Literature DB >> 27903632

Genomic Prediction with Pedigree and Genotype × Environment Interaction in Spring Wheat Grown in South and West Asia, North Africa, and Mexico.

Sivakumar Sukumaran1, Jose Crossa2, Diego Jarquin3, Marta Lopes4, Matthew P Reynolds1.   

Abstract

Developing genomic selection (GS) models is an important step in applying GS to accelerate the rate of genetic gain in grain yield in plant breeding. In this study, seven genomic prediction models under two cross-validation (CV) scenarios were tested on 287 advanced elite spring wheat lines phenotyped for grain yield (GY), thousand-grain weight (GW), grain number (GN), and thermal time for flowering (TTF) in 18 international environments (year-location combinations) in major wheat-producing countries in 2010 and 2011. Prediction models with genomic and pedigree information included main effects and interaction with environments. Two random CV schemes were applied to predict a subset of lines that were not observed in any of the 18 environments (CV1), and a subset of lines that were not observed in a set of the environments, but were observed in other environments (CV2). Genomic prediction models, including genotype × environment (G×E) interaction, had the highest average prediction ability under the CV1 scenario for GY (0.31), GN (0.32), GW (0.45), and TTF (0.27). For CV2, the average prediction ability of the model including the interaction terms was generally high for GY (0.38), GN (0.43), GW (0.63), and TTF (0.53). Wheat lines in site-year combinations in Mexico and India had relatively high prediction ability for GY and GW. Results indicated that prediction ability of lines not observed in certain environments could be relatively high for genomic selection when predicting G×E interaction in multi-environment trials.
Copyright © 2017 Sukumaran et al.

Entities:  

Keywords:  GBLUP; GenPred; Shared Data Resources; WAMI; genomic prediction; genomic selection; pedigree-based prediction; spring wheat

Mesh:

Year:  2017        PMID: 27903632      PMCID: PMC5295595          DOI: 10.1534/g3.116.036251

Source DB:  PubMed          Journal:  G3 (Bethesda)        ISSN: 2160-1836            Impact factor:   3.154


  22 in total

Review 1.  Breeding schemes for the implementation of genomic selection in wheat (Triticum spp.).

Authors:  Filippo M Bassi; Alison R Bentley; Gilles Charmet; Rodomiro Ortiz; Jose Crossa
Journal:  Plant Sci       Date:  2015-09-06       Impact factor: 4.729

2.  Efficient methods to compute genomic predictions.

Authors:  P M VanRaden
Journal:  J Dairy Sci       Date:  2008-11       Impact factor: 4.034

Review 3.  Genome-enabled prediction using the BLR (Bayesian Linear Regression) R-package.

Authors:  Gustavo de Los Campos; Paulino Pérez; Ana I Vazquez; José Crossa
Journal:  Methods Mol Biol       Date:  2013

Review 4.  Physiological breeding.

Authors:  Matthew Reynolds; Peter Langridge
Journal:  Curr Opin Plant Biol       Date:  2016-05-07       Impact factor: 7.834

5.  Prediction of genetic values of quantitative traits in plant breeding using pedigree and molecular markers.

Authors:  José Crossa; Gustavo de Los Campos; Paulino Pérez; Daniel Gianola; Juan Burgueño; José Luis Araus; Dan Makumbi; Ravi P Singh; Susanne Dreisigacker; Jianbing Yan; Vivi Arief; Marianne Banziger; Hans-Joachim Braun
Journal:  Genetics       Date:  2010-09-02       Impact factor: 4.562

6.  Genomic prediction for grain zinc and iron concentrations in spring wheat.

Authors:  Govindan Velu; Jose Crossa; Ravi P Singh; Yuanfeng Hao; Susanne Dreisigacker; Paulino Perez-Rodriguez; Arun K Joshi; Ravish Chatrath; Vikas Gupta; Arun Balasubramaniam; Chhavi Tiwari; Vinod K Mishra; Virinder Singh Sohu; Gurvinder Singh Mavi
Journal:  Theor Appl Genet       Date:  2016-05-11       Impact factor: 5.699

7.  Genome-wide association study for grain yield and related traits in an elite spring wheat population grown in temperate irrigated environments.

Authors:  Sivakumar Sukumaran; Susanne Dreisigacker; Marta Lopes; Perla Chavez; Matthew P Reynolds
Journal:  Theor Appl Genet       Date:  2014-12-10       Impact factor: 5.699

Review 8.  Raising yield potential in wheat.

Authors:  Matthew Reynolds; M John Foulkes; Gustavo A Slafer; Peter Berry; Martin A J Parry; John W Snape; William J Angus
Journal:  J Exp Bot       Date:  2009-04-10       Impact factor: 6.992

Review 9.  Achieving yield gains in wheat.

Authors:  Matthew Reynolds; John Foulkes; Robert Furbank; Simon Griffiths; Julie King; Erik Murchie; Martin Parry; Gustavo Slafer
Journal:  Plant Cell Environ       Date:  2012-08-20       Impact factor: 7.228

10.  Genomic prediction in CIMMYT maize and wheat breeding programs.

Authors:  J Crossa; P Pérez; J Hickey; J Burgueño; L Ornella; J Cerón-Rojas; X Zhang; S Dreisigacker; R Babu; Y Li; D Bonnett; K Mathews
Journal:  Heredity (Edinb)       Date:  2013-04-10       Impact factor: 3.821

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  16 in total

1.  Genomic Prediction Accuracy of Stripe Rust in Six Spring Wheat Populations by Modeling Genotype by Environment Interaction.

Authors:  Kassa Semagn; Muhammad Iqbal; Diego Jarquin; Harpinder Randhawa; Reem Aboukhaddour; Reka Howard; Izabela Ciechanowska; Momna Farzand; Raman Dhariwal; Colin W Hiebert; Amidou N'Diaye; Curtis Pozniak; Dean Spaner
Journal:  Plants (Basel)       Date:  2022-06-30

2.  Genomic-Enabled Prediction in Maize Using Kernel Models with Genotype × Environment Interaction.

Authors:  Massaine Bandeira E Sousa; Jaime Cuevas; Evellyn Giselly de Oliveira Couto; Paulino Pérez-Rodríguez; Diego Jarquín; Roberto Fritsche-Neto; Juan Burgueño; Jose Crossa
Journal:  G3 (Bethesda)       Date:  2017-06-07       Impact factor: 3.154

3.  Use of multiple traits genomic prediction, genotype by environment interactions and spatial effect to improve prediction accuracy in yield data.

Authors:  Hsin-Yuan Tsai; Fabio Cericola; Vahid Edriss; Jeppe Reitan Andersen; Jihad Orabi; Jens Due Jensen; Ahmed Jahoor; Luc Janss; Just Jensen
Journal:  PLoS One       Date:  2020-05-13       Impact factor: 3.240

4.  Genomic Prediction for 25 Agronomic and Quality Traits in Alfalfa (Medicago sativa).

Authors:  Congjun Jia; Fuping Zhao; Xuemin Wang; Jianlin Han; Haiming Zhao; Guibo Liu; Zan Wang
Journal:  Front Plant Sci       Date:  2018-08-20       Impact factor: 5.753

5.  Combining pedigree and genomic information to improve prediction quality: an example in sorghum.

Authors:  Julio G Velazco; Marcos Malosetti; Colleen H Hunt; Emma S Mace; David R Jordan; Fred A van Eeuwijk
Journal:  Theor Appl Genet       Date:  2019-04-09       Impact factor: 5.699

6.  Genomic Selection Using Pedigree and Marker-by-Environment Interaction for Barley Seed Quality Traits From Two Commercial Breeding Programs.

Authors:  Theresa Ankamah-Yeboah; Lucas Lodewijk Janss; Jens Due Jensen; Rasmus Lund Hjortshøj; Søren Kjærsgaard Rasmussen
Journal:  Front Plant Sci       Date:  2020-05-08       Impact factor: 5.753

7.  Genetic analysis of multi-environmental spring wheat trials identifies genomic regions for locus-specific trade-offs for grain weight and grain number.

Authors:  Sivakumar Sukumaran; Marta Lopes; Susanne Dreisigacker; Matthew Reynolds
Journal:  Theor Appl Genet       Date:  2017-12-07       Impact factor: 5.699

8.  Genomic-Enabled Prediction Kernel Models with Random Intercepts for Multi-environment Trials.

Authors:  Jaime Cuevas; Italo Granato; Roberto Fritsche-Neto; Osval A Montesinos-Lopez; Juan Burgueño; Massaine Bandeira E Sousa; José Crossa
Journal:  G3 (Bethesda)       Date:  2018-03-28       Impact factor: 3.154

9.  Historical Datasets Support Genomic Selection Models for the Prediction of Cotton Fiber Quality Phenotypes Across Multiple Environments.

Authors:  Washington Gapare; Shiming Liu; Warren Conaty; Qian-Hao Zhu; Vanessa Gillespie; Danny Llewellyn; Warwick Stiller; Iain Wilson
Journal:  G3 (Bethesda)       Date:  2018-05-04       Impact factor: 3.154

Review 10.  Genomic interventions for sustainable agriculture.

Authors:  Abhishek Bohra; Uday Chand Jha; Ian D Godwin; Rajeev Kumar Varshney
Journal:  Plant Biotechnol J       Date:  2020-09-22       Impact factor: 9.803

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