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Featured researches published by Yvonne M. Bradford.


Nucleic Acids Research | 2011

ZFIN: enhancements and updates to the zebrafish model organism database

Yvonne M. Bradford; Tom Conlin; Nathan Dunn; David Fashena; Ken Frazer; Douglas G. Howe; Jonathan Knight; Prita Mani; Ryan Martin; Sierra A. T. Moxon; Holly Paddock; Christian Pich; Barbara J. Ruef; Leyla Ruzicka; Holle A. Bauer Schaper; Kevin Schaper; Xiang Shao; Amy Singer; Judy Sprague; Brock Sprunger; Ceri E. Van Slyke; Monte Westerfield

ZFIN, the Zebrafish Model Organism Database, http://zfin.org, serves as the central repository and web-based resource for zebrafish genetic, genomic, phenotypic and developmental data. ZFIN manually curates comprehensive data for zebrafish genes, phenotypes, genotypes, gene expression, antibodies, anatomical structures and publications. A wide-ranging collection of web-based search forms and tools facilitates access to integrated views of these data promoting analysis and scientific discovery. Data represented in ZFIN are derived from three primary sources: curation of zebrafish publications, individual research laboratories and collaborations with bioinformatics organizations. Data formats include text, images and graphical representations. ZFIN is a dynamic resource with data added daily as part of our ongoing curation process. Software updates are frequent. Here, we describe recent additions to ZFIN including (i) enhanced access to images, (ii) genomic features, (iii) genome browser, (iv) transcripts, (v) antibodies and (vi) a community wiki for protocols and antibodies.


Nucleic Acids Research | 2012

ZFIN, the Zebrafish Model Organism Database: increased support for mutants and transgenics

Douglas G. Howe; Yvonne M. Bradford; Tom Conlin; Anne E. Eagle; David Fashena; Ken Frazer; Jonathan Knight; Prita Mani; Ryan Martin; Sierra A. T. Moxon; Holly Paddock; Christian Pich; Barbara J. Ruef; Leyla Ruzicka; Kevin Schaper; Xiang Shao; Amy Singer; Brock Sprunger; Ceri E. Van Slyke; Monte Westerfield

ZFIN, the Zebrafish Model Organism Database (http://zfin.org), is the central resource for zebrafish genetic, genomic, phenotypic and developmental data. ZFIN curators manually curate and integrate comprehensive data involving zebrafish genes, mutants, transgenics, phenotypes, genotypes, gene expressions, morpholinos, antibodies, anatomical structures and publications. Integrated views of these data, as well as data gathered through collaborations and data exchanges, are provided through a wide selection of web-based search forms. Among the vertebrate model organisms, zebrafish are uniquely well suited for rapid and targeted generation of mutant lines. The recent rapid production of mutants and transgenic zebrafish is making management of data associated with these resources particularly important to the research community. Here, we describe recent enhancements to ZFIN aimed at improving our support for mutant and transgenic lines, including (i) enhanced mutant/transgenic search functionality; (ii) more expressive phenotype curation methods; (iii) new downloads files and archival data access; (iv) incorporation of new data loads from laboratories undertaking large-scale generation of mutant or transgenic lines and (v) new GBrowse tracks for transgenic insertions, genes with antibodies and morpholinos.


Journal of Biomedical Semantics | 2014

Unification of multi-species vertebrate anatomy ontologies for comparative biology in Uberon

Melissa Haendel; James P. Balhoff; Frederic B. Bastian; David C. Blackburn; Judith A. Blake; Yvonne M. Bradford; Aurélie Comte; Wasila M. Dahdul; Thomas Dececchi; Robert E. Druzinsky; Terry F. Hayamizu; Nizar Ibrahim; Suzanna E. Lewis; Paula M. Mabee; Anne Niknejad; Marc Robinson-Rechavi; Paul C. Sereno; Christopher J. Mungall

BackgroundElucidating disease and developmental dysfunction requires understanding variation in phenotype. Single-species model organism anatomy ontologies (ssAOs) have been established to represent this variation. Multi-species anatomy ontologies (msAOs; vertebrate skeletal, vertebrate homologous, teleost, amphibian AOs) have been developed to represent ‘natural’ phenotypic variation across species. Our aim has been to integrate ssAOs and msAOs for various purposes, including establishing links between phenotypic variation and candidate genes.ResultsPreviously, msAOs contained a mixture of unique and overlapping content. This hampered integration and coordination due to the need to maintain cross-references or inter-ontology equivalence axioms to the ssAOs, or to perform large-scale obsolescence and modular import. Here we present the unification of anatomy ontologies into Uberon, a single ontology resource that enables interoperability among disparate data and research groups. As a consequence, independent development of TAO, VSAO, AAO, and vHOG has been discontinued.ConclusionsThe newly broadened Uberon ontology is a unified cross-taxon resource for metazoans (animals) that has been substantially expanded to include a broad diversity of vertebrate anatomical structures, permitting reasoning across anatomical variation in extinct and extant taxa. Uberon is a core resource that supports single- and cross-species queries for candidate genes using annotations for phenotypes from the systematics, biodiversity, medical, and model organism communities, while also providing entities for logical definitions in the Cell and Gene Ontologies.The ontology release files associated with the ontology merge described in this manuscript are available at: http://purl.obolibrary.org/obo/uberon/releases/2013-02-21/Current ontology release files are available always available at: http://purl.obolibrary.org/obo/uberon/releases/


Genesis | 2015

ZFIN, the Zebrafish Model Organism Database: updates and new directions

Leyla Ruzicka; Yvonne M. Bradford; Ken Frazer; Douglas G. Howe; Holly Paddock; Amy Singer; Sabrina Toro; Ceri E. Van Slyke; Anne E. Eagle; David Fashena; Patrick Kalita; Jonathan Knight; Prita Mani; Ryan Martin; Sierra A. T. Moxon; Christian Pich; Kevin Schaper; Xiang Shao; Monte Westerfield

The Zebrafish Model Organism Database (ZFIN; http://zfin.org) is the central resource for genetic and genomic data from zebrafish (Danio rerio) research. ZFIN staff curate detailed information about genes, mutants, genotypes, reporter lines, sequences, constructs, antibodies, knockdown reagents, expression patterns, phenotypes, gene product function, and orthology from publications. Researchers can submit mutant, transgenic, expression, and phenotype data directly to ZFIN and use the ZFIN Community Wiki to share antibody and protocol information. Data can be accessed through topic‐specific searches, a new site‐wide search, and the data‐mining resource ZebrafishMine (http://zebrafishmine.org). Data download and web service options are also available. ZFIN collaborates with major bioinformatics organizations to verify and integrate genomic sequence data, provide nomenclature support, establish reciprocal links, and participate in the development of standardized structured vocabularies (ontologies) used for data annotation and searching. ZFIN‐curated gene, function, expression, and phenotype data are available for comparative exploration at several multi‐species resources. The use of zebrafish as a model for human disease is increasing. ZFIN is supporting this growing area with three major projects: adding easy access to computed orthology data from gene pages, curating details of the gene expression pattern changes in mutant fish, and curating zebrafish models of human diseases. genesis 53:498–509, 2015.


Journal of Biomedical Semantics | 2014

The zebrafish anatomy and stage ontologies: representing the anatomy and development of Danio rerio

Ceri E. Van Slyke; Yvonne M. Bradford; Monte Westerfield; Melissa Haendel

BackgroundThe Zebrafish Anatomy Ontology (ZFA) is an OBO Foundry ontology that is used in conjunction with the Zebrafish Stage Ontology (ZFS) to describe the gross and cellular anatomy and development of the zebrafish, Danio rerio, from single cell zygote to adult. The zebrafish model organism database (ZFIN) uses the ZFA and ZFS to annotate phenotype and gene expression data from the primary literature and from contributed data sets.ResultsThe ZFA models anatomy and development with a subclass hierarchy, a partonomy, and a developmental hierarchy and with relationships to the ZFS that define the stages during which each anatomical entity exists. The ZFA and ZFS are developed utilizing OBO Foundry principles to ensure orthogonality, accessibility, and interoperability. The ZFA has 2860 classes representing a diversity of anatomical structures from different anatomical systems and from different stages of development.ConclusionsThe ZFA describes zebrafish anatomy and development semantically for the purposes of annotating gene expression and anatomical phenotypes. The ontology and the data have been used by other resources to perform cross-species queries of gene expression and phenotype data, providing insights into genetic relationships, morphological evolution, and models of human disease.


Nucleic Acids Research | 2017

The Zebrafish Model Organism Database: new support for human disease models, mutation details, gene expression phenotypes and searching

Douglas G. Howe; Yvonne M. Bradford; Anne E. Eagle; David Fashena; Ken Frazer; Patrick Kalita; Prita Mani; Ryan Martin; Sierra A. T. Moxon; Holly Paddock; Christian Pich; Leyla Ruzicka; Kevin Schaper; Xiang Shao; Amy Singer; Sabrina Toro; Ceri E. Van Slyke; Monte Westerfield

The Zebrafish Model Organism Database (ZFIN; http://zfin.org) is the central resource for zebrafish (Danio rerio) genetic, genomic, phenotypic and developmental data. ZFIN curators provide expert manual curation and integration of comprehensive data involving zebrafish genes, mutants, transgenic constructs and lines, phenotypes, genotypes, gene expressions, morpholinos, TALENs, CRISPRs, antibodies, anatomical structures, models of human disease and publications. We integrate curated, directly submitted, and collaboratively generated data, making these available to zebrafish research community. Among the vertebrate model organisms, zebrafish are superbly suited for rapid generation of sequence-targeted mutant lines, characterization of phenotypes including gene expression patterns, and generation of human disease models. The recent rapid adoption of zebrafish as human disease models is making management of these data particularly important to both the research and clinical communities. Here, we describe recent enhancements to ZFIN including use of the zebrafish experimental conditions ontology, ‘Fish’ records in the ZFIN database, support for gene expression phenotypes, models of human disease, mutation details at the DNA, RNA and protein levels, and updates to the ZFIN single box search.


Ilar Journal | 2017

Zebrafish Models of Human Disease: Gaining Insight into Human Disease at ZFIN

Yvonne M. Bradford; Sabrina Toro; Leyla Ruzicka; Douglas G. Howe; Anne E. Eagle; Patrick Kalita; Ryan Martin; Sierra A. T. Moxon; Kevin Schaper; Monte Westerfield

Abstract The Zebrafish Model Organism Database (ZFIN; https://zfin.org) is the central resource for genetic, genomic, and phenotypic data for zebrafish (Danio rerio) research. ZFIN continuously assesses trends in zebrafish research, adding new data types and providing data repositories and tools that members of the research community can use to navigate data. The many research advantages and flexibility of manipulation of zebrafish have made them an increasingly attractive animal to model and study human disease. To facilitate disease-related research, ZFIN developed support to provide human disease information as well as annotation of zebrafish models of human disease. Human disease term pages at ZFIN provide information about disease names, synonyms, and references to other databases as well as a list of publications reporting studies of human diseases in which zebrafish were used. Zebrafish orthologs of human genes that are implicated in human disease etiology are routinely studied to provide an understanding of the molecular basis of disease. Therefore, a list of human genes involved in the disease with their corresponding zebrafish ortholog is displayed on the disease page, with links to additional information regarding the genes and existing mutations. Studying human disease often requires the use of models that recapitulate some or all of the pathologies observed in human diseases. Access to information regarding existing and published models can be critical, because they provide a tractable way to gain insight into the phenotypic outcomes of the disease. ZFIN annotates zebrafish models of human disease and supports retrieval of these published models by listing zebrafish models on the disease term page as well as by providing search interfaces and data download files to access the data. The improvements ZFIN has made to annotate, display, and search data related to human disease, especially zebrafish models for disease and disease-associated gene information, should be helpful to researchers and clinicians considering the use of zebrafish to study human disease.


Methods in Cell Biology | 2011

Data Extraction, Transformation, and Dissemination through ZFIN

Douglas G. Howe; Ken Frazer; David Fashena; Leyla Ruzicka; Yvonne M. Bradford; Barbara J. Ruef; Ceri E. Van Slyke; Amy Singer; Monte Westerfield

The publication of a research article is the beginning of the digital life of its associated data. In this article, we will present an overview of how data are incorporated into ZFIN, with a particular emphasis on helping researchers make their work accessible to online databases.


Methods of Molecular Biology | 2018

Using ZFIN: Data Types, Organization, and Retrieval

Ceri E. Van Slyke; Yvonne M. Bradford; Douglas G. Howe; David Fashena; Leyla Ruzicka; Zfin Staff

The Zebrafish Model Organism Database (ZFIN; zfin.org) was established in 1994 as the primary genetic and genomic resource for the zebrafish research community. Some of the earliest records in ZFIN were for people and laboratories. Since that time, services and data types provided by ZFIN have grown considerably. Today, ZFIN provides the official nomenclature for zebrafish genes, mutants, and transgenics and curates many data types including gene expression, phenotypes, Gene Ontology, models of human disease, orthology, knockdown reagents, transgenic constructs, and antibodies. Ontologies are used throughout ZFIN to structure these expertly curated data. An integrated genome browser provides genomic context for genes, transgenics, mutants, and knockdown reagents. ZFIN also supports a community wiki where the research community can post new antibody records and research protocols. Data in ZFIN are accessible via web pages, download files, and the ZebrafishMine (zebrafishmine.org), an installation of the InterMine data warehousing software. Searching for data at ZFIN utilizes both parameterized search forms and a single box search for searching or browsing data quickly. This chapter aims to describe the primary ZFIN data and services, and provide insight into how to use and interpret ZFIN searches, data, and web pages.


Lab Animal | 2018

Model organism data evolving in support of translational medicine

Douglas G. Howe; Judith A. Blake; Yvonne M. Bradford; Brian R. Calvi; Stacia R. Engel; James A. Kadin; Thomas C. Kaufman; Ranjana Kishore; Stanley J. F. Laulederkind; Suzanna E. Lewis; Sierra A. T. Moxon; Joel E. Richardson; Cynthia L. Smith

Model organism databases (MODs) have been collecting and integrating biomedical research data for 30 years and were designed to meet specific needs of each model organism research community. The contributions of model organism research to understanding biological systems would be hard to overstate. Modern molecular biology methods and cost reductions in nucleotide sequencing have opened avenues for direct application of model organism research to elucidating mechanisms of human diseases. Thus, the mandate for model organism research and databases has now grown to include facilitating use of these data in translational applications. Challenges in meeting this opportunity include the distribution of research data across many databases and websites, a lack of data format standards for some data types, and sustainability of scale and cost for genomic database resources like MODs. The issues of widely distributed data and application of data standards are some of the challenges addressed by FAIR (Findable, Accessible, Interoperable, and Re-usable) data principles. The Alliance of Genome Resources is now moving to address these challenges by bringing together expertly curated research data from fly, mouse, rat, worm, yeast, zebrafish, and the Gene Ontology consortium. Centralized multi-species data access, integration, and format standardization will lower the data utilization barrier in comparative genomics and translational applications and will provide a framework in which sustainable scale and cost can be addressed. This article presents a brief historical perspective on how the Alliance model organisms are complementary and how they have already contributed to understanding the etiology of human diseases. In addition, we discuss four challenges for using data from MODs in translational applications and how the Alliance is working to address them, in part by applying FAIR data principles. Ultimately, combined data from these animal models are more powerful than the sum of the parts.Authors present the Alliance of Genome Resources Database as an integration of data from six different model species. Current implementation of the database and future challenges are discussed.

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