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Dive into the research topics where Ioanna Tachmazidou is active.

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Featured researches published by Ioanna Tachmazidou.


Nature | 2015

The African Genome Variation Project shapes medical genetics in Africa

Deepti Gurdasani; Tommy Carstensen; Fasil Tekola-Ayele; Luca Pagani; Ioanna Tachmazidou; Konstantinos Hatzikotoulas; Savita Karthikeyan; Louise Iles; Martin Pollard; Ananyo Choudhury; Graham R. S. Ritchie; Yali Xue; Jennifer L. Asimit; Rebecca N. Nsubuga; Elizabeth H. Young; Cristina Pomilla; Katja Kivinen; Kirk Rockett; Anatoli Kamali; Ayo Doumatey; Gershim Asiki; Janet Seeley; Fatoumatta Sisay-Joof; Muminatou Jallow; Stephen Tollman; Ephrem Mekonnen; Rosemary Ekong; Tamiru Oljira; Neil Bradman; Kalifa Bojang

Given the importance of Africa to studies of human origins and disease susceptibility, detailed characterization of African genetic diversity is needed. The African Genome Variation Project provides a resource with which to design, implement and interpret genomic studies in sub-Saharan Africa and worldwide. The African Genome Variation Project represents dense genotypes from 1,481 individuals and whole-genome sequences from 320 individuals across sub-Saharan Africa. Using this resource, we find novel evidence of complex, regionally distinct hunter-gatherer and Eurasian admixture across sub-Saharan Africa. We identify new loci under selection, including loci related to malaria susceptibility and hypertension. We show that modern imputation panels (sets of reference genotypes from which unobserved or missing genotypes in study sets can be inferred) can identify association signals at highly differentiated loci across populations in sub-Saharan Africa. Using whole-genome sequencing, we demonstrate further improvements in imputation accuracy, strengthening the case for large-scale sequencing efforts of diverse African haplotypes. Finally, we present an efficient genotype array design capturing common genetic variation in Africa.


Molecular Psychiatry | 2014

A genome-wide association study of anorexia nervosa

Vesna Boraska; Jab Floyd; Lorraine Southam; N W Rayner; Ioanna Tachmazidou; Stephanie Zerwas; Osp Davis; Sietske G. Helder; R Burghardt; K Egberts; Stefan Ehrlich; Susann Scherag; Nicolas Ramoz; Judith Hendriks; Eric Strengman; A. van Elburg; A Bruson; Maurizio Clementi; M Forzan; E Tenconi; Elisa Docampo; Geòrgia Escaramís; A Rajewski; A Slopien; Leila Karhunen; Ingrid Meulenbelt; Mario Maj; Artemis Tsitsika; L Slachtova; Zeynep Yilmaz

Anorexia nervosa (AN) is a complex and heritable eating disorder characterized by dangerously low body weight. Neither candidate gene studies nor an initial genome-wide association study (GWAS) have yielded significant and replicated results. We performed a GWAS in 2907 cases with AN from 14 countries (15 sites) and 14 860 ancestrally matched controls as part of the Genetic Consortium for AN (GCAN) and the Wellcome Trust Case Control Consortium 3 (WTCCC3). Individual association analyses were conducted in each stratum and meta-analyzed across all 15 discovery data sets. Seventy-six (72 independent) single nucleotide polymorphisms were taken forward for in silico (two data sets) or de novo (13 data sets) replication genotyping in 2677 independent AN cases and 8629 European ancestry controls along with 458 AN cases and 421 controls from Japan. The final global meta-analysis across discovery and replication data sets comprised 5551 AN cases and 21 080 controls. AN subtype analyses (1606 AN restricting; 1445 AN binge–purge) were performed. No findings reached genome-wide significance. Two intronic variants were suggestively associated: rs9839776 (P=3.01 × 10−7) in SOX2OT and rs17030795 (P=5.84 × 10−6) in PPP3CA. Two additional signals were specific to Europeans: rs1523921 (P=5.76 × 10−6) between CUL3 and FAM124B and rs1886797 (P=8.05 × 10−6) near SPATA13. Comparing discovery with replication results, 76% of the effects were in the same direction, an observation highly unlikely to be due to chance (P=4 × 10−6), strongly suggesting that true findings exist but our sample, the largest yet reported, was underpowered for their detection. The accrual of large genotyped AN case-control samples should be an immediate priority for the field.


Human Molecular Genetics | 2013

In search of low-frequency and rare variants affecting complex traits

Kalliope Panoutsopoulou; Ioanna Tachmazidou; Eleftheria Zeggini

The allelic architecture of complex traits is likely to be underpinned by a combination of multiple common frequency and rare variants. Targeted genotyping arrays and next-generation sequencing technologies at the whole-genome sequencing (WGS) and whole-exome scales (WES) are increasingly employed to access sequence variation across the full minor allele frequency (MAF) spectrum. Different study design strategies that make use of diverse technologies, imputation and sample selection approaches are an active target of development and evaluation efforts. Initial insights into the contribution of rare variants in common diseases and medically relevant quantitative traits point to low-frequency and rare alleles acting either independently or in aggregate and in several cases alongside common variants. Studies conducted in population isolates have been successful in detecting rare variant associations with complex phenotypes. Statistical methodologies that enable the joint analysis of rare variants across regions of the genome continue to evolve with current efforts focusing on incorporating information such as functional annotation, and on the meta-analysis of these burden tests. In addition, population stratification, defining genome-wide statistical significance thresholds and the design of appropriate replication experiments constitute important considerations for the powerful analysis and interpretation of rare variant association studies. Progress in addressing these emerging challenges and the accrual of sufficiently large data sets are poised to help the field of complex trait genetics enter a promising era of discovery.


Nature Communications | 2013

A rare functional cardioprotective APOC3 variant has risen in frequency in distinct population isolates.

Ioanna Tachmazidou; George V. Dedoussis; Lorraine Southam; Aliki-Eleni Farmaki; Graham R. S. Ritchie; Dionysia K. Xifara; Angela Matchan; Konstantinos Hatzikotoulas; N W Rayner; Yuning Chen; Toni I. Pollin; O'Connell; Laura M. Yerges-Armstrong; Chrysoula Kiagiadaki; Kalliope Panoutsopoulou; Jeremy Schwartzentruber; Loukas Moutsianas; Emmanouil Tsafantakis; Chris Tyler-Smith; Gilean McVean; Yali Xue; Eleftheria Zeggini

Isolated populations can empower the identification of rare variation associated with complex traits through next generation association studies, but the generalizability of such findings remains unknown. Here we genotype 1,267 individuals from a Greek population isolate on the Illumina HumanExome Beadchip, in search of functional coding variants associated with lipids traits. We find genome-wide significant evidence for association between R19X, a functional variant in APOC3, with increased high-density lipoprotein and decreased triglycerides levels. Approximately 3.8% of individuals are heterozygous for this cardioprotective variant, which was previously thought to be private to the Amish founder population. R19X is rare (<0.05% frequency) in outbred European populations. The increased frequency of R19X enables discovery of this lipid traits signal at genome-wide significance in a small sample size. This work exemplifies the value of isolated populations in successfully detecting transferable rare variant associations of high medical relevance.


Nature Communications | 2014

A rare variant in APOC3 is associated with plasma triglyceride and VLDL levels in Europeans

Nicholas J. Timpson; Klaudia Walter; Josine L. Min; Ioanna Tachmazidou; Giovanni Malerba; So-Youn Shin; Lu Chen; Marta Futema; Lorraine Southam; Valentina Iotchkova; Massimiliano Cocca; Jie Huang; Yasin Memari; Shane McCarthy; Petr Danecek; Dawn Muddyman; Massimo Mangino; Cristina Menni; John Perry; Susan M. Ring; Amadou Gaye; George Dedoussis; Aliki-Eleni Farmaki; Paul R. Burton; Philippa J. Talmud; Giovanni Gambaro; Tim D. Spector; George Davey Smith; Richard Durbin; J. Brent Richards

The analysis of rich catalogues of genetic variation from population-based sequencing provides an opportunity to screen for functional effects. Here we report a rare variant in APOC3 (rs138326449-A, minor allele frequency ~0.25% (UK)) associated with plasma triglyceride (TG) levels (−1.43 s.d. (s.e.=0.27 per minor allele (P-value=8.0 × 10−8)) discovered in 3,202 individuals with low read-depth, whole-genome sequence. We replicate this in 12,831 participants from five additional samples of Northern and Southern European origin (−1.0 s.d. (s.e.=0.173), P-value=7.32 × 10−9). This is consistent with an effect between 0.5 and 1.5 mmol l−1 dependent on population. We show that a single predicted splice donor variant is responsible for association signals and is independent of known common variants. Analyses suggest an independent relationship between rs138326449 and high-density lipoprotein (HDL) levels. This represents one of the first examples of a rare, large effect variant identified from whole-genome sequencing at a population scale.


PLOS Genetics | 2007

Genetic association mapping via evolution-based clustering of haplotypes.

Ioanna Tachmazidou; Claudio Verzilli; Maria De Iorio

Multilocus analysis of single nucleotide polymorphism haplotypes is a promising approach to dissecting the genetic basis of complex diseases. We propose a coalescent-based model for association mapping that potentially increases the power to detect disease-susceptibility variants in genetic association studies. The approach uses Bayesian partition modelling to cluster haplotypes with similar disease risks by exploiting evolutionary information. We focus on candidate gene regions with densely spaced markers and model chromosomal segments in high linkage disequilibrium therein assuming a perfect phylogeny. To make this assumption more realistic, we split the chromosomal region of interest into sub-regions or windows of high linkage disequilibrium. The haplotype space is then partitioned into disjoint clusters, within which the phenotype–haplotype association is assumed to be the same. For example, in case-control studies, we expect chromosomal segments bearing the causal variant on a common ancestral background to be more frequent among cases than controls, giving rise to two separate haplotype clusters. The novelty of our approach arises from the fact that the distance used for clustering haplotypes has an evolutionary interpretation, as haplotypes are clustered according to the time to their most recent common ancestor. Our approach is fully Bayesian and we develop a Markov Chain Monte Carlo algorithm to sample efficiently over the space of possible partitions. We compare the proposed approach to both single-marker analyses and recently proposed multi-marker methods and show that the Bayesian partition modelling performs similarly in localizing the causal allele while yielding lower false-positive rates. Also, the method is computationally quicker than other multi-marker approaches. We present an application to real genotype data from the CYP2D6 gene region, which has a confirmed role in drug metabolism, where we succeed in mapping the location of the susceptibility variant within a small error.


Genetic Epidemiology | 2014

Estimating genome-wide significance for whole-genome sequencing studies.

ChangJiang Xu; Ioanna Tachmazidou; Klaudia Walter; Antonio Ciampi; Eleftheria Zeggini; Celia M. T. Greenwood

Although a standard genome‐wide significance level has been accepted for the testing of association between common genetic variants and disease, the era of whole‐genome sequencing (WGS) requires a new threshold. The allele frequency spectrum of sequence‐identified variants is very different from common variants, and the identified rare genetic variation is usually jointly analyzed in a series of genomic windows or regions. In nearby or overlapping windows, these test statistics will be correlated, and the degree of correlation is likely to depend on the choice of window size, overlap, and the test statistic. Furthermore, multiple analyses may be performed using different windows or test statistics. Here we propose an empirical approach for estimating genome‐wide significance thresholds for data arising from WGS studies, and we demonstrate that the empirical threshold can be efficiently estimated by extrapolating from calculations performed on a small genomic region. Because analysis of WGS may need to be repeated with different choices of test statistics or windows, this prediction approach makes it computationally feasible to estimate genome‐wide significance thresholds for different analysis choices. Based on UK10K whole‐genome sequence data, we derive genome‐wide significance thresholds ranging between 2.5 × 10−8 and 8 × 10−8 for our analytic choices in window‐based testing, and thresholds of 0.6 × 10−8–1.5 × 10−8 for a combined analytic strategy of testing common variants using single‐SNP tests together with rare variants analyzed with our sliding‐window test strategy.


Nature Communications | 2014

Genetic characterization of Greek population isolates reveals strong genetic drift at missense and trait-associated variants

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.


Annals of the Rheumatic Diseases | 2017

Genetic architecture distinguishes systemic juvenile idiopathic arthritis from other forms of juvenile idiopathic arthritis: clinical and therapeutic implications

Michael J. Ombrello; Victoria L. Arthur; Elaine F. Remmers; Anne Hinks; Ioanna Tachmazidou; Alexei A. Grom; Dirk Foell; Alberto Martini; Marco Gattorno; Seza Ozen; Sampath Prahalad; Andrew Zeft; John F. Bohnsack; Norman T. Ilowite; Elizabeth D. Mellins; Ricardo Russo; Claudio Arnaldo Len; Maria Odete Esteves Hilário; Sheila Knupp Feitosa de Oliveira; Rae S. M. Yeung; Alan M. Rosenberg; Lucy R. Wedderburn; Jordi Anton; Johannes-Peter Haas; Angela Rösen-Wolff; K. Minden; Klaus Tenbrock; Erkan Demirkaya; Joanna Cobb; Elizabeth Baskin

Objectives Juvenile idiopathic arthritis (JIA) is a heterogeneous group of conditions unified by the presence of chronic childhood arthritis without an identifiable cause. Systemic JIA (sJIA) is a rare form of JIA characterised by systemic inflammation. sJIA is distinguished from other forms of JIA by unique clinical features and treatment responses that are similar to autoinflammatory diseases. However, approximately half of children with sJIA develop destructive, long-standing arthritis that appears similar to other forms of JIA. Using genomic approaches, we sought to gain novel insights into the pathophysiology of sJIA and its relationship with other forms of JIA. Methods We performed a genome-wide association study of 770 children with sJIA collected in nine countries by the International Childhood Arthritis Genetics Consortium. Single nucleotide polymorphisms were tested for association with sJIA. Weighted genetic risk scores were used to compare the genetic architecture of sJIA with other JIA subtypes. Results The major histocompatibility complex locus and a locus on chromosome 1 each showed association with sJIA exceeding the threshold for genome-wide significance, while 23 other novel loci were suggestive of association with sJIA. Using a combination of genetic and statistical approaches, we found no evidence of shared genetic architecture between sJIA and other common JIA subtypes. Conclusions The lack of shared genetic risk factors between sJIA and other JIA subtypes supports the hypothesis that sJIA is a unique disease process and argues for a different classification framework. Research to improve sJIA therapy should target its unique genetics and specific pathophysiological pathways.


European Journal of Human Genetics | 2014

Using ancestry-informative markers to identify fine structure across 15 populations of European origin

Laura M Huckins; Vesna Boraska; Christopher S. Franklin; James A B Floyd; Lorraine Southam; Patrick F. Sullivan; Cynthia M. Bulik; David A. Collier; Chris Tyler-Smith; Eleftheria Zeggini; Ioanna Tachmazidou

The Wellcome Trust Case Control Consortium 3 anorexia nervosa genome-wide association scan includes 2907 cases from 15 different populations of European origin genotyped on the Illumina 670K chip. We compared methods for identifying population stratification, and suggest list of markers that may help to counter this problem. It is usual to identify population structure in such studies using only common variants with minor allele frequency (MAF) >5%; we find that this may result in highly informative SNPs being discarded, and suggest that instead all SNPs with MAF >1% may be used. We established informative axes of variation identified via principal component analysis and highlight important features of the genetic structure of diverse European-descent populations, some studied for the first time at this scale. Finally, we investigated the substructure within each of these 15 populations and identified SNPs that help capture hidden stratification. This work can provide information regarding the designing and interpretation of association results in the International Consortia.

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Eleftheria Zeggini

Wellcome Trust Sanger Institute

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Lorraine Southam

Wellcome Trust Sanger Institute

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Daniel Suveges

Wellcome Trust Sanger Institute

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Kalliope Panoutsopoulou

Wellcome Trust Sanger Institute

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Arthur Gilly

Wellcome Trust Sanger Institute

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