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Dive into the research topics where Mark Chaffin is active.

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Featured researches published by Mark Chaffin.


PLOS ONE | 2014

Genomic and Metabolic Diversity of Marine Group I Thaumarchaeota in the Mesopelagic of Two Subtropical Gyres

Brandon K. Swan; Mark Chaffin; Manuel Martínez-García; Hilary G. Morrison; Erin K. Field; Nicole J. Poulton; E. Dashiell P. Masland; Christopher C. Harris; Alexander Sczyrba; Patrick Chain; Sergey Koren; Tanja Woyke; Ramunas Stepanauskas

Marine Group I (MGI) Thaumarchaeota are one of the most abundant and cosmopolitan chemoautotrophs within the global dark ocean. To date, no representatives of this archaeal group retrieved from the dark ocean have been successfully cultured. We used single cell genomics to investigate the genomic and metabolic diversity of thaumarchaea within the mesopelagic of the subtropical North Pacific and South Atlantic Ocean. Phylogenetic and metagenomic recruitment analysis revealed that MGI single amplified genomes (SAGs) are genetically and biogeographically distinct from existing thaumarchaea cultures obtained from surface waters. Confirming prior studies, we found genes encoding proteins for aerobic ammonia oxidation and the hydrolysis of urea, which may be used for energy production, as well as genes involved in 3-hydroxypropionate/4-hydroxybutyrate and oxidative tricarboxylic acid pathways. A large proportion of protein sequences identified in MGI SAGs were absent in the marine cultures Cenarchaeum symbiosum and Nitrosopumilus maritimus, thus expanding the predicted protein space for this archaeal group. Identifiable genes located on genomic islands with low metagenome recruitment capacity were enriched in cellular defense functions, likely in response to viral infections or grazing. We show that MGI Thaumarchaeota in the dark ocean may have more flexibility in potential energy sources and adaptations to biotic interactions than the existing, surface-ocean cultures.


Nature Genetics | 2017

Genetic analysis in UK Biobank links insulin resistance and transendothelial migration pathways to coronary artery disease

Derek Klarin; Qiuyu Martin Zhu; Connor A. Emdin; Mark Chaffin; Steven Horner; Brian J. McMillan; Alison Leed; Michael E. Weale; Chris C. A. Spencer; François Aguet; Ayellet V. Segrè; Kristin Ardlie; Amit Khera; Virendar K Kaushik; Pradeep Natarajan; Sekar Kathiresan

UK Biobank is among the worlds largest repositories for phenotypic and genotypic information in individuals of European ancestry. We performed a genome-wide association study in UK Biobank testing ∼9 million DNA sequence variants for association with coronary artery disease (4,831 cases and 115,455 controls) and carried out meta-analysis with previously published results. We identified 15 new loci, bringing the total number of loci associated with coronary artery disease to 95 at the time of analysis. Phenome-wide association scanning showed that CCDC92 likely affects coronary artery disease through insulin resistance pathways, whereas experimental analysis suggests that ARHGEF26 influences the transendothelial migration of leukocytes.


Circulation-cardiovascular Genetics | 2017

Heritability of Atrial Fibrillation

Lu-Chen Weng; Seung Hoan Choi; Derek Klarin; J. Gustav Smith; Po-Ru Loh; Mark Chaffin; Carolina Roselli; Olivia L. Hulme; Kathryn L. Lunetta; Josée Dupuis; Emelia J. Benjamin; Christopher Newton-Cheh; Sekar Kathiresan; Patrick T. Ellinor; Steven A. Lubitz

Background— Previous reports have implicated multiple genetic loci associated with AF, but the contributions of genome-wide variation to AF susceptibility have not been quantified. Methods and Results— We assessed the contribution of genome-wide single-nucleotide polymorphism variation to AF risk (single-nucleotide polymorphism heritability, h2g) using data from 120u2009286 unrelated individuals of European ancestry (2987 with AF) in the population-based UK Biobank. We ascertained AF based on self-report, medical record billing codes, procedure codes, and death records. We estimated h2g using a variance components method with variants having a minor allele frequency ≥1%. We evaluated h2g in age, sex, and genomic strata of interest. The h2g for AF was 22.1% (95% confidence interval, 15.6%–28.5%) and was similar for early- versus older-onset AF (⩽65 versus >65 years of age), as well as for men and women. The proportion of AF variance explained by genetic variation was mainly accounted for by common (minor allele frequency, ≥5%) variants (20.4%; 95% confidence interval, 15.1%–25.6%). Only 6.4% (95% confidence interval, 5.1%–7.7%) of AF variance was attributed to variation within known AF susceptibility, cardiac arrhythmia, and cardiomyopathy gene regions. Conclusions— Genetic variation contributes substantially to AF risk. The risk for AF conferred by genomic variation is similar to that observed for several other cardiovascular diseases. Established AF loci only explain a moderate proportion of disease risk, suggesting that further genetic discovery, with an emphasis on common variation, is warranted to understand the causal genetic basis of AF.


Nature Genetics | 2018

Genome-wide polygenic scores for common diseases identify individuals with risk equivalent to monogenic mutations

Amit Khera; Mark Chaffin; Krishna G. Aragam; Mary E. Haas; Carolina Roselli; Seung Hoan Choi; Pradeep Natarajan; Eric S. Lander; Steven A. Lubitz; Patrick T. Ellinor; Sekar Kathiresan

A key public health need is to identify individuals at high risk for a given disease to enable enhanced screening or preventive therapies. Because most common diseases have a genetic component, one important approach is to stratify individuals based on inherited DNA variation1. Proposed clinical applications have largely focused on finding carriers of rare monogenic mutations at several-fold increased risk. Although most disease risk is polygenic in nature2–5, it has not yet been possible to use polygenic predictors to identify individuals at risk comparable to monogenic mutations. Here, we develop and validate genome-wide polygenic scores for five common diseases. The approach identifies 8.0, 6.1, 3.5, 3.2, and 1.5% of the population at greater than threefold increased risk for coronary artery disease, atrial fibrillation, type 2 diabetes, inflammatory bowel disease, and breast cancer, respectively. For coronary artery disease, this prevalence is 20-fold higher than the carrier frequency of rare monogenic mutations conferring comparable risk6. We propose that it is time to contemplate the inclusion of polygenic risk prediction in clinical care, and discuss relevant issues.Genome-wide polygenic risk scores derived from GWAS data for five common diseases can identify subgroups of the population with risk approaching or exceeding that of a monogenic mutation.


Nature Genetics | 2018

A genome-wide cross-trait analysis from UK Biobank highlights the shared genetic architecture of asthma and allergic diseases

Zhaozhong Zhu; Phil H. Lee; Mark Chaffin; Wonil Chung; Po-Ru Loh; Quan Lu; David C. Christiani; Liming Liang

Clinical and epidemiological data suggest that asthma and allergic diseases are associated and may share a common genetic etiology. We analyzed genome-wide SNP data for asthma and allergic diseases in 33,593 cases and 76,768 controls of European ancestry from UK Biobank. Two publicly available independent genome-wide association studies were used for replication. We have found a strong genome-wide genetic correlation between asthma and allergic diseases (rgu2009=u20090.75, Pu2009=u20096.84u2009×u200910−62). Cross-trait analysis identified 38 genome-wide significant loci, including 7 novel shared loci. Computational analysis showed that shared genetic loci are enriched in immune/inflammatory systems and tissues with epithelium cells. Our work identifies common genetic architectures shared between asthma and allergy and will help to advance understanding of the molecular mechanisms underlying co-morbid asthma and allergic diseases.Genome-wide cross-trait analysis shows a strong genetic correlation between asthma and allergic diseases. Shared susceptibility loci are enriched for genes involved in immune and inflammatory responses and genes expressed in epithelial tissues.


Nature Genetics | 2018

Genetics of blood lipids among ~300,000 multi-ethnic participants of the Million Veteran Program

Derek Klarin; Scott M. Damrauer; Kelly Cho; Yan V. Sun; Tanya M. Teslovich; Jacqueline Honerlaw; David R. Gagnon; Scott L. DuVall; Jin Li; Gina M. Peloso; Mark Chaffin; Aeron M. Small; Jie Huang; Hua Tang; Julie Lynch; Yuk-Lam Ho; Dajiang J. Liu; Connor A. Emdin; Alexander H. Li; Jennifer E. Huffman; Jennifer Lee; Pradeep Natarajan; Rajiv Chowdhury; Danish Saleheen; Marijana Vujkovic; Aris Baras; Saiju Pyarajan; Emanuele Di Angelantonio; Benjamin M. Neale; Aliya Naheed

The Million Veteran Program (MVP) was established in 2011 as a national research initiative to determine how genetic variation influences the health of US military veterans. Here we genotyped 312,571 MVP participants using a custom biobank array and linked the genetic data to laboratory and clinical phenotypes extracted from electronic health records covering a median of 10.0 years of follow-up. Among 297,626 veterans with at least one blood lipid measurement, including 57,332 black and 24,743 Hispanic participants, we tested up to around 32 million variants for association with lipid levels and identified 118 novel genome-wide significant loci after meta-analysis with data from the Global Lipids Genetics Consortium (total nu2009>u2009600,000). Through a focus on mutations predicted to result in a loss of gene function and a phenome-wide association study, we propose novel indications for pharmaceutical inhibitors targeting PCSK9 (abdominal aortic aneurysm), ANGPTL4 (type 2 diabetes) and PDE3B (triglycerides and coronary disease).Analysis of genetic data and blood lipid measurements from over 300,000 participants in the Million Veteran Program identifies new associations for blood lipid traits.


Nature Communications | 2018

Analysis of predicted loss-of-function variants in UK Biobank identifies variants protective for disease

Connor A. Emdin; Amit Khera; Mark Chaffin; Derek Klarin; Pradeep Natarajan; Krishna G. Aragam; Mary E. Haas; Alexander G. Bick; Seyedeh M. Zekavat; Akihiro Nomura; Diego Ardissino; James G. Wilson; Heribert Schunkert; Ruth McPherson; Hugh Watkins; Roberto Elosua; Matthew J. Bown; Nilesh J. Samani; Usman Baber; Jeanette Erdmann; Namrata Gupta; John Danesh; Daniel I. Chasman; Paul M. Ridker; Joshua C. Denny; Judith H. Lichtman; Gail D’Onofrio; Jennifer A. Mattera; John A. Spertus; Wayne Huey-Herng Sheu

Less than 3% of protein-coding genetic variants are predicted to result in loss of protein function through the introduction of a stop codon, frameshift, or the disruption of an essential splice site; however, such predicted loss-of-function (pLOF) variants provide insight into effector transcript and direction of biological effect. In >400,000 UK Biobank participants, we conduct association analyses of 3759 pLOF variants with six metabolic traits, six cardiometabolic diseases, and twelve additional diseases. We identified 18 new low-frequency or rare (allele frequencyu2009<u20095%) pLOF variant-phenotype associations. pLOF variants in the gene GPR151 protect against obesity and type 2 diabetes, in the gene IL33 against asthma and allergic disease, and in the gene IFIH1 against hypothyroidism. In the gene PDE3B, pLOF variants associate with elevated height, improved body fat distribution and protection from coronary artery disease. Our findings prioritize genes for which pharmacologic mimics of pLOF variants may lower risk for disease.Examination of predicted loss-of-function (pLOF) genetic variants allows direct identification of genes with therapeutic potential. Here, Emdin et al. perform association analysis for 3759 pLOF variants with 24 traits and highlight protective variants against cardiometabolic and immune phenotypes.


Nature Communications | 2018

Deep-coverage whole genome sequences and blood lipids among 16,324 individuals

Pradeep Natarajan; Gina M. Peloso; Seyedeh M. Zekavat; May E. Montasser; Andrea Ganna; Mark Chaffin; Amit Khera; Wei Zhou; Jonathan Bloom; Jesse M. Engreitz; Jason Ernst; Jeffrey R. O’Connell; Sanni Ruotsalainen; Maris Alver; Ani Manichaikul; W. Craig Johnson; James A. Perry; Timothy Poterba; Cotton Seed; Ida Surakka; Tonu Esko; Samuli Ripatti; Veikko Salomaa; Adolfo Correa; Manolis Kellis; Benjamin M. Neale; Eric S. Lander; Gonçalo R. Abecasis; Braxton D. Mitchell; Stephen S. Rich

Large-scale deep-coverage whole-genome sequencing (WGS) is now feasible and offers potential advantages for locus discovery. We perform WGS in 16,324 participants from four ancestries at mean depth >29X and analyze genotypes with four quantitative traits—plasma total cholesterol, low-density lipoprotein cholesterol (LDL-C), high-density lipoprotein cholesterol, and triglycerides. Common variant association yields known loci except for few variants previously poorly imputed. Rare coding variant association yields known Mendelian dyslipidemia genes but rare non-coding variant association detects no signals. A high 2M-SNP LDL-C polygenic score (top 5th percentile) confers similar effect size to a monogenic mutation (~30u2009mg/dl higher for each); however, among those with severe hypercholesterolemia, 23% have a high polygenic score and only 2% carry a monogenic mutation. At these sample sizes and for these phenotypes, the incremental value of WGS for discovery is limited but WGS permits simultaneous assessment of monogenic and polygenic models to severe hypercholesterolemia.Common genetic variants associated with plasma lipids have been extensively studied for a better understanding of common diseases. Here, the authors use whole-genome sequencing of 16,324 individuals to analyze rare variant associations and to determine their monogenic and polygenic contribution to lipid traits.


bioRxiv | 2017

Shared Genetic Architecture Of Asthma With Allergic Diseases: A Genome-wide Cross Trait Analysis Of 112,000 Individuals From UK Biobank

Zhaozhong Zhu; Phil H. Lee; Mark Chaffin; Wonil Chung; Po-Ru Loh; Quan Lu; David C. Christiani; Liming Liang

Clinical and epidemiological data suggest that asthma and allergic diseases are associated. And may share a common genetic etiology. We analyzed genome-wide single-nucleotide polymorphism (SNP) data for asthma and allergic diseases in 35,783 cases and 76,768 controls of European ancestry from the UK Biobank. Two publicly available independent genome wide association studies (GWAS) were used for replication. We have found a strong genome-wide genetic correlation between asthma and allergic diseases (rg = 0.75, P = 6.84×10−62). Cross trait analysis identified 38 genome-wide significant loci, including novel loci such as D2HGDH and GAL2ST2. Computational analysis showed that shared genetic loci are enriched in immune/inflammatory systems and tissues with epithelium cells. Our work identifies common genetic architectures shared between asthma and allergy and will help to advance our understanding of the molecular mechanisms underlying co-morbid asthma and allergic diseases.


Nature Communications | 2018

Publisher Correction: Deep coverage whole genome sequences and plasma lipoprotein(a) in individuals of European and African ancestries

Seyedeh M. Zekavat; Sanni Ruotsalainen; Robert E. Handsaker; Maris Alver; Jonathan Bloom; Timothy Poterba; Cotton Seed; Jason Ernst; Mark Chaffin; Jesse M. Engreitz; Gina M. Peloso; Ani Manichaikul; Chaojie Yang; Kathleen A. Ryan; Mao Fu; W. Craig Johnson; Michael Y. Tsai; Matthew J. Budoff; L. Adrienne Cupples; Jerome I. Rotter; Stephen S. Rich; Wendy S. Post; Braxton D. Mitchell; Adolfo Correa; Andres Metspalu; James G. Wilson; Veikko Salomaa; Manolis Kellis; Mark J. Daly; Benjamin M. Neale

The original version of this article contained an error in the name of the author Ramachandran S. Vasan, which was incorrectly given as Vasan S. Ramachandran. This has now been corrected in both the PDF and HTML versions of the article.

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Adolfo Correa

University of Mississippi Medical Center

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Amit Khera

University of Texas Southwestern Medical Center

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