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Featured researches published by Alex Reynolds.


Science | 2012

Systematic Localization of Common Disease-Associated Variation in Regulatory DNA

Matthew T. Maurano; Richard Humbert; Eric Rynes; Robert E. Thurman; Eric Haugen; Hao Wang; Alex Reynolds; Richard Sandstrom; Hongzhu Qu; Jennifer A. Brody; Anthony Shafer; Fidencio Neri; Kristen Lee; Tanya Kutyavin; Sandra Stehling-Sun; Audra K. Johnson; Theresa K. Canfield; Erika Giste; Morgan Diegel; Daniel Bates; R. Scott Hansen; Shane Neph; Peter J. Sabo; Shelly Heimfeld; Antony Raubitschek; Steven F. Ziegler; Chris Cotsapas; Nona Sotoodehnia; Ian A. Glass; Shamil R. Sunyaev

Predictions of Genetic Disease Many genome-wide association studies (GWAS) have identified loci and variants associated with disease, but the ability to predict disease on the basis of these genetic variants remains small. Maurano et al. (p. 1190; see the Perspective by Schadt and Chang; see the cover) characterize the location of GWAS variants in the genome with respect to their proximity to regulatory DNA [marked by deoxyribonuclease I (DNase I) hypersensitive sites] by tissue type, disease, and enrichments in physiologically relevant transcription factor binding sites and networks. They found many noncoding disease associations in regulatory DNA, indicating tissue and developmental-specific regulatory roles for many common genetic variants and thus enabling links to be made between gene regulation and adult-onset disease. Genetic variants that have been associated with diseases are concentrated in regulatory regions of the genome. Genome-wide association studies have identified many noncoding variants associated with common diseases and traits. We show that these variants are concentrated in regulatory DNA marked by deoxyribonuclease I (DNase I) hypersensitive sites (DHSs). Eighty-eight percent of such DHSs are active during fetal development and are enriched in variants associated with gestational exposure–related phenotypes. We identified distant gene targets for hundreds of variant-containing DHSs that may explain phenotype associations. Disease-associated variants systematically perturb transcription factor recognition sequences, frequently alter allelic chromatin states, and form regulatory networks. We also demonstrated tissue-selective enrichment of more weakly disease-associated variants within DHSs and the de novo identification of pathogenic cell types for Crohn’s disease, multiple sclerosis, and an electrocardiogram trait, without prior knowledge of physiological mechanisms. Our results suggest pervasive involvement of regulatory DNA variation in common human disease and provide pathogenic insights into diverse disorders.


Nature | 2012

The accessible chromatin landscape of the human genome.

Robert E. Thurman; Eric Rynes; Richard Humbert; Jeff Vierstra; Matthew T. Maurano; Eric Haugen; Nathan C. Sheffield; Andrew B. Stergachis; Hao Wang; Benjamin Vernot; Kavita Garg; Sam John; Richard Sandstrom; Daniel Bates; Lisa Boatman; Theresa K. Canfield; Morgan Diegel; Douglas Dunn; Abigail K. Ebersol; Tristan Frum; Erika Giste; Audra K. Johnson; Ericka M. Johnson; Tanya Kutyavin; Bryan R. Lajoie; Bum Kyu Lee; Kristen Lee; Darin London; Dimitra Lotakis; Shane Neph

DNase I hypersensitive sites (DHSs) are markers of regulatory DNA and have underpinned the discovery of all classes of cis-regulatory elements including enhancers, promoters, insulators, silencers and locus control regions. Here we present the first extensive map of human DHSs identified through genome-wide profiling in 125 diverse cell and tissue types. We identify ∼2.9 million DHSs that encompass virtually all known experimentally validated cis-regulatory sequences and expose a vast trove of novel elements, most with highly cell-selective regulation. Annotating these elements using ENCODE data reveals novel relationships between chromatin accessibility, transcription, DNA methylation and regulatory factor occupancy patterns. We connect ∼580,000 distal DHSs with their target promoters, revealing systematic pairing of different classes of distal DHSs and specific promoter types. Patterning of chromatin accessibility at many regulatory regions is organized with dozens to hundreds of co-activated elements, and the transcellular DNase I sensitivity pattern at a given region can predict cell-type-specific functional behaviours. The DHS landscape shows signatures of recent functional evolutionary constraint. However, the DHS compartment in pluripotent and immortalized cells exhibits higher mutation rates than that in highly differentiated cells, exposing an unexpected link between chromatin accessibility, proliferative potential and patterns of human variation.


Nature | 2012

An expansive human regulatory lexicon encoded in transcription factor footprints

Shane Neph; Jeff Vierstra; Andrew B. Stergachis; Alex Reynolds; Eric Haugen; Benjamin Vernot; Robert E. Thurman; Sam John; Richard Sandstrom; Audra K. Johnson; Matthew T. Maurano; Richard Humbert; Eric Rynes; Hao Wang; Shinny Vong; Kristen Lee; Daniel Bates; Morgan Diegel; Vaughn Roach; Douglas Dunn; Jun Neri; Anthony Schafer; R. Scott Hansen; Tanya Kutyavin; Erika Giste; Molly Weaver; Theresa K. Canfield; Peter J. Sabo; Miaohua Zhang; Gayathri Balasundaram

Regulatory factor binding to genomic DNA protects the underlying sequence from cleavage by DNase I, leaving nucleotide-resolution footprints. Using genomic DNase I footprinting across 41 diverse cell and tissue types, we detected 45 million transcription factor occupancy events within regulatory regions, representing differential binding to 8.4 million distinct short sequence elements. Here we show that this small genomic sequence compartment, roughly twice the size of the exome, encodes an expansive repertoire of conserved recognition sequences for DNA-binding proteins that nearly doubles the size of the human cis–regulatory lexicon. We find that genetic variants affecting allelic chromatin states are concentrated in footprints, and that these elements are preferentially sheltered from DNA methylation. High-resolution DNase I cleavage patterns mirror nucleotide-level evolutionary conservation and track the crystallographic topography of protein–DNA interfaces, indicating that transcription factor structure has been evolutionarily imprinted on the human genome sequence. We identify a stereotyped 50-base-pair footprint that precisely defines the site of transcript origination within thousands of human promoters. Finally, we describe a large collection of novel regulatory factor recognition motifs that are highly conserved in both sequence and function, and exhibit cell-selective occupancy patterns that closely parallel major regulators of development, differentiation and pluripotency.


Nature Methods | 2009

Global mapping of protein-DNA interactions in vivo by digital genomic footprinting

Jay R. Hesselberth; Xiaoyu Chen; Zhihong Zhang; Peter J. Sabo; Richard Sandstrom; Alex Reynolds; Robert E. Thurman; Shane Neph; Michael S. Kuehn; William Stafford Noble; Stanley Fields; John A. Stamatoyannopoulos

The orchestrated binding of transcriptional activators and repressors to specific DNA sequences in the context of chromatin defines the regulatory program of eukaryotic genomes. We developed a digital approach to assay regulatory protein occupancy on genomic DNA in vivo by dense mapping of individual DNase I cleavages from intact nuclei using massively parallel DNA sequencing. Analysis of >23 million cleavages across the Saccharomyces cerevisiae genome revealed thousands of protected regulatory protein footprints, enabling de novo derivation of factor binding motifs and the identification of hundreds of new binding sites for major regulators. We observed striking correspondence between single-nucleotide resolution DNase I cleavage patterns and protein-DNA interactions determined by crystallography. The data also yielded a detailed view of larger chromatin features including positioned nucleosomes flanking factor binding regions. Digital genomic footprinting should be a powerful approach to delineate the cis-regulatory framework of any organism with an available genome sequence.


Cell | 2012

Circuitry and dynamics of human transcription factor regulatory networks

Shane Neph; Andrew B. Stergachis; Alex Reynolds; Richard Sandstrom; Elhanan Borenstein; John A. Stamatoyannopoulos

The combinatorial cross-regulation of hundreds of sequence-specific transcription factors (TFs) defines a regulatory network that underlies cellular identity and function. Here we use genome-wide maps of in vivo DNaseI footprints to assemble an extensive core human regulatory network comprising connections among 475 sequence-specific TFs and to analyze the dynamics of these connections across 41 diverse cell and tissue types. We find that human TF networks are highly cell selective and are driven by cohorts of factors that include regulators with previously unrecognized roles in control of cellular identity. Moreover, we identify many widely expressed factors that impact transcriptional regulatory networks in a cell-selective manner. Strikingly, in spite of their inherent diversity, all cell-type regulatory networks independently converge on a common architecture that closely resembles the topology of living neuronal networks. Together, our results provide an extensive description of the circuitry, dynamics, and organizing principles of the human TF regulatory network.


Bioinformatics | 2012

BEDOPS: high-performance genomic feature operations

Shane Neph; Scott Kuehn; Alex Reynolds; Eric Haugen; Robert E. Thurman; Audra K. Johnson; Eric Rynes; Matthew T. Maurano; Jeff Vierstra; Sean Thomas; Richard Sandstrom; Richard Humbert; John A. Stamatoyannopoulos

UNLABELLED The large and growing number of genome-wide datasets highlights the need for high-performance feature analysis and data comparison methods, in addition to efficient data storage and retrieval techniques. We introduce BEDOPS, a software suite for common genomic analysis tasks which offers improved flexibility, scalability and execution time characteristics over previously published packages. The suite includes a utility to compress large inputs into a lossless format that can provide greater space savings and faster data extractions than alternatives. AVAILABILITY http://code.google.com/p/bedops/ includes binaries, source and documentation.


Cell | 2013

Developmental Fate and Cellular Maturity Encoded in Human Regulatory DNA Landscapes

Andrew B. Stergachis; Shane Neph; Alex Reynolds; Richard Humbert; Brady Miller; Sharon L. Paige; Benjamin Vernot; Jeffrey B. Cheng; Robert E. Thurman; Richard Sandstrom; Eric Haugen; Shelly Heimfeld; Charles E. Murry; Joshua M. Akey; John A. Stamatoyannopoulos

Cellular-state information between generations of developing cells may be propagated via regulatory regions. We report consistent patterns of gain and loss of DNase I-hypersensitive sites (DHSs) as cells progress from embryonic stem cells (ESCs) to terminal fates. DHS patterns alone convey rich information about cell fate and lineage relationships distinct from information conveyed by gene expression. Developing cells share a proportion of their DHS landscapes with ESCs; that proportion decreases continuously in each cell type as differentiation progresses, providing a quantitative benchmark of developmental maturity. Developmentally stable DHSs densely encode binding sites for transcription factors involved in autoregulatory feedback circuits. In contrast to normal cells, cancer cells extensively reactivate silenced ESC DHSs and those from developmental programs external to the cell lineage from which the malignancy derives. Our results point to changes in regulatory DNA landscapes as quantitative indicators of cell-fate transitions, lineage relationships, and dysfunction.


Nature | 2015

Cell-of-origin chromatin organization shapes the mutational landscape of cancer

Paz Polak; Rosa Karlic; Amnon Koren; Robert E. Thurman; Richard Sandstrom; Michael S. Lawrence; Alex Reynolds; Eric Rynes; Kristian Vlahoviček; John A. Stamatoyannopoulos; Shamil R. Sunyaev

Cancer is a disease potentiated by mutations in somatic cells. Cancer mutations are not distributed uniformly along the human genome. Instead, different human genomic regions vary by up to fivefold in the local density of cancer somatic mutations, posing a fundamental problem for statistical methods used in cancer genomics. Epigenomic organization has been proposed as a major determinant of the cancer mutational landscape. However, both somatic mutagenesis and epigenomic features are highly cell-type-specific. We investigated the distribution of mutations in multiple independent samples of diverse cancer types and compared them to cell-type-specific epigenomic features. Here we show that chromatin accessibility and modification, together with replication timing, explain up to 86% of the variance in mutation rates along cancer genomes. The best predictors of local somatic mutation density are epigenomic features derived from the most likely cell type of origin of the corresponding malignancy. Moreover, we find that cell-of-origin chromatin features are much stronger determinants of cancer mutation profiles than chromatin features of matched cancer cell lines. Furthermore, we show that the cell type of origin of a cancer can be accurately determined based on the distribution of mutations along its genome. Thus, the DNA sequence of a cancer genome encompasses a wealth of information about the identity and epigenomic features of its cell of origin.


Science | 2013

Exonic Transcription Factor Binding Directs Codon Choice and Affects Protein Evolution

Andrew B. Stergachis; Eric Haugen; Anthony Shafer; Wenqing Fu; Benjamin Vernot; Alex Reynolds; Anthony Raubitschek; Steven F. Ziegler; Emily LeProust; Joshua M. Akey; John A. Stamatoyannopoulos

Transcription Factor Binding Sites Transcription factors (TFs) are proteins that bind to DNA to control gene transcription. Stergachis et al. (p. 1367; see the Perspective by Weatheritt and Babu) examined TF binding within the human genome in more than 80 cell types. Nearly 15% of coding regions simultaneously specify both amino acid sequence and TF recognition sites. The distribution of the TF binding sites evolutionarily constrains how codons within these regions can change, independent of encoded protein function. Thus, TF binding may represent a widespread and strong evolutionary force in coding regions. Transcription factor binding within protein-coding regions of DNA constrains how the protein can evolve. [Also see Perspective by Weatheritt and Babu] Genomes contain both a genetic code specifying amino acids and a regulatory code specifying transcription factor (TF) recognition sequences. We used genomic deoxyribonuclease I footprinting to map nucleotide resolution TF occupancy across the human exome in 81 diverse cell types. We found that ~15% of human codons are dual-use codons (“duons”) that simultaneously specify both amino acids and TF recognition sites. Duons are highly conserved and have shaped protein evolution, and TF-imposed constraint appears to be a major driver of codon usage bias. Conversely, the regulatory code has been selectively depleted of TFs that recognize stop codons. More than 17% of single-nucleotide variants within duons directly alter TF binding. Pervasive dual encoding of amino acid and regulatory information appears to be a fundamental feature of genome evolution.


JAMA | 2016

US Spending on Personal Health Care and Public Health, 1996-2013

Joseph L. Dieleman; Ranju Baral; Maxwell Birger; Anthony L. Bui; Anne Bulchis; Abigail Chapin; Hannah Hamavid; Cody Horst; Elizabeth K. Johnson; Jonathan Joseph; Rouselle F. Lavado; Liya Lomsadze; Alex Reynolds; Ellen Squires; Madeline Campbell; Brendan DeCenso; Daniel Dicker; Abraham D. Flaxman; Rose Gabert; Tina Highfill; Mohsen Naghavi; Noelle Nightingale; Tara Templin; Martin Tobias; Theo Vos; Christopher J. L. Murray

Importance US health care spending has continued to increase, and now accounts for more than 17% of the US economy. Despite the size and growth of this spending, little is known about how spending on each condition varies by age and across time. Objective To systematically and comprehensively estimate US spending on personal health care and public health, according to condition, age and sex group, and type of care. Design and Setting Government budgets, insurance claims, facility surveys, household surveys, and official US records from 1996 through 2013 were collected and combined. In total, 183 sources of data were used to estimate spending for 155 conditions (including cancer, which was disaggregated into 29 conditions). For each record, spending was extracted, along with the age and sex of the patient, and the type of care. Spending was adjusted to reflect the health condition treated, rather than the primary diagnosis. Exposures Encounter with US health care system. Main Outcomes and Measures National spending estimates stratified by condition, age and sex group, and type of care. Results From 1996 through 2013,

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Shane Neph

University of Washington

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Eric Haugen

University of Washington

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Jeff Vierstra

University of Washington

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Peter J. Sabo

University of Washington

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Eric Rynes

University of Washington

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