Sequence variants selected from a multi-breed GWAS can improve the reliability of genomic predictions in dairy cattle

Archive ouverte

van den Berg, Irene | Boichard, Didier | Lund, Mogens S.

Edité par CCSD ; BioMed Central -

Ajouter clé UT WOS. International audience. AbstractBackgroundSequence data can potentially increase the reliability of genomic predictions, because such data include causative mutations instead of relying on linkage disequilibrium (LD) between causative mutations and prediction variants. However, the location of the causative mutations is not known, and the presence of many variants that are in low LD with the causative mutations may reduce prediction reliability. Our objective was to investigate whether the use of variants at quantitative trait loci (QTL) that are identified in a multi-breed genome-wide association study (GWAS) for milk, fat and protein yield would increase the reliability of within- and multi-breed genomic predictions in Holstein, Jersey and Danish Red cattle. A wide range of scenarios that test different strategies to select prediction markers, for both within-breed and multi-breed prediction, were compared.ResultsFor all breeds and traits, the use of variants selected from a multi-breed GWAS resulted in substantial increases in prediction reliabilities compared to within-breed prediction using a 50 K SNP array. Reliabilities depended highly on the choice of the prediction markers, and the scenario that led to the highest reliability varied between breeds and traits. While genomic correlations across breeds were low for genome-wide sequence variants, the effects of the QTL variants that yielded the highest reliabilities were highly correlated across breeds.ConclusionsOur results show that the use of sequence variants, which are located near peaks of QTL that are detected in a multi-breed GWAS, can increase reliability of genomic predictions.

Suggestions

Du même auteur

The influence of heritability, number of QTL and number of records on QTL mapping with Bayes C(Pi)

Archive ouverte | van den Berg, Irene | CCSD

absent

QTL fine mapping with Bayesian C(π): a simulation study

Archive ouverte | van den Berg, Irene, van den Berg | CCSD

Chantier qualité GA. Background: Accurate QTL mapping is a prerequisite in the search for causative mutations. Bayesian genomic selection models that analyse many markers simultaneously should provide more accurate ...

On the use of whole-genome sequence data for across-breed genomic prediction and fine-scale mapping of QTL

Archive ouverte | Meuwissen, Theo | CCSD

International audience. AbstractBackgroundWhole-genome sequence (WGS) data are increasingly available on large numbers of individuals in animal and plant breeding and in human genetics through second-generation rese...

Chargement des enrichissements...