Adrian Tivey
Wellcome Trust Sanger Institute
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Publication
Featured researches published by Adrian Tivey.
Nature | 2005
Ludwig Eichinger; J. A. Pachebat; G. Glöckner; Marie-Adele Rajandream; Richard Sucgang; Matthew Berriman; J. Song; Rolf Olsen; Karol Szafranski; Qikai Xu; Budi Tunggal; Sarah K. Kummerfeld; B. A. Konfortov; Francisco Rivero; Alan Thomas Bankier; R. Lehmann; N. Hamlin; Robert Davies; Pascale Gaudet; Petra Fey; Karen E Pilcher; Guokai Chen; David L. Saunders; Erica Sodergren; Paul Davis; Arnaud Kerhornou; X. Nie; Neil Hall; Christophe Anjard; Lisa Hemphill
The social amoebae are exceptional in their ability to alternate between unicellular and multicellular forms. Here we describe the genome of the best-studied member of this group, Dictyostelium discoideum. The gene-dense chromosomes of this organism encode approximately 12,500 predicted proteins, a high proportion of which have long, repetitive amino acid tracts. There are many genes for polyketide synthases and ABC transporters, suggesting an extensive secondary metabolism for producing and exporting small molecules. The genome is rich in complex repeats, one class of which is clustered and may serve as centromeres. Partial copies of the extrachromosomal ribosomal DNA (rDNA) element are found at the ends of each chromosome, suggesting a novel telomere structure and the use of a common mechanism to maintain both the rDNA and chromosomal termini. A proteome-based phylogeny shows that the amoebozoa diverged from the animal–fungal lineage after the plant–animal split, but Dictyostelium seems to have retained more of the diversity of the ancestral genome than have plants, animals or fungi.
Nature | 2009
Matthew Berriman; Brian J. Haas; Philip T. LoVerde; R. Alan Wilson; Gary P. Dillon; Gustavo C. Cerqueira; Susan T. Mashiyama; Bissan Al-Lazikani; Luiza F. Andrade; Peter D. Ashton; Martin Aslett; Daniella Castanheira Bartholomeu; Gaëlle Blandin; Conor R. Caffrey; Avril Coghlan; Richard M. R. Coulson; Tim A. Day; Arthur L. Delcher; Ricardo DeMarco; Appoliniare Djikeng; Tina Eyre; John Gamble; Elodie Ghedin; Yong-Hong Gu; Christiane Hertz-Fowler; Hirohisha Hirai; Yuriko Hirai; Robin Houston; Alasdair Ivens; David A. Johnston
Schistosoma mansoni is responsible for the neglected tropical disease schistosomiasis that affects 210 million people in 76 countries. Here we present analysis of the 363 megabase nuclear genome of the blood fluke. It encodes at least 11,809 genes, with an unusual intron size distribution, and new families of micro-exon genes that undergo frequent alternative splicing. As the first sequenced flatworm, and a representative of the Lophotrochozoa, it offers insights into early events in the evolution of the animals, including the development of a body pattern with bilateral symmetry, and the development of tissues into organs. Our analysis has been informed by the need to find new drug targets. The deficits in lipid metabolism that make schistosomes dependent on the host are revealed, and the identification of membrane receptors, ion channels and more than 300 proteases provide new insights into the biology of the life cycle and new targets. Bioinformatics approaches have identified metabolic chokepoints, and a chemogenomic screen has pinpointed schistosome proteins for which existing drugs may be active. The information generated provides an invaluable resource for the research community to develop much needed new control tools for the treatment and eradication of this important and neglected disease.
Nature Genetics | 2007
Christopher S. Peacock; Kathy Seeger; David Harris; Lee Murphy; Jeronimo C. Ruiz; Michael A. Quail; Nick Peters; Ellen Adlem; Adrian Tivey; Martin Aslett; Arnaud Kerhornou; Alasdair Ivens; Audrey Fraser; Marie-Adele Rajandream; Tim Carver; Halina Norbertczak; Tracey Chillingworth; Zahra Hance; Kay Jagels; Sharon Moule; Doug Ormond; Simon Rutter; Rob Squares; Sally Whitehead; Ester Rabbinowitsch; Claire Arrowsmith; Brian R. White; Scott Thurston; Frédéric Bringaud; Sandra L. Baldauf
Leishmania parasites cause a broad spectrum of clinical disease. Here we report the sequencing of the genomes of two species of Leishmania: Leishmania infantum and Leishmania braziliensis. The comparison of these sequences with the published genome of Leishmania major reveals marked conservation of synteny and identifies only ∼200 genes with a differential distribution between the three species. L. braziliensis, contrary to Leishmania species examined so far, possesses components of a putative RNA-mediated interference pathway, telomere-associated transposable elements and spliced leader–associated SLACS retrotransposons. We show that pseudogene formation and gene loss are the principal forces shaping the different genomes. Genes that are differentially distributed between the species encode proteins implicated in host-pathogen interactions and parasite survival in the macrophage.
Bioinformatics | 2008
Tim Carver; Matthew Berriman; Adrian Tivey; Chinmay Patel; Ulrike Böhme; Barclay G. Barrell; Julian Parkhill; Marie-Adele Rajandream
Motivation: Artemis and Artemis Comparison Tool (ACT) have become mainstream tools for viewing and annotating sequence data, particularly for microbial genomes. Since its first release, Artemis has been continuously developed and supported with additional functionality for editing and analysing sequences based on feedback from an active user community of laboratory biologists and professional annotators. Nevertheless, its utility has been somewhat restricted by its limitation to reading and writing from flat files. Therefore, a new version of Artemis has been developed, which reads from and writes to a relational database schema, and allows users to annotate more complex, often large and fragmented, genome sequences. Results: Artemis and ACT have now been extended to read and write directly to the Generic Model Organism Database (GMOD, http://www.gmod.org) Chado relational database schema. In addition, a Gene Builder tool has been developed to provide structured forms and tables to edit coordinates of gene models and edit functional annotation, based on standard ontologies, controlled vocabularies and free text. Availability: Artemis and ACT are freely available (under a GPL licence) for download (for MacOSX, UNIX and Windows) at the Wellcome Trust Sanger Institute web sites: http://www.sanger.ac.uk/Software/Artemis/ http://www.sanger.ac.uk/Software/ACT/ Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.
Nucleic Acids Research | 2010
Martin Aslett; Cristina Aurrecoechea; Matthew Berriman; John Brestelli; Brian P. Brunk; Mark Carrington; Daniel P. Depledge; Steve Fischer; Bindu Gajria; Xin Gao; Malcolm J. Gardner; Alan R. Gingle; Greg Grant; Omar S. Harb; Mark Heiges; Christiane Hertz-Fowler; Robin Houston; Frank Innamorato; John Iodice; Jessica C. Kissinger; Eileen Kraemer; Wei Li; Flora J. Logan; John A. Miller; Siddhartha Mitra; Peter J. Myler; Vishal Nayak; Cary Pennington; Isabelle Phan; Deborah F. Pinney
TriTrypDB (http://tritrypdb.org) is an integrated database providing access to genome-scale datasets for kinetoplastid parasites, and supporting a variety of complex queries driven by research and development needs. TriTrypDB is a collaborative project, utilizing the GUS/WDK computational infrastructure developed by the Eukaryotic Pathogen Bioinformatics Resource Center (EuPathDB.org) to integrate genome annotation and analyses from GeneDB and elsewhere with a wide variety of functional genomics datasets made available by members of the global research community, often pre-publication. Currently, TriTrypDB integrates datasets from Leishmania braziliensis, L. infantum, L. major, L. tarentolae, Trypanosoma brucei and T. cruzi. Users may examine individual genes or chromosomal spans in their genomic context, including syntenic alignments with other kinetoplastid organisms. Data within TriTrypDB can be interrogated utilizing a sophisticated search strategy system that enables a user to construct complex queries combining multiple data types. All search strategies are stored, allowing future access and integrated searches. ‘User Comments’ may be added to any gene page, enhancing available annotation; such comments become immediately searchable via the text search, and are forwarded to curators for incorporation into the reference annotation when appropriate.
Nature | 2008
Arnab Pain; Ulrike Böhme; Andrew Berry; Karen Mungall; Robert D. Finn; Andrew P. Jackson; T. Mourier; J. Mistry; E. M. Pasini; Martin Aslett; S. Balasubrammaniam; Karsten M. Borgwardt; Karen Brooks; Celine Carret; Tim Carver; Inna Cherevach; Tracey Chillingworth; Taane G. Clark; M. R. Galinski; Neil Hall; D. Harper; David Harris; Heidi Hauser; A. Ivens; C. S. Janssen; Thomas M. Keane; N. Larke; S. Lapp; M. Marti; S. Moule
Plasmodium knowlesi is an intracellular malaria parasite whose natural vertebrate host is Macaca fascicularis (the ‘kra’ monkey); however, it is now increasingly recognized as a significant cause of human malaria, particularly in southeast Asia. Plasmodium knowlesi was the first malaria parasite species in which antigenic variation was demonstrated, and it has a close phylogenetic relationship to Plasmodium vivax, the second most important species of human malaria parasite (reviewed in ref. 4). Despite their relatedness, there are important phenotypic differences between them, such as host blood cell preference, absence of a dormant liver stage or ‘hypnozoite’ in P. knowlesi, and length of the asexual cycle (reviewed in ref. 4). Here we present an analysis of the P. knowlesi (H strain, Pk1(A+) clone) nuclear genome sequence. This is the first monkey malaria parasite genome to be described, and it provides an opportunity for comparison with the recently completed P. vivax genome and other sequenced Plasmodium genomes. In contrast to other Plasmodium genomes, putative variant antigen families are dispersed throughout the genome and are associated with intrachromosomal telomere repeats. One of these families, the KIRs, contains sequences that collectively match over one-half of the host CD99 extracellular domain, which may represent an unusual form of molecular mimicry.
Nature | 2002
Neil Hall; Arnab Pain; Matthew Berriman; Carol Churcher; Barbara Harris; David Harris; Karen Mungall; Sharen Bowman; Rebecca Atkin; Stephen Baker; Andy Barron; Karen Brooks; Caroline O. Buckee; C. Burrows; Inna Cherevach; Tracey Chillingworth; Z. Christodoulou; Louise Clark; Richard Clark; Craig Corton; Ann Cronin; Robert Davies; Paul Davis; P. Dear; F. Dearden; Jonathon Doggett; Theresa Feltwell; Arlette Goble; Ian Goodhead; R. Gwilliam
Since the sequencing of the first two chromosomes of the malaria parasite, Plasmodium falciparum, there has been a concerted effort to sequence and assemble the entire genome of this organism. Here we report the sequence of chromosomes 1, 3–9 and 13 of P. falciparum clone 3D7—these chromosomes account for approximately 55% of the total genome. We describe the methods used to map, sequence and annotate these chromosomes. By comparing our assemblies with the optical map, we indicate the completeness of the resulting sequence. During annotation, we assign Gene Ontology terms to the predicted gene products, and observe clustering of some malaria-specific terms to specific chromosomes. We identify a highly conserved sequence element found in the intergenic region of internal var genes that is not associated with their telomeric counterparts.
The Lancet | 2015
Caroline F. Wright; Tomas Fitzgerald; Wendy D Jones; Stephen Clayton; Jeremy McRae; Margriet van Kogelenberg; Daniel A. King; Kirsty Ambridge; Daniel M Barrett; Tanya Bayzetinova; A. Paul Bevan; Eugene Bragin; Eleni A. Chatzimichali; Susan M. Gribble; Philip Jones; Netravathi Krishnappa; Laura E Mason; Ray Miller; Katherine I. Morley; Vijaya Parthiban; Elena Prigmore; Diana Rajan; Alejandro Sifrim; G. Jawahar Swaminathan; Adrian Tivey; Anna Middleton; Michael W. Parker; Nigel P. Carter; Jeffrey C. Barrett; David Fitzpatrick
Summary Background Human genome sequencing has transformed our understanding of genomic variation and its relevance to health and disease, and is now starting to enter clinical practice for the diagnosis of rare diseases. The question of whether and how some categories of genomic findings should be shared with individual research participants is currently a topic of international debate, and development of robust analytical workflows to identify and communicate clinically relevant variants is paramount. Methods The Deciphering Developmental Disorders (DDD) study has developed a UK-wide patient recruitment network involving over 180 clinicians across all 24 regional genetics services, and has performed genome-wide microarray and whole exome sequencing on children with undiagnosed developmental disorders and their parents. After data analysis, pertinent genomic variants were returned to individual research participants via their local clinical genetics team. Findings Around 80 000 genomic variants were identified from exome sequencing and microarray analysis in each individual, of which on average 400 were rare and predicted to be protein altering. By focusing only on de novo and segregating variants in known developmental disorder genes, we achieved a diagnostic yield of 27% among 1133 previously investigated yet undiagnosed children with developmental disorders, whilst minimising incidental findings. In families with developmentally normal parents, whole exome sequencing of the child and both parents resulted in a 10-fold reduction in the number of potential causal variants that needed clinical evaluation compared to sequencing only the child. Most diagnostic variants identified in known genes were novel and not present in current databases of known disease variation. Interpretation Implementation of a robust translational genomics workflow is achievable within a large-scale rare disease research study to allow feedback of potentially diagnostic findings to clinicians and research participants. Systematic recording of relevant clinical data, curation of a gene–phenotype knowledge base, and development of clinical decision support software are needed in addition to automated exclusion of almost all variants, which is crucial for scalable prioritisation and review of possible diagnostic variants. However, the resource requirements of development and maintenance of a clinical reporting system within a research setting are substantial. Funding Health Innovation Challenge Fund, a parallel funding partnership between the Wellcome Trust and the UK Department of Health.
Nucleic Acids Research | 2004
Christiane Hertz-Fowler; Christopher S. Peacock; Valerie Wood; Martin Aslett; Arnaud Kerhornou; Paul Mooney; Adrian Tivey; Matthew Berriman; Neil Hall; Kim Rutherford; Julian Parkhill; Alasdair Ivens; Marie-Adele Rajandream; Bart Barrell
GeneDB (http://www.genedb.org/) is a genome database for prokaryotic and eukaryotic organisms. The resource provides a portal through which data generated by the Pathogen Sequencing Unit at the Wellcome Trust Sanger Institute and other collaborating sequencing centres can be made publicly available. It combines data from finished and ongoing genome and expressed sequence tag (EST) projects with curated annotation, that can be searched, sorted and downloaded, using a single web based resource. The current release stores 11 datasets of which six are curated and maintained by biologists, who review and incorporate information from the scientific literature, public databases and the respective research communities.
Nucleic Acids Research | 2012
Flora J. Logan-Klumpler; Nishadi De Silva; Ulrike Boehme; Matthew B. Rogers; Giles S. Velarde; Jacqueline McQuillan; Tim Carver; Martin Aslett; Christian Olsen; Sandhya Subramanian; Isabelle Phan; Carol Farris; Siddhartha Mitra; Gowthaman Ramasamy; Haiming Wang; Adrian Tivey; W Andrew Jackson; Robin Houston; Julian Parkhill; Matthew T. G. Holden; Omar S. Harb; Brian P. Brunk; Peter J. Myler; David S. Roos; Mark Carrington; Deborah F. Smith; Christiane Hertz-Fowler; Matthew Berriman
GeneDB (http://www.genedb.org) is a genome database for prokaryotic and eukaryotic pathogens and closely related organisms. The resource provides a portal to genome sequence and annotation data, which is primarily generated by the Pathogen Genomics group at the Wellcome Trust Sanger Institute. It combines data from completed and ongoing genome projects with curated annotation, which is readily accessible from a web based resource. The development of the database in recent years has focused on providing database-driven annotation tools and pipelines, as well as catering for increasingly frequent assembly updates. The website has been significantly redesigned to take advantage of current web technologies, and improve usability. The current release stores 41 data sets, of which 17 are manually curated and maintained by biologists, who review and incorporate data from the scientific literature, as well as other sources. GeneDB is primarily a production and annotation database for the genomes of predominantly pathogenic organisms.