首页> 外文期刊>G3: Genes, Genomes, Genetics >Accuracy of Genomic Prediction in Switchgrass (Panicum virgatum L.) Improved by Accounting for Linkage Disequilibrium
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Accuracy of Genomic Prediction in Switchgrass (Panicum virgatum L.) Improved by Accounting for Linkage Disequilibrium

机译:连锁不平衡的考虑提高了柳枝Ge(Panicum virgatum L.)基因组预测的准确性。

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Switchgrass is a relatively high-yielding and environmentally sustainable biomass crop, but further genetic gains in biomass yield must be achieved to make it an economically viable bioenergy feedstock. Genomic selection (GS) is an attractive technology to generate rapid genetic gains in switchgrass, and meet the goals of a substantial displacement of petroleum use with biofuels in the near future. In this study, we empirically assessed prediction procedures for genomic selection in two different populations, consisting of 137 and 110 half-sib families of switchgrass, tested in two locations in the United States for three agronomic traits: dry matter yield, plant height, and heading date. Marker data were produced for the families’ parents by exome capture sequencing, generating up to 141,030 polymorphic markers with available genomic-location and annotation information. We evaluated prediction procedures that varied not only by learning schemes and prediction models, but also by the way the data were preprocessed to account for redundancy in marker information. More complex genomic prediction procedures were generally not significantly more accurate than the simplest procedure, likely due to limited population sizes. Nevertheless, a highly significant gain in prediction accuracy was achieved by transforming the marker data through a marker correlation matrix. Our results suggest that marker-data transformations and, more generally, the account of linkage disequilibrium among markers, offer valuable opportunities for improving prediction procedures in GS. Some of the achieved prediction accuracies should motivate implementation of GS in switchgrass breeding programs.
机译:柳枝is是一种相对高产且在环境上可持续的生物质作物,但必须实现生物质产量的进一步遗传增益,才能使其成为经济上可行的生物能源原料。基因组选择(GS)是一项引人入胜的技术,可在柳枝rapid中快速产生遗传增益,并在不久的将来达到用生物燃料大量替代石油使用的目标。在这项研究中,我们根据经验评估了两个不同种群的基因组选择的预测程序,该种群包括柳枝and的137个和110个同胞半同胞家族,并在美国的两个位置测试了三种农艺性状:干物质产量,植物高度和标题日期。通过外显子组捕获测序为这些家庭的父母生成了标记数据,生成了多达141,030个多态性标记,并提供了可用的基因组位置和注释信息。我们评估了预测程序,这些程序不仅因学习方案和预测模型的不同而异,还因数据预处理方式的不同而有所不同,以说明标记信息的冗余性。通常,更复杂的基因组预测程序并不比最简单的程序准确得多,这可能是由于种群数量有限。然而,通过通过标记相关矩阵来转换标记数据,可以在预测精度上获得很高的收益。我们的结果表明,标记数据转换以及更普遍的标记之间连锁不平衡的解释为改善GS中的预测程序提供了宝贵的机会。某些已达到的预测准确性应能刺激柳枝switch育种计划中实施GS。

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