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Dive into the research topics where Terrence F. Meehan is active.

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Featured researches published by Terrence F. Meehan.


Nature | 2014

An atlas of active enhancers across human cell types and tissues

Robin Andersson; Claudia Gebhard; Irene Miguel-Escalada; Ilka Hoof; Jette Bornholdt; Mette Boyd; Yun Chen; Xiaobei Zhao; Christian Schmidl; Takahiro Suzuki; Evgenia Ntini; Erik Arner; Eivind Valen; Kang Li; Lucia Schwarzfischer; Dagmar Glatz; Johanna Raithel; Berit Lilje; Nicolas Rapin; Frederik Otzen Bagger; Mette Jørgensen; Peter Refsing Andersen; Nicolas Bertin; Owen J. L. Rackham; A. Maxwell Burroughs; J. Kenneth Baillie; Yuri Ishizu; Yuri Shimizu; Erina Furuhata; Shiori Maeda

Enhancers control the correct temporal and cell-type-specific activation of gene expression in multicellular eukaryotes. Knowing their properties, regulatory activity and targets is crucial to understand the regulation of differentiation and homeostasis. Here we use the FANTOM5 panel of samples, covering the majority of human tissues and cell types, to produce an atlas of active, in vivo-transcribed enhancers. We show that enhancers share properties with CpG-poor messenger RNA promoters but produce bidirectional, exosome-sensitive, relatively short unspliced RNAs, the generation of which is strongly related to enhancer activity. The atlas is used to compare regulatory programs between different cells at unprecedented depth, to identify disease-associated regulatory single nucleotide polymorphisms, and to classify cell-type-specific and ubiquitous enhancers. We further explore the utility of enhancer redundancy, which explains gene expression strength rather than expression patterns. The online FANTOM5 enhancer atlas represents a unique resource for studies on cell-type-specific enhancers and gene regulation.


Genome Biology | 2015

Gateways to the FANTOM5 promoter level mammalian expression atlas

Marina Lizio; Jayson Harshbarger; Hisashi Shimoji; Jessica Severin; Takeya Kasukawa; Serkan Sahin; Imad Abugessaisa; Shiro Fukuda; Fumi Hori; Sachi Ishikawa-Kato; Christopher J. Mungall; Erik Arner; J. Kenneth Baillie; Nicolas Bertin; Hidemasa Bono; Michiel Jl de Hoon; Alexander D. Diehl; Emmanuel Dimont; Tom C. Freeman; Kaori Fujieda; Winston Hide; Rajaram Kaliyaperumal; Toshiaki Katayama; Timo Lassmann; Terrence F. Meehan; Koro Nishikata; Hiromasa Ono; Michael Rehli; Albin Sandelin; Erik Schultes

The FANTOM5 project investigates transcription initiation activities in more than 1,000 human and mouse primary cells, cell lines and tissues using CAGE. Based on manual curation of sample information and development of an ontology for sample classification, we assemble the resulting data into a centralized data resource (http://fantom.gsc.riken.jp/5/). This resource contains web-based tools and data-access points for the research community to search and extract data related to samples, genes, promoter activities, transcription factors and enhancers across the FANTOM5 atlas.


Nature Genetics | 1999

Mutations in a gene encoding a new oxygen-regulated photoreceptor protein cause dominant retinitis pigmentosa.

Eric A. Pierce; Tracey Quinn; Terrence F. Meehan; Terri L. McGee; Eliot L. Berson; Thaddeus P. Dryja

The autosomal dominant retinitis pigmentosa (RP) locus, designated RP1, has been mapped through linkage studies to a 4-cM interval at 8q11–13. Here we describe a new photoreceptor-specific gene that maps in this interval and whose expression is modulated by retinal oxygen levels in vivo. This gene consists of at least 4 exons that encode a predicted protein of 2,156 amino acids. A nonsense mutation at codon 677 of this gene is present in approximately 3% of cases of dominant RP in North America. We also detected two deletion mutations that cause frameshifts and introduce premature termination codons in three other families with dominant RP. Our data suggest that mutations in this gene cause dominant RP, and that the encoded protein has an important but unknown role in photoreceptor biology.


Nature | 2016

High-throughput discovery of novel developmental phenotypes.

Mary E. Dickinson; Ann M. Flenniken; Xiao Ji; Lydia Teboul; Michael D. Wong; Jacqueline K. White; Terrence F. Meehan; Wolfgang J. Weninger; Henrik Westerberg; Hibret Adissu; Candice N. Baker; Lynette Bower; James Brown; L. Brianna Caddle; Francesco Chiani; Dave Clary; James Cleak; Mark J. Daly; James M. Denegre; Brendan Doe; Mary E. Dolan; Sarah M. Edie; Helmut Fuchs; Valérie Gailus-Durner; Antonella Galli; Alessia Gambadoro; Juan Gallegos; Shiying Guo; Neil R. Horner; Chih-Wei Hsu

Approximately one-third of all mammalian genes are essential for life. Phenotypes resulting from knockouts of these genes in mice have provided tremendous insight into gene function and congenital disorders. As part of the International Mouse Phenotyping Consortium effort to generate and phenotypically characterize 5,000 knockout mouse lines, here we identify 410 lethal genes during the production of the first 1,751 unique gene knockouts. Using a standardized phenotyping platform that incorporates high-resolution 3D imaging, we identify phenotypes at multiple time points for previously uncharacterized genes and additional phenotypes for genes with previously reported mutant phenotypes. Unexpectedly, our analysis reveals that incomplete penetrance and variable expressivity are common even on a defined genetic background. In addition, we show that human disease genes are enriched for essential genes, thus providing a dataset that facilitates the prioritization and validation of mutations identified in clinical sequencing efforts.


Nucleic Acids Research | 2014

The International Mouse Phenotyping Consortium Web Portal, a unified point of access for knockout mice and related phenotyping data

Gautier Koscielny; Gagarine Yaikhom; Vivek Iyer; Terrence F. Meehan; Hugh Morgan; Julian Atienza-Herrero; Andrew Blake; Chao-Kung Chen; Richard Easty; Armida Di Fenza; Tanja Fiegel; Mark Grifiths; Alan Horne; Natasha A. Karp; Natalja Kurbatova; Jeremy Mason; Peter Matthews; Darren J. Oakley; Asfand Qazi; Jack Regnart; Ahmad Retha; Luis A. Santos; Duncan Sneddon; Jonathan Warren; Henrik Westerberg; Robert J. Wilson; David Melvin; Damian Smedley; Steve D. M. Brown; Paul Flicek

The International Mouse Phenotyping Consortium (IMPC) web portal (http://www.mousephenotype.org) provides the biomedical community with a unified point of access to mutant mice and rich collection of related emerging and existing mouse phenotype data. IMPC mouse clinics worldwide follow rigorous highly structured and standardized protocols for the experimentation, collection and dissemination of data. Dedicated ‘data wranglers’ work with each phenotyping center to collate data and perform quality control of data. An automated statistical analysis pipeline has been developed to identify knockout strains with a significant change in the phenotype parameters. Annotation with biomedical ontologies allows biologists and clinicians to easily find mouse strains with phenotypic traits relevant to their research. Data integration with other resources will provide insights into mammalian gene function and human disease. As phenotype data become available for every gene in the mouse, the IMPC web portal will become an invaluable tool for researchers studying the genetic contributions of genes to human diseases.


BMC Bioinformatics | 2011

Logical Development of the Cell Ontology

Terrence F. Meehan; Anna Maria Masci; Amina Abdulla; Lindsay G. Cowell; Judith A. Blake; Christopher J. Mungall; Alexander D. Diehl

BackgroundThe Cell Ontology (CL) is an ontology for the representation of in vivo cell types. As biological ontologies such as the CL grow in complexity, they become increasingly difficult to use and maintain. By making the information in the ontology computable, we can use automated reasoners to detect errors and assist with classification. Here we report on the generation of computable definitions for the hematopoietic cell types in the CL.ResultsComputable definitions for over 340 CL classes have been created using a genus-differentia approach. These define cell types according to multiple axes of classification such as the protein complexes found on the surface of a cell type, the biological processes participated in by a cell type, or the phenotypic characteristics associated with a cell type. We employed automated reasoners to verify the ontology and to reveal mistakes in manual curation. The implementation of this process exposed areas in the ontology where new cell type classes were needed to accommodate species-specific expression of cellular markers. Our use of reasoners also inferred new relationships within the CL, and between the CL and the contributing ontologies. This restructured ontology can be used to identify immune cells by flow cytometry, supports sophisticated biological queries involving cells, and helps generate new hypotheses about cell function based on similarities to other cell types.ConclusionUse of computable definitions enhances the development of the CL and supports the interoperability of OBO ontologies.


Nature Genetics | 2017

Disease model discovery from 3,328 gene knockouts by The International Mouse Phenotyping Consortium.

Terrence F. Meehan; Nathalie Conte; David B. West; Julius Jacobsen; Jeremy Mason; Jonathan Warren; Chao Kung Chen; Ilinca Tudose; Mike Relac; Peter Matthews; Natasha A. Karp; Luis Santos; Tanja Fiegel; Natalie Ring; Henrik Westerberg; Simon Greenaway; Duncan Sneddon; Hugh Morgan; Gemma F. Codner; Michelle Stewart; James Brown; Neil R. Horner; Melissa Haendel; Nicole L. Washington; Christopher J. Mungall; Corey Reynolds; Juan Gallegos; Valerie Gailus-Durner; Tania Sorg; Guillaume Pavlovic

Although next-generation sequencing has revolutionized the ability to associate variants with human diseases, diagnostic rates and development of new therapies are still limited by a lack of knowledge of the functions and pathobiological mechanisms of most genes. To address this challenge, the International Mouse Phenotyping Consortium is creating a genome- and phenome-wide catalog of gene function by characterizing new knockout-mouse strains across diverse biological systems through a broad set of standardized phenotyping tests. All mice will be readily available to the biomedical community. Analyzing the first 3,328 genes identified models for 360 diseases, including the first models, to our knowledge, for type C Bernard–Soulier, Bardet–Biedl-5 and Gordon Holmes syndromes. 90% of our phenotype annotations were novel, providing functional evidence for 1,092 genes and candidates in genetically uncharacterized diseases including arrhythmogenic right ventricular dysplasia 3. Finally, we describe our role in variant functional validation with The 100,000 Genomes Project and others.


Journal of Biomedical Semantics | 2014

CLO: The cell line ontology

Sirarat Sarntivijai; Yu Lin; Zuoshuang Xiang; Terrence F. Meehan; Alexander D. Diehl; Uma D. Vempati; Stephan C. Schürer; Chao Pang; James Malone; Helen Parkinson; Yue Liu; Terue Takatsuki; Kaoru Saijo; Hiroshi Masuya; Yukio Nakamura; Matthew H. Brush; Melissa Haendel; Jie Zheng; Christian J. Stoeckert; Bjoern Peters; Christopher J. Mungall; Thomas E. Carey; David J. States; Brian D. Athey; Yongqun He

BackgroundCell lines have been widely used in biomedical research. The community-based Cell Line Ontology (CLO) is a member of the OBO Foundry library that covers the domain of cell lines. Since its publication two years ago, significant updates have been made, including new groups joining the CLO consortium, new cell line cells, upper level alignment with the Cell Ontology (CL) and the Ontology for Biomedical Investigation, and logical extensions.Construction and contentCollaboration among the CLO, CL, and OBI has established consensus definitions of cell line-specific terms such as ‘cell line’, ‘cell line cell’, ‘cell line culturing’, and ‘mortal’ vs. ‘immortal cell line cell’. A cell line is a genetically stable cultured cell population that contains individual cell line cells. The hierarchical structure of the CLO is built based on the hierarchy of the in vivo cell types defined in CL and tissue types (from which cell line cells are derived) defined in the UBERON cross-species anatomy ontology. The new hierarchical structure makes it easier to browse, query, and perform automated classification. We have recently added classes representing more than 2,000 cell line cells from the RIKEN BRC Cell Bank to CLO. Overall, the CLO now contains ~38,000 classes of specific cell line cells derived from over 200 in vivo cell types from various organisms.Utility and discussionThe CLO has been applied to different biomedical research studies. Example case studies include annotation and analysis of EBI ArrayExpress data, bioassays, and host-vaccine/pathogen interaction. CLO’s utility goes beyond a catalogue of cell line types. The alignment of the CLO with related ontologies combined with the use of ontological reasoners will support sophisticated inferencing to advance translational informatics development.


Nature Communications | 2017

Prevalence of sexual dimorphism in mammalian phenotypic traits

Natasha A. Karp; Jeremy Mason; Arthur L. Beaudet; Yoav Benjamini; Lynette Bower; Robert E. Braun; Steve D.M. Brown; Elissa J. Chesler; Mary E. Dickinson; Ann M. Flenniken; Helmut Fuchs; Martin Hrabé de Angelis; Xiang Gao; Shiying Guo; Simon Greenaway; Ruth Heller; Yann Herault; Monica J. Justice; Natalja Kurbatova; Christopher J. Lelliott; K. C. Kent Lloyd; Ann-Marie Mallon; Judith E. Mank; Hiroshi Masuya; Colin McKerlie; Terrence F. Meehan; Richard F. Mott; Stephen A. Murray; Helen E. Parkinson; Ramiro Ramirez-Solis

The role of sex in biomedical studies has often been overlooked, despite evidence of sexually dimorphic effects in some biological studies. Here, we used high-throughput phenotype data from 14,250 wildtype and 40,192 mutant mice (representing 2,186 knockout lines), analysed for up to 234 traits, and found a large proportion of mammalian traits both in wildtype and mutants are influenced by sex. This result has implications for interpreting disease phenotypes in animal models and humans.


Journal of Biomedical Informatics | 2011

Hematopoietic cell types: Prototype for a revised cell ontology

Alexander D. Diehl; Alison Deckhut Augustine; Judith A. Blake; Lindsay G. Cowell; Elizabeth S. Gold; Timothy A. Gondré-Lewis; Anna Maria Masci; Terrence F. Meehan; Penelope A. Morel; Anastasia Nijnik; Bjoern Peters; Bali Pulendran; Richard H. Scheuermann; Q. Alison Yao; Martin S. Zand; Christopher J. Mungall

The Cell Ontology (CL) aims for the representation of in vivo and in vitro cell types from all of biology. The CL is a candidate reference ontology of the OBO Foundry and requires extensive revision to bring it up to current standards for biomedical ontologies, both in its structure and its coverage of various subfields of biology. We have now addressed the specific content of one area of the CL, the section of the ontology dealing with hematopoietic cells. This section has been extensively revised to improve its content and eliminate multiple inheritance in the asserted hierarchy, and the groundwork has been laid for structuring the hematopoietic cell type terms as cross-products incorporating logical definitions built from relationships to external ontologies, such as the Protein Ontology and the Gene Ontology. The methods and improvements to the CL in this area represent a paradigm for improvement of the entire ontology over time.

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Jeremy Mason

European Bioinformatics Institute

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Christopher J. Mungall

Laboratory of Molecular Biology

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Helen Parkinson

European Bioinformatics Institute

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Lynette Bower

University of California

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Jacqueline K. White

Wellcome Trust Sanger Institute

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Natasha A. Karp

Wellcome Trust Sanger Institute

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Nathalie Conte

European Bioinformatics Institute

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