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Dive into the research topics where Gillian Millburn is active.

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Featured researches published by Gillian Millburn.


Nucleic Acids Research | 2009

FlyBase: enhancing Drosophila Gene Ontology annotations

Susan Tweedie; Michael Ashburner; Kathleen Falls; Paul Leyland; Peter McQuilton; Steven J. Marygold; Gillian Millburn; David Osumi-Sutherland; Andrew Schroeder; Ruth Seal; Haiyan Zhang

FlyBase (http://flybase.org) is a database of Drosophila genetic and genomic information. Gene Ontology (GO) terms are used to describe three attributes of wild-type gene products: their molecular function, the biological processes in which they play a role, and their subcellular location. This article describes recent changes to the FlyBase GO annotation strategy that are improving the quality of the GO annotation data. Many of these changes stem from our participation in the GO Reference Genome Annotation Project--a multi-database collaboration producing comprehensive GO annotation sets for 12 diverse species.


Genome Biology | 2002

Annotation of the Drosophila melanogaster euchromatic genome: a systematic review

Sima Misra; Madeline A. Crosby; Christopher J. Mungall; Beverley B. Matthews; Kathryn S. Campbell; Pavel Hradecky; Yanmei Huang; Joshua S Kaminker; Gillian Millburn; Simon E Prochnik; Christopher D. Smith; Jonathan L Tupy; Eleanor J Whitfield; Leyla Bayraktaroglu; Benjamin P. Berman; Brian Bettencourt; Susan E. Celniker; Aubrey D.N.J. de Grey; Rachel Drysdale; Nomi L. Harris; John Richter; Susan Russo; Andrew J. Schroeder; ShengQiang Shu; Mark Stapleton; Chihiro Yamada; Michael Ashburner; William M. Gelbart; Gerald M. Rubin; Suzanna E. Lewis

BackgroundThe recent completion of the Drosophila melanogaster genomic sequence to high quality and the availability of a greatly expanded set of Drosophila cDNA sequences, aligning to 78% of the predicted euchromatic genes, afforded FlyBase the opportunity to significantly improve genomic annotations. We made the annotation process more rigorous by inspecting each gene visually, utilizing a comprehensive set of curation rules, requiring traceable evidence for each gene model, and comparing each predicted peptide to SWISS-PROT and TrEMBL sequences.ResultsAlthough the number of predicted protein-coding genes in Drosophila remains essentially unchanged, the revised annotation significantly improves gene models, resulting in structural changes to 85% of the transcripts and 45% of the predicted proteins. We annotated transposable elements and non-protein-coding RNAs as new features, and extended the annotation of untranslated (UTR) sequences and alternative transcripts to include more than 70% and 20% of genes, respectively. Finally, cDNA sequence provided evidence for dicistronic transcripts, neighboring genes with overlapping UTRs on the same DNA sequence strand, alternatively spliced genes that encode distinct, non-overlapping peptides, and numerous nested genes.ConclusionsIdentification of so many unusual gene models not only suggests that some mechanisms for gene regulation are more prevalent than previously believed, but also underscores the complex challenges of eukaryotic gene prediction. At present, experimental data and human curation remain essential to generate high-quality genome annotations.


Nucleic Acids Research | 2016

FlyBase: establishing a Gene Group resource for Drosophila melanogaster

Helen Attrill; Kathleen Falls; Joshua L. Goodman; Gillian Millburn; Giulia Antonazzo; Alix J. Rey; Steven J. Marygold

Many publications describe sets of genes or gene products that share a common biology. For example, genome-wide studies and phylogenetic analyses identify genes related in sequence; high-throughput genetic and molecular screens reveal functionally related gene products; and advanced proteomic methods can determine the subunit composition of multi-protein complexes. It is useful for such gene collections to be presented as discrete lists within the appropriate Model Organism Database (MOD) so that researchers can readily access these data alongside other relevant information. To this end, FlyBase (flybase.org), the MOD for Drosophila melanogaster, has established a ‘Gene Group’ resource: high-quality sets of genes derived from the published literature and organized into individual report pages. To facilitate further analyses, Gene Group Reports also include convenient download and analysis options, together with links to equivalent gene groups at other databases. This new resource will enable researchers with diverse backgrounds and interests to easily view and analyse acknowledged D. melanogaster gene sets and compare them with those of other species.


Genome Biology | 2002

Annotation of the Drosophila melanogastereuchromatic genome: a systematic review

Sima Misra; Madeline A. Crosby; Chris Mungall; Beverley B. Matthews; Kathryn S. Campbell; Pavel Hradecky; Yanmei Huang; Joshua S Kaminker; Gillian Millburn; Simon E Prochnik; Christopher D. Smith; Jonathan L Tupy; Eleanor J Whitfield; Leyla Bayraktaroglu; Benjamin P. Berman; Brian Bettencourt; Susan E. Celniker; Aubrey D.N.J. de Grey; Rachel Drysdale; Nomi L Harris; John Richter; Susan Russo; Andrew J. Schroeder; ShengQiang Shu; Mark Stapleton; Chihiro Yamada; Michael Ashburner; William M. Gelbart; Gerald M. Rubin; Suzanna E. Lewis

BackgroundThe recent completion of the Drosophila melanogaster genomic sequence to high quality and the availability of a greatly expanded set of Drosophila cDNA sequences, aligning to 78% of the predicted euchromatic genes, afforded FlyBase the opportunity to significantly improve genomic annotations. We made the annotation process more rigorous by inspecting each gene visually, utilizing a comprehensive set of curation rules, requiring traceable evidence for each gene model, and comparing each predicted peptide to SWISS-PROT and TrEMBL sequences.ResultsAlthough the number of predicted protein-coding genes in Drosophila remains essentially unchanged, the revised annotation significantly improves gene models, resulting in structural changes to 85% of the transcripts and 45% of the predicted proteins. We annotated transposable elements and non-protein-coding RNAs as new features, and extended the annotation of untranslated (UTR) sequences and alternative transcripts to include more than 70% and 20% of genes, respectively. Finally, cDNA sequence provided evidence for dicistronic transcripts, neighboring genes with overlapping UTRs on the same DNA sequence strand, alternatively spliced genes that encode distinct, non-overlapping peptides, and numerous nested genes.ConclusionsIdentification of so many unusual gene models not only suggests that some mechanisms for gene regulation are more prevalent than previously believed, but also underscores the complex challenges of eukaryotic gene prediction. At present, experimental data and human curation remain essential to generate high-quality genome annotations.


Disease Models & Mechanisms | 2016

FlyBase portals to human disease research using Drosophila models

Gillian Millburn; Madeline A. Crosby; L. Sian Gramates; Susan Tweedie

ABSTRACT The use of Drosophila melanogaster as a model for studying human disease is well established, reflected by the steady increase in both the number and proportion of fly papers describing human disease models in recent years. In this article, we highlight recent efforts to improve the availability and accessibility of the disease model information in FlyBase (http://flybase.org), the model organism database for Drosophila. FlyBase has recently introduced Human Disease Model Reports, each of which presents background information on a specific disease, a tabulation of related disease subtypes, and summaries of experimental data and results using fruit flies. Integrated presentations of relevant data and reagents described in other sections of FlyBase are incorporated into these reports, which are specifically designed to be accessible to non-fly researchers in order to promote collaboration across model organism communities working in translational science. Another key component of disease model information in FlyBase is that data are collected in a consistent format – using the evolving Disease Ontology (an open-source standardized ontology for human-disease-associated biomedical data) – to allow robust and intuitive searches. To facilitate this, FlyBase has developed a dedicated tool for querying and navigating relevant data, which include mutations that model a disease and any associated interacting modifiers. In this article, we describe how data related to fly models of human disease are presented in individual Gene Reports and in the Human Disease Model Reports. Finally, we discuss search strategies and new query tools that are available to access the disease model data in FlyBase. Drosophila Collection: Drosophila melanogaster is well established as a model for studying human disease. Here, we highlight recent efforts to enhance the availability and accessibility of disease model data in FlyBase, the model organism database for Drosophila.


BMC Bioinformatics | 2012

Automatic categorization of diverse experimental information in the bioscience literature

Ruihua Fang; Gary Schindelman; Kimberly Van Auken; Jolene S. Fernandes; Wen Chen; Xiaodong Wang; Paul Davis; Mary Ann Tuli; Steven J. Marygold; Gillian Millburn; Beverley B. Matthews; Haiyan Zhang; Nicholas H. Brown; William M. Gelbart; Paul W. Sternberg

BackgroundCuration of information from bioscience literature into biological knowledge databases is a crucial way of capturing experimental information in a computable form. During the biocuration process, a critical first step is to identify from all published literature the papers that contain results for a specific data type the curator is interested in annotating. This step normally requires curators to manually examine many papers to ascertain which few contain information of interest and thus, is usually time consuming. We developed an automatic method for identifying papers containing these curation data types among a large pool of published scientific papers based on the machine learning method Support Vector Machine (SVM). This classification system is completely automatic and can be readily applied to diverse experimental data types. It has been in use in production for automatic categorization of 10 different experimental datatypes in the biocuration process at WormBase for the past two years and it is in the process of being adopted in the biocuration process at FlyBase and the Saccharomyces Genome Database (SGD). We anticipate that this method can be readily adopted by various databases in the biocuration community and thereby greatly reducing time spent on an otherwise laborious and demanding task. We also developed a simple, readily automated procedure to utilize training papers of similar data types from different bodies of literature such as C. elegans and D. melanogaster to identify papers with any of these data types for a single database. This approach has great significance because for some data types, especially those of low occurrence, a single corpus often does not have enough training papers to achieve satisfactory performance.ResultsWe successfully tested the method on ten data types from WormBase, fifteen data types from FlyBase and three data types from Mouse Genomics Informatics (MGI). It is being used in the curation work flow at WormBase for automatic association of newly published papers with ten data types including RNAi, antibody, phenotype, gene regulation, mutant allele sequence, gene expression, gene product interaction, overexpression phenotype, gene interaction, and gene structure correction.ConclusionsOur methods are applicable to a variety of data types with training set containing several hundreds to a few thousand documents. It is completely automatic and, thus can be readily incorporated to different workflow at different literature-based databases. We believe that the work presented here can contribute greatly to the tremendous task of automating the important yet labor-intensive biocuration effort.


Database | 2012

Directly e-mailing authors of newly published papers encourages community curation

Stephanie Bunt; Gary B. Grumbling; Helen I. Field; Steven J. Marygold; Nicholas H. Brown; Gillian Millburn

Much of the data within Model Organism Databases (MODs) comes from manual curation of the primary research literature. Given limited funding and an increasing density of published material, a significant challenge facing all MODs is how to efficiently and effectively prioritize the most relevant research papers for detailed curation. Here, we report recent improvements to the triaging process used by FlyBase. We describe an automated method to directly e-mail corresponding authors of new papers, requesting that they list the genes studied and indicate (‘flag’) the types of data described in the paper using an online tool. Based on the author-assigned flags, papers are then prioritized for detailed curation and channelled to appropriate curator teams for full data extraction. The overall response rate has been 44% and the flagging of data types by authors is sufficiently accurate for effective prioritization of papers. In summary, we have established a sustainable community curation program, with the result that FlyBase curators now spend less time triaging and can devote more effort to the specialized task of detailed data extraction. Database URL: http://flybase.org/


Journal of Biomedical Semantics | 2013

The Drosophila phenotype ontology

David Osumi-Sutherland; Steven J. Marygold; Gillian Millburn; Peter McQuilton; Laura Ponting; Raymund Stefancsik; Kathleen Falls; Nicholas H. Brown; Georgios V. Gkoutos

BackgroundPhenotype ontologies are queryable classifications of phenotypes. They provide a widely-used means for annotating phenotypes in a form that is human-readable, programatically accessible and that can be used to group annotations in biologically meaningful ways. Accurate manual annotation requires clear textual definitions for terms. Accurate grouping and fruitful programatic usage require high-quality formal definitions that can be used to automate classification. The Drosophila phenotype ontology (DPO) has been used to annotate over 159,000 phenotypes in FlyBase to date, but until recently lacked textual or formal definitions.ResultsWe have composed textual definitions for all DPO terms and formal definitions for 77% of them. Formal definitions reference terms from a range of widely-used ontologies including the Phenotype and Trait Ontology (PATO), the Gene Ontology (GO) and the Cell Ontology (CL). We also describe a generally applicable system, devised for the DPO, for recording and reasoning about the timing of death in populations. As a result of the new formalisations, 85% of classifications in the DPO are now inferred rather than asserted, with much of this classification leveraging the structure of the GO. This work has significantly improved the accuracy and completeness of classification and made further development of the DPO more sustainable.ConclusionsThe DPO provides a set of well-defined terms for annotating Drosophila phenotypes and for grouping and querying the resulting annotation sets in biologically meaningful ways. Such queries have already resulted in successful function predictions from phenotype annotation. Moreover, such formalisations make extended queries possible, including cross-species queries via the external ontologies used in formal definitions. The DPO is openly available under an open source license in both OBO and OWL formats. There is good potential for it to be used more broadly by the Drosophila community, which may ultimately result in its extension to cover a broader range of phenotypes.


Database | 2014

tagtog: interactive and text-mining-assisted annotation of gene mentions in PLOS full-text articles

Juan Miguel Cejuela; Peter McQuilton; Laura Ponting; Steven J. Marygold; Raymund Stefancsik; Gillian Millburn; Burkhard Rost

The breadth and depth of biomedical literature are increasing year upon year. To keep abreast of these increases, FlyBase, a database for Drosophila genomic and genetic information, is constantly exploring new ways to mine the published literature to increase the efficiency and accuracy of manual curation and to automate some aspects, such as triaging and entity extraction. Toward this end, we present the ‘tagtog’ system, a web-based annotation framework that can be used to mark up biological entities (such as genes) and concepts (such as Gene Ontology terms) in full-text articles. tagtog leverages manual user annotation in combination with automatic machine-learned annotation to provide accurate identification of gene symbols and gene names. As part of the BioCreative IV Interactive Annotation Task, FlyBase has used tagtog to identify and extract mentions of Drosophila melanogaster gene symbols and names in full-text biomedical articles from the PLOS stable of journals. We show here the results of three experiments with different sized corpora and assess gene recognition performance and curation speed. We conclude that tagtog-named entity recognition improves with a larger corpus and that tagtog-assisted curation is quicker than manual curation. Database URL: www.tagtog.net, www.flybase.org


Genome Biology | 2002

Annotation of the Drosophila melanogaster

Sima Misra; Madeline A. Crosby; Christopher J. Mungall; Beverley B. Matthews; Kathryn S. Campbell; Pavel Hradecky; Yanmei Huang; Joshua S Kaminker; Gillian Millburn; Simon E Prochnik; Christopher D. Smith; Jonathan L Tupy; Eleanor J Whitfield; Leyla Bayraktaroglu; Benjamin P. Berman; Brian Bettencourt; Susan E. Celniker; Aubrey D.N.J. de Grey; Rachel Drysdale; Nomi L. Harris; John Richter; Susan Russo; Andrew J. Schroeder; ShengQiang Shu; Mark Stapleton; Chihiro Yamada; Michael Ashburner; William M. Gelbart; Gerald M. Rubin; Suzanna E. Lewis

BackgroundThe recent completion of the Drosophila melanogaster genomic sequence to high quality and the availability of a greatly expanded set of Drosophila cDNA sequences, aligning to 78% of the predicted euchromatic genes, afforded FlyBase the opportunity to significantly improve genomic annotations. We made the annotation process more rigorous by inspecting each gene visually, utilizing a comprehensive set of curation rules, requiring traceable evidence for each gene model, and comparing each predicted peptide to SWISS-PROT and TrEMBL sequences.ResultsAlthough the number of predicted protein-coding genes in Drosophila remains essentially unchanged, the revised annotation significantly improves gene models, resulting in structural changes to 85% of the transcripts and 45% of the predicted proteins. We annotated transposable elements and non-protein-coding RNAs as new features, and extended the annotation of untranslated (UTR) sequences and alternative transcripts to include more than 70% and 20% of genes, respectively. Finally, cDNA sequence provided evidence for dicistronic transcripts, neighboring genes with overlapping UTRs on the same DNA sequence strand, alternatively spliced genes that encode distinct, non-overlapping peptides, and numerous nested genes.ConclusionsIdentification of so many unusual gene models not only suggests that some mechanisms for gene regulation are more prevalent than previously believed, but also underscores the complex challenges of eukaryotic gene prediction. At present, experimental data and human curation remain essential to generate high-quality genome annotations.

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