Department of Animal Science and Aquaculture, Dalhousie University, Truro, Nova Scotia, Canada.
Department of Pathobiology, University of Guelph, Guelph, Ontario, Canada.
PLoS One. 2019 Mar 14;14(3):e0213873. doi: 10.1371/journal.pone.0213873. eCollection 2019.
Genomic selection can be considered as an effective tool for developing breeding programs in American mink. However, the genetic gains for economically important traits can be influenced by the accuracy of genomic predictions. The objective of this study was to investigate the prediction accuracies of traditional best linear unbiased prediction (BLUP), multi-step genomic BLUP (GBLUP) and single-step GBLUP (ssGBLUP) methods in American mink using simulated data with different levels of heritability, marker density, training set (TS) sizes and selection designs based on either phenotypic performance or estimated breeding values (EBVs). Under EBV selection design, the accuracy of BLUP predictions was increased by 38% and 44% for h2 = 0.10, 27% and 29% for h2 = 0.20, and 5.8% and 6% for h2 = 0.50 using GBLUP and ssGBLUP methods, respectively. Under phenotypic selection design, the accuracies of prediction by ssGBLUP method were 11.8% and 15.4% higher than those obtained by GBLUP for heritability of 0.10 and 0.20, respectively. However, the efficiency of ssGBLUP and GBLUP was not influenced by selection design at higher level of heritability (h2 = 0.50). Furthermore, higher selection intensity increased the bias of predictions in both pedigree-based and genomic evaluations. Regardless of selection design, TS sizes for GBLUP and ssGBLUP methods should be at least 3000 to achieve more accuracy than using BLUP for heritability of 0.50 and marker density of 10k and 50k. Overall, more accurate predictions were obtained using ssGBLUP method particularly for lowly heritable traits and low density of markers. Our results indicated that TS sizes should be optimized in accordance with heritability level, marker density, selection design and prediction method for genomic selection in American mink. The results provided an initial framework for designing genomic selection in mink breeding programs.
基因组选择可以被视为开发水貂育种计划的有效工具。然而,经济重要性状的遗传增益可能会受到基因组预测准确性的影响。本研究的目的是使用不同遗传力、标记密度、训练集(TS)大小和基于表型表现或估计育种值(EBV)的选择设计的模拟数据,研究传统最佳线性无偏预测(BLUP)、多步基因组 BLUP(GBLUP)和单步 GBLUP(ssGBLUP)方法在水貂中的预测准确性。在 EBV 选择设计下,GBLUP 和 ssGBLUP 方法分别将 h2 = 0.10 时的 BLUP 预测准确性提高了 38%和 44%,h2 = 0.20 时提高了 27%和 29%,h2 = 0.50 时提高了 5.8%和 6%。在表型选择设计下,ssGBLUP 方法的预测准确性比 GBLUP 方法分别高 11.8%和 15.4%,用于 h2 = 0.10 和 0.20。然而,在更高遗传力(h2 = 0.50)水平下,ssGBLUP 和 GBLUP 的效率不受选择设计的影响。此外,更高的选择强度增加了基于系谱和基因组评估的预测偏差。无论选择设计如何,GBLUP 和 ssGBLUP 方法的 TS 大小至少应为 3000,以便在遗传力为 0.50 和标记密度为 10k 和 50k 时获得比 BLUP 更高的准确性。总体而言,ssGBLUP 方法可以获得更准确的预测结果,特别是对于遗传力较低和标记密度较低的性状。我们的研究结果表明,在水貂基因组选择中,TS 大小应根据遗传力水平、标记密度、选择设计和预测方法进行优化。研究结果为水貂育种计划中的基因组选择设计提供了初步框架。