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Combined Multistage Linear Genomic Selection Indices To Predict the Net Genetic Merit in Plant Breeding

机译:组合多阶段线性基因组选择指数预测植物育种的净遗传价值

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摘要

A combined multistage linear genomic selection index (CMLGSI) is a linear combination of phenotypic and genomic estimated breeding values useful for predicting the individual net genetic merit, which in turn is a linear combination of the true unobservable breeding values of the traits weighted by their respective economic values. The CMLGSI is a cost-saving strategy for improving multiple traits because the breeder does not need to measure all traits at each stage. The (OCMLGSI) and (DCMLGSI) indices are the main CMLGSIs. Whereas the OCMLGSI takes into consideration the index correlation values among stages, the DCMLGSI imposes the restriction that the index correlation values among stages be zero. Using real and simulated datasets, we compared the efficiency of both indices in a two-stage context. The criteria we applied to compare the efficiency of both indices were that the total selection response of each index must be lower than or equal to the single-stage combined linear genomic selection index (CLGSI) response and that the correlation of each index with the net genetic merit should be maximum. Using four different total proportions for the real dataset, the estimated total OCMLGSI and DCMLGSI responses explained 97.5% and 90%, respectively, of the estimated single-stage CLGSI selection response. In addition, at stage two, the estimated correlations of the OCMLGSI and the DCMLGSI with the net genetic merit were 0.84 and 0.63, respectively. We found similar results for the simulated datasets. Thus, we recommend using the OCMLGSI when performing multistage selection.
机译:组合的多阶段线性基因组选择指数(CMLGSI)是表型和基因组估计育种值的线性组合,可用于预测各个个体的净遗传价值,而反过来又是这些性状的真实不可观察育种值按其各自加权的线性组合经济价值。 CMLGSI是一种改善多种性状的节省成本的策略,因为育种者不需要在每个阶段都测量所有性状。 (OCMLGSI)和(DCMLGSI)索引是主要的CMLGSI。 OCMLGSI考虑了阶段之间的索引相关性值,而DCMLGSI施加了限制,即阶段之间的索引相关性值是零。使用真实和模拟的数据集,我们在两个阶段的上下文中比较了两个索引的效率。我们用来比较两个指标效率的标准是,每个指标的总选择响应必须低于或等于单阶段组合线性基因组选择指标(CLGSI)响应,并且每个指标与网络的相关性遗传优点应该最大。使用实际数据集的四个不同的总比例,估计的总OCMLGSI和DCMLGSI响应分别解释了估计的单阶段CLGSI选择响应的97.5%和90%。此外,在第二阶段,OCLMGSI和DCMLGSI与净遗传价值的估计相关性分别为0.84和0.63。我们为模拟数据集找到了相似的结果。因此,我们建议在执行多级选择时使用OCMLGSI。

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