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Featured researches published by Brooke N. Wolford.


Nature Communications | 2016

The genetic regulatory signature of type 2 diabetes in human skeletal muscle

Laura J. Scott; Michael R. Erdos; Jeroen R. Huyghe; Ryan P. Welch; Andrew T. Beck; Brooke N. Wolford; Peter S. Chines; John P. Didion; Heather M. Stringham; D. Leland Taylor; Anne U. Jackson; Swarooparani Vadlamudi; Lori L. Bonnycastle; Leena Kinnunen; Jouko Saramies; Jouko Sundvall; Ricardo D'Oliveira Albanus; Anna Kiseleva; John Hensley; Gregory E. Crawford; Hui Jiang; Xiaoquan Wen; Richard M. Watanabe; Timo A. Lakka; Karen L. Mohlke; Markku Laakso; Jaakko Tuomilehto; Heikki A. Koistinen; Michael Boehnke; Francis S. Collins

Type 2 diabetes (T2D) results from the combined effects of genetic and environmental factors on multiple tissues over time. Of the >100 variants associated with T2D and related traits in genome-wide association studies (GWAS), >90% occur in non-coding regions, suggesting a strong regulatory component to T2D risk. Here to understand how T2D status, metabolic traits and genetic variation influence gene expression, we analyse skeletal muscle biopsies from 271 well-phenotyped Finnish participants with glucose tolerance ranging from normal to newly diagnosed T2D. We perform high-depth strand-specific mRNA-sequencing and dense genotyping. Computational integration of these data with epigenome data, including ATAC-seq on skeletal muscle, and transcriptome data across diverse tissues reveals that the tissue-specific genetic regulatory architecture of skeletal muscle is highly enriched in muscle stretch/super enhancers, including some that overlap T2D GWAS variants. In one such example, T2D risk alleles residing in a muscle stretch/super enhancer are linked to increased expression and alternative splicing of muscle-specific isoforms of ANK1.


Proceedings of the National Academy of Sciences of the United States of America | 2017

Genetic regulatory signatures underlying islet gene expression and type 2 diabetes.

Arushi Varshney; Laura J. Scott; Ryan P. Welch; Michael R. Erdos; Peter S. Chines; Ricardo D'Oliveira Albanus; Peter Orchard; Brooke N. Wolford; Romy Kursawe; Swarooparani Vadlamudi; Maren E. Cannon; John P. Didion; John Hensley; Anthony Kirilusha; Lori L. Bonnycastle; D. Leland Taylor; Richard M. Watanabe; Karen L. Mohlke; Michael Boehnke; Francis S. Collins; Stephen C. J. Parker; Michael L. Stitzel

Significance The majority of genetic variants associated with type 2 diabetes (T2D) are located outside of genes in noncoding regions that may regulate gene expression in disease-relevant tissues, like pancreatic islets. Here, we present the largest integrated analysis to date of high-resolution, high-throughput human islet molecular profiling data to characterize the genome (DNA), epigenome (DNA packaging), and transcriptome (gene expression). We find that T2D genetic variants are enriched in regions of the genome where transcription Regulatory Factor X (RFX) is predicted to bind in an islet-specific manner. Genetic variants that increase T2D risk are predicted to disrupt RFX binding, providing a molecular mechanism to explain how the genome can influence the epigenome, modulating gene expression and ultimately T2D risk. Genome-wide association studies (GWAS) have identified >100 independent SNPs that modulate the risk of type 2 diabetes (T2D) and related traits. However, the pathogenic mechanisms of most of these SNPs remain elusive. Here, we examined genomic, epigenomic, and transcriptomic profiles in human pancreatic islets to understand the links between genetic variation, chromatin landscape, and gene expression in the context of T2D. We first integrated genome and transcriptome variation across 112 islet samples to produce dense cis-expression quantitative trait loci (cis-eQTL) maps. Additional integration with chromatin-state maps for islets and other diverse tissue types revealed that cis-eQTLs for islet-specific genes are specifically and significantly enriched in islet stretch enhancers. High-resolution chromatin accessibility profiling using assay for transposase-accessible chromatin sequencing (ATAC-seq) in two islet samples enabled us to identify specific transcription factor (TF) footprints embedded in active regulatory elements, which are highly enriched for islet cis-eQTL. Aggregate allelic bias signatures in TF footprints enabled us de novo to reconstruct TF binding affinities genetically, which support the high-quality nature of the TF footprint predictions. Interestingly, we found that T2D GWAS loci were strikingly and specifically enriched in islet Regulatory Factor X (RFX) footprints. Remarkably, within and across independent loci, T2D risk alleles that overlap with RFX footprints uniformly disrupt the RFX motifs at high-information content positions. Together, these results suggest that common regulatory variations have shaped islet TF footprints and the transcriptome and that a confluent RFX regulatory grammar plays a significant role in the genetic component of T2D predisposition.


Diabetes | 2017

A Type 2 Diabetes–Associated Functional Regulatory Variant in a Pancreatic Islet Enhancer at the ADCY5 Locus

Tamara S. Roman; Maren E. Cannon; Swarooparani Vadlamudi; Martin L. Buchkovich; Brooke N. Wolford; Ryan P. Welch; Mario A. Morken; Grace J. Kwon; Arushi Varshney; Romy Kursawe; Ying Wu; Anne U. Jackson; Michael R. Erdos; Johanna Kuusisto; Markku Laakso; Laura J. Scott; Michael Boehnke; Francis S. Collins; Stephen C. J. Parker; Michael L. Stitzel; Karen L. Mohlke

Molecular mechanisms remain unknown for most type 2 diabetes genome-wide association study identified loci. Variants associated with type 2 diabetes and fasting glucose levels reside in introns of ADCY5, a gene that encodes adenylate cyclase 5. Adenylate cyclase 5 catalyzes the production of cyclic AMP, which is a second messenger molecule involved in cell signaling and pancreatic β-cell insulin secretion. We demonstrated that type 2 diabetes risk alleles are associated with decreased ADCY5 expression in human islets and examined candidate variants for regulatory function. rs11708067 overlaps a predicted enhancer region in pancreatic islets. The type 2 diabetes risk rs11708067-A allele showed fewer H3K27ac ChIP-seq reads in human islets, lower transcriptional activity in reporter assays in rodent β-cells (rat 832/13 and mouse MIN6), and increased nuclear protein binding compared with the rs11708067-G allele. Homozygous deletion of the orthologous enhancer region in 832/13 cells resulted in a 64% reduction in expression level of Adcy5, but not adjacent gene Sec22a, and a 39% reduction in insulin secretion. Together, these data suggest that rs11708067-A risk allele contributes to type 2 diabetes by disrupting an islet enhancer, which results in reduced ADCY5 expression and impaired insulin secretion.


bioRxiv | 2018

Genome-wide association study of 1 million people identifies 111 loci for atrial fibrillation

Jonas B. Nielsen; Rosa B. Thorolfsdottir; Lars G. Fritsche; Wei Zhou; Morten W. Skov; Sarah E. Graham; Todd J. Herron; Shane McCarthy; Ellen M. Schmidt; Gardar Sveinbjornsson; Ida Surakka; Michael R. Mathis; Masatoshi Yamazaki; Ryan D. Crawford; Maiken Elvestad Gabrielsen; Anne Heidi Skogholt; Oddgeir L. Holmen; Maoxuan Lin; Brooke N. Wolford; Rounak Dey; Håvard Dalen; Patrick Sulem; Jonathan H. Chung; Joshua D. Backman; David O. Arnar; Unnur Thorsteinsdottir; Aris Baras; Colm O'Dushlaine; Anders G. Holst; Xiaoquan Wen

To understand the genetic variation underlying atrial fibrillation (AF), the most common cardiac arrhythmia, we performed a genome-wide association study (GWAS) of > 1 million people, including 60,620 AF cases and 970,216 controls. We identified 163 independent risk variants at 111 loci and prioritized 165 candidate genes likely to be involved in AF. Many of the identified risk variants fall near genes where more deleterious mutations have been reported to cause serious heart defects in humans or mice (MYH6, NKX2-5, PITX2, TBC1D32, TBX5),1,2 or near genes important for striated muscle function and integrity (e.g. MYH7, PKP2, SSPN, SGCA). Experiments in rabbits with heart failure and left atrial dilation identified a heterogeneous distributed molecular switch from MYH6 to MYH7 in the left atrium, which resulted in contractile and functional heterogeneity and may predispose to initiation and maintenance of atrial arrhythmia.


Nature Genetics | 2018

Biobank-driven genomic discovery yields new insight into atrial fibrillation biology.

Jonas B. Nielsen; Rosa B. Thorolfsdottir; Lars G. Fritsche; Wei Zhou; Morten W. Skov; Sarah E. Graham; Todd J. Herron; Shane McCarthy; Ellen M. Schmidt; Gardar Sveinbjornsson; Ida Surakka; Michael R. Mathis; Masatoshi Yamazaki; Ryan D. Crawford; Maiken Elvestad Gabrielsen; Anne Heidi Skogholt; Oddgeir L. Holmen; Maoxuan Lin; Brooke N. Wolford; Rounak Dey; Håvard Dalen; Patrick Sulem; Jonathan H. Chung; Joshua D. Backman; David O. Arnar; Unnur Thorsteinsdottir; Aris Baras; Colm O’Dushlaine; Anders G. Holst; Xiaoquan Wen

To identify genetic variation underlying atrial fibrillation, the most common cardiac arrhythmia, we performed a genome-wide association study of >1,000,000 people, including 60,620 atrial fibrillation cases and 970,216 controls. We identified 142 independent risk variants at 111 loci and prioritized 151 functional candidate genes likely to be involved in atrial fibrillation. Many of the identified risk variants fall near genes where more deleterious mutations have been reported to cause serious heart defects in humans (GATA4, MYH6, NKX2-5, PITX2, TBX5)1, or near genes important for striated muscle function and integrity (for example, CFL2, MYH7, PKP2, RBM20, SGCG, SSPN). Pathway and functional enrichment analyses also suggested that many of the putative atrial fibrillation genes act via cardiac structural remodeling, potentially in the form of an ‘atrial cardiomyopathy’2, either during fetal heart development or as a response to stress in the adult heart.Large-scale association analyses identify 142 independent risk variants for atrial fibrillation. Pathway and functional enrichment analyses suggest that many of the putative risk genes act via cardiac structural remodeling.


Nature Genetics | 2018

Efficiently controlling for case-control imbalance and sample relatedness in large-scale genetic association studies

Wei Zhou; Jonas B. Nielsen; Lars G. Fritsche; Rounak Dey; Maiken Elvestad Gabrielsen; Brooke N. Wolford; Jonathon LeFaive; Peter VandeHaar; Sarah A. Gagliano; Aliya Gifford; Wei-Qi Wei; Joshua C. Denny; Maoxuan Lin; Kristian Hveem; Hyun Min Kang; Gonçalo R. Abecasis; Cristen J. Willer; Seunggeun Lee

In genome-wide association studies (GWAS) for thousands of phenotypes in large biobanks, most binary traits have substantially fewer cases than controls. Both of the widely used approaches, the linear mixed model and the recently proposed logistic mixed model, perform poorly; they produce large type I error rates when used to analyze unbalanced case-control phenotypes. Here we propose a scalable and accurate generalized mixed model association test that uses the saddlepoint approximation to calibrate the distribution of score test statistics. This method, SAIGE (Scalable and Accurate Implementation of GEneralized mixed model), provides accurate P values even when case-control ratios are extremely unbalanced. SAIGE uses state-of-art optimization strategies to reduce computational costs; hence, it is applicable to GWAS for thousands of phenotypes by large biobanks. Through the analysis of UK Biobank data of 408,961 samples from white British participants with European ancestry for > 1,400 binary phenotypes, we show that SAIGE can efficiently analyze large sample data, controlling for unbalanced case-control ratios and sample relatedness.SAIGE (Scalable and Accurate Implementation of GEneralized mixed model) is a generalized mixed model association test that can efficiently analyze large data sets while controlling for unbalanced case-control ratios and sample relatedness, as shown by applying SAIGE to the UK Biobank data for > 1,400 binary phenotypes.


bioRxiv | 2018

Interactions between genetic variation and cellular environment in skeletal muscle gene expression

D. Leland Taylor; David Knowles; Laura J. Scott; Andrea H. Ramirez; Francesco Paolo Casale; Brooke N. Wolford; Li Guan; Arushi Varshney; Ricardo D'Oliveira Albanus; Stephen C. J. Parker; Peter S. Chines; Michael R. Erdos; Ryan P. Welch; Leena Kinnunen; Jouko Saramies; Jouko Sundvall; Timo A. Lakka; Markku Laakso; Jaakko Tuomilehto; Heikki A. Koistinen; Oliver Stegle; Michael Boehnke; Ewan Birney; Francis S. Collins

From whole organisms to individual cells, responses to environmental conditions are influenced by genetic makeup, where the effect of genetic variation on a trait depends on the environmental context. RNA-sequencing quantifies gene expression as a molecular trait, and is capable of capturing both genetic and environmental effects. In this study, we explore opportunities of using allele-specific expression (ASE) to discover cis acting genotype-environment interactions (GxE) - genetic effects on gene expression that depend on an environmental condition. Treating 17 common, clinical traits as approximations of the cellular environment of 267 skeletal muscle biopsies, we identify 10 candidate interaction quantitative trait loci (iQTLs) across 6 traits (12 unique gene-environment trait pairs; 10% FDR per trait) including sex, systolic blood pressure, and low-density lipoprotein cholesterol. Although using ASE is in principle a promising approach to detect GxE effects, replication of such signals can be challenging as validation requires harmonization of environmental traits across cohorts and a sufficient sampling of heterozygotes for a transcribed SNP. Comprehensive discovery and replication will require large human transcriptome datasets, or the integration of multiple transcribed SNPs, coupled with standardized clinical phenotyping.


American Journal of Human Genetics | 2018

Genome-wide Study of Atrial Fibrillation Identifies Seven Risk Loci and Highlights Biological Pathways and Regulatory Elements Involved in Cardiac Development

Jonas B. Nielsen; Lars G. Fritsche; Wei Zhou; Tanya M. Teslovich; Oddgeir L. Holmen; Stefan Gustafsson; Maiken Elvestad Gabrielsen; Ellen M. Schmidt; Robin N. Beaumont; Brooke N. Wolford; Maoxuan Lin; Chad M. Brummett; Michael Preuss; Lena Refsgaard; Erwin P. Bottinger; Sarah E. Graham; Ida Surakka; Yunhan Chu; Anne Heidi Skogholt; Håvard Dalen; Alan P. Boyle; Hakan Oral; Todd J. Herron; Jacob O. Kitzman; José Jalife; Jesper Hastrup Svendsen; Morten S. Olesen; Inger Njølstad; Maja-Lisa Løchen; Aris Baras


Human Molecular Genetics | 2018

Electronic health records: the next wave of complex disease genetics

Brooke N. Wolford; Cristen J. Willer; Ida Surakka


American Journal of Human Genetics | 2018

A Common Type 2 Diabetes Risk Variant Potentiates Activity of an Evolutionarily Conserved Islet Stretch Enhancer and Increases C2CD4A and C2CD4B Expression

Ina Kycia; Brooke N. Wolford; Jeroen R. Huyghe; Christian Fuchsberger; Swarooparani Vadlamudi; Romy Kursawe; Ryan P. Welch; Ricardo D'Oliveira Albanus; Asli Uyar; Shubham Khetan; Nathan Lawlor; Mohan Bolisetty; Anubhuti Mathur; Johanna Kuusisto; Markku Laakso; Duygu Ucar; Karen L. Mohlke; Michael Boehnke; Francis S. Collins; Stephen C. J. Parker; Michael L. Stitzel

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Francis S. Collins

National Institutes of Health

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Karen L. Mohlke

University of North Carolina at Chapel Hill

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Maoxuan Lin

University of Michigan

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Michael R. Erdos

National Institutes of Health

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