Abstract Background The use of multiple genetic backgrounds across years is appealing for genomic prediction (GP) because past years’ data provide valuable information on marker effects. Nonetheless, single-year GP models are less complex and computationally less demanding than multi-year GP models. In devising a suitable analysis strategy for multi-year data, we may exploit the fact that even if there is no replication of genotypes across years, there is plenty of replication at the level of marker loci. Our principal aim was to evaluate different GP approaches to simultaneously model genotype-by-year (GY) effects and breeding values using multi-year data in terms of predictive ability. The models were evaluated under different scenarios r...
A traditional wheat breeding program normally takes 7 to 12 years to develop a new cultivar to be el...
Implementing genomic-based prediction models in genomic selection requires an understanding of the m...
Joint modeling of correlated multi-environment and multi-harvest data of perennial crop species may ...
Genomic selection (GS) has been implemented in animal and plant species, and is regarded as a useful...
Genomic predictions or genomic selection (GS) was proposed to overcome a number of challenges in app...
Genomic Selection (GS) is a method in plant breeding to predict the genetic value of untested lines ...
The identification of elite individuals is a critical component of most breeding programs. However, ...
Efficient genomic selection in animals or crops requires the accurate prediction of the agronomic pe...
With marker and phenotype information from observed populations, genomic selection (GS) can be used ...
Genomic selection (GS) for crop improvement makes use of genome-wide molecular marker information av...
Genomic selection in crop breeding introduces modeling challenges not found in animal studies. These...
Genomic selection has been extensively implemented in plant breeding schemes. Genomic selection inco...
Genomic selection in crop breeding introduces modeling challenges not found in animal studies. These...
Parental selection is at the beginning and contributes significantly to the success of any breeding ...
Abstract Background Genomic selection has the potential to accelerate genetic gain in perennial ryeg...
A traditional wheat breeding program normally takes 7 to 12 years to develop a new cultivar to be el...
Implementing genomic-based prediction models in genomic selection requires an understanding of the m...
Joint modeling of correlated multi-environment and multi-harvest data of perennial crop species may ...
Genomic selection (GS) has been implemented in animal and plant species, and is regarded as a useful...
Genomic predictions or genomic selection (GS) was proposed to overcome a number of challenges in app...
Genomic Selection (GS) is a method in plant breeding to predict the genetic value of untested lines ...
The identification of elite individuals is a critical component of most breeding programs. However, ...
Efficient genomic selection in animals or crops requires the accurate prediction of the agronomic pe...
With marker and phenotype information from observed populations, genomic selection (GS) can be used ...
Genomic selection (GS) for crop improvement makes use of genome-wide molecular marker information av...
Genomic selection in crop breeding introduces modeling challenges not found in animal studies. These...
Genomic selection has been extensively implemented in plant breeding schemes. Genomic selection inco...
Genomic selection in crop breeding introduces modeling challenges not found in animal studies. These...
Parental selection is at the beginning and contributes significantly to the success of any breeding ...
Abstract Background Genomic selection has the potential to accelerate genetic gain in perennial ryeg...
A traditional wheat breeding program normally takes 7 to 12 years to develop a new cultivar to be el...
Implementing genomic-based prediction models in genomic selection requires an understanding of the m...
Joint modeling of correlated multi-environment and multi-harvest data of perennial crop species may ...