Genomic selection for genotype performance and environmental stability in Coffea canephora

Author:

Adunola Paul1ORCID,Ferrão Maria Amélia G23,Ferrão Romário G24,da Fonseca Aymbire F A23,Volpi Paulo S2,Comério Marcone2,Verdin Abraão C2ORCID,Munoz Patricio R1ORCID,Ferrão Luís Felipe V1ORCID

Affiliation:

1. Blueberry Breeding and Genomics Lab, Horticultural Sciences Department, University of Florida , Gainesville, FL 32611 , USA

2. Instituto Capixaba de Pesquisa, Assistência Técnica e Extensão Rural - Incaper , Vitoria, ES, 29052-010 , Brazil

3. Empresa Brasileira de Pesquisa Agropecuária—Embrapa Café , Brasília, DF, 707770-901 , Brazil

4. Multivix group , Vitoria, ES, 29075-080 , Brazil

Abstract

Abstract Coffee is one of the most important beverages and trade products in the world. Among the multiple research initiatives focused on coffee sustainability, plant breeding provides the best means to increase phenotypic performance and release cultivars that could meet market demands. Since coffee is so well adapted to a diversity of tropical environments, an important question for those confronting the problem of evaluating phenotypic performance is the relevance of genotype-by-environment (GEI) interaction. As a perennial crop with a long juvenile phase, coffee is subjected to significant temporal and spatial variations. Such facts not only hinder the selection of promising materials, but also cause a majority of complaints among growers. In this study, we hypothesized that trait stability in coffee is genetically controlled, and therefore is predictable using molecular information. To test it, we used genome-based methods to predict stability metrics computed with the primary goal of selecting coffee genotypes that combine high phenotypic performance and stability for target environments. Using two populations of Coffea canephora, evaluated across multiple years and locations, our contribution is three-fold: (i) first, we demonstrated that the number of harvest evaluations may be reduced leading to accelerated implementation of molecular breeding; (ii) we showed that stability metrics are predictable; and finally, (iii) both stable and high-performance genotypes can be simultaneously predicted and selected. While this research was carried out on representative environments for coffee production with substantial crossover in genotypic ranking, we anticipate that genomic prediction can be an efficient tool to select coffee genotypes that combine high performance and stability across years and the target locations here evaluated.

Publisher

Oxford University Press (OUP)

Subject

Genetics (clinical),Genetics,Molecular Biology

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