Abstract

Pepper (Capsicum spp.) fruit-related traits are critical determinants of quality. These traits are controlled by quantitatively inherited genes for which marker-assisted selection (MAS) has proven insufficiently effective. Here, we evaluated the potential of genomic selection, in which genotype and phenotype data for a training population are used to predict phenotypes of a test population with only genotype data, for predicting fruit-related traits in pepper. We measured five fruit traits (fruit length, fruit shape, fruit width, fruit weight, and pericarp thickness) in 351 accessions from the pepper core collection, including 229 Capsicum annuum, 48 Capsicum baccatum, 48 Capsicum chinense, 25 Capsicum frutescens, and 1 Capsicum chacoense in 4 years at two different locations and genotyped these accessions using genotyping-by-sequencing. Among the whole core collection, considering its genetic distance and sexual incompatibility, we only included 302 C. annum complex (229 C. annuum, 48 C. chinense, and 25 C. frutescens) into further analysis. We used phenotypic and genotypic data to investigate genomic prediction models, marker density, and effects of population structure. Among 10 genomic prediction methods tested, Reproducing Kernel Hilbert Space (RKHS) produced the highest prediction accuracies (measured as correlation between predicted values and observed values) across the traits, with accuracies of 0.75, 0.73, 0.84, 0.83, and 0.82 for fruit length, fruit shape, fruit width, fruit weight, and pericarp thickness, respectively. Overall, prediction accuracies were positively correlated with the number of markers for fruit traits. We tested our genomic selection models in a separate population of recombinant inbred lines derived from two parental lines from the core collection. Despite the large difference in genetic diversity between the training population and the test population, we obtained moderate prediction accuracies of 0.32, 0.34, 0.50, and 0.48 for fruit length, fruit shape, fruit width, and fruit weight, respectively. This use of genomic selection for fruit-related traits demonstrates the potential use of core collections and genomic selection as tools for crop improvement.

Highlights

  • Pepper (Capsicum spp.) is an important vegetable crop, consumed as a spice and as a fresh vegetable around the world

  • We evaluated the effects of trait architecture and heritability of fruit-related traits, population structure of the training population, and the number of markers on prediction accuracies

  • Phenotypic values for C. annuum were significantly different from those of the other three species groups (C. baccatum, C. chinense, and C. frutescens), indicating that population structure exists within the core collection (Figure 1)

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Summary

Introduction

Pepper (Capsicum spp.) is an important vegetable crop, consumed as a spice and as a fresh vegetable around the world It is an important source of nutrients such as vitamins C, E, and provitamin A (Palevitch and Craker, 1996). Many QTL analyses and genome-wide association studies (GWASs) of these fruit-related traits have been conducted and reported representative major QTLs for fruit shape like fs2.1, FrSHP2.1, and fs3.1 (Chaim et al, 2001; Rao et al, 2003; Zygier et al, 2005; Barchi et al, 2009; Borovsky and Paran, 2011; Mimura et al, 2012; Han et al, 2016; Hill et al, 2017; Chunthawodtiporn et al, 2018; Colonna et al, 2019) These studies have focused only on identifying the variants linked to theses quantitative traits but not on applying those variants for variety improvement

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