Abstract

Plant breeders evaluate their selection candidates in multi-environment trials to estimate their performance in contrasted environments. The number of genotype/environment combinations that can be evaluated is strongly constrained by phenotyping costs and by the necessity to limit the evaluation to a few years. Genomic prediction models taking the genotype by environment interactions (GEI) into account can help breeders identify combination of (possibly unphenotyped) genotypes and target environments optimizing the traits under selection. We propose a new prediction approach in which a secondary trait available on both the calibration and the test sets is introduced as an environment specific covariate in the prediction model (trait-assisted prediction, TAP). The originality of this approach is that the phenotyping of the test set for the secondary trait is replaced by crop-growth model (CGM) predictions. So there is no need to sow and phenotype the test set in each environment which is a clear advantage over the classical trait-assisted prediction models. The interest of this approach, called CGM-TAP, is highest if the secondary trait is easy to predict with CGM and strongly related to the target trait in each environment (and thus capturing GEI). We tested CGM-TAP on bread wheat with heading date as secondary trait and grain yield as target trait. Simple CGM-TAP model with a linear effect of heading date resulted in high predictive abilities in three prediction scenarios (sparse testing, or prediction of new genotypes or of new environments). It increased predictive abilities of all reference GEI models, even those involving sophisticated environmental covariates.

Highlights

  • The objective of plant breeders is to develop varieties well adapted to target environments

  • heading date (HD) was constraint to 15 days in Vra13LN whereas it covered around 30 days in other environments (Gre14WD, Coi12WW)

  • With hij the heading date of variety i in environment j. hij was observed for the calibration varieties and predicted for the test set. αjis the effect of HD on grain yield (GY) in environment j

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Summary

Introduction

The objective of plant breeders is to develop varieties well adapted to target environments. For this purpose, they evaluate each year candidate varieties in multi-environment trials (MET). The environments in which the varieties are evaluated can be quite different from the target environments, because of the significant variation between years. Only a limited number of varieties are evaluated each year to control the phenotyping costs. All these constraints are reducing the chance of success as they limit the number of lines that can be evaluated in the target environments

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