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首页> 外文期刊>Genetics, selection, evolution >Accuracy of genomic selection for a sib-evaluated trait using identity-by-state and identity-by-descent relationships
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Accuracy of genomic selection for a sib-evaluated trait using identity-by-state and identity-by-descent relationships

机译:利用状态身份和血统关系对同胞评估的性状进行基因组选择的准确性

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Background GBLUP (genomic best linear unbiased prediction) uses high-density single nucleotide polymorphism (SNP) markers to construct genomic identity-by-state (IBS) relationship matrices. However, identity-by-descent (IBD) relationships can be accurately calculated for extremely sparse markers. Here, we compare the accuracy of prediction of genome-wide breeding values (GW-BV) for a sib-evaluated trait in a typical aquaculture population, assuming either IBS or IBD genomic relationship matrices, and by varying marker density and size of the training dataset. Methods A simulation study was performed, assuming a population with strong family structure over three subsequent generations. Traditional and genomic BLUP were used to estimate breeding values, the latter using either IBS or IBD genomic relationship matrices, with marker densities ranging from 10 to ~1200 SNPs/Morgan (M). Heritability ranged from 0.1 to 0.8, and phenotypes were recorded on 25 to 45 sibs per full-sib family (50 full-sib families). Models were compared based on their predictive ability (accuracy) with respect to true breeding values of unphenotyped (albeit genotyped) sibs in the last generation. Results As expected, genomic prediction had greater accuracy compared to pedigree-based prediction. At the highest marker density, genomic prediction based on IBS information (IBS-GS) was slightly superior to that based on IBD information (IBD-GS), while at lower densities (≤100 SNPs/M), IBD-GS was more accurate. At the lowest densities (10 to 20 SNPs/M), IBS-GS was even outperformed by the pedigree-based model. Accuracy of IBD-GS was stable across marker densities performing well even down to 10 SNPs/M (2.5 to 6.1% reduction in accuracy compared to ~1200 SNPs/M). Loss of accuracy due to reduction in the size of training datasets was moderate and similar for both genomic prediction models. The relative superiority of (high-density) IBS-GS over IBD-GS was more pronounced for traits with a low heritability. Conclusions Using dense markers, GBLUP based on either IBD or IBS relationship matrices proved to perform better than a pedigree-based model. However, accuracy of IBS-GS declined rapidly with decreasing marker densities, and was even outperformed by a traditional pedigree-based model at the lowest densities. In contrast, the accuracy of IBD-GS was very stable across marker densities.
机译:背景技术GBLUP(基因组最佳线性无偏预测)使用高密度单核苷酸多态性(SNP)标记构建基因组状态(IBS)关系矩阵。但是,对于稀疏的标记,可以精确计算出后裔身份(IBD)关系。在这里,我们比较IBS或IBD基因组关系矩阵,并通过改变标记密度和培训规模,比较了典型水产养殖种群中同胞评估性状的全基因组育种值(GW-BV)预测的准确性数据集。方法进行了一次模拟研究,假设其后三代人的家庭结构都很牢固。传统和基因组BLUP用于估计育种值,后者使用IBS或IBD基因组关系矩阵,标记密度范围为10到〜1200 SNPs / Morgan(M)。遗传力范围为0.1至0.8,每个全同胞家族(50个全同胞家族)的表型记录在25至45个同胞中。根据模型相对于上一代未表型(尽管具有基因型)同胞的真实育种值的预测能力(准确性)对模型进行比较。结果与预期的相比,基因组预测与基于谱系的预测相比具有更高的准确性。在最高标记密度下,基于IBS信息的基因组预测(IBS-GS)略优于基于IBD信息的基因组预测(IBD-GS),而在较低的密度(≤100SNPs / M)下,IBD-GS更准确。在最低密度(10至20个SNPs / M)下,IBS-GS甚至比基于谱系的模型还要好。 IBD-GS的准确度在各种标记物密度下均保持稳定,甚至在低至10 SNPs / M时(与〜1200 SNPs / M相比,准确度降低了2.5至6.1%)。对于两种基因组预测模型,由于减少训练数据集的大小而导致的准确性损失是中等且相似的。对于低遗传力的性状,(高密度)IBS-GS相对于IBD-GS的相对优势更为明显。结论使用密集标记,基于IBD或IBS关系矩阵的GBLUP被证明比基于谱系的模型表现更好。然而,IBS-GS的准确性随着标记密度的降低而迅速下降,甚至在最低密度下甚至优于传统的基于谱系的模型。相反,IBD-GS的准确性在标记物密度之间非常稳定。

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