Back to Search Start Over

Exploring the genetic architecture and improving genomic prediction accuracy for mastitis and milk production traits in dairy cattle by mapping variants to hepatic transcriptomic regions responsive to intra-mammary infection

Authors :
Lingzhao Fang
Goutam Sahana
Peipei Ma
Guosheng Su
Ying Yu
Shengli Zhang
Mogens Sandø Lund
Peter Sørensen
Source :
Genetics Selection Evolution, Vol 49, Iss 1, Pp 1-18 (2017)
Publication Year :
2017
Publisher :
BMC, 2017.

Abstract

Abstract Background A better understanding of the genetic architecture of complex traits can contribute to improve genomic prediction. We hypothesized that genomic variants associated with mastitis and milk production traits in dairy cattle are enriched in hepatic transcriptomic regions that are responsive to intra-mammary infection (IMI). Genomic markers [e.g. single nucleotide polymorphisms (SNPs)] from those regions, if included, may improve the predictive ability of a genomic model. Results We applied a genomic feature best linear unbiased prediction model (GFBLUP) to implement the above strategy by considering the hepatic transcriptomic regions responsive to IMI as genomic features. GFBLUP, an extension of GBLUP, includes a separate genomic effect of SNPs within a genomic feature, and allows differential weighting of the individual marker relationships in the prediction equation. Since GFBLUP is computationally intensive, we investigated whether a SNP set test could be a computationally fast way to preselect predictive genomic features. The SNP set test assesses the association between a genomic feature and a trait based on single-SNP genome-wide association studies. We applied these two approaches to mastitis and milk production traits (milk, fat and protein yield) in Holstein (HOL, n = 5056) and Jersey (JER, n = 1231) cattle. We observed that a majority of genomic features were enriched in genomic variants that were associated with mastitis and milk production traits. Compared to GBLUP, the accuracy of genomic prediction with GFBLUP was marginally improved (3.2 to 3.9%) in within-breed prediction. The highest increase (164.4%) in prediction accuracy was observed in across-breed prediction. The significance of genomic features based on the SNP set test were correlated with changes in prediction accuracy of GFBLUP (P

Details

Language :
German, English, French
ISSN :
12979686
Volume :
49
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Genetics Selection Evolution
Publication Type :
Academic Journal
Accession number :
edsdoj.0ce9435100624915b506149ed5c3ab42
Document Type :
article
Full Text :
https://doi.org/10.1186/s12711-017-0319-0