Abstract

Improving the efficiency of selection in conventional crossbreeding is a major priority in banana ( spp.) breeding. Routine application of classical marker assisted selection (MAS) is lagging in banana due to limitations in MAS tools. Genomic selection (GS) based on genomic prediction models can address some limitations of classical MAS, but the use of GS in banana has not been reported to date. The aim of this study was to evaluate the predictive ability of six genomic prediction models for 15 traits in a multi-ploidy training population. The population consisted of 307 banana genotypes phenotyped under low and high input field management conditions for two crop cycles. The single nucleotide polymorphism (SNP) markers used to fit the models were obtained from genotyping by sequencing (GBS) data. Models that account for additive genetic effects provided better predictions with 12 out of 15 traits. The performance of BayesB model was superior to other models particularly on fruit filling and fruit bunch traits. Models that included averaged environment data were more robust in trait prediction even with a reduced number of markers. Accounting for allele dosage in SNP markers (AD-SNP) reduced predictive ability relative to traditional bi-allelic SNP (BA-SNP), but the prediction trend remained the same across traits. The high predictive values (0.47- 0.75) of fruit filling and fruit bunch traits show the potential of genomic prediction to increase selection efficiency in banana breeding.

Highlights

  • Improving the efficiency of selection in conventional crossbreeding is a major priority in banana (Musa spp.) breeding

  • The discovery of single nucleotide polymorphism (SNP) markers from genotyping by sequencing (GBS) reads for the training population was based on the latest publicly available version of the double haploid Musa acuminata cv

  • To account for allele dosage in genotypes of different ploidy, a workflow was developed for the analysis of sequence data and Genome analysis tool kit (GATK), UnifiedGenotyper was used as SNP caller (Supplemental Fig. S1)

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Summary

Introduction

Improving the efficiency of selection in conventional crossbreeding is a major priority in banana (Musa spp.) breeding. The high predictive values (0.47– 0.75) of fruit filling and fruit bunch traits show the potential of genomic prediction to increase selection efficiency in banana breeding. The triploid nature of cultivated bananas such as the East African highland banana (EAHB), impedes the breeding process due to low fertility or complete sterility of most cultivars. To overcome this problem, breeders have to develop intermediary improved diploids and tetraploids, which serve as parents to generate secondary triploids that are resistant and high yielding. Marker assisted selection has been successfully implemented where traits are controlled by a few QTL with major genetic effects (Asíns, 2002; Collard and Mackill, 2008). Even if it would be possible to identify small-effect QTL, their introgression into active breeding programs would be extremely challenging

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