Abstract Background For marker effect models and genomic animal models, computational requirements increase with the number of loci and the number of genotyped individuals, respectively. In the latter case, the inverse genomic relationship matrix (GRM) is typically needed, which is computationally demanding to compute for large datasets. Thus, there is a great need for dimensionality-reduction methods that can analyze massive genomic data. For this purpose, we developed reduced-dimension singular value decomposition (SVD) based models for genomic prediction. Methods Fast SVD is performed by analyzing different chromosomes/genome segments in parallel and/or by restricting SVD to a limited core of genotyped individuals, producing chromosome- ...
The purpose of this study was to evaluate properties of the inverse of the genomic relationship matr...
Dimensionality reduction is a data transformation technique widely used in various fields of genomic...
Genomic malformations are believed to be the driving factors of many diseases. Therefore, understand...
Additional file 1. How to do reduced-dimension approximation of a larger genomic data set from a spe...
Additional file 2. Combining reduced-dimension genomic data from multiple chromosomes in computation...
Abstract Background Non-linear Bayesian genomic prediction models such as BayesA/B/C/R involve itera...
Single-step genomic predictions need the inverse of the part of the addi-tive relationship matrix be...
The prediction of complex or quantitative traits from single nucleotide polymorphism (SNP) genotypes...
Over the last few decades, DNA sequencing has developed from costing billions of dollars to get the ...
The rapid development of molecular markers and sequencing technologies has made it possible to use g...
Single-step genomic predictions need the inverse of the part of the additive relationship matrix bet...
Genome-wide selection aims to predict genetic merit of individuals by estimating the effect of chrom...
The availability of whole genome sequence data presents an opportunity to improve the accuracy of ge...
In the field of genomic prediction, genotypes of animals or plants are used to predict either phenot...
BACKGROUND: Whole-genome sequence (WGS) data are increasingly available on large numbers of individu...
The purpose of this study was to evaluate properties of the inverse of the genomic relationship matr...
Dimensionality reduction is a data transformation technique widely used in various fields of genomic...
Genomic malformations are believed to be the driving factors of many diseases. Therefore, understand...
Additional file 1. How to do reduced-dimension approximation of a larger genomic data set from a spe...
Additional file 2. Combining reduced-dimension genomic data from multiple chromosomes in computation...
Abstract Background Non-linear Bayesian genomic prediction models such as BayesA/B/C/R involve itera...
Single-step genomic predictions need the inverse of the part of the addi-tive relationship matrix be...
The prediction of complex or quantitative traits from single nucleotide polymorphism (SNP) genotypes...
Over the last few decades, DNA sequencing has developed from costing billions of dollars to get the ...
The rapid development of molecular markers and sequencing technologies has made it possible to use g...
Single-step genomic predictions need the inverse of the part of the additive relationship matrix bet...
Genome-wide selection aims to predict genetic merit of individuals by estimating the effect of chrom...
The availability of whole genome sequence data presents an opportunity to improve the accuracy of ge...
In the field of genomic prediction, genotypes of animals or plants are used to predict either phenot...
BACKGROUND: Whole-genome sequence (WGS) data are increasingly available on large numbers of individu...
The purpose of this study was to evaluate properties of the inverse of the genomic relationship matr...
Dimensionality reduction is a data transformation technique widely used in various fields of genomic...
Genomic malformations are believed to be the driving factors of many diseases. Therefore, understand...