Genomic selection based on random regression test-day model in dairy cattle with respect to different reference populations

Xianming Wei , Jun Teng , Shixi Zhang , Changheng Zhao , Guilin Chen , Zhi Cao , Yan Chen , Jianbin Li , Chao Ning , Qin Zhang
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Abstract

In this study, we applied random regression test-day model for genomic prediction in the Holstein population in Shandong Province of China with respect to different reference populations, using either 150 k chip genotypes or imputed sequence genotypes. Three different reference populations were considered, i.e., the Shandong (SD) reference population consisting of 1 688 Holstein cows from Shandong Province, the Non-SD reference population consisting of 5 299 Holstein cows from other parts of China, and the combined population of the two. The SD reference resulted in higher prediction accuracy than the Non-SD reference, although the former was much smaller than the latter. The combined reference further increased the accuracy. These results indicate that the accuracy of genomic prediction cross-population within breed is low, even though the reference population is large. Using imputed sequence data may not significantly improve the cross-population prediction ability. However, the inclusion of data from other populations into the reference population can improve the accuracy of genomic selection.
基于随机回归试验日模型的不同参考群体奶牛基因组选择
在这项研究中,我们采用随机回归测试日模型对中国山东省荷斯坦种群进行基因组预测,使用150k芯片基因型或输入序列基因型。选取了3个不同的参考种群,即山东(SD)参考种群由山东省的1 688头荷斯坦奶牛组成,非SD参考种群由中国其他地区的5 299头荷斯坦奶牛组成,以及两者的组合种群。SD参考文献的预测精度高于非SD参考文献,尽管前者比后者小得多。联合参考进一步提高了精度。这些结果表明,尽管参考群体很大,但品种内跨群体的基因组预测精度较低。使用输入序列数据可能不会显著提高交叉种群预测能力。然而,将其他种群的数据纳入参考种群可以提高基因组选择的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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