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Get Free AccessEconomic variables such as income, education, and occupation are known to affect mortality and morbidity, such as cardiovascular disease, and have also been shown to be partly heritable. However, very little is known about which genes influence economic variables, although these genes may have both a direct and an indirect effect on health. We report results from the first large-scale collaboration that studies the molecular genetic architecture of an economic variable-entrepreneurship-that was operationalized using self-employment, a widely-available proxy. Our results suggest that common SNPs when considered jointly explain about half of the narrow-sense heritability of self-employment estimated in twin data (σg2/σP2= 25%, h2= 55%). However, a meta-analysis of genome-wide association studies across sixteen studies comprising 50,627 participants did not identify genome-wide significant SNPs. 58 SNPs with p<10-5were tested in a replication sample (n = 3,271), but none replicated. Furthermore, a gene-based test shows that none of the genes that were previously suggested in the literature to influence entrepreneurship reveal significant associations. Finally, SNP-based genetic scores that use results from the meta-analysis capture less than 0.2% of the variance in self-employment in an independent sample (p≥0.039). Our results are consistent with a highly polygenic molecular genetic architecture of self-employment, with many genetic variants of small effect. Although self-employment is a multi-faceted, heavily environmentally influenced, and biologically distal trait, our results are similar to those for other genetically complex and biologically more proximate outcomes, such as height, intelligence, personality, and several diseases.
M.J.H.M. van deLoos, Cornelius A. Rietveld, Niina Eklund, Koellinger , Francesco Ramirez, Gonçalo R. Abecasis, Georgina A. Ankra-Badu, Sebastian‐Edgar Baumeister, Daniel J. Benjamin, Rainer Biffar, Stefan Blankenberg, Dorret I. Boomsma, David Cesarini, Francesco Cucca, E.J.C. deGeus, G.V. Dedoussis, Panos Deloukas, Maria Dimitriou, G. Eiríksdóttir, Johan G. Eriksson, Christian Gieger, Vilmundur Guðnason, Birgit Höhne, Rolf Holle, J-J Hottenga, Aaron Isaacs, Paul M Ridker, Magnus Johannesson, Marika Kaakinen, Mika Kähönen, Stavroula Kanoni, Laaksonen , Jari Lahti, L.J. Launer, Terho Lehtimäki, Marisa Loitfelder, Páll Magnússon, Silvia Naitza, Ben A. Oostra, M. Perola, Katja Petrovic, Lydia Quaye, Olli Raitakari, Samuli Ripatti, Paul Scheet, David Schlessinger, C.O. Schmidt, Andrea Senft, A.V. Smith, T. D. Spector, Ida Surakka, Rauli Svento, Antonio Terracciano, Emmi Tikkanen, Päivi Tikka-Kleemola, Jorma Viikari, Henry Völzke, H.E. Wichmann, Philipp S. Wild, Sara M. Willems, Gonneke Willemsen, F.J.A. vanRooij, Patrick J. F. Groenen, André G. Uitterlinden, B. Hofman, Roy Thurik (2013). The Molecular Genetic Architecture of Self-Employment.
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Type
Article
Year
2013
Authors
66
Datasets
0
Total Files
0
Language
en
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