Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Valur Emilsson is active.

Publication


Featured researches published by Valur Emilsson.


Nature Genetics | 2006

Variant of transcription factor 7-like 2 (TCF7L2) gene confers risk of type 2 diabetes

Struan F. A. Grant; Gudmar Thorleifsson; Inga Reynisdottir; Rafil Benediktsson; Andrei Manolescu; Jesus Sainz; Agnar Helgason; Hreinn Stefansson; Valur Emilsson; Anna Helgadottir; Unnur Styrkarsdottir; Kristinn P. Magnusson; G. Bragi Walters; Ebba Palsdottir; Thorbjorg Jonsdottir; Thorunn Gudmundsdottir; Arnaldur Gylfason; Jona Saemundsdottir; Robert L. Wilensky; Muredach P. Reilly; Daniel J. Rader; Yu Z. Bagger; Claus Christiansen; Vilmundur Gudnason; Gunnar Sigurdsson; Unnur Thorsteinsdottir; Jeffrey R. Gulcher; Augustine Kong; Kari Stefansson

We have previously reported suggestive linkage of type 2 diabetes mellitus to chromosome 10q. We genotyped 228 microsatellite markers in Icelandic individuals with type 2 diabetes and controls throughout a 10.5-Mb interval on 10q. A microsatellite, DG10S478, within intron 3 of the transcription factor 7–like 2 gene (TCF7L2; formerly TCF4) was associated with type 2 diabetes (P = 2.1 × 10−9). This was replicated in a Danish cohort (P = 4.8 × 10−3) and in a US cohort (P = 3.3 × 10−9). Compared with non-carriers, heterozygous and homozygous carriers of the at-risk alleles (38% and 7% of the population, respectively) have relative risks of 1.45 and 2.41. This corresponds to a population attributable risk of 21%. The TCF7L2 gene product is a high mobility group box–containing transcription factor previously implicated in blood glucose homeostasis. It is thought to act through regulation of proglucagon gene expression in enteroendocrine cells via the Wnt signaling pathway.


Nature | 2008

Genetics of gene expression and its effect on disease.

Valur Emilsson; Gudmar Thorleifsson; Bin Zhang; Amy Leonardson; Florian Zink; Jun Zhu; Sonia Carlson; Agnar Helgason; G. Bragi Walters; Steinunn Gunnarsdottir; Magali Mouy; Valgerdur Steinthorsdottir; Gudrun H. Eiriksdottir; Gyda Bjornsdottir; Inga Reynisdottir; Daniel F. Gudbjartsson; Anna Helgadottir; Aslaug Jonasdottir; Adalbjorg Jonasdottir; Unnur Styrkarsdottir; Solveig Gretarsdottir; Kristinn P. Magnusson; Hreinn Stefansson; Ragnheidur Fossdal; Kristleifur Kristjansson; Hjörtur Gislason; Tryggvi Stefansson; Björn Geir Leifsson; Unnur Thorsteinsdottir; John Lamb

Common human diseases result from the interplay of many genes and environmental factors. Therefore, a more integrative biology approach is needed to unravel the complexity and causes of such diseases. To elucidate the complexity of common human diseases such as obesity, we have analysed the expression of 23,720 transcripts in large population-based blood and adipose tissue cohorts comprehensively assessed for various phenotypes, including traits related to clinical obesity. In contrast to the blood expression profiles, we observed a marked correlation between gene expression in adipose tissue and obesity-related traits. Genome-wide linkage and association mapping revealed a highly significant genetic component to gene expression traits, including a strong genetic effect of proximal (cis) signals, with 50% of the cis signals overlapping between the two tissues profiled. Here we demonstrate an extensive transcriptional network constructed from the human adipose data that exhibits significant overlap with similar network modules constructed from mouse adipose data. A core network module in humans and mice was identified that is enriched for genes involved in the inflammatory and immune response and has been found to be causally associated to obesity-related traits.


Nature Genetics | 2007

A variant in CDKAL1 influences insulin response and risk of type 2 diabetes.

Valgerdur Steinthorsdottir; Gudmar Thorleifsson; Inga Reynisdottir; Rafn Benediktsson; Thorbjorg Jonsdottir; G. Bragi Walters; Unnur Styrkarsdottir; Solveig Gretarsdottir; Valur Emilsson; Shyamali Ghosh; Adam Baker; Steinunn Snorradottir; Hjordis Bjarnason; Maggie C.Y. Ng; Torben Hansen; Yu Z. Bagger; Robert L. Wilensky; Muredach P. Reilly; Adebowale Adeyemo; Yuanxiu Chen; Jie Zhou; Vilmundur Gudnason; Guanjie Chen; Hanxia Huang; Kerrie Lashley; Ayo Doumatey; Wing Yee So; Ronald Cw Ma; Gitte Andersen; Knut Borch-Johnsen

We conducted a genome-wide association study for type 2 diabetes (T2D) in Icelandic cases and controls, and we found that a previously described variant in the transcription factor 7-like 2 gene (TCF7L2) gene conferred the most significant risk. In addition to confirming two recently identified risk variants, we identified a variant in the CDKAL1 gene that was associated with T2D in individuals of European ancestry (allele-specific odds ratio (OR) = 1.20 (95% confidence interval, 1.13–1.27), P = 7.7 × 10−9) and individuals from Hong Kong of Han Chinese ancestry (OR = 1.25 (1.11–1.40), P = 0.00018). The genotype OR of this variant suggested that the effect was substantially stronger in homozygous carriers than in heterozygous carriers. The ORs for homozygotes were 1.50 (1.31–1.72) and 1.55 (1.23–1.95) in the European and Hong Kong groups, respectively. The insulin response for homozygotes was approximately 20% lower than for heterozygotes or noncarriers, suggesting that this variant confers risk of T2D through reduced insulin secretion.


Nature | 2008

Variations in DNA elucidate molecular networks that cause disease

Yanqing Chen; Jun Zhu; Pek Yee Lum; Xia Yang; Shirly Pinto; Douglas J. MacNeil; Chunsheng Zhang; John Lamb; Stephen Edwards; Solveig K. Sieberts; Amy Leonardson; Lawrence W. Castellini; Susanna Wang; Marie-France Champy; Bin Zhang; Valur Emilsson; Sudheer Doss; Anatole Ghazalpour; Steve Horvath; Thomas A. Drake; Aldons J. Lusis; Eric E. Schadt

Identifying variations in DNA that increase susceptibility to disease is one of the primary aims of genetic studies using a forward genetics approach. However, identification of disease-susceptibility genes by means of such studies provides limited functional information on how genes lead to disease. In fact, in most cases there is an absence of functional information altogether, preventing a definitive identification of the susceptibility gene or genes. Here we develop an alternative to the classic forward genetics approach for dissecting complex disease traits where, instead of identifying susceptibility genes directly affected by variations in DNA, we identify gene networks that are perturbed by susceptibility loci and that in turn lead to disease. Application of this method to liver and adipose gene expression data generated from a segregating mouse population results in the identification of a macrophage-enriched network supported as having a causal relationship with disease traits associated with metabolic syndrome. Three genes in this network, lipoprotein lipase (Lpl), lactamase β (Lactb) and protein phosphatase 1-like (Ppm1l), are validated as previously unknown obesity genes, strengthening the association between this network and metabolic disease traits. Our analysis provides direct experimental support that complex traits such as obesity are emergent properties of molecular networks that are modulated by complex genetic loci and environmental factors.


Cell | 2013

Integrated systems approach identifies genetic nodes and networks in late-onset Alzheimer's disease.

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.


Nature Genetics | 2007

Refining the impact of TCF7L2 gene variants on type 2 diabetes and adaptive evolution

Agnar Helgason; Snæbjörn Pálsson; Gudmar Thorleifsson; Struan F. A. Grant; Valur Emilsson; Steinunn Gunnarsdottir; Adebowale Adeyemo; Yuanxiu Chen; Guanjie Chen; Inga Reynisdottir; Rafn Benediktsson; Anke Hinney; Torben Hansen; Gitte Andersen; Knut Borch-Johnsen; Torben Jørgensen; Helmut Schäfer; Mezbah U. Faruque; Ayo Doumatey; Jie Zhou; Robert L. Wilensky; Muredach P. Reilly; Daniel J. Rader; Yu Z. Bagger; Claus Christiansen; Gunnar Sigurdsson; Johannes Hebebrand; Oluf Pedersen; Unnur Thorsteinsdottir; Jeffrey R. Gulcher

We recently described an association between risk of type 2diabetes and variants in the transcription factor 7-like 2 gene (TCF7L2; formerly TCF4), with a population attributable risk (PAR) of 17%–28% in three populations of European ancestry. Here, we refine the definition of the TCF7L2 type 2diabetes risk variant, HapBT2D, to the ancestral T allele of a SNP, rs7903146, through replication in West African and Danish type 2 diabetes case-control studies and an expanded Icelandic study. We also identify another variant of the same gene, HapA, that shows evidence of positive selection in East Asian, European and West African populations. Notably, HapA shows a suggestive association with body mass index and altered concentrations of the hunger-satiety hormones ghrelin and leptin in males, indicating that the selective advantage of HapA may have been mediated through effects on energy metabolism.


American Journal of Human Genetics | 2003

Localization of a susceptibility gene for type 2 diabetes to chromosome 5q34-q35.2.

Inga Reynisdottir; Gudmar Thorleifsson; Rafn Benediktsson; Gunnar Sigurdsson; Valur Emilsson; Anna S. Einarsdóttir; Eyrun Edda Hjorleifsdottir; Gudbjorg Orlygsdottir; Gudrun Thora Bjornsdottir; Jona Saemundsdottir; Skarphedinn Halldorsson; Soffía M. Hrafnkelsdóttir; Steinunn Bjorg Sigurjonsdottir; Svana Steinsdottir; Mitchell Martin; Jarema Peter Kochan; Brian Rhees; Struan F. A. Grant; Michael L. Frigge; Augustine Kong; Vilmundur Gudnason; Kari Stefansson; Jeffrey R. Gulcher

We report a genomewide linkage study of type 2 diabetes (T2D [MIM 125853]) in the Icelandic population. A list of type 2 diabetics was cross-matched with a computerized genealogical database clustering 763 type 2 diabetics into 227 families. The diabetic patients and their relatives were genotyped with 906 microsatellite markers. A nonparametric multipoint linkage analysis yielded linkage to 5q34-q35.2 (LOD = 2.90, P=1.29 x 10(-4)) in all diabetics. Since obesity, here defined as body mass index (BMI) > or =30 kg/m(2), is a key risk factor for the development of T2D, we studied the data either independently of BMI or by stratifying the patient group as obese (BMI > or =30) or nonobese (BMI <30). A nonparametric multipoint linkage analysis yielded linkage to 5q34-q35.2 (LOD = 3.64, P=2.12 x (10)-5) in the nonobese diabetics. No linkage was observed in this region for the obese diabetics. Linkage analysis conditioning on maternal transmission to the nonobese diabetics resulted in a LOD score of 3.48 (P=3.12 x 10(-5)) in the same region, whereas conditioning on paternal transmission led to a substantial drop in the LOD score. Finally, we observed potential interactions between the 5q locus and two T2D susceptibility loci, previously mapped in other populations.


PLOS Genetics | 2005

The Association of a SNP Upstream of INSIG2 with Body Mass Index is Reproduced in Several but Not All Cohorts

Helen N. Lyon; Valur Emilsson; Anke Hinney; Iris M. Heid; Jessica Lasky-Su; Xiaofeng Zhu; Gudmar Thorleifsson; Steinunn Gunnarsdottir; G. Bragi Walters; Unnur Thorsteinsdottir; Augustine Kong; Jeffrey R. Gulcher; Thuy Trang Nguyen; André Scherag; Arne Pfeufer; Thomas Meitinger; Günter Brönner; Winfried Rief; Manuel Soto-Quiros; Lydiana Avila; Barbara J. Klanderman; Benjamin A. Raby; Edwin K. Silverman; Scott T. Weiss; Nan M. Laird; Xiao Ding; Leif Groop; Tiinamaija Tuomi; Bo Isomaa; Kristina Bengtsson

A SNP upstream of the INSIG2 gene, rs7566605, was recently found to be associated with obesity as measured by body mass index (BMI) by Herbert and colleagues. The association between increased BMI and homozygosity for the minor allele was first observed in data from a genome-wide association scan of 86,604 SNPs in 923 related individuals from the Framingham Heart Study offspring cohort. The association was reproduced in four additional cohorts, but was not seen in a fifth cohort. To further assess the general reproducibility of this association, we genotyped rs7566605 in nine large cohorts from eight populations across multiple ethnicities (total n = 16,969). We tested this variant for association with BMI in each sample under a recessive model using family-based, population-based, and case-control designs. We observed a significant (p < 0.05) association in five cohorts but saw no association in three other cohorts. There was variability in the strength of association evidence across examination cycles in longitudinal data from unrelated individuals in the Framingham Heart Study Offspring cohort. A combined analysis revealed significant independent validation of this association in both unrelated (p = 0.046) and family-based (p = 0.004) samples. The estimated risk conferred by this allele is small, and could easily be masked by small sample size, population stratification, or other confounders. These validation studies suggest that the original association is less likely to be spurious, but the failure to observe an association in every data set suggests that the effect of SNP rs7566605 on BMI may be heterogeneous across population samples.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Common genetic variants associated with cognitive performance identified using the proxy-phenotype method

Cornelius A. Rietveld; Tonu Esko; Gail Davies; Tune H. Pers; Patrick Turley; Beben Benyamin; Christopher F. Chabris; Valur Emilsson; Andrew D. Johnson; James J. Lee; Christiaan de Leeuw; Riccardo E. Marioni; Sarah E. Medland; Michael B. Miller; Olga Rostapshova; Sven J. van der Lee; Anna A. E. Vinkhuyzen; Najaf Amin; Dalton Conley; Jaime Derringer; Cornelia M. van Duijn; Rudolf S. N. Fehrmann; Lude Franke; Edward L. Glaeser; Narelle K. Hansell; Caroline Hayward; William G. Iacono; Carla A. Ibrahim-Verbaas; Vincent W. V. Jaddoe; Juha Karjalainen

Significance We identify several common genetic variants associated with cognitive performance using a two-stage approach: we conduct a genome-wide association study of educational attainment to generate a set of candidates, and then we estimate the association of these variants with cognitive performance. In older Americans, we find that these variants are jointly associated with cognitive health. Bioinformatics analyses implicate a set of genes that is associated with a particular neurotransmitter pathway involved in synaptic plasticity, the main cellular mechanism for learning and memory. In addition to the substantive contribution, this work also serves to show a proxy-phenotype approach to discovering common genetic variants that is likely to be useful for many phenotypes of interest to social scientists (such as personality traits). We identify common genetic variants associated with cognitive performance using a two-stage approach, which we call the proxy-phenotype method. First, we conduct a genome-wide association study of educational attainment in a large sample (n = 106,736), which produces a set of 69 education-associated SNPs. Second, using independent samples (n = 24,189), we measure the association of these education-associated SNPs with cognitive performance. Three SNPs (rs1487441, rs7923609, and rs2721173) are significantly associated with cognitive performance after correction for multiple hypothesis testing. In an independent sample of older Americans (n = 8,652), we also show that a polygenic score derived from the education-associated SNPs is associated with memory and absence of dementia. Convergent evidence from a set of bioinformatics analyses implicates four specific genes (KNCMA1, NRXN1, POU2F3, and SCRT). All of these genes are associated with a particular neurotransmitter pathway involved in synaptic plasticity, the main cellular mechanism for learning and memory.


The American Journal of Clinical Nutrition | 2013

Genome-wide meta-analysis of observational studies shows common genetic variants associated with macronutrient intake

Toshiko Tanaka; Julius S. Ngwa; Frank J. A. van Rooij; M. Carola Zillikens; Mary K. Wojczynski; Alexis C. Frazier-Wood; Denise K. Houston; Stavroula Kanoni; Rozenn N. Lemaitre; Jian'an Luan; Vera Mikkilä; Frida Renström; Emily Sonestedt; Jing Hua Zhao; Audrey Y. Chu; Lu Qi; Daniel I. Chasman; Marcia C. de Oliveira Otto; Emily J. Dhurandhar; Mary F. Feitosa; Ingegerd Johansson; Kay-Tee Khaw; Kurt Lohman; Ani Manichaikul; Nicola M. McKeown; Dariush Mozaffarian; Andrew Singleton; Kathleen Stirrups; Jorma Viikari; Zheng Ye

Background: Macronutrient intake varies substantially between individuals, and there is evidence that this variation is partly accounted for by genetic variants. Objective: The objective of the study was to identify common genetic variants that are associated with macronutrient intake. Design: We performed 2-stage genome-wide association (GWA) meta-analysis of macronutrient intake in populations of European descent. Macronutrients were assessed by using food-frequency questionnaires and analyzed as percentages of total energy consumption from total fat, protein, and carbohydrate. From the discovery GWA (n = 38,360), 35 independent loci associated with macronutrient intake at P < 5 × 10−6 were identified and taken forward to replication in 3 additional cohorts (n = 33,533) from the DietGen Consortium. For one locus, fat mass obesity-associated protein (FTO), cohorts with Illumina MetaboChip genotype data (n = 7724) provided additional replication data. Results: A variant in the chromosome 19 locus (rs838145) was associated with higher carbohydrate (β ± SE: 0.25 ± 0.04%; P = 1.68 × 10−8) and lower fat (β ± SE: −0.21 ± 0.04%; P = 1.57 × 10−9) consumption. A candidate gene in this region, fibroblast growth factor 21 (FGF21), encodes a fibroblast growth factor involved in glucose and lipid metabolism. The variants in this locus were associated with circulating FGF21 protein concentrations (P < 0.05) but not mRNA concentrations in blood or brain. The body mass index (BMI)–increasing allele of the FTO variant (rs1421085) was associated with higher protein intake (β ± SE: 0.10 ± 0.02%; P = 9.96 × 10−10), independent of BMI (after adjustment for BMI, β ± SE: 0.08 ± 0.02%; P = 3.15 × 10−7). Conclusion: Our results indicate that variants in genes involved in nutrient metabolism and obesity are associated with macronutrient consumption in humans. Trials related to this study were registered at clinicaltrials.gov as NCT00005131 (Atherosclerosis Risk in Communities), NCT00005133 (Cardiovascular Health Study), NCT00005136 (Family Heart Study), NCT00005121 (Framingham Heart Study), NCT00083369 (Genetic and Environmental Determinants of Triglycerides), NCT01331512 (InCHIANTI Study), and NCT00005487 (Multi-Ethnic Study of Atherosclerosis).

Collaboration


Dive into the Valur Emilsson's collaboration.

Top Co-Authors

Avatar

Eric E. Schadt

Icahn School of Medicine at Mount Sinai

View shared research outputs
Top Co-Authors

Avatar

John Lamb

Genomics Institute of the Novartis Research Foundation

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Jun Zhu

Icahn School of Medicine at Mount Sinai

View shared research outputs
Top Co-Authors

Avatar

Bin Zhang

Icahn School of Medicine at Mount Sinai

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge