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首页> 外文期刊>Heredity: An International Journal of Genetics >Identification of optimal prediction models using multi-omic data for selecting hybrid rice
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Identification of optimal prediction models using multi-omic data for selecting hybrid rice

机译:用多个OMIC数据选择杂种稻的最佳预测模型

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摘要

Genomic prediction benefits hybrid rice breeding by increasing selection intensity and accelerating breeding cycles. With the rapid advancement of technology, other omic data, such as metabolomic data and transcriptomic data, are readily available for predicting breeding values for agronomically important traits. In this study, the best prediction strategies were determined for yield, 1000 grain weight, number of grains per panicle, and number of tillers per plant of hybrid rice (derived from recombinant inbred lines) by comprehensively evaluating all possible combinations of omic datasets with different prediction methods. It was demonstrated that, in rice, the predictions using a combination of genomic and metabolomic data generally produce better results than single-omics predictions or predictions based on other combined omic data. Best linear unbiased prediction (BLUP) appears to be the most efficient prediction method compared to the other commonly used approaches, including least absolute shrinkage and selection operator (LASSO), stochastic search variable selection (SSVS), support vector machines with radial basis function and epsilon regression (SVM-R(EPS)), support vector machines with radial basis function and nu regression (SVM-R(NU)), support vector machines with polynomial kernel and epsilon regression (SVM-P(EPS)), support vector machines with polynomial kernel and nu regression (SVM-P(NU)) and partial least squares regression (PLS). This study has provided guidelines for selection of hybrid rice in terms of which types of omic datasets and which method should be used to achieve higher trait predictability. The answer to these questions will benefit academic research and will also greatly reduce the operative cost for the industry which specializes in breeding and selection.
机译:基因组预测通过增加选择强度和加速育种循环来利用杂交水稻育种。随着技术的快速进步,其他OMIC数据(例如代原数据和转录组数据)易于用于预测农艺上重要特征的育种值。在这项研究中,通过全面评估不同的OMIC数据集的所有可能的OMIC数据集的所有可能组合,确定最佳预测策略,每粒重,每穗数,每穗数,每种植物的分蘖数,并通过全面评估OMIC数据集的所有可能的组合与不同的组合预测方法。据证明,在水稻中,使用基因组和代原数据的组合的预测通常基于基于其他组合的OMIC数据的单个OMIC预测或预测产生更好的结果。与其他常用的方法相比,最佳线性无偏见预测(Blup)似乎是最有效的预测方法,包括最低绝对收缩和选择操作员(套索),随机搜索变量选择(SSV),支持径向基函数的矢量机器epsilon回归(SVM-R(EPS)),支持径向基函数的向量机和NU回归(SVM-R(NU)),支持具有多项式内核和epsilon回归的向量机(SVM-P(EPS)),支持载体具有多项式内核和NU回归的机器(SVM-P(NU))和偏最小二乘回归(PLS)。本研究提供了在哪种类型的OMIC数据集中选择杂交水稻的准则以及应该使用哪种方法来实现更高的特征可预测性。这些问题的答案将有利于学术研究,并将大大降低专门繁殖和选择的行业的手术成本。

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    Univ Calif Riverside Dept Bot &

    Plant Sci Riverside CA 92521 USA;

    Nanjing Agr Univ Coll Anim Sci &

    Technol Nanjing Jiangsu Peoples R China;

    Univ Calif Riverside Dept Bot &

    Plant Sci Riverside CA 92521 USA;

    Univ Calif Riverside Dept Bot &

    Plant Sci Riverside CA 92521 USA;

    Univ Calif Riverside Dept Bot &

    Plant Sci Riverside CA 92521 USA;

    Bowdoin Coll Dept Math Brunswick ME 04011 USA;

    Univ British Columbia Dept Neurosci Vancouver BC Canada;

    Huazhong Agr Univ Natl Key Lab Crop Genet Improvement Wuhan Hubei Peoples R China;

    Univ Calif Riverside Dept Bot &

    Plant Sci Riverside CA 92521 USA;

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  • 正文语种 eng
  • 中图分类 遗传学 ;
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