Background Estimates of dominance variance in dairy cattle based on pedigree data vary considerably across traits and amount to up to 50% of the total genetic variance for conformation traits and up to 43% for milk production traits. Using bovine SNP (single nucleotide polymorphism) genotypes, dominance variance can be estimated both at the marker level and at the animal level using genomic dominance effect relationship matrices. Yield deviations of high-density genotyped Fleckvieh cows were used to assess cross-validation accuracy of genomic predictions with additive and dominance models. The potential use of dominance variance in planned matings was also investigated. Results Variance components of nine milk production and conformation tr...
Background: Genomic selection estimates genetic merit based on dense SNP (single nucleotide polymorp...
The reliability of genomic evaluations depends on the proportion of genetic variation explained by t...
International audienceAbstractBackgroundA better understanding of non-additive variance could lead t...
Estimates of dominance variance in dairy cattle based on pedigree data vary considerably across trai...
Background: Dominance effects may contribute to genetic variation of complex traits in dairy cattle,...
<div><p>Dominance may be an important source of non-additive genetic variance for many traits of dai...
peer reviewedCurrent genetic evaluations ignore dominance effects. However, their incorporation migh...
First lactation milk, fat, and protein yields for first lactations of 8044 Holstein cows in New York...
Exploring dominance variance and loci contributing to dominance variation is important to understand...
Although genome-wide association and genomic selection studies have primarily focused on additive ef...
peer reviewedNonadditive genetic effects are currently ignored in national genetic evaluations of fa...
Estimates of dominance and additive variances were obtained for 14 linear traits. The data included ...
Estimates of dominance variance for growth traits in beef cattle based on pedigree data vary conside...
Nonadditive genetic effects are currently ignored in national genetic evaluations of farm animals be...
Milk yield, fat yield, and fat percentage during the first three lactations were studied using New Y...
Background: Genomic selection estimates genetic merit based on dense SNP (single nucleotide polymorp...
The reliability of genomic evaluations depends on the proportion of genetic variation explained by t...
International audienceAbstractBackgroundA better understanding of non-additive variance could lead t...
Estimates of dominance variance in dairy cattle based on pedigree data vary considerably across trai...
Background: Dominance effects may contribute to genetic variation of complex traits in dairy cattle,...
<div><p>Dominance may be an important source of non-additive genetic variance for many traits of dai...
peer reviewedCurrent genetic evaluations ignore dominance effects. However, their incorporation migh...
First lactation milk, fat, and protein yields for first lactations of 8044 Holstein cows in New York...
Exploring dominance variance and loci contributing to dominance variation is important to understand...
Although genome-wide association and genomic selection studies have primarily focused on additive ef...
peer reviewedNonadditive genetic effects are currently ignored in national genetic evaluations of fa...
Estimates of dominance and additive variances were obtained for 14 linear traits. The data included ...
Estimates of dominance variance for growth traits in beef cattle based on pedigree data vary conside...
Nonadditive genetic effects are currently ignored in national genetic evaluations of farm animals be...
Milk yield, fat yield, and fat percentage during the first three lactations were studied using New Y...
Background: Genomic selection estimates genetic merit based on dense SNP (single nucleotide polymorp...
The reliability of genomic evaluations depends on the proportion of genetic variation explained by t...
International audienceAbstractBackgroundA better understanding of non-additive variance could lead t...