Person: Kraft, Peter
Email Address
AA Acceptance Date
Birth Date
Research Projects
Organizational Units
Job Title
Last Name
First Name
Name
Search Results
Publication Large-Scale Association Analysis Provides Insights into the Genetic Architecture and Pathophysiology of Type 2 Diabetes
(Nature Publishing Group, 2012) Morris, Andrew P; Voight, Benjamin F; Teslovich, Tanya M; Ferreira, Teresa; Segré, Ayellet V; Steinthorsdottir, Valgerdur; Strawbridge, Rona J; Khan, Hassan; Grallert, Harald; Mahajan, Anubha; Prokopenko, Inga; Kang, Hyun Min; Dina, Christian; Esko, Tonu; Fraser, Ross M; Kanoni, Stavroula; Kumar, Ashish; Lagou, Vasiliki; Langenberg, Claudia; Luan, Jian’an; Lindgren, Cecilia M; Müller-Nurasyid, Martina; Pechlivanis, Sonali; Rayner, N William; Scott, Laura J; Wiltshire, Steven; Yengo, Loic; Kinnunen, Leena; Rossin, Elizabeth; Raychaudhuri, Soumya; Johnson, Andrew D; Dimas, Antigone S; Loos, Ruth J F; Vedantam, Sailaja; Chen, Han; Florez, Jose; Fox, Caroline; Liu, Ching-Ti; Rybin, Denis; Couper, David J; Kao, Wen Hong L; Li, Man; Cornelis, Marilyn; Kraft, Peter; Sun, Qi; Van Dam, Rob; Stringham, Heather M; Chines, Peter S; Fischer, Krista; Fontanillas, Pierre; Holmen, Oddgeir L; Hunt, Sarah E; Jackson, Anne U; Kong, Augustine; Lawrence, Robert; Meyer, Julia; Perry, John R B; Platou, Carl G P; Potter, Simon; Rehnberg, Emil; Robertson, Neil; Sivapalaratnam, Suthesh; Stančáková, Alena; Stirrups, Kathleen; Thorleifsson, Gudmar; Tikkanen, Emmi; Wood, Andrew R; Almgren, Peter; Atalay, Mustafa; Benediktsson, Rafn; Bonnycastle, Lori L; Burtt, Noël; Carey, Jason; Charpentier, Guillaume; Crenshaw, Andrew T; Doney, Alex S F; Dorkhan, Mozhgan; Edkins, Sarah; Emilsson, Valur; Eury, Elodie; Forsen, Tom; Gertow, Karl; Gigante, Bruna; Grant, George B; Groves, Christopher J; Guiducci, Candace; Herder, Christian; Hreidarsson, Astradur B; Hui, Jennie; James, Alan; Jonsson, Anna; Rathmann, Wolfgang; Klopp, Norman; Kravic, Jasmina; Krjutškov, Kaarel; Langford, Cordelia; Leander, Karin; Lindholm, Eero; Lobbens, Stéphane; Männistö, Satu; Mirza, Ghazala; Mühleisen, Thomas W; Musk, Bill; Parkin, Melissa Ann; Rallidis, Loukianos; Saramies, Jouko; Sennblad, Bengt; Shah, Sonia; Sigurðsson, Gunnar; Silveira, Angela; Steinbach, Gerald; Thorand, Barbara; Trakalo, Joseph; Veglia, Fabrizio; Wennauer, Roman; Winckler, Wendy; Zabaneh, Delilah; Campbell, Harry; van Duijn, Cornelia; Uitterlinden, Andre G; Hofman, Albert; Sijbrands, Eric; Abecasis, Goncalo R; Owen, Katharine R; Zeggini, Eleftheria; Trip, Mieke D; Forouhi, Nita G; Syvänen, Ann-Christine; Eriksson, Johan G; Peltonen, Leena; Nöthen, Markus M; Balkau, Beverley; Palmer, Colin N A; Lyssenko, Valeriya; Tuomi, Tiinamaija; Isomaa, Bo; Hunter, David; Qi, Lu; Shuldiner, Alan R; Roden, Michael; Barroso, Ines; Wilsgaard, Tom; Beilby, John; Hovingh, Kees; Price, Jackie F; Wilson, James F; Rauramaa, Rainer; Lakka, Timo A; Lind, Lars; Dedoussis, George; Njølstad, Inger; Pedersen, Nancy L; Khaw, Kay-Tee; Wareham, Nicholas J; Keinanen-Kiukaanniemi, Sirkka M; Saaristo, Timo E; Korpi-Hyövälti, Eeva; Saltevo, Juha; Laakso, Markku; Kuusisto, Johanna; Metspalu, Andres; Collins, Francis S; Mohlke, Karen L; Bergman, Richard N; Tuomilehto, Jaakko; Boehm, Bernhard O; Gieger, Christian; Hveem, Kristian; Cauchi, Stephane; Froguel, Philippe; Baldassarre, Damiano; Tremoli, Elena; Humphries, Steve E; Saleheen, Danish; Danesh, John; Ingelsson, Erik; Ripatti, Samuli; Salomaa, Veikko; Erbel, Raimund; Jöckel, Karl-Heinz; Moebus, Susanne; Peters, Annette; Illig, Thomas; de Faire, Ulf; Hamsten, Anders; Morris, Andrew D; Donnelly, Peter J; Frayling, Timothy M; Hattersley, Andrew T; Boerwinkle, Eric; Melander, Olle; Kathiresan, Sekar; Nilsson, Peter M; Deloukas, Panos; Thorsteinsdottir, Unnur; Groop, Leif C; Stefansson, Kari; Hu, Frank; Pankow, James S; Dupuis, Josée; Meigs, James; Altshuler, David; Boehnke, Michael; McCarthy, Mark ITo 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 involving 34,840 cases and 114,981 controls, overwhelmingly of European descent. We identified ten previously unreported T2D susceptibility loci, including two demonstrating sex-differentiated association. Genome-wide analyses of these data are consistent with a long tail of further 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 signalling and cell cycle regulation, in diabetes pathogenesis.
Publication Informed Conditioning on Clinical Covariates Increases Power in Case-Control Association Studies
(Public Library of Science, 2012) Zaitlen, Noah; Lindström, Sara; Pasaniuc, Bogdan; Cornelis, Marilyn; Genovese, Giulio; Pollack, Samuela; Barton, Anne; Bickeböller, Heike; Bowden, Donald W.; Eyre, Steve; Freedman, Barry I.; Friedman, David; Field, John K.; Groop, Leif; Haugen, Aage; Heinrich, Joachim; Henderson, Brian E.; Hicks, Pamela J.; Hocking, Lynne J.; Kolonel, Laurence N.; Landi, Maria Teresa; Langefeld, Carl D.; Le Marchand, Loic; Meister, Michael; Morgan, Ann W.; Raji, Olaide Y.; Risch, Angela; Rosenberger, Albert; Scherf, David; Steer, Sophia; Walshaw, Martin; Waters, Kevin M.; Wilson, Anthony G.; Wordsworth, Paul; Zienolddiny, Shanbeh; Tchetgen, Eric Tchetgen; Haiman, Christopher; Hunter, David; Plenge, Robert M.; Worthington, Jane; Christiani, David; Schaumberg, Debra A.; Chasman, Daniel; Altshuler, David; Voight, Benjamin; Kraft, Peter; Patterson, Nick; Price, AlkesGenetic case-control association studies often include data on clinical covariates, such as body mass index (BMI), smoking status, or age, that may modify the underlying genetic risk of case or control samples. For example, in type 2 diabetes, odds ratios for established variants estimated from low–BMI cases are larger than those estimated from high–BMI cases. An unanswered question is how to use this information to maximize statistical power in case-control studies that ascertain individuals on the basis of phenotype (case-control ascertainment) or phenotype and clinical covariates (case-control-covariate ascertainment). While current approaches improve power in studies with random ascertainment, they often lose power under case-control ascertainment and fail to capture available power increases under case-control-covariate ascertainment. We show that an informed conditioning approach, based on the liability threshold model with parameters informed by external epidemiological information, fully accounts for disease prevalence and non-random ascertainment of phenotype as well as covariates and provides a substantial increase in power while maintaining a properly controlled false-positive rate. Our method outperforms standard case-control association tests with or without covariates, tests of gene x covariate interaction, and previously proposed tests for dealing with covariates in ascertained data, with especially large improvements in the case of case-control-covariate ascertainment. We investigate empirical case-control studies of type 2 diabetes, prostate cancer, lung cancer, breast cancer, rheumatoid arthritis, age-related macular degeneration, and end-stage kidney disease over a total of 89,726 samples. In these datasets, informed conditioning outperforms logistic regression for 115 of the 157 known associated variants investigated (P-value = 1×(10^{−9})). The improvement varied across diseases with a 16% median increase in χ2 test statistics and a commensurate increase in power. This suggests that applying our method to existing and future association studies of these diseases may identify novel disease loci.
Publication Genome-Wide Meta-Analyses of Breast, Ovarian, and Prostate Cancer Association Studies Identify Multiple New Susceptibility Loci Shared by at Least Two Cancer Types
(American Association for Cancer Research (AACR), 2016) Kar, S. P.; Beesley, J.; Amin Al Olama, A.; Michailidou, K.; Tyrer, J.; Kote-Jarai, Z.; Lawrenson, K.; Lindstrom, S.; Ramus, S. J.; Thompson, D. J.; Kibel, Adam; Dansonka-Mieszkowska, A.; Michael, A.; Dieffenbach, A. K.; Gentry-Maharaj, A.; Whittemore, A. S.; Wolk, A.; Monteiro, A.; Peixoto, A.; Kierzek, A.; Cox, A.; Rudolph, A.; Gonzalez-Neira, A.; Wu, A. H.; Lindblom, A.; Swerdlow, A.; Ziogas, A.; Ekici, A. B.; Burwinkel, B.; Karlan, B. Y.; Nordestgaard, B. G.; Blomqvist, C.; Phelan, C.; McLean, C.; Pearce, C. L.; Vachon, C.; Cybulski, C.; Slavov, C.; Stegmaier, C.; Maier, C.; Ambrosone, C. B.; Hogdall, C. K.; Teerlink, C. C.; Kang, D.; Tessier, D. C.; Schaid, D. J.; Stram, D. O.; Cramer, Daniel; Neal, D. E.; Eccles, D.; Flesch-Janys, D.; Edwards, D. R. V.; Wokozorczyk, D.; Levine, D. A.; Yannoukakos, D.; Sawyer, E. J.; Bandera, E. V.; Poole, Elizabeth M.; Goode, E. L.; Khusnutdinova, E.; Hogdall, E.; Song, F; Bruinsma, F.; Heitz, F.; Modugno, F.; Hamdy, F. C.; Wiklund, F.; Giles, G. G.; Olsson, H.; Wildiers, H.; Ulmer, H.-U.; Pandha, H.; Risch, H. A.; Darabi, H.; Salvesen, H. B.; Nevanlinna, H.; Gronberg, H.; Brenner, H.; Brauch, H.; Anton-Culver, H.; Song, H.; Lim, H.-Y.; McNeish, I.; Campbell, I.; Vergote, I.; Gronwald, J.; Lubinski, J.; Stanford, J. L.; Benitez, J.; Doherty, J. A.; Permuth, J. B.; Chang-Claude, J.; Donovan, J. L.; Dennis, J.; Schildkraut, J. M.; Schleutker, J.; Hopper, J. L.; Kupryjanczyk, J.; Park, J. Y.; Figueroa, J.; Clements, J. A.; Knight, J. A.; Peto, J.; Cunningham, J. M.; Pow-Sang, J.; Batra, J.; Czene, K.; Lu, K. H.; Herkommer, K.; Khaw, K.-T.; Matsuo, K.; Muir, K.; Offitt, K.; Chen, K.; Moysich, K. B.; Aittoma ki, K.; Odunsi, K.; Kiemeney, L. A.; Massuger, L. F. A. G.; Fitzgerald, L. M.; Cook, L. S.; Cannon-Albright, L.; Hooning, M. J.; Pike, M. C.; Bolla, M. K.; Luedeke, M.; Teixeira, M. R.; Goodman, M. T.; Schmidt, M. K.; Riggan, M.; Aly, M.; Rossing, M. A.; Beckmann, M. W.; Moisse, M.; Sanderson, M.; Southey, M. C.; Jones, M.; Lush, M.; Hildebrandt, M. A. T.; Hou, M.-F.; Schoemaker, M. J.; Garcia-Closas, M.; Bogdanova, N.; Rahman, N.; Le, N. D.; Orr, N.; Wentzensen, N.; Pashayan, N.; Peterlongo, P.; Guenel, P.; Brennan, P.; Paulo, P.; Webb, P. M.; Broberg, P.; Fasching, P. A.; Devilee, P.; Wang, Q.; Cai, Q.; Li, Q.; Kaneva, R.; Butzow, R.; Kopperud, R. K.; Schmutzler, R. K.; Stephenson, R. A.; MacInnis, R. J.; Hoover, R. N.; Winqvist, R.; Ness, R.; Milne, R. L.; Travis, R. C.; Benlloch, S.; Olson, S. H.; McDonnell, S. K.; Tworoger, Shelley; Maia, S.; Berndt, S.; Lee, S. C.; Teo, S.-H.; Thibodeau, S. N.; Bojesen, S. E.; Gapstur, S. M.; Kjaer, S. K.; Pejovic, T.; Tammela, T. L. J.; Do rk, T.; Bru ning, T.; Wahlfors, T.; Key, T. J.; Edwards, T. L.; Menon, U.; Hamann, U.; Mitev, V.; Kosma, V.-M.; Setiawan, V. W.; Kristensen, V.; Arndt, V.; Vogel, W.; Zheng, W.; Sieh, W.; Blot, W. J.; Kluzniak, W.; Shu, X.-O.; Gao, Y.-T.; Schumacher, F.; Freedman, M. L.; Berchuck, A.; Dunning, A. M.; Simard, J.; Haiman, C. A.; Spurdle, A.; Sellers, T. A.; Hunter, David; Henderson, B. E.; Kraft, Peter; Chanock, S. J.; Couch, F. J.; Hall, P.; Gayther, S. A.; Easton, D. F.; Chenevix-Trench, G.; Eeles, R.; Pharoah, P. D. P.; Lambrechts, D.; undefined, undefinedBreast, ovarian, and prostate cancers are hormone-related and may have a shared genetic basis, but this has not been investigated systematically by genome-wide association (GWA) studies. Meta-analyses combining the largest GWA meta-analysis data sets for these cancers totaling 112,349 cases and 116,421 controls of European ancestry, all together and in pairs, identified at P < 10(-8) seven new cross-cancer loci: three associated with susceptibility to all three cancers (rs17041869/2q13/BCL2L11; rs7937840/11q12/INCENP; rs1469713/19p13/GATAD2A), two breast and ovarian cancer risk loci (rs200182588/9q31/SMC2; rs8037137/15q26/RCCD1), and two breast and prostate cancer risk loci (rs5013329/1p34/NSUN4; rs9375701/6q23/L3MBTL3). Index variants in five additional regions previously associated with only one cancer also showed clear association with a second cancer type. Cell-type-specific expression quantitative trait locus and enhancer-gene interaction annotations suggested target genes with potential cross-cancer roles at the new loci. Pathway analysis revealed significant enrichment of death receptor signaling genes near loci with P < 10(-5) in the three-cancer meta-analysis.