Background Genomic prediction faces two main statistical problems: multicollinearity and n¿«¿p (many fewer observations than predictor variables). Principal component (PC) analysis is a multivariate statistical method that is often used to address these problems. The objective of this study was to compare the performance of PC regression (PCR) for genomic prediction with that of a commonly used REML model with a genomic relationship matrix (GREML) and to investigate the full potential of PCR for genomic prediction. Methods The PCR model used either a common or a semi-supervised approach, where PC were selected based either on their eigenvalues (i.e. proportion of variance explained by SNP (single nucleotide polymorphism) genotypes) or on th...
Abstract Background The rapid adoption of genomic selection is due to two key factors: availability ...
BACKGROUND: Whole-genome sequence (WGS) data are increasingly available on large numbers of individu...
The size of the reference population is critical in order to improve the accuracy of genomic predict...
Background Genomic prediction faces two main statistical problems: multicollinearity and n¿«¿p (many...
Background: Genomic prediction faces two main statistical problems: multicollinearity and n ≪ p (man...
Background Genomic prediction faces two main statistical problems: multicollinearity and n¿«¿p (many...
During the last few years the idea of predicting quantitative traits and diseases based on genotypic...
Many statistical methods are available for genomic selection (GS) through which genetic values of qu...
One of the main issues in genomic selection was the huge unbalance between number of markers and phe...
Background The prediction accuracy of several linear genomic prediction models, which have previousl...
Genome-wide selection aims to predict genetic merit of individuals by estimating the effect of chrom...
Background The prediction accuracy of several linear genomic prediction models, which have previousl...
AbstractVarious models have been used for genomic prediction. Bayesian variable selection models oft...
International audienceAbstractBackgroundThe rapid adoption of genomic selection is due to two key fa...
Background: The rapid adoption of genomic selection is due to two key factors: availability of both ...
Abstract Background The rapid adoption of genomic selection is due to two key factors: availability ...
BACKGROUND: Whole-genome sequence (WGS) data are increasingly available on large numbers of individu...
The size of the reference population is critical in order to improve the accuracy of genomic predict...
Background Genomic prediction faces two main statistical problems: multicollinearity and n¿«¿p (many...
Background: Genomic prediction faces two main statistical problems: multicollinearity and n ≪ p (man...
Background Genomic prediction faces two main statistical problems: multicollinearity and n¿«¿p (many...
During the last few years the idea of predicting quantitative traits and diseases based on genotypic...
Many statistical methods are available for genomic selection (GS) through which genetic values of qu...
One of the main issues in genomic selection was the huge unbalance between number of markers and phe...
Background The prediction accuracy of several linear genomic prediction models, which have previousl...
Genome-wide selection aims to predict genetic merit of individuals by estimating the effect of chrom...
Background The prediction accuracy of several linear genomic prediction models, which have previousl...
AbstractVarious models have been used for genomic prediction. Bayesian variable selection models oft...
International audienceAbstractBackgroundThe rapid adoption of genomic selection is due to two key fa...
Background: The rapid adoption of genomic selection is due to two key factors: availability of both ...
Abstract Background The rapid adoption of genomic selection is due to two key factors: availability ...
BACKGROUND: Whole-genome sequence (WGS) data are increasingly available on large numbers of individu...
The size of the reference population is critical in order to improve the accuracy of genomic predict...