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Featured researches published by Ele Holloway.


Nucleic Acids Research | 2003

ArrayExpress—a public repository for microarray gene expression data at the EBI

Helen Parkinson; Ugis Sarkans; Mohammadreza Shojatalab; Niran Abeygunawardena; Sergio Contrino; Richard M. R. Coulson; Anna Farne; Gonzalo Garcia Lara; Ele Holloway; Misha Kapushesky; P. Lilja; Gaurab Mukherjee; Ahmet Oezcimen; Tim F. Rayner; Philippe Rocca-Serra; Anjan Sharma; Susanna-Assunta Sansone; Alvis Brazma

ArrayExpress is a public repository for microarray data that supports the MIAME (Minimum Informa-tion About a Microarray Experiment) requirements and stores well-annotated raw and normalized data. As of November 2004, ArrayExpress contains data from ∼12 000 hybridizations covering 35 species. Data can be submitted online or directly from local databases or LIMS in a standard format, and password-protected access to prepublication data is provided for reviewers and authors. The data can be retrieved by accession number or queried by vari-ous parameters such as species, author and array platform. A facility to query experiments by gene and sample properties is provided for a growing subset of curated data that is loaded in to the ArrayExpress data warehouse. Data can be visualized and analysed using Expression Profiler, the integrated data analysis tool. ArrayExpress is available at http://www.ebi.ac.uk/arrayexpress.


Nucleic Acids Research | 2007

ArrayExpress—a public database of microarray experiments and gene expression profiles

Helen Parkinson; Misha Kapushesky; Mohammadreza Shojatalab; Niran Abeygunawardena; Richard M. R. Coulson; Anna Farne; Ele Holloway; Nikolay Kolesnykov; P. Lilja; Margus Lukk; Roby Mani; Tim F. Rayner; Anjan Sharma; E. William; Ugis Sarkans; Alvis Brazma

ArrayExpress is a public database for high throughput functional genomics data. ArrayExpress consists of two parts—the ArrayExpress Repository, which is a MIAME supportive public archive of microarray data, and the ArrayExpress Data Warehouse, which is a database of gene expression profiles selected from the repository and consistently re-annotated. Archived experiments can be queried by experiment attributes, such as keywords, species, array platform, authors, journals or accession numbers. Gene expression profiles can be queried by gene names and properties, such as Gene Ontology terms and gene expression profiles can be visualized. ArrayExpress is a rapidly growing database, currently it contains data from >50 000 hybridizations and >1 500 000 individual expression profiles. ArrayExpress supports community standards, including MIAME, MAGE-ML and more recently the proposal for a spreadsheet based data exchange format: MAGE-TAB. Availability: .


Nucleic Acids Research | 2009

ArrayExpress update—from an archive of functional genomics experiments to the atlas of gene expression

Helen E. Parkinson; Misha Kapushesky; Nikolay Kolesnikov; Gabriella Rustici; Mohammadreza Shojatalab; Niran Abeygunawardena; Hugo Bérubé; Miroslaw Dylag; Ibrahim Emam; Anna Farne; Ele Holloway; Margus Lukk; James P. Malone; Roby Mani; Ekaterina Pilicheva; Tim F. Rayner; Faisal Ibne Rezwan; Anjan Sharma; Eleanor Williams; Xiangqun Zheng Bradley; Tomasz Adamusiak; Marco Brandizi; Tony Burdett; Richard M. R. Coulson; Maria Krestyaninova; Pavel Kurnosov; Eamonn Maguire; Sudeshna Guha Neogi; Philippe Rocca-Serra; Susanna-Assunta Sansone

ArrayExpress http://www.ebi.ac.uk/arrayexpress consists of three components: the ArrayExpress Repository—a public archive of functional genomics experiments and supporting data, the ArrayExpress Warehouse—a database of gene expression profiles and other bio-measurements and the ArrayExpress Atlas—a new summary database and meta-analytical tool of ranked gene expression across multiple experiments and different biological conditions. The Repository contains data from over 6000 experiments comprising approximately 200 000 assays, and the database doubles in size every 15 months. The majority of the data are array based, but other data types are included, most recently—ultra high-throughput sequencing transcriptomics and epigenetic data. The Warehouse and Atlas allow users to query for differentially expressed genes by gene names and properties, experimental conditions and sample properties, or a combination of both. In this update, we describe the ArrayExpress developments over the last two years.


Nucleic Acids Research | 2011

ArrayExpress update—an archive of microarray and high-throughput sequencing-based functional genomics experiments

Helen E. Parkinson; Ugis Sarkans; Nikolay Kolesnikov; Niran Abeygunawardena; Tony Burdett; Miroslaw Dylag; Ibrahim Emam; Anna Farne; Emma Hastings; Ele Holloway; Natalja Kurbatova; Margus Lukk; James Malone; Roby Mani; Ekaterina Pilicheva; Gabriella Rustici; Anjan Sharma; Eleanor Williams; Tomasz Adamusiak; Marco Brandizi; Nataliya Sklyar; Alvis Brazma

The ArrayExpress Archive (http://www.ebi.ac.uk/arrayexpress) is one of the three international public repositories of functional genomics data supporting publications. It includes data generated by sequencing or array-based technologies. Data are submitted by users and imported directly from the NCBI Gene Expression Omnibus. The ArrayExpress Archive is closely integrated with the Gene Expression Atlas and the sequence databases at the European Bioinformatics Institute. Advanced queries provided via ontology enabled interfaces include queries based on technology and sample attributes such as disease, cell types and anatomy.


Bioinformatics | 2010

Modeling sample variables with an Experimental Factor Ontology

James Malone; Ele Holloway; Tomasz Adamusiak; Misha Kapushesky; Jie Zheng; Nikolay Kolesnikov; Anna Zhukova; Alvis Brazma; Helen Parkinson

Motivation: Describing biological sample variables with ontologies is complex due to the cross-domain nature of experiments. Ontologies provide annotation solutions; however, for cross-domain investigations, multiple ontologies are needed to represent the data. These are subject to rapid change, are often not interoperable and present complexities that are a barrier to biological resource users. Results: We present the Experimental Factor Ontology, designed to meet cross-domain, application focused use cases for gene expression data. We describe our methodology and open source tools used to create the ontology. These include tools for creating ontology mappings, ontology views, detecting ontology changes and using ontologies in interfaces to enhance querying. The application of reference ontologies to data is a key problem, and this work presents guidelines on how community ontologies can be presented in an application ontology in a data-driven way. Availability: http://www.ebi.ac.uk/efo Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


BMC Bioinformatics | 2006

A simple spreadsheet-based, MIAME-supportive format for microarray data: MAGE-TAB

Tim F. Rayner; Philippe Rocca-Serra; Paul T. Spellman; Helen C. Causton; Anna Farne; Ele Holloway; Rafael A. Irizarry; Junmin Liu; Donald Maier; Michael R. Miller; Kjell Petersen; John Quackenbush; Gavin Sherlock; Christian J. Stoeckert; Joseph White; Patricia L. Whetzel; Farrell Wymore; Helen Parkinson; Ugis Sarkans; Catherine A. Ball; Alvis Brazma

BackgroundSharing of microarray data within the research community has been greatly facilitated by the development of the disclosure and communication standards MIAME and MAGE-ML by the MGED Society. However, the complexity of the MAGE-ML format has made its use impractical for laboratories lacking dedicated bioinformatics support.ResultsWe propose a simple tab-delimited, spreadsheet-based format, MAGE-TAB, which will become a part of the MAGE microarray data standard and can be used for annotating and communicating microarray data in a MIAME compliant fashion.ConclusionMAGE-TAB will enable laboratories without bioinformatics experience or support to manage, exchange and submit well-annotated microarray data in a standard format using a spreadsheet. The MAGE-TAB format is self-contained, and does not require an understanding of MAGE-ML or XML.


Nucleic Acids Research | 2010

Gene Expression Atlas at the European Bioinformatics Institute

Misha Kapushesky; Ibrahim Emam; Ele Holloway; Pavel Kurnosov; Andrey Zorin; James Malone; Gabriella Rustici; Eleanor Williams; Helen Parkinson; Alvis Brazma

The Gene Expression Atlas (http://www.ebi.ac.uk/gxa) is an added-value database providing information about gene expression in different cell types, organism parts, developmental stages, disease states, sample treatments and other biological/experimental conditions. The content of this database derives from curation, re-annotation and statistical analysis of selected data from the ArrayExpress Archive of Functional Genomics Data. A simple interface allows the user to query for differential gene expression either (i) by gene names or attributes such as Gene Ontology terms, or (ii) by biological conditions, e.g. diseases, organism parts or cell types. The gene queries return the conditions where expression has been reported, while condition queries return which genes are reported to be expressed in these conditions. A combination of both query types is possible. The query results are ranked using various statistical measures and by how many independent studies in the database show the particular gene-condition association. Currently, the database contains information about more than 200 000 genes from nine species and almost 4500 biological conditions studied in over 30 000 assays from over 1000 independent studies.


Nucleic Acids Research | 2012

Gene Expression Atlas update—a value-added database of microarray and sequencing-based functional genomics experiments

Misha Kapushesky; Tomasz Adamusiak; Tony Burdett; Aedín C. Culhane; Anna Farne; Alexey Filippov; Ele Holloway; Andrey Klebanov; Nataliya Kryvych; Natalja Kurbatova; Pavel Kurnosov; James P. Malone; Olga Melnichuk; Robert Petryszak; Nikolay Pultsin; Gabriella Rustici; Andrew Tikhonov; Ravensara S. Travillian; Eleanor Williams; Andrey Zorin; Helen E. Parkinson; Alvis Brazma

Gene Expression Atlas (http://www.ebi.ac.uk/gxa) is an added-value database providing information about gene expression in different cell types, organism parts, developmental stages, disease states, sample treatments and other biological/experimental conditions. The content of this database derives from curation, re-annotation and statistical analysis of selected data from the ArrayExpress Archive and the European Nucleotide Archive. A simple interface allows the user to query for differential gene expression either by gene names or attributes or by biological conditions, e.g. diseases, organism parts or cell types. Since our previous report we made 20 monthly releases and, as of Release 11.08 (August 2011), the database supports 19 species, which contains expression data measured for 19 014 biological conditions in 136 551 assays from 5598 independent studies.


Plant Physiology | 2005

Plant-Based Microarray Data at the European Bioinformatics Institute. Introducing AtMIAMExpress, a Submission Tool for Arabidopsis Gene Expression Data to ArrayExpress

Gaurab Mukherjee; Niran Abeygunawardena; Helen Parkinson; Sergio Contrino; Steffen Durinck; Anna Farne; Ele Holloway; Per Lilja; Yves Moreau; Ahmet Oezcimen; Tim F. Rayner; Anjan Sharma; Alvis Brazma; Ugis Sarkans; Mohammadreza Shojatalab

ArrayExpress is a public microarray repository founded on the Minimum Information About a Microarray Experiment (MIAME) principles that stores MIAME-compliant gene expression data. Plant-based data sets represent approximately one-quarter of the experiments in ArrayExpress. The majority are based on Arabidopsis (Arabidopsis thaliana); however, there are other data sets based on Triticum aestivum, Hordeum vulgare, and Populus subsp. AtMIAMExpress is an open-source Web-based software application for the submission of Arabidopsis-based microarray data to ArrayExpress. AtMIAMExpress exports data in MAGE-ML format for upload to any MAGE-ML-compliant application, such as J-Express and ArrayExpress. It was designed as a tool for users with minimal bioinformatics expertise, has comprehensive help and user support, and represents a simple solution to meeting the MIAME guidelines for the Arabidopsis community. Plant data are queryable both in ArrayExpress and in the Data Warehouse databases, which support queries based on gene-centric and sample-centric annotation. The AtMIAMExpress submission tool is available at http://www.ebi.ac.uk/at-miamexpress/. The software is open source and is available from http://sourceforge.net/projects/miamexpress/. For information, contact [email protected].


Comparative and Functional Genomics | 2002

From Genotype to Phenotype: Linking Bioinformatics and Medical Informatics Ontologies

Ele Holloway

A small group of around 40 people came together at the Chancellors Conference Centre in Manchester for the Ontologies Workshop, chaired by Alan Rector and Robert Stevens. The workshop was, rather strangely, spread over 2 half days. In hindsight, this programme worked very well as it gave people the opportunity to chat over a drink on the Saturday evening and share ideas, before launching into the second half on the following day. The participants were from various walks of life, all with a common interest in finding out more about ontologies and promoting collaborations between the medical informatics and bioinformatics ontology communities.

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Alvis Brazma

European Bioinformatics Institute

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Helen Parkinson

Swiss Institute of Bioinformatics

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Misha Kapushesky

European Bioinformatics Institute

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Anna Farne

European Bioinformatics Institute

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Niran Abeygunawardena

European Bioinformatics Institute

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Ugis Sarkans

European Bioinformatics Institute

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Anjan Sharma

European Bioinformatics Institute

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Mohammadreza Shojatalab

European Bioinformatics Institute

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