Hong Joon Ki, Kim Young Sin, Cho Kyu Ho, Lee Deuk Hwan, Min Ye Jin, Cho Eun Seok
National Institute of Animal Science, Rural Development Administration, Cheonan 31000, Korea.
Department of Animal Life Resources, Hankyong University, Anseong 17579, Korea.
Asian-Australas J Anim Sci. 2019 Dec;32(12):1836-1843. doi: 10.5713/ajas.19.0182. Epub 2019 Aug 26.
Social genetic effects (SGE) are an important genetic component for growth, group productivity, and welfare in pigs. The present study was conducted to evaluate i) the feasibility of the single-step genomic best linear unbiased prediction (ssGBLUP) approach with the inclusion of SGE in the model in pigs, and ii) the changes in the contribution of heritable SGE to the phenotypic variance with different scaling ω constants for genomic relationships.
The dataset included performance tested growth rate records (average daily gain) from 13,166 and 21,762 pigs Landrace (LR) and Yorkshire (YS), respectively. A total of 1,041 (LR) and 964 (YS) pigs were genotyped using the Illumina PorcineSNP60 v2 BeadChip panel. With the BLUPF90 software package, genetic parameters were estimated using a modified animal model for competitive traits. Giving a fixed weight to pedigree relationships (τ: 1), several weights (ωxx, 0.1 to 1.0; with a 0.1 interval) were scaled with the genomic relationship for best model fit with Akaike information criterion (AIC).
The genetic variances and total heritability estimates (T2) were mostly higher with ssGBLUP than in the pedigree-based analysis. The model AIC value increased with any level of ω other than 0.6 and 0.5 in LR and YS, respectively, indicating the worse fit of those models. The theoretical accuracies of direct and social breeding value were increased by decreasing ω in both breeds, indicating the better accuracy of ω0.1 models. Therefore, the optimal values of ω to minimize AIC and to increase theoretical accuracy were 0.6 in LR and 0.5 in YS.
In conclusion, single-step ssGBLUP model fitting SGE showed significant improvement in accuracy compared with the pedigree-based analysis method; therefore, it could be implemented in a pig population for genomic selection based on SGE, especially in South Korean populations, with appropriate further adjustment of tuning parameters for relationship matrices.
社会遗传效应(SGE)是猪生长、群体生产力和福利的重要遗传组成部分。本研究旨在评估:i)在猪模型中纳入SGE的单步基因组最佳线性无偏预测(ssGBLUP)方法的可行性;ii)基因组关系中不同缩放ω常数下,可遗传SGE对表型方差贡献的变化。
数据集包括分别来自13166头长白猪(LR)和21762头大白猪(YS)的性能测试生长率记录(平均日增重)。使用Illumina PorcineSNP60 v2 BeadChip芯片对总共1041头(LR)和964头(YS)猪进行基因分型。使用BLUPF90软件包,采用改良动物模型对竞争性状估计遗传参数。赋予系谱关系固定权重(τ:1),对基因组关系进行几种权重(ωxx,0.1至1.0;间隔0.1)缩放,以根据赤池信息准则(AIC)实现最佳模型拟合。
与基于系谱的分析相比,ssGBLUP的遗传方差和总遗传力估计值(T2)大多更高。在LR和YS中,除了分别为0.6和0.5的ω水平外,模型AIC值随任何ω水平增加,表明这些模型拟合较差。两个品种中,通过降低ω,直接育种值和社会育种值的理论准确性均提高,表明ω0.1模型准确性更高。因此,使AIC最小化并提高理论准确性的ω最佳值在LR中为0.6,在YS中为0.5。
总之,与基于系谱的分析方法相比,拟合SGE的单步ssGBLUP模型在准确性上有显著提高;因此,通过对关系矩阵的调整参数进行适当进一步调整,它可用于基于SGE的猪群体基因组选择,特别是在韩国群体中。