Arthur Gilly
Wellcome Trust Sanger Institute
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Publication
Featured researches published by Arthur Gilly.
Science | 2014
Sandra Cortijo; René Wardenaar; Maria Colomé-Tatché; Arthur Gilly; Mathilde Etcheverry; Karine Labadie; Erwann Caillieux; Jean-Marc Aury; Patrick Wincker; François Roudier; Ritsert C. Jansen; Vincent Colot; Frank Johannes
Quantifying the impact of heritable epigenetic variation on complex traits is an emerging challenge in population genetics. Here, we analyze a population of isogenic Arabidopsis lines that segregate experimentally induced DNA methylation changes at hundreds of regions across the genome. We demonstrate that several of these differentially methylated regions (DMRs) act as bona fide epigenetic quantitative trait loci (QTLepi), accounting for 60 to 90% of the heritability for two complex traits, flowering time and primary root length. These QTLepi are reproducible and can be subjected to artificial selection. Many of the experimentally induced DMRs are also variable in natural populations of this species and may thus provide an epigenetic basis for Darwinian evolution independently of DNA sequence changes. Genetic mapping reveals epigenetic changes associated with flowering time and root length. [Also see Perspective by Schmitz] Plant Epigenetics Quantitative trait loci (QTLs) are genetic regions associated with phenotypic traits that help to determine the underlying genetics controlling the magnitude of a specific trait. Cortijo et al. (p. 1145, published online 6 February; see the Perspective by Schmitz) identified epigenetic QTLs associated with differences in methylation marks (epiQTLs) controlling flowering time and root length in the model plant Arabidopsis. These epiQTLs were mapped in genetically identical lines that differ only in their methylation marks. A small number of QTLs were able to explain up to 90% of the heritable variation in these traits. Thus, in plants, the heritability of some complex traits can be determined by epigenetic variation.
Nature Communications | 2014
Kalliope Panoutsopoulou; Konstantinos Hatzikotoulas; Dionysia K. Xifara; Vincenza Colonna; Aliki-Eleni Farmaki; Graham R. S. Ritchie; Lorraine Southam; Arthur Gilly; Ioanna Tachmazidou; Segun Fatumo; Angela Matchan; Nigel W. Rayner; Ioanna Ntalla; Massimo Mezzavilla; Yuan Chen; Chrysoula Kiagiadaki; Eleni Zengini; Vasiliki Mamakou; Antonis Athanasiadis; Margarita Giannakopoulou; Vassiliki-Eirini Kariakli; Rebecca N. Nsubuga; Alex Karabarinde; Manjinder S. Sandhu; Gil McVean; Chris Tyler-Smith; Emmanouil Tsafantakis; Maria Karaleftheri; Yali Xue; George Dedoussis
Isolated populations are emerging as a powerful study design in the search for low-frequency and rare variant associations with complex phenotypes. Here we genotype 2,296 samples from two isolated Greek populations, the Pomak villages (HELIC-Pomak) in the North of Greece and the Mylopotamos villages (HELIC-MANOLIS) in Crete. We compare their genomic characteristics to the general Greek population and establish them as genetic isolates. In the MANOLIS cohort, we observe an enrichment of missense variants among the variants that have drifted up in frequency by more than fivefold. In the Pomak cohort, we find novel associations at variants on chr11p15.4 showing large allele frequency increases (from 0.2% in the general Greek population to 4.6% in the isolate) with haematological traits, for example, with mean corpuscular volume (rs7116019, P=2.3 × 10−26). We replicate this association in a second set of Pomak samples (combined P=2.0 × 10−36). We demonstrate significant power gains in detecting medical trait associations.
Briefings in Functional Genomics | 2014
Konstantinos Hatzikotoulas; Arthur Gilly; Eleftheria Zeggini
The use of genetically isolated populations can empower next-generation association studies. In this review, we discuss the advantages of this approach and review study design and analytical considerations of genetic association studies focusing on isolates. We cite successful examples of using population isolates in association studies and outline potential ways forward.
Nature Genetics | 2018
Niels Grarup; Ida Moltke; Mette Korre Andersen; Maria Dalby; Kristoffer Vitting-Seerup; Timo Sebastian Kern; Yuvaraj Mahendran; Emil Jørsboe; Christina Viskum Lytken Larsen; Inger Katrine Dahl-Petersen; Arthur Gilly; Daniel Suveges; George Dedoussis; Eleftheria Zeggini; Oluf Pedersen; Robin Andersson; Peter Bjerregaard; Marit E. Jørgensen; Anders Albrechtsen; Torben Hansen
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.Individuals from a Greenlandic Inuit population with homozygous loss-of-function variants in ADCY3 (adenylate cyclase 3) have increased risk for obesity and type 2 diabetes. Carriers of rare ADCY3 variants in trans-ancestry populations also show increased association with type 2 diabetes.
BMC Bioinformatics | 2014
Arthur Gilly; Mathilde Etcheverry; Mohammed-Amin Madoui; Julie Guy; Leandro Quadrana; Adriana Alberti; Antoine Martin; Tony Heitkam; Stefan Engelen; Karine Labadie; Jeremie Le Pen; Patrick Wincker; Vincent Colot; Jean-Marc Aury
BackgroundTransposable elements (TEs) are DNA sequences that are able to move from their location in the genome by cutting or copying themselves to another locus. As such, they are increasingly recognized as impacting all aspects of genome function. With the dramatic reduction in cost of DNA sequencing, it is now possible to resequence whole genomes in order to systematically characterize novel TE mobilization in a particular individual. However, this task is made difficult by the inherently repetitive nature of TE sequences, which in some eukaryotes compose over half of the genome sequence. Currently, only a few software tools dedicated to the detection of TE mobilization using next-generation-sequencing are described in the literature. They often target specific TEs for which annotation is available, and are only able to identify families of closely related TEs, rather than individual elements.ResultsWe present TE-Tracker, a general and accurate computational method for the de-novo detection of germ line TE mobilization from re-sequenced genomes, as well as the identification of both their source and destination sequences. We compare our method with the two classes of existing software: specialized TE-detection tools and generic structural variant (SV) detection tools. We show that TE-Tracker, while working independently of any prior annotation, bridges the gap between these two approaches in terms of detection power. Indeed, its positive predictive value (PPV) is comparable to that of dedicated TE software while its sensitivity is typical of a generic SV detection tool. TE-Tracker demonstrates the benefit of adopting an annotation-independent, de novo approach for the detection of TE mobilization events. We use TE-Tracker to provide a comprehensive view of transposition events induced by loss of DNA methylation in Arabidopsis. TE-Tracker is freely available at http://www.genoscope.cns.fr/TE-Tracker.ConclusionsWe show that TE-Tracker accurately detects both the source and destination of novel transposition events in re-sequenced genomes. Moreover, TE-Tracker is able to detect all potential donor sequences for a given insertion, and can identify the correct one among them. Furthermore, TE-Tracker produces significantly fewer false positives than common SV detection programs, thus greatly facilitating the detection and analysis of TE mobilization events.
Nature Communications | 2017
Lorraine Southam; Arthur Gilly; Daniel Suveges; Aliki-Eleni Farmaki; Jeremy Schwartzentruber; Ioanna Tachmazidou; Angela Matchan; Nigel W. Rayner; Emmanouil Tsafantakis; Maria Karaleftheri; Yali Xue; George Dedoussis; Eleftheria Zeggini
Next-generation association studies can be empowered by sequence-based imputation and by studying founder populations. Here we report ∼9.5 million variants from whole-genome sequencing (WGS) of a Cretan-isolated population, and show enrichment of rare and low-frequency variants with predicted functional consequences. We use a WGS-based imputation approach utilizing 10,422 reference haplotypes to perform genome-wide association analyses and observe 17 genome-wide significant, independent signals, including replicating evidence for association at eight novel low-frequency variant signals. Two novel cardiometabolic associations are at lead variants unique to the founder population sequences: chr16:70790626 (high-density lipoprotein levels beta −1.71 (SE 0.25), P=1.57 × 10−11, effect allele frequency (EAF) 0.006); and rs145556679 (triglycerides levels beta −1.13 (SE 0.17), P=2.53 × 10−11, EAF 0.013). Our findings add empirical support to the contribution of low-frequency variants in complex traits, demonstrate the advantage of including population-specific sequences in imputation panels and exemplify the power gains afforded by population isolates.
Nature Communications | 2017
Yali Xue; Massimo Mezzavilla; Marc Haber; Shane McCarthy; Yuan Chen; Vagheesh Narasimhan; Arthur Gilly; Qasim Ayub; Vincenza Colonna; Lorraine Southam; Christopher Finan; Andrea Massaia; Himanshu Chheda; Priit Palta; Graham R. S. Ritchie; Jennifer L. Asimit; George Dedoussis; Paolo Gasparini; Aarno Palotie; Samuli Ripatti; Nicole Soranzo; Daniela Toniolo; James F. Wilson; Richard Durbin; Chris Tyler-Smith; Eleftheria Zeggini
The genetic features of isolated populations can boost power in complex-trait association studies, and an in-depth understanding of how their genetic variation has been shaped by their demographic history can help leverage these advantageous characteristics. Here, we perform a comprehensive investigation using 3,059 newly generated low-depth whole-genome sequences from eight European isolates and two matched general populations, together with published data from the 1000 Genomes Project and UK10K. Sequencing data give deeper and richer insights into population demography and genetic characteristics than genotype-chip data, distinguishing related populations more effectively and allowing their functional variants to be studied more fully. We demonstrate relaxation of purifying selection in the isolates, leading to enrichment of rare and low-frequency functional variants, using novel statistics, DVxy and SVxy. We also develop an isolation-index (Isx) that predicts the overall level of such key genetic characteristics and can thus help guide population choice in future complex-trait association studies.
Nature Genetics | 2018
Eleni Zengini; Konstantinos Hatzikotoulas; Ioanna Tachmazidou; Julia Steinberg; Fernando Pires Hartwig; Lorraine Southam; Sophie Hackinger; C.G. Boer; Unnur Styrkarsdottir; Arthur Gilly; Daniel Suveges; Britt Killian; Thorvaldur Ingvarsson; Helgi Jonsson; George C. Babis; Andrew McCaskie; André G. Uitterlinden; Joyce B. J. van Meurs; Unnur Thorsteinsdottir; Kari Stefansson; George Davey Smith; J.M. Wilkinson; Eleftheria Zeggini
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.Genome-wide association study for osteoarthritis using data from UK Biobank identifies loci for knee- and hip-specific disease. Functional analyses of chondrocytes provide further insight into candidate causal genes.
Human Molecular Genetics | 2017
Sophie Hackinger; Katerina Trajanoska; Unnur Styrkarsdottir; Eleni Zengini; Julia Steinberg; Graham R. S. Ritchie; Konstantinos Hatzikotoulas; Arthur Gilly; Evangelos Evangelou; John P. Kemp; David Evans; Thorvaldur Ingvarsson; Helgi Jonsson; Unnur Thorsteinsdottir; Kari Stefansson; A. W. McCaskie; Roger A. Brooks; J.M. Wilkinson; Fernando Rivadeneira; Eleftheria Zeggini
Abstract Osteoarthritis (OA) is a common complex disease with high public health burden and no curative therapy. High bone mineral density (BMD) is associated with an increased risk of developing OA, suggesting a shared underlying biology. Here, we performed the first systematic overlap analysis of OA and BMD on a genome wide scale. We used summary statistics from the GEFOS consortium for lumbar spine (n = 31,800) and femoral neck (n = 32,961) BMD, and from the arcOGEN consortium for three OA phenotypes (hip, ncases=3,498; knee, ncases=3,266; hip and/or knee, ncases=7,410; ncontrols=11,009). Performing LD score regression we found a significant genetic correlation between the combined OA phenotype (hip and/or knee) and lumbar spine BMD (rg=0.18, P = 2.23 × 10−2), which may be driven by the presence of spinal osteophytes. We identified 143 variants with evidence for cross-phenotype association which we took forward for replication in independent large-scale OA datasets, and subsequent meta-analysis with arcOGEN for a total sample size of up to 23,425 cases and 236,814 controls. We found robustly replicating evidence for association with OA at rs12901071 (OR 1.08 95% CI 1.05–1.11, Pmeta=3.12 × 10−10), an intronic variant in the SMAD3 gene, which is known to play a role in bone remodeling and cartilage maintenance. We were able to confirm expression of SMAD3 in intact and degraded cartilage of the knee and hip. Our findings provide the first systematic evaluation of pleiotropy between OA and BMD, highlight genes with biological relevance to both traits, and establish a robust new OA genetic risk locus at SMAD3.
bioRxiv | 2017
Eleni Zengini; Konstantinos Hatzikotoulas; Ioanna Tachmazidou; Julia Steinberg; Fernando Pires Hartwig; Lorraine Southam; Sophie Hackinger; C.G. Boer; Unnur Styrkarsdottir; Daniel Suveges; Britt Kilian; Arthur Gilly; Thorvaldur Ingvarsson; Helgi Jonsson; George C. Babis; A. W. McCaskie; André G. Uitterlinden; Joyce B. J. van Meurs; Unnur Thorsteinsdottir; Kari Stefansson; George Davey Smith; J.M. Wilkinson; Eleftheria Zeggini
Osteoarthritis is a common complex disease with huge public health burden. Here we perform a genome-wide association study for osteoarthritis using data across 16.5 million variants from the UK Biobank resource. Following replication and meta-analysis in up to 30,727 cases and 297,191 controls, we report 9 new osteoarthritis loci, in all of which the most likely causal variant is non-coding. For three loci, we detect association with biologically-relevant radiographic endophenotypes, and in five signals we identify genes that are differentially expressed in degraded compared to intact articular cartilage from osteoarthritis patients. We establish causal effects for higher body mass index, but not for triglyceride levels or type 2 diabetes liability, on osteoarthritis.