Key message We propose the utilisation of environmental covariates in random coefficient models to predict the genotype performances in new locations. Multi-environment trials (MET) are conducted to assess the performance of a set of genotypes in a target population of environments. From a grower's perspective, MET results must provide high accuracy and precision for predictions of genotype performance in new locations, i.e. the grower's locations, which hardly ever coincide with the locations at which the trials were conducted. Linear mixed modelling can provide predictions for new locations. Moreover, the precision of the predictions is of primary concern and should be assessed. Besides, the precision can be improved when auxiliary inform...
Modeling of cultivar × trial effects for multi-environment trials (METs) within a mixed model framew...
Wheat (Triticum aestivum L.) breeding programs test experimental lines in multiple locations over mu...
ABSTRACT.Genomic selection (GS) has successfully been used in plant breeding to improve selection ef...
Key message We propose the utilisation of environmental covariates in random coefficient models to p...
Wheat ( L.) breeding programs test experimental lines in multiple locations over multiple years to g...
In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess the intensi...
Context Evaluating the genotype (G) by management practice (M) interaction in agronomic experimentat...
Abstract In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess t...
International audienceGenotype-environment interaction has been analyzed in a winter-wheat breeding ...
International audiencePlant breeders evaluate their selection candidates in multi-environment trials...
Multienvironment trials (METs) are used to investigate the performance of crop genotypes. To efficie...
Genomic selection (GS) has the potential to improve the selection gain for complex traits in crop br...
Key message: We propose new methods to predict genotype × environment interaction by selecting relev...
Book of abstracts, ISBN: 978-2-9563873-0-5, EAN: 9782956387305Genomic prediction (GP) models can be ...
The main objective of plant breeders is to create and identify genotypes that are well-adapted to th...
Modeling of cultivar × trial effects for multi-environment trials (METs) within a mixed model framew...
Wheat (Triticum aestivum L.) breeding programs test experimental lines in multiple locations over mu...
ABSTRACT.Genomic selection (GS) has successfully been used in plant breeding to improve selection ef...
Key message We propose the utilisation of environmental covariates in random coefficient models to p...
Wheat ( L.) breeding programs test experimental lines in multiple locations over multiple years to g...
In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess the intensi...
Context Evaluating the genotype (G) by management practice (M) interaction in agronomic experimentat...
Abstract In plant breeding, one of the main purpose of multi-environment trial (MET) is to assess t...
International audienceGenotype-environment interaction has been analyzed in a winter-wheat breeding ...
International audiencePlant breeders evaluate their selection candidates in multi-environment trials...
Multienvironment trials (METs) are used to investigate the performance of crop genotypes. To efficie...
Genomic selection (GS) has the potential to improve the selection gain for complex traits in crop br...
Key message: We propose new methods to predict genotype × environment interaction by selecting relev...
Book of abstracts, ISBN: 978-2-9563873-0-5, EAN: 9782956387305Genomic prediction (GP) models can be ...
The main objective of plant breeders is to create and identify genotypes that are well-adapted to th...
Modeling of cultivar × trial effects for multi-environment trials (METs) within a mixed model framew...
Wheat (Triticum aestivum L.) breeding programs test experimental lines in multiple locations over mu...
ABSTRACT.Genomic selection (GS) has successfully been used in plant breeding to improve selection ef...