Christine Suver
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Featured researches published by Christine Suver.
PLOS Biology | 2008
Eric E. Schadt; Cliona Molony; Eugene Chudin; Ke-Ke Hao; Xia Yang; Pek Yee Lum; Andrew Kasarskis; Bin Zhang; Susanna Wang; Christine Suver; Jun Zhu; Joshua Millstein; Solveig K. Sieberts; John Lamb; Debraj GuhaThakurta; Jonathan Derry; John D. Storey; Iliana Avila-Campillo; Mark Kruger; Jason M. Johnson; Carol A. Rohl; Atila van Nas; Margarete Mehrabian; Thomas A. Drake; Aldons J. Lusis; Ryan Smith; F. Peter Guengerich; Stephen C. Strom; Erin G. Schuetz; Thomas H. Rushmore
Genetic variants that are associated with common human diseases do not lead directly to disease, but instead act on intermediate, molecular phenotypes that in turn induce changes in higher-order disease traits. Therefore, identifying the molecular phenotypes that vary in response to changes in DNA and that also associate with changes in disease traits has the potential to provide the functional information required to not only identify and validate the susceptibility genes that are directly affected by changes in DNA, but also to understand the molecular networks in which such genes operate and how changes in these networks lead to changes in disease traits. Toward that end, we profiled more than 39,000 transcripts and we genotyped 782,476 unique single nucleotide polymorphisms (SNPs) in more than 400 human liver samples to characterize the genetic architecture of gene expression in the human liver, a metabolically active tissue that is important in a number of common human diseases, including obesity, diabetes, and atherosclerosis. This genome-wide association study of gene expression resulted in the detection of more than 6,000 associations between SNP genotypes and liver gene expression traits, where many of the corresponding genes identified have already been implicated in a number of human diseases. The utility of these data for elucidating the causes of common human diseases is demonstrated by integrating them with genotypic and expression data from other human and mouse populations. This provides much-needed functional support for the candidate susceptibility genes being identified at a growing number of genetic loci that have been identified as key drivers of disease from genome-wide association studies of disease. By using an integrative genomics approach, we highlight how the gene RPS26 and not ERBB3 is supported by our data as the most likely susceptibility gene for a novel type 1 diabetes locus recently identified in a large-scale, genome-wide association study. We also identify SORT1 and CELSR2 as candidate susceptibility genes for a locus recently associated with coronary artery disease and plasma low-density lipoprotein cholesterol levels in the process.
Cell | 2013
Bin Zhang; Chris Gaiteri; Liviu-Gabriel Bodea; Zhi Wang; Joshua McElwee; Alexei Podtelezhnikov; Chunsheng Zhang; Tao Xie; Linh Tran; Radu Dobrin; Eugene M. Fluder; Bruce E. Clurman; Stacey Melquist; Manikandan Narayanan; Christine Suver; Hardik Shah; Milind Mahajan; Tammy Gillis; Jayalakshmi S. Mysore; Marcy E. MacDonald; John Lamb; David A. Bennett; Cliona Molony; David J. Stone; Vilmundur Gudnason; Amanda J. Myers; Eric E. Schadt; Harald Neumann; Jun Zhu; Valur Emilsson
The genetics of complex disease produce alterations in the molecular interactions of cellular pathways whose collective effect may become clear through the organized structure of molecular networks. To characterize molecular systems associated with late-onset Alzheimers disease (LOAD), we constructed gene-regulatory networks in 1,647 postmortem brain tissues from LOAD patients and nondemented subjects, and we demonstrate that LOAD reconfigures specific portions of the molecular interaction structure. Through an integrative network-based approach, we rank-ordered these network structures for relevance to LOAD pathology, highlighting an immune- and microglia-specific module that is dominated by genes involved in pathogen phagocytosis, contains TYROBP as a key regulator, and is upregulated in LOAD. Mouse microglia cells overexpressing intact or truncated TYROBP revealed expression changes that significantly overlapped the human brain TYROBP network. Thus the causal network structure is a useful predictor of response to gene perturbations and presents a framework to test models of disease mechanisms underlying LOAD.
PLOS Genetics | 2012
Ke Hao; Yohan Bossé; David C. Nickle; Peter D. Paré; Dirkje S. Postma; Michel Laviolette; Andrew J. Sandford; Tillie L. Hackett; Denise Daley; James C. Hogg; W. Mark Elliott; Christian Couture; Maxime Lamontagne; Corry-Anke Brandsma; Maarten van den Berge; Gerard H. Koppelman; Alise Reicin; Donald W. Nicholson; Vladislav Malkov; Jonathan Derry; Christine Suver; Jeffrey A. Tsou; Amit Kulkarni; Chunsheng Zhang; Rupert Vessey; Greg J. Opiteck; Sean P. Curtis; Wim Timens; Don D. Sin
Genome-wide association studies (GWAS) have identified loci reproducibly associated with pulmonary diseases; however, the molecular mechanism underlying these associations are largely unknown. The objectives of this study were to discover genetic variants affecting gene expression in human lung tissue, to refine susceptibility loci for asthma identified in GWAS studies, and to use the genetics of gene expression and network analyses to find key molecular drivers of asthma. We performed a genome-wide search for expression quantitative trait loci (eQTL) in 1,111 human lung samples. The lung eQTL dataset was then used to inform asthma genetic studies reported in the literature. The top ranked lung eQTLs were integrated with the GWAS on asthma reported by the GABRIEL consortium to generate a Bayesian gene expression network for discovery of novel molecular pathways underpinning asthma. We detected 17,178 cis- and 593 trans- lung eQTLs, which can be used to explore the functional consequences of loci associated with lung diseases and traits. Some strong eQTLs are also asthma susceptibility loci. For example, rs3859192 on chr17q21 is robustly associated with the mRNA levels of GSDMA (P = 3.55×10−151). The genetic-gene expression network identified the SOCS3 pathway as one of the key drivers of asthma. The eQTLs and gene networks identified in this study are powerful tools for elucidating the causal mechanisms underlying pulmonary disease. This data resource offers much-needed support to pinpoint the causal genes and characterize the molecular function of gene variants associated with lung diseases.
Genome Research | 2010
Xia Yang; Bin Zhang; Cliona Molony; Eugene Chudin; Ke Hao; Jun Zhu; Andrea Gaedigk; Christine Suver; Hua Zhong; J. Steven Leeder; F. Peter Guengerich; Stephen C. Strom; Erin G. Schuetz; Thomas H. Rushmore; Roger G. Ulrich; J. Greg Slatter; Eric E. Schadt; Andrew Kasarskis; Pek Yee Lum
Liver cytochrome P450s (P450s) play critical roles in drug metabolism, toxicology, and metabolic processes. Despite rapid progress in the understanding of these enzymes, a systematic investigation of the full spectrum of functionality of individual P450s, the interrelationship or networks connecting them, and the genetic control of each gene/enzyme is lacking. To this end, we genotyped, expression-profiled, and measured P450 activities of 466 human liver samples and applied a systems biology approach via the integration of genetics, gene expression, and enzyme activity measurements. We found that most P450s were positively correlated among themselves and were highly correlated with known regulators as well as thousands of other genes enriched for pathways relevant to the metabolism of drugs, fatty acids, amino acids, and steroids. Genome-wide association analyses between genetic polymorphisms and P450 expression or enzyme activities revealed sets of SNPs associated with P450 traits, and suggested the existence of both cis-regulation of P450 expression (especially for CYP2D6) and more complex trans-regulation of P450 activity. Several novel SNPs associated with CYP2D6 expression and enzyme activity were validated in an independent human cohort. By constructing a weighted coexpression network and a Bayesian regulatory network, we defined the human liver transcriptional network structure, uncovered subnetworks representative of the P450 regulatory system, and identified novel candidate regulatory genes, namely, EHHADH, SLC10A1, and AKR1D1. The P450 subnetworks were then validated using gene signatures responsive to ligands of known P450 regulators in mouse and rat. This systematic survey provides a comprehensive view of the functionality, genetic control, and interactions of P450s.
Genome Research | 2011
Danielle M. Greenawalt; Radu Dobrin; Eugene Chudin; Ida J. Hatoum; Christine Suver; John Beaulaurier; Bin Zhang; Victor M. Castro; Jun Zhu; Solveig K. Sieberts; Susanna Wang; Cliona Molony; Steven B. Heymsfield; Daniel M. Kemp; Marc L. Reitman; Pek Yee Lum; Eric E. Schadt; Lee M. Kaplan
To map the genetics of gene expression in metabolically relevant tissues and investigate the diversity of expression SNPs (eSNPs) in multiple tissues from the same individual, we collected four tissues from approximately 1000 patients undergoing Roux-en-Y gastric bypass (RYGB) and clinical traits associated with their weight loss and co-morbidities. We then performed high-throughput genotyping and gene expression profiling and carried out a genome-wide association analyses for more than 100,000 gene expression traits representing four metabolically relevant tissues: liver, omental adipose, subcutaneous adipose, and stomach. We successfully identified 24,531 eSNPs corresponding to about 10,000 distinct genes. This represents the greatest number of eSNPs identified to our knowledge by any study to date and the first study to identify eSNPs from stomach tissue. We then demonstrate how these eSNPs provide a high-quality disease map for each tissue in morbidly obese patients to not only inform genetic associations identified in this cohort, but in previously published genome-wide association studies as well. These data can aid in elucidating the key networks associated with morbid obesity, response to RYGB, and disease as a whole.
Human Molecular Genetics | 2009
Chris Cotsapas; Elizabeth K. Speliotes; Ida J. Hatoum; Danielle M. Greenawalt; Radu Dobrin; Pek Yee Lum; Christine Suver; Eugene Chudin; Daniel M. Kemp; Marc L. Reitman; Benjamin F. Voight; Benjamin M. Neale; Eric E. Schadt; Joel N. Hirschhorn; Lee M. Kaplan; Mark J. Daly
To investigate the genetic architecture of severe obesity, we performed a genome-wide association study of 775 cases and 3197 unascertained controls at approximately 550,000 markers across the autosomal genome. We found convincing association to the previously described locus including the FTO gene. We also found evidence of association at a further six of 12 other loci previously reported to influence body mass index (BMI) in the general population and one of three associations to severe childhood and adult obesity and that cases have a higher proportion of risk-conferring alleles than controls. We found no evidence of homozygosity at any locus due to identity-by-descent associating with phenotype which would be indicative of rare, penetrant alleles, nor was there excess genome-wide homozygosity in cases relative to controls. Our results suggest that variants influencing BMI also contribute to severe obesity, a condition at the extreme of the phenotypic spectrum rather than a distinct condition.
Arteriosclerosis, Thrombosis, and Vascular Biology | 2013
Tianxiao Huan; Bin Zhang; Zhi Wang; Roby Joehanes; Jun Zhu; Andrew D. Johnson; Saixia Ying; Peter J. Munson; Nalini Raghavachari; Richard Wang; Poching Liu; Paul Courchesne; Shih-Jen Hwang; Themistocles L. Assimes; Ruth McPherson; Nilesh J. Samani; Heribert Schunkert; Qingying Meng; Christine Suver; Christopher J. O'Donnell; Jonathan Derry; Xia Yang; Daniel Levy
Objective—Genetic approaches have identified numerous loci associated with coronary heart disease (CHD). The molecular mechanisms underlying CHD gene–disease associations, however, remain unclear. We hypothesized that genetic variants with both strong and subtle effects drive gene subnetworks that in turn affect CHD. Approach and Results—We surveyed CHD-associated molecular interactions by constructing coexpression networks using whole blood gene expression profiles from 188 CHD cases and 188 age- and sex-matched controls. Twenty-four coexpression modules were identified, including 1 case-specific and 1 control-specific differential module (DM). The DMs were enriched for genes involved in B-cell activation, immune response, and ion transport. By integrating the DMs with gene expression–associated single-nucleotide polymorphisms and with results of genome-wide association studies of CHD and its risk factors, the control-specific DM was implicated as CHD causal based on its significant enrichment for both CHD and lipid expression–associated single-nucleotide polymorphisms. This causal DM was further integrated with tissue-specific Bayesian networks and protein–protein interaction networks to identify regulatory key driver genes. Multitissue key drivers (SPIB and TNFRSF13C) and tissue-specific key drivers (eg, EBF1) were identified. Conclusions—Our network-driven integrative analysis not only identified CHD-related genes, but also defined network structure that sheds light on the molecular interactions of genes associated with CHD risk.
Scientific Data | 2016
Brian M. Bot; Christine Suver; Elias Chaibub Neto; Michael R. Kellen; Arno Klein; Christopher Bare; Megan Doerr; Abhishek Pratap; John Wilbanks; E. Ray Dorsey; Stephen H. Friend; Andrew D. Trister
Current measures of health and disease are often insensitive, episodic, and subjective. Further, these measures generally are not designed to provide meaningful feedback to individuals. The impact of high-resolution activity data collected from mobile phones is only beginning to be explored. Here we present data from mPower, a clinical observational study about Parkinson disease conducted purely through an iPhone app interface. The study interrogated aspects of this movement disorder through surveys and frequent sensor-based recordings from participants with and without Parkinson disease. Benefitting from large enrollment and repeated measurements on many individuals, these data may help establish baseline variability of real-world activity measurement collected via mobile phones, and ultimately may lead to quantification of the ebbs-and-flows of Parkinson symptoms. App source code for these data collection modules are available through an open source license for use in studies of other conditions. We hope that releasing data contributed by engaged research participants will seed a new community of analysts working collaboratively on understanding mobile health data to advance human health.
Molecular Systems Biology | 2014
Manikandan Narayanan; Jimmy Huynh; Kai Wang; Xia Yang; Seungyeul Yoo; Joshua McElwee; Bin Zhang; Chunsheng Zhang; John Lamb; Tao Xie; Christine Suver; Cliona Molony; Stacey Melquist; Andrew D. Johnson; Guoping Fan; David J. Stone; Eric E. Schadt; Patrizia Casaccia; Valur Emilsson; Jun Zhu
Using expression profiles from postmortem prefrontal cortex samples of 624 dementia patients and non‐demented controls, we investigated global disruptions in the co‐regulation of genes in two neurodegenerative diseases, late‐onset Alzheimers disease (AD) and Huntingtons disease (HD). We identified networks of differentially co‐expressed (DC) gene pairs that either gained or lost correlation in disease cases relative to the control group, with the former dominant for both AD and HD and both patterns replicating in independent human cohorts of AD and aging. When aligning networks of DC patterns and physical interactions, we identified a 242‐gene subnetwork enriched for independent AD/HD signatures. This subnetwork revealed a surprising dichotomy of gained/lost correlations among two inter‐connected processes, chromatin organization and neural differentiation, and included DNA methyltransferases, DNMT1 and DNMT3A, of which we predicted the former but not latter as a key regulator. To validate the inter‐connection of these two processes and our key regulator prediction, we generated two brain‐specific knockout (KO) mice and show that Dnmt1 KO signature significantly overlaps with the subnetwork (P = 3.1 × 10−12), while Dnmt3a KO signature does not (P = 0.017).
Nature Genetics | 2012
Jonathan Derry; Lara M. Mangravite; Christine Suver; Matthew D. Furia; David Henderson; Xavier Schildwachter; Brian M. Bot; Jonathan Izant; Solveig K. Sieberts; Michael R. Kellen; Stephen H. Friend
1. The failure rate for drugs in clinical development is still startlingly high despite unprecedented investment in RD many compounds are shown to be safe and to engage the intended target but do not improve the primary indication. This failure stems from the simplistic ways in which we have historically studied potential drug targets for complex diseases and indicates a need for more innovative approaches to identify causal relationships between molecular entities and disease. Biology is rapidly changing and becoming a technology and data-intensive science with the development of new instrumentation to measure various molecular states in greater detail. Herein lays an opportunity to transform our understanding of the molecular underpinnings of disease and develop modeling frameworks that can describe complex systems and predict their behavior. Without these models acting as maps, biologists risk drowning in an ever-growing sea of data. This vision for biology, to use large-scale data to model disease, reflects parallel developments in other scientific disciplines: for example, modeling future trends in climate based on complex meteorological information in atmospheric science. The term fourth paradigm has been coined for this “data intensive” science discovery to distinguish it from empiric, theoretical and computational approaches 3