Literature DB >> 36261658

Genotyping marker density and prediction models effects in long-term breeding schemes of cross-pollinated crops.

Júlio César DoVale1, Humberto Fanelli Carvalho2, Felipe Sabadin3, Roberto Fritsche-Neto4.   

Abstract

KEY MESSAGE: In genomic recurrent selection, the more markers, the better because they buffer the linkage disequilibrium losses caused by recombination over cycles, and consequently, provide higher responses to selection. Reductions of genotyping marker density have been extensively evaluated as potential strategies to reduce the genotyping costs of genomic selection (GS). Low-density marker panels are appealing in GS because they entail lower multicollinearity and computing time and allow more individuals to be genotyped for the same cost. However, statistical models used in GS are usually evaluated with empirical data, using "static" training sets and populations. This may be adequate for making predictions during a breeding program's initial cycles but not for the long-term. Moreover, studies that focus on long selective breeding cycles generally do not consider GS models with the effect of dominance, which is particularly important for breeding outcomes in cross-pollinated crops. Hence, dominance effects are important and unexplored in GS for long-term programs involving allogamous species. To address it, we employed two approaches: analysis of empirical maize datasets and simulations of long-term breeding applying phenotypic and genomic recurrent selection (intrapopulation and reciprocal schemes). In both schemes, we simulated twenty breeding cycles and assessed the effect of marker density reduction on the population mean, the best crosses, additive variance, selective accuracy, and response to selection with models [additive, additive-dominant, general (GCA), and this plus specific combining ability (GCA + SCA)]. Our results indicate that marker reduction based on linkage disequilibrium levels provides useful predictions only within a cycle, as accuracy significantly decreases over cycles. In the long-term, without training set updating, high-marker density provides the best responses to selection. The model to be used depends on the breeding scheme: additive for intrapopulation and additive-dominant or GCA + SCA for reciprocal.
© 2022. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Year:  2022        PMID: 36261658     DOI: 10.1007/s00122-022-04236-3

Source DB:  PubMed          Journal:  Theor Appl Genet        ISSN: 0040-5752            Impact factor:   5.574


  26 in total

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2.  Development of a single nucleotide polymorphism genotyping microarray platform for the identification of bovine milk protein genetic polymorphisms.

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3.  The impact of genetic relationship information on genome-assisted breeding values.

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Journal:  Genetics       Date:  2007-12       Impact factor: 4.562

4.  Fast and flexible simulation of DNA sequence data.

Authors:  Gary K Chen; Paul Marjoram; Jeffrey D Wall
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Review 5.  Additive genetic variability and the Bayesian alphabet.

Authors:  Daniel Gianola; Gustavo de los Campos; William G Hill; Eduardo Manfredi; Rohan Fernando
Journal:  Genetics       Date:  2009-07-20       Impact factor: 4.562

6.  A One-Penny Imputed Genome from Next-Generation Reference Panels.

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Journal:  Am J Hum Genet       Date:  2018-08-09       Impact factor: 11.025

7.  Genomic BLUP decoded: a look into the black box of genomic prediction.

Authors:  David Habier; Rohan L Fernando; Dorian J Garrick
Journal:  Genetics       Date:  2013-05-02       Impact factor: 4.562

8.  Prediction of genetic values of quantitative traits in plant breeding using pedigree and molecular markers.

Authors:  José Crossa; Gustavo de Los Campos; Paulino Pérez; Daniel Gianola; Juan Burgueño; José Luis Araus; Dan Makumbi; Ravi P Singh; Susanne Dreisigacker; Jianbing Yan; Vivi Arief; Marianne Banziger; Hans-Joachim Braun
Journal:  Genetics       Date:  2010-09-02       Impact factor: 4.562

9.  Superheat: An R package for creating beautiful and extendable heatmaps for visualizing complex data.

Authors:  Rebecca L Barter; Bin Yu
Journal:  J Comput Graph Stat       Date:  2018-08-20       Impact factor: 2.302

10.  Model training across multiple breeding cycles significantly improves genomic prediction accuracy in rye (Secale cereale L.).

Authors:  Hans-Jürgen Auinger; Manfred Schönleben; Christina Lehermeier; Malthe Schmidt; Viktor Korzun; Hartwig H Geiger; Hans-Peter Piepho; Andres Gordillo; Peer Wilde; Eva Bauer; Chris-Carolin Schön
Journal:  Theor Appl Genet       Date:  2016-08-01       Impact factor: 5.699

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