Esther Schmidt
European Bioinformatics Institute
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Esther Schmidt.
Nature | 2007
Christopher Greenman; Philip Stephens; Raffaella Smith; Gillian L. Dalgliesh; Chris Hunter; Graham R. Bignell; Helen Davies; Jon Teague; Adam Butler; Claire Stevens; Sarah Edkins; Sarah O’Meara; Imre Vastrik; Esther Schmidt; Tim Avis; Syd Barthorpe; Gurpreet Bhamra; Gemma Buck; Bhudipa Choudhury; Jody Clements; Jennifer Cole; Ed Dicks; Simon A. Forbes; Kris Gray; Kelly Halliday; Rachel Harrison; Katy Hills; Jon Hinton; Andy Jenkinson; David Jones
Cancers arise owing to mutations in a subset of genes that confer growth advantage. The availability of the human genome sequence led us to propose that systematic resequencing of cancer genomes for mutations would lead to the discovery of many additional cancer genes. Here we report more than 1,000 somatic mutations found in 274 megabases (Mb) of DNA corresponding to the coding exons of 518 protein kinase genes in 210 diverse human cancers. There was substantial variation in the number and pattern of mutations in individual cancers reflecting different exposures, DNA repair defects and cellular origins. Most somatic mutations are likely to be ‘passengers’ that do not contribute to oncogenesis. However, there was evidence for ‘driver’ mutations contributing to the development of the cancers studied in approximately 120 genes. Systematic sequencing of cancer genomes therefore reveals the evolutionary diversity of cancers and implicates a larger repertoire of cancer genes than previously anticipated.
Nucleic Acids Research | 2002
Tim Hubbard; Darren Barker; Ewan Birney; Graham Cameron; Yuan Chen; L. Clark; Tony Cox; James Cuff; V. Curwen; Thomas A. Down; Richard Durbin; E. Eyras; James Gilbert; Martin Hammond; L. Huminiecki; Arek Kasprzyk; Heikki Lehväslaiho; Philip Lijnzaad; Craig Melsopp; Emmanuel Mongin; R. Pettett; M. Pocock; Simon Potter; A. Rust; Esther Schmidt; Stephen M. J. Searle; Guy Slater; J. Smith; W. Spooner; A. Stabenau
The Ensembl (http://www.ensembl.org/) database project provides a bioinformatics framework to organise biology around the sequences of large genomes. It is a comprehensive source of stable automatic annotation of the human genome sequence, with confirmed gene predictions that have been integrated with external data sources, and is available as either an interactive web site or as flat files. It is also an open source software engineering project to develop a portable system able to handle very large genomes and associated requirements from sequence analysis to data storage and visualisation. The Ensembl site is one of the leading sources of human genome sequence annotation and provided much of the analysis for publication by the international human genome project of the draft genome. The Ensembl system is being installed around the world in both companies and academic sites on machines ranging from supercomputers to laptops.
Nucleic Acids Research | 2004
G. Joshi-Tope; Marc Gillespie; Imre Vastrik; Peter D'Eustachio; Esther Schmidt; B. de Bono; Bijay Jassal; G.R. Gopinath; G.R. Wu; Lisa Matthews; Suzanna E. Lewis; Ewan Birney; Lincoln Stein
Reactome, located at http://www.reactome.org is a curated, peer-reviewed resource of human biological processes. Given the genetic makeup of an organism, the complete set of possible reactions constitutes its reactome. The basic unit of the Reactome database is a reaction; reactions are then grouped into causal chains to form pathways. The Reactome data model allows us to represent many diverse processes in the human system, including the pathways of intermediary metabolism, regulatory pathways, and signal transduction, and high-level processes, such as the cell cycle. Reactome provides a qualitative framework, on which quantitative data can be superimposed. Tools have been developed to facilitate custom data entry and annotation by expert biologists, and to allow visualization and exploration of the finished dataset as an interactive process map. Although our primary curational domain is pathways from Homo sapiens, we regularly create electronic projections of human pathways onto other organisms via putative orthologs, thus making Reactome relevant to model organism research communities. The database is publicly available under open source terms, which allows both its content and its software infrastructure to be freely used and redistributed.
Nucleic Acids Research | 2011
David Croft; Gavin O’Kelly; Guanming Wu; Robin Haw; Marc Gillespie; Lisa Matthews; Michael Caudy; Phani Garapati; Gopal Gopinath; Bijay Jassal; Steven Jupe; Irina Kalatskaya; Shahana Mahajan; Bruce May; Nelson Ndegwa; Esther Schmidt; Veronica Shamovsky; Christina K. Yung; Ewan Birney; Henning Hermjakob; Peter D’Eustachio; Lincoln Stein
Reactome (http://www.reactome.org) is a collaboration among groups at the Ontario Institute for Cancer Research, Cold Spring Harbor Laboratory, New York University School of Medicine and The European Bioinformatics Institute, to develop an open source curated bioinformatics database of human pathways and reactions. Recently, we developed a new web site with improved tools for pathway browsing and data analysis. The Pathway Browser is an Systems Biology Graphical Notation (SBGN)-based visualization system that supports zooming, scrolling and event highlighting. It exploits PSIQUIC web services to overlay our curated pathways with molecular interaction data from the Reactome Functional Interaction Network and external interaction databases such as IntAct, BioGRID, ChEMBL, iRefIndex, MINT and STRING. Our Pathway and Expression Analysis tools enable ID mapping, pathway assignment and overrepresentation analysis of user-supplied data sets. To support pathway annotation and analysis in other species, we continue to make orthology-based inferences of pathways in non-human species, applying Ensembl Compara to identify orthologs of curated human proteins in each of 20 other species. The resulting inferred pathway sets can be browsed and analyzed with our Species Comparison tool. Collaborations are also underway to create manually curated data sets on the Reactome framework for chicken, Drosophila and rice.
Nucleic Acids Research | 2009
Lisa Matthews; Gopal Gopinath; Marc Gillespie; Michael Caudy; David Croft; Bernard de Bono; Phani Garapati; Jill Hemish; Henning Hermjakob; Bijay Jassal; Alex Kanapin; Suzanna E. Lewis; Shahana Mahajan; Bruce May; Esther Schmidt; Imre Vastrik; Guanming Wu; Ewan Birney; Lincoln Stein; Peter D’Eustachio
Reactome (http://www.reactome.org) is an expert-authored, peer-reviewed knowledgebase of human reactions and pathways that functions as a data mining resource and electronic textbook. Its current release includes 2975 human proteins, 2907 reactions and 4455 literature citations. A new entity-level pathway viewer and improved search and data mining tools facilitate searching and visualizing pathway data and the analysis of user-supplied high-throughput data sets. Reactome has increased its utility to the model organism communities with improved orthology prediction methods allowing pathway inference for 22 species and through collaborations to create manually curated Reactome pathway datasets for species including Arabidopsis, Oryza sativa (rice), Drosophila and Gallus gallus (chicken). Reactomes data content and software can all be freely used and redistributed under open source terms.
Nucleic Acids Research | 2003
Michele Clamp; D. Andrews; Darren Barker; Paul Bevan; Graham Cameron; Yuting Chen; Louise Clark; Tony Cox; James Cuff; Val Curwen; Thomas A. Down; Richard Durbin; Eduardo Eyras; James Gilbert; Martin Hammond; Tim Hubbard; Arek Kasprzyk; Damian Keefe; Heikki Lehväslaiho; Vishwanath R. Iyer; Craig Melsopp; Emmanuel Mongin; Roger Pettett; Simon Potter; Alistair G. Rust; Esther Schmidt; Steve Searle; Guy Slater; James Smith; William Spooner
The Ensembl (http://www.ensembl.org/) database project provides a bioinformatics framework to organise biology around the sequences of large genomes. It is a comprehensive source of stable automatic annotation of human, mouse and other genome sequences, available as either an interactive web site or as flat files. Ensembl also integrates manually annotated gene structures from external sources where available. As well as being one of the leading sources of genome annotation, Ensembl is an open source software engineering project to develop a portable system able to handle very large genomes and associated requirements. These range from sequence analysis to data storage and visualisation and installations exist around the world in both companies and at academic sites. With both human and mouse genome sequences available and more vertebrate sequences to follow, many of the recent developments in Ensembl have focusing on developing automatic comparative genome analysis and visualisation.
Nucleic Acids Research | 2013
Esther Schmidt; Oliver Pelz; Svetlana Buhlmann; Grainne Kerr; Thomas Horn; Michael Boutros
RNA interference (RNAi) represents a powerful method to systematically study loss-of-function phenotypes on a large scale with a wide variety of biological assays, constituting a rich source for the assignment of gene function. The GenomeRNAi database (http://www.genomernai.org) makes available RNAi phenotype data extracted from the literature for human and Drosophila. It also provides RNAi reagent information, along with an assessment as to their efficiency and specificity. This manuscript describes an update of the database previously featured in the NAR Database Issue. The new version has undergone a complete re-design of the user interface, providing an intuitive, flexible framework for additional functionalities. Screen information and gene-reagent-phenotype associations are now available for download. The integration with other resources has been improved by allowing in-links via GenomeRNAi screen IDs, or external gene or reagent identifiers. A distributed annotation system (DAS) server enables the visualization of the phenotypes and reagents in the context of a genome browser. We have added a page listing ‘frequent hitters’, i.e. genes that show a phenotype in many screens, which might guide on-going RNAi studies. Structured annotation guidelines have been established to facilitate consistent curation, and a submission template for direct submission by data producers is available for download.
Nucleic Acids Research | 2010
Alexey V. Antonov; Esther Schmidt; Sabine Dietmann; Maria Krestyaninova; Henning Hermjakob
R spider is a web-based tool for the analysis of a gene list using the systematic knowledge of core pathways and reactions in human biology accumulated in the Reactome and KEGG databases. R spider implements a network-based statistical framework, which provides a global understanding of gene relations in the supplied gene list, and fully exploits the Reactome and KEGG knowledge bases. R spider provides a user-friendly dialog-driven web interface for several model organisms and supports most available gene identifiers. R spider is freely available at http://mips.helmholtz-muenchen.de/proj/rspider.
The Plant Cell | 2008
Nicolas Tsesmetzis; Matthew Couchman; Janet Higgins; Alison M. Smith; John H. Doonan; Georg Seifert; Esther Schmidt; Imre Vastrik; Ewan Birney; Guanming Wu; Peter D'Eustachio; Lincoln Stein; Richard J. Morris; Michael W. Bevan; Sean Walsh
New ways of capturing and representing biological knowledge are needed to enable individual researchers to remain abreast of relevant discoveries and to permit computational approaches for interpreting the large volumes of diverse data generated by modern biological research. Here, we describe a
Genome Biology | 2009
Imre Vastrik; Peter D'Eustachio; Esther Schmidt; Gopal Gopinath; David Croft; Bernard de Bono; Marc Gillespie; Bijay Jassal; Suzanna E. Lewis; Lisa Matthews; Guanming Wu; Ewan Birney; Lincoln Stein
Reactome http://www.reactome.org, an online curated resource for human pathway data, provides infrastructure for computation across the biologic reaction network. We use Reactome to infer equivalent reactions in multiple nonhuman species, and present data on the reliability of these inferred reactions for the distantly related eukaryote Saccharomyces cerevisiae. Finally, we describe the use of Reactome both as a learning resource and as a computational tool to aid in the interpretation of microarrays and similar large-scale datasets.