Literature DB >> 27902799

Genomic Prediction of Genotype × Environment Interaction Kernel Regression Models.

Jaime Cuevas, José Crossa, Víctor Soberanis, Sergio Pérez-Elizalde, Paulino Pérez-Rodríguez, Gustavo de Los Campos, O A Montesinos-López, Juan Burgueño.   

Abstract

In genomic selection (GS), genotype × environment interaction (G × E) can be modeled by a marker × environment interaction (M × E). The G × E may be modeled through a linear kernel or a nonlinear (Gaussian) kernel. In this study, we propose using two nonlinear Gaussian kernels: the reproducing kernel Hilbert space with kernel averaging (RKHS KA) and the Gaussian kernel with the bandwidth estimated through an empirical Bayesian method (RKHS EB). We performed single-environment analyses and extended to account for G × E interaction (GBLUP-G × E, RKHS KA-G × E and RKHS EB-G × E) in wheat ( L.) and maize ( L.) data sets. For single-environment analyses of wheat and maize data sets, RKHS EB and RKHS KA had higher prediction accuracy than GBLUP for all environments. For the wheat data, the RKHS KA-G × E and RKHS EB-G × E models did show up to 60 to 68% superiority over the corresponding single environment for pairs of environments with positive correlations. For the wheat data set, the models with Gaussian kernels had accuracies up to 17% higher than that of GBLUP-G × E. For the maize data set, the prediction accuracy of RKHS EB-G × E and RKHS KA-G × E was, on average, 5 to 6% higher than that of GBLUP-G × E. The superiority of the Gaussian kernel models over the linear kernel is due to more flexible kernels that accounts for small, more complex marker main effects and marker-specific interaction effects.
Copyright © 2016 Crop Science Society of America.

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Year:  2016        PMID: 27902799     DOI: 10.3835/plantgenome2016.03.0024

Source DB:  PubMed          Journal:  Plant Genome        ISSN: 1940-3372            Impact factor:   4.089


  35 in total

1.  Accurate genomic prediction of Coffea canephora in multiple environments using whole-genome statistical models.

Authors:  Luís Felipe Ventorim Ferrão; Romário Gava Ferrão; Maria Amélia Gava Ferrão; Aymbiré Fonseca; Peter Carbonetto; Matthew Stephens; Antonio Augusto Franco Garcia
Journal:  Heredity (Edinb)       Date:  2018-06-25       Impact factor: 3.821

2.  Deep Kernel and Deep Learning for Genome-Based Prediction of Single Traits in Multienvironment Breeding Trials.

Authors:  José Crossa; Johannes W R Martini; Daniel Gianola; Paulino Pérez-Rodríguez; Diego Jarquin; Philomin Juliana; Osval Montesinos-López; Jaime Cuevas
Journal:  Front Genet       Date:  2019-12-09       Impact factor: 4.599

3.  Phenomic selection in wheat breeding: prediction of the genotype-by-environment interaction in multi-environment breeding trials.

Authors:  Pauline Robert; Ellen Goudemand; Jérôme Auzanneau; François-Xavier Oury; Bernard Rolland; Emmanuel Heumez; Sophie Bouchet; Antoine Caillebotte; Tristan Mary-Huard; Jacques Le Gouis; Renaud Rincent
Journal:  Theor Appl Genet       Date:  2022-08-08       Impact factor: 5.574

4.  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

5.  A General-Purpose Machine Learning R Library for Sparse Kernels Methods With an Application for Genome-Based Prediction.

Authors:  Osval Antonio Montesinos López; Brandon Alejandro Mosqueda González; Abel Palafox González; Abelardo Montesinos López; José Crossa
Journal:  Front Genet       Date:  2022-06-03       Impact factor: 4.772

6.  When less can be better: How can we make genomic selection more cost-effective and accurate in barley?

Authors:  Amina Abed; Paulino Pérez-Rodríguez; José Crossa; François Belzile
Journal:  Theor Appl Genet       Date:  2018-06-01       Impact factor: 5.699

7.  Bayesian multitrait kernel methods improve multienvironment genome-based prediction.

Authors:  Osval Antonio Montesinos-López; José Cricelio Montesinos-López; Abelardo Montesinos-López; Juan Manuel Ramírez-Alcaraz; Jesse Poland; Ravi Singh; Susanne Dreisigacker; Leonardo Crespo; Sushismita Mondal; Velu Govidan; Philomin Juliana; Julio Huerta Espino; Sandesh Shrestha; Rajeev K Varshney; José Crossa
Journal:  G3 (Bethesda)       Date:  2022-02-04       Impact factor: 3.542

Review 8.  Plant Breeding for Intercropping in Temperate Field Crop Systems: A Review.

Authors:  Virginia M Moore; Brandon Schlautman; Shui-Zhang Fei; Lucas M Roberts; Marnin Wolfe; Matthew R Ryan; Samantha Wells; Aaron J Lorenz
Journal:  Front Plant Sci       Date:  2022-03-31       Impact factor: 5.753

9.  Bayesian Genomic Prediction with Genotype × Environment Interaction Kernel Models.

Authors:  Jaime Cuevas; José Crossa; Osval A Montesinos-López; Juan Burgueño; Paulino Pérez-Rodríguez; Gustavo de Los Campos
Journal:  G3 (Bethesda)       Date:  2017-01-05       Impact factor: 3.154

10.  Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data.

Authors:  Abelardo Montesinos-López; Osval A Montesinos-López; Jaime Cuevas; Walter A Mata-López; Juan Burgueño; Sushismita Mondal; Julio Huerta; Ravi Singh; Enrique Autrique; Lorena González-Pérez; José Crossa
Journal:  Plant Methods       Date:  2017-07-27       Impact factor: 4.993

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