Vallejo Roger L, Silva Rafael M O, Evenhuis Jason P, Gao Guangtu, Liu Sixin, Parsons James E, Martin Kyle E, Wiens Gregory D, Lourenco Daniela A L, Leeds Timothy D, Palti Yniv
National Center for Cool and Cold Water Aquaculture, United States Department of Agriculture, Agricultural Research Service, Kearneysville, West Virginia.
Animal and Dairy Science Department, University of Georgia, Athens, Georgia.
J Anim Breed Genet. 2018 Jun 5. doi: 10.1111/jbg.12335.
Previously accurate genomic predictions for Bacterial cold water disease (BCWD) resistance in rainbow trout were obtained using a medium-density single nucleotide polymorphism (SNP) array. Here, the impact of lower-density SNP panels on the accuracy of genomic predictions was investigated in a commercial rainbow trout breeding population. Using progeny performance data, the accuracy of genomic breeding values (GEBV) using 35K, 10K, 3K, 1K, 500, 300 and 200 SNP panels as well as a panel with 70 quantitative trait loci (QTL)-flanking SNP was compared. The GEBVs were estimated using the Bayesian method BayesB, single-step GBLUP (ssGBLUP) and weighted ssGBLUP (wssGBLUP). The accuracy of GEBVs remained high despite the sharp reductions in SNP density, and even with 500 SNP accuracy was higher than the pedigree-based prediction (0.50-0.56 versus 0.36). Furthermore, the prediction accuracy with the 70 QTL-flanking SNP (0.65-0.72) was similar to the panel with 35K SNP (0.65-0.71). Genomewide linkage disequilibrium (LD) analysis revealed strong LD (r ≥ 0.25) spanning on average over 1 Mb across the rainbow trout genome. This long-range LD likely contributed to the accurate genomic predictions with the low-density SNP panels. Population structure analysis supported the hypothesis that long-range LD in this population may be caused by admixture. Results suggest that lower-cost, low-density SNP panels can be used for implementing genomic selection for BCWD resistance in rainbow trout breeding programs.
此前,利用中密度单核苷酸多态性(SNP)芯片获得了虹鳟对细菌性冷水病(BCWD)抗性的准确基因组预测。在此,在一个商业虹鳟养殖群体中研究了低密度SNP面板对基因组预测准确性的影响。利用后代性能数据,比较了使用35K、10K、3K、1K、500、300和200个SNP面板以及一个包含70个数量性状位点(QTL)侧翼SNP的面板进行基因组育种值(GEBV)预测的准确性。使用贝叶斯方法BayesB、单步GBLUP(ssGBLUP)和加权ssGBLUP(wssGBLUP)估计GEBV。尽管SNP密度大幅降低,但GEBV的准确性仍然很高,即使使用500个SNP,其准确性也高于基于系谱的预测(0.50 - 0.56对0.36)。此外,70个QTL侧翼SNP的预测准确性(0.65 - 0.72)与35K SNP面板的预测准确性(0.65 - 0.71)相似。全基因组连锁不平衡(LD)分析显示,虹鳟基因组平均跨度超过1 Mb的区域存在强LD(r ≥ 0.25)。这种长距离LD可能有助于使用低密度SNP面板进行准确的基因组预测。群体结构分析支持了该群体中长距离LD可能由混合引起的假设。结果表明,低成本、低密度的SNP面板可用于虹鳟育种计划中对BCWD抗性的基因组选择。