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首页> 外文期刊>The New Phytologist >Genomic selection for growth and wood quality in Eucalyptus: capturing the missing heritability and accelerating breeding for complex traits in forest trees
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Genomic selection for growth and wood quality in Eucalyptus: capturing the missing heritability and accelerating breeding for complex traits in forest trees

机译:桉树生长和木材品质的基因组选择:捕获缺失的遗传力并加快林木复杂性状的育种

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摘要

Genomic selection (GS) is expected to cause a paradigm shift in tree breeding by improving its speed and efficiency. By fitting all the genome-wide markers concurrently, GS can capture most of the 'missing heritability' of complex traits that quantitative trait locus (QTL) and association mapping classically fail to explain. Experimental support of GS is now required. The effectiveness of GS was assessed in two unrelated Eucalyptus breeding populations with contrasting effective population sizes (We= 11 and 51) genotyped with > 3000 DArT markers. Prediction models were developed for tree circumference and height growth, wood specific gravity and pulp yield using random regression best linear unbiased predictor (BLUP). Accuracies of GS varied between 0.55 and 0.88, matching the accuracies achieved by conventional phenotypic selection. Substantial proportions (74-97%) of trait heritability were captured by fitting all genome-wide markers simultaneously. Genomic regions explaining trait variation largely coincided between populations, although GS models predicted poorly across populations, likely as a result of variable patterns of linkage disequilibrium, inconsistent allelic effects and genotype x environment interaction. GS brings a new perspective to the understanding of quantitative trait variation in forest trees and provides a revolutionary tool for applied tree improvement. Nevertheless population-specific predictive models will likely drive the initial applications of GS in forest tree breeding.
机译:基因组选择(GS)有望通过提高其速度和效率来引起树木育种的范式转变。通过同时拟合所有全基因组标记,GS可以捕获复杂性状的大多数“缺失遗传力”,而数量性状基因座(QTL)和关联映射通常无法解释。现在需要GS的实验支持。在两个不相关的桉树育种种群中评估了GS的有效性,这些种群的有效种群大小(We = 11和51)具有不同的基因型,并具有> 3000 DArT标记。使用随机回归最佳线性无偏预测器(BLUP)开发了树木周长和高度增长,木材比重和纸浆产量的预测模型。 GS的准确度在0.55至0.88之间变化,与常规表型选择所达到的准确度相匹配。通过同时拟合所有全基因组标记,可以捕获相当大部分(74-97%)的性状遗传力。尽管GS模型预测的种群间差异很差,但解释种群间性状变异的基因组区域在很大程度上吻合,这很可能是由于连锁不平衡的可变模式,等位基因效应不一致以及基因型x环境相互作用所致。 GS为了解林木中的数量性状变异提供了新的视角,并为应用树木改良提供了革命性的工具。然而,针对特定人群的预测模型可能会推动GS在林木育种中的最初应用。

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