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Factors affecting the accuracy of genomic selection for growth and wood quality traits in an advanced-breeding population of black spruce ( Picea mariana )

机译:影响黑云杉(Picea mariana)高级繁殖种群生长和木材品质性状的基因组选择准确性的因素

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Background Genomic selection (GS) uses information from genomic signatures consisting of thousands of genetic markers to predict complex traits. As such, GS represents a promising approach to accelerate tree breeding, which is especially relevant for the genetic improvement of boreal conifers characterized by long breeding cycles. In the present study, we tested GS in an advanced-breeding population of the boreal black spruce ( Picea mariana [Mill.] BSP) for growth and wood quality traits, and concurrently examined factors affecting GS model accuracy. Results The study relied on 734 25-year-old trees belonging to 34 full-sib families derived from 27 parents and that were established on two contrasting sites. Genomic profiles were obtained from 4993 Single Nucleotide Polymorphisms (SNPs) representative of as many gene loci distributed among the 12 linkage groups common to spruce. GS models were obtained for four growth and wood traits. Validation using independent sets of trees showed that GS model accuracy was high, related to trait heritability and equivalent to that of conventional pedigree-based models. In forward selection, gains per unit of time were three times higher with the GS approach than with conventional selection. In addition, models were also accurate across sites, indicating little genotype-by-environment interaction in the area investigated. Using information from half-sibs instead of full-sibs led to a significant reduction in model accuracy, indicating that the inclusion of relatedness in the model contributed to its higher accuracies. About 500 to 1000 markers were sufficient to obtain GS model accuracy almost equivalent to that obtained with all markers, whether they were well spread across the genome or from a single linkage group, further confirming the implication of relatedness and potential long-range linkage disequilibrium (LD) in the high accuracy estimates obtained. Only slightly higher model accuracy was obtained when using marker subsets that were identified to carry large effects, indicating a minor role for short-range LD in this population. Conclusions This study supports the integration of GS models in advanced-generation tree breeding programs, given that high genomic prediction accuracy was obtained with a relatively small number of markers due to high relatedness and family structure in the population. In boreal spruce breeding programs and similar ones with long breeding cycles, much larger gain per unit of time can be obtained from genomic selection at an early age than by the conventional approach. GS thus appears highly profitable, especially in the context of forward selection in species which are amenable to mass vegetative propagation of selected stock, such as spruces.
机译:背景基因组选择(GS)使用来自由数千种遗传标记组成的基因组特征信息来预测复杂性状。因此,GS代表了一种有前途的加速树木育种的方法,这与以长繁殖周期为特征的北方针叶树的遗传改良特别相关。在本研究中,我们测试了北方黑云杉(Picea mariana [Mill。] BSP)高级繁殖种群的GS的生长和木材品质性状,并同时考察了影响GS模型准确性的因素。结果研究依赖于来自27个亲本的34个全同胞科的734棵25岁树,它们在两个不同的地点建立。从4993个单核苷酸多态性(SNP)获得了基因组图谱,该单核苷酸多态性代表了云杉共有的12个连接基团之间分布的许多基因位点。为四个生长和木材性状获得了GS模型。使用独立的树集进行的验证表明,GS模型的准确性很高,与性状遗传相关,并且与传统的基于谱系的模型相当。在正向选择中,GS方法的单位时间增益是传统选择方法的三倍。此外,各个地点的模型也很准确,表明在研究区域中几乎没有基因型-环境相互作用。使用来自半同胞而不是全同胞的信息导致模型准确性显着降低,这表明模型中包含相关性有助于其更高的准确性。大约500到1000个标记足以获得GS模型精度,几乎与使用所有标记获得的GS模型精度相当,无论它们在基因组中分布良好还是在单个连锁群中均如此,进一步证实了相关性和潜在的远程连锁不平衡的含义( LD)中获得的高精度估算值。当使用识别出具有较大影响的标记子集时,只能获得稍高的模型准确性,这表明该人群中短程LD的作用较小。结论本研究支持将GS模型集成到高级树种育种程序中,因为由于人口中的高度亲缘性和家族结构,使用相对较少的标记获得了较高的基因组预测准确性。在北方云杉育种计划和具有较长育种周期的类似计划中,与传统方法相比,在早期就可以通过基因组选择获得单位时间更大的收益。因此,GS似乎具有很高的利润,特别是在对那些经过选择的种群进行大量营养繁殖(例如云杉)的物种进行正向选择的情况下。

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