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Genomic selection: genome-wide prediction in plant improvement

机译:基因组选择:植物改良的全基因组预测

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Association analysis is used to measure relations between markers and quantitative trait loci (QTL). Their estimation ignores genes with small effects that trigger underpinning quantitative traits. By contrast, genome-wide selection estimates marker effects across the whole genome on the target population based on a prediction model developed in the training population (TP). Whole-genome prediction models estimate all marker effects in all loci and capture small QTL effects. Here, we review several genomic selection (GS) models with respect to both the prediction accuracy and genetic gain from selection. Phenotypic selection or marker-assisted breeding protocols can be replaced by selection, based on whole-genome predictions in which phenotyping updates the model to build up the prediction accuracy
机译:关联分析用于测量标记和定量性状基因座(QTL)之间的关系。他们的估计忽略了触发基础定量性状的影响很小的基因。相比之下,全基因组选择基于训练群体(TP)中开发的预测模型估计整个基因组对目标群体的标记作用。全基因组预测模型估计所有基因座中的所有标记物效应,并捕获小的QTL效应。在这里,我们回顾了几个基因组选择(GS)模型的预测准确性和从选择中获得的遗传增益。基于全基因组预测,表型选择或标记辅助育种方案可以由选择代替,其中表型更新模型以提高预测准确性

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