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与虹鳟鱼养殖中基于传统系谱的模型相比,基因组选择模型可将预测的细菌性冷水病抗性育种值的准确性提高一倍。

Genomic selection models double the accuracy of predicted breeding values for bacterial cold water disease resistance compared to a traditional pedigree-based model in rainbow trout aquaculture.

作者信息

Vallejo Roger L, Leeds Timothy D, Gao Guangtu, Parsons James E, Martin Kyle E, Evenhuis Jason P, Fragomeni Breno O, Wiens Gregory D, Palti Yniv

机构信息

National Center for Cool and Cold Water Aquaculture, Agricultural Research Service, United States Department of Agriculture, Kearneysville, WV, USA.

Troutlodge, Inc., P.O. Box 1290, Sumner, WA, USA.

出版信息

Genet Sel Evol. 2017 Feb 1;49(1):17. doi: 10.1186/s12711-017-0293-6.

Abstract

BACKGROUND

Previously, we have shown that bacterial cold water disease (BCWD) resistance in rainbow trout can be improved using traditional family-based selection, but progress has been limited to exploiting only between-family genetic variation. Genomic selection (GS) is a new alternative that enables exploitation of within-family genetic variation.

METHODS

We compared three GS models [single-step genomic best linear unbiased prediction (ssGBLUP), weighted ssGBLUP (wssGBLUP), and BayesB] to predict genomic-enabled breeding values (GEBV) for BCWD resistance in a commercial rainbow trout population, and compared the accuracy of GEBV to traditional estimates of breeding values (EBV) from a pedigree-based BLUP (P-BLUP) model. We also assessed the impact of sampling design on the accuracy of GEBV predictions. For these comparisons, we used BCWD survival phenotypes recorded on 7893 fish from 102 families, of which 1473 fish from 50 families had genotypes [57 K single nucleotide polymorphism (SNP) array]. Naïve siblings of the training fish (n = 930 testing fish) were genotyped to predict their GEBV and mated to produce 138 progeny testing families. In the following generation, 9968 progeny were phenotyped to empirically assess the accuracy of GEBV predictions made on their non-phenotyped parents.

RESULTS

The accuracy of GEBV from all tested GS models were substantially higher than the P-BLUP model EBV. The highest increase in accuracy relative to the P-BLUP model was achieved with BayesB (97.2 to 108.8%), followed by wssGBLUP at iteration 2 (94.4 to 97.1%) and 3 (88.9 to 91.2%) and ssGBLUP (83.3 to 85.3%). Reducing the training sample size to n = ~1000 had no negative impact on the accuracy (0.67 to 0.72), but with n = ~500 the accuracy dropped to 0.53 to 0.61 if the training and testing fish were full-sibs, and even substantially lower, to 0.22 to 0.25, when they were not full-sibs.

CONCLUSIONS

Using progeny performance data, we showed that the accuracy of genomic predictions is substantially higher than estimates obtained from the traditional pedigree-based BLUP model for BCWD resistance. Overall, we found that using a much smaller training sample size compared to similar studies in livestock, GS can substantially improve the selection accuracy and genetic gains for this trait in a commercial rainbow trout breeding population.

摘要

背景

此前,我们已经表明,使用传统的基于家系的选择方法可以提高虹鳟对细菌性冷水病(BCWD)的抗性,但进展仅限于利用家系间的遗传变异。基因组选择(GS)是一种新的方法,能够利用家系内的遗传变异。

方法

我们比较了三种GS模型[单步基因组最佳线性无偏预测(ssGBLUP)、加权ssGBLUP(wssGBLUP)和贝叶斯B模型],以预测商业虹鳟种群中BCWD抗性的基因组育种值(GEBV),并将GEBV的准确性与基于系谱的BLUP(P-BLUP)模型的传统育种值估计(EBV)进行比较。我们还评估了抽样设计对GEBV预测准确性的影响。对于这些比较,我们使用了来自102个家系的7893条鱼的BCWD存活表型,其中来自50个家系的1473条鱼具有基因型[57K单核苷酸多态性(SNP)阵列]。对训练鱼的天真同胞(n = 930条测试鱼)进行基因分型,以预测它们的GEBV,并进行交配,产生138个后代测试家系。在下一代中,对9968个后代进行表型分析,以实证评估对其未表型化亲本所做GEBV预测的准确性。

结果

所有测试的GS模型的GEBV准确性均显著高于P-BLUP模型的EBV。相对于P-BLUP模型,准确性提高最高的是贝叶斯B模型(97.2%至108.8%),其次是第2次迭代时的wssGBLUP(94.4%至97.1%)和第3次迭代时的wssGBLUP(88.9%至91.2%)以及ssGBLUP(83.3%至85.3%)。将训练样本量减少到n = ~1000对准确性没有负面影响(0.67至0.72),但如果训练鱼和测试鱼是全同胞,当n = ~500时,准确性降至0.53至0.61,而当它们不是全同胞时,准确性甚至更低,降至0.22至0.25。

结论

利用后代性能数据,我们表明,对于BCWD抗性,基因组预测的准确性显著高于从传统的基于系谱的BLUP模型获得的估计值。总体而言,我们发现,与家畜的类似研究相比,使用小得多的训练样本量,GS可以显著提高商业虹鳟育种种群中该性状的选择准确性和遗传增益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f00c/5289005/e392125bfe00/12711_2017_293_Fig1_HTML.jpg

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