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Featured researches published by Jennifer Spindel.


PLOS Genetics | 2015

Genomic selection and association mapping in rice (Oryza sativa): effect of trait genetic architecture, training population composition, marker number and statistical model on accuracy of rice genomic selection in elite, tropical rice breeding lines.

Jennifer Spindel; Hasina Begum; Deniz Akdemir; Parminder Virk; Bertrand C. Y. Collard; Edilberto D. Redoña; Gary N. Atlin; Jean-Luc Jannink; Susan R. McCouch

Genomic Selection (GS) is a new breeding method in which genome-wide markers are used to predict the breeding value of individuals in a breeding population. GS has been shown to improve breeding efficiency in dairy cattle and several crop plant species, and here we evaluate for the first time its efficacy for breeding inbred lines of rice. We performed a genome-wide association study (GWAS) in conjunction with five-fold GS cross-validation on a population of 363 elite breeding lines from the International Rice Research Institutes (IRRI) irrigated rice breeding program and herein report the GS results. The population was genotyped with 73,147 markers using genotyping-by-sequencing. The training population, statistical method used to build the GS model, number of markers, and trait were varied to determine their effect on prediction accuracy. For all three traits, genomic prediction models outperformed prediction based on pedigree records alone. Prediction accuracies ranged from 0.31 and 0.34 for grain yield and plant height to 0.63 for flowering time. Analyses using subsets of the full marker set suggest that using one marker every 0.2 cM is sufficient for genomic selection in this collection of rice breeding materials. RR-BLUP was the best performing statistical method for grain yield where no large effect QTL were detected by GWAS, while for flowering time, where a single very large effect QTL was detected, the non-GS multiple linear regression method outperformed GS models. For plant height, in which four mid-sized QTL were identified by GWAS, random forest produced the most consistently accurate GS models. Our results suggest that GS, informed by GWAS interpretations of genetic architecture and population structure, could become an effective tool for increasing the efficiency of rice breeding as the costs of genotyping continue to decline.


PLOS ONE | 2015

Genome-Wide Association Mapping for Yield and Other Agronomic Traits in an Elite Breeding Population of Tropical Rice (Oryza sativa)

Hasina Begum; Jennifer Spindel; Antonio G. Lalusin; Teresita H. Borromeo; Glenn B. Gregorio; Jose E. Hernandez; Parminder Virk; Bertrand C. Y. Collard; Susan R. McCouch

Genome-wide association mapping studies (GWAS) are frequently used to detect QTL in diverse collections of crop germplasm, based on historic recombination events and linkage disequilibrium across the genome. Generally, diversity panels genotyped with high density SNP panels are utilized in order to assay a wide range of alleles and haplotypes and to monitor recombination breakpoints across the genome. By contrast, GWAS have not generally been performed in breeding populations. In this study we performed association mapping for 19 agronomic traits including yield and yield components in a breeding population of elite irrigated tropical rice breeding lines so that the results would be more directly applicable to breeding than those from a diversity panel. The population was genotyped with 71,710 SNPs using genotyping-by-sequencing (GBS), and GWAS performed with the explicit goal of expediting selection in the breeding program. Using this breeding panel we identified 52 QTL for 11 agronomic traits, including large effect QTLs for flowering time and grain length/grain width/grain-length-breadth ratio. We also identified haplotypes that can be used to select plants in our population for short stature (plant height), early flowering time, and high yield, and thus demonstrate the utility of association mapping in breeding populations for informing breeding decisions. We conclude by exploring how the newly identified significant SNPs and insights into the genetic architecture of these quantitative traits can be leveraged to build genomic-assisted selection models.


Heredity | 2016

Genome-wide prediction models that incorporate de novo GWAS are a powerful new tool for tropical rice improvement.

Jennifer Spindel; Hasina Begum; Deniz Akdemir; Bertrand C. Y. Collard; Edilberto D. Redoña; Jean-Luc Jannink; Susan R. McCouch

To address the multiple challenges to food security posed by global climate change, population growth and rising incomes, plant breeders are developing new crop varieties that can enhance both agricultural productivity and environmental sustainability. Current breeding practices, however, are unable to keep pace with demand. Genomic selection (GS) is a new technique that helps accelerate the rate of genetic gain in breeding by using whole-genome data to predict the breeding value of offspring. Here, we describe a new GS model that combines RR-BLUP with markers fit as fixed effects selected from the results of a genome-wide-association study (GWAS) on the RR-BLUP training data. We term this model GS + de novo GWAS. In a breeding population of tropical rice, GS + de novo GWAS outperformed six other models for a variety of traits and in multiple environments. On the basis of these results, we propose an extended, two-part breeding design that can be used to efficiently integrate novel variation into elite breeding populations, thus expanding genetic diversity and enhancing the potential for sustainable productivity gains.


PLOS ONE | 2016

Genome-Wide Association Study for Traits Related to Plant and Grain Morphology, and Root Architecture in Temperate Rice Accessions

Filippo Biscarini; Paolo Cozzi; Laura Casella; Paolo Riccardi; Alessandra Vattari; Gabriele Orasen; Rosaria Perrini; Gianni Tacconi; Alessandro Tondelli; Chiara Biselli; Luigi Cattivelli; Jennifer Spindel; Susan R. McCouch; Pamela Abbruscato; Giampiero Valè; Pietro Piffanelli; Raffaella Greco

Background In this study we carried out a genome-wide association analysis for plant and grain morphology and root architecture in a unique panel of temperate rice accessions adapted to European pedo-climatic conditions. This is the first study to assess the association of selected phenotypic traits to specific genomic regions in the narrow genetic pool of temperate japonica. A set of 391 rice accessions were GBS-genotyped yielding—after data editing—57000 polymorphic and informative SNPS, among which 54% were in genic regions. Results In total, 42 significant genotype-phenotype associations were detected: 21 for plant morphology traits, 11 for grain quality traits, 10 for root architecture traits. The FDR of detected associations ranged from 3 · 10−7 to 0.92 (median: 0.25). In most cases, the significant detected associations co-localised with QTLs and candidate genes controlling the phenotypic variation of single or multiple traits. The most significant associations were those for flag leaf width on chromosome 4 (FDR = 3 · 10−7) and for plant height on chromosome 6 (FDR = 0.011). Conclusions We demonstrate the effectiveness and resolution of the developed platform for high-throughput phenotyping, genotyping and GWAS in detecting major QTLs for relevant traits in rice. We identified strong associations that may be used for selection in temperate irrigated rice breeding: e.g. associations for flag leaf width, plant height, root volume and length, grain length, grain width and their ratio. Our findings pave the way to successfully exploit the narrow genetic pool of European temperate rice and to pinpoint the most relevant genetic components contributing to the adaptability and high yield of this germplasm. The generated data could be of direct use in genomic-assisted breeding strategies.


New Phytologist | 2016

When more is better: how data sharing would accelerate genomic selection of crop plants

Jennifer Spindel; Susan R. McCouch

Genomic selection is proving an effective new strategy for increasing breeding efficiency in a wide variety of cereal species - the staple crops that feed the world. A preponderance of studies, reviewed here, has confirmed that the more correlated phenotypic and environmental data that are used to feed genomics-assisted breeding models, the better the prediction accuracies of the models and the more useful the breeding outcomes. We argue that based on these empirical results, new alliances to share data across genomic selection breeding programs are critical to the rapid development and deployment of new crop varieties.


The Plant Cell | 2015

The Tyrosine Aminomutase TAM1 Is Required for β-Tyrosine Biosynthesis in Rice

Jian Yan; Takako Aboshi; Masayoshi Teraishi; Susan R. Strickler; Jennifer Spindel; Chih-Wei Tung; Ryo Takata; Fuka Matsumoto; Yoshihiro Maesaka; Susan R. McCouch; Yutaka Okumoto; Naoki Mori; Georg Jander

A targeted search for jasmonate-induced metabolites in rice identified an isomer of the common amino acid (S)-α-tyrosine, (R)-β-tyrosine, which may contribute to the allelopathic potential of rice. Non-protein amino acids, often isomers of the standard 20 protein amino acids, have defense-related functions in many plant species. A targeted search for jasmonate-induced metabolites in cultivated rice (Oryza sativa) identified (R)-β-tyrosine, an isomer of the common amino acid (S)-α-tyrosine in the seeds, leaves, roots, and root exudates of the Nipponbare cultivar. Assays with 119 diverse cultivars showed a distinct presence/absence polymorphism, with β-tyrosine being most prevalent in temperate japonica cultivars. Genetic mapping identified a candidate gene on chromosome 12, which was confirmed to encode a tyrosine aminomutase (TAM1) by transient expression in Nicotiana benthamiana and in vitro enzyme assays. A point mutation in TAM1 eliminated β-tyrosine production in Nipponbare. Rice cultivars that do not produce β-tyrosine have a chromosome 12 deletion that encompasses TAM1. Although β-tyrosine accumulation was induced by the plant defense signaling molecule jasmonic acid, bioassays with hemipteran and lepidopteran herbivores showed no negative effects at physiologically relevant β-tyrosine concentrations. In contrast, root growth of Arabidopsis thaliana and other tested dicot plants was inhibited by concentrations as low as 1 μM. As β-tyrosine is exuded into hydroponic medium at higher concentrations, it may contribute to the allelopathic potential of rice.


Theoretical and Applied Genetics | 2013

Bridging the genotyping gap: using genotyping by sequencing (GBS) to add high-density SNP markers and new value to traditional bi-parental mapping and breeding populations

Jennifer Spindel; Mark G. Wright; Charles Chen; Joshua N. Cobb; Joseph Gage; Sandra E. Harrington; Mathias Lorieux; Nourollah Ahmadi; Susan R. McCouch


Tree Genetics & Genomes | 2016

A genetic linkage map of coffee (Coffea arabica L.) and QTL for yield, plant height, and bean size

Maria Del Pilar Moncada; Eduardo Tovar; Juan Carlos Montoya; Alexandra González; Jennifer Spindel; Susan R. McCouch


meeting of the association for computational linguistics | 2012

Hedge Detection as a Lens on Framing in the GMO Debates: A Position Paper

Eunsol Choi; Chenhao Tan; Lillian Lee; Cristian Danescu-Niculescu-Mizil; Jennifer Spindel


BMC Genomics | 2016

Whole-genome characterization in pedigreed non-human primates using genotyping-by-sequencing (GBS) and imputation

Benjamin N. Bimber; Michael J. Raboin; John Letaw; Kimberly A. Nevonen; Jennifer Spindel; Susan R. McCouch; Rita Cervera-Juanes; Eliot R. Spindel; Lucia Carbone; Betsy Ferguson; Amanda Vinson

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Bertrand C. Y. Collard

International Rice Research Institute

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Hasina Begum

International Rice Research Institute

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Parminder Virk

International Center for Tropical Agriculture

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Edilberto D. Redoña

International Rice Research Institute

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Benjamin N. Bimber

University of Wisconsin-Madison

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Betsy Ferguson

Oregon National Primate Research Center

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