Cargando…

Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat

Genomic prediction is a promising approach for accelerating the genetic gain of complex traits in wheat breeding. However, increasing the prediction accuracy (PA) of genomic prediction (GP) models remains a challenge in the successful implementation of this approach. Multivariate models have shown p...

Descripción completa

Detalles Bibliográficos
Autores principales: Gill, Harsimardeep S., Halder, Jyotirmoy, Zhang, Jinfeng, Brar, Navreet K., Rai, Teerath S., Hall, Cody, Bernardo, Amy, Amand, Paul St, Bai, Guihua, Olson, Eric, Ali, Shaukat, Turnipseed, Brent, Sehgal, Sunish K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8416538/
https://www.ncbi.nlm.nih.gov/pubmed/34490011
http://dx.doi.org/10.3389/fpls.2021.709545
_version_ 1783748205758906368
author Gill, Harsimardeep S.
Halder, Jyotirmoy
Zhang, Jinfeng
Brar, Navreet K.
Rai, Teerath S.
Hall, Cody
Bernardo, Amy
Amand, Paul St
Bai, Guihua
Olson, Eric
Ali, Shaukat
Turnipseed, Brent
Sehgal, Sunish K.
author_facet Gill, Harsimardeep S.
Halder, Jyotirmoy
Zhang, Jinfeng
Brar, Navreet K.
Rai, Teerath S.
Hall, Cody
Bernardo, Amy
Amand, Paul St
Bai, Guihua
Olson, Eric
Ali, Shaukat
Turnipseed, Brent
Sehgal, Sunish K.
author_sort Gill, Harsimardeep S.
collection PubMed
description Genomic prediction is a promising approach for accelerating the genetic gain of complex traits in wheat breeding. However, increasing the prediction accuracy (PA) of genomic prediction (GP) models remains a challenge in the successful implementation of this approach. Multivariate models have shown promise when evaluated using diverse panels of unrelated accessions; however, limited information is available on their performance in advanced breeding trials. Here, we used multivariate GP models to predict multiple agronomic traits using 314 advanced and elite breeding lines of winter wheat evaluated in 10 site-year environments. We evaluated a multi-trait (MT) model with two cross-validation schemes representing different breeding scenarios (CV1, prediction of completely unphenotyped lines; and CV2, prediction of partially phenotyped lines for correlated traits). Moreover, extensive data from multi-environment trials (METs) were used to cross-validate a Bayesian multi-trait multi-environment (MTME) model that integrates the analysis of multiple-traits, such as G × E interaction. The MT-CV2 model outperformed all the other models for predicting grain yield with significant improvement in PA over the single-trait (ST-CV1) model. The MTME model performed better for all traits, with average improvement over the ST-CV1 reaching up to 19, 71, 17, 48, and 51% for grain yield, grain protein content, test weight, plant height, and days to heading, respectively. Overall, the empirical analyses elucidate the potential of both the MT-CV2 and MTME models when advanced breeding lines are used as a training population to predict related preliminary breeding lines. Further, we evaluated the practical application of the MTME model in the breeding program to reduce phenotyping cost using a sparse testing design. This showed that complementing METs with GP can substantially enhance resource efficiency. Our results demonstrate that multivariate GS models have a great potential in implementing GS in breeding programs.
format Online
Article
Text
id pubmed-8416538
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-84165382021-09-05 Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat Gill, Harsimardeep S. Halder, Jyotirmoy Zhang, Jinfeng Brar, Navreet K. Rai, Teerath S. Hall, Cody Bernardo, Amy Amand, Paul St Bai, Guihua Olson, Eric Ali, Shaukat Turnipseed, Brent Sehgal, Sunish K. Front Plant Sci Plant Science Genomic prediction is a promising approach for accelerating the genetic gain of complex traits in wheat breeding. However, increasing the prediction accuracy (PA) of genomic prediction (GP) models remains a challenge in the successful implementation of this approach. Multivariate models have shown promise when evaluated using diverse panels of unrelated accessions; however, limited information is available on their performance in advanced breeding trials. Here, we used multivariate GP models to predict multiple agronomic traits using 314 advanced and elite breeding lines of winter wheat evaluated in 10 site-year environments. We evaluated a multi-trait (MT) model with two cross-validation schemes representing different breeding scenarios (CV1, prediction of completely unphenotyped lines; and CV2, prediction of partially phenotyped lines for correlated traits). Moreover, extensive data from multi-environment trials (METs) were used to cross-validate a Bayesian multi-trait multi-environment (MTME) model that integrates the analysis of multiple-traits, such as G × E interaction. The MT-CV2 model outperformed all the other models for predicting grain yield with significant improvement in PA over the single-trait (ST-CV1) model. The MTME model performed better for all traits, with average improvement over the ST-CV1 reaching up to 19, 71, 17, 48, and 51% for grain yield, grain protein content, test weight, plant height, and days to heading, respectively. Overall, the empirical analyses elucidate the potential of both the MT-CV2 and MTME models when advanced breeding lines are used as a training population to predict related preliminary breeding lines. Further, we evaluated the practical application of the MTME model in the breeding program to reduce phenotyping cost using a sparse testing design. This showed that complementing METs with GP can substantially enhance resource efficiency. Our results demonstrate that multivariate GS models have a great potential in implementing GS in breeding programs. Frontiers Media S.A. 2021-08-18 /pmc/articles/PMC8416538/ /pubmed/34490011 http://dx.doi.org/10.3389/fpls.2021.709545 Text en Copyright © 2021 Gill, Halder, Zhang, Brar, Rai, Hall, Bernardo, Amand, Bai, Olson, Ali, Turnipseed and Sehgal. https://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) and the copyright owner(s) 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
Gill, Harsimardeep S.
Halder, Jyotirmoy
Zhang, Jinfeng
Brar, Navreet K.
Rai, Teerath S.
Hall, Cody
Bernardo, Amy
Amand, Paul St
Bai, Guihua
Olson, Eric
Ali, Shaukat
Turnipseed, Brent
Sehgal, Sunish K.
Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat
title Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat
title_full Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat
title_fullStr Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat
title_full_unstemmed Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat
title_short Multi-Trait Multi-Environment Genomic Prediction of Agronomic Traits in Advanced Breeding Lines of Winter Wheat
title_sort multi-trait multi-environment genomic prediction of agronomic traits in advanced breeding lines of winter wheat
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8416538/
https://www.ncbi.nlm.nih.gov/pubmed/34490011
http://dx.doi.org/10.3389/fpls.2021.709545
work_keys_str_mv AT gillharsimardeeps multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT halderjyotirmoy multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT zhangjinfeng multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT brarnavreetk multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT raiteeraths multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT hallcody multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT bernardoamy multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT amandpaulst multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT baiguihua multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT olsoneric multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT alishaukat multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT turnipseedbrent multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat
AT sehgalsunishk multitraitmultienvironmentgenomicpredictionofagronomictraitsinadvancedbreedinglinesofwinterwheat