Increased Prediction Accuracy in Wheat Breeding Trials Using a Marker x Environment Interaction Genomic Selection Model

被引:210
作者
Lopez-Cruz, Marco [1 ]
Crossa, Jose [2 ]
Bonnett, David [2 ]
Dreisigacker, Susanne [2 ]
Poland, Jesse [3 ,4 ]
Jannink, Jean-Luc [5 ,6 ]
Singh, Ravi P. [2 ]
Autrique, Enrique [2 ]
de los Campos, Gustavo [7 ,8 ]
机构
[1] Michigan State Univ, Dept Plant Soil & Microbial Sci, E Lansing, MI USA
[2] Int Maize & Wheat Improvement Ctr CIMMYT, Mexico City, DF, Mexico
[3] Kansas State Univ, Wheat Genet Resource Ctr, Dept Plant Pathol, Manhattan, KS 66506 USA
[4] Kansas State Univ, Dept Agron, Manhattan, KS 66506 USA
[5] Cornell Univ, USDA, ARS, Ithaca, NY 14853 USA
[6] Cornell Univ, Dept Plant Breeding & Genet, Ithaca, NY 14853 USA
[7] Michigan State Univ, Epidemiol & Biostat Dept, E Lansing, MI 48824 USA
[8] Michigan State Univ, Dept Stat, E Lansing, MI 48824 USA
来源
G3-GENES GENOMES GENETICS | 2015年 / 5卷 / 04期
基金
美国国家科学基金会;
关键词
genomic selection; multienvironment; genomic best linear unbiased prediction (GBLUP); marker x environment interaction; International Bread Wheat Screening Nursery; GenPred; shared data resource; MIXED-MODEL; GENETIC COVARIANCES; QUANTITATIVE TRAITS; ENABLED PREDICTION; REGRESSION-MODELS; GENOTYPE; PLANT; QTL; VALUES; COVARIABLES;
D O I
10.1534/g3.114.016097
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Genomic selection (GS) models use genome-wide genetic information to predict genetic values of candidates of selection. Originally, these models were developed without considering genotype x environment interaction( GxE). Several authors have proposed extensions of the single-environment GS model that accommodate GxE using either covariance functions or environmental covariates. In this study, we model GxE using a marker x environment interaction (MxE) GS model; the approach is conceptually simple and can be implemented with existing GS software. We discuss how the model can be implemented by using an explicit regression of phenotypes on markers or using co-variance structures (a genomic best linear unbiased prediction-type model). We used the MxE model to analyze three CIMMYT wheat data sets (W1, W2, and W3), where more than 1000 lines were genotyped using genotyping-by-sequencing and evaluated at CIMMYT's research station in Ciudad Obregon, Mexico, under simulated environmental conditions that covered different irrigation levels, sowing dates and planting systems. We compared the MxE model with a stratified (i.e., within-environment) analysis and with a standard (across-environment) GS model that assumes that effects are constant across environments (i.e., ignoring GxE). The prediction accuracy of the MxE model was substantially greater of that of an across-environment analysis that ignores GxE. Depending on the prediction problem, the MxE model had either similar or greater levels of prediction accuracy than the stratified analyses. The MxE model decomposes marker effects and genomic values into components that are stable across environments (main effects) and others that are environment-specific (interactions). Therefore, in principle, the interaction model could shed light over which variants have effects that are stable across environments and which ones are responsible for GxE. The data set and the scripts required to reproduce the analysis are publicly available as Supporting Information.
引用
收藏
页码:569 / 582
页数:14
相关论文
共 33 条
  • [1] A mixed-model quantitative trait loci (QTL) analysis for multiple-environment trial data using environmental covariables for QTL-by-environment interactions, with an example in maize
    Boer, Martin P.
    Wright, Deanne
    Feng, Lizhi
    Podlich, Dean W.
    Luo, Lang
    Cooper, Mark
    van Eeuwijk, Fred A.
    [J]. GENETICS, 2007, 177 (03) : 1801 - 1813
  • [2] CIMMYT's approach to breeding for wide adaptation
    Braun, HJ
    Rajaram, S
    vanGinkel, M
    [J]. EUPHYTICA, 1996, 92 (1-2) : 175 - 183
  • [3] Modeling additive x environment and additive x additive x environment using genetic covariances of relatives of wheat genotypes
    Burgueno, Juan
    Crossa, Jose
    Cornelius, Paul L.
    Trethowan, Richard
    McLaren, Graham
    Krishnamachari, Anitha
    [J]. CROP SCIENCE, 2007, 47 (01) : 311 - 320
  • [4] Genomic Prediction of Breeding Values when Modeling Genotype x Environment Interaction using Pedigree and Dense Molecular Markers
    Burgueno, Juan
    de los Campos, Gustavo
    Weigel, Kent
    Crossa, Jose
    [J]. CROP SCIENCE, 2012, 52 (02) : 707 - 719
  • [5] Modeling genotype x environment interaction using additive genetic covariances of relatives for predicting breeding values of wheat genotypes
    Crossa, Jose
    Burgueno, Juan
    Cornelius, Paul L.
    McLaren, Graham
    Trethowan, Richard
    Krishnamachari, Anitha
    [J]. CROP SCIENCE, 2006, 46 (04) : 1722 - 1733
  • [6] Genomic Selection and Prediction in Plant Breeding
    Crossa, Jose
    Perez, Paulino
    de los Campos, Gustavo
    Mahuku, George
    Dreisigacker, Susanne
    Magorokosho, Cosmos
    [J]. JOURNAL OF CROP IMPROVEMENT, 2011, 25 (03) : 239 - 261
  • [7] Prediction of Genetic Values of Quantitative Traits in Plant Breeding Using Pedigree and Molecular Markers
    Crossa, Jose
    de los Campos, Gustavo
    Perez, Paulino
    Gianola, Daniel
    Burgueno, Juan
    Luis Araus, Jose
    Makumbi, Dan
    Singh, Ravi P.
    Dreisigacker, Susanne
    Yan, Jianbing
    Arief, Vivi
    Banziger, Marianne
    Braun, Hans-Joachim
    [J]. GENETICS, 2010, 186 (02) : 713 - U406
  • [8] The use of unbalanced historical data for genomic selection in an international wheat breeding program
    Dawson, Julie C.
    Endelman, Jeffrey B.
    Heslot, Nicolas
    Crossa, Jose
    Poland, Jesse
    Dreisigacker, Susanne
    Manes, Yann
    Sorrells, Mark E.
    Jannink, Jean-Luc
    [J]. FIELD CROPS RESEARCH, 2013, 154 : 12 - 22
  • [9] de los Campos G., 2014, Bayesian generalized linear regression. R package version 1.0.5
  • [10] Whole-Genome Regression and Prediction Methods Applied to Plant and Animal Breeding
    de los Campos, Gustavo
    Hickey, John M.
    Pong-Wong, Ricardo
    Daetwyler, Hans D.
    Calus, Mario P. L.
    [J]. GENETICS, 2013, 193 (02) : 327 - +