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Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations

Genomic selection is being used increasingly in plant breeding to accelerate genetic gain per unit time. One of the most important applications of genomic selection in maize breeding is to predict and select the best un-phenotyped lines in bi-parental populations based on genomic estimated breeding...

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Autores principales: Zhang, Ao, Wang, Hongwu, Beyene, Yoseph, Semagn, Kassa, Liu, Yubo, Cao, Shiliang, Cui, Zhenhai, Ruan, Yanye, Burgueño, Juan, San Vicente, Felix, Olsen, Michael, Prasanna, Boddupalli M., Crossa, José, Yu, Haiqiu, Zhang, Xuecai
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5683035/
https://www.ncbi.nlm.nih.gov/pubmed/29167677
http://dx.doi.org/10.3389/fpls.2017.01916
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author Zhang, Ao
Wang, Hongwu
Beyene, Yoseph
Semagn, Kassa
Liu, Yubo
Cao, Shiliang
Cui, Zhenhai
Ruan, Yanye
Burgueño, Juan
San Vicente, Felix
Olsen, Michael
Prasanna, Boddupalli M.
Crossa, José
Yu, Haiqiu
Zhang, Xuecai
author_facet Zhang, Ao
Wang, Hongwu
Beyene, Yoseph
Semagn, Kassa
Liu, Yubo
Cao, Shiliang
Cui, Zhenhai
Ruan, Yanye
Burgueño, Juan
San Vicente, Felix
Olsen, Michael
Prasanna, Boddupalli M.
Crossa, José
Yu, Haiqiu
Zhang, Xuecai
author_sort Zhang, Ao
collection PubMed
description Genomic selection is being used increasingly in plant breeding to accelerate genetic gain per unit time. One of the most important applications of genomic selection in maize breeding is to predict and select the best un-phenotyped lines in bi-parental populations based on genomic estimated breeding values. In the present study, 22 bi-parental tropical maize populations genotyped with low density SNPs were used to evaluate the genomic prediction accuracy (r(MG)) of the six trait-environment combinations under various levels of training population size (TPS) and marker density (MD), and assess the effect of trait heritability (h(2)), TPS and MD on r(MG) estimation. Our results showed that: (1) moderate r(MG) values were obtained for different trait-environment combinations, when 50% of the total genotypes was used as training population and ~200 SNPs were used for prediction; (2) r(MG) increased with an increase in h(2), TPS and MD, both correlation and variance analyses showed that h(2) is the most important factor and MD is the least important factor on r(MG) estimation for most of the trait-environment combinations; (3) predictions between pairwise half-sib populations showed that the r(MG) values for all the six trait-environment combinations were centered around zero, 49% predictions had r(MG) values above zero; (4) the trend observed in r(MG) differed with the trend observed in r(MG)/h, and h is the square root of heritability of the predicted trait, it indicated that both r(MG) and r(MG)/h values should be presented in GS study to show the accuracy of genomic selection and the relative accuracy of genomic selection compared with phenotypic selection, respectively. This study provides useful information to maize breeders to design genomic selection workflow in their breeding programs.
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spelling pubmed-56830352017-11-22 Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations Zhang, Ao Wang, Hongwu Beyene, Yoseph Semagn, Kassa Liu, Yubo Cao, Shiliang Cui, Zhenhai Ruan, Yanye Burgueño, Juan San Vicente, Felix Olsen, Michael Prasanna, Boddupalli M. Crossa, José Yu, Haiqiu Zhang, Xuecai Front Plant Sci Plant Science Genomic selection is being used increasingly in plant breeding to accelerate genetic gain per unit time. One of the most important applications of genomic selection in maize breeding is to predict and select the best un-phenotyped lines in bi-parental populations based on genomic estimated breeding values. In the present study, 22 bi-parental tropical maize populations genotyped with low density SNPs were used to evaluate the genomic prediction accuracy (r(MG)) of the six trait-environment combinations under various levels of training population size (TPS) and marker density (MD), and assess the effect of trait heritability (h(2)), TPS and MD on r(MG) estimation. Our results showed that: (1) moderate r(MG) values were obtained for different trait-environment combinations, when 50% of the total genotypes was used as training population and ~200 SNPs were used for prediction; (2) r(MG) increased with an increase in h(2), TPS and MD, both correlation and variance analyses showed that h(2) is the most important factor and MD is the least important factor on r(MG) estimation for most of the trait-environment combinations; (3) predictions between pairwise half-sib populations showed that the r(MG) values for all the six trait-environment combinations were centered around zero, 49% predictions had r(MG) values above zero; (4) the trend observed in r(MG) differed with the trend observed in r(MG)/h, and h is the square root of heritability of the predicted trait, it indicated that both r(MG) and r(MG)/h values should be presented in GS study to show the accuracy of genomic selection and the relative accuracy of genomic selection compared with phenotypic selection, respectively. This study provides useful information to maize breeders to design genomic selection workflow in their breeding programs. Frontiers Media S.A. 2017-11-08 /pmc/articles/PMC5683035/ /pubmed/29167677 http://dx.doi.org/10.3389/fpls.2017.01916 Text en Copyright © 2017 Zhang, Wang, Beyene, Semagn, Liu, Cao, Cui, Ruan, Burgueño, San Vicente, Olsen, Prasanna, Crossa, Yu and Zhang. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Zhang, Ao
Wang, Hongwu
Beyene, Yoseph
Semagn, Kassa
Liu, Yubo
Cao, Shiliang
Cui, Zhenhai
Ruan, Yanye
Burgueño, Juan
San Vicente, Felix
Olsen, Michael
Prasanna, Boddupalli M.
Crossa, José
Yu, Haiqiu
Zhang, Xuecai
Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations
title Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations
title_full Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations
title_fullStr Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations
title_full_unstemmed Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations
title_short Effect of Trait Heritability, Training Population Size and Marker Density on Genomic Prediction Accuracy Estimation in 22 bi-parental Tropical Maize Populations
title_sort effect of trait heritability, training population size and marker density on genomic prediction accuracy estimation in 22 bi-parental tropical maize populations
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5683035/
https://www.ncbi.nlm.nih.gov/pubmed/29167677
http://dx.doi.org/10.3389/fpls.2017.01916
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