Abstract

Key messageComplementing or replacing genetic markers with transcriptomic data and use of reproducing kernel Hilbert space regression based on Gaussian kernels increases hybrid predictionaccuracies for complex agronomic traits in canola.In plant breeding, hybrids gained particular importance due to heterosis, the superior performance of offspring compared to their inbred parents. Since the development of new top performing hybrids requires labour-intensive and costly breeding programmes, including testing of large numbers of experimental hybrids, the prediction of hybrid performance is of utmost interest to plant breeders. In this study, we tested the effectiveness of hybrid prediction models in spring-type oilseed rape (Brassica napus L./canola) employing different omics profiles, individually and in combination. To this end, a population of 950 F1 hybrids was evaluated for seed yield and six other agronomically relevant traits in commercial field trials at several locations throughout Europe. A subset of these hybrids was also evaluated in a climatized glasshouse regarding early biomass production. For each of the 477 parental rapeseed lines, 13,201 single nucleotide polymorphisms (SNPs), 154 primary metabolites, and 19,479 transcripts were determined and used as predictive variables. Both, SNP markers and transcripts, effectively predict hybrid performance using (genomic) best linear unbiased prediction models (gBLUP). Compared to models using pure genetic markers, models incorporating transcriptome data resulted in significantly higher prediction accuracies for five out of seven agronomic traits, indicating that transcripts carry important information beyond genomic data. Notably, reproducing kernel Hilbert space regression based on Gaussian kernels significantly exceeded the predictive abilities of gBLUP models for six of the seven agronomic traits, demonstrating its potential for implementation in future canola breeding programmes.

Highlights

  • Hybrid varieties are key to crop improvement and future plant breeding strategies due to their outstanding agronomic features, a biological phenomenon known as heterosis

  • We focused on the following questions: (1) can hybrid performance in the field be effectively predicted using parental line genotype information, (2) can other parental omics data sets collected in controlled conditions be utilised to effectively predict hybrid performance and how do their prediction accuracies compare with that of genetic markers, (3) can prediction accuracy be increased by stacking multiple omics sets and which combinations are the most promising for which set of traits, (4) can per se line and hybrid performance in the glasshouse be effectively predicted using the omics data sets, and (5) can higher prediction accuracies be achieved for agronomic traits in canola by employing reproducing kernel Hilbert space regression models compared to Genomic best linear unbiased prediction (gBLUP)?

  • We evaluated the benefits of combining large parental omics datasets for the prediction of hybrid performance using different statistical models in spring-type oilseed rape from an elite breeding programme, providing important breeding strategy information

Read more

Summary

Introduction

Hybrid varieties are key to crop improvement and future plant breeding strategies due to their outstanding agronomic features, a biological phenomenon known as heterosis. Commercial varieties of oilseed rape grown worldwide are predominantly hybrids (Stahl et al 2017; Liu et al 2018a). In comparison with other important hybrid crops like maize, canola displays relatively low levels of F1 heterosis (Radoev et al 2008). This can be attributed to the fact that hybrid breeding in rapeseed began only a few decades ago after suitable hybrid seed production systems were developed, and large and well-defined heterotic pools have not been established yet (Melchinger and Gumber 1998; Kole 2007). Several attempts were made to broaden the genetic diversity and to develop heterotic gene

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call