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Accuracy of genomic predictions using different imputation error rates in aquaculture breeding programs: A simulation study

机译:水产养殖育种计划中不同归纳误差率的基因组预测的准确性:模拟研究

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In breeding programs, genetic evaluations can be performed using phenotypic information from the selection candidates per se or from relatives to obtain breeding values (EBV) by the traditional method known as the Best Linear Unbiased Predictor (BLUP). Using phenotypic information from relatives (e.g. sib-testing) is a common practice particularly in aquaculture, because some economically important traits, including disease resistance and carcass quality, would require the slaughtering of animals before they could become breeders. The ability to better predict genetic merit has made the incorporation of genomic information into genetic evaluation a common practice in livestock and aquaculture species. Genomic selection uses genotypic information from single nucleotide polymorphism (SNP) arrays or genotyping-by-sequencing assays to increase the accuracy of selection by means of exploiting realized within and between family trait information. The cost of genotyping dense SNP panels in the training population and selection candidates limits the practical implementation of genomic selection. Imputation from low- to high-density genotypes represents an alternative which decreases the cost of genotyping while maintaining prediction accuracies. The present study compared EBV accuracies obtained with BLUP and genomic selection (GBLUP) methods using simulation. We simulated five generations of a rainbow trout (Oncorhynchus mykiss) breeding program, using 1662 individuals with real genotypic data from 42,822 SNP as a founder population. The scenarios varied using three heritability levels (h(2) = 0.1; 0.2 and 0.4) and four imputation error rates (10%, 5%, 1% and 0%), mimicking different densities of low-density SNP panels (0.5 K, 3 K, 7 K and 42 K, respectively). The simulations showed: (1) an increase in accuracy ranging from 3% to 25% when comparing GBLUP against BLUP across all scenarios, (2) a non-linear increase in accuracy for both BLUP and GBLUP across generations and heritability levels, and (3) comparable performance between GBLUP0.5 K, GBLUP3K and GBLUP7K models in terms of accuracy. We conclude that low cost genomic selection can be applied in aquaculture breeding programs using a combined approach of low-density SNP panels (e.g. 500 SNPs) and genotype imputation.
机译:在繁殖计划中,可以使用来自选择候选者的表型信息或亲属来进行遗传评估,以通过称为最佳线性无偏的预测器(BLUP)的传统方法获得育种值(EBV)。使用来自亲属的表型信息(例如SIB-TEST)是一种常见的做法,特别是在水产养殖中,因为一些经济上重要的性状,包括疾病抵抗和胴体品质,需要在它们成为育种者之前屠宰动物。更好地预测遗传优点的能力使基因组信息纳入遗传评估畜禽和水产养殖物种的常见实践。基因组选择使用来自单核苷酸多态性(SNP)阵列或基因分型逐序测定的基因型信息,以通过在家庭特征信息中实现的利用来提高选择的精度。在培训人口和选择候选人中基因分型密集SNP面板的成本限制了基因组选择的实际实施。低于高密度基因型的归纳代表了一种替代方案,其在保持预测准确性的同时降低基因分型的成本。本研究比较了使用模拟的Blup和基因组选择(GBLUP)方法获得的EBV精度。我们模拟了五代彩虹鳟鱼(Oncorynchus mykiss)育种计划,使用1662个个体,具有从42,822个SNP的实际基因型数据作为创始人群。使用三个可遗传性水平(H(2)= 0.1; 0.2和0.4)和四个估算误差速率(10%,5%,1%和0%)而变化,模仿低密度SNP面板的不同密度(0.5 k ,3 k,7 k和42 k分别)。模拟显示:(1)在将GBLUP与所有场景中的GBLUP进行比较时,精度增加到3%至25%,(2)在几代和遗传性水平上的Blup和Gblup的准确性中的非线性增加,以及( 3)GBLUP0.5 K,GBLUP3K和GBLUP7K在精度方面的相当性能。我们得出结论,低成本的基因组选择可以使用低密度SNP面板(例如500 snps)和基因型归档的组合方法在水产养殖育种计划中应用。

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