Department of Animal Science, Iowa State University, Ames, IA, USA.
College of Veterinary Medicine, Kansas State University, Manhattan, KS, USA.
Genet Sel Evol. 2018 Feb 1;50(1):3. doi: 10.1186/s12711-018-0371-4.
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. 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.
Genomic 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.
Results 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.
对猪繁殖与呼吸综合征(PRRS)病毒(PRRSV)的猪的反应进行基因组预测将是养猪业的有用工具。本研究调查了基于猪 SNP60 Beadchip 数据的基因组预测的准确性,使用了具有不同遗传背景的群体的训练和验证数据集,这些群体受到了不同 PRRSV 分离株的挑战。
在实验性 PRRSV 挑战后,对病毒载量(VL)和体重增加(WG)的基因组预测准确性平均为 0.34,这表明基因组选择可用于改善对 PRRSV 感染的反应。在感染较弱毒力的 PRRSV KS06 期间对 WG 数据进行训练导致在感染更强毒力的 PRRSV NVSL 期间对 WG 的预测准确性较差。包含与染色体 4 上主要数量性状基因座(QTL)连锁的单核苷酸多态性(SNP)对于 VL 的准确预测至关重要。总体而言,在单 SNP 全基因组关联分析中与任一性状显著相关的 SNP 无法预测表型的准确性,其准确性不如使用整个基因组中所有基因分型 SNP 获得的准确性高。将近亲的数据纳入训练群体可将 VL 的全基因组预测准确性提高 33%,WG 的预测准确性提高 37%,但不会影响仅使用主要 QTL 区域中的 SNP 进行预测的准确性。
结果表明,对 PRRSV 感染反应的基因组预测具有中等准确性,并且当使用猪 SNP60 Beadchip 上的所有 SNP 时,对训练和验证群体中 PRRSV 的毒力差异不太敏感。在使用整个基因组或除主要 QTL 附近的 SNP 之外的 SNP 时,将近亲纳入训练群体可提高预测准确性。