Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets

Long-term breeding schemes using genomic selection (GS) can boost the response to selection per year. Although several studies have shown that GS delivers a higher response to selection, only a few analyze which stage GS produces better results and how to update the training population to maintain p...

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Autores principales: Sabadin, Felipe, César DoVale, Julio, Platten, John Damien, Fritsche-Neto, Roberto
Formato: Journal Article
Lenguaje:Inglés
Publicado: Frontiers Media 2022
Materias:
Acceso en línea:https://hdl.handle.net/10568/126257
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author Sabadin, Felipe
César DoVale, Julio
Platten, John Damien
Fritsche-Neto, Roberto
author_browse César DoVale, Julio
Fritsche-Neto, Roberto
Platten, John Damien
Sabadin, Felipe
author_facet Sabadin, Felipe
César DoVale, Julio
Platten, John Damien
Fritsche-Neto, Roberto
author_sort Sabadin, Felipe
collection Repository of Agricultural Research Outputs (CGSpace)
description Long-term breeding schemes using genomic selection (GS) can boost the response to selection per year. Although several studies have shown that GS delivers a higher response to selection, only a few analyze which stage GS produces better results and how to update the training population to maintain prediction accuracy. We used stochastic simulation to compare five GS breeding schemes in a self-pollinated long-term breeding program. Also, we evaluated four strategies, using distinct methods and sizes, to update the training set. Finally, regarding breeding schemes, we proposed a new approach using GS to select the best individuals in each F2 progeny, based on genomic estimated breeding values and genetic divergence, to cross them and generate a new recombination event. Our results showed that the best scenario was using GS in F2, followed by the phenotypic selection of new parents in F4. For TS updating, adding new data every cycle (over 768) to update the TS maintains the prediction accuracy at satisfactory levels for more breeding cycles. However, only the last three generations can be kept in the TS, optimizing the genetic relationship between TS and the targeted population and reducing the computing demand and risks. Hence, we believe that our results may help breeders optimize GS in their programs and improve genetic gain in long-term schemes.
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spelling CGSpace1262572025-12-08T10:29:22Z Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets Sabadin, Felipe César DoVale, Julio Platten, John Damien Fritsche-Neto, Roberto genomics selection criteria pollination Long-term breeding schemes using genomic selection (GS) can boost the response to selection per year. Although several studies have shown that GS delivers a higher response to selection, only a few analyze which stage GS produces better results and how to update the training population to maintain prediction accuracy. We used stochastic simulation to compare five GS breeding schemes in a self-pollinated long-term breeding program. Also, we evaluated four strategies, using distinct methods and sizes, to update the training set. Finally, regarding breeding schemes, we proposed a new approach using GS to select the best individuals in each F2 progeny, based on genomic estimated breeding values and genetic divergence, to cross them and generate a new recombination event. Our results showed that the best scenario was using GS in F2, followed by the phenotypic selection of new parents in F4. For TS updating, adding new data every cycle (over 768) to update the TS maintains the prediction accuracy at satisfactory levels for more breeding cycles. However, only the last three generations can be kept in the TS, optimizing the genetic relationship between TS and the targeted population and reducing the computing demand and risks. Hence, we believe that our results may help breeders optimize GS in their programs and improve genetic gain in long-term schemes. 2022-10-06 2022-12-22T13:59:49Z 2022-12-22T13:59:49Z Journal Article https://hdl.handle.net/10568/126257 en Open Access application/pdf Frontiers Media Sabadin F, DoVale JC, Platten JD and Fritsche-Neto R (2022) Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets. Front. Plant Sci. 13:935885. doi: 10.3389/fpls.2022.935885
spellingShingle genomics
selection criteria
pollination
Sabadin, Felipe
César DoVale, Julio
Platten, John Damien
Fritsche-Neto, Roberto
Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets
title Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets
title_full Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets
title_fullStr Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets
title_full_unstemmed Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets
title_short Optimizing self-pollinated crop breeding employing genomic selection: From schemes to updating training sets
title_sort optimizing self pollinated crop breeding employing genomic selection from schemes to updating training sets
topic genomics
selection criteria
pollination
url https://hdl.handle.net/10568/126257
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AT plattenjohndamien optimizingselfpollinatedcropbreedingemployinggenomicselectionfromschemestoupdatingtrainingsets
AT fritschenetoroberto optimizingselfpollinatedcropbreedingemployinggenomicselectionfromschemestoupdatingtrainingsets