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Hirschhorn, Joel

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Hirschhorn

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Joel

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Hirschhorn, Joel

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Now showing 1 - 10 of 47
  • Publication

    The Association of a SNP Upstream of INSIG2 with Body Mass Index is Reproduced in Several but Not All Cohorts

    (Public Library of Science, 2007) Emilsson, Valur; Hinney, Anke; Heid, Iris M; Zhu, Xiaofeng; Thorleifsson, Gudmar; Gunnarsdottir, Steinunn; Walters, G. Bragi; Thorsteinsdottir, Unnur; Kong, Augustine; Gulcher, Jeffrey; Nguyen, Thuy Trang; Scherag, André; Pfeufer, Arne; Meitinger, Thomas; Brönner, Günter; Rief, Winfried; Soto-Quiros, Manuel E; Avila, Lydiana; Groop, Leif; Tuomi, Tiinamaija; Isomaa, Bo; Bengtsson, Kristina; Butler, Johannah L; Vollmert, Caren; Celedón, Juan C; Wichmann, H. Erich; Hebebrand, Johannes; Stefansson, Kari; Abecasis, Gonçalo; Lyon, Helen N.; Lasky-Su, Jessica; Klanderman, Barbara; Raby, Benjamin; Silverman, Edwin; Weiss, Scott; Laird, Nan; Ding, Xiao; Cooper, Richard S; Fox, Caroline; O'Donnell, Christopher; Lange, Christoph; Hirschhorn, Joel

    A SNP upstream of the INSIG2 gene, rs7566605, was recently found to be associated with obesity as measured by body mass index (BMI) by Herbert and colleagues. The association between increased BMI and homozygosity for the minor allele was first observed in data from a genome-wide association scan of 86,604 SNPs in 923 related individuals from the Framingham Heart Study offspring cohort. The association was reproduced in four additional cohorts, but was not seen in a fifth cohort. To further assess the general reproducibility of this association, we genotyped rs7566605 in nine large cohorts from eight populations across multiple ethnicities (total n = 16,969). We tested this variant for association with BMI in each sample under a recessive model using family-based, population-based, and case-control designs. We observed a significant (p < 0.05) association in five cohorts but saw no association in three other cohorts. There was variability in the strength of association evidence across examination cycles in longitudinal data from unrelated individuals in the Framingham Heart Study Offspring cohort. A combined analysis revealed significant independent validation of this association in both unrelated (p = 0.046) and family-based (p = 0.004) samples. The estimated risk conferred by this allele is small, and could easily be masked by small sample size, population stratification, or other confounders. These validation studies suggest that the original association is less likely to be spurious, but the failure to observe an association in every data set suggests that the effect of SNP rs7566605 on BMI may be heterogeneous across population samples.

  • Publication

    Genome-Wide Association Analysis Identifies Variants Associated with Nonalcoholic Fatty Liver Disease That Have Distinct Effects on Metabolic Traits

    (Public Library of Science, 2011) Speliotes, Elizabeth K.; Yerges-Armstrong, Laura M.; Hernaez, Ruben; Gudnason, Vilmundur; Eiriksdottir, Gudny; Garcia, Melissa E.; Launer, Lenore J.; Nalls, Michael A.; Clark, Jeanne M.; Mitchell, Braxton D.; Shuldiner, Alan R.; Butler, Johannah L.; Tomas, Marta; Hwang, Shih-Jen; Massaro, Joseph M.; Salomaa, Veikko; Schadt, Eric E.; Schwartz, Stephen M.; Siscovick, David S.; Voight, Benjamin F.; Feitosa, Mary F.; Harris, Tamara B.; Smith, Albert V.; Borecki, Ingrid B.; Wu, Jun; Kim, Lauren J.; Palmer, Cameron D.; Hoffmann, Udo; Sahani, Dushyant; Carr, J. Jeffrey; Fox, Caroline; Kao, W. H. Linda; Hirschhorn, Joel; O'Donnell, Christopher; NASH CRN; GIANT Consortium; MAGIC Investigators

    Nonalcoholic fatty liver disease (NAFLD) clusters in families, but the only known common genetic variants influencing risk are near PNPLA3. We sought to identify additional genetic variants influencing NAFLD using genome-wide association (GWA) analysis of computed tomography (CT) measured hepatic steatosis, a non-invasive measure of NAFLD, in large population based samples. Using variance components methods, we show that CT hepatic steatosis is heritable (~26%–27%) in family-based Amish, Family Heart, and Framingham Heart Studies (n = 880 to 3,070). By carrying out a fixed-effects meta-analysis of genome-wide association (GWA) results between CT hepatic steatosis and ~2.4 million imputed or genotyped SNPs in 7,176 individuals from the Old Order Amish, Age, Gene/Environment Susceptibility-Reykjavik study (AGES), Family Heart, and Framingham Heart Studies, we identify variants associated at genome-wide significant levels (p<5×10−8) in or near PNPLA3, NCAN, and PPP1R3B. We genotype these and 42 other top CT hepatic steatosis-associated SNPs in 592 subjects with biopsy-proven NAFLD from the NASH Clinical Research Network (NASH CRN). In comparisons with 1,405 healthy controls from the Myocardial Genetics Consortium (MIGen), we observe significant associations with histologic NAFLD at variants in or near NCAN, GCKR, LYPLAL1, and PNPLA3, but not PPP1R3B. Variants at these five loci exhibit distinct patterns of association with serum lipids, as well as glycemic and anthropometric traits. We identify common genetic variants influencing CT–assessed steatosis and risk of NAFLD. Hepatic steatosis associated variants are not uniformly associated with NASH/fibrosis or result in abnormalities in serum lipids or glycemic and anthropometric traits, suggesting genetic heterogeneity in the pathways influencing these traits.

  • Publication

    Concept, Design and Implementation of a Cardiovascular Gene-centric 50 K SNP Array for Large-scale Genomic Association Studies

    (Public Library of Science, 2008) Keating, Brendan J.; Tischfield, Sam; Murray, Sarah S.; Bhangale, Tushar; Price, Thomas S.; Glessner, Joseph T.; Galver, Luana; Barrett, Jeffrey C.; Grant, Struan F. A.; Farlow, Deborah N.; Chandrupatla, Hareesh R.; Ajmal, Saad; Papanicolaou, George J.; Guo, Yiran; Li, Mingyao; DerOhannessian, Stephanie; Bailey, Swneke D.; Montpetit, Alexandre; Edmondson, Andrew C.; Taylor, Kent; Gai, Xiaowu; Wang, Susanna S.; Fornage, Myriam; Shaikh, Tamim; Groop, Leif; Boehnke, Michael; Hall, Alistair S.; Hattersley, Andrew T.; Frackelton, Edward; Patterson, Nick; Chiang, Charleston W. K.; Kim, Cecelia E.; Fabsitz, Richard R.; Ouwehand, Willem; Munroe, Patricia; Caulfield, Mark; Drake, Thomas; Boerwinkle, Eric; Whitehead, A. Stephen; Cappola, Thomas P.; Samani, Nilesh J.; Lusis, A. Jake; Schadt, Eric; Wilson, James G.; Koenig, Wolfgang; McCarthy, Mark I.; Kathiresan, Sekar; Gabriel, Stacey B.; Hakonarson, Hakon; Anand, Sonia S.; Reilly, Muredach; Engert, James C.; Nickerson, Deborah A.; Rader, Daniel J.; FitzGerald, Garret A.; Reitsma, Pieter H.; Hansen, Mark; de Bakker, Paul; Price, Alkes; Reich, David; Hirschhorn, Joel

    A wealth of genetic associations for cardiovascular and metabolic phenotypes in humans has been accumulating over the last decade, in particular a large number of loci derived from recent genome wide association studies (GWAS). True complex disease-associated loci often exert modest effects, so their delineation currently requires integration of diverse phenotypic data from large studies to ensure robust meta-analyses. We have designed a gene-centric 50 K single nucleotide polymorphism (SNP) array to assess potentially relevant loci across a range of cardiovascular, metabolic and inflammatory syndromes. The array utilizes a “cosmopolitan” tagging approach to capture the genetic diversity across ∼2,000 loci in populations represented in the HapMap and SeattleSNPs projects. The array content is informed by GWAS of vascular and inflammatory disease, expression quantitative trait loci implicated in atherosclerosis, pathway based approaches and comprehensive literature searching. The custom flexibility of the array platform facilitated interrogation of loci at differing stringencies, according to a gene prioritization strategy that allows saturation of high priority loci with a greater density of markers than the existing GWAS tools, particularly in African HapMap samples. We also demonstrate that the IBC array can be used to complement GWAS, increasing coverage in high priority CVD-related loci across all major HapMap populations. DNA from over 200,000 extensively phenotyped individuals will be genotyped with this array with a significant portion of the generated data being released into the academic domain facilitating in silico replication attempts, analyses of rare variants and cross-cohort meta-analyses in diverse populations. These datasets will also facilitate more robust secondary analyses, such as explorations with alternative genetic models, epistasis and gene-environment interactions.

  • Publication

    A Comprehensive Analysis of Common Genetic Variation in Prolactin (PRL) and PRL receptor (PRLR) Genes in Relation to Plasma Prolactin Levels and Breast Cancer Risk: the Multiethnic Cohort

    (BioMed Central, 2007) Lee, Sulggi A; Haiman, Christopher A; Burtt, Noel P; Pooler, Loreall C; Cheng, Iona; Kolonel, Laurence N; Pike, Malcolm C; Henderson, Brian E; Stram, Daniel O; Altshuler, David; Hirschhorn, Joel

    Background: Studies in animals and humans clearly indicate a role for prolactin (PRL) in breast epithelial proliferation, differentiation, and tumorigenesis. Prospective epidemiological studies have also shown that women with higher circulating PRL levels have an increase in risk of breast cancer, suggesting that variability in PRL may also be important in determining a woman's risk. Methods: We evaluated genetic variation in the PRL and PRL receptor (PRLR) genes as predictors of plasma PRL levels and breast cancer risk among African-American, Native Hawaiian, Japanese-American, Latina, and White women in the Multiethnic Cohort Study (MEC). We selected single nucleotide polymorphisms (SNPs) from both the public (dbSNP) and private (Celera) databases to construct high density SNP maps that included up to 20 kilobases (kb) upstream of the transcription initiation site and 10 kb downstream of the last exon of each gene, for a total coverage of 59 kb in PRL and 210 kb in PRLR. We genotyped 80 SNPs in PRL and 173 SNPs in PRLR in a multiethnic panel of 349 unaffected subjects to characterize linkage disequilibrium (LD) and haplotype patterns. We sequenced the coding regions of PRL and PRLR in 95 advanced breast cancer cases (19 of each racial/ethnic group) to uncover putative functional variation. A total of 33 and 60 haplotype "tag" SNPs (tagSNPs) that allowed for high predictability (Rh2 ≥ 0.70) of the common haplotypes in PRL and PRLR, respectively, were then genotyped in a multiethnic breast cancer case-control study of 1,615 invasive breast cancer cases and 1,962 controls in the MEC. We also assessed the association of common genetic variation with circulating PRL levels in 362 postmenopausal controls without a history of hormone therapy use at blood draw. Because of the large number of comparisons being performed we used a relatively stringent type I error criteria (p < 0.0005) for evaluating the significance of any single association to correct for performing approximately 100 independent tests, close to the number of tagSNPs genotyped for both genes.Results We observed no significant associations between PRL and PRLR haplotypes or individual SNPs in relation to breast cancer risk. A nominally significant association was noted between prolactin levels and a tagSNP (tagSNP 44, rs2244502) in intron 1 of PRL. This SNP showed approximately a 50% increase in levels between minor allele homozygotes vs. major allele homozygotes. However, this association was not significant (p = 0.002) using our type I error criteria to correct for multiple testing, nor was this SNP associated with breast cancer risk (p = 0.58). Conclusion: In this comprehensive analysis covering 59 kb of the PRL locus and 210 kb of the PRLR locus, we found no significant association between common variation in these candidate genes and breast cancer risk or plasma PRL levels. The LD characterization of PRL and PRLR in this multiethnic population provide a framework for studying these genes in relation to other disease outcomes that have been associated with PRL, as well as for larger studies of plasma PRL levels.

  • Publication

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

    (Public Library of Science, 2012) Voight, Benjamin F.; Ding, Jun; Sidore, Carlo; Chines, Peter S.; Burtt, Noël P.; Fuchsberger, Christian; Li, Yanming; Erdmann, Jeanette; Frayling, Timothy M.; Heid, Iris M.; Jackson, Anne U.; Johnson, Toby; Kilpeläinen, Tuomas O.; Lindgren, Cecilia M.; Morris, Andrew P.; Prokopenko, Inga; Randall, Joshua C.; Soranzo, Nicole; Speliotes, Elizabeth K.; Teslovich, Tanya M.; Wheeler, Eleanor; Maguire, Jared; Potter, Simon; Rayner, N. William; Robertson, Neil; Stirrups, Kathleen; Winckler, Wendy; Sanna, Serena; Mulas, Antonella; Nagaraja, Ramaiah; Cucca, Francesco; Barroso, Inês; Deloukas, Panos; Loos, Ruth J. F.; Kathiresan, Sekar; Munroe, Patricia B.; Pfeufer, Arne; Samani, Nilesh J.; Schunkert, Heribert; McCarthy, Mark I.; Abecasis, Gonçalo R.; Boehnke, Michael; Kang, Hyun Min; Palmer, Cameron Douglas; Saxena, Richa; Parkin, Melissa; Newton-Cheh, Christopher; Hirschhorn, Joel; Altshuler, David

    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.

  • Publication

    New Susceptibility Loci Associated with Kidney Disease in Type 1 Diabetes

    (Public Library of Science, 2012) Sandholm, Niina; Salem, Rany M; McKnight, Amy Jayne; Brennan, Eoin P.; Forsblom, Carol; Isakova, Tamara; McKay, Gareth J.; Williams, Winfred; Sadlier, Denise M.; Mäkinen, Ville-Petteri; Swan, Elizabeth J.; Palmer, Cameron Douglas; Boright, Andrew P.; Ahlqvist, Emma; Deshmukh, Harshal A.; Keller, Benjamin J.; Huang, Huateng; Ahola, Aila J.; Fagerholm, Emma; Gordin, Daniel; Harjutsalo, Valma; He, Bing; Heikkilä, Outi; Hietala, Kustaa; Kytö, Janne; Lahermo, Päivi; Lehto, Markku; Lithovius, Raija; Österholm, Anne-May; Parkkonen, Maija; Pitkäniemi, Janne; Rosengård-Bärlund, Milla; Saraheimo, Markku; Sarti, Cinzia; Söderlund, Jenny; Soro-Paavonen, Aino; Syreeni, Anna; Thorn, Lena M.; Tikkanen, Heikki; Tolonen, Nina; Tryggvason, Karl; Tuomilehto, Jaakko; Wadén, Johan; Gill, Geoffrey V.; Prior, Sarah Virginie; Guiducci, Candace; Mirel, Daniel B.; Taylor, Andrew; Hosseini, S. Mohsen; Parving, Hans-Henrik; Rossing, Peter; Tarnow, Lise; Ladenvall, Claes; Alhenc-Gelas, François; Lefebvre, Pierre; Rigalleau, Vincent; Roussel, Ronan; Tregouet, David-Alexandre; Maestroni, Anna; Maestroni, Silvia; Falhammar, Henrik; Gu, Tianwei; Möllsten, Anna; Cimponeriu, Danut; Ioana, Mihai; Mota, Maria; Mota, Eugen; Serafinceanu, Cristian; Stavarachi, Monica; Hanson, Robert L.; Nelson, Robert G.; Kretzler, Matthias; Colhoun, Helen M.; Panduru, Nicolae Mircea; Gu, Harvest F.; Brismar, Kerstin; Zerbini, Gianpaolo; Hadjadj, Samy; Marre, Michel; Groop, Leif; Lajer, Maria; Bull, Shelley B.; Waggott, Daryl; Paterson, Andrew D.; Savage, David A.; Bain, Stephen C.; Martin, Finian; Hirschhorn, Joel; Godson, Catherine; Florez, Jose; Groop, Per-Henrik; Maxwell, Alexander P.

    Diabetic kidney disease, or diabetic nephropathy (DN), is a major complication of diabetes and the leading cause of end-stage renal disease (ESRD) that requires dialysis treatment or kidney transplantation. In addition to the decrease in the quality of life, DN accounts for a large proportion of the excess mortality associated with type 1 diabetes (T1D). Whereas the degree of glycemia plays a pivotal role in DN, a subset of individuals with poorly controlled T1D do not develop DN. Furthermore, strong familial aggregation supports genetic susceptibility to DN. However, the genes and the molecular mechanisms behind the disease remain poorly understood, and current therapeutic strategies rarely result in reversal of DN. In the GEnetics of Nephropathy: an International Effort (GENIE) consortium, we have undertaken a meta-analysis of genome-wide association studies (GWAS) of T1D DN comprising ∼2.4 million single nucleotide polymorphisms (SNPs) imputed in 6,691 individuals. After additional genotyping of 41 top ranked SNPs representing 24 independent signals in 5,873 individuals, combined meta-analysis revealed association of two SNPs with ESRD: rs7583877 in the AFF3 gene (P = 1.2×(10^{−8})) and an intergenic SNP on chromosome 15q26 between the genes RGMA and MCTP2, rs12437854 (P = 2.0×(10^{−9})). Functional data suggest that AFF3 influences renal tubule fibrosis via the transforming growth factor-beta (TGF-β1) pathway. The strongest association with DN as a primary phenotype was seen for an intronic SNP in the ERBB4 gene (rs7588550, P = 2.1×(10^{−7})), a gene with type 2 diabetes DN differential expression and in the same intron as a variant with cis-eQTL expression of ERBB4. All these detected associations represent new signals in the pathogenesis of DN.

  • Publication

    Genome-Wide Association Studies of Asthma in Population-Based Cohorts Confirm Known and Suggested Loci and Identify an Additional Association near HLA

    (Public Library of Science, 2012) Ramasamy, Adaikalavan; Kuokkanen, Mikko; Vedantam, Sailaja; Gajdos, Zofia; Couto Alves, Alexessander; Lyon, Helen N.; Ferreira, Manuel A. R.; Strachan, David P.; Zhao, Jing Hua; Abramson, Michael J.; Brown, Matthew A.; Coin, Lachlan; Dharmage, Shyamali C.; Duffy, David L.; Haahtela, Tari; Heath, Andrew C.; Janson, Christer; Kähönen, Mika; Khaw, Kay-Tee; Laitinen, Jaana; Le Souef, Peter; Lehtimäki, Terho; Madden, Pamela A. F.; Marks, Guy B.; Martin, Nicholas G.; Matheson, Melanie C.; Palmer, Cameron Douglas; Palotie, Aarno; Pouta, Anneli; Robertson, Colin F.; Viikari, Jorma; Widen, Elisabeth; Wjst, Matthias; Jarvis, Deborah L.; Montgomery, Grant W.; Thompson, Philip J.; Wareham, Nick; Eriksson, Johan; Jousilahti, Pekka; Laitinen, Tarja; Pekkanen, Juha; Raitakari, Olli T.; O'Connor, George T.; Salomaa, Veikko; Jarvelin, Marjo-Riitta; Hirschhorn, Joel

    Rationale: Asthma has substantial morbidity and mortality and a strong genetic component, but identification of genetic risk factors is limited by availability of suitable studies. Objectives: To test if population-based cohorts with self-reported physician-diagnosed asthma and genome-wide association (GWA) data could be used to validate known associations with asthma and identify novel associations. Methods: The APCAT (Analysis in Population-based Cohorts of Asthma Traits) consortium consists of 1,716 individuals with asthma and 16,888 healthy controls from six European-descent population-based cohorts. We examined associations in APCAT of thirteen variants previously reported as genome-wide significant (P<5x(10^{−8})) and three variants reported as suggestive (P<5×(10^{−7})). We also searched for novel associations in APCAT (Stage 1) and followed-up the most promising variants in 4,035 asthmatics and 11,251 healthy controls (Stage 2). Finally, we conducted the first genome-wide screen for interactions with smoking or hay fever. Main Results: We observed association in the same direction for all thirteen previously reported variants and nominally replicated ten of them. One variant that was previously suggestive, rs11071559 in RORA, now reaches genome-wide significance when combined with our data (P = 2.4×(10^{−9})). We also identified two genome-wide significant associations: rs13408661 near IL1RL1/IL18R1 ((P_{Stage1+Stage2}) = 1.1x(10^{−9})), which is correlated with a variant recently shown to be associated with asthma (rs3771180), and rs9268516 in the HLA region ((P_{Stage1+Stage2}) = 1.1x(10^{−8})), which appears to be independent of previously reported associations in this locus. Finally, we found no strong evidence for gene-environment interactions with smoking or hay fever status. Conclusions: Population-based cohorts with simple asthma phenotypes represent a valuable and largely untapped resource for genetic studies of asthma.

  • Publication

    Meta-Analysis of the INSIG2 Association with Obesity Including 74,345 Individuals: Does Heterogeneity of Estimates Relate to Study Design?

    (Public Library of Science, 2009) Heid, Iris M.; Huth, Cornelia; Loos, Ruth J. F.; Kronenberg, Florian; Adamkova, Vera; Anand, Sonia S.; Ardlie, Kristin; Biebermann, Heike; Bjerregaard, Peter; Boeing, Heiner; Bouchard, Claude; Ciullo, Marina; Cooper, Jackie A.; Corella, Dolores; Dina, Christian; Engert, James C.; Fisher, Eva; Francès, Francesc; Froguel, Philippe; Hebebrand, Johannes; Hegele, Robert A.; Hinney, Anke; Hoehe, Margret R.; Hubacek, Jaroslav A.; Humphries, Steve E.; Hunt, Steven C.; Illig, Thomas; Järvelin, Marjo-Riita; Kaakinen, Marika; Kollerits, Barbara; Krude, Heiko; Kumar, Jitender; Lange, Leslie A.; Langer, Birgit; Li, Shengxu; Luchner, Andreas; Meyre, David; Mohlke, Karen L.; Mooser, Vincent; Nebel, Almut; Nguyen, Thuy Trang; Paulweber, Bernhard; Perusse, Louis; Rankinen, Tuomo; Rosskopf, Dieter; Schreiber, Stefan; Sengupta, Shantanu; Sorice, Rossella; Suk, Anita; Thorleifsson, Gudmar; Thorsteinsdottir, Unnur; Völzke, Henry; Vimaleswaran, Karani S.; Wareham, Nicholas J.; Waterworth, Dawn; Yusuf, Salim; Lindgren, Cecilia; McCarthy, Mark I.; Wichmann, H.-Erich; Allison, David B.; Hu, Frank; Qi, Lu; Lyon, Helen N.; Lange, Christoph; Hirschhorn, Joel; Laird, Nan

    The INSIG2 rs7566605 polymorphism was identified for obesity (BMI≥30 kg/m2) in one of the first genome-wide association studies, but replications were inconsistent. We collected statistics from 34 studies (n = 74,345), including general population (GP) studies, population-based studies with subjects selected for conditions related to a better health status (‘healthy population’, HP), and obesity studies (OB). We tested five hypotheses to explore potential sources of heterogeneity. The meta-analysis of 27 studies on Caucasian adults (n = 66,213) combining the different study designs did not support overall association of the CC-genotype with obesity, yielding an odds ratio (OR) of 1.05 (p-value = 0.27). The I2 measure of 41% (p-value = 0.015) indicated between-study heterogeneity. Restricting to GP studies resulted in a declined I2 measure of 11% (p-value = 0.33) and an OR of 1.10 (p-value = 0.015). Regarding the five hypotheses, our data showed (a) some difference between GP and HP studies (p-value = 0.012) and (b) an association in extreme comparisons (BMI≥32.5, 35.0, 37.5, 40.0 kg/m2 versus BMI less than;25 kg/m2) yielding ORs of 1.16, 1.18, 1.22, or 1.27 (p-values 0.001 to 0.003), which was also underscored by significantly increased CC-genotype frequencies across BMI categories (10.4% to 12.5%, p-value for trend = 0.0002). We did not find evidence for differential ORs (c) among studies with higher than average obesity prevalence compared to lower, (d) among studies with BMI assessment after the year 2000 compared to those before, or (e) among studies from older populations compared to younger. Analysis of non-Caucasian adults (n = 4889) or children (n = 3243) yielded ORs of 1.01 (p-value = 0.94) or 1.15 (p-value = 0.22), respectively. There was no evidence for overall association of the rs7566605 polymorphism with obesity. Our data suggested an association with extreme degrees of obesity, and consequently heterogeneous effects from different study designs may mask an underlying association when unaccounted for. The importance of study design might be under-recognized in gene discovery and association replication so far.

  • Publication

    Genome-Wide Association Scan Meta-Analysis Identifies Three Loci Influencing Adiposity and Fat Distribution

    (Public Library of Science, 2009) Lindgren, Cecilia M.; Heid, Iris M.; Randall, Joshua C.; Lamina, Claudia; Steinthorsdottir, Valgerdur; Speliotes, Elizabeth K.; Thorleifsson, Gudmar; Willer, Cristen J.; Herrera, Blanca M.; Jackson, Anne U.; Lim, Noha; Scheet, Paul; Soranzo, Nicole; Amin, Najaf; Aulchenko, Yurii S.; Chambers, John C.; Drong, Alexander; Luan, Jian'an; Rivadeneira, Fernando; Sanna, Serena; Timpson, Nicholas J.; Zillikens, M. Carola; Almgren, Peter; Bandinelli, Stefania; Bennett, Amanda J.; Bergman, Richard N.; Bonnycastle, Lori L.; Bumpstead, Suzannah J.; Chanock, Stephen J.; Cherkas, Lynn; Chines, Peter; Coin, Lachlan; Cooper, Cyrus; Crawford, Gabriel; Doering, Angela; Dominiczak, Anna; Doney, Alex S. F.; Ebrahim, Shah; Elliott, Paul; Erdos, Michael R.; Estrada, Karol; Ferrucci, Luigi; Fischer, Guido; Forouhi, Nita G.; Gieger, Christian; Grallert, Harald; Groves, Christopher J.; Grundy, Scott; Guiducci, Candace; Hadley, David; Hamsten, Anders; Havulinna, Aki S.; Holle, Rolf; Holloway, John W.; Illig, Thomas; Isomaa, Bo; Jacobs, Leonie C.; Jameson, Karen; Jousilahti, Pekka; Karpe, Fredrik; Kuusisto, Johanna; Laitinen, Jaana; Lathrop, G. Mark; Lawlor, Debbie A.; Mangino, Massimo; McArdle, Wendy L.; Meitinger, Thomas; Morken, Mario A.; Morris, Andrew P.; Munroe, Patricia; Narisu, Narisu; Nordström, Anna; Nordström, Peter; Oostra, Ben A.; Palmer, Colin N. A.; Payne, Felicity; Peden, John F.; Prokopenko, Inga; Renström, Frida; Ruokonen, Aimo; Salomaa, Veikko; Sandhu, Manjinder S.; Scuteri, Angelo; Silander, Kaisa; Song, Kijoung; Stringham, Heather M.; Swift, Amy J.; Tuomi, Tiinamaija; Uda, Manuela; Vollenweider, Peter; Waeber, Gerard; Wallace, Chris; Walters, G. Bragi; Weedon, Michael N.; Witteman, Jacqueline C. M.; Zhang, Cuilin; Zhang, Weihua; Caulfield, Mark J.; Collins, Francis S.; Davey Smith, George; Day, Ian N. M.; Franks, Paul W.; Hattersley, Andrew T.; Jarvelin, Marjo-Riitta; Kong, Augustine; Kooner, Jaspal S.; Laakso, Markku; Lakatta, Edward; Mooser, Vincent; Morris, Andrew D.; Peltonen, Leena; Samani, Nilesh J.; Spector, Timothy D.; Strachan, David P.; Tanaka, Toshiko; Tuomilehto, Jaakko; Uitterlinden, André G.; van Duijn, Cornelia M.; Wareham, Nicholas J.; Waterworth, Dawn M.; Boehnke, Michael; Deloukas, Panos; Groop, Leif; Thorsteinsdottir, Unnur; Schlessinger, David; Wichmann, H.-Erich; Frayling, Timothy M.; Abecasis, Gonçalo R.; Loos, Ruth J. F.; Stefansson, Kari; Mohlke, Karen L.; Barroso, Inês; Hirschhorn, Joel; McCarthy, Mark I.; Watkins, Hugh; The Wellcome Trust Case Control Consortium; Hunter, David; Hu, Frank; Yuan, Xin; Scott, Laura J.; Hofman, Albert; Zhao, Jing Hua; Lyon, Helen N.; Qi, Lu

    To identify genetic loci influencing central obesity and fat distribution, we performed a meta-analysis of 16 genome-wide association studies (GWAS, N = 38,580) informative for adult waist circumference (WC) and waist–hip ratio (WHR). We selected 26 SNPs for follow-up, for which the evidence of association with measures of central adiposity (WC and/or WHR) was strong and disproportionate to that for overall adiposity or height. Follow-up studies in a maximum of 70,689 individuals identified two loci strongly associated with measures of central adiposity; these map near TFAP2B (WC, P = 1.9×(10^{-11})) and MSRA (WC, P = 8.9×(10^{-9})). A third locus, near LYPLAL1, was associated with WHR in women only (P = 2.6×(10^{-8})). The variants near TFAP2B appear to influence central adiposity through an effect on overall obesity/fat-mass, whereas LYPLAL1 displays a strong female-only association with fat distribution. By focusing on anthropometric measures of central obesity and fat distribution, we have identified three loci implicated in the regulation of human adiposity.

  • Publication

    Common Missense Variant in the Glucokinase Regulatory Protein Gene Is Associated With Increased Plasma Triglyceride and C-Reactive Protein but Lower Fasting Glucose Concentrations

    (American Diabetes Association, 2008) Orho-Melander, Marju; Melander, Olle; Guiducci, Candace; Perez-Martinez, Pablo; Corella, Dolores; Roos, Charlotta; Tewhey, Ryan; Rieder, Mark J.; Hall, Jennifer; Abecasis, Goncalo; Tai, E. Shyong; Welch, Cullan; Arnett, Donna K.; Lyssenko, Valeriya; Lindholm, Eero; Burtt, Noel; Voight, Benjamin F.; Tucker, Katherine L.; Hedner, Thomas; Tuomi, Tiinamaija; Isomaa, Bo; Eriksson, Karl-Fredrik; Taskinen, Marja-Riitta; Wahlstrand, Björn; Hughes, Thomas E.; Parnell, Laurence D.; Lai, Chao-Qiang; Berglund, Göran; Peltonen, Leena; Vartiainen, Erkki; Jousilahti, Pekka; Havulinna, Aki S.; Salomaa, Veikko; Nilsson, Peter; Groop, Leif; Ordovas, Jose M.; Kathiresan, Sekar; Saxena, Richa; de Bakker, Paul; Hirschhorn, Joel; Altshuler, David

    Objective: Using the genome-wide association approach, we recently identified the glucokinase regulatory protein gene (GCKR, rs780094) region as a novel quantitative trait locus for plasma triglyceride concentration in Europeans. Here, we sought to study the association of GCKR variants with metabolic phenotypes, including measures of glucose homeostasis, to evaluate the GCKR locus in samples of non-European ancestry and to fine-map across the associated genomic interval. Research Design and Methods: We performed association studies in 12 independent cohorts comprising >45,000 individuals representing several ancestral groups (whites from Northern and Southern Europe, whites from the U.S., African Americans from the U.S., Hispanics of Caribbean origin, and Chinese, Malays, and Asian Indians from Singapore). We conducted genetic fine-mapping across the ∼417-kb region of linkage disequilibrium spanning GCKR and 16 other genes on chromosome 2p23 by imputing untyped HapMap single nucleotide polymorphisms (SNPs) and genotyping 104 SNPs across the associated genomic interval. Results: We provide comprehensive evidence that GCKR rs780094 is associated with opposite effects on fasting plasma triglyceride (Pmeta = 3 × 10−56) and glucose (Pmeta = 1 × 10−13) concentrations. In addition, we confirmed recent reports that the same SNP is associated with C-reactive protein (CRP) level (P = 5 × 10−5). Both fine-mapping approaches revealed a common missense GCKR variant (rs1260326, Pro446Leu, 34% frequency, r2 = 0.93 with rs780094) as the strongest association signal in the region. Conclusions: These findings point to a molecular mechanism in humans by which higher triglycerides and CRP can be coupled with lower plasma glucose concentrations and position GCKR in central pathways regulating both hepatic triglyceride and glucose metabolism.