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Dive into the research topics where Richard Baldock is active.

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Featured researches published by Richard Baldock.


PLOS Biology | 2011

A High-Resolution Anatomical Atlas of the Transcriptome in the Mouse Embryo

Graciana Diez-Roux; Sandro Banfi; Marc Sultan; Lars Geffers; Santosh Anand; David Rozado; Alon Magen; Elena Canidio; Massimiliano Pagani; Ivana Peluso; Nathalie Lin-Marq; Muriel Koch; Marchesa Bilio; Immacolata Cantiello; Roberta Verde; Cristian De Masi; Salvatore A. Bianchi; Juliette Cicchini; Elodie Nathalie Perroud; Shprese Mehmeti; Emilie Dagand; Sabine Schrinner; Asja Nürnberger; Katja Schmidt; Katja Metz; Christina Zwingmann; Norbert Brieske; Cindy Springer; Ana Martinez Hernandez; Sarah Herzog

The manuscript describes the “digital transcriptome atlas” of the developing mouse embryo, a powerful resource to determine co-expression of genes, to identify cell populations and lineages and to identify functional associations between genes relevant to development and disease.


Nature Methods | 2010

Visualization of image data from cells to organisms

Thomas Walter; David W. Shattuck; Richard Baldock; Mark E Bastin; Anne E. Carpenter; Suzanne Duce; Jan Ellenberg; Adam Fraser; Nicholas A. Hamilton; Steve Pieper; Mark A. Ragan; Jurgen E Schneider; Pavel Tomancak; Jean-Karim Hériché

Advances in imaging techniques and high-throughput technologies are providing scientists with unprecedented possibilities to visualize internal structures of cells, organs and organisms and to collect systematic image data characterizing genes and proteins on a large scale. To make the best use of these increasingly complex and large image data resources, the scientific community must be provided with methods to query, analyze and crosslink these resources to give an intuitive visual representation of the data. This review gives an overview of existing methods and tools for this purpose and highlights some of their limitations and challenges.


Nature Genetics | 2004

The European dimension for the mouse genome mutagenesis program

Johan Auwerx; Phil Avner; Richard Baldock; Andrea Ballabio; Rudi Balling; Mariano Barbacid; Anton Berns; Allan Bradley; Steve D.M. Brown; Peter Carmeliet; Pierre Chambon; Roger D. Cox; Duncan Davidson; Kay E. Davies; Denis Duboule; Jiri Forejt; Francesca Granucci; Nicholas D. Hastie; Martin Hrabé de Angelis; Ian J. Jackson; Dimitris Kioussis; George Kollias; Mark Lathrop; Urban Lendahl; Marcos Malumbres; Harald von Melchner; Werner Müller; Juha Partanen; Paola Ricciardi-Castagnoli; Peter Rigby

The European Mouse Mutagenesis Consortium is the European initiative contributing to the international effort on functional annotation of the mouse genome. Its objectives are to establish and integrate mutagenesis platforms, gene expression resources, phenotyping units, storage and distribution centers and bioinformatics resources. The combined efforts will accelerate our understanding of gene function and of human health and disease.


Development | 2011

The GUDMAP database – an online resource for genitourinary research

Simon Harding; Chris Armit; Jane Armstrong; Jane Brennan; Ying Cheng; Bernard Haggarty; Derek Houghton; Sue Lloyd-MacGilp; Xingjun Pi; Yogmatee Roochun; Mehran Sharghi; Christopher Tindal; Andrew P. McMahon; Brian Gottesman; Melissa H. Little; Kylie Georgas; Bruce J. Aronow; S. Steven Potter; Eric W. Brunskill; E. Michelle Southard-Smith; Cathy Mendelsohn; Richard Baldock; Jamie A. Davies; Duncan Davidson

The GenitoUrinary Development Molecular Anatomy Project (GUDMAP) is an international consortium working to generate gene expression data and transgenic mice. GUDMAP includes data from large-scale in situ hybridisation screens (wholemount and section) and microarray gene expression data of microdissected, laser-captured and FACS-sorted components of the developing mouse genitourinary (GU) system. These expression data are annotated using a high-resolution anatomy ontology specific to the developing murine GU system. GUDMAP data are freely accessible at www.gudmap.org via easy-to-use interfaces. This curated, high-resolution dataset serves as a powerful resource for biologists, clinicians and bioinformaticians interested in the developing urogenital system. This paper gives examples of how the data have been used to address problems in developmental biology and provides a primer for those wishing to use the database in their own research.


Neuroinformatics | 2003

EMAP and EMAGE: a framework for understanding spatially organized data.

Richard Baldock; Jonathan Bard; Albert Burger; Nicholas Burton; Jeffrey H. Christiansen; Guangjie Feng; Bill Hill; Derek Houghton; Matthew H. Kaufman; Jianguo Rao; James Sharpe; Allyson Ross; Peter Stevenson; Shanmugasundaram Venkataraman; Andrew M. Waterhouse; Yiya Yang; Duncan Davidson

The Edinburgh Mouse Atlas Project (EMAP) is a time-series of mouse-embryo volumetric models. The models provide a context-free spatial framework onto which structural interpretations and experimental data can be mapped. This enables collation, comparison, and query of complex spatial patterns with respect to each other and with respect to known or hypothesized structure. The atlas also includes a time-dependent anatomical ontology and mapping between the ontology and the spatial models in the form of delineated anatomical regions or tissues. The models provide a natural, graphical context for browsing and visualizing complex data.The Edinburgh Mouse Atlas Gene-Expression Database (EMAGE) is one of the first applications of the EMAP framework and provides a spatially mapped gene-expression database with associated tools for data mapping, submission, and query. In this article, we describe the underlying principles of the Atlas and the gene-expression database, and provide a practical introduction to the use of the EMAP and EMAGE tools, including use of new techniques for whole body gene-expression data capture and mapping.


Database | 2011

BioMart Central Portal: an open database network for the biological community

Jonathan M. Guberman; J. Ai; Olivier Arnaiz; Joachim Baran; Andrew Blake; Richard Baldock; Claude Chelala; David Croft; Anthony Cros; Rosalind J. Cutts; A. Di Génova; Simon A. Forbes; T. Fujisawa; Emanuela Gadaleta; David Goodstein; Gunes Gundem; Bernard Haggarty; Syed Haider; Matthew Hall; Todd W. Harris; Robin Haw; Songnian Hu; Simon J. Hubbard; Jack Hsu; Vivek Iyer; Philip Jones; Toshiaki Katayama; Rhoda Kinsella; Lei Kong; Daniel Lawson

BioMart Central Portal is a first of its kind, community-driven effort to provide unified access to dozens of biological databases spanning genomics, proteomics, model organisms, cancer data, ontology information and more. Anybody can contribute an independently maintained resource to the Central Portal, allowing it to be exposed to and shared with the research community, and linking it with the other resources in the portal. Users can take advantage of the common interface to quickly utilize different sources without learning a new system for each. The system also simplifies cross-database searches that might otherwise require several complicated steps. Several integrated tools streamline common tasks, such as converting between ID formats and retrieving sequences. The combination of a wide variety of databases, an easy-to-use interface, robust programmatic access and the array of tools make Central Portal a one-stop shop for biological data querying. Here, we describe the structure of Central Portal and show example queries to demonstrate its capabilities. Database URL: http://central.biomart.org.


Nucleic Acids Research | 2010

EMAGE mouse embryo spatial gene expression database: 2010 update

Lorna Richardson; Shanmugasundaram Venkataraman; Peter Stevenson; Yiya Yang; Nicholas Burton; Jianguo Rao; Malcolm Fisher; Richard Baldock; Duncan Davidson; Jeffrey H. Christiansen

EMAGE (http://www.emouseatlas.org/emage) is a freely available online database of in situ gene expression patterns in the developing mouse embryo. Gene expression domains from raw images are extracted and integrated spatially into a set of standard 3D virtual mouse embryos at different stages of development, which allows data interrogation by spatial methods. An anatomy ontology is also used to describe sites of expression, which allows data to be queried using text-based methods. Here, we describe recent enhancements to EMAGE including: the release of a completely re-designed website, which offers integration of many different search functions in HTML web pages, improved user feedback and the ability to find similar expression patterns at the click of a button; back-end refactoring from an object oriented to relational architecture, allowing associated SQL access; and the provision of further access by standard formatted URLs and a Java API. We have also increased data coverage by sourcing from a greater selection of journals and developed automated methods for spatial data annotation that are being applied to spatially incorporate the genome-wide (∼19 000 gene) ‘EURExpress’ dataset into EMAGE.


Mechanisms of Development | 1998

An internet-accessible database of mouse developmental anatomy based on a systematic nomenclature

Jonathan Bard; Matthew H. Kaufman; Christophe Dubreuil; Renske Brune; Albert Burger; Richard Baldock; Duncan Davidson

This paper reports an internet-accessible database of mouse developmental anatomy (DMDA) that currently holds a hierarchy of the names and synonyms of the tissues in the first 22 Theiler stages of development (E1-E13.5), together with other appropriate information. The purposes of the database are to provide, first, a nomenclature for analyzing normal and mutant mouse anatomy, and second a language for inputting, storing and querying gene-expression and other spatially organized data. DMDA currently contains some 6900 named and staged tissues (e.g. 360 and 1161 tissues in Theiler stage (TS) 14 (E9) and TS22 (E13.5) embryos). DMDA will be extended to include further lineage and other data when it becomes available. The database can be interactively accessed over the internet using either a Java or a non-Java WWW browser at http://genex.hgu.mrc.ac.uk/.


Nucleic Acids Research | 2006

EMAGE: a spatial database of gene expression patterns during mouse embryo development

Jeffrey H. Christiansen; Yiya Yang; Shanmugasundaram Venkataraman; Lorna Richardson; Peter Stevenson; Nicholas Burton; Richard Baldock; Duncan Davidson

EMAGE () is a freely available, curated database of gene expression patterns generated by in situ techniques in the developing mouse embryo. It is unique in that it contains standardized spatial representations of the sites of gene expression for each gene, denoted against a set of virtual reference embryo models. As such, the data can be interrogated in a novel and abstract manner by using space to define a query. Accompanying the spatial representations of gene expression patterns are text descriptions of the sites of expression, which also allows searching of the data by more conventional text-based methods.


PLOS Computational Biology | 2011

Digital Atlasing and Standardization in the Mouse Brain

Michael Hawrylycz; Richard Baldock; Albert Burger; Tsutomu Hashikawa; G. Allan Johnson; Maryann E. Martone; Lydia Ng; Chris Lau; Stephen D. Larsen; Jonathan Nissanov; Luis Puelles; Seth Ruffins; Fons J. Verbeek; Ilya Zaslavsky; Jyl Boline

Digital brain atlases are used in neuroscience to characterize the spatial organization of neuronal structures [1]–[3], for planning and guidance during neurosurgery [4], [5], and as a reference for interpreting other modalities such as gene expression or proteomic data [6]–[9]. The field of digital atlasing is extensive, and includes high quality brain atlases of the mouse [10], rat [11], rhesus macaque [12], human [13], [14], and several other model organisms. In addition to atlases based on histology, [11], [15], [16], magnetic resonance imaging [10], [17], and positron emission tomography [11], modern digital atlases often use probabilistic and multimodal techniques [18], [19], as well as sophisticated visualization software [20], [21]. Whether atlases involve detailed visualization of structures of a single or small group of specimens [6], [22], [23] or averages over larger populations [18], [24], much of the work in developing digital brain atlases is from the perspective of the user of a single resource. This is often due largely to the challenges of data generation, maintenance, and resources management [25], [26]. A more recent goal of many neuroscientists is to connect multiple and diverse resources to work in a collaborative manner using an atlas based framework [2], [19]. This vision is appealing as, ideally, researchers would be able to share their data and analyses with others, regardless of where they or the data are located. An important step in this direction is the specification of a common frame of reference across specimens and resources (either as coordinate, ontology, or region of interest) that is adopted by the community. In this perspective, we propose a collaborative digital atlasing framework for coordinating mouse brain research that allows access to data, tools, and analyses from multiple sources.

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Bill Hill

Medical Research Council

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Yiya Yang

Western General Hospital

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Chris Armit

University of Edinburgh

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Nick Burton

University of Edinburgh

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Julie Moss

University of Edinburgh

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