Supplementary data to publication “an approximate bayesian significance test for genomic evaluations” (biom j)

Abstract: A simulation study has been conducted to analyse the association between genetic and phenotypic variation in livestock. Following the density and distribution of single nucleotide polymorphisms (SNPs) on the Illumina BovineSNP50 chip, 52,773 SNPs were simulated on the cattle genome of 30 Morgan length. Several generations of random mating were executed in which random recombination events according to the genetic distance between SNPs and random mutation of SNP alleles were considered. In the most recent generations, 50 sires were mated to 20 dams in order to generate multiple half-sib families. The data were split into training (n=2,000) and validation/testing set (n=2,000). Twenty-three SNPs were randomly preselected to be the causative variants, and additive, dominance and epistatic effects were simulated. Two different traits were achieved by adding different residual error terms to the sum of genetic effects, such that the total genetic variation contributed either 30% or 50% to the phenotypic variation. Then, 5,227 SNPs (every 10-th SNP including the causative variants) were selected. The simulation was repeated 100 times. More details can be found in Wittenburg et al. (2011) Including non-additive genetic effects in Bayesian methods for the prediction of genetic values based on genome-wide markers. BMC Genetics 12:74, https://doi.org/10.1186/1471-2156-12-74

Cite this as

Melzer, Nina, Wittenburg, Dörte (2018). Dataset: Supplementary data to publication “an approximate bayesian significance test for genomic evaluations” (biom j). https://doi.org/10.22000/80

DOI retrieved: 2018

Additional Info

Field Value
Imported on January 12, 2023
Last update August 4, 2023
License CC BY 4.0 Attribution
Source https://doi.org/10.22000/80
Author Melzer, Nina
More Authors
Wittenburg, Dörte
Source Creation 2018
Publishers
Leibniz Institute for Farm Animal Biology (FBN)
Production Year 2010
Publication Year 2018
Resource Type Dataset - phenotypic and genetic data
Subject Areas
Name: Agriculture

Name: Biology

Name: Other
Additional: Genetics

Name: Life Science

Related Identifiers
Identifier: 10.1002/bimj.201700219
Type: DOI
Relation: IsSupplementTo