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Dive into the research topics where Leonore Reiser is active.

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Featured researches published by Leonore Reiser.


Nucleic Acids Research | 2003

The Arabidopsis Information Resource (TAIR): a model organism database providing a centralized, curated gateway to Arabidopsis biology, research materials and community

Seung Y. Rhee; William D. Beavis; Tanya Z. Berardini; Guanghong Chen; David A. Dixon; Aisling Doyle; Margarita Garcia-Hernandez; Eva Huala; Gabriel C. Lander; Mary Montoya; Neil Miller; Lukas A. Mueller; Suparna Mundodi; Leonore Reiser; Julie Tacklind; Dan C. Weems; Yihe Wu; Iris Xu; Daniel Yoo; Jungwon Yoon; Peifen Zhang

Arabidopsis thaliana is the most widely-studied plant today. The concerted efforts of over 11 000 researchers and 4000 organizations around the world are generating a rich diversity and quantity of information and materials. This information is made available through a comprehensive on-line resource called the Arabidopsis Information Resource (TAIR) (http://arabidopsis.org), which is accessible via commonly used web browsers and can be searched and downloaded in a number of ways. In the last two years, efforts have been focused on increasing data content and diversity, functionally annotating genes and gene products with controlled vocabularies, and improving data retrieval, analysis and visualization tools. New information include sequence polymorphisms including alleles, germplasms and phenotypes, Gene Ontology annotations, gene families, protein information, metabolic pathways, gene expression data from microarray experiments and seed and DNA stocks. New data visualization and analysis tools include SeqViewer, which interactively displays the genome from the whole chromosome down to 10 kb of nucleotide sequence and AraCyc, a metabolic pathway database and map tool that allows overlaying expression data onto the pathway diagrams. Finally, we have recently incorporated seed and DNA stock information from the Arabidopsis Biological Resource Center (ABRC) and implemented a shopping-cart style on-line ordering system.


Plant Physiology | 2004

Functional Annotation of the Arabidopsis Genome Using Controlled Vocabularies

Tanya Z. Berardini; Suparna Mundodi; Leonore Reiser; Eva Huala; Margarita Garcia-Hernandez; Peifen Zhang; Lukas A. Mueller; Jungwoon Yoon; Aisling Doyle; Gabriel C. Lander; Nick Moseyko; Danny Yoo; Iris Xu; Brandon Zoeckler; Mary Montoya; Neil Miller; Dan C. Weems; Seung Y. Rhee

Controlled vocabularies are increasingly used by databases to describe genes and gene products because they facilitate identification of similar genes within an organism or among different organisms. One of The Arabidopsis Information Resources goals is to associate all Arabidopsis genes with terms developed by the Gene Ontology Consortium that describe the molecular function, biological process, and subcellular location of a gene product. We have also developed terms describing Arabidopsis anatomy and developmental stages and use these to annotate published gene expression data. As of March 2004, we used computational and manual annotation methods to make 85,666 annotations representing 26,624 unique loci. We focus on associating genes to controlled vocabulary terms based on experimental data from the literature and use The Arabidopsis Information Resource-developed PubSearch software to facilitate this process. Each annotation is tagged with a combination of evidence codes, evidence descriptions, and references that provide a robust means to assess data quality. Annotation of all Arabidopsis genes will allow quantitative comparisons between sets of genes derived from sources such as microarray experiments. The Arabidopsis annotation data will also facilitate annotation of newly sequenced plant genomes by using sequence similarity to transfer annotations to homologous genes. In addition, complete and up-to-date annotations will make unknown genes easy to identify and target for experimentation. Here, we describe the process of Arabidopsis functional annotation using a variety of data sources and illustrate several ways in which this information can be accessed and used to infer knowledge about Arabidopsis and other plant species.


Functional & Integrative Genomics | 2002

TAIR: a resource for integrated Arabidopsis data.

Margarita Garcia-Hernandez; Tanya Z. Berardini; Guanghong Chen; Debbie Crist; Aisling Doyle; Eva Huala; Emma M. Knee; Mark Lambrecht; Neil Miller; Lukas A. Mueller; Suparna Mundodi; Leonore Reiser; Seung Y. Rhee; Randy Scholl; Julie Tacklind; Dan C. Weems; Yihe Wu; Iris Xu; Daniel Yoo; Jungwon Yoon; Peifen Zhang

Abstract. The Arabidopsis Information Resource (TAIR; http://arabidopsis.org) provides an integrated view of genomic data for Arabidopsis thaliana. The information is obtained from a battery of sources, including the Arabidopsis user community, the literature, and the major genome centers. Currently TAIR provides information about genes, markers, polymorphisms, maps, sequences, clones, DNA and seed stocks, gene families and proteins. In addition, users can find Arabidopsis publications and information about Arabidopsis researchers. Our emphasis is now on incorporating functional annotations of genes and gene products, genome-wide expression, and biochemical pathway data. Among the tools developed at TAIR, the most notable is the Sequence Viewer, which displays gene annotation, clones, transcripts, markers and polymorphisms on the Arabidopsis genome, and allows zooming in to the nucleotide level. A tool recently released is AraCyc, which is designed for visualization of biochemical pathways. We are also developing tools to extract information from the literature in a systematic way, and building controlled vocabularies to describe biological concepts in collaboration with other database groups. A significant new feature is the integration of the ABRC database functions and stock ordering system, which allows users to place orders for seed and DNA stocks directly from the TAIR site.


Genesis | 2015

The arabidopsis information resource: Making and mining the “gold standard” annotated reference plant genome

Tanya Z. Berardini; Leonore Reiser; Donghui Li; Yarik Mezheritsky; Robert J. Muller; Emily Strait; Eva Huala

The Arabidopsis Information Resource (TAIR) is a continuously updated, online database of genetic and molecular biology data for the model plant Arabidopsis thaliana that provides a global research community with centralized access to data for over 30,000 Arabidopsis genes. TAIRs biocurators systematically extract, organize, and interconnect experimental data from the literature along with computational predictions, community submissions, and high throughput datasets to present a high quality and comprehensive picture of Arabidopsis gene function. TAIR provides tools for data visualization and analysis, and enables ordering of seed and DNA stocks, protein chips, and other experimental resources. TAIR actively engages with its users who contribute expertise and data that augments the work of the curatorial staff. TAIRs focus in an extensive and evolving ecosystem of online resources for plant biology is on the critically important role of extracting experimentally based research findings from the literature and making that information computationally accessible. In response to the loss of government grant funding, the TAIR team founded a nonprofit entity, Phoenix Bioinformatics, with the aim of developing sustainable funding models for biological databases, using TAIR as a test case. Phoenix has successfully transitioned TAIR to subscription‐based funding while still keeping its data relatively open and accessible. genesis 53:474–485, 2015.


Nucleic Acids Research | 2008

The Plant Ontology Database: a community resource for plant structure and developmental stages controlled vocabulary and annotations

Shulamit Avraham; Chih-Wei Tung; Katica Ilic; Pankaj Jaiswal; Elizabeth A. Kellogg; Susan R. McCouch; Anuradha Pujar; Leonore Reiser; Seung Y. Rhee; Martin M. Sachs; Mary L. Schaeffer; Lincoln Stein; Peter F. Stevens; Leszek Vincent; Felipe Zapata; Doreen Ware

The Plant Ontology Consortium (POC, http://www.plantontology.org) is a collaborative effort among model plant genome databases and plant researchers that aims to create, maintain and facilitate the use of a controlled vocabulary (ontology) for plants. The ontology allows users to ascribe attributes of plant structure (anatomy and morphology) and developmental stages to data types, such as genes and phenotypes, to provide a semantic framework to make meaningful cross-species and database comparisons. The POC builds upon groundbreaking work by the Gene Ontology Consortium (GOC) by adopting and extending the GOCs principles, existing software and database structure. Over the past year, POC has added hundreds of ontology terms to associate with thousands of genes and gene products from Arabidopsis, rice and maize, which are available through a newly updated web-based browser (http://www.plantontology.org/amigo/go.cgi) for viewing, searching and querying. The Consortium has also implemented new functionalities to facilitate the application of PO in genomic research and updated the website to keep the contents current. In this report, we present a brief description of resources available from the website, changes to the interfaces, data updates, community activities and future enhancement.


Comparative and Functional Genomics | 2005

Plant Ontology (PO) : a controlled vocabulary of plant structures and growth stages

Pankaj Jaiswal; Shulamit Avraham; Katica Ilic; Elizabeth A. Kellogg; Susan R. McCouch; Anuradha Pujar; Leonore Reiser; Seung Y. Rhee; Martin M. Sachs; Mary L. Schaeffer; Lincoln Stein; Peter F. Stevens; Leszek Vincent; Doreen Ware; Felipe Zapata

The Plant Ontology Consortium (POC) (www.plantontology.org) is a collaborative effort among several plant databases and experts in plant systematics, botany and genomics. A primary goal of the POC is to develop simple yet robust and extensible controlled vocabularies that accurately reflect the biology of plant structures and developmental stages. These provide a network of vocabularies linked by relationships (ontology) to facilitate queries that cut across datasets within a database or between multiple databases. The current version of the ontology integrates diverse vocabularies used to describe Arabidopsis, maize and rice (Oryza sp.) anatomy, morphology and growth stages. Using the ontology browser, over 3500 gene annotations from three species-specific databases, The Arabidopsis Information Resource (TAIR) for Arabidopsis, Gramene for rice and MaizeGDB for maize, can now be queried and retrieved.


Plant Physiology | 2006

The Plant Structure Ontology, a Unified Vocabulary of Anatomy and Morphology of a Flowering Plant

Katica Ilic; Elizabeth A. Kellogg; Pankaj Jaiswal; Felipe Zapata; Peter F. Stevens; Leszek Vincent; Shulamit Avraham; Leonore Reiser; Anuradha Pujar; Martin M. Sachs; Noah T. Whitman; Susan R. McCouch; Mary L. Schaeffer; Doreen Ware; Lincoln Stein; Seung Y. Rhee

Formal description of plant phenotypes and standardized annotation of gene expression and protein localization data require uniform terminology that accurately describes plant anatomy and morphology. This facilitates cross species comparative studies and quantitative comparison of phenotypes and expression patterns. A major drawback is variable terminology that is used to describe plant anatomy and morphology in publications and genomic databases for different species. The same terms are sometimes applied to different plant structures in different taxonomic groups. Conversely, similar structures are named by their species-specific terms. To address this problem, we created the Plant Structure Ontology (PSO), the first generic ontological representation of anatomy and morphology of a flowering plant. The PSO is intended for a broad plant research community, including bench scientists, curators in genomic databases, and bioinformaticians. The initial releases of the PSO integrated existing ontologies for Arabidopsis (Arabidopsis thaliana), maize (Zea mays), and rice (Oryza sativa); more recent versions of the ontology encompass terms relevant to Fabaceae, Solanaceae, additional cereal crops, and poplar (Populus spp.). Databases such as The Arabidopsis Information Resource, Nottingham Arabidopsis Stock Centre, Gramene, MaizeGDB, and SOL Genomics Network are using the PSO to describe expression patterns of genes and phenotypes of mutants and natural variants and are regularly contributing new annotations to the Plant Ontology database. The PSO is also used in specialized public databases, such as BRENDA, GENEVESTIGATOR, NASCArrays, and others. Over 10,000 gene annotations and phenotype descriptions from participating databases can be queried and retrieved using the Plant Ontology browser. The PSO, as well as contributed gene associations, can be obtained at www.plantontology.org.


Plant Physiology | 2006

Whole-Plant Growth Stage Ontology for Angiosperms and Its Application in Plant Biology

Anuradha Pujar; Pankaj Jaiswal; Elizabeth A. Kellogg; Katica Ilic; Leszek Vincent; Shulamit Avraham; Peter F. Stevens; Felipe Zapata; Leonore Reiser; Seung Y. Rhee; Martin M. Sachs; Mary L. Schaeffer; Lincoln Stein; Doreen Ware; Susan R. McCouch

Plant growth stages are identified as distinct morphological landmarks in a continuous developmental process. The terms describing these developmental stages record the morphological appearance of the plant at a specific point in its life cycle. The widely differing morphology of plant species consequently gave rise to heterogeneous vocabularies describing growth and development. Each species or family specific community developed distinct terminologies for describing whole-plant growth stages. This semantic heterogeneity made it impossible to use growth stage description contained within plant biology databases to make meaningful computational comparisons. The Plant Ontology Consortium (http://www.plantontology.org) was founded to develop standard ontologies describing plant anatomical as well as growth and developmental stages that can be used for annotation of gene expression patterns and phenotypes of all flowering plants. In this article, we describe the development of a generic whole-plant growth stage ontology that describes the spatiotemporal stages of plant growth as a set of landmark events that progress from germination to senescence. This ontology represents a synthesis and integration of terms and concepts from a variety of species-specific vocabularies previously used for describing phenotypes and genomic information. It provides a common platform for annotating gene function and gene expression in relation to the developmental trajectory of a plant described at the organismal level. As proof of concept the Plant Ontology Consortium used the plant ontology growth stage ontology to annotate genes and phenotypes in plants with initial emphasis on those represented in The Arabidopsis Information Resource, Gramene database, and MaizeGDB.


Current protocols in human genetics | 2005

Using The Arabidopsis Information Resource (TAIR) to Find Information About Arabidopsis Genes

Philippe Lamesch; Kate Dreher; David Swarbreck; Rajkumar Sasidharan; Leonore Reiser; Eva Huala

The Arabidopsis Information Resource (TAIR; http://arabidopsis.org) is a comprehensive Web resource of Arabidopsis biology for plant scientists. TAIR curates and integrates information about genes, proteins, gene function, gene expression, mutant phenotypes, biological materials such as clones and seed stocks, genetic markers, genetic and physical maps, biochemical pathways, genome organization, images of mutant plants, protein sub‐cellular localizations, publications, and the research community. The various data types are extensively interconnected and can be accessed through a variety of Web‐based search and display tools. This unit primarily focuses on some basic methods for searching, browsing, visualizing, and analyzing information about Arabidopsis genes and describes several new tools such as a new TAIR genome browser (GBrowse), and the TAIR synteny viewer (GBrowse_syn). We also describe how to use AraCyc for mining plant metabolic pathways. Curr. Protoc. Bioinform. 30:1.11.1‐1.11.51.


Plant Molecular Biology | 2002

Surviving in a sea of data: a survey of plant genome data resources and issues in building data management systems

Leonore Reiser; Lukas A. Mueller; Seung Y. Rhee

Exponential growth of data, largely from whole-genome analyses, has changed the way biologists think about and handle data. Optimal use of these data requires effective methods to analyze and manage these data sets. Computers, software and the World Wide Web are now integral components of biological discovery. Understanding how information is obtained, processed and annotated in public databases allows researchers to effectively organize, analyze and export their own data into these databases. In this review we focus largely on two areas related to management of genomic data. We cite examples of resources available in the public domain and describe some of the software for data management systems currently available for plant research. In addition, we discuss a few concepts of data management from the perspective of an individual or group that wishes to provide data to the public databases, to use the information in the public databases more efficiently, or to develop a database to manage large data sets internally or for public access. These concepts include data descriptions, exchange format, curation, attribution, and database implementation.

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Seung Y. Rhee

Carnegie Institution for Science

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Eva Huala

Carnegie Institution for Science

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Tanya Z. Berardini

Carnegie Institution for Science

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Margarita Garcia-Hernandez

Carnegie Institution for Science

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Donghui Li

Carnegie Institution for Science

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Doreen Ware

Cold Spring Harbor Laboratory

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Katica Ilic

Carnegie Institution for Science

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