Genomic prediction has been widely used in multiple areas and various genomic prediction methods have been developed. The majority of these methods, however, focus on statistical properties and ignore the abundant useful biological information like genome annotation or previously discovered causal variants. Therefore, to improve prediction performance, several methods have been developed to incorporate biological information into genomic prediction, mostly in single-trait analysis. A commonly used method to incorporate biological information is allocating molecular markers into different classes based on the biological information and assigning separate priors to molecular markers in different classes. It has been shown that such methods ca...
Genome-wide prediction of discrete traits using bayesian regressions and machine learning Oscar Gonz...
Abstract Background In genomic models that assign an individual variance to each marker, the contrib...
It is now widespread in livestock and plant breeding to use genotyping data to predict phenotypes wi...
Genomic prediction has been widely used in multiple areas and various genomic prediction methods hav...
Bayesian multiple-regression methods incorporating different mixture priors for marker effects are w...
Bayesian multiple-regression methods incorporating different mixture priors for marker effects are u...
Genomic prediction and quantitative trait loci (QTL) mapping typically analyze one trait at a time b...
Not AvailableWe evaluated the performances of three BLUP and five Bayesian methods for genomic predi...
Genomic prediction involves using high-density marker genotypes to characterize the impact on perfor...
Bayesian regression methods that incorporate different mixture priors for marker effects are used in...
Genomic selection has become a useful tool for animal and plant breeding. Currently, genomic evaluat...
Abstract Background Two Bayesian methods, BayesCπ and BayesDπ, were developed for genomic prediction...
The prediction of complex or quantitative traits from single nucleotide polymorphism (SNP) genotypes...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
Accurate prediction of an individual's phenotype from their DNA sequence is one of the great promise...
Genome-wide prediction of discrete traits using bayesian regressions and machine learning Oscar Gonz...
Abstract Background In genomic models that assign an individual variance to each marker, the contrib...
It is now widespread in livestock and plant breeding to use genotyping data to predict phenotypes wi...
Genomic prediction has been widely used in multiple areas and various genomic prediction methods hav...
Bayesian multiple-regression methods incorporating different mixture priors for marker effects are w...
Bayesian multiple-regression methods incorporating different mixture priors for marker effects are u...
Genomic prediction and quantitative trait loci (QTL) mapping typically analyze one trait at a time b...
Not AvailableWe evaluated the performances of three BLUP and five Bayesian methods for genomic predi...
Genomic prediction involves using high-density marker genotypes to characterize the impact on perfor...
Bayesian regression methods that incorporate different mixture priors for marker effects are used in...
Genomic selection has become a useful tool for animal and plant breeding. Currently, genomic evaluat...
Abstract Background Two Bayesian methods, BayesCπ and BayesDπ, were developed for genomic prediction...
The prediction of complex or quantitative traits from single nucleotide polymorphism (SNP) genotypes...
Predicting organismal phenotypes from genotype data is important for preventive and personalized med...
Accurate prediction of an individual's phenotype from their DNA sequence is one of the great promise...
Genome-wide prediction of discrete traits using bayesian regressions and machine learning Oscar Gonz...
Abstract Background In genomic models that assign an individual variance to each marker, the contrib...
It is now widespread in livestock and plant breeding to use genotyping data to predict phenotypes wi...