Bayesian analysis and prediction of hybrid performance

A - Papers appearing in refereed journals

Alves, F. C., Granato, I. S. C., Galli, g, Lyra, D. H., Fritsche-Neto, R. and De los Campos, G. 2019. Bayesian analysis and prediction of hybrid performance. Plant Methods. 15, p. 14. https://doi.org/10.1186/s13007-019-0388-x

AuthorsAlves, F. C., Granato, I. S. C., Galli, g, Lyra, D. H., Fritsche-Neto, R. and De los Campos, G.
Abstract

Background
The selection of hybrids is an essential step in maize breeding. However, evaluating a large number of hybrids in field trials can be extremely costly. However, genomic models can be used to predict the expected performance of un-tested genotypes. Bayesian models offer a very flexible framework for hybrid prediction. The Bayesian methodology can be used with parametric and semi-parametric assumptions for additive and non-additive effects. Furthermore, samples from the posterior distribution of Bayesian models can be used to estimate the variance due to general and specific combining abilities even in cases where additive and non-additive effects are not mutually orthogonal. Also, the use of Bayesian models for analysis and prediction of hybrid performance has remained fairly limited.
Results
We provided an overview of Bayesian parametric and semi-parametric genomic models for prediction of agronomic traits in maize hybrids and discussed how these models can be used to decompose the genotypic variance into components due to general and specific combining ability. We applied the methodology to data from 906 single cross tropical maize hybrids derived from a convergent population. Our results show that: (1) non-additive effects make a sizable contribution to the genetic variance of grain yield; however, the relative importance of non-additive effects was much smaller for ear and plant height; (2) genomic prediction can achieve relatively high accuracy in predicting phenotypes of un-tested hybrids and in pre-screening.
Conclusions
Genomic prediction can be a useful tool in pre-screening of hybrids and could contribute to the improvement of the efficiency and efficacy of maize hybrids breeding programs. The Bayesian framework offers a great deal of flexibility in modeling hybrid performance. The methodology can be used to estimate important genetic parameters and render predictions of the expected hybrid performance as well measures of uncertainty about such predictions.

KeywordsBayesian models; Genomic prediction; Hybrid prediction; Convergent populations ; Tropical maize; BGLR; Semi-parametric models; RKHS; Dominance; Epistasis; Non-additive effects ; Specific combining ability; Nitrogen; Stress
Year of Publication2019
JournalPlant Methods
Journal citation15, p. 14
Digital Object Identifier (DOI)https://doi.org/10.1186/s13007-019-0388-x
Open accessPublished as green open access
FunderCAPES ‘Science Without Borders’ Brazil
Biotechnology and Biological Sciences Research Council
Publisher's version
Publication dates
Online07 Feb 2019
Publication process dates
Accepted16 Jan 2019
PublisherBiomed Central Ltd
Copyright licenseCC BY
ISSN1746-4811

Permalink - https://repository.rothamsted.ac.uk/item/8wq2w/bayesian-analysis-and-prediction-of-hybrid-performance

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