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Accuracy of Genomic Selection in a Rice Synthetic Population Developed for Recurrent Selection Breeding

机译:为轮回选择育种开发的水稻合成群体中基因组选择的准确性。

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摘要

Genomic selection (GS) is a promising strategy for enhancing genetic gain. We investigated the accuracy of genomic estimated breeding values (GEBV) in four inter-related synthetic populations that underwent several cycles of recurrent selection in an upland rice-breeding program. A total of 343 S2:4 lines extracted from those populations were phenotyped for flowering time, plant height, grain yield and panicle weight, and genotyped with an average density of one marker per 44.8 kb. The relative effect of the linkage disequilibrium (LD) and minor allele frequency (MAF) thresholds for selecting markers, the relative size of the training population (TP) and of the validation population (VP), the selected trait and the genomic prediction models (frequentist and Bayesian) on the accuracy of GEBVs was investigated in 540 cross validation experiments with 100 replicates. The effect of kinship between the training and validation populations was tested in an additional set of 840 cross validation experiments with a single genomic prediction model. LD was high (average r2 = 0.59 at 25 kb) and decreased slowly, distribution of allele frequencies at individual loci was markedly skewed toward unbalanced frequencies (MAF average value 15.2% and median 9.6%), and differentiation between the four synthetic populations was low (FST ≤0.06). The accuracy of GEBV across all cross validation experiments ranged from 0.12 to 0.54 with an average of 0.30. Significant differences in accuracy were observed among the different levels of each factor investigated. Phenotypic traits had the biggest effect, and the size of the incidence matrix had the smallest. Significant first degree interaction was observed for GEBV accuracy between traits and all the other factors studied, and between prediction models and LD, MAF and composition of the TP. The potential of GS to accelerate genetic gain and breeding options to increase the accuracy of predictions are discussed.
机译:基因组选择(GS)是增强遗传增益的有前途的策略。我们研究了在旱稻育种程序中经历了几个轮回选择的四个相互关联的合成种群中基因组估计育种值(GEBV)的准确性。对从这些种群中提取的总共343个S2:4品系进行开花,表型,株高,籽粒产量和穗重的表型分析,并以每44.8 kb的一个标记的平均密度进行基因分型。连锁不平衡(LD)和次要等位基因频率(MAF)阈值用于选择标记的相对影响,训练种群(TP)和验证种群(VP)的相对大小,所选性状和基因组预测模型(在540个交叉验证实验中(共100个重复),对GEBV的准确性进行了研究。在训练和验证群体之间的亲属关系的影响在具有单个基因组预测模型的另一组840个交叉验证实验中进行了测试。 LD高(在25 kb时平均r 2 = 0.59)并缓慢下降,各个位点的等位基因频率分布明显偏向不平衡频率(MAF平均值15.2%和中位数9.6%),以及四个合成种群之间的差异很低(FST≤0.06)。在所有交叉验证实验中,GEBV的准确性范围为0.12至0.54,平均值为0.30。在研究的每个因素的不同水平之间观察到准确性的显着差异。表型性状影响最大,发生矩阵的大小最小。观察到性状与所有其他因素之间以及预测模型与LD,MAF和TP组成之间GEBV准确性存在显着的一级交互作用。讨论了GS加速遗传获取的潜力以及提高选择准确性的育种选择。

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