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Dive into the research topics where Simon Tavaré is active.

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Featured researches published by Simon Tavaré.


Nature | 2012

The genomic and transcriptomic architecture of 2,000 breast tumours reveals novel subgroups

Christina Curtis; Sohrab P. Shah; Suet-Feung Chin; Gulisa Turashvili; Oscar M. Rueda; Mark J. Dunning; Doug Speed; Andy G. Lynch; Shamith Samarajiwa; Yinyin Yuan; Stefan Gräf; Gavin Ha; Gholamreza Haffari; Ali Bashashati; Roslin Russell; Steven McKinney; Anita Langerød; Andrew T. Green; Elena Provenzano; G.C. Wishart; Sarah Pinder; Peter H. Watson; Florian Markowetz; Leigh Murphy; Ian O. Ellis; Arnie Purushotham; Anne Lise Børresen-Dale; James D. Brenton; Simon Tavaré; Carlos Caldas

The elucidation of breast cancer subgroups and their molecular drivers requires integrated views of the genome and transcriptome from representative numbers of patients. We present an integrated analysis of copy number and gene expression in a discovery and validation set of 997 and 995 primary breast tumours, respectively, with long-term clinical follow-up. Inherited variants (copy number variants and single nucleotide polymorphisms) and acquired somatic copy number aberrations (CNAs) were associated with expression in ∼40% of genes, with the landscape dominated by cis- and trans-acting CNAs. By delineating expression outlier genes driven in cis by CNAs, we identified putative cancer genes, including deletions in PPP2R2A, MTAP and MAP2K4. Unsupervised analysis of paired DNA–RNA profiles revealed novel subgroups with distinct clinical outcomes, which reproduced in the validation cohort. These include a high-risk, oestrogen-receptor-positive 11q13/14 cis-acting subgroup and a favourable prognosis subgroup devoid of CNAs. Trans-acting aberration hotspots were found to modulate subgroup-specific gene networks, including a TCR deletion-mediated adaptive immune response in the ‘CNA-devoid’ subgroup and a basal-specific chromosome 5 deletion-associated mitotic network. Our results provide a novel molecular stratification of the breast cancer population, derived from the impact of somatic CNAs on the transcriptome.


Nature Genetics | 2007

Population genomics of human gene expression

Barbara E. Stranger; Alexandra C. Nica; Matthew S. Forrest; Antigone S. Dimas; Christine P. Bird; Claude Beazley; Catherine E. Ingle; Mark Dunning; Paul Flicek; Daphne Koller; Stephen B. Montgomery; Simon Tavaré; Panagiotis Deloukas; Emmanouil T. Dermitzakis

Genetic variation influences gene expression, and this variation in gene expression can be efficiently mapped to specific genomic regions and variants. Here we have used gene expression profiling of Epstein-Barr virus–transformed lymphoblastoid cell lines of all 270 individuals genotyped in the HapMap Consortium to elucidate the detailed features of genetic variation underlying gene expression variation. We find that gene expression is heritable and that differentiation between populations is in agreement with earlier small-scale studies. A detailed association analysis of over 2.2 million common SNPs per population (5% frequency in HapMap) with gene expression identified at least 1,348 genes with association signals in cis and at least 180 in trans. Replication in at least one independent population was achieved for 37% of cis signals and 15% of trans signals, respectively. Our results strongly support an abundance of cis-regulatory variation in the human genome. Detection of trans effects is limited but suggests that regulatory variation may be the key primary effect contributing to phenotypic variation in humans. We also explore several methodologies that improve the current state of analysis of gene expression variation.


Genome Biology | 2007

MicroRNA expression profiling of human breast cancer identifies new markers of tumor subtype

Cherie Blenkiron; Leonard D. Goldstein; Natalie P. Thorne; Inmaculada Spiteri; Suet Feung Chin; Mark J. Dunning; Nuno L. Barbosa-Morais; Andrew E. Teschendorff; Andrew R. Green; Ian O. Ellis; Simon Tavaré; Carlos Caldas; Eric A. Miska

BackgroundMicroRNAs (miRNAs), a class of short non-coding RNAs found in many plants and animals, often act post-transcriptionally to inhibit gene expression.ResultsHere we report the analysis of miRNA expression in 93 primary human breast tumors, using a bead-based flow cytometric miRNA expression profiling method. Of 309 human miRNAs assayed, we identify 133 miRNAs expressed in human breast and breast tumors. We used mRNA expression profiling to classify the breast tumors as luminal A, luminal B, basal-like, HER2+ and normal-like. A number of miRNAs are differentially expressed between these molecular tumor subtypes and individual miRNAs are associated with clinicopathological factors. Furthermore, we find that miRNAs could classify basal versus luminal tumor subtypes in an independent data set. In some cases, changes in miRNA expression correlate with genomic loss or gain; in others, changes in miRNA expression are likely due to changes in primary transcription and or miRNA biogenesis. Finally, the expression of DICER1 and AGO2 is correlated with tumor subtype and may explain some of the changes in miRNA expression observed.ConclusionThis study represents the first integrated analysis of miRNA expression, mRNA expression and genomic changes in human breast cancer and may serve as a basis for functional studies of the role of miRNAs in the etiology of breast cancer. Furthermore, we demonstrate that bead-based flow cytometric miRNA expression profiling might be a suitable platform to classify breast cancer into prognostic molecular subtypes.


Proceedings of the National Academy of Sciences of the United States of America | 2003

Markov chain Monte Carlo without likelihoods

Paul Marjoram; John Molitor; Vincent Plagnol; Simon Tavaré

Many stochastic simulation approaches for generating observations from a posterior distribution depend on knowing a likelihood function. However, for many complex probability models, such likelihoods are either impossible or computationally prohibitive to obtain. Here we present a Markov chain Monte Carlo method for generating observations from a posterior distribution without the use of likelihoods. It can also be used in frequentist applications, in particular for maximum-likelihood estimation. The approach is illustrated by an example of ancestral inference in population genetics. A number of open problems are highlighted in the discussion.


Proceedings of the National Academy of Sciences of the United States of America | 2013

Intratumor heterogeneity in human glioblastoma reflects cancer evolutionary dynamics

Andrea Sottoriva; Inmaculada Spiteri; Sara Piccirillo; Anestis Touloumis; V. P. Collins; John C. Marioni; Christina Curtis; Colin Watts; Simon Tavaré

Glioblastoma (GB) is the most common and aggressive primary brain malignancy, with poor prognosis and a lack of effective therapeutic options. Accumulating evidence suggests that intratumor heterogeneity likely is the key to understanding treatment failure. However, the extent of intratumor heterogeneity as a result of tumor evolution is still poorly understood. To address this, we developed a unique surgical multisampling scheme to collect spatially distinct tumor fragments from 11 GB patients. We present an integrated genomic analysis that uncovers extensive intratumor heterogeneity, with most patients displaying different GB subtypes within the same tumor. Moreover, we reconstructed the phylogeny of the fragments for each patient, identifying copy number alterations in EGFR and CDKN2A/B/p14ARF as early events, and aberrations in PDGFRA and PTEN as later events during cancer progression. We also characterized the clonal organization of each tumor fragment at the single-molecule level, detecting multiple coexisting cell lineages. Our results reveal the genome-wide architecture of intratumor variability in GB across multiple spatial scales and patient-specific patterns of cancer evolution, with consequences for treatment design.


Genes & Development | 2009

Autophagy mediates the mitotic senescence transition

Andrew J. Young; Masako Narita; Manuela Ferreira; Kristina Kirschner; Mahito Sadaie; Jeremy F. J. Darot; Simon Tavaré; Satoko Arakawa; Shigeomi Shimizu; Fiona M. Watt; Masashi Narita

As a stress response, senescence is a dynamic process involving multiple effector mechanisms whose combination determines the phenotypic quality. Here we identify autophagy as a new effector mechanism of senescence. Autophagy is activated during senescence and its activation is correlated with negative feedback in the PI3K-mammalian target of rapamycin (mTOR) pathway. A subset of autophagy-related genes are up-regulated during senescence: Overexpression of one of those genes, ULK3, induces autophagy and senescence. Furthermore, inhibition of autophagy delays the senescence phenotype, including senescence-associated secretion. Our data suggest that autophagy, and its consequent protein turnover, mediate the acquisition of the senescence phenotype.


Nature Biotechnology | 2008

A Bayesian deconvolution strategy for immunoprecipitation-based DNA methylome analysis

Thomas A. Down; Vardhman K. Rakyan; Daniel J. Turner; Paul Flicek; Heng Li; Eugene Kulesha; Stefan Gräf; Nathan Johnson; Javier Herrero; Eleni M. Tomazou; Natalie P. Thorne; Liselotte Bäckdahl; Marlis Herberth; Kevin L. Howe; David K. Jackson; Marcos M Miretti; John C. Marioni; Ewan Birney; Tim Hubbard; Richard Durbin; Simon Tavaré; Stephan Beck

DNA methylation is an indispensible epigenetic modification required for regulating the expression of mammalian genomes. Immunoprecipitation-based methods for DNA methylome analysis are rapidly shifting the bottleneck in this field from data generation to data analysis, necessitating the development of better analytical tools. In particular, an inability to estimate absolute methylation levels remains a major analytical difficulty associated with immunoprecipitation-based DNA methylation profiling. To address this issue, we developed a cross-platform algorithm—Bayesian tool for methylation analysis (Batman)—for analyzing methylated DNA immunoprecipitation (MeDIP) profiles generated using oligonucleotide arrays (MeDIP-chip) or next-generation sequencing (MeDIP-seq). We developed the latter approach to provide a high-resolution whole-genome DNA methylation profile (DNA methylome) of a mammalian genome. Strong correlation of our data, obtained using mature human spermatozoa, with those obtained using bisulfite sequencing suggest that combining MeDIP-seq or MeDIP-chip with Batman provides a robust, quantitative and cost-effective functional genomic strategy for elucidating the function of DNA methylation.


Trends in Genetics | 2002

Linkage disequilibrium: what history has to tell us

Magnus Nordborg; Simon Tavaré

Linkage disequilibrium has become important in the context of gene mapping. We argue that to understand the pattern of association between alleles at different loci, and of DNA sequence polymorphism in general, it is useful first to consider the underlying genealogy of the chromosomes. The stochastic process known as the coalescent is a convenient way to model such genealogies, and in this paper we set out the theory behind the coalescent and its implications for understanding linkage disequilibrium.


Proceedings of the National Academy of Sciences of the United States of America | 2001

Investigating stem cells in human colon by using methylation patterns

Yasushi Yatabe; Simon Tavaré; Darryl Shibata

The stem cells that maintain human colon crypts are poorly characterized. To better determine stem cell numbers and how they divide, epigenetic patterns were used as cell fate markers. Methylation exhibits somatic inheritance and random changes that potentially record lifelong stem cell division histories as binary strings or tags in adjacent CpG sites. Methylation tag contents of individual crypts were sampled with bisulfite sequencing at three presumably neutral loci. Methylation increased with aging but varied between crypts and was mosaic within single crypts. Some crypts appeared to be quasi-clonal as they contained more unique tags than expected if crypts were maintained by single immortal stem cells. The complex epigenetic patterns were more consistent with a crypt niche model wherein multiple stem cells were present and replaced through periodic symmetric divisions. Methylation tags provide evidence that normal human crypts are long-lived, accumulate random methylation errors, and contain multiple stem cells that go through “bottlenecks” during life.


Genome Research | 2008

An integrated resource for genome-wide identification and analysis of human tissue-specific differentially methylated regions (tDMRs)

Vardhman K. Rakyan; Thomas A. Down; Natalie P. Thorne; Paul Flicek; Eugene Kulesha; Stefan Gräf; Eleni M. Tomazou; Liselotte Bäckdahl; Nathan Johnson; Marlis Herberth; Kevin L. Howe; David K. Jackson; Marcos M Miretti; Heike Fiegler; John C. Marioni; Ewan Birney; Tim Hubbard; Nigel P. Carter; Simon Tavaré; Stephan Beck

We report a novel resource (methylation profiles of DNA, or mPod) for human genome-wide tissue-specific DNA methylation profiles. mPod consists of three fully integrated parts, genome-wide DNA methylation reference profiles of 13 normal somatic tissues, placenta, sperm, and an immortalized cell line, a visualization tool that has been integrated with the Ensembl genome browser and a new algorithm for the analysis of immunoprecipitation-based DNA methylation profiles. We demonstrate the utility of our resource by identifying the first comprehensive genome-wide set of tissue-specific differentially methylated regions (tDMRs) that may play a role in cellular identity and the regulation of tissue-specific genome function. We also discuss the implications of our findings with respect to the regulatory potential of regions with varied CpG density, gene expression, transcription factor motifs, gene ontology, and correlation with other epigenetic marks such as histone modifications.

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Darryl Shibata

University of Southern California

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Richard Arratia

University of Southern California

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Andrea Sottoriva

Institute of Cancer Research

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