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Dive into the research topics where Mary L. Schaeffer is active.

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Featured researches published by Mary L. Schaeffer.


PLOS Genetics | 2005

Physical and genetic structure of the maize genome reflects its complex evolutionary history.

Fusheng Wei; Edward H. Coe; William Nelson; Arvind K. Bharti; Fred Engler; Ed Butler; HyeRan Kim; Jose Luis Goicoechea; Mingsheng Chen; Seunghee Lee; Galina Fuks; Hector Sanchez-Villeda; Steven A Schroeder; Zhiwei Fang; Michael S. McMullen; Georgia L. Davis; John E. Bowers; Andrew H. Paterson; Mary L. Schaeffer; Jack M. Gardiner; Karen C. Cone; Joachim Messing; Carol Soderlund; Rod A. Wing

Maize (Zea mays L.) is one of the most important cereal crops and a model for the study of genetics, evolution, and domestication. To better understand maize genome organization and to build a framework for genome sequencing, we constructed a sequence-ready fingerprinted contig-based physical map that covers 93.5% of the genome, of which 86.1% is aligned to the genetic map. The fingerprinted contig map contains 25,908 genic markers that enabled us to align nearly 73% of the anchored maize genome to the rice genome. The distribution pattern of expressed sequence tags correlates to that of recombination. In collinear regions, 1 kb in rice corresponds to an average of 3.2 kb in maize, yet maize has a 6-fold genome size expansion. This can be explained by the fact that most rice regions correspond to two regions in maize as a result of its recent polyploid origin. Inversions account for the majority of chromosome structural variations during subsequent maize diploidization. We also find clear evidence of ancient genome duplication predating the divergence of the progenitors of maize and rice. Reconstructing the paleoethnobotany of the maize genome indicates that the progenitors of modern maize contained ten chromosomes.


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.


PLOS Genetics | 2009

The physical and genetic framework of the maize b73 genome

Fusheng Wei; Jianwei Zhang; Shiguo Zhou; Ruifeng He; Mary L. Schaeffer; Kristi Collura; David Kudrna; Ben P. Faga; Marina Wissotski; Wolfgang Golser; Susan Rock; Tina Graves; Robert S. Fulton; Edward H. Coe; David C. Schwartz; Doreen Ware; Sandra W. Clifton; Richard Wilson; Rod A. Wing

Maize is a major cereal crop and an important model system for basic biological research. Knowledge gained from maize research can also be used to genetically improve its grass relatives such as sorghum, wheat, and rice. The primary objective of the Maize Genome Sequencing Consortium (MGSC) was to generate a reference genome sequence that was integrated with both the physical and genetic maps. Using a previously published integrated genetic and physical map, combined with in-coming maize genomic sequence, new sequence-based genetic markers, and an optical map, we dynamically picked a minimum tiling path (MTP) of 16,910 bacterial artificial chromosome (BAC) and fosmid clones that were used by the MGSC to sequence the maize genome. The final MTP resulted in a significantly improved physical map that reduced the number of contigs from 721 to 435, incorporated a total of 8,315 mapped markers, and ordered and oriented the majority of FPC contigs. The new integrated physical and genetic map covered 2,120 Mb (93%) of the 2,300-Mb genome, of which 405 contigs were anchored to the genetic map, totaling 2,103.4 Mb (99.2% of the 2,120 Mb physical map). More importantly, 336 contigs, comprising 94.0% of the physical map (∼1,993 Mb), were ordered and oriented. Finally we used all available physical, sequence, genetic, and optical data to generate a golden path (AGP) of chromosome-based pseudomolecules, herein referred to as the B73 Reference Genome Sequence version 1 (B73 RefGen_v1).


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 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.


Bioinformatics | 2010

The Locus Lookup tool at MaizeGDB

Carson M. Andorf; Carolyn J. Lawrence; Lisa C. Harper; Mary L. Schaeffer; Darwin A. Campbell; Taner Z. Sen

SUMMARY Methods to automatically integrate sequence information with physical and genetic maps are scarce. The Locus Lookup tool enables researchers to define windows of genomic sequence likely to contain loci of interest where only genetic or physical mapping associations are reported. Using the Locus Lookup tool, researchers will be able to locate specific genes more efficiently that will ultimately help them develop a better maize plant. With the availability of the well-documented source code, the tool can be easily adapted to other biological systems. AVAILABILITY The Locus Lookup tool is available on the web at http://maizegdb.org/cgi-bin/locus_lookup.cgi. It is implemented in PHP, Oracle and Apache, with all major browsers supported. Source code is freely available for download at http://ftp.maizegdb.org/open_source/locus_lookup/.


Database | 2011

MaizeGDB: curation and outreach go hand-in-hand

Mary L. Schaeffer; Lisa C. Harper; Jack M. Gardiner; Carson M. Andorf; Darwin A. Campbell; Ethalinda K. S. Cannon; Taner Z. Sen; Carolyn J. Lawrence

First released in 1991 with the name MaizeDB, the Maize Genetics and Genomics Database, now MaizeGDB, celebrates its 20th anniversary this year. MaizeGDB has transitioned from a focus on comprehensive curation of the literature, genetic maps and stocks to a paradigm that accommodates the recent release of a reference maize genome sequence, multiple diverse maize genomes and sequence-based gene expression data sets. The MaizeGDB Team is relatively small, and relies heavily on the research community to provide data, nomenclature standards and most importantly, to recommend future directions, priorities and strategies. Key aspects of MaizeGDBs intimate interaction with the community are the co-location of curators with maize research groups in multiple locations across the USA as well as coordination with MaizeGDB’s close partner, the Maize Genetics Cooperation—Stock Center. In this report, we describe how the MaizeGDB Team currently interacts with the maize research community and our plan for future interactions that will support updates to the functional and structural annotation of the B73 reference genome.


The Plant Genome | 2013

Maize Metabolic Network Construction and Transcriptome Analysis

Marcela K. Monaco; Taner Z. Sen; Palitha Dharmawardhana; Liya Ren; Mary L. Schaeffer; Sushma Naithani; Vindhya Amarasinghe; James Thomason; Lisa C. Harper; Jack M. Gardiner; Ethalinda K. S. Cannon; Carolyn J. Lawrence; Doreen Ware; Pankaj Jaiswal

A framework for understanding the synthesis and catalysis of metabolites and other biochemicals by proteins is crucial for unraveling the physiology of cells. To create such a framework for Zea mays L. subsp. mays (maize), we developed MaizeCyc, a metabolic network of enzyme catalysts, proteins, carbohydrates, lipids, amino acids, secondary plant products, and other metabolites by annotating the genes identified in the maize reference genome sequenced from the B73 variety. MaizeCyc version 2.0.2 is a collection of 391 maize pathways involving 8889 enzyme mapped to 2110 reactions and 1468 metabolites. We used MaizeCyc to describe the development and function of maize organs including leaf, root, anther, embryo, and endosperm by exploring the recently published microarray‐based maize gene expression atlas. We found that 1062 differentially expressed metabolic genes mapped to 524 unique enzymatic reactions associated with 310 pathways. The MaizeCyc pathway database was created by running a library of evidences collected from the maize genome annotation, gene‐based phylogeny trees, and comparison to known genes and pathways from rice (Oryza sativa L.) and Arabidopsis thaliana (L.) Heynh. against the PathoLogic module of Pathway Tools. The network and the database that were also developed as a community resource are freely accessible online at http://maizecyc.maizegdb.org to facilitate analysis and promote studies on metabolic genes in maize.


Database | 2013

An overview of the BioCreative 2012 Workshop Track III: interactive text mining task.

Cecilia N. Arighi; Ben Carterette; K. Bretonnel Cohen; Martin Krallinger; W. John Wilbur; Petra Fey; Robert Dodson; Laurel Cooper; Ceri E. Van Slyke; Wasila M. Dahdul; Paula M. Mabee; Donghui Li; Bethany Harris; Marc Gillespie; Silvia Jimenez; Phoebe M. Roberts; Lisa Matthews; Kevin G. Becker; Harold J. Drabkin; Susan M. Bello; Luana Licata; Andrew Chatr-aryamontri; Mary L. Schaeffer; Julie Park; Melissa Haendel; Kimberly Van Auken; Yuling Li; Juancarlos Chan; Hans-Michael Müller; Hong Cui

In many databases, biocuration primarily involves literature curation, which usually involves retrieving relevant articles, extracting information that will translate into annotations and identifying new incoming literature. As the volume of biological literature increases, the use of text mining to assist in biocuration becomes increasingly relevant. A number of groups have developed tools for text mining from a computer science/linguistics perspective, and there are many initiatives to curate some aspect of biology from the literature. Some biocuration efforts already make use of a text mining tool, but there have not been many broad-based systematic efforts to study which aspects of a text mining tool contribute to its usefulness for a curation task. Here, we report on an effort to bring together text mining tool developers and database biocurators to test the utility and usability of tools. Six text mining systems presenting diverse biocuration tasks participated in a formal evaluation, and appropriate biocurators were recruited for testing. The performance results from this evaluation indicate that some of the systems were able to improve efficiency of curation by speeding up the curation task significantly (∼1.7- to 2.5-fold) over manual curation. In addition, some of the systems were able to improve annotation accuracy when compared with the performance on the manually curated set. In terms of inter-annotator agreement, the factors that contributed to significant differences for some of the systems included the expertise of the biocurator on the given curation task, the inherent difficulty of the curation and attention to annotation guidelines. After the task, annotators were asked to complete a survey to help identify strengths and weaknesses of the various systems. The analysis of this survey highlights how important task completion is to the biocurators’ overall experience of a system, regardless of the system’s high score on design, learnability and usability. In addition, strategies to refine the annotation guidelines and systems documentation, to adapt the tools to the needs and query types the end user might have and to evaluate performance in terms of efficiency, user interface, result export and traditional evaluation metrics have been analyzed during this task. This analysis will help to plan for a more intense study in BioCreative IV.

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Lisa C. Harper

United States Department of Agriculture

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Doreen Ware

Cold Spring Harbor Laboratory

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