Combining genetic resources and elite material populations to improve the accuracy of genomic prediction in apple

Author:

Cazenave Xabi1,Petit Bernard1,Lateur Marc2,Nybom Hilde3ORCID,Sedlak Jiri4ORCID,Tartarini Stefano5ORCID,Laurens François1ORCID,Durel Charles-Eric1ORCID,Muranty Hélène1ORCID

Affiliation:

1. Univ Angers, INRAE, Institut Agro, IRHS, SFR QuaSaV, F-49000 Angers, France

2. Plant Breeding and Biodiversity, Centre Wallon de Recherches Agronomiques, Gembloux, Belgium

3. Department of Plant Breeding, Swedish University of Agricultural Sciences, Kristianstad, Sweden

4. Výzkumný a Šlechtitelský ústav Ovocnářský Holovousy s.r.o, Holovousy, Czech Republic

5. Department of Agricultural Sciences, University of Bologna, Bologna, Italy

Abstract

Abstract Genomic selection is an attractive strategy for apple breeding that could reduce the length of breeding cycles. A possible limitation to the practical implementation of this approach lies in the creation of a training set large and diverse enough to ensure accurate predictions. In this study, we investigated the potential of combining two available populations, i.e., genetic resources and elite material, in order to obtain a large training set with a high genetic diversity. We compared the predictive ability of genomic predictions within-population, across-population or when combining both populations, and tested a model accounting for population-specific marker effects in this last case. The obtained predictive abilities were moderate to high according to the studied trait and small increases in predictive ability could be obtained for some traits when the two populations were combined into a unique training set. We also investigated the potential of such a training set to predict hybrids resulting from crosses between the two populations, with a focus on the method to design the training set and the best proportion of each population to optimize predictions. The measured predictive abilities were very similar for all the proportions, except for the extreme cases where only one of the two populations was used in the training set, in which case predictive abilities could be lower than when using both populations. Using an optimization algorithm to choose the genotypes in the training set also led to higher predictive abilities than when the genotypes were chosen at random. Our results provide guidelines to initiate breeding programs that use genomic selection when the implementation of the training set is a limitation.

Funder

INRAE metaprogram SelGen

GdivSelgen

French Region Pays de la Loire, Angers Loire Métropole and the European Regional Development Fund

Commission of the European Communities

FruitBreedomics project

Horizon 2020 Framework Program of the European Union

Publisher

Oxford University Press (OUP)

Subject

Genetics (clinical),Genetics,Molecular Biology

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