabochip and its component SNP sets are described and evaluated, its performance in capturing variation across the allele-frequency spectrum is evaluated, solutions to methodological challenges commonly encountered in its analysis are described, and its performance as a platform for genotype imputation is evaluated.
Abstract: 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.

516 citations


Journal ArticleDOI
TL;DR: Through a combination of analysis of in silico and experimentally contaminated samples, it is shown that the methods described can reliably detect and estimate levels of contamination as low as 1%.
Abstract: DNA sample contamination is a serious problem in DNA sequencing studies and may result in systematic genotype misclassification and false positive associations. Although methods exist to detect and filter out cross-species contamination, few methods to detect within-species sample contamination are available. In this paper, we describe methods to identify within-species DNA sample contamination based on (1) a combination of sequencing reads and array-based genotype data, (2) sequence reads alone, and (3) array-based genotype data alone. Analysis of sequencing reads allows contamination detection after sequence data is generated but prior to variant calling; analysis of array-based genotype data allows contamination detection prior to generation of costly sequence data. Through a combination of analysis of in silico and experimentally contaminated samples, we show that our methods can reliably detect and estimate levels of contamination as low as 1%. We evaluate the impact of DNA contamination on genotype accuracy and propose effective strategies to screen for and prevent DNA contamination in sequencing studies.

460 citations


Journal ArticleDOI
Zari Dastani1, Hivert M-F.2, Hivert M-F.3, N J Timpson4  +615 moreInstitutions (128)
TL;DR: A meta-analysis of genome-wide association studies in 39,883 individuals of European ancestry to identify genes associated with metabolic disease identifies novel genetic determinants of adiponectin levels, which, taken together, influence risk of T2D and markers of insulin resistance.
Abstract: Circulating levels of adiponectin, a hormone produced predominantly by adipocytes, are highly heritable and are inversely associated with type 2 diabetes mellitus (T2D) and other metabolic traits. We conducted a meta-analysis of genome-wide association studies in 39,883 individuals of European ancestry to identify genes associated with metabolic disease. We identified 8 novel loci associated with adiponectin levels and confirmed 2 previously reported loci (P = 4.5×10(-8)-1.2×10(-43)). Using a novel method to combine data across ethnicities (N = 4,232 African Americans, N = 1,776 Asians, and N = 29,347 Europeans), we identified two additional novel loci. Expression analyses of 436 human adipocyte samples revealed that mRNA levels of 18 genes at candidate regions were associated with adiponectin concentrations after accounting for multiple testing (p<3×10(-4)). We next developed a multi-SNP genotypic risk score to test the association of adiponectin decreasing risk alleles on metabolic traits and diseases using consortia-level meta-analytic data. This risk score was associated with increased risk of T2D (p = 4.3×10(-3), n = 22,044), increased triglycerides (p = 2.6×10(-14), n = 93,440), increased waist-to-hip ratio (p = 1.8×10(-5), n = 77,167), increased glucose two hours post oral glucose tolerance testing (p = 4.4×10(-3), n = 15,234), increased fasting insulin (p = 0.015, n = 48,238), but with lower in HDL-cholesterol concentrations (p = 4.5×10(-13), n = 96,748) and decreased BMI (p = 1.4×10(-4), n = 121,335). These findings identify novel genetic determinants of adiponectin levels, which, taken together, influence risk of T2D and markers of insulin resistance.

456 citations


Journal ArticleDOI
Jian Yang1, Jian Yang2, Ruth J. F. Loos3, Ruth J. F. Loos4  +195 moreInstitutions (63)
11 Oct 2012-Nature
TL;DR: The authors performed a meta-analysis of genome-wide association studies of phenotypic variation using ∼170,000 samples on height and body mass index (BMI) in human populations.
Abstract: There is evidence across several species for genetic control of phenotypic variation of complex traits, such that the variance among phenotypes is genotype dependent. Understanding genetic control of variability is important in evolutionary biology, agricultural selection programmes and human medicine, yet for complex traits, no individual genetic variants associated with variance, as opposed to the mean, have been identified. Here we perform a meta-analysis of genome-wide association studies of phenotypic variation using ∼170,000 samples on height and body mass index (BMI) in human populations. We report evidence that the single nucleotide polymorphism (SNP) rs7202116 at the FTO gene locus, which is known to be associated with obesity (as measured by mean BMI for each rs7202116 genotype), is also associated with phenotypic variability. We show that the results are not due to scale effects or other artefacts, and find no other experiment-wise significant evidence for effects on variability, either at loci other than FTO for BMI or at any locus for height. The difference in variance for BMI among individuals with opposite homozygous genotypes at the FTO locus is approximately 7%, corresponding to a difference of ∼0.5 kilograms in the standard deviation of weight. Our results indicate that genetic variants can be discovered that are associated with variability, and that between-person variability in obesity can partly be explained by the genotype at the FTO locus. The results are consistent with reported FTO by environment interactions for BMI, possibly mediated by DNA methylation. Our BMI results for other SNPs and our height results for all SNPs suggest that most genetic variants, including those that influence mean height or mean BMI, are not associated with phenotypic variance, or that their effects on variability are too small to detect even with samples sizes greater than 100,000.


Journal ArticleDOI
Richa Saxena1, Richa Saxena2, Clara C. Elbers3, Clara C. Elbers4  +160 moreInstitutions (54)
09 Mar 2012
TL;DR: Large-scale meta-analysis involving a dense gene-centric approach has uncovered additional loci and variants that contribute to type 2 diabetes risk and suggests substantial overlap of T2D association signals across multiple ethnic groups.
Abstract: To identify genetic factors contributing to type 2 diabetes (T2D), we performed large-scale meta-analyses by using a custom similar to 50,000 SNP genotyping array (the ITMAT-Broad-CARe array) with similar to 2000 candidate genes in 39 multiethnic population-based studies, case-control studies, and clinical trials totaling 17,418 cases and 70,298 controls. First, meta-analysis of 25 studies comprising 14,073 cases and 57,489 controls of European descent confirmed eight established T2D loci at genome-wide significance. In silico follow-up analysis of putative association signals found in independent genome-wide association studies (including 8,130 cases and 38,987 controls) performed by the DIAGRAM consortium identified a T2D locus at genome-wide significance (GATAD2A/CILP2/PBX4; p = 5.7 x 10(-9)) and two loci exceeding study-wide significance (SREBF1, and TH/INS; p < 2.4 x 10(-6)). Second, meta-analyses of 1,986 cases and 7,695 controls from eight African-American studies identified study-wide-significant (p = 2.4 x 10(-7)) variants in HMGA2 and replicated variants in TCF7L2 (p = 5.1 x 10(-15)). Third, conditional analysis revealed multiple known and novel independent signals within five T2D-associated genes in samples of European ancestry and within HMGA2 in African-American samples. Fourth, a multiethnic meta-analysis of all 39 studies identified T2D-associated variants in BCL2 (p = 2.1 x 10(-8)). Finally, a composite genetic score of SNPs from new and established T2D signals was significantly associated with increased risk of diabetes in African-American, Hispanic, and Asian populations. In summary, large-scale meta-analysis involving a dense gene-centric approach has uncovered additional loci and variants that contribute to T2D risk and suggests substantial overlap of T2D association signals across multiple ethnic groups.

Journal ArticleDOI
John R. B. Perry1, John R. B. Perry2, John R. B. Perry3, Benjamin F. Voight4, Loic Yengo5, Najaf Amin6, Josée Dupuis7, Josée Dupuis8, Martha Ganser9, Harald Grallert, Pau Navarro10, Man Li11, Lu Qi12, Valgerdur Steinthorsdottir13, Robert A. Scott14, Peter Almgren15, Dan E. Arking11, Yurii S. Aulchenko6, Beverley Balkau, Rafn Benediktsson, Richard N. Bergman16, Eric Boerwinkle17, Lori L. Bonnycastle7, Noël P. Burtt4, Harry Campbell10, Guillaume Charpentier, Francis S. Collins7, Christian Gieger, Todd Green4, Samy Hadjadj, Andrew T. Hattersley1, Christian Herder18, Albert Hofman6, Andrew D. Johnson7, Anna Köttgen11, Anna Köttgen19, Peter Kraft12, Yann Labrune5, Claudia Langenberg14, Alisa K. Manning8, Karen L. Mohlke20, Andrew P. Morris2, Ben A. Oostra6, James S. Pankow21, Ann-Kristin Petersen, Peter P. Pramstaller22, Inga Prokopenko2, Wolfgang Rathmann18, W Rayner2, Michael Roden18, Igor Rudan10, Denis Rybin8, Laura J. Scott9, Gunnar Sigurdsson, Robert Sladek23, Gudmar Thorleifsson13, Unnur Thorsteinsdottir24, Unnur Thorsteinsdottir13, Jaakko Tuomilehto, André G. Uitterlinden6, Sidonie Vivequin5, Michael N. Weedon1, Alan F. Wright10, Frank B. Hu12, Thomas Illig25, Linda Kao11, James B. Meigs12, James F. Wilson10, Kari Stefansson13, Kari Stefansson24, Cornelia M. van Duijn6, David Altschuler4, Andrew D. Morris26, Michael Boehnke9, Mark I. McCarthy2, Philippe Froguel5, Philippe Froguel27, Colin N. A. Palmer26, Nicholas J. Wareham14, Leif Groop15, Timothy M. Frayling1, Stéphane Cauchi5 
TL;DR: Evidence is provided that stratification of type 2 diabetes cases by BMI may help identify additional risk variants and that lean cases may have a stronger genetic predisposition to type 2abetes.
Abstract: Common diseases such as type 2 diabetes are phenotypically heterogeneous. Obesity is a major risk factor for type 2 diabetes, but patients vary appreciably in body mass index. We hypothesized that the genetic predisposition to the disease may be different in lean (BMI = 30 Kg/m(2)). We performed two case-control genome-wide studies using two accepted cut-offs for defining individuals as overweight or obese. We used 2,112 lean type 2 diabetes cases (BMI = 30 kg/m(2)), and 54,412 un-stratified controls. Replication was performed in 2,881 lean cases or 8,702 obese cases, and 18,957 un-stratified controls. To assess the effects of known signals, we tested the individual and combined effects of SNPs representing 36 type 2 diabetes loci. After combining data from discovery and replication datasets, we identified two signals not previously reported in Europeans. A variant (rs8090011) in the LAMA1 gene was associated with type 2 diabetes in lean cases (P = 8.4610 29, OR = 1.13 [95% CI 1.09-1.18]), and this association was stronger than that in obese cases (P = 0.04, OR = 1.03 [95% CI 1.00-1.06]). A variant in HMG20A-previously identified in South Asians but not Europeans-was associated with type 2 diabetes in obese cases (P = 1.3 x 10(-8), OR= 1.11 [95% CI 1.07-1.15]), although this association was not significantly stronger than that in lean cases (P = 0.02, OR = 1.09 [95% CI 1.02-1.17]). For 36 known type 2 diabetes loci, 29 had a larger odds ratio in the lean compared to obese (binomial P = 0.0002). In the lean analysis, we observed a weighted per-risk allele OR = 1.13 [95% CI 1.10-1.17], P = 3.2 x 10(-14). This was larger than the same model fitted in the obese analysis where the OR = 1.06 [95% CI 1.05-1.08], P = 2.2 x 10(-16). This study provides evidence that stratification of type 2 diabetes cases by BMI may help identify additional risk variants and that lean cases may have a stronger genetic predisposition to type 2 diabetes.

Journal ArticleDOI
01 Jul 2012-Diabetes
TL;DR: The levels of branched-chain, aromatic amino acids and alanine increased and the levels of glutamine and histidine decreased with increasing glycemia, reflecting, at least in part, insulin resistance.
Abstract: We investigated the association of glycemia and 43 genetic risk variants for hyperglycemia/type 2 diabetes with amino acid levels in the population-based Metabolic Syndrome in Men (METSIM) Study, including 9,369 nondiabetic or newly diagnosed type 2 diabetic Finnish men. Plasma levels of eight amino acids were measured with proton nuclear magnetic resonance spectroscopy. Increasing fasting and 2-h plasma glucose levels were associated with increasing levels of several amino acids and decreasing levels of histidine and glutamine. Alanine, leucine, isoleucine, tyrosine, and glutamine predicted incident type 2 diabetes in a 4.7-year follow-up of the METSIM Study, and their effects were largely mediated by insulin resistance (except for glutamine). We also found significant correlations between insulin sensitivity (Matsuda insulin sensitivity index) and mRNA expression of genes regulating amino acid degradation in 200 subcutaneous adipose tissue samples. Only 1 of 43 risk single nucleotide polymorphisms for type 2 diabetes or hyperglycemia, the glucose-increasing major C allele of rs780094 of GCKR, was significantly associated with decreased levels of alanine and isoleucine and elevated levels of glutamine. In conclusion, the levels of branched-chain, aromatic amino acids and alanine increased and the levels of glutamine and histidine decreased with increasing glycemia, reflecting, at least in part, insulin resistance. Only one single nucleotide polymorphism regulating hyperglycemia was significantly associated with amino acid levels.

Journal ArticleDOI
TL;DR: It is suggested that LMNA variants may play a role in human lifespan after adjustment for multiple testing in the initial and follow‐up samples and in a meta‐analysis combining all five samples.
Abstract: Summary A mutation in the LMNA gene is responsible for the most dramatic form of premature aging, Hutchinson–Gilford progeria syndrome (HGPS). Several recent studies have suggested that protein products of this gene might have a role in normal physiological cellular senescence. To explore further LMNA’s possible role in normal aging, we genotyped 16 SNPs over a span of 75.4 kb of the LMNA gene on a sample of long-lived individuals (LLI) (US Caucasians with age ‡ 95 years, N = 873) and genetically matched younger controls (N = 443). We tested all common nonredundant haplotypes (frequency ‡ 0.05) based on subgroups of these 16 SNPs for association with longevity. The most significant haplotype, based on four SNPs, remained significant after adjustment for multiple testing (OR = 1.56, P = 2.5 · 10 )5 , multiple-testing-adjusted P = 0.0045). To attempt to replicate these results, we genotyped 3448 subjects from four independent samples of LLI and control subjects from (i) the New England Centenarian Study (NECS) (N = 738), (ii) the Southern Italian Centenarian Study (SICS) (N = 905), (iii) France (N = 1103), and (iv) the Einstein Ashkenazi Longevity Study (N = 702). We replicated the association with the most significant haplotype from our initial analysis in the NECS sample (OR = 1.60, P = 0.0023), but not in the other three samples (P > 0.15). In a meta-analysis combining all five samples, the best haplotype remained significantly associated with longevity after adjustment for multiple testing in the initial and follow-up samples (OR = 1.18, P = 7.5 · 10 )4 , multiple-testing-adjusted P = 0.037). These results

Journal ArticleDOI
Vesna Boraska1, Ana Jerončić1, Vincenza Colonna2, Vincenza Colonna3, Lorraine Southam2, Dale R. Nyholt4, Nigel W. Rayner5, John R. B. Perry6, Daniela Toniolo7, Eva Albrecht, Wei Ang8, Stefania Bandinelli, Maja Barbalić9, Inês Barroso10, Jacques S. Beckmann11, Reiner Biffar12, Dorret I. Boomsma13, Harry Campbell14, Tanguy Corre7, Jeanette Erdmann15, Tõnu Esko16, Krista Fischer17, Nora Franceschini18, Timothy M. Frayling19, Giorgia Girotto20, Juan R. González, Tamara B. Harris21, Andrew C. Heath22, Iris M. Heid23, Wolfgang Hoffmann12, Albert Hofman, Momoko Horikoshi5, Jing Hua Zhao, Anne U. Jackson24, Jouke-Jan Hottenga13, Antti Jula25, Mika Kähönen, Kay-Tee Khaw10, Lambertus A. Kiemeney26, Norman Klopp, Zoltán Kutalik27, Vasiliki Lagou5, Lenore J. Launer21, Terho Lehtimäki28, Mathieu Lemire29, Marja-Liisa Lokki30, Christina Loley15, Jian'an Luan, Massimo Mangino6, Irene Mateo Leach31, Sarah E. Medland4, Evelin Mihailov17, Grant W. Montgomery4, Gerjan Navis31, John P. Newnham8, Markku S. Nieminen30, Aarno Palotie32, Kalliope Panoutsopoulou2, Annette Peters, Nicola Pirastu20, Ozren Polasek1, Karola Rehnström30, Samuli Ripatti30, Graham R. S. Ritchie2, Graham R. S. Ritchie33, Fernando Rivadeneira34, Antonietta Robino20, Nilesh J. Samani35, So-Youn Shin2, Juha Sinisalo30, Johannes H. Smit13, Nicole Soranzo6, Lisette Stolk34, Dorine W. Swinkels26, Toshiko Tanaka21, Alexander Teumer36, Anke Tönjes37, Michela Traglia7, Jaakko Tuomilehto, Armand Valsesia38, Wiek H. van Gilst31, Joyce B. J. van Meurs34, Albert V. Smith39, Jorma Viikari40, Jacqueline M. Vink13, Gérard Waeber11, Nicole M. Warrington8, Elisabeth Widen30, Gonneke Willemsen13, Alan F. Wright14, Brent W. Zanke41, Lina Zgaga42, Michael Boehnke24, Adamo Pio D'Adamo20, Eco J. C. de Geus13, Ellen W. Demerath43, Martin den Heijer26, Johan G. Eriksson, Luigi Ferrucci21, Christian Gieger, Vilmundur Gudnason39, Caroline Hayward14, Christian Hengstenberg, Thomas J. Hudson44, Marjo-Riitta Järvelin, Manolis Kogevinas, Ruth J. F. Loos, Nicholas G. Martin4, Andres Metspalu16, Craig E. Pennell8, Brenda W.J.H. Penninx45, Markus Perola30, Markus Perola21, Olli T. Raitakari40, Veikko Salomaa25, Stefan Schreiber46, Heribert Schunkert15, Tim D. Spector6, Michael Stumvoll37, André G. Uitterlinden34, Sheila Ulivi, Pim van der Harst31, Peter Vollenweider11, Henry Völzke12, Nicholas J. Wareham, H.-Erich Wichmann47, James F. Wilson14, Igor Rudan14, Yali Xue2, Eleftheria Zeggini2 
TL;DR: This large-scale investigation across ∼115 000 individuals shows no detectable contribution from common genetic variants to the observed skew in the sex ratio, and does not detect any genome-wide significant common SNP differences between men and women in this well-powered meta-analysis.
Abstract: The male-to-female sex ratio at birth is constant across world populations with an average of 1.06 (106 male to 100 female live births) for populations of European descent. The sex ratio is considered to be affected by numerous biological and environmental factors and to have a heritable component. The aim of this study was to investigate the presence of common allele modest effects at autosomal and chromosome X variants that could explain the observed sex ratio at birth. We conducted a large-scale genome-wide association scan (GWAS) meta-analysis across 51 studies, comprising overall 114 863 individuals (61 094 women and 53 769 men) of European ancestry and 2 623 828 common (minor allele frequency >0.05) single-nucleotide polymorphisms (SNPs). Allele frequencies were compared between men and women for directly-typed and imputed variants within each study. Forward-time simulations for unlinked, neutral, autosomal, common loci were performed under the demographic model for European populations with a fixed sex ratio and a random mating scheme to assess the probability of detecting significant allele frequency differences. We do not detect any genome-wide significant (P < 5 × 10(-8)) common SNP differences between men and women in this well-powered meta-analysis. The simulated data provided results entirely consistent with these findings. This large-scale investigation across ~115 000 individuals shows no detectable contribution from common genetic variants to the observed skew in the sex ratio. The absence of sex-specific differences is useful in guiding genetic association study design, for example when using mixed controls for sex-biased traits.

Journal ArticleDOI
Robert A. Scott1, Audrey Y. Chu2, Audrey Y. Chu3, Niels Grarup4, Niels Grarup5, Alisa K. Manning6, Marie-France Hivert7, Dmitry Shungin8, Dmitry Shungin9, Anke Tönjes10, Ajay Yesupriya11, Daniel R. Barnes, Nabila Bouatia-Naji12, Nabila Bouatia-Naji13, Nicole L. Glazer6, Anne U. Jackson14, Zoltán Kutalik15, Zoltán Kutalik16, Vasiliki Lagou17, Diana Marek16, Diana Marek15, Laura J. Rasmussen-Torvik18, Heather M. Stringham14, Toshiko Tanaka19, Mette Aadahl4, Dan E. Arking2, Sven Bergmann16, Sven Bergmann15, Eric Boerwinkle20, Lori L. Bonnycastle19, Stefan R. Bornstein21, Eric J. Brunner22, Suzannah Bumpstead23, Soren Brage, Olga D. Carlson19, Han Chen6, Yii-Der Ida Chen24, Peter S. Chines19, Francis S. Collins19, David Couper25, Elaine M. Dennison26, Nicole F. Dowling11, Josephine S. Egan19, Ulf Ekelund, Michael R. Erdos19, Nita G. Forouhi, Caroline S. Fox3, Caroline S. Fox19, Mark O. Goodarzi24, Jürgen Grässler21, Stefan Gustafsson27, Göran Hallmans9, Torben Hansen4, Torben Hansen28, Torben Hansen5, Aroon D. Hingorani22, John W. Holloway26, Frank B. Hu3, Bo Isomaa, Karen A. Jameson26, Ingegerd Johansson9, Anna Jonsson8, Torben Jørgensen4, Mika Kivimäki22, Peter Kovacs10, Meena Kumari22, Johanna Kuusisto29, Markku Laakso29, Cécile Lecoeur12, Cécile Lecoeur13, Claire Levy-Marchal12, Guo Li30, Ruth J. F. Loos, Valeri Lyssenko8, Michael Marmot22, Pedro Marques-Vidal15, Mario A. Morken19, Gabriele Müller21, Kari E. North25, James S. Pankow31, Felicity Payne23, Inga Prokopenko17, Bruce M. Psaty30, Bruce M. Psaty32, Frida Renström3, Frida Renström8, Kenneth Rice30, Jerome I. Rotter24, Denis Rybin6, Camilla H. Sandholt4, Camilla H. Sandholt5, Avan Aihie Sayer26, Peter Shrader3, Peter Schwarz21, David S. Siscovick30, Alena Stančáková29, Michael Stumvoll10, Tanya M. Teslovich14, Gerard Waeber15, Gordon H. Williams3, Daniel R. Witte5, Andrew R. Wood, Weijia Xie, Michael Boehnke14, Cyrus Cooper17, Luigi Ferrucci19, Philippe Froguel33, Leif Groop8, W. H. Linda Kao2, Peter Vollenweider15, Mark Walker34, Richard M. Watanabe35, Oluf Pedersen36, James B. Meigs3, Erik Ingelsson27, Inês Barroso37, Inês Barroso23, Jose C. Florez3, Jose C. Florez38, Paul W. Franks3, Paul W. Franks9, Paul W. Franks8, Josée Dupuis19, Josée Dupuis6, Nicholas J. Wareham, Claudia Langenberg 
01 May 2012-Diabetes
TL;DR: In this large study of gene–lifestyle interaction, no interactions between genetic and lifestyle factors are observed, and top loci from genome-wide association studies will not make the best candidates for the study of interactions.
Abstract: Gene-lifestyle interactions have been suggested to contribute to the development of type 2 diabetes. Glucose levels 2 h after a standard 75-g glucose challenge are used to diagnose diabetes and are associated with both genetic and lifestyle factors. However, whether these factors interact to determine 2-h glucose levels is unknown. We meta-analyzed single nucleotide polymorphism (SNP) × BMI and SNP × physical activity (PA) interaction regression models for five SNPs previously associated with 2-h glucose levels from up to 22 studies comprising 54,884 individuals without diabetes. PA levels were dichotomized, with individuals below the first quintile classified as inactive (20%) and the remainder as active (80%). BMI was considered a continuous trait. Inactive individuals had higher 2-h glucose levels than active individuals (β = 0.22 mmol/L [95% CI 0.13-0.31], P = 1.63 × 10(-6)). All SNPs were associated with 2-h glucose (β = 0.06-0.12 mmol/allele, P ≤ 1.53 × 10(-7)), but no significant interactions were found with PA (P > 0.18) or BMI (P ≥ 0.04). In this large study of gene-lifestyle interaction, we observed no interactions between genetic and lifestyle factors, both of which were associated with 2-h glucose. It is perhaps unlikely that top loci from genome-wide association studies will exhibit strong subgroup-specific effects, and may not, therefore, make the best candidates for the study of interactions.

Vesna Boraska, Ana Jerončić, Vincenza Colonna, Lorraine Southam, Dale R. Nyholt, N W Rayner, John R. B. Perry, Daniela Toniolo, Eva Albrecht, Wei Ang, Stefania Bandinelli, Maja Barbalić, Inês Barroso, Jacques S. Beckmann, Reiner Biffar, Dorret I. Boomsma, Harry Campbell, Tanguy Corre, Jeanette Erdmann, Tõnu Esko, Krista Fischer, Nora Franceschini, Timothy M. Frayling, Giorgia Girotto, Juan R. González, Tamara B. Harris, A. C. Heath, I. M. Heid, W. Hoffmann, Albert Hofman, Momoko Horikoshi, Jing Hua Zhao, Anne U. Jackson, Jouke-Jan Hottenga, A. Jula, Mika Kähönen, Kay-Tee Khaw, Lambertus A. Kiemeney, N Klopp, Zoltán Kutalik, Vasiliki Lagou, Lenore J. Launer, Terho Lehtimäki, Mathieu Lemire, M. L. Lokki, Christina Loley, Jian'an Luan, Massimo Mangino, I. Mateo Leach, S. E. Medland, Evelin Mihailov, Grant W. Montgomery, Gerjan Navis, John P. Newnham, Nieminen, Aarno Palotie, Kalliope Panoutsopoulou, Annette Peters, Nicola Pirastu, Ozren Polasek, Karola Rehnström, Samuli Ripatti, Graham R S Ritchie, Fernando Rivadeneira, Antonietta Robino, Nilesh J. Samani, So-Youn Shin, Juha Sinisalo, J.H. Smit, Nicole Soranzo, Lisette Stolk, Dorine W. Swinkels, Toshiko Tanaka, Alexander Teumer, A Tönjes, Michela Traglia, Jaakko Tuomilehto, Armand Valsesia, W. H. Van Gilst, J.B. van Meurs, Albert V. Smith, Jorma Viikari, J.M. Vink, G. Waeber, Nicole M. Warrington, E. Widen, Gonneke Willemsen, A. F. Wright, Brent W. Zanke, Lina Zgaga, Michael Boehnke, Adamo Pio d'Adamo, E.J.C. de Geus, W. Demerath, M. den Heijer, Johan G. Eriksson, Luigi Ferrucci, Christian Gieger, Vilmundur Gudnason, Caroline Hayward, Christian Hengstenberg, Thomas J. Hudson, Marjo-Riitta Järvelin, Manolis Kogevinas, Ruth J. F. Loos, Nicholas G. Martin, Andres Metspalu, Craig E. Pennell, B.W.J.H. Penninx, Marcus Perola, Olli T. Raitakari, Veikko Salomaa, Stefan Schreiber, Heribert Schunkert, Tim D. Spector, Michael Stumvoll, André G. Uitterlinden, S. Ulivi, P. van der Harst, Peter Vollenweider, Henry Völzke, Nicholas J. Wareham, H. E. Wichmann, James F. Wilson, Igor Rudan, Yali Xue, Eleftheria Zeggini 
01 Jan 2012
TL;DR: This paper conducted a large-scale genome-wide association scan (GWAS) meta-analysis across 51 studies, comprising overall 114 863 individuals (61 094 women and 53 769 men) of European ancestry and 2 623 828 common (minor allele frequency > 0.05) single-nucleotide polymorphisms (SNPs).
Abstract: The male-to-female sex ratio at birth is constant across world populations with an average of 1.06 (106 male to 100 female live births) for populations of European descent. The sex ratio is considered to be affected by numerous biological and environmental factors and to have a heritable component. The aim of this study was to investigate the presence of common allele modest effects at autosomal and chromosome X variants that could explain the observed sex ratio at birth. We conducted a large-scale genome-wide association scan (GWAS) meta-analysis across 51 studies, comprising overall 114 863 individuals (61 094 women and 53 769 men) of European ancestry and 2 623 828 common (minor allele frequency >0.05) single-nucleotide polymorphisms (SNPs). Allele frequencies were compared between men and women for directly-typed and imputed variants within each study. Forward-time simulations for unlinked, neutral, autosomal, common loci were performed under the demographic model for European populations with a fixed sex ratio and a random mating scheme to assess the probability of detecting significant allele frequency differences. We do not detect any genome-wide significant (P < 5 x 10(-8)) common SNP differences between men and women in this well-powered meta-analysis. The simulated data provided results entirely consistent with these findings. This large-scale investigation across ~115 000 individuals shows no detectable contribution from common genetic variants to the observed skew in the sex ratio. The absence of sex-specific differences is useful in guiding genetic association study design, for example when using mixed controls for sex-biased traits.

Jian Yang1, Jian Yang2, Ruth J. F. Loos3, Ruth J. F. Loos4  +195 moreInstitutions (63)
01 Jan 2012
TL;DR: A meta-analysis of genome-wide association studies of phenotypic variation using ∼170,000 samples on height and body mass index (BMI) in human populations indicates that genetic variants can be discovered that are associated with variability, and that between-person variability in obesity can partly be explained by the genotype at the FTO locus.
Abstract: There is evidence across several species for genetic control of phenotypic variation of complex traits1, 2, 3, 4, such that the variance among phenotypes is genotype dependent. Understanding genetic control of variability is important in evolutionary biology, agricultural selection programmes and human medicine, yet for complex traits, no individual genetic variants associated with variance, as opposed to the mean, have been identified. Here we perform a meta-analysis of genome-wide association studies of phenotypic variation using ~170,000 samples on height and body mass index (BMI) in human populations. We report evidence that the single nucleotide polymorphism (SNP) rs7202116 at the FTO gene locus, which is known to be associated with obesity (as measured by mean BMI for each rs7202116 genotype)5, 6, 7, is also associated with phenotypic variability. We show that the results are not due to scale effects or other artefacts, and find no other experiment-wise significant evidence for effects on variability, either at loci other than FTO for BMI or at any locus for height. The difference in variance for BMI among individuals with opposite homozygous genotypes at the FTO locus is approximately 7%, corresponding to a difference of ~0.5 kilograms in the standard deviation of weight. Our results indicate that genetic variants can be discovered that are associated with variability, and that between-person variability in obesity can partly be explained by the genotype at the FTO locus. The results are consistent with reported FTO by environment interactions for BMI8, possibly mediated by DNA methylation9, 10. Our BMI results for other SNPs and our height results for all SNPs suggest that most genetic variants, including those that influence mean height or mean BMI, are not associated with phenotypic variance, or that their effects on variability are too small to detect even with samples sizes greater than 100,000.

Journal ArticleDOI
TL;DR: This novel model of lactate kinetics extends the utility of the FSIGT protocol beyond whole-body glucose homeostasis by providing estimates for indices pertaining to hepatic glucose metabolism, including hepatic GCK activity and glycolysis rate.
Abstract: OBJECTIVE Glucokinase (GCK) acts as a component of the “glucose sensor” in pancreatic β-cells and possibly in other tissues, including the brain. However, >99% of GCK in the body is located in the liver, where it serves as a “gatekeeper”, determining the rate of hepatic glucose phosphorylation. Mutations in GCK are a cause of maturity-onset diabetes of the young (MODY), and GCKR , the regulator of GCK in the liver, is a diabetes susceptibility locus. In addition, several GCK activators are being studied as potential regulators of blood glucose. The ability to estimate liver GCK activity in vivo for genetic and pharmacologic studies may provide important physiologic insights into the regulation of hepatic glucose metabolism. RESEARCH DESIGN AND METHODS Here we introduce a simple, linear, two-compartment kinetic model that exploits lactate and glucose kinetics observed during the frequently sampled intravenous glucose tolerance test (FSIGT) to estimate liver GCK activity (K GK ), glycolysis (K 12 ), and whole body fractional lactate clearance (K 01 ). RESULTS To test our working model of lactate, we used cross-sectional FSIGT data on 142 nondiabetic individuals chosen at random from the Finland–United States Investigation of NIDDM Genetics study cohort. Parameters K GK , K 12 , and K 01 were precisely estimated. Median model parameter estimates were consistent with previously published values. CONCLUSIONS This novel model of lactate kinetics extends the utility of the FSIGT protocol beyond whole-body glucose homeostasis by providing estimates for indices pertaining to hepatic glucose metabolism, including hepatic GCK activity and glycolysis rate.

Journal ArticleDOI
TL;DR: FTEC as discussed by the authors is an easy-to-use coalescent simulation program capable of simulating haplotype samples drawn from a population that has undergone faster than exponential growth and showed an excess of very rare variation and more rapid LD decay.
Abstract: Summary: Recent genetic studies as well as recorded history point to massive growth in human population sizes during the recent past. To model and understand this growth accurately we introduce FTEC, an easy-to-use coalescent simulation program capable of simulating haplotype samples drawn from a population that has undergone faster than exponential growth. Samples drawn from a population that has undergone faster than exponential growth show an excess of very rare variation and more rapid LD decay when compared with samples drawn from a population that has maintained a constant

Journal ArticleDOI
TL;DR: It is found that significant evidence for case‐control association combined with no or moderate evidence for affected sibling pair linkage can define a lower bound for the plausible causal risk allele frequency (RAFC).
Abstract: When planning resequencing studies for complex diseases, previous association and linkage studies can constrain the range of plausible genetic models for a given locus. Here, we explore the combinations of causal risk allele frequency (RAFC) and genotype relative risk (GRRC) consistent with no or limited evidence for affected sibling pair (ASP) linkage and strong evidence for case-control association. We find that significant evidence for case-control association combined with no or moderate evidence for ASP linkage can define a lower bound for the plausible RAFC. Using data from large type 2 diabetes (T2D) linkage and genome-wide association study meta-analyses, we find that under reasonable model assumptions, 23 of 36 autosomal T2D risk loci are unlikely to be due to causal variants with combined RAFC < 0.005, and four of the 23 are unlikely to be due to causal variants with combined RAFC < 0.05. Genet. Epidemiol. 00:1‐9, 2012. C � 2012 Wiley Periodicals, Inc.


01 Jan 2012
TL;DR: A meta-analysis of genetic variants on the Metabochip, including 34,840 cases and 114,981 controls, finds a long tail of additional common variant loci explaining much of the variation in susceptibility to type 2 diabetes.