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Linda Hannick

Bio: Linda Hannick is an academic researcher from J. Craig Venter Institute. The author has contributed to research in topics: Genome & Gene. The author has an hindex of 25, co-authored 32 publications receiving 9151 citations. Previous affiliations of Linda Hannick include Science Applications International Corporation & Leidos.

Papers
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Journal ArticleDOI
Matthew Berriman1, Elodie Ghedin2, Elodie Ghedin3, Christiane Hertz-Fowler1, Gaëlle Blandin3, Hubert Renauld1, Daniella Castanheira Bartholomeu3, Nicola Lennard1, Elisabet Caler3, N. Hamlin1, Brian J. Haas3, Ulrike Böhme1, Linda Hannick3, Martin Aslett1, Joshua Shallom3, Lucio Marcello4, Lihua Hou3, Bill Wickstead5, U. Cecilia M. Alsmark6, Claire Arrowsmith1, Rebecca Atkin1, Andrew Barron1, Frédéric Bringaud7, Karen Brooks1, Mark Carrington8, Inna Cherevach1, Tracey-Jane Chillingworth1, Carol Churcher1, Louise Clark1, Craig Corton1, Ann Cronin1, Robert L. Davies1, Jonathon Doggett1, Appolinaire Djikeng3, Tamara Feldblyum3, Mark C. Field8, Audrey Fraser1, Ian Goodhead1, Zahra Hance1, David Harper1, Barbara Harris1, Heidi Hauser1, Jessica B. Hostetler3, Al Ivens1, Kay Jagels1, David W. Johnson1, Justin Johnson3, Kristine Jones3, Arnaud Kerhornou1, Hean Koo3, Natasha Larke1, Scott M. Landfear9, Christopher Larkin3, Vanessa Leech8, Alexandra Line1, Angela Lord1, Annette MacLeod4, P. Mooney1, Sharon Moule1, David M. A. Martin10, Gareth W. Morgan11, Karen Mungall1, Halina Norbertczak1, Doug Ormond1, Grace Pai3, Christopher S. Peacock1, Jeremy Peterson3, Michael A. Quail1, Ester Rabbinowitsch1, Marie-Adèle Rajandream1, Chris P Reitter8, Steven L. Salzberg3, Mandy Sanders1, Seth Schobel3, Sarah Sharp1, Mark Simmonds1, Anjana J. Simpson3, Luke J. Tallon3, C. Michael R. Turner4, Andrew Tait4, Adrian Tivey1, Susan Van Aken3, Danielle Walker1, David Wanless3, Shiliang Wang3, Brian White1, Owen White3, Sally Whitehead1, John Woodward1, Jennifer R. Wortman3, Mark Raymond Adams12, T. Martin Embley6, Keith Gull5, Elisabetta Ullu13, J. David Barry4, Alan H. Fairlamb10, Fred R. Opperdoes14, Barclay G. Barrell1, John E. Donelson15, Neil Hall3, Neil Hall16, Claire M. Fraser3, Sara E. Melville8, Najib M. El-Sayed2, Najib M. El-Sayed3 
15 Jul 2005-Science
TL;DR: Comparisons of the cytoskeleton and endocytic trafficking systems of Trypanosoma brucei with those of humans and other eukaryotic organisms reveal major differences.
Abstract: African trypanosomes cause human sleeping sickness and livestock trypanosomiasis in sub-Saharan Africa. We present the sequence and analysis of the 11 megabase-sized chromosomes of Trypanosoma brucei. The 26-megabase genome contains 9068 predicted genes, including ∼900 pseudogenes and ∼1700 T. brucei–specific genes. Large subtelomeric arrays contain an archive of 806 variant surface glycoprotein (VSG) genes used by the parasite to evade the mammalian immune system. Most VSG genes are pseudogenes, which may be used to generate expressed mosaic genes by ectopic recombination. Comparisons of the cytoskeleton and endocytic trafficking systems with those of humans and other eukaryotic organisms reveal major differences. A comparison of metabolic pathways encoded by the genomes of T. brucei, T. cruzi, and Leishmania major reveals the least overall metabolic capability in T. brucei and the greatest in L. major. Horizontal transfer of genes of bacterial origin has contributed to some of the metabolic differences in these parasites, and a number of novel potential drug targets have been identified.

1,631 citations

Journal ArticleDOI
TL;DR: The algorithm of the Program to Assemble Spliced Alignments (PASA) tool is described, as well as the results of automated updates to Arabidopsis gene annotations.
Abstract: The spliced alignment of expressed sequence data to genomic sequence has proven a key tool in the comprehensive annotation of genes in eukaryotic genomes. A novel algorithm was developed to assemble clusters of overlapping transcript alignments (ESTs and full-length cDNAs) into maximal alignment assemblies, thereby comprehensively incorporating all available transcript data and capturing subtle splicing variations. Complete and partial gene structures identified by this method were used to improve The Institute for Genomic Research Arabidopsis genome annotation (TIGR release v.4.0). The alignment assemblies permitted the automated modeling of several novel genes and >1000 alternative splicing variations as well as updates (including UTR annotations) to nearly half of the ~27 000 annotated protein coding genes. The algorithm of the Program to Assemble Spliced Alignments (PASA) tool is described, as well as the results of automated updates to Arabidopsis gene annotations.

1,441 citations

Journal ArticleDOI
Vishvanath Nene1, Jennifer R. Wortman1, Daniel Lawson, Brian J. Haas1, Chinnappa D. Kodira2, Zhijian Jake Tu3, Brendan J. Loftus, Zhiyong Xi4, Karyn Megy, Manfred Grabherr2, Quinghu Ren1, Evgeny M. Zdobnov, Neil F. Lobo5, Kathryn S. Campbell6, Susan E. Brown7, Maria de Fatima Bonaldo8, Jingsong Zhu9, Steven P. Sinkins10, David G. Hogenkamp11, Paolo Amedeo1, Peter Arensburger9, Peter W. Atkinson9, Shelby L. Bidwell1, Jim Biedler3, Ewan Birney, Robert V. Bruggner5, Javier Costas, Monique R. Coy3, Jonathan Crabtree1, Matt Crawford2, Becky deBruyn5, David DeCaprio2, Karin Eiglmeier12, Eric Eisenstadt1, Hamza El-Dorry13, William M. Gelbart6, Suely Lopes Gomes13, Martin Hammond, Linda Hannick1, James R. Hogan5, Michael H. Holmes1, David M. Jaffe2, J. Spencer Johnston, Ryan C. Kennedy5, Hean Koo1, Saul A. Kravitz, Evgenia V. Kriventseva14, David Kulp15, Kurt LaButti2, Eduardo Lee1, Song Li3, Diane D. Lovin5, Chunhong Mao3, Evan Mauceli2, Carlos Frederico Martins Menck13, Jason R. Miller1, Philip Montgomery2, Akio Mori5, Ana L. T. O. Nascimento16, Horacio Naveira17, Chad Nusbaum2, Sinéad B. O'Leary2, Joshua Orvis1, Mihaela Pertea, Hadi Quesneville, Kyanne R. Reidenbach11, Yu-Hui Rogers, Charles Roth12, Jennifer R. Schneider5, Michael C. Schatz, Martin Shumway1, Mario Stanke, Eric O. Stinson5, Jose M. C. Tubio, Janice P. Vanzee11, Sergio Verjovski-Almeida13, Doreen Werner18, Owen White1, Stefan Wyder14, Qiandong Zeng2, Qi Zhao1, Yongmei Zhao1, Catherine A. Hill11, Alexander S. Raikhel9, Marcelo B. Soares8, Dennis L. Knudson7, Norman H. Lee, James E. Galagan2, Steven L. Salzberg, Ian T. Paulsen1, George Dimopoulos4, Frank H. Collins5, Bruce W. Birren2, Claire M. Fraser-Liggett, David W. Severson5 
22 Jun 2007-Science
TL;DR: A draft sequence of the genome of Aedes aegypti, the primary vector for yellow fever and dengue fever, which at approximately 1376 million base pairs is about 5 times the size of the genomes of the malaria vector Anopheles gambiae was presented in this paper.
Abstract: We present a draft sequence of the genome of Aedes aegypti, the primary vector for yellow fever and dengue fever, which at approximately 1376 million base pairs is about 5 times the size of the genome of the malaria vector Anopheles gambiae. Nearly 50% of the Ae. aegypti genome consists of transposable elements. These contribute to a factor of approximately 4 to 6 increase in average gene length and in sizes of intergenic regions relative to An. gambiae and Drosophila melanogaster. Nonetheless, chromosomal synteny is generally maintained among all three insects, although conservation of orthologous gene order is higher (by a factor of approximately 2) between the mosquito species than between either of them and the fruit fly. An increase in genes encoding odorant binding, cytochrome P450, and cuticle domains relative to An. gambiae suggests that members of these protein families underpin some of the biological differences between the two mosquito species.

1,107 citations

Journal ArticleDOI
04 Sep 2008-Nature
TL;DR: To thrive, the field that links biologists and their data urgently needs structure, recognition and support.
Abstract: To thrive, the field that links biologists and their data urgently needs structure, recognition and support.

727 citations

Journal ArticleDOI
Midori A. Harris, Jennifer I. Deegan, Amelia Ireland, Jane Lomax, Michael Ashburner1, Susan Tweedie1, Seth Carbon2, Suzanna E. Lewis2, Christopher J. Mungall2, John Day Richter2, Karen Eilbeck, Judith A. Blake, Carol J. Bult, Alexander D. Diehl, Mary E. Dolan, Harold J. Drabkin, Janan T. Eppig, David P. Hill, Ni Li, Martin Ringwald, Rama Balakrishnan3, Gail Binkley3, J. Michael Cherry3, Karen R. Christie3, Maria C. Costanzo3, Qing Dong3, Stacia R. Engel3, Dianna G. Fisk3, Jodi E. Hirschman3, Benjamin C. Hitz3, Eurie L. Hong3, Cynthia J. Krieger3, Stuart R. Miyasato3, Robert S. Nash3, Julie Park3, Marek S. Skrzypek3, Shuai Weng3, Edith D. Wong3, Kathy K. Zhu3, David Botstein4, Kara Dolinski4, Michael S. Livstone4, Rose Oughtred4, Tanya Z. Berardini5, Li Donghui5, Seung Y. Rhee5, Rolf Apweiler6, Daniel Barrell6, Evelyn Camon6, Emily Dimmer6, Rachael P. Huntley, Nicola Mulder, Varsha K. Khodiyar, Ruth C. Lovering, Sue Povey, Rex L. Chisholm, Petra Fey, Pascale Gaudet, Warren A. Kibbe, Ranjana Kishore, Erich M. Schwarz, Paul W. Sternberg, Kimberly Van Auken, Michelle G. Giglio, Linda Hannick, Jennifer R. Wortman, Martin Aslett, Matthew Berriman, Valerie Wood, Howard J. Jacob, Stan Laulederkind, Victoria Petri, Mary Shimoyama, Jennifer L. Smith, Simon N. Twigger, Pankaj Jaiswal, Trent E. Seigfried, Doug Howe, Monte Westerfield, Candace Collmer, Trudy Torto Alalibo, Erika Feltrin, Giorgio Valle, Susan Bromberg, Shane C. Burgess, Fiona M. McCarthy 
TL;DR: The GO Consortium has launched a focused effort to provide comprehensive and detailed annotation of orthologous genes across a number of ‘reference’ genomes, including human and several key model organisms.
Abstract: The Gene Ontology (GO) project (http://www.geneontology.org) provides a set of structured, controlled vocabularies for community use in annotating genes, gene products and sequences (also see http://www.sequenceontology.org/). The ontologies have been extended and refined for several biological areas, and improvements to the structure of the ontologies have been implemented. To improve the quantity and quality of gene product annotations available from its public repository, the GO Consortium has launched a focused effort to provide comprehensive and detailed annotation of orthologous genes across a number of reference genomes, including human and several key model organisms. Software developments include two releases of the ontology-editing tool OBO-Edit, and improvements to the AmiGO browser interface.

726 citations


Cited by
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28 Jul 2005
TL;DR: PfPMP1)与感染红细胞、树突状组胞以及胎盘的单个或多个受体作用,在黏附及免疫逃避中起关键的作�ly.
Abstract: 抗原变异可使得多种致病微生物易于逃避宿主免疫应答。表达在感染红细胞表面的恶性疟原虫红细胞表面蛋白1(PfPMP1)与感染红细胞、内皮细胞、树突状细胞以及胎盘的单个或多个受体作用,在黏附及免疫逃避中起关键的作用。每个单倍体基因组var基因家族编码约60种成员,通过启动转录不同的var基因变异体为抗原变异提供了分子基础。

18,940 citations

Journal ArticleDOI
TL;DR: The results suggest that Cufflinks can illuminate the substantial regulatory flexibility and complexity in even this well-studied model of muscle development and that it can improve transcriptome-based genome annotation.
Abstract: High-throughput mRNA sequencing (RNA-Seq) promises simultaneous transcript discovery and abundance estimation. However, this would require algorithms that are not restricted by prior gene annotations and that account for alternative transcription and splicing. Here we introduce such algorithms in an open-source software program called Cufflinks. To test Cufflinks, we sequenced and analyzed >430 million paired 75-bp RNA-Seq reads from a mouse myoblast cell line over a differentiation time series. We detected 13,692 known transcripts and 3,724 previously unannotated ones, 62% of which are supported by independent expression data or by homologous genes in other species. Over the time series, 330 genes showed complete switches in the dominant transcription start site (TSS) or splice isoform, and we observed more subtle shifts in 1,304 other genes. These results suggest that Cufflinks can illuminate the substantial regulatory flexibility and complexity in even this well-studied model of muscle development and that it can improve transcriptome-based genome annotation.

13,337 citations

Journal ArticleDOI
TL;DR: The latest version of STRING more than doubles the number of organisms it covers, and offers an option to upload entire, genome-wide datasets as input, allowing users to visualize subsets as interaction networks and to perform gene-set enrichment analysis on the entire input.
Abstract: Proteins and their functional interactions form the backbone of the cellular machinery. Their connectivity network needs to be considered for the full understanding of biological phenomena, but the available information on protein-protein associations is incomplete and exhibits varying levels of annotation granularity and reliability. The STRING database aims to collect, score and integrate all publicly available sources of protein-protein interaction information, and to complement these with computational predictions. Its goal is to achieve a comprehensive and objective global network, including direct (physical) as well as indirect (functional) interactions. The latest version of STRING (11.0) more than doubles the number of organisms it covers, to 5090. The most important new feature is an option to upload entire, genome-wide datasets as input, allowing users to visualize subsets as interaction networks and to perform gene-set enrichment analysis on the entire input. For the enrichment analysis, STRING implements well-known classification systems such as Gene Ontology and KEGG, but also offers additional, new classification systems based on high-throughput text-mining as well as on a hierarchical clustering of the association network itself. The STRING resource is available online at https://string-db.org/.

10,584 citations

Journal ArticleDOI
TL;DR: H hierarchical and self-consistent orthology annotations are introduced for all interacting proteins, grouping the proteins into families at various levels of phylogenetic resolution in the STRING database.
Abstract: The many functional partnerships and interactions that occur between proteins are at the core of cellular processing and their systematic characterization helps to provide context in molecular systems biology. However, known and predicted interactions are scattered over multiple resources, and the available data exhibit notable differences in terms of quality and completeness. The STRING database (http://string-db.org) aims to provide a critical assessment and integration of protein-protein interactions, including direct (physical) as well as indirect (functional) associations. The new version 10.0 of STRING covers more than 2000 organisms, which has necessitated novel, scalable algorithms for transferring interaction information between organisms. For this purpose, we have introduced hierarchical and self-consistent orthology annotations for all interacting proteins, grouping the proteins into families at various levels of phylogenetic resolution. Further improvements in version 10.0 include a completely redesigned prediction pipeline for inferring protein-protein associations from co-expression data, an API interface for the R computing environment and improved statistical analysis for enrichment tests in user-provided networks.

8,224 citations

Journal ArticleDOI
TL;DR: In the latest version 10.5 of STRING, the biggest changes are concerned with data dissemination: the web frontend has been completely redesigned to reduce dependency on outdated browser technologies, and the database can now also be queried from inside the popular Cytoscape software framework.
Abstract: A system-wide understanding of cellular function requires knowledge of all functional interactions between the expressed proteins. The STRING database aims to collect and integrate this information, by consolidating known and predicted protein-protein association data for a large number of organisms. The associations in STRING include direct (physical) interactions, as well as indirect (functional) interactions, as long as both are specific and biologically meaningful. Apart from collecting and reassessing available experimental data on protein-protein interactions, and importing known pathways and protein complexes from curated databases, interaction predictions are derived from the following sources: (i) systematic co-expression analysis, (ii) detection of shared selective signals across genomes, (iii) automated text-mining of the scientific literature and (iv) computational transfer of interaction knowledge between organisms based on gene orthology. In the latest version 10.5 of STRING, the biggest changes are concerned with data dissemination: the web frontend has been completely redesigned to reduce dependency on outdated browser technologies, and the database can now also be queried from inside the popular Cytoscape software framework. Further improvements include automated background analysis of user inputs for functional enrichments, and streamlined download options. The STRING resource is available online, at http://string-db.org/.

5,569 citations