...
首页> 外文期刊>G3: Genes, Genomes, Genetics >Resource Allocation for Maximizing Prediction Accuracy and Genetic Gain of Genomic Selection in Plant Breeding: A Simulation Experiment
【24h】

Resource Allocation for Maximizing Prediction Accuracy and Genetic Gain of Genomic Selection in Plant Breeding: A Simulation Experiment

机译:植物育种中基因组选择的预测准确性和遗传增益最大化的资源分配:模拟实验

获取原文
           

摘要

Allocating resources between population size and replication affects both genetic gain through phenotypic selection and quantitative trait loci detection power and effect estimation accuracy for marker-assisted selection (MAS). It is well known that because alleles are replicated across individuals in quantitative trait loci mapping and MAS, more resources should be allocated to increasing population size compared with phenotypic selection. Genomic selection is a form of MAS using all marker information simultaneously to predict individual genetic values for complex traits and has widely been found superior to MAS. No studies have explicitly investigated how resource allocation decisions affect success of genomic selection. My objective was to study the effect of resource allocation on response to MAS and genomic selection in a single biparental population of doubled haploid lines by using computer simulation. Simulation results were compared with previously derived formulas for the calculation of prediction accuracy under different levels of heritability and population size. Response of prediction accuracy to resource allocation strategies differed between genomic selection models (ridge regression best linear unbiased prediction [RR-BLUP], BayesC π ) and multiple linear regression using ordinary least-squares estimation (OLS), leading to different optimal resource allocation choices between OLS and RR-BLUP. For OLS, it was always advantageous to maximize population size at the expense of replication, but a high degree of flexibility was observed for RR-BLUP. Prediction accuracy of doubled haploid lines included in the training set was much greater than of those excluded from the training set, so there was little benefit to phenotyping only a subset of the lines genotyped. Finally, observed prediction accuracies in the simulation compared well to calculated prediction accuracies, indicating these theoretical formulas are useful for making resource allocation decisions.
机译:在种群大小和复制之间分配资源会影响通过表型选择和遗传性状基因位点检测能力的遗传增益,以及影响标记辅助选择(MAS)的估计准确性。众所周知,由于等位基因在数量性状基因座作图和MAS中在个体之间复制,因此与表型选择相比,应将更多资源分配给增加的种群规模。基因组选择是MAS的一种形式,它同时使用所有标记信息来预测复杂性状的个体遗传值,并且广泛发现其优于MAS。没有研究明确调查资源分配决策如何影响基因组选择的成功。我的目标是通过计算机模拟研究单倍双倍单倍体系的双亲种群中资源分配对MAS反应和基因组选择的影响。将模拟结果与先前导出的公式进行比较,以计算不同遗传度和种群规模下的预测准确性。在基因组选择模型(岭回归最佳线性无偏预测[RR-BLUP],BayesCπ)和使用普通最小二乘估计(OLS)的多重线性回归之间,预测准确性对资源分配策略的响应有所不同,从而导致不同的最优资源分配选择在OLS和RR-BLUP之间。对于OLS,以复制为代价最大化种群规模总是有利的,但是RR-BLUP具有高度的灵活性。包含在训练集中的双倍单倍体系的预测准确性远高于从训练集中排除的单倍体系,因此仅对基因型的一部分亚型进行表型化几乎没有好处。最后,在仿真中观察到的预测精度与计算的预测精度进行了很好的比较,表明这些理论公式对于做出资源分配决策很有用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号