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Dive into the research topics where Stephanie Williams is active.

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Featured researches published by Stephanie Williams.


WOS | 2013

Genome-wide association analysis identifies 13 new risk loci for schizophrenia

Stephan Ripke; Colm O'Dushlaine; Jennifer L. Moran; Anna K. Kaehler; Susanne Akterin; Sarah E. Bergen; Ann L. Collins; James J. Crowley; Menachem Fromer; Yunjung Kim; Sang Hong Lee; Patrik K. E. Magnusson; Nick Sanchez; Eli A. Stahl; Stephanie Williams; Naomi R. Wray; Kai Xia; Francesco Bettella; Anders D. Børglum; Brendan Bulik-Sullivan; Paul Cormican; Nicholas John Craddock; Christiaan de Leeuw; Naser Durmishi; Michael Gill; V. E. Golimbet; Marian Lindsay Hamshere; Peter Holmans; David M. Hougaard; Kenneth S. Kendler

Schizophrenia is an idiopathic mental disorder with a heritable component and a substantial public health impact. We conducted a multi-stage genome-wide association study (GWAS) for schizophrenia beginning with a Swedish national sample (5,001 cases and 6,243 controls) followed by meta-analysis with previous schizophrenia GWAS (8,832 cases and 12,067 controls) and finally by replication of SNPs in 168 genomic regions in independent samples (7,413 cases, 19,762 controls and 581 parent-offspring trios). We identified 22 loci associated at genome-wide significance; 13 of these are new, and 1 was previously implicated in bipolar disorder. Examination of candidate genes at these loci suggests the involvement of neuronal calcium signaling. We estimate that 8,300 independent, mostly common SNPs (95% credible interval of 6,300–10,200 SNPs) contribute to risk for schizophrenia and that these collectively account for at least 32% of the variance in liability. Common genetic variation has an important role in the etiology of schizophrenia, and larger studies will allow more detailed understanding of this disorder.


Genetic Epidemiology | 2015

Multiple SNP Set Analysis for Genome-Wide Association Studies Through Bayesian Latent Variable Selection

Zhao Hua Lu; Hongtu Zhu; Rebecca C. Knickmeyer; Patrick F. Sullivan; Stephanie Williams; Fei Zou

The power of genome‐wide association studies (GWAS) for mapping complex traits with single‐SNP analysis (where SNP is single‐nucleotide polymorphism) may be undermined by modest SNP effect sizes, unobserved causal SNPs, correlation among adjacent SNPs, and SNP‐SNP interactions. Alternative approaches for testing the association between a single SNP set and individual phenotypes have been shown to be promising for improving the power of GWAS. We propose a Bayesian latent variable selection (BLVS) method to simultaneously model the joint association mapping between a large number of SNP sets and complex traits. Compared with single SNP set analysis, such joint association mapping not only accounts for the correlation among SNP sets but also is capable of detecting causal SNP sets that are marginally uncorrelated with traits. The spike‐and‐slab prior assigned to the effects of SNP sets can greatly reduce the dimension of effective SNP sets, while speeding up computation. An efficient Markov chain Monte Carlo algorithm is developed. Simulations demonstrate that BLVS outperforms several competing variable selection methods in some important scenarios.


Genetic Epidemiology | 2015

Characterizing an inverse axis between orthogonal sources of genetic risk

Lea K. Davis; S. Hong Lee; Eric R. Gamazon; Hae-Kyung Im; Dongmei Yu; Stephanie Williams; Patrick F. Sullivan; Carol A. Mathews; James A. Knowles; Jeremiah M. Scharf; Naomi R. Wray; Nancy J. Cox

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Patrick F. Sullivan

University of North Carolina at Chapel Hill

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Naomi R. Wray

University of Queensland

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Ann L. Collins

University of North Carolina at Chapel Hill

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Eli A. Stahl

Icahn School of Medicine at Mount Sinai

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Fei Zou

University of North Carolina at Chapel Hill

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