Cargando…

Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review

The usefulness of genomic prediction (GP) for many animal and plant breeding programs has been highlighted for many studies in the last 20 years. In maize breeding programs, mostly dedicated to delivering more highly adapted and productive hybrids, this approach has been proved successful for both l...

Descripción completa

Detalles Bibliográficos
Autores principales: Fritsche-Neto, Roberto, Galli, Giovanni, Borges, Karina Lima Reis, Costa-Neto, Germano, Alves, Filipe Couto, Sabadin, Felipe, Lyra, Danilo Hottis, Morais, Pedro Patric Pinho, Braatz de Andrade, Luciano Rogério, Granato, Italo, Crossa, Jose
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8281958/
https://www.ncbi.nlm.nih.gov/pubmed/34276721
http://dx.doi.org/10.3389/fpls.2021.658267
_version_ 1783722917378392064
author Fritsche-Neto, Roberto
Galli, Giovanni
Borges, Karina Lima Reis
Costa-Neto, Germano
Alves, Filipe Couto
Sabadin, Felipe
Lyra, Danilo Hottis
Morais, Pedro Patric Pinho
Braatz de Andrade, Luciano Rogério
Granato, Italo
Crossa, Jose
author_facet Fritsche-Neto, Roberto
Galli, Giovanni
Borges, Karina Lima Reis
Costa-Neto, Germano
Alves, Filipe Couto
Sabadin, Felipe
Lyra, Danilo Hottis
Morais, Pedro Patric Pinho
Braatz de Andrade, Luciano Rogério
Granato, Italo
Crossa, Jose
author_sort Fritsche-Neto, Roberto
collection PubMed
description The usefulness of genomic prediction (GP) for many animal and plant breeding programs has been highlighted for many studies in the last 20 years. In maize breeding programs, mostly dedicated to delivering more highly adapted and productive hybrids, this approach has been proved successful for both large- and small-scale breeding programs worldwide. Here, we present some of the strategies developed to improve the accuracy of GP in tropical maize, focusing on its use under low budget and small-scale conditions achieved for most of the hybrid breeding programs in developing countries. We highlight the most important outcomes obtained by the University of São Paulo (USP, Brazil) and how they can improve the accuracy of prediction in tropical maize hybrids. Our roadmap starts with the efforts for germplasm characterization, moving on to the practices for mating design, and the selection of the genotypes that are used to compose the training population in field phenotyping trials. Factors including population structure and the importance of non-additive effects (dominance and epistasis) controlling the desired trait are also outlined. Finally, we explain how the source of the molecular markers, environmental, and the modeling of genotype–environment interaction can affect the accuracy of GP. Results of 7 years of research in a public maize hybrid breeding program under tropical conditions are discussed, and with the great advances that have been made, we find that what is yet to come is exciting. The use of open-source software for the quality control of molecular markers, implementing GP, and envirotyping pipelines may reduce costs in an efficient computational manner. We conclude that exploring new models/tools using high-throughput phenotyping data along with large-scale envirotyping may bring more resolution and realism when predicting genotype performances. Despite the initial costs, mostly for genotyping, the GP platforms in combination with these other data sources can be a cost-effective approach for predicting the performance of maize hybrids for a large set of growing conditions.
format Online
Article
Text
id pubmed-8281958
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-82819582021-07-16 Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review Fritsche-Neto, Roberto Galli, Giovanni Borges, Karina Lima Reis Costa-Neto, Germano Alves, Filipe Couto Sabadin, Felipe Lyra, Danilo Hottis Morais, Pedro Patric Pinho Braatz de Andrade, Luciano Rogério Granato, Italo Crossa, Jose Front Plant Sci Plant Science The usefulness of genomic prediction (GP) for many animal and plant breeding programs has been highlighted for many studies in the last 20 years. In maize breeding programs, mostly dedicated to delivering more highly adapted and productive hybrids, this approach has been proved successful for both large- and small-scale breeding programs worldwide. Here, we present some of the strategies developed to improve the accuracy of GP in tropical maize, focusing on its use under low budget and small-scale conditions achieved for most of the hybrid breeding programs in developing countries. We highlight the most important outcomes obtained by the University of São Paulo (USP, Brazil) and how they can improve the accuracy of prediction in tropical maize hybrids. Our roadmap starts with the efforts for germplasm characterization, moving on to the practices for mating design, and the selection of the genotypes that are used to compose the training population in field phenotyping trials. Factors including population structure and the importance of non-additive effects (dominance and epistasis) controlling the desired trait are also outlined. Finally, we explain how the source of the molecular markers, environmental, and the modeling of genotype–environment interaction can affect the accuracy of GP. Results of 7 years of research in a public maize hybrid breeding program under tropical conditions are discussed, and with the great advances that have been made, we find that what is yet to come is exciting. The use of open-source software for the quality control of molecular markers, implementing GP, and envirotyping pipelines may reduce costs in an efficient computational manner. We conclude that exploring new models/tools using high-throughput phenotyping data along with large-scale envirotyping may bring more resolution and realism when predicting genotype performances. Despite the initial costs, mostly for genotyping, the GP platforms in combination with these other data sources can be a cost-effective approach for predicting the performance of maize hybrids for a large set of growing conditions. Frontiers Media S.A. 2021-07-01 /pmc/articles/PMC8281958/ /pubmed/34276721 http://dx.doi.org/10.3389/fpls.2021.658267 Text en Copyright © 2021 Fritsche-Neto, Galli, Borges, Costa-Neto, Alves, Sabadin, Lyra, Morais, Braatz de Andrade, Granato and Crossa. 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
Fritsche-Neto, Roberto
Galli, Giovanni
Borges, Karina Lima Reis
Costa-Neto, Germano
Alves, Filipe Couto
Sabadin, Felipe
Lyra, Danilo Hottis
Morais, Pedro Patric Pinho
Braatz de Andrade, Luciano Rogério
Granato, Italo
Crossa, Jose
Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review
title Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review
title_full Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review
title_fullStr Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review
title_full_unstemmed Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review
title_short Optimizing Genomic-Enabled Prediction in Small-Scale Maize Hybrid Breeding Programs: A Roadmap Review
title_sort optimizing genomic-enabled prediction in small-scale maize hybrid breeding programs: a roadmap review
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8281958/
https://www.ncbi.nlm.nih.gov/pubmed/34276721
http://dx.doi.org/10.3389/fpls.2021.658267
work_keys_str_mv AT fritschenetoroberto optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT galligiovanni optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT borgeskarinalimareis optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT costanetogermano optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT alvesfilipecouto optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT sabadinfelipe optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT lyradanilohottis optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT moraispedropatricpinho optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT braatzdeandradelucianorogerio optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT granatoitalo optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview
AT crossajose optimizinggenomicenabledpredictioninsmallscalemaizehybridbreedingprogramsaroadmapreview