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基于北卡罗来纳交配设计II,使用单变量和多变量GBLUP模型预测水稻杂交种性能。

Predicting rice hybrid performance using univariate and multivariate GBLUP models based on North Carolina mating design II.

作者信息

Wang X, Li L, Yang Z, Zheng X, Yu S, Xu C, Hu Z

机构信息

Jiangsu Provincial Key Laboratory of Crop Genetics and Physiology/Co-Innovation Center for Modern Production Technology of Grain Crops, Key Laboratory of Plant Functional Genomics of Ministry of Education, Yangzhou University, Yangzhou, China.

Hunan Provincial Key Laboratory for Biology and Control of Plant Disease and Insect Pests, College of Plant Protection, Hunan Agricultural University, Changsha, China.

出版信息

Heredity (Edinb). 2017 Mar;118(3):302-310. doi: 10.1038/hdy.2016.87. Epub 2016 Sep 21.

Abstract

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 × 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.

摘要

在杂交育种中,基因组选择(GS)比传统的基于表型的方法更有效。本研究基于北卡罗来纳交配设计II,调查了基因组最佳线性无偏预测模型对水稻杂交种的预测能力,其中共有115个自交系水稻与5个雄性不育系进行杂交。利用来自两个环境的575个(115×5)杂交种的8个性状,进行了单变量(UV)和多变量(MV)预测分析,包括加性效应和显性效应。使用UV模型,交叉验证的预测结果表明,纳入显性效应可以提高水稻杂交种某些性状的预测能力。此外,即使对于低遗传力性状,如单株产量(GY),我们也可以利用GS,因为在顶级选择数量上适度增加可以为水稻杂交种产生更高、更稳定的平均表型值。因此,该策略用于在115个自交系之间以及5个雄性不育系与其他基因型品种之间选择优良的潜在杂交组合。在我们的MV研究中,利用由辅助变量构建的MV关系矩阵开发了一个MV模型(MV - ADV)。基于多性状(MT)或多环境的联合分析,预测结果证实了MV - ADV优于UV模型,特别是在MT情况下对于低遗传力目标性状(如GY)且辅助性状高度相关时。对于高遗传力性状(如千粒重),MT预测是不必要的,UV预测就足够了。

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本文引用的文献

1
Multiple-trait- and selection indices-genomic predictions for grain yield and protein content in rye for feeding purposes.
Theor Appl Genet. 2016 Feb;129(2):273-87. doi: 10.1007/s00122-015-2626-6. Epub 2015 Nov 3.
2
7
SNP-Seek database of SNPs derived from 3000 rice genomes.
Nucleic Acids Res. 2015 Jan;43(Database issue):D1023-7. doi: 10.1093/nar/gku1039. Epub 2014 Nov 27.
8
Exploring the areas of applicability of whole-genome prediction methods for Asian rice (Oryza sativa L.).
Theor Appl Genet. 2015 Jan;128(1):41-53. doi: 10.1007/s00122-014-2411-y. Epub 2014 Oct 24.
9
Multiple quantitative trait analysis using bayesian networks.
Genetics. 2014 Sep;198(1):129-37. doi: 10.1534/genetics.114.165704.
10
Predicting hybrid performance in rice using genomic best linear unbiased prediction.
Proc Natl Acad Sci U S A. 2014 Aug 26;111(34):12456-61. doi: 10.1073/pnas.1413750111. Epub 2014 Aug 11.

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