We compared the performance of linear (GBLUP, BayesB, and elastic net) methods to a nonparametric tree-based ensemble (gradient boosting machine) method for genomic prediction of complex traits in mice. The dataset used contained genotypes for 50,112 SNP markers and phenotypes for 835 animals from 6 generations. Traits analyzed were bone mineral density, body weight at 10, 15, and 20 weeks, fat percentage, circulating cholesterol, glucose, insulin, triglycerides, and urine creatinine. The youngest generation was used as a validation subset, and predictions were based on all older generations. Model performance was evaluated by comparing predictions for animals in the validation subset against their adjusted phenotypes. Linear models outperf...
Predicting phenotypes using genome-wide genetic variation and gene expression data is useful in seve...
<p>The analysis of large genomic data is hampered by issues such as a small number of observations a...
<p>Performance is measured by RMSE difference with respect to BSLMM, where a positive value indicate...
We compared the performance of linear (GBLUP, BayesB, and elastic net) methods to a nonparametric tr...
We compared the performance of linear (GBLUP, BayesB, and elastic net) methods to a nonparametric tr...
Recent developments allowed generating multiple high-quality 'omics' data that could increase the pr...
Abstract Background The availability of high-density panels of SNP markers has opened new perspectiv...
Abstract Background Quantitative phenotypes emerge everywhere in systems biology and biomedicine due...
Whole-genome genetic association studies in outbred mouse populations represent a novel approach to ...
Abstract Background Genomic selection uses dense single nucleotide polymorphisms (SNP) markers to pr...
The analysis of large genomic data is hampered by issues such as a small number of observations and ...
Recent work has suggested that the performance of prediction models for complex traits may depend on...
The usefulness of genomic prediction in crop and livestock breeding programs has prompted efforts to...
The usefulness of Genomic Prediction (GP) in crop and livestock breeding programs has led to efforts...
Polygenic risk scores (PRS) are commonly used to quantify the inherited susceptibility for a trait, ...
Predicting phenotypes using genome-wide genetic variation and gene expression data is useful in seve...
<p>The analysis of large genomic data is hampered by issues such as a small number of observations a...
<p>Performance is measured by RMSE difference with respect to BSLMM, where a positive value indicate...
We compared the performance of linear (GBLUP, BayesB, and elastic net) methods to a nonparametric tr...
We compared the performance of linear (GBLUP, BayesB, and elastic net) methods to a nonparametric tr...
Recent developments allowed generating multiple high-quality 'omics' data that could increase the pr...
Abstract Background The availability of high-density panels of SNP markers has opened new perspectiv...
Abstract Background Quantitative phenotypes emerge everywhere in systems biology and biomedicine due...
Whole-genome genetic association studies in outbred mouse populations represent a novel approach to ...
Abstract Background Genomic selection uses dense single nucleotide polymorphisms (SNP) markers to pr...
The analysis of large genomic data is hampered by issues such as a small number of observations and ...
Recent work has suggested that the performance of prediction models for complex traits may depend on...
The usefulness of genomic prediction in crop and livestock breeding programs has prompted efforts to...
The usefulness of Genomic Prediction (GP) in crop and livestock breeding programs has led to efforts...
Polygenic risk scores (PRS) are commonly used to quantify the inherited susceptibility for a trait, ...
Predicting phenotypes using genome-wide genetic variation and gene expression data is useful in seve...
<p>The analysis of large genomic data is hampered by issues such as a small number of observations a...
<p>Performance is measured by RMSE difference with respect to BSLMM, where a positive value indicate...