Park Mi Na, Alam Mahboob, Kim Sidong, Park Byoungho, Lee Seung Hwan, Lee Sung Soo
Animal Breeding and Genetics Division, National Institute of Animal Science, Rural Development Administration, Cheonan 31000, Korea.
Poultry Research Institute, National Institute of Animal Science, Rural Development Administration, Pyeongchang 25342, Korea.
Asian-Australas J Anim Sci. 2020 Oct;33(10):1544-1557. doi: 10.5713/ajas.18.0936. Epub 2019 Nov 12.
Genomic selection (GS) is becoming popular in animals' genetic development. We, therefore, investigated the single-step genomic best linear unbiased prediction (ssGBLUP) as tool for GS, and compared its efficacy with the traditional pedigree BLUP (pedBLUP) method.
A total of 9,952 males born between 1997 and 2018 under Hanwoo proven-bull selection program was studied. We analyzed body weight at 12 months and carcass weight (kg), backfat thickness, eye muscle area, and marbling score traits. About 7,387 bulls were genotyped using Illumina 50K BeadChip Arrays. Multiple-trait animal model analyses were performed using BLUPF90 software programs. Breeding value accuracy was calculated using two.
i) Pearson's correlation of genomic estimated breeding value (GEBV) with EBV of all animals (rM1) and ii) correlation using inverse of coefficient matrix from the mixed-model equations (rM2). Then, we compared these accuracies by overall population, info-type (PHEN, phenotyped-only; GEN, genotyped-only; and PH+GEN, phenotyped and genotyped), and bull-types (YBULL, young male calves; CBULL, young candidate bulls; and PBULL, proven bulls).
The rM1 estimates in the study were between 0.90 and 0.96 among five traits. The rM1 estimates varied slightly by population and info-type, but noticeably by bull-type for traits. Generally average rM2 estimates were much smaller than rM1 (pedBLUP, 0.40 to0.44; ssGBLUP, 0.41 to 0.45) at population level. However, rM2 from both BLUP models varied noticeably across info-types and bull-types. The ssGBLUP estimates of rM2 in PHEN, GEN, and PH+ GEN ranged between 0.51 and 0.63, 0.66 and 0.70, and 0.68 and 0.73, respectively. In YBULL, CBULL, and PBULL, the rM2 estimates ranged between 0.54 and 0.57, 0.55 and 0.62, and 0.70 and 0.74, respectively. The pedBLUP based rM2 estimates were also relatively lower than ssGBLUP estimates. At the population level, we found an increase in accuracy by 2.0% to 4.5% among traits. Traits in PHEN were least influenced by ssGBLUP (0% to 2.0%), whereas the highest positive changes were in GEN (8.1% to 10.7%). PH+GEN also showed 6.5% to 8.5% increase in accuracy by ssGBLUP. However, the highest improvements were found in bull-types (YBULL, 21% to 35.7%; CBULL, 3.3% to 9.3%; PBULL, 2.8% to 6.1%).
A noticeable improvement by ssGBLUP was observed in this study. Findings of differential responses to ssGBLUP by various bulls could assist in better selection decision making as well. We, therefore, suggest that ssGBLUP could be used for GS in Hanwoo provenbull evaluation program.
基因组选择(GS)在动物遗传育种中越来越受欢迎。因此,我们研究了单步基因组最佳线性无偏预测(ssGBLUP)作为GS的工具,并将其与传统的系谱BLUP(pedBLUP)方法的效果进行比较。
对1997年至2018年在韩牛种公牛选育计划下出生的9952头雄性牛进行了研究。我们分析了12月龄时的体重、胴体重(kg)、背膘厚度、眼肌面积和大理石花纹评分性状。使用Illumina 50K BeadChip芯片对约7387头公牛进行基因分型。使用BLUPF90软件程序进行多性状动物模型分析。使用以下两种方法计算育种值准确性:i)基因组估计育种值(GEBV)与所有动物的估计育种值(EBV)的Pearson相关性(rM1);ii)使用混合模型方程系数矩阵的逆矩阵计算的相关性(rM2)。然后,我们按总体群体、信息类型(PHEN,仅具有表型数据;GEN,仅具有基因型数据;以及PH+GEN,同时具有表型和基因型数据)和公牛类型(YBULL,年轻雄性犊牛;CBULL,年轻候选公牛;以及PBULL,经证实的公牛)比较了这些准确性。
本研究中rM1估计值在五个性状之间为0.90至0.96。rM1估计值因群体和信息类型略有差异,但因性状的公牛类型差异明显。在总体群体水平上,一般rM2估计值远小于rM1(pedBLUP,0.40至0.44;ssGBLUP,0.41至0.45)。然而,两种BLUP模型的rM2在不同信息类型和公牛类型之间差异明显。ssGBLUP在PHEN、GEN和PH+GEN中的rM2估计值分别在0.51至0.63、0.66至0.70和0.68至0.73之间。在YBULL、CBULL和PBULL中,rM2估计值分别在0.54至0.57、0.55至0.62和0.70至0.74之间。基于pedBLUP的rM2估计值也相对低于ssGBLUP估计值。在总体群体水平上,我们发现各性状的准确性提高了2.0%至4.5%。PHEN中的性状受ssGBLUP影响最小(0%至2.0%),而GEN中的正向变化最大(8.1%至10.7%)。PH+GEN中ssGBLUP也使准确性提高了6.5%至8.5%。然而,在公牛类型中提高最为显著(YBULL,21%至35.7%;CBULL,3.3%至9.3%;PBULL,2.8%至6.1%)。
本研究中观察到ssGBLUP有显著改进。不同公牛对ssGBLUP的不同反应结果也有助于做出更好的选择决策。因此,我们建议ssGBLUP可用于韩牛种公牛评估计划中的GS。