Abstract

BackgroundGenomic prediction of the pig’s response to the porcine reproductive and respiratory syndrome (PRRS) virus (PRRSV) would be a useful tool in the swine industry. This study investigated the accuracy of genomic prediction based on porcine SNP60 Beadchip data using training and validation datasets from populations with different genetic backgrounds that were challenged with different PRRSV isolates.ResultsGenomic prediction accuracy averaged 0.34 for viral load (VL) and 0.23 for weight gain (WG) following experimental PRRSV challenge, which demonstrates that genomic selection could be used to improve response to PRRSV infection. Training on WG data during infection with a less virulent PRRSV, KS06, resulted in poor accuracy of prediction for WG during infection with a more virulent PRRSV, NVSL. Inclusion of single nucleotide polymorphisms (SNPs) that are in linkage disequilibrium with a major quantitative trait locus (QTL) on chromosome 4 was vital for accurate prediction of VL. Overall, SNPs that were significantly associated with either trait in single SNP genome-wide association analysis were unable to predict the phenotypes with an accuracy as high as that obtained by using all genotyped SNPs across the genome. Inclusion of data from close relatives into the training population increased whole genome prediction accuracy by 33% for VL and by 37% for WG but did not affect the accuracy of prediction when using only SNPs in the major QTL region.ConclusionsResults show that genomic prediction of response to PRRSV infection is moderately accurate and, when using all SNPs on the porcine SNP60 Beadchip, is not very sensitive to differences in virulence of the PRRSV in training and validation populations. Including close relatives in the training population increased prediction accuracy when using the whole genome or SNPs other than those near a major QTL.

Highlights

  • Genomic prediction of the pig’s response to the porcine reproductive and respiratory syndrome (PRRS) virus (PRRSV) would be a useful tool in the swine industry

  • Principal component analysis (PCA) of single nucleotide polymorphisms (SNPs) genotypes from all animals used in this study clustered pigs from each genetic line together (Fig. 1)

  • Genomic prediction of viral load (VL) Prediction across PRRS virus (PRRSV) isolates genomic regions associated with VL were not consistent across PRRSV isolates [12], except for the SSC4 quantitative trait locus (QTL), we found that genomic prediction across PRRSV isolates was moderately accurate

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Summary

Introduction

Genomic prediction of the pig’s response to the porcine reproductive and respiratory syndrome (PRRS) virus (PRRSV) would be a useful tool in the swine industry. Porcine reproductive and respiratory syndrome (PRRS) is an economically devastating disease in the swine industry caused by a rapidly mutating virus (PRRSV). Genomic prediction for response to the PRRS virus (PRRSV) in pigs would be highly valuable to the swine industry, as most selection takes place in high health nucleus farms that are unlikely to face PRRSV outbreaks. The ability to combine data from pigs with different genetic backgrounds that were infected with different PRRSV isolates to use as a training population for genomic prediction of response to other PRRSV isolates of unrelated piglets would be very beneficial

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