Abstract

Key messageThe phenomic predictive ability depends on the genetic architecture of the target trait, being high for complex traits and low for traits with major QTL.Genomic selection is a powerful tool to assist breeding of complex traits, but a limitation is the costs required for genotyping. Recently, phenomic selection has been suggested, which uses spectral data instead of molecular markers as predictors. It was shown to be competitive with genomic prediction, as it achieved predictive abilities as high or even higher than its genomic counterpart. The objective of this study was to evaluate the performance of phenomic prediction for triticale and the dependency of the predictive ability on the genetic architecture of the target trait. We found that for traits with a complex genetic architecture, like grain yield, phenomic prediction with NIRS data as predictors achieved high predictive abilities and performed better than genomic prediction. By contrast, for mono- or oligogenic traits, for example, yellow rust, marker-based approaches achieved high predictive abilities, while those of phenomic prediction were very low. Compared with molecular markers, the predictive ability obtained using NIRS data was more robust to varying degrees of genetic relatedness between the training and prediction set. Moreover, for grain yield, smaller training sets were required to achieve a similar predictive ability for phenomic prediction than for genomic prediction. In addition, our results illustrate the potential of using field-based spectral data for phenomic prediction. Overall, our result confirmed phenomic prediction as an efficient approach to improve the selection gain for complex traits in plant breeding.

Highlights

  • Selection approaches in plant breeding have seen a rapid development with the decreasing costs of molecular marker data (Varshney et al 2020)

  • All lines were evaluated for grain yield, thousand-kernel weight, plant height, powdery mildew, and yellow rust in multi-environment field trials (Table S1, S2)

  • Discriminant analysis of principle components based on the adjusted near-infrared reflectance spectroscopy (NIRS) best linear unbiased estimates (BLUEs) or molecular marker data showed a high explained variance of the first two discriminant functions

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Summary

Introduction

Selection approaches in plant breeding have seen a rapid development with the decreasing costs of molecular marker data (Varshney et al 2020). Phenomic selection has been suggested as an alternative to genomic selection in plant breeding (Rincent et al 2018). Rincent et al (2018) used near-infrared reflectance spectroscopy (NIRS) data as predictors and reported phenomic predictive abilities as high as those obtained with marker data. Phenomic prediction based on NIRS or field-based hyperspectral data was reported for different crops and traits and shown to achieve promising predictive abilities, for example, in soybean (Parmley et al 2019), maize (Lane et al 2020), wheat (Rincent et al 2018; Krause et al 2019), rye (Galán et al 2020, 2021), and sugarcane (Gonçalves et al 2021)

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