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Phenotypic Data from Inbred Parents Can Improve Genomic Prediction in Pearl Millet Hybrids

机译:近交亲本的表型数据可以改善小米杂种的基因组预测。

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摘要

Pearl millet is a non-model grain and fodder crop adapted to extremely hot and dry environments globally. In India, a great deal of public and private sectors’ investment has focused on developing pearl millet single cross hybrids based on the cytoplasmic-genetic male sterility (CMS) system, while in Africa most pearl millet production relies on open pollinated varieties. Pearl millet lines were phenotyped for both the inbred parents and hybrids stage. Many breeding efforts focus on phenotypic selection of inbred parents to generate improved parental lines and hybrids. This study evaluated two genotyping techniques and four genomic selection schemes in pearl millet. Despite the fact that 6× more sequencing data were generated per sample for RAD-seq than for tGBS, tGBS yielded more than 2× as many informative SNPs (defined as those having MAF > 0.05) than RAD-seq. A genomic prediction scheme utilizing only data from hybrids generated prediction accuracies (median) ranging from 0.73-0.74 (1000-grain weight), 0.87-0.89 (days to flowering time), 0.48-0.51 (grain yield) and 0.72-0.73 (plant height). For traits with little to no heterosis, hybrid only and hybrid/inbred prediction schemes performed almost equivalently. For traits with significant mid-parent heterosis, the direct inclusion of phenotypic data from inbred lines significantly (P < 0.05) reduced prediction accuracy when all lines were analyzed together. However, when inbreds and hybrid trait values were both scored relative to the mean trait values for the respective populations, the inclusion of inbred phenotypic datasets moderately improved genomic predictions of the hybrid genomic estimated breeding values. Here we show that modern approaches to genotyping by sequencing can enable genomic selection in pearl millet. While historical pearl millet breeding records include a wealth of phenotypic data from inbred lines, we demonstrate that the naive incorporation of this data into a hybrid breeding program can reduce prediction accuracy, while controlling for the effects of heterosis per se allowed inbred genotype and trait data to improve the accuracy of genomic estimated breeding values for pearl millet hybrids.
机译:珍珠粟是一种非典范的谷物和饲料作物,适合于全球极端炎热和干燥的环境。在印度,许多公共和私营部门的投资都集中在开发基于细胞质遗传雄性不育(CMS)系统的珍珠粟单交杂种,而在非洲,大多数珍珠粟的生产都依赖于开放授粉的品种。对近交亲本和杂种期的珍珠粟品系进行了表型分析。许多育种工作着重于近交亲本的表型选择,以产生改良的亲本品系和杂种。这项研究评估了珍珠粟的两种基因分型技术和四种基因组选择方案。尽管每个样品生成的RAD-seq测序数据比tGBS多出6倍,但tGBS产生的信息性SNP(定义为MAF> 0.05的SNP)是RAD-seq的2倍以上。一种仅利用杂种的数据进行基因组预测的方案,其预测准确度(中位数)为0.73-0.74(1000粒重),0.87-0.89(天数至开花时间),0.48-0.51(籽粒产量)和0.72-0.73(植物)高度)。对于几乎没有杂种优势的性状,仅杂种和杂种/近交预测方案几乎等效。对于具有明显的中父母亲杂种优势的性状,当同时分析所有系时,直接包含来自自交系的表型数据会大大降低预测准确性(P <0.05)。但是,当相对于各自种群的平均性状值对近交和杂种性状值进行评分时,近交表型数据集的包含会适度改善杂种基因组估计育种值的基因组预测。在这里,我们显示了通过测序进行基因分型的现代方法可以实现小米基因组的选择。虽然历史珍珠小米育种记录包括来自自交系的大量表型数据,但我们证明,将这些数据天真地纳入杂交育种程序会降低预测准确性,同时控制杂种优势本身允许的近交基因型和性状数据来提高小米杂种的基因组估计育种值的准确性。

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