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首页> 外文期刊>Heredity: An International Journal of Genetics >Predicting rice hybrid performance using univariate and multivariate GBLUP models based on North Carolina mating design II
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Predicting rice hybrid performance using univariate and multivariate GBLUP models based on North Carolina mating design II

机译:基于北卡罗来纳交配设计的单变量和多变量GBLUP模型预测稻米混合绩效

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摘要

Genomic selection (GS) is more efficient than traditional phenotype-based methods in hybrid breeding. The present study investigated the predictive ability of genomic best linear unbiased prediction models for rice hybrids based on the North Carolina mating design II, in which a total of 115 inbred rice lines were crossed with 5 male sterile lines. Using 8 traits of the 575 (115 x 5) hybrids from two environments, both univariate (UV) and multivariate (MV) prediction analyses, including additive and dominance effects, were performed. Using UV models, the prediction results of cross-validation indicated that including dominance effects could improve the predictive ability for some traits in rice hybrids. Additionally, we could take advantage of GS even for a low-heritability trait, such as grain yield per plant (GY), because a modest increase in the number of top selection could generate a higher, more stable mean phenotypic value for rice hybrids. Thus this strategy was used to select superior potential crosses between the 115 inbred lines and those between the 5 male sterile lines and other genotyped varieties. In our MV research, an MV model (MV-ADV) was developed utilizing a MV relationship matrix constructed with auxiliary variates. Based on joint analysis with multi-trait (MT) or with multi-environment, the prediction results confirmed the superiority of MV-ADV over an UV model, particularly in the MT scenario for a low-heritability target trait (such as GY), with highly correlated auxiliary traits. For a high-heritability trait (such as thousand-grain weight), MT prediction is unnecessary, and UV prediction is sufficient.
机译:基因组选择(GS)比杂交育种中的传统表型 - 基于传统表型的方法更有效。本研究研究了基于北卡罗来纳配合设计II的稻混合动力车基因组最佳线性无偏的预测模型的预测能力,其中总共115种近交水稻与5根雄性无菌线。使用来自两个环境的575(115×5)杂种的8个特征,进行单变量(UV)和多变量(MV)预测分析,包括添加剂和优势效应。使用紫外线模型,交叉验证的预测结果表明,包括优势效应可以提高水稻杂交种中一些特征的预测能力。此外,甚至可以利用GS,即使对于低遗传性的性状,例如每株植物的谷物产量(GY),因为顶部选择的数量的适度增加可能会产生更高,更稳定的稻米杂交表型价值。因此,该策略用于选择115近交系和5条雄性无菌系和其他基因分型品种之间的优异潜在交叉。在我们的MV研究中,利用用辅助变更器构造的MV关系矩阵开发了MV模型(MV-ADV)。基于多特征(MT)或多环境的联合分析,预测结果证实了UV模型的MV-ADV的优越性,特别是在低遗传性目标特征的MT场景中(例如GY),具有高度相关的辅助性状。对于高遗传性特征(如千粒重),不需要MT预测,并且UV预测足够。

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    Yangzhou Univ Jiangsu Prov Key Lab Crop Genet &

    Physiol Coinnovat Ctr Modern Prod Technol Grain;

    Hunan Agr Univ Coll Plant Protect Hunan Prov Key Lab Biol &

    Control Plant Dis &

    Ins Changsha;

    Yangzhou Univ Jiangsu Prov Key Lab Crop Genet &

    Physiol Coinnovat Ctr Modern Prod Technol Grain;

    Wuhan Univ Coll Life Sci State Key Lab Hybrid Rice Wuhan 430072 Peoples R China;

    Huazhong Agr Univ Coll Plant Sci &

    Technol Wuhan 430070 Peoples R China;

    Yangzhou Univ Jiangsu Prov Key Lab Crop Genet &

    Physiol Coinnovat Ctr Modern Prod Technol Grain;

    Wuhan Univ Coll Life Sci State Key Lab Hybrid Rice Wuhan 430072 Peoples R China;

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  • 正文语种 eng
  • 中图分类 遗传学;
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