23 results on '"Suveges, D"'
Search Results
2. A novel variant in GLIS3 is associated with osteoarthritis
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Casalone, E., Tachmazidou, I., Zengini, E., Hatzikotoulas, K., Hackinger, S., Suveges, D., Steinberg, J., Rayner, N.W., Consortium, ArcoGEn, Wilkinson, J.M., Panoutsopoulou, K., and Zeggini, E.
- Abstract
Objectives Osteoarthritis (OA) is a complex disease, but its genetic aetiology remains poorly characterised. To identify novel susceptibility loci for OA, we carried out a genome-wide association study (GWAS) in individuals from the largest UK-based OA collections to date.\ud \ud Methods We carried out a discovery GWAS in 5414 OA individuals with knee and/or hip total joint replacement (TJR) and 9939 population-based controls. We followed-up prioritised variants in OA subjects from the interim release of the UK Biobank resource (up to 12 658 cases and 50 898 controls) and our lead finding in operated OA subjects from the full release of UK Biobank (17 894 cases and 89 470 controls). We investigated its functional implications in methylation, gene expression and proteomics data in primary chondrocytes from 12 pairs of intact and degraded cartilage samples from patients undergoing TJR.\ud \ud Results We detect a genome-wide significant association at rs10116772 with TJR (P=3.7×10−8; for allele A: OR (95% CI) 0.97 (0.96 to 0.98)), an intronic variant in GLIS3, which is expressed in cartilage. Variants in strong correlation with rs10116772 have been associated with elevated plasma glucose levels and diabetes.\ud \ud Conclusions We identify a novel susceptibility locus for OA that has been previously implicated in diabetes and glycaemic traits.
- Published
- 2018
3. Genome-wide analyses using UK Biobank data provide insights into the genetic architecture of osteoarthritis
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Zengini, E. Hatzikotoulas, K. Tachmazidou, I. Steinberg, J. Hartwig, F.P. Southam, L. Hackinger, S. Boer, C.G. Styrkarsdottir, U. Gilly, A. Suveges, D. Killian, B. Ingvarsson, T. Jonsson, H. Babis, G.C. McCaskie, A. Uitterlinden, A.G. Van Meurs, J.B.J. Thorsteinsdottir, U. Stefansson, K. Davey Smith, G. Wilkinson, J.M. Zeggini, E.
- Abstract
Osteoarthritis is a common complex disease imposing a large public-health burden. Here, we performed a genome-wide association study for osteoarthritis, using data across 16.5 million variants from the UK Biobank resource. After performing replication and meta-analysis in up to 30,727 cases and 297,191 controls, we identified nine new osteoarthritis loci, in all of which the most likely causal variant was noncoding. For three loci, we detected association with biologically relevant radiographic endophenotypes, and in five signals we identified genes that were differentially expressed in degraded compared with intact articular cartilage from patients with osteoarthritis. We established causal effects on osteoarthritis for higher body mass index but not for triglyceride levels or genetic predisposition to type 2 diabetes. © 2018 The Author(s).
- Published
- 2018
4. Identification of five novel osteoarthritis susceptibility loci through the UK biobank resourse of five novel osteoarthritis susceptibility loci through the UK biobank resourse
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Zengini, E., primary, Hatzikotoulas, K., additional, Tachmazidou, I., additional, Hackinger, S., additional, Styrkarsdottir, U., additional, Suveges, D., additional, Killian, B., additional, Gilly, A., additional, Ingvarsson, T., additional, Jonsson, H., additional, Babis, G., additional, Thorsteinsdottir, U., additional, Stefansson, K., additional, Wilkinson, J.M., additional, and Zeggini, E., additional
- Published
- 2017
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5. Whole-Genome Sequencing Coupled to Imputation Discovers Genetic Signals for Anthropometric Traits
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Tachmazidou, I, Suveges, D, Min, JL, Ritchie, GRS, Steinberg, J, Walter, K, Iotchkova, V, Schwartzentruber, J, Huang, J, Memari, Y, McCarthy, S, Crawford, AA, Bombieri, C, Cocca, M, Farmaki, AE, Gaunt, TR, Jousilahti, P, Kooijman, Marjolein, Lehne, B, Malerba, G, Mannisto, S, Matchan, A, Medina Gomez, Maria, Metrustry, SJ, Nag, A, Ntalla, I, Paternoster, L, Rayner, NW, Sala, C, Scott, WR, Shihab, HA, Southam, L, St Pourcain, B, Traglia, M, Trajanoska, Katerina, Zaza, G, Zhang, WH, Artigas, MS, Bansal, N, Benn, M, Chen, ZS, Danecek, P, Lin, WY, Locke, A, Luan, JA, Manning, AK, Mulas, A, Sidore, C, Tybjaerg-Hansen, A, Varbo, A, Zoledziewska, M, Finan, C, Hatzikotoulas, K, Hendricks, AE, Kemp, JP, Moayyeri, A, Panoutsopoulou, K, Szpak, M, Wilson, SG, Boehnke, M, Cucca, F, Di Angelantonio, E, Langenberg, C, Lindgren, C, McCarthy, MI, Morris, AP, Nordestgaard, BG, Scott, RA, Tobin, MD, Wareham, NJ, Burton, P, Chambers, JC, Smith, GD, Dedoussis, G, Felix, Janine, Franco Duran, OH, Gambaro, G, Gasparini, P, Hammond, CJ, Hofman, Bert, Jaddoe, Vincent, Kleber, M, Kooner, JS, Perola, M, Relton, C, Ring, SM, Rivadeneira, Fernando, Salomaa, V, Spector, TD, Stegle, O, Toniolo, D, Uitterlinden, André, Barroso, I, Greenwood, CMT, Perry, JRB, Walker, BR, Butterworth, AS, Xue, YL, Durbin, R, Small, KS, Soranzo, N, Timpson, NJ, Zeggini, E, Tachmazidou, I, Suveges, D, Min, JL, Ritchie, GRS, Steinberg, J, Walter, K, Iotchkova, V, Schwartzentruber, J, Huang, J, Memari, Y, McCarthy, S, Crawford, AA, Bombieri, C, Cocca, M, Farmaki, AE, Gaunt, TR, Jousilahti, P, Kooijman, Marjolein, Lehne, B, Malerba, G, Mannisto, S, Matchan, A, Medina Gomez, Maria, Metrustry, SJ, Nag, A, Ntalla, I, Paternoster, L, Rayner, NW, Sala, C, Scott, WR, Shihab, HA, Southam, L, St Pourcain, B, Traglia, M, Trajanoska, Katerina, Zaza, G, Zhang, WH, Artigas, MS, Bansal, N, Benn, M, Chen, ZS, Danecek, P, Lin, WY, Locke, A, Luan, JA, Manning, AK, Mulas, A, Sidore, C, Tybjaerg-Hansen, A, Varbo, A, Zoledziewska, M, Finan, C, Hatzikotoulas, K, Hendricks, AE, Kemp, JP, Moayyeri, A, Panoutsopoulou, K, Szpak, M, Wilson, SG, Boehnke, M, Cucca, F, Di Angelantonio, E, Langenberg, C, Lindgren, C, McCarthy, MI, Morris, AP, Nordestgaard, BG, Scott, RA, Tobin, MD, Wareham, NJ, Burton, P, Chambers, JC, Smith, GD, Dedoussis, G, Felix, Janine, Franco Duran, OH, Gambaro, G, Gasparini, P, Hammond, CJ, Hofman, Bert, Jaddoe, Vincent, Kleber, M, Kooner, JS, Perola, M, Relton, C, Ring, SM, Rivadeneira, Fernando, Salomaa, V, Spector, TD, Stegle, O, Toniolo, D, Uitterlinden, André, Barroso, I, Greenwood, CMT, Perry, JRB, Walker, BR, Butterworth, AS, Xue, YL, Durbin, R, Small, KS, Soranzo, N, Timpson, NJ, and Zeggini, E
- Published
- 2017
6. Human dynein light chain (DYNLL2) in complex with an in vitro evolved peptide dimerized by leucine zipper
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Rapali, P., primary, Radnai, L., additional, Suveges, D., additional, Hetenyi, C., additional, Harmat, V., additional, Tolgyesi, F., additional, Wahlgren, W.Y., additional, Katona, G., additional, Nyitray, L., additional, and Pal, G., additional
- Published
- 2011
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7. Human dynein light chain (DYNLL2) in complex with an in vitro evolved peptide (Ac-SRGTQTE).
- Author
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Rapali, P., primary, Radnai, L., additional, Suveges, D., additional, Hetenyi, C., additional, Harmat, V., additional, Tolgyesi, F., additional, Wahlgren, W.Y., additional, Katona, G., additional, Nyitray, L., additional, and Pal, G., additional
- Published
- 2011
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8. Open Targets Platform: facilitating therapeutic hypotheses building in drug discovery.
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Buniello A, Suveges D, Cruz-Castillo C, Llinares MB, Cornu H, Lopez I, Tsukanov K, Roldán-Romero JM, Mehta C, Fumis L, McNeill G, Hayhurst JD, Martinez Osorio RE, Barkhordari E, Ferrer J, Carmona M, Uniyal P, Falaguera MJ, Rusina P, Smit I, Schwartzentruber J, Alegbe T, Ho VW, Considine D, Ge X, Szyszkowski S, Tsepilov Y, Ghoussaini M, Dunham I, Hulcoop DG, McDonagh EM, and Ochoa D
- Subjects
- Humans, Software, Knowledge Bases, Internet, Drug Discovery
- Abstract
The Open Targets Platform (https://platform.opentargets.org) is a unique, open-source, publicly-available knowledge base providing data and tooling for systematic drug target identification, annotation, and prioritisation. Since our last report, we have expanded the scope of the Platform through a number of significant enhancements and data updates, with the aim to enable our users to formulate more flexible and impactful therapeutic hypotheses. In this context, we have completely revamped our target-disease associations page with more interactive facets and built-in functionalities to empower users with additional control over their experience using the Platform, and added a new Target Prioritisation view. This enables users to prioritise targets based upon clinical precedence, tractability, doability and safety attributes. We have also implemented a direction of effect assessment for eight sources of target-disease association evidence, showing the effect of genetic variation on the function of a target is associated with risk or protection for a trait to inform on potential mechanisms of modulation suitable for disease treatment. These enhancements and the introduction of new back and front-end technologies to support them have increased the impact and usability of our resource within the drug discovery community., (© The Author(s) 2024. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2025
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9. Network expansion of genetic associations defines a pleiotropy map of human cell biology.
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Barrio-Hernandez I, Schwartzentruber J, Shrivastava A, Del-Toro N, Gonzalez A, Zhang Q, Mountjoy E, Suveges D, Ochoa D, Ghoussaini M, Bradley G, Hermjakob H, Orchard S, Dunham I, Anderson CA, Porras P, and Beltrao P
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- Humans, Ubiquitination genetics, RNA Processing, Post-Transcriptional genetics, Drug Repositioning methods, Drug Repositioning trends, Inflammatory Bowel Diseases genetics, Inflammatory Bowel Diseases pathology, Genome-Wide Association Study, Phenotype, Autoimmune Diseases genetics, Autoimmune Diseases pathology, Genetic Pleiotropy, Genetic Association Studies methods, Cell Biology, Cells metabolism, Cells pathology, Disease genetics
- Abstract
Interacting proteins tend to have similar functions, influencing the same organismal traits. Interaction networks can be used to expand the list of candidate trait-associated genes from genome-wide association studies. Here, we performed network-based expansion of trait-associated genes for 1,002 human traits showing that this recovers known disease genes or drug targets. The similarity of network expansion scores identifies groups of traits likely to share an underlying genetic and biological process. We identified 73 pleiotropic gene modules linked to multiple traits, enriched in genes involved in processes such as protein ubiquitination and RNA processing. In contrast to gene deletion studies, pleiotropy as defined here captures specifically multicellular-related processes. We show examples of modules linked to human diseases enriched in genes with known pathogenic variants that can be used to map targets of approved drugs for repurposing. Finally, we illustrate the use of network expansion scores to study genes at inflammatory bowel disease genome-wide association study loci, and implicate inflammatory bowel disease-relevant genes with strong functional and genetic support., (© 2023. The Author(s).)
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- 2023
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10. The next-generation Open Targets Platform: reimagined, redesigned, rebuilt.
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Ochoa D, Hercules A, Carmona M, Suveges D, Baker J, Malangone C, Lopez I, Miranda A, Cruz-Castillo C, Fumis L, Bernal-Llinares M, Tsukanov K, Cornu H, Tsirigos K, Razuvayevskaya O, Buniello A, Schwartzentruber J, Karim M, Ariano B, Martinez Osorio RE, Ferrer J, Ge X, Machlitt-Northen S, Gonzalez-Uriarte A, Saha S, Tirunagari S, Mehta C, Roldán-Romero JM, Horswell S, Young S, Ghoussaini M, Hulcoop DG, Dunham I, and McDonagh EM
- Abstract
The Open Targets Platform (https://platform.opentargets.org/) is an open source resource to systematically assist drug target identification and prioritisation using publicly available data. Since our last update, we have reimagined, redesigned, and rebuilt the Platform in order to streamline data integration and harmonisation, expand the ways in which users can explore the data, and improve the user experience. The gene-disease causal evidence has been enhanced and expanded to better capture disease causality across rare, common, and somatic diseases. For target and drug annotations, we have incorporated new features that help assess target safety and tractability, including genetic constraint, PROTACtability assessments, and AlphaFold structure predictions. We have also introduced new machine learning applications for knowledge extraction from the published literature, clinical trial information, and drug labels. The new technologies and frameworks introduced since the last update will ease the introduction of new features and the creation of separate instances of the Platform adapted to user requirements. Our new Community forum, expanded training materials, and outreach programme support our users in a range of use cases., (© The Author(s) 2022. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2023
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11. Insights into the genetic architecture of haematological traits from deep phenotyping and whole-genome sequencing for two Mediterranean isolated populations.
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Kuchenbaecker K, Gilly A, Suveges D, Southam L, Giannakopoulou O, Kilian B, Tsafantakis E, Karaleftheri M, Farmaki AE, Gurdasani D, Kundu K, Sandhu MS, Danesh J, Butterworth A, Barroso I, Dedoussis G, and Zeggini E
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- Cohort Studies, DNA Mutational Analysis, Erythrocyte Count, Gene Frequency, Genetic Variation, Genome-Wide Association Study, Greece, Humans, Leukocyte Count, Mutation, Platelet Function Tests, Whole Genome Sequencing, Erythrocyte Indices genetics, Genetics, Population, beta-Globins genetics
- Abstract
Haematological traits are linked to cardiovascular, metabolic, infectious and immune disorders, as well as cancer. Here, we examine the role of genetic variation in shaping haematological traits in two isolated Mediterranean populations. Using whole-genome sequencing data at 22× depth for 1457 individuals from Crete (MANOLIS) and 1617 from the Pomak villages in Greece, we carry out a genome-wide association scan for haematological traits using linear mixed models. We discover novel associations (p < 5 × 10
-9 ) of five rare non-coding variants with alleles conferring effects of 1.44-2.63 units of standard deviation on red and white blood cell count, platelet and red cell distribution width. Moreover, 10.0% of individuals in the Pomak population and 6.8% in MANOLIS carry a pathogenic mutation in the Haemoglobin Subunit Beta (HBB) gene. The mutational spectrum is highly diverse (10 different mutations). The most frequent mutation in MANOLIS is the common Mediterranean variant IVS-I-110 (G>A) (rs35004220). In the Pomak population, c.364C>A ("HbO-Arab", rs33946267) is most frequent (4.4% allele frequency). We demonstrate effects on haematological and other traits, including bilirubin, cholesterol, and, in MANOLIS, height and gestation age. We find less severe effects on red blood cell traits for HbS, HbO, and IVS-I-6 (T>C) compared to other b+ mutations. Overall, we uncover allelic diversity of HBB in Greek isolated populations and find an important role for additional rare variants outside of HBB., (© 2022. The Author(s).)- Published
- 2022
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12. Replication of HLA class II locus association with susceptibility to podoconiosis in three Ethiopian ethnic groups.
- Author
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Gebresilase T, Finan C, Suveges D, Tessema TS, Aseffa A, Davey G, Hatzikotoulas K, Zeggini E, Newport MJ, and Tekola-Ayele F
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- Ethiopia ethnology, Female, Genome-Wide Association Study, Humans, Male, Elephantiasis ethnology, Elephantiasis genetics, Ethnicity genetics, Genetic Predisposition to Disease ethnology, HLA-DRB1 Chains genetics, Polymorphism, Single Nucleotide
- Abstract
Podoconiosis, a debilitating lymphoedema of the leg, results from barefoot exposure to volcanic clay soil in genetically susceptible individuals. A previous genome-wide association study (GWAS) conducted in the Wolaita ethnic group from Ethiopia showed association between single nucleotide polymorphisms (SNPs) in the HLA class II region and podoconiosis. We aimed to conduct a second GWAS in a new sample (N = 1892) collected from the Wolaita and two other Ethiopian populations, the Amhara and the Oromo, also affected by podoconiosis. Fourteen SNPs in the HLA class II region showed significant genome-wide association (P < 5.0 × 10
-8 ) with podoconiosis. The lead SNP was rs9270911 (P = 5.51 × 10-10 ; OR 1.53; 95% CI 1.34-1.74), located near HLA-DRB1. Inclusion of data from the first GWAS (combined N = 2289) identified 47 SNPs in the class II HLA region that were significantly associated with podoconiosis (lead SNP also rs9270911 (P = 2.25 × 10-12 ). No new loci outside of the HLA class II region were identified in this more highly-powered second GWAS. Our findings confirm the HLA class II association with podoconiosis suggesting HLA-mediated abnormal induction and regulation of immune responses may have a direct role in its pathogenesis.- Published
- 2021
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13. Open Targets Platform: supporting systematic drug-target identification and prioritisation.
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Ochoa D, Hercules A, Carmona M, Suveges D, Gonzalez-Uriarte A, Malangone C, Miranda A, Fumis L, Carvalho-Silva D, Spitzer M, Baker J, Ferrer J, Raies A, Razuvayevskaya O, Faulconbridge A, Petsalaki E, Mutowo P, Machlitt-Northen S, Peat G, McAuley E, Ong CK, Mountjoy E, Ghoussaini M, Pierleoni A, Papa E, Pignatelli M, Koscielny G, Karim M, Schwartzentruber J, Hulcoop DG, Dunham I, and McDonagh EM
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- Antineoplastic Agents chemistry, Databases, Factual, Datasets as Topic, Drug Discovery methods, Drugs, Investigational chemistry, Humans, Internet, Neoplasms classification, Neoplasms genetics, Neoplasms pathology, Antineoplastic Agents therapeutic use, Drugs, Investigational therapeutic use, Knowledge Bases, Molecular Targeted Therapy methods, Neoplasms drug therapy, Software
- Abstract
The Open Targets Platform (https://www.targetvalidation.org/) provides users with a queryable knowledgebase and user interface to aid systematic target identification and prioritisation for drug discovery based upon underlying evidence. It is publicly available and the underlying code is open source. Since our last update two years ago, we have had 10 releases to maintain and continuously improve evidence for target-disease relationships from 20 different data sources. In addition, we have integrated new evidence from key datasets, including prioritised targets identified from genome-wide CRISPR knockout screens in 300 cancer models (Project Score), and GWAS/UK BioBank statistical genetic analysis evidence from the Open Targets Genetics Portal. We have evolved our evidence scoring framework to improve target identification. To aid the prioritisation of targets and inform on the potential impact of modulating a given target, we have added evaluation of post-marketing adverse drug reactions and new curated information on target tractability and safety. We have also developed the user interface and backend technologies to improve performance and usability. In this article, we describe the latest enhancements to the Platform, to address the fundamental challenge that developing effective and safe drugs is difficult and expensive., (© The Author(s) 2020. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2021
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14. Open Targets Genetics: systematic identification of trait-associated genes using large-scale genetics and functional genomics.
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Ghoussaini M, Mountjoy E, Carmona M, Peat G, Schmidt EM, Hercules A, Fumis L, Miranda A, Carvalho-Silva D, Buniello A, Burdett T, Hayhurst J, Baker J, Ferrer J, Gonzalez-Uriarte A, Jupp S, Karim MA, Koscielny G, Machlitt-Northen S, Malangone C, Pendlington ZM, Roncaglia P, Suveges D, Wright D, Vrousgou O, Papa E, Parkinson H, MacArthur JAL, Todd JA, Barrett JC, Schwartzentruber J, Hulcoop DG, Ochoa D, McDonagh EM, and Dunham I
- Subjects
- Chromatin chemistry, Chromatin metabolism, Datasets as Topic, Drug Discovery methods, Drug Repositioning methods, Genome-Wide Association Study, Genotype, Humans, Inflammatory Bowel Diseases drug therapy, Inflammatory Bowel Diseases metabolism, Inflammatory Bowel Diseases pathology, Internet, Phenotype, Quantitative Trait, Heritable, Databases, Genetic, Genome, Human, Inflammatory Bowel Diseases genetics, Molecular Targeted Therapy methods, Quantitative Trait Loci, Software
- Abstract
Open Targets Genetics (https://genetics.opentargets.org) is an open-access integrative resource that aggregates human GWAS and functional genomics data including gene expression, protein abundance, chromatin interaction and conformation data from a wide range of cell types and tissues to make robust connections between GWAS-associated loci, variants and likely causal genes. This enables systematic identification and prioritisation of likely causal variants and genes across all published trait-associated loci. In this paper, we describe the public resources we aggregate, the technology and analyses we use, and the functionality that the portal offers. Open Targets Genetics can be searched by variant, gene or study/phenotype. It offers tools that enable users to prioritise causal variants and genes at disease-associated loci and access systematic cross-disease and disease-molecular trait colocalization analysis across 92 cell types and tissues including the eQTL Catalogue. Data visualizations such as Manhattan-like plots, regional plots, credible sets overlap between studies and PheWAS plots enable users to explore GWAS signals in depth. The integrated data is made available through the web portal, for bulk download and via a GraphQL API, and the software is open source. Applications of this integrated data include identification of novel targets for drug discovery and drug repurposing., (© The Author(s) 2020. Published by Oxford University Press on behalf of Nucleic Acids Research.)
- Published
- 2021
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15. Whole-genome sequencing analysis of the cardiometabolic proteome.
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Gilly A, Park YC, Png G, Barysenka A, Fischer I, Bjørnland T, Southam L, Suveges D, Neumeyer S, Rayner NW, Tsafantakis E, Karaleftheri M, Dedoussis G, and Zeggini E
- Subjects
- Gene Expression Regulation, Gene Regulatory Networks, Genetic Predisposition to Disease, Humans, Multifactorial Inheritance genetics, Proteome metabolism, Quantitative Trait Loci genetics, Risk Factors, Myocardium metabolism, Proteome genetics, Whole Genome Sequencing
- Abstract
The human proteome is a crucial intermediate between complex diseases and their genetic and environmental components, and an important source of drug development targets and biomarkers. Here, we comprehensively assess the genetic architecture of 257 circulating protein biomarkers of cardiometabolic relevance through high-depth (22.5×) whole-genome sequencing (WGS) in 1328 individuals. We discover 131 independent sequence variant associations (P < 7.45 × 10
-11 ) across the allele frequency spectrum, all of which replicate in an independent cohort (n = 1605, 18.4x WGS). We identify for the first time replicating evidence for rare-variant cis-acting protein quantitative trait loci for five genes, involving both coding and noncoding variation. We construct and validate polygenic scores that explain up to 45% of protein level variation. We find causal links between protein levels and disease risk, identifying high-value biomarkers and drug development targets.- Published
- 2020
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16. Population-wide copy number variation calling using variant call format files from 6,898 individuals.
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Png G, Suveges D, Park YC, Walter K, Kundu K, Ntalla I, Tsafantakis E, Karaleftheri M, Dedoussis G, Zeggini E, and Gilly A
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- Chemokine CCL3 genetics, Gene Deletion, Genome-Wide Association Study, Genomics, Glutathione Transferase genetics, Humans, Nodal Protein genetics, Recombinant Fusion Proteins genetics, Whole Genome Sequencing, DNA Copy Number Variations genetics, Genetics, Population methods, Genome, Human genetics
- Abstract
Copy number variants (CNVs) play an important role in a number of human diseases, but the accurate calling of CNVs remains challenging. Most current approaches to CNV detection use raw read alignments, which are computationally intensive to process. We use a regression tree-based approach to call germline CNVs from whole-genome sequencing (WGS, >18x) variant call sets in 6,898 samples across four European cohorts, and describe a rich large variation landscape comprising 1,320 CNVs. Eighty-one percent of detected events have been previously reported in the Database of Genomic Variants. Twenty-three percent of high-quality deletions affect entire genes, and we recapitulate known events such as the GSTM1 and RHD gene deletions. We test for association between the detected deletions and 275 protein levels in 1,457 individuals to assess the potential clinical impact of the detected CNVs. We describe complex CNV patterns underlying an association with levels of the CCL3 protein (MAF = 0.15, p = 3.6x10
-12 ) at the CCL3L3 locus, and a novel cis-association between a low-frequency NOMO1 deletion and NOMO1 protein levels (MAF = 0.02, p = 2.2x10-7 ). This study demonstrates that existing population-wide WGS call sets can be mined for germline CNVs with minimal computational overhead, delivering insight into a less well-studied, yet potentially impactful class of genetic variant., (© 2019 The Authors. Genetic Epidemiology published by Wiley Periodicals, Inc.)- Published
- 2020
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17. Very low-depth whole-genome sequencing in complex trait association studies.
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Gilly A, Southam L, Suveges D, Kuchenbaecker K, Moore R, Melloni GEM, Hatzikotoulas K, Farmaki AE, Ritchie G, Schwartzentruber J, Danecek P, Kilian B, Pollard MO, Ge X, Tsafantakis E, Dedoussis G, and Zeggini E
- Subjects
- Genotype, Humans, Multifactorial Inheritance, Whole Genome Sequencing, High-Throughput Nucleotide Sequencing, Polymorphism, Single Nucleotide
- Abstract
Motivation: Very low-depth sequencing has been proposed as a cost-effective approach to capture low-frequency and rare variation in complex trait association studies. However, a full characterization of the genotype quality and association power for very low-depth sequencing designs is still lacking., Results: We perform cohort-wide whole-genome sequencing (WGS) at low depth in 1239 individuals (990 at 1× depth and 249 at 4× depth) from an isolated population, and establish a robust pipeline for calling and imputing very low-depth WGS genotypes from standard bioinformatics tools. Using genotyping chip, whole-exome sequencing (75× depth) and high-depth (22×) WGS data in the same samples, we examine in detail the sensitivity of this approach, and show that imputed 1× WGS recapitulates 95.2% of variants found by imputed GWAS with an average minor allele concordance of 97% for common and low-frequency variants. In our study, 1× further allowed the discovery of 140 844 true low-frequency variants with 73% genotype concordance when compared to high-depth WGS data. Finally, using association results for 57 quantitative traits, we show that very low-depth WGS is an efficient alternative to imputed GWAS chip designs, allowing the discovery of up to twice as many true association signals than the classical imputed GWAS design., Availability and Implementation: The HELIC genotype and WGS datasets have been deposited to the European Genome-phenome Archive (https://www.ebi.ac.uk/ega/home): EGAD00010000518; EGAD00010000522; EGAD00010000610; EGAD00001001636, EGAD00001001637. The peakplotter software is available at https://github.com/wtsi-team144/peakplotter, the transformPhenotype app can be downloaded at https://github.com/wtsi-team144/transformPhenotype., Supplementary Information: Supplementary data are available at Bioinformatics online., (© The Author(s) 2018. Published by Oxford University Press.)
- Published
- 2019
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18. The NHGRI-EBI GWAS Catalog of published genome-wide association studies, targeted arrays and summary statistics 2019.
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Buniello A, MacArthur JAL, Cerezo M, Harris LW, Hayhurst J, Malangone C, McMahon A, Morales J, Mountjoy E, Sollis E, Suveges D, Vrousgou O, Whetzel PL, Amode R, Guillen JA, Riat HS, Trevanion SJ, Hall P, Junkins H, Flicek P, Burdett T, Hindorff LA, Cunningham F, and Parkinson H
- Subjects
- Disease genetics, Genetic Variation, Humans, Microarray Analysis, Publications, Software, User-Computer Interface, Databases, Genetic, Genome-Wide Association Study
- Abstract
The GWAS Catalog delivers a high-quality curated collection of all published genome-wide association studies enabling investigations to identify causal variants, understand disease mechanisms, and establish targets for novel therapies. The scope of the Catalog has also expanded to targeted and exome arrays with 1000 new associations added for these technologies. As of September 2018, the Catalog contains 5687 GWAS comprising 71673 variant-trait associations from 3567 publications. New content includes 284 full P-value summary statistics datasets for genome-wide and new targeted array studies, representing 6 × 109 individual variant-trait statistics. In the last 12 months, the Catalog's user interface was accessed by ∼90000 unique users who viewed >1 million pages. We have improved data access with the release of a new RESTful API to support high-throughput programmatic access, an improved web interface and a new summary statistics database. Summary statistics provision is supported by a new format proposed as a community standard for summary statistics data representation. This format was derived from our experience in standardizing heterogeneous submissions, mapping formats and in harmonizing content. Availability: https://www.ebi.ac.uk/gwas/.
- Published
- 2019
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19. Author Correction: Cohort-wide deep whole genome sequencing and the allelic architecture of complex traits.
- Author
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Gilly A, Suveges D, Kuchenbaecker K, Pollard M, Southam L, Hatzikotoulas K, Farmaki AE, Bjornland T, Waples R, Appel EVR, Casalone E, Melloni G, Kilian B, Rayner NW, Ntalla I, Kundu K, Walter K, Danesh J, Butterworth A, Barroso I, Tsafantakis E, Dedoussis G, Moltke I, and Zeggini E
- Abstract
The original version of this Article contained an error in Fig. 2. In panel a, the two legend items "rare" and "common" were inadvertently swapped. This has been corrected in both the PDF and HTML versions of the Article.
- Published
- 2018
- Full Text
- View/download PDF
20. Cohort-wide deep whole genome sequencing and the allelic architecture of complex traits.
- Author
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Gilly A, Suveges D, Kuchenbaecker K, Pollard M, Southam L, Hatzikotoulas K, Farmaki AE, Bjornland T, Waples R, Appel EVR, Casalone E, Melloni G, Kilian B, Rayner NW, Ntalla I, Kundu K, Walter K, Danesh J, Butterworth A, Barroso I, Tsafantakis E, Dedoussis G, Moltke I, and Zeggini E
- Subjects
- Cohort Studies, Gene Frequency genetics, Genetic Variation, Humans, Alleles, Quantitative Trait, Heritable, Whole Genome Sequencing
- Abstract
The role of rare variants in complex traits remains uncharted. Here, we conduct deep whole genome sequencing of 1457 individuals from an isolated population, and test for rare variant burdens across six cardiometabolic traits. We identify a role for rare regulatory variation, which has hitherto been missed. We find evidence of rare variant burdens that are independent of established common variant signals (ADIPOQ and adiponectin, P = 4.2 × 10
-8 ; APOC3 and triglyceride levels, P = 1.5 × 10-26 ), and identify replicating evidence for a burden associated with triglyceride levels in FAM189B (P = 2.2 × 10-8 ), indicating a role for this gene in lipid metabolism.- Published
- 2018
- Full Text
- View/download PDF
21. A novel variant in GLIS3 is associated with osteoarthritis.
- Author
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Casalone E, Tachmazidou I, Zengini E, Hatzikotoulas K, Hackinger S, Suveges D, Steinberg J, Rayner NW, Wilkinson JM, Panoutsopoulou K, and Zeggini E
- Subjects
- Adult, Arthroplasty, Replacement, Hip, Arthroplasty, Replacement, Knee, Cartilage metabolism, Case-Control Studies, Chondrocytes, DNA Methylation, DNA-Binding Proteins, Female, Gene Expression, Genome-Wide Association Study, Humans, Male, Osteoarthritis, Hip surgery, Osteoarthritis, Knee surgery, Proteomics, Repressor Proteins, Trans-Activators, Genetic Predisposition to Disease genetics, Genetic Variation genetics, Osteoarthritis, Hip genetics, Osteoarthritis, Knee genetics, Transcription Factors genetics
- Abstract
Objectives: Osteoarthritis (OA) is a complex disease, but its genetic aetiology remains poorly characterised. To identify novel susceptibility loci for OA, we carried out a genome-wide association study (GWAS) in individuals from the largest UK-based OA collections to date., Methods: We carried out a discovery GWAS in 5414 OA individuals with knee and/or hip total joint replacement (TJR) and 9939 population-based controls. We followed-up prioritised variants in OA subjects from the interim release of the UK Biobank resource (up to 12 658 cases and 50 898 controls) and our lead finding in operated OA subjects from the full release of UK Biobank (17 894 cases and 89 470 controls). We investigated its functional implications in methylation, gene expression and proteomics data in primary chondrocytes from 12 pairs of intact and degraded cartilage samples from patients undergoing TJR., Results: We detect a genome-wide significant association at rs10116772 with TJR (P=3.7×10
-8 ; for allele A: OR (95% CI) 0.97 (0.96 to 0.98)), an intronic variant in GLIS3 , which is expressed in cartilage. Variants in strong correlation with rs10116772 have been associated with elevated plasma glucose levels and diabetes., Conclusions: We identify a novel susceptibility locus for OA that has been previously implicated in diabetes and glycaemic traits., Competing Interests: Competing interests: None declared., (© Article author(s) (or their employer(s) unless otherwise stated in the text of the article) 2018. All rights reserved. No commercial use is permitted unless otherwise expressly granted.)- Published
- 2018
- Full Text
- View/download PDF
22. Genome-wide analyses using UK Biobank data provide insights into the genetic architecture of osteoarthritis.
- Author
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Zengini E, Hatzikotoulas K, Tachmazidou I, Steinberg J, Hartwig FP, Southam L, Hackinger S, Boer CG, Styrkarsdottir U, Gilly A, Suveges D, Killian B, Ingvarsson T, Jonsson H, Babis GC, McCaskie A, Uitterlinden AG, van Meurs JBJ, Thorsteinsdottir U, Stefansson K, Davey Smith G, Wilkinson JM, and Zeggini E
- Subjects
- Biological Specimen Banks statistics & numerical data, Chromosome Mapping, Female, Genetic Loci, Genetic Predisposition to Disease, Genetic Variation, Genome-Wide Association Study methods, Genome-Wide Association Study statistics & numerical data, Humans, Male, RNA, Untranslated genetics, United Kingdom, Osteoarthritis genetics
- Abstract
Osteoarthritis is a common complex disease imposing a large public-health burden. Here, we performed a genome-wide association study for osteoarthritis, using data across 16.5 million variants from the UK Biobank resource. After performing replication and meta-analysis in up to 30,727 cases and 297,191 controls, we identified nine new osteoarthritis loci, in all of which the most likely causal variant was noncoding. For three loci, we detected association with biologically relevant radiographic endophenotypes, and in five signals we identified genes that were differentially expressed in degraded compared with intact articular cartilage from patients with osteoarthritis. We established causal effects on osteoarthritis for higher body mass index but not for triglyceride levels or genetic predisposition to type 2 diabetes.
- Published
- 2018
- Full Text
- View/download PDF
23. Loss-of-function variants in ADCY3 increase risk of obesity and type 2 diabetes.
- Author
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Grarup N, Moltke I, Andersen MK, Dalby M, Vitting-Seerup K, Kern T, Mahendran Y, Jørsboe E, Larsen CVL, Dahl-Petersen IK, Gilly A, Suveges D, Dedoussis G, Zeggini E, Pedersen O, Andersson R, Bjerregaard P, Jørgensen ME, Albrechtsen A, and Hansen T
- Subjects
- Adult, Aged, Aged, 80 and over, Case-Control Studies, Cohort Studies, Diabetes Mellitus, Type 2 complications, Diabetes Mellitus, Type 2 epidemiology, Female, Gene Frequency, Genetic Predisposition to Disease, Genome-Wide Association Study, Genotype, Greenland epidemiology, Humans, Inuit genetics, Inuit statistics & numerical data, Male, Middle Aged, Obesity complications, Obesity epidemiology, Risk Factors, Young Adult, Adenylyl Cyclases genetics, Diabetes Mellitus, Type 2 genetics, Loss of Function Mutation, Obesity genetics
- Abstract
We have identified a variant in ADCY3 (encoding adenylate cyclase 3) associated with markedly increased risk of obesity and type 2 diabetes in the Greenlandic population. The variant disrupts a splice acceptor site, and carriers have decreased ADCY3 RNA expression. Additionally, we observe an enrichment of rare ADCY3 loss-of-function variants among individuals with type 2 diabetes in trans-ancestry cohorts. These findings provide new information on disease etiology relevant for future treatment strategies.
- Published
- 2018
- Full Text
- View/download PDF
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