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Genomic prediction of crown rust resistance in Lolium perenne

机译:黑麦草冠抗锈病的基因组预测

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Genomic selection (GS) can accelerate genetic gains in breeding programmes by reducing the time it takes to complete a cycle of selection. Puccinia coronata f. sp lolli (crown rust) is one of the most widespread diseases of perennial ryegrass and can lead to reductions in yield, persistency and nutritional value. Here, we used a large perennial ryegrass population to assess the accuracy of using genome wide markers to predict crown rust resistance and to investigate the factors affecting predictive ability. Using these data, predictive ability for crown rust resistance in the complete population reached a maximum of 0.52. Much of the predictive ability resulted from the ability of markers to capture genetic relationships among families within the training set, and reducing the marker density had little impact on predictive ability. Using permutation based variable importance measure and genome wide association studies (GWAS) to identify and rank markers enabled the identification of a small subset of SNPs that could achieve predictive abilities close to those achieved using the complete marker set. Using a GWAS to identify and rank markers enabled a small panel of markers to be identified that could achieve higher predictive ability than the same number of randomly selected markers, and predictive abilities close to those achieved with the entire marker set. This was particularly evident in a sub-population characterised by having on-average higher genome-wide linkage disequilibirum (LD). Higher predictive abilities with selected markers over random markers suggests they are in LD with QTL. Accuracy due to genetic relationships will decay rapidly over generations whereas accuracy due to LD will persist, which is advantageous for practical breeding applications.
机译:基因组选择(GS)可通过减少完成选择周期所需的时间来加快育种程序的遗传增益。冠状锈菌f。棒锈病是多年生黑麦草中最普遍的疾病之一,可导致产量,持久性和营养价值下降。在这里,我们使用了大量的多年生黑麦草种群来评估使用全基因组标记物预测冠锈病抗性以及调查影响预测能力的因素的准确性。使用这些数据,在整个种群中对冠锈病抗性的预测能力达到了最大0.52。大部分的预测能力是由标记物捕捉训练集中各家庭之间的遗传关系的能力造成的,降低标记物密度对预测能力的影响很小。使用基于排列的变量重要性评估和全基因组关联研究(GWAS)来识别标记并对其进行排名,可以识别一小部分SNP,这些子集的预测能力可以接近使用完整标记集获得的预测能力。使用GWAS识别标记并对其进行排名可以识别一小组标记,这些标记可以实现比相同数量的随机选择标记更高的预测能力,并且预测能力与整个标记集接近。这在特征在于具有平均更高的全基因组范围的连锁不平衡(LD)的亚群中尤其明显。与随机标记相比,所选标记具有更高的预测能力,这表明它们与QTL处于LD中。由于遗传关系而产生的准确性将在几代后迅速下降,而由于LD造成的准确性将持续存在,这对于实际的育种应用是有利的。

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