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Dive into the research topics where Mark Alan Fontana is active.

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Featured researches published by Mark Alan Fontana.


Nature Genetics | 2018

Multi-trait analysis of genome-wide association summary statistics using MTAG

Patrick Turley; Raymond K. Walters; Omeed Maghzian; Aysu Okbay; James J. Lee; Mark Alan Fontana; Tuan Anh Nguyen-Viet; Robbee Wedow; Meghan Zacher; Nicholas A. Furlotte; Patrik K. E. Magnusson; Sven Oskarsson; Magnus Johannesson; Peter M. Visscher; David Laibson; David Cesarini; Benjamin M. Neale; Daniel J. Benjamin

We introduce multi-trait analysis of GWAS (MTAG), a method for joint analysis of summary statistics from genome-wide association studies (GWAS) of different traits, possibly from overlapping samples. We apply MTAG to summary statistics for depressive symptoms (Neff = 354,862), neuroticism (N = 168,105), and subjective well-being (N = 388,538). As compared to the 32, 9, and 13 genome-wide significant loci identified in the single-trait GWAS (most of which are themselves novel), MTAG increases the number of associated loci to 64, 37, and 49, respectively. Moreover, association statistics from MTAG yield more informative bioinformatics analyses and increase the variance explained by polygenic scores by approximately 25%, matching theoretical expectations.MTAG is a new method for joint analysis of summary statistics from genome-wide association studies of different traits. Applying MTAG to summary statistics for depressive symptoms, neuroticism and subjective well-being increased discovery of associated loci as compared to single-trait analyses.


Nature Genetics | 2018

Gene discovery and polygenic prediction from a genome-wide association study of educational attainment in 1.1 million individuals.

James J. Lee; Robbee Wedow; Aysu Okbay; Edward Kong; Omeed Maghzian; Meghan Zacher; Tuan Anh Nguyen-Viet; Peter Bowers; Julia Sidorenko; Richard Karlsson Linner; Mark Alan Fontana; Tushar Kundu; Chanwook Lee; Hui Li; Ruoxi Li; Rebecca Royer; Pascal Timshel; Raymond K. Walters; Emily Willoughby; Loic Yengo; Maris Alver; Yanchun Bao; David W. Clark; Felix R. Day; Nicholas A. Furlotte; Peter K. Joshi; Kathryn E. Kemper; Aaron Kleinman; Claudia Langenberg; Reedik Mägi

Here we conducted a large-scale genetic association analysis of educational attainment in a sample of approximately 1.1 million individuals and identify 1,271 independent genome-wide-significant SNPs. For the SNPs taken together, we found evidence of heterogeneous effects across environments. The SNPs implicate genes involved in brain-development processes and neuron-to-neuron communication. In a separate analysis of the X chromosome, we identify 10 independent genome-wide-significant SNPs and estimate a SNP heritability of around 0.3% in both men and women, consistent with partial dosage compensation. A joint (multi-phenotype) analysis of educational attainment and three related cognitive phenotypes generates polygenic scores that explain 11–13% of the variance in educational attainment and 7–10% of the variance in cognitive performance. This prediction accuracy substantially increases the utility of polygenic scores as tools in research.Gene discovery and polygenic predictions from a genome-wide association study of educational attainment in 1.1 million individuals.


Nature Genetics | 2017

MTAG: Multi- Trait Analysis of GWAS

Patrick Turley; Raymond K. Walters; Omeed Maghzian; Aysu Okbay; James J. Lee; Mark Alan Fontana; Tuan Anh Nguyen-Viet; Nicholas A. Furlotte; andMe; Ssgac; Patrik K. E. Magnusson; Sven Oskarsson; Magnus Johannesson; Peter M. Visscher; David Laibson; David Cesarini; Benjamin M. Neale; Daniel J. Benjamin

We introduce Multi-Trait Analysis of GWAS (MTAG), a method for the joint analysis of summary statistics from GWASs of different traits, possibly from overlapping samples. We demonstrate MTAG using data on depressive symptoms (Neff = 354,862), neuroticism (N = 168,105), and subjective well-being (N = 388,538). Compared to 32, 9, and 13 genome-wide significant loci in the single-trait GWASs (most of which are novel), MTAG increases the number of loci to 74, 66, and 60, respectively. Moreover, the association statistics from MTAG yield more informative bioinformatics analyses and, consistent with theoretical calculations, improve prediction accuracy by approximately 25%.


Nature Genetics | 2016

Genetic associations with subjective well-being also implicate depression and neuroticism

Aysu Okbay; Bart M. L. Baselmans; Jan-Emmanuel De Neve; Patrick Turley; Michel G. Nivard; Mark Alan Fontana; Fleur Meddens; Richard Karlsson Linner; Cornelius A. Rietveld; Jaime Derringer; Jacob Gratten; James J. Lee; Jimmy Z. Liu; Ronald de Vlaming; Dalton Conley; George Davey Smith; Albert Hofman; Magnus Johannesson; David Laibson; Sarah E. Medland; Michelle N. Meyer; Joseph K. Pickrell; Tonu Esko; Robert F. Krueger; Jonathan P. Beauchamp; Philipp Koellinger; Daniel J. Benjamin; Meike Bartels; David Cesarini; Daniel Benjamin

Very few genetic variants have been associated with depression and neuroticism, likely because of limitations on sample size in previous studies. Subjective well-being, a phenotype that is genetically correlated with both of these traits, has not yet been studied with genome-wide data. We conducted genome-wide association studies of three phenotypes: subjective well-being (n = 298,420), depressive symptoms (n = 161,460), and neuroticism (n = 170,911). We identify 3 variants associated with subjective well-being, 2 variants associated with depressive symptoms, and 11 variants associated with neuroticism, including 2 inversion polymorphisms. The two loci associated with depressive symptoms replicate in an independent depression sample. Joint analyses that exploit the high genetic correlations between the phenotypes (|ρ^| ≈ 0.8) strengthen the overall credibility of the findings and allow us to identify additional variants. Across our phenotypes, loci regulating expression in central nervous system and adrenal or pancreas tissues are strongly enriched for association.


bioRxiv | 2018

Genomic analysis of diet composition finds novel loci and associations with health and lifestyle

S. Fleur W. Meddens; Ronald de Vlaming; Peter Bowers; Casper Burik; Richard Karlsson Linner; Chanwook Lee; Aysu Okbay; Patrick Turley; Cornelius A. Rietveld; Mark Alan Fontana; Mohsen Ghanbari; Fumiaki Imamuri; George McMahon; Peter J. van der Most; Trudy Voortman; Kaitlin H Wade; Emma L Anderson; Kim Ve Braun; Pauline M Emmett; Tonu Esko; Juan R. González; Jessica C. Kiefte-de Jong; Jian'an Luan; Claudia Langenberg; Taulant Muka; Susan M. Ring; Fernando Rivadeneira; Josje D. Schoufour; Harold Snieder; Frank J. A. van Rooij

We conducted genome-wide association study (GWAS) meta-analyses of relative caloric intake from fat, protein, carbohydrates and sugar in over 235,000 individuals. We identified 21 approximately independent lead SNPs. Relative protein intake exhibits the strongest relationships with poor health, including positive genetic associations with obesity, type 2 diabetes, and heart disease (rg ≈ 0.15 – 0.5). Relative carbohydrate and sugar intake have negative genetic correlations with waist circumference, waist-hip ratio, and neighborhood poverty (|rg| ≈ 0.1 – 0.3). Overall, our results show that the relative intake of each macronutrient has a distinct genetic architecture and pattern of genetic correlations suggestive of health implications beyond caloric content.


bioRxiv | 2018

Genome-wide study identifies 611 loci associated with risk tolerance and risky behaviors

Richard Karlsson Linner; Pietro Biroli; Edward Kong; S. Fleur W. Meddens; Robbee Wedow; Mark Alan Fontana; Mael Lebreton; Abdel Abdellaoui; Anke R. Hammerschlag; Michel G. Nivard; Aysu Okbay; Cornelius A. Rietveld; Pascal Timshel; Stephen P Tino; Maciej Trzaskowski; Ronald de Vlaming; Christian L Zünd; Yanchun Bao; Laura Buzdugan; Ann H Caplin; Chia-Yen Chen; Peter Eibich; Pierre Fontanillas; Juan R. González; Peter K. Joshi; Ville Karhunen; Aaron Kleinman; Remy Z Levin; Christina M. Lill; Gerardus A. Meddens

Humans vary substantially in their willingness to take risks. In a combined sample of over one million individuals, we conducted genome-wide association studies (GWAS) of general risk tolerance, adventurousness, and risky behaviors in the driving, drinking, smoking, and sexual domains. We identified 611 approximately independent genetic loci associated with at least one of our phenotypes, including 124 with general risk tolerance. We report evidence of substantial shared genetic influences across general risk tolerance and risky behaviors: 72 of the 124 general risk tolerance loci contain a lead SNP for at least one of our other GWAS, and general risk tolerance is moderately to strongly genetically correlated ( to 0.50) with a range of risky behaviors. Bioinformatics analyses imply that genes near general-risk-tolerance-associated SNPs are highly expressed in brain tissues and point to a role for glutamatergic and GABAergic neurotransmission. We find no evidence of enrichment for genes previously hypothesized to relate to risk tolerance.Humans vary substantially in their willingness to take risks. In a combined sample of over one million individuals, we conducted genome-wide association studies (GWAS) of general risk tolerance, adventurousness, and risky behaviors in the driving, drinking, smoking, and sexual domains. We identified 611 approximately independent genetic loci associated with at least one of our phenotypes, including 124 with general risk tolerance. We report evidence of substantial shared genetic influences across general risk tolerance and risky behaviors: 72 of the 124 general risk tolerance loci contain a lead SNP for at least one of our other GWAS, and general risk tolerance is moderately to strongly genetically correlated (|rˆ g | ~ 0.25 to 0.50) with a range of risky behaviors. Bioinformatics analyses imply that genes near general-risk-tolerance-associated SNPs are highly expressed in brain tissues and point to a role for glutamatergic and GABAergic neurotransmission. We find no evidence of enrichment for genes previously hypothesized to relate to risk tolerance.


Behavior Genetics | 2017

MTAG: multi-trait analysis of GWAS implicates novel loci for depressive symptoms, neuroticism, and subjective well-being

Raymond K. Walters; Patrick Turley; Omeed Maghzian; Aysu Okbay; James Lee; Mark Alan Fontana; Tuan Anh Nguyen-Viet; Nicholas A. Furlotte; Patrik K. E. Magnusson; Sven Oskarsson; Magnus Johannesson; Peter M. Visscher; David Laibson; David Cesarini; Benjamin M. Neale; Daniel J. Benjamin


Behavior Genetics | 2017

Large-scale genetic study of risk tolerance and risky behaviors identifies new loci and reveals shared genetic influences

Richard Karlsson Linner; Pietro Biroli; Mark Alan Fontana; Anke Hammerschlaag; Edward Kong; Mael Lebreton; Fleur Meddens; Michel G. Nivard; Aysu Okbay; Niels Rietveld; Erdogan Taskesen; Patrick Turley; Ronald de Vlaming; Robbee Wedow; Abdel Abdellaoui; Yanchun Bao; Laura Buzdugan; Chia-Yen Chen; Peter Eibich; Pierre Fontanillas; Peter K. Joshi; Ville Karhunen; Christina M. Lill; Gerardus A. Meddens; Gerard Muntane; Sandra Sanchez-Roige; Frank J. A. van Rooij; Murray B. Stein; Adam Auton; David M. Clark


Behavior Genetics | 2017

Examining the shared genetic architecture of risk tolerance and related behaviors

Edward Kong; Adam Auton; Pierre Fontanillas; Sonia Jain; Chia-Yen Chen; Murray B. Stein; Lars Bertram; Peter Eibich; Christina M. Lill; Gert G. Wagner; Anke Hammerschlaag; Danielle Posthuma; Erdogan Taskesen; Andrew Conlin; Ville Karhunen; Minna Männikkö; Rauli Svento; Michel G. Nivard; Dorret I. Boomsma; Abdel Abdellaoui; Conor V. Dolan; Harriet de Wit; Abraham A. Palmer; James Mackillop; Sandra Sanchez-Roige; Albert Hofman; M. Arfan Ikram; Henning Tiemeier; André G. Uitterlinden; Frank J. A. van Rooij


Behavior Genetics | 2016

Novel genetic loci for neuroticism and depression identified using subjective well-being as a proxy-phenotype

Aysu Okbay; Bart M. L. Baselmans; Jan-Emmanuel De Neve; Patrick Turley; Michel G. Nivard; Mark Alan Fontana; Fleur Meddens; Richard Karlsson Linner; Cornelius A. Rietveld; Bob Krueger; Jonathan P. Beauchamp; Philipp Koellinger; Daniel J. Benjamin; Meike Bartels; David Cesarini

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Aysu Okbay

VU University Amsterdam

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Daniel J. Benjamin

University of Southern California

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James J. Lee

University of Minnesota

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Ronald de Vlaming

Erasmus University Rotterdam

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