Best linear unbiased prediction (BLUP) has been used to estimate the fixed effects and random effects of complex traits. Traditionally, genomic relationship matrix-based (GRM) and random marker-based BLUP analyses are prevalent to estimate the genetic values of complex traits. We used three methods: GRM-based prediction (G-BLUP), random marker-based prediction using an identity matrix (so-called single-nucleotide polymorphism [SNP]-BLUP), and SNP-SNP variance-covariance matrix (so-called SNP-GBLUP). We used 35,675 SNPs and R package “rrBLUP ” for the BLUP analysis. The SNP-SNP relationship matrix was calculated using the GRM and Sherman-Morrison-Woodbury lemma. The SNP-GBLUP result was very similar to G-BLUP in the prediction of genetic val...
Genomic data provide a valuable source of information for modeling covariance structures, allowing a...
<p>N-FHS = Number of records from Framingham, N-GEN = Number of records from GENEVA. G-BLUP uses 400...
In genomic prediction, common analysis methods rely on a linear mixed-model framework to estimate SN...
With the availability of high density whole-genome single nucleotide polymorphism chips, genomic sel...
International audienceAbstractBackgroundSingle-step genomic best linear unbiased prediction (BLUP) e...
Dense marker genotypes allow the construction of the realized relationship matrix between individual...
Genomic best linear unbiased prediction (BLUP) is a statistical method that uses relationships betwe...
<div><p>Despite important advances from Genome Wide Association Studies (GWAS), for most complex hum...
<div><p>We established a genomic model of quantitative trait with genomic additive and dominance rel...
We established a genomic model of quantitative trait with genomic additive and dominance relationshi...
AbstractVarious models have been used for genomic prediction. Bayesian variable selection models oft...
Non-additive genetic variation is usually ignored when genome-wide markers are used to study the gen...
Non-additive genetic variation is usually ignored when genome-wide markers are used to study the gen...
Regular mixed model methodology requires inversion of the variance-covariance matrix of the random e...
The study of genetic architecture of complex traits has been dramatically influenced by implementing...
Genomic data provide a valuable source of information for modeling covariance structures, allowing a...
<p>N-FHS = Number of records from Framingham, N-GEN = Number of records from GENEVA. G-BLUP uses 400...
In genomic prediction, common analysis methods rely on a linear mixed-model framework to estimate SN...
With the availability of high density whole-genome single nucleotide polymorphism chips, genomic sel...
International audienceAbstractBackgroundSingle-step genomic best linear unbiased prediction (BLUP) e...
Dense marker genotypes allow the construction of the realized relationship matrix between individual...
Genomic best linear unbiased prediction (BLUP) is a statistical method that uses relationships betwe...
<div><p>Despite important advances from Genome Wide Association Studies (GWAS), for most complex hum...
<div><p>We established a genomic model of quantitative trait with genomic additive and dominance rel...
We established a genomic model of quantitative trait with genomic additive and dominance relationshi...
AbstractVarious models have been used for genomic prediction. Bayesian variable selection models oft...
Non-additive genetic variation is usually ignored when genome-wide markers are used to study the gen...
Non-additive genetic variation is usually ignored when genome-wide markers are used to study the gen...
Regular mixed model methodology requires inversion of the variance-covariance matrix of the random e...
The study of genetic architecture of complex traits has been dramatically influenced by implementing...
Genomic data provide a valuable source of information for modeling covariance structures, allowing a...
<p>N-FHS = Number of records from Framingham, N-GEN = Number of records from GENEVA. G-BLUP uses 400...
In genomic prediction, common analysis methods rely on a linear mixed-model framework to estimate SN...