杂种优势
生物
遗传增益
数量性状位点
特质
遗传学
SNP公司
基因组选择
近交系
育种计划
遗传标记
单核苷酸多态性
混合的
生物技术
遗传变异
基因型
基因
农学
计算机科学
栽培
程序设计语言
作者
G. de Jong,Owen Powell,Gregor Gorjanc,John M. Hickey,R. Chris Gaynor
出处
期刊:Crop Science
[Wiley]
日期:2023-09-23
卷期号:63 (6): 3338-3355
被引量:5
摘要
Abstract This study evaluates the impact of genomic prediction models on selecting inbred lines as parents in hybrid breeding programs. New parents in a hybrid breeding program are typically selected from early‐stage yield trials based on general combining ability (GCA) from testcrosses. Genomic studies have largely focused on predicting hybrid performance in the late stages of the breeding pipeline and largely ignored the selection of inbred lines as parents of the subsequent breeding cycles. Here, we used stochastic simulations of a maize ( Zea mays L.) hybrid breeding program for 20 years to evaluate the performance of genomic prediction models for selecting parents based on their predicted GCA. Five genomic prediction models were evaluated in terms of achieved genetic gain and heterosis under two different single nucleotide polymorphism (SNP) marker densities and the true quantitative trait loci genotypes. The results show that using high‐density SNP markers generated more genetic gain and heterosis than the low‐density SNP markers. The relative performance of genomic prediction models differed across marker scenarios. For genetic gain, we observed more differences between the models at low than high marker density. For heterosis, we observed the opposite, more differences between the models at high than low marker density. Overall, models that fitted the average or additive effects specific to each heterotic pool and dominance effects provide a better fit and hence higher genetic gain in hybrid breeding programs.
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