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首页> 外文期刊>Plant Biotechnology Journal >Genomic prediction of maize microphenotypes provides insights for optimizing selection and mining diversity
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Genomic prediction of maize microphenotypes provides insights for optimizing selection and mining diversity

机译:玉米微孔的基因组预测提供了优化选择和采矿多样性的见解

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Effective evaluation of millions of crop genetic stocks is an essential component of exploiting genetic diversity to achieve global food security. By leveraging genomics and data analytics, genomic prediction is a promising strategy to efficiently explore the potential of these gene banks by starting with phenotyping a small designed subset. Reliable genomic predictions have enhanced selection of many macroscopic phenotypes in plants and animals. However, the use of genomicprediction strategies for analysis of microscopic phenotypes is limited. Here, we exploited the power of genomic prediction for eight maize traits related to the shoot apical meristem (SAM), the microscopic stem cell niche that generates all the above‐ground organs of the plant. With 435?713 genomewide single‐nucleotide polymorphisms (SNPs), we predicted SAM morphology traits for 2687 diverse maize inbreds based on a model trained from 369 inbreds. An empirical validation experiment with 488 inbreds obtained a prediction accuracy of 0.37–0.57 across eight traits. In addition, we show that a significantly higher prediction accuracy was achieved by leveraging the U value (upper bound for reliability) that quantifies the genomic relationships of the validation set with the training set. Our findings suggest that double selection considering both prediction and reliability can be implemented in choosing selection candidates for phenotyping when exploring new diversity is desired. In this case, individuals with less extreme predicted values and moderate reliability values can be considered. Our study expands the turbocharging gene banks via genomic prediction from the macrophenotypes into the microphenotypic space.
机译:对数百万作物遗传股的有效评估是利用遗传多样性以实现全球粮食安全的重要组成部分。通过利用基因组学和数据分析,基因组预测是一个有希望的策略,以通过从表型设计的小型群开始探索这些基因库的潜力。可靠的基因组预测在植物和动物中增强了许多宏观表型的选择。然而,利用基因组预测策略进行微观表型分析的限制。在这里,我们利用了与芽顶部单位(SAM)相关的八种玉米特征的基因组预测的力量,所述微观干细胞基层产生植物的所有上述器官。含435〜713种基因杂物单核苷酸多态性(SNP),我们预测了SAM形态特性,基于369次近距离培训的模型,SAM形态特性为2687种不同的玉米自交论。具有488个自扰的经验验证实验在八个特征上获得了0.37-0.57的预测精度。另外,我们表明,通过利用U值(可靠性的上限)来实现显着更高的预测精度,这些预测精度量化了用训练集的验证集的基因组关系来实现。我们的研究结果表明,考虑预测和可靠性的双倍选择可以在选择探索新的多样性时选择选择候选者的选择候选者。在这种情况下,可以考虑具有较少极端预测值和中等可靠性值的个体。我们的研究通过从巨粒口的基因组预测到微蛋白型空间扩展涡轮增压基因库。

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