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Dive into the research topics where Rebecca E. Foulger is active.

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Featured researches published by Rebecca E. Foulger.


BMC Bioinformatics | 2014

A method for increasing expressivity of Gene Ontology annotations using a compositional approach

Rachael P. Huntley; Midori A. Harris; Yasmin Alam-Faruque; Judith A. Blake; Seth Carbon; Heiko Dietze; Emily Dimmer; Rebecca E. Foulger; David P. Hill; Varsha K. Khodiyar; Antonia Lock; Jane Lomax; Ruth C. Lovering; Prudence Mutowo-Meullenet; Tony Sawford; Kimberly Van Auken; Valerie Wood; Christopher J. Mungall

BackgroundThe Gene Ontology project integrates data about the function of gene products across a diverse range of organisms, allowing the transfer of knowledge from model organisms to humans, and enabling computational analyses for interpretation of high-throughput experimental and clinical data. The core data structure is the annotation, an association between a gene product and a term from one of the three ontologies comprising the GO. Historically, it has not been possible to provide additional information about the context of a GO term, such as the target gene or the location of a molecular function. This has limited the specificity of knowledge that can be expressed by GO annotations.ResultsThe GO Consortium has introduced annotation extensions that enable manually curated GO annotations to capture additional contextual details. Extensions represent effector–target relationships such as localization dependencies, substrates of protein modifiers and regulation targets of signaling pathways and transcription factors as well as spatial and temporal aspects of processes such as cell or tissue type or developmental stage. We describe the content and structure of annotation extensions, provide examples, and summarize the current usage of annotation extensions.ConclusionsThe additional contextual information captured by annotation extensions improves the utility of functional annotation by representing dependencies between annotations to terms in the different ontologies of GO, external ontologies, or an organism’s gene products. These enhanced annotations can also support sophisticated queries and reasoning, and will provide curated, directional links between many gene products to support pathway and network reconstruction.


Journal of Biomedical Semantics | 2014

TermGenie – a web-application for pattern-based ontology class generation

Heiko Dietze; Tanya Z. Berardini; Rebecca E. Foulger; David P. Hill; Jane Lomax; David Osumi-Sutherland; Paola Roncaglia; Christopher J. Mungall

BackgroundBiological ontologies are continually growing and improving from requests for new classes (terms) by biocurators. These ontology requests can frequently create bottlenecks in the biocuration process, as ontology developers struggle to keep up, while manually processing these requests and create classes.ResultsTermGenie allows biocurators to generate new classes based on formally specified design patterns or templates. The system is web-based and can be accessed by any authorized curator through a web browser. Automated rules and reasoning engines are used to ensure validity, uniqueness and relationship to pre-existing classes. In the last 4 years the Gene Ontology TermGenie generated 4715 new classes, about 51.4% of all new classes created. The immediate generation of permanent identifiers proved not to be an issue with only 70 (1.4%) obsoleted classes.ConclusionTermGenie is a web-based class-generation system that complements traditional ontology development tools. All classes added through pre-defined templates are guaranteed to have OWL equivalence axioms that are used for automatic classification and in some cases inter-ontology linkage. At the same time, the system is simple and intuitive and can be used by most biocurators without extensive training.


BMC Genomics | 2013

Dovetailing biology and chemistry: integrating the Gene Ontology with the ChEBI chemical ontology

David P. Hill; Nico Adams; Mike Bada; Colin R. Batchelor; Tanya Z. Berardini; Heiko Dietze; Harold J. Drabkin; Marcus Ennis; Rebecca E. Foulger; Midori A. Harris; Janna Hastings; Namrata Kale; Paula de Matos; Christopher J. Mungall; Gareth Owen; Paola Roncaglia; Christoph Steinbeck; Steve Turner; Jane Lomax

BackgroundThe Gene Ontology (GO) facilitates the description of the action of gene products in a biological context. Many GO terms refer to chemical entities that participate in biological processes. To facilitate accurate and consistent systems-wide biological representation, it is necessary to integrate the chemical view of these entities with the biological view of GO functions and processes. We describe a collaborative effort between the GO and the Chemical Entities of Biological Interest (ChEBI) ontology developers to ensure that the representation of chemicals in the GO is both internally consistent and in alignment with the chemical expertise captured in ChEBI.ResultsWe have examined and integrated the ChEBI structural hierarchy into the GO resource through computationally-assisted manual curation of both GO and ChEBI. Our work has resulted in the creation of computable definitions of GO terms that contain fully defined semantic relationships to corresponding chemical terms in ChEBI.ConclusionsThe set of logical definitions using both the GO and ChEBI has already been used to automate aspects of GO development and has the potential to allow the integration of data across the domains of biology and chemistry. These logical definitions are available as an extended version of the ontology from http://purl.obolibrary.org/obo/go/extensions/go-plus.owl.


Journal of Biomedical Semantics | 2013

The Gene Ontology (GO) Cellular Component Ontology: integration with SAO (Subcellular Anatomy Ontology) and other recent developments

Paola Roncaglia; Maryann E. Martone; David P. Hill; Tanya Z. Berardini; Rebecca E. Foulger; Fahim T. Imam; Harold J. Drabkin; Christopher J. Mungall; Jane Lomax

BackgroundThe Gene Ontology (GO) (http://www.geneontology.org/) contains a set of terms for describing the activity and actions of gene products across all kingdoms of life. Each of these activities is executed in a location within a cell or in the vicinity of a cell. In order to capture this context, the GO includes a sub-ontology called the Cellular Component (CC) ontology (GO-CCO). The primary use of this ontology is for GO annotation, but it has also been used for phenotype annotation, and for the annotation of images. Another ontology with similar scope to the GO-CCO is the Subcellular Anatomy Ontology (SAO), part of the Neuroscience Information Framework Standard (NIFSTD) suite of ontologies. The SAO also covers cell components, but in the domain of neuroscience.DescriptionRecently, the GO-CCO was enriched in content and links to the Biological Process and Molecular Function branches of GO as well as to other ontologies. This was achieved in several ways. We carried out an amalgamation of SAO terms with GO-CCO ones; as a result, nearly 100 new neuroscience-related terms were added to the GO. The GO-CCO also contains relationships to GO Biological Process and Molecular Function terms, as well as connecting to external ontologies such as the Cell Ontology (CL). Terms representing protein complexes in the Protein Ontology (PRO) reference GO-CCO terms for their species-generic counterparts. GO-CCO terms can also be used to search a variety of databases.ConclusionsIn this publication we provide an overview of the GO-CCO, its overall design, and some recent extensions that make use of additional spatial information. One of the most recent developments of the GO-CCO was the merging in of the SAO, resulting in a single unified ontology designed to serve the needs of GO annotators as well as the specific needs of the neuroscience community.


PLOS ONE | 2014

Representing kidney development using the gene ontology.

Yasmin Alam-Faruque; David P. Hill; Emily Dimmer; Midori A. Harris; Rebecca E. Foulger; Susan Tweedie; Helen Attrill; Douglas G. Howe; Stephen Randall Thomas; Duncan Davidson; Adrian S. Woolf; Judith A. Blake; Christopher J. Mungall; Claire O’Donovan; Rolf Apweiler; Rachael P. Huntley

Gene Ontology (GO) provides dynamic controlled vocabularies to aid in the description of the functional biological attributes and subcellular locations of gene products from all taxonomic groups (www.geneontology.org). Here we describe collaboration between the renal biomedical research community and the GO Consortium to improve the quality and quantity of GO terms describing renal development. In the associated annotation activity, the new and revised terms were associated with gene products involved in renal development and function. This project resulted in a total of 522 GO terms being added to the ontology and the creation of approximately 9,600 kidney-related GO term associations to 940 UniProt Knowledgebase (UniProtKB) entries, covering 66 taxonomic groups. We demonstrate the impact of these improvements on the interpretation of GO term analyses performed on genes differentially expressed in kidney glomeruli affected by diabetic nephropathy. In summary, we have produced a resource that can be utilized in the interpretation of data from small- and large-scale experiments investigating molecular mechanisms of kidney function and development and thereby help towards alleviating renal disease.


PLOS ONE | 2014

An Integrated Ontology Resource to Explore and Study Host-Virus Relationships

Patrick Masson; Chantal Hulo; Edouard de Castro; Rebecca E. Foulger; Sylvain Poux; Alan Bridge; Jane Lomax; Lydie Bougueleret; Ioannis Xenarios; Philippe Le Mercier

Our growing knowledge of viruses reveals how these pathogens manage to evade innate host defenses. A global scheme emerges in which many viruses usurp key cellular defense mechanisms and often inhibit the same components of antiviral signaling. To accurately describe these processes, we have generated a comprehensive dictionary for eukaryotic host-virus interactions. This controlled vocabulary has been detailed in 57 ViralZone resource web pages which contain a global description of all molecular processes. In order to annotate viral gene products with this vocabulary, an ontology has been built in a hierarchy of UniProt Knowledgebase (UniProtKB) keyword terms and corresponding Gene Ontology (GO) terms have been developed in parallel. The results are 65 UniProtKB keywords related to 57 GO terms, which have been used in 14,390 manual annotations; 908,723 automatic annotations and propagated to an estimation of 922,941 GO annotations. ViralZone pages, UniProtKB keywords and GO terms provide complementary tools to users, and the three resources have been linked to each other through host-virus vocabulary.


Neuroinformatics | 2016

Using the Gene Ontology to Annotate Key Players in Parkinson’s Disease

Rebecca E. Foulger; Paul Denny; John Hardy; María Martín; Tony Sawford; Ruth C. Lovering

The Gene Ontology (GO) is widely recognised as the gold standard bioinformatics resource for summarizing functional knowledge of gene products in a consistent and computable, information-rich language. GO describes cellular and organismal processes across all species, yet until now there has been a considerable gene annotation deficit within the neurological and immunological domains, both of which are relevant to Parkinson’s disease. Here we introduce the Parkinson’s disease GO Annotation Project, funded by Parkinson’s UK and supported by the GO Consortium, which is addressing this deficit by providing GO annotation to Parkinson’s-relevant human gene products, principally through expert literature curation. We discuss the steps taken to prioritise proteins, publications and cellular processes for annotation, examples of how GO annotations capture Parkinson’s-relevant information, and the advantages that a topic-focused annotation approach offers to users. Building on the existing GO resource, this project collates a vast amount of Parkinson’s-relevant literature into a set of high-quality annotations to be utilized by the research community.


BMC Microbiology | 2015

Representing virus-host interactions and other multi-organism processes in the Gene Ontology

Rebecca E. Foulger; David Osumi-Sutherland; B. K. McIntosh; Chantal Hulo; Patrick Masson; Sylvain Poux; P. Le Mercier; Jane Lomax

BackgroundThe Gene Ontology project is a collaborative effort to provide descriptions of gene products in a consistent and computable language, and in a species-independent manner. The Gene Ontology is designed to be applicable to all organisms but up to now has been largely under-utilized for prokaryotes and viruses, in part because of a lack of appropriate ontology terms.MethodsTo address this issue, we have developed a set of Gene Ontology classes that are applicable to microbes and their hosts, improving both coverage and quality in this area of the Gene Ontology. Describing microbial and viral gene products brings with it the additional challenge of capturing both the host and the microbe. Recognising this, we have worked closely with annotation groups to test and optimize the GO classes, and we describe here a set of annotation guidelines that allow the controlled description of two interacting organisms.ConclusionsBuilding on the microbial resources already in existence such as ViralZone, UniProtKB keywords and MeGO, this project provides an integrated ontology to describe interactions between microbial species and their hosts, with mappings to the external resources above. Housing this information within the freely-accessible Gene Ontology project allows the classes and annotation structure to be utilized by a large community of biologists and users.


Circulation: Genomic and Precision Medicine , 11 (2) , Article e001813. (2018) | 2018

Improving Interpretation of Cardiac Phenotypes and Enhancing Discovery With Expanded Knowledge in the Gene Ontology

Ruth C. Lovering; Paola Roncaglia; Douglas G. Howe; Stanley J. F. Laulederkind; Varsha K. Khodiyar; Tanya Z. Berardini; Susan Tweedie; Rebecca E. Foulger; David Osumi-Sutherland; Nancy H. Campbell; Rachael P. Huntley; Philippa J. Talmud; Judith A. Blake; Ross A. Breckenridge; Paul R. Riley; Pier D. Lambiase; Perry M. Elliott; Lucie H. Clapp; Andrew Tinker; David P. Hill

Background: A systems biology approach to cardiac physiology requires a comprehensive representation of how coordinated processes operate in the heart, as well as the ability to interpret relevant transcriptomic and proteomic experiments. The Gene Ontology (GO) Consortium provides structured, controlled vocabularies of biological terms that can be used to summarize and analyze functional knowledge for gene products. Methods and Results: In this study, we created a computational resource to facilitate genetic studies of cardiac physiology by integrating literature curation with attention to an improved and expanded ontological representation of heart processes in the Gene Ontology. As a result, the Gene Ontology now contains terms that comprehensively describe the roles of proteins in cardiac muscle cell action potential, electrical coupling, and the transmission of the electrical impulse from the sinoatrial node to the ventricles. Evaluating the effectiveness of this approach to inform data analysis demonstrated that Gene Ontology annotations, analyzed within an expanded ontological context of heart processes, can help to identify candidate genes associated with arrhythmic disease risk loci. Conclusions: We determined that a combination of curation and ontology development for heart-specific genes and processes supports the identification and downstream analysis of genes responsible for the spread of the cardiac action potential through the heart. Annotating these genes and processes in a structured format facilitates data analysis and supports effective retrieval of gene-centric information about cardiac defects.


PLOS ONE | 2017

The ins and outs of eukaryotic viruses: Knowledge base and ontology of a viral infection

Chantal Hulo; Patrick Masson; Edouard de Castro; Andrea H. Auchincloss; Rebecca E. Foulger; Sylvain Poux; Jane Lomax; Lydie Bougueleret; Ioannis Xenarios; Philippe Le Mercier

Viruses are genetically diverse, infect a wide range of tissues and host cells and follow unique processes for replicating themselves. All these processes were investigated and indexed in ViralZone knowledge base. To facilitate standardizing data, a simple ontology of viral life-cycle terms was developed to provide a common vocabulary for annotating data sets. New terminology was developed to address unique viral replication cycle processes, and existing terminology was modified and adapted. The virus life-cycle is classically described by schematic pictures. Using this ontology, it can be represented by a combination of successive terms: “entry”, “latency”, “transcription”, “replication” and “exit”. Each of these parts is broken down into discrete steps. For example Zika virus “entry” is broken down in successive steps: “Attachment”, “Apoptotic mimicry”, “Viral endocytosis/ macropinocytosis”, “Fusion with host endosomal membrane”, “Viral factory”. To demonstrate the utility of a standard ontology for virus biology, this work was completed by annotating virus data in the ViralZone, UniProtKB and Gene Ontology databases.

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Jane Lomax

European Bioinformatics Institute

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Christopher J. Mungall

Lawrence Berkeley National Laboratory

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Paola Roncaglia

European Bioinformatics Institute

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Tanya Z. Berardini

Carnegie Institution for Science

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David Osumi-Sutherland

European Bioinformatics Institute

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Rachael P. Huntley

European Bioinformatics Institute

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Heiko Dietze

Lawrence Berkeley National Laboratory

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