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Nucleic Acids Research | 2014

Gramene 2013: comparative plant genomics resources

Marcela K. Monaco; Joshua C. Stein; Sushma Naithani; Sharon Wei; Palitha Dharmawardhana; Sunita Kumari; Vindhya Amarasinghe; Ken Youens-Clark; James Thomason; Justin Preece; Shiran Pasternak; Andrew Olson; Yinping Jiao; Zhenyuan Lu; Daniel M. Bolser; Arnaud Kerhornou; Daniel M. Staines; Brandon Walts; Guanming Wu; Peter D'Eustachio; Robin Haw; David Croft; Paul J. Kersey; Lincoln Stein; Pankaj Jaiswal; Doreen Ware

Gramene (http://www.gramene.org) is a curated online resource for comparative functional genomics in crops and model plant species, currently hosting 27 fully and 10 partially sequenced reference genomes in its build number 38. Its strength derives from the application of a phylogenetic framework for genome comparison and the use of ontologies to integrate structural and functional annotation data. Whole-genome alignments complemented by phylogenetic gene family trees help infer syntenic and orthologous relationships. Genetic variation data, sequences and genome mappings available for 10 species, including Arabidopsis, rice and maize, help infer putative variant effects on genes and transcripts. The pathways section also hosts 10 species-specific metabolic pathways databases developed in-house or by our collaborators using Pathway Tools software, which facilitates searches for pathway, reaction and metabolite annotations, and allows analyses of user-defined expression datasets. Recently, we released a Plant Reactome portal featuring 133 curated rice pathways. This portal will be expanded for Arabidopsis, maize and other plant species. We continue to provide genetic and QTL maps and marker datasets developed by crop researchers. The project provides a unique community platform to support scientific research in plant genomics including studies in evolution, genetics, plant breeding, molecular biology, biochemistry and systems biology.


Plant and Cell Physiology | 2013

The Plant Ontology as a Tool for Comparative Plant Anatomy and Genomic Analyses

Laurel Cooper; Ramona L. Walls; Justin Elser; Maria A. Gandolfo; Dennis W. Stevenson; Barry Smith; Justin Preece; Balaji Athreya; Christopher J. Mungall; Stefan A. Rensing; Manuel Hiss; Daniel Lang; Ralf Reski; Tanya Z. Berardini; Donghui Li; Eva Huala; Mary L. Schaeffer; Naama Menda; Elizabeth Arnaud; Rosemary Shrestha; Yukiko Yamazaki; Pankaj Jaiswal

The Plant Ontology (PO; http://www.plantontology.org/) is a publicly available, collaborative effort to develop and maintain a controlled, structured vocabulary (‘ontology’) of terms to describe plant anatomy, morphology and the stages of plant development. The goals of the PO are to link (annotate) gene expression and phenotype data to plant structures and stages of plant development, using the data model adopted by the Gene Ontology. From its original design covering only rice, maize and Arabidopsis, the scope of the PO has been expanded to include all green plants. The PO was the first multispecies anatomy ontology developed for the annotation of genes and phenotypes. Also, to our knowledge, it was one of the first biological ontologies that provides translations (via synonyms) in non-English languages such as Japanese and Spanish. As of Release #18 (July 2012), there are about 2.2 million annotations linking PO terms to >110,000 unique data objects representing genes or gene models, proteins, RNAs, germplasm and quantitative trait loci (QTLs) from 22 plant species. In this paper, we focus on the plant anatomical entity branch of the PO, describing the organizing principles, resources available to users and examples of how the PO is integrated into other plant genomics databases and web portals. We also provide two examples of comparative analyses, demonstrating how the ontology structure and PO-annotated data can be used to discover the patterns of expression of the LEAFY (LFY) and terpene synthase (TPS) gene homologs.


Nucleic Acids Research | 2016

Gramene 2016: comparative plant genomics and pathway resources

Marcela K. Tello-Ruiz; Joshua C. Stein; Sharon Wei; Justin Preece; Andrew Olson; Sushma Naithani; Vindhya Amarasinghe; Palitha Dharmawardhana; Yinping Jiao; Joseph Mulvaney; Sunita Kumari; Kapeel Chougule; Justin Elser; Bo Wang; James Thomason; Daniel M. Bolser; Arnaud Kerhornou; Brandon Walts; Nuno A. Fonseca; Laura Huerta; Maria Keays; Y. Amy Tang; Helen Parkinson; Antonio Fabregat; Sheldon J. McKay; Joel Weiser; Peter D'Eustachio; Lincoln Stein; Robert Petryszak; Paul J. Kersey

Gramene (http://www.gramene.org) is an online resource for comparative functional genomics in crops and model plant species. Its two main frameworks are genomes (collaboration with Ensembl Plants) and pathways (The Plant Reactome and archival BioCyc databases). Since our last NAR update, the database website adopted a new Drupal management platform. The genomes section features 39 fully assembled reference genomes that are integrated using ontology-based annotation and comparative analyses, and accessed through both visual and programmatic interfaces. Additional community data, such as genetic variation, expression and methylation, are also mapped for a subset of genomes. The Plant Reactome pathway portal (http://plantreactome.gramene.org) provides a reference resource for analyzing plant metabolic and regulatory pathways. In addition to ∼200 curated rice reference pathways, the portal hosts gene homology-based pathway projections for 33 plant species. Both the genome and pathway browsers interface with the EMBL-EBIs Expression Atlas to enable the projection of baseline and differential expression data from curated expression studies in plants. Gramenes archive website (http://archive.gramene.org) continues to provide previously reported resources on comparative maps, markers and QTL. To further aid our users, we have also introduced a live monthly educational webinar series and a Gramene YouTube channel carrying video tutorials.


American Journal of Botany | 2012

Ontologies as integrative tools for plant science

Ramona L. Walls; Balaji Athreya; Laurel Cooper; Justin Elser; Maria A. Gandolfo; Pankaj Jaiswal; Christopher J. Mungall; Justin Preece; Stefan A. Rensing; Barry Smith; Dennis W. Stevenson

PREMISE OF THE STUDY Bio-ontologies are essential tools for accessing and analyzing the rapidly growing pool of plant genomic and phenomic data. Ontologies provide structured vocabularies to support consistent aggregation of data and a semantic framework for automated analyses and reasoning. They are a key component of the semantic web. METHODS This paper provides background on what bio-ontologies are, why they are relevant to botany, and the principles of ontology development. It includes an overview of ontologies and related resources that are relevant to plant science, with a detailed description of the Plant Ontology (PO). We discuss the challenges of building an ontology that covers all green plants (Viridiplantae). KEY RESULTS Ontologies can advance plant science in four keys areas: (1) comparative genetics, genomics, phenomics, and development; (2) taxonomy and systematics; (3) semantic applications; and (4) education. CONCLUSIONS Bio-ontologies offer a flexible framework for comparative plant biology, based on common botanical understanding. As genomic and phenomic data become available for more species, we anticipate that the annotation of data with ontology terms will become less centralized, while at the same time, the need for cross-species queries will become more common, causing more researchers in plant science to turn to ontologies.


PLOS ONE | 2014

De Novo Transcriptome Assembly and Analyses of Gene Expression during Photomorphogenesis in Diploid Wheat Triticum monococcum

Samuel E. Fox; Matthew Geniza; Mamatha Hanumappa; Sushma Naithani; Christopher M. Sullivan; Justin Preece; Vijay K. Tiwari; Justin Elser; Jeffrey M. Leonard; Abigail Sage; Cathy Gresham; Arnaud Kerhornou; Dan Bolser; Fiona M. McCarthy; Paul J. Kersey; Gerard R. Lazo; Pankaj Jaiswal

Background Triticum monococcum (2n) is a close ancestor of T. urartu, the A-genome progenitor of cultivated hexaploid wheat, and is therefore a useful model for the study of components regulating photomorphogenesis in diploid wheat. In order to develop genetic and genomic resources for such a study, we constructed genome-wide transcriptomes of two Triticum monococcum subspecies, the wild winter wheat T. monococcum ssp. aegilopoides (accession G3116) and the domesticated spring wheat T. monococcum ssp. monococcum (accession DV92) by generating de novo assemblies of RNA-Seq data derived from both etiolated and green seedlings. Principal Findings The de novo transcriptome assemblies of DV92 and G3116 represent 120,911 and 117,969 transcripts, respectively. We successfully mapped ∼90% of these transcripts from each accession to barley and ∼95% of the transcripts to T. urartu genomes. However, only ∼77% transcripts mapped to the annotated barley genes and ∼85% transcripts mapped to the annotated T. urartu genes. Differential gene expression analyses revealed 22% more light up-regulated and 35% more light down-regulated transcripts in the G3116 transcriptome compared to DV92. The DV92 and G3116 mRNA sequence reads aligned against the reference barley genome led to the identification of ∼500,000 single nucleotide polymorphism (SNP) and ∼22,000 simple sequence repeat (SSR) sites. Conclusions De novo transcriptome assemblies of two accessions of the diploid wheat T. monococcum provide new empirical transcriptome references for improving Triticeae genome annotations, and insights into transcriptional programming during photomorphogenesis. The SNP and SSR sites identified in our analysis provide additional resources for the development of molecular markers.


Applications in Plant Sciences | 2013

Sequencing and De Novo Transcriptome Assembly of Brachypodium sylvaticum (Poaceae)

Samuel E. Fox; Justin Preece; Jeffrey A. Kimbrel; Gina L. Marchini; Abigail Sage; Ken Youens-Clark; Mitchell B. Cruzan; Pankaj Jaiswal

Premise of the study: We report the de novo assembly and characterization of the transcriptomes of Brachypodium sylvaticum (slender false-brome) accessions from native populations of Spain and Greece, and an invasive population west of Corvallis, Oregon, USA. Methods and Results: More than 350 million sequence reads from the mRNA libraries prepared from three B. sylvaticum genotypes were assembled into 120,091 (Corvallis), 104,950 (Spain), and 177,682 (Greece) transcript contigs. In comparison with the B. distachyon Bd21 reference genome and GenBank protein sequences, we estimate >90% exome coverage for B. sylvaticum. The transcripts were assigned Gene Ontology and InterPro annotations. Brachypodium sylvaticum sequence reads aligned against the Bd21 genome revealed 394,654 single-nucleotide polymorphisms (SNPs) and >20,000 simple sequence repeat (SSR) DNA sites. Conclusions: To our knowledge, this is the first report of transcriptome sequencing of invasive plant species with a closely related sequenced reference genome. The sequences and identified SNP variant and SSR sites will provide tools for developing novel genetic markers for use in genotyping and characterization of invasive behavior of B. sylvaticum.


Database | 2011

QlicRice: a web interface for abiotic stress responsive QTL and loci interaction channels in rice

Shuchi Smita; Sangram K. Lenka; Amit Katiyar; Pankaj Jaiswal; Justin Preece; Kailash C. Bansal

The QlicRice database is designed to host publicly accessible, abiotic stress responsive quantitative trait loci (QTLs) in rice (Oryza sativa) and their corresponding sequenced gene loci. It provides a platform for the data mining of abiotic stress responsive QTLs, as well as browsing and annotating associated traits, their location on a sequenced genome, mapped expressed sequence tags (ESTs) and tissue and growth stage-specific expressions on the whole genome. Information on QTLs related to abiotic stresses and their corresponding loci from a genomic perspective has not yet been integrated on an accessible, user-friendly platform. QlicRice offers client-responsive architecture to retrieve meaningful biological information—integrated and named ‘Qlic Search’—embedded in a query phrase autocomplete feature, coupled with multiple search options that include trait names, genes and QTL IDs. A comprehensive physical and genetic map and vital statistics have been provided in a graphical manner for deciphering the position of QTLs on different chromosomes. A convenient and intuitive user interface have been designed to help users retrieve associations to agronomically important QTLs on abiotic stress response in rice. Database URL: http://nabg.iasri.res.in:8080/qlic-rice/.


Nucleic Acids Research | 2018

Expression Atlas: gene and protein expression across multiple studies and organisms

Irene Papatheodorou; Nuno A. Fonseca; Maria Keays; Y. Amy Tang; Elisabet Barrera; Wojciech Bażant; Melissa Burke; Anja Füllgrabe; Alfonso Munoz-Pomer Fuentes; Nancy George; Laura Huerta; Satu Koskinen; Suhaib Mohammed; Matthew Geniza; Justin Preece; Pankaj Jaiswal; Andrew F. Jarnuczak; Wolfgang Huber; Oliver Stegle; Juan Antonio Vizcaíno; Alvis Brazma; Robert Petryszak

Abstract Expression Atlas (http://www.ebi.ac.uk/gxa) is an added value database that provides information about gene and protein expression in different species and contexts, such as tissue, developmental stage, disease or cell type. The available public and controlled access data sets from different sources are curated and re-analysed using standardized, open source pipelines and made available for queries, download and visualization. As of August 2017, Expression Atlas holds data from 3,126 studies across 33 different species, including 731 from plants. Data from large-scale RNA sequencing studies including Blueprint, PCAWG, ENCODE, GTEx and HipSci can be visualized next to each other. In Expression Atlas, users can query genes or gene-sets of interest and explore their expression across or within species, tissues, developmental stages in a constitutive or differential context, representing the effects of diseases, conditions or experimental interventions. All processed data matrices are available for direct download in tab-delimited format or as R-data. In addition to the web interface, data sets can now be searched and downloaded through the Expression Atlas R package. Novel features and visualizations include the on-the-fly analysis of gene set overlaps and the option to view gene co-expression in experiments investigating constitutive gene expression across tissues or other conditions.


Nucleic Acids Research | 2017

Plant Reactome: a resource for plant pathways and comparative analysis

Sushma Naithani; Justin Preece; Peter D'Eustachio; Parul Gupta; Vindhya Amarasinghe; Palitha Dharmawardhana; Guanming Wu; Antonio Fabregat; Justin Elser; Joel Weiser; Maria Keays; Alfonso Munoz-Pomer Fuentes; Robert Petryszak; Lincoln Stein; Doreen Ware; Pankaj Jaiswal

Plant Reactome (http://plantreactome.gramene.org/) is a free, open-source, curated plant pathway database portal, provided as part of the Gramene project. The database provides intuitive bioinformatics tools for the visualization, analysis and interpretation of pathway knowledge to support genome annotation, genome analysis, modeling, systems biology, basic research and education. Plant Reactome employs the structural framework of a plant cell to show metabolic, transport, genetic, developmental and signaling pathways. We manually curate molecular details of pathways in these domains for reference species Oryza sativa (rice) supported by published literature and annotation of well-characterized genes. Two hundred twenty-two rice pathways, 1025 reactions associated with 1173 proteins, 907 small molecules and 256 literature references have been curated to date. These reference annotations were used to project pathways for 62 model, crop and evolutionarily significant plant species based on gene homology. Database users can search and browse various components of the database, visualize curated baseline expression of pathway-associated genes provided by the Expression Atlas and upload and analyze their Omics datasets. The database also offers data access via Application Programming Interfaces (APIs) and in various standardized pathway formats, such as SBML and BioPAX.


Journal of Biomedical Semantics | 2014

AISO: Annotation of Image Segments with Ontologies

Nikhil Tej Lingutla; Justin Preece; Sinisa Todorovic; Laurel Cooper; Laura Moore; Pankaj Jaiswal

BackgroundLarge quantities of digital images are now generated for biological collections, including those developed in projects premised on the high-throughput screening of genome-phenome experiments. These images often carry annotations on taxonomy and observable features, such as anatomical structures and phenotype variations often recorded in response to the environmental factors under which the organisms were sampled. At present, most of these annotations are described in free text, may involve limited use of non-standard vocabularies, and rarely specify precise coordinates of features on the image plane such that a computer vision algorithm could identify, extract and annotate them. Therefore, researchers and curators need a tool that can identify and demarcate features in an image plane and allow their annotation with semantically contextual ontology terms. Such a tool would generate data useful for inter and intra-specific comparison and encourage the integration of curation standards. In the future, quality annotated image segments may provide training data sets for developing machine learning applications for automated image annotation.ResultsWe developed a novel image segmentation and annotation software application, “Annotation of Image Segments with Ontologies” (AISO). The tool enables researchers and curators to delineate portions of an image into multiple highlighted segments and annotate them with an ontology-based controlled vocabulary. AISO is a freely available Java-based desktop application and runs on multiple platforms. It can be downloaded at http://www.plantontology.org/software/AISO.ConclusionsAISO enables curators and researchers to annotate digital images with ontology terms in a manner which ensures the future computational value of the annotated images. We foresee uses for such data-encoded image annotations in biological data mining, machine learning, predictive annotation, semantic inference, and comparative analyses.

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Justin Elser

Oregon State University

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Maria Keays

European Bioinformatics Institute

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Andrew Olson

Cold Spring Harbor Laboratory

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