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利用加性和显性基因组关系对高粱育种试验进行多环境分析。

Multi-environment analysis of sorghum breeding trials using additive and dominance genomic relationships.

机构信息

Queensland Department of Agriculture and Fisheries, Hermitage Research Facility, 604 Yangan Road, Warwick, QLD, 4370, Australia.

Queensland Alliance for Agriculture and Food Innovation, Hermitage Research Facility, 604 Yangan Road, Warwick, QLD, 4370, Australia.

出版信息

Theor Appl Genet. 2020 Mar;133(3):1009-1018. doi: 10.1007/s00122-019-03526-7. Epub 2020 Jan 6.

Abstract

Multi-environment models using marker-based kinship information for both additive and dominance effects can accurately predict hybrid performance in different environments. Sorghum is an important hybrid crop that is grown extensively in many subtropical and tropical regions including Northern NSW and Queensland in Australia. The highly varying weather patterns in the Australian summer months mean that sorghum hybrids exhibit a great deal of variation in yield between locations. To ultimately enable prediction of the outcome of crossing parental lines, both additive effects on yield performance and dominance interaction effects need to be characterised. This paper demonstrates that fitting a linear mixed model that includes both types of effects calculated using genetic markers in relationship matrices improves predictions. Genotype by environment interactions was investigated by comparing FA1 (single-factor analytic) and FA2 (two-factor analytic) structures. The G×E causes a change in hybrid rankings between trials with a difference of up to 25% of the hybrids in the top 10% of each trial. The prediction accuracies increased with the addition of the dominance term (over and above that achieved with an additive effect alone) by an average of 15% and a maximum of 60%. The percentage of dominance of the total genetic variance varied between trials with the trials with higher broad-sense heritability having the greater percentage of dominance. The inclusion of dominance in the factor analytic models improves the accuracy of the additive effects. Breeders selecting high yielding parents for crossing need to be aware of effects due to environment and dominance.

摘要

多环境模型利用基于标记的亲缘关系信息来预测加性和显性效应,可以准确预测不同环境下的杂种表现。高粱是一种重要的杂交作物,广泛种植于许多亚热带和热带地区,包括澳大利亚新南威尔士州北部和昆士兰州。澳大利亚夏季多变的天气模式意味着高粱杂种在不同地区的产量差异很大。为了最终能够预测杂交亲本系的结果,需要对产量表现的加性效应和显性互作效应进行特征描述。本文表明,通过在关系矩阵中使用遗传标记来计算这两种效应,并拟合线性混合模型,可以提高预测精度。通过比较 FA1(单因素分析)和 FA2(双因素分析)结构,研究了基因型与环境互作。G×E 导致试验间杂种排名发生变化,最高和最低 10%的杂种差异最大可达 25%。添加显性项(与仅加性效应相比)可使预测精度平均提高 15%,最高提高 60%。在不同的试验中,总遗传方差的显性比例不同,广义遗传力较高的试验中,显性比例越大。在因子分析模型中包含显性项可以提高加性效应的准确性。对于选择高产量亲本进行杂交的育种者来说,需要注意环境和显性效应对杂种表现的影响。

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