Modelling selection response in plant-breeding programs using crop models as mechanistic gene-to-phenotype (CGM-G2P) multi-trait link functions

IF 2.6 Q1 AGRONOMY
Mark Cooper, O. Powell, K. Voss-Fels, C. Messina, C. Gho, D. Podlich, F. Technow, S. Chapman, C. Beveridge, D. Ortiz-Barrientos, G. Hammer
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引用次数: 12

Abstract

Plant-breeding programs are designed and operated over multiple cycles to systematically change the genetic makeup of plants to achieve improved trait performance for a Target Population of Environments (TPE). Within each cycle, selection applied to the standing genetic variation within a structured reference population of genotypes (RPG) is the primary mechanism by which breeding programs make the desired genetic changes. Selection operates to change the frequencies of the alleles of the genes controlling trait variation within the RPG. The structure of the RPG and the TPE has important implications for the design of optimal breeding strategies. The breeder’s equation, together with the quantitative genetic theory behind the equation, informs many of the principles for design of breeding programs. The breeder’s equation can take many forms depending on the details of the breeding strategy. Through the genetic changes achieved by selection, the cultivated varieties of crops (cultivars) are improved for use in agriculture. From a breeding perspective, selection for specific trait combinations requires a quantitative link between the effects of the alleles of the genes impacted by selection and the trait phenotypes of plants and their breeding value. This gene-to-phenotype link function provides the G2P map for one to many traits. For complex traits controlled by many genes, the infinitesimal model for trait genetic variation is the dominant G2P model of quantitative genetics. Here we consider motivations and potential benefits of using the hierarchical structure of crop models as CGM-G2P trait link functions in combination with the infinitesimal model for the design and optimization of selection in breeding programs.
利用作物模型作为机制基因-表型(CGM-G2P)多性状链接函数模拟植物育种计划中的选择反应
植物育种计划是在多个周期内设计和运行的,以系统地改变植物的遗传构成,从而提高环境目标群体(TPE)的性状表现。在每个周期内,应用于基因型结构参考群体(RPG)中的长期遗传变异的选择是育种计划做出所需遗传变化的主要机制。选择的作用是改变RPG中控制性状变异的基因的等位基因的频率。RPG和TPE的结构对优化育种策略的设计具有重要意义。育种家的方程式,以及方程式背后的定量遗传理论,为育种计划的设计提供了许多原则。根据繁殖策略的细节,繁殖者的方程式可以有多种形式。通过选择实现的遗传变化,对作物(品种)的栽培品种进行改良,以供农业使用。从育种的角度来看,对特定性状组合的选择需要在受选择影响的基因的等位基因的影响与植物的性状表型及其育种价值之间建立定量联系。这种基因-表型连接功能为一对多性状提供了G2P图谱。对于由多个基因控制的复杂性状,性状遗传变异的无穷小模型是数量遗传学的显性G2P模型。在这里,我们考虑了使用作物模型的层次结构作为CGM-G2P性状链接函数,并结合无穷小模型来设计和优化育种方案的动机和潜在效益。
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来源期刊
in silico Plants
in silico Plants Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
4.70
自引率
9.70%
发文量
21
审稿时长
10 weeks
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