Charlotte Brault, Emily J Conley, Andrew J Green, Karl D Glover, Jason P Cook, Harsimardeep S Gill, Andrew C Read, Jason D Fiedler, James A Anderson
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Genomic prediction on eight traits related to FHB and agronomic traits was applied, and the effects of statistical method, marker density, training set size, genetic structure, and genetic architecture of the trait were studied. Using the URSN population, reproducing kernel Hilbert space was the best method in various prediction settings, with an average accuracy of 0.63, marker density could be as low as 500 without decreasing the prediction accuracy, and training set optimization was useful for two traits. Furthermore, genotypic values were predicted in breeding programs using the URSN population as a training set with various prediction scenarios. Predicting unrelated populations led to a significant decrease in accuracy but with encouraging values for some traits and populations. 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引用次数: 0
摘要
小麦赤霉病(Fusarium head blight, FHB)是一种严重威胁小麦生产的真菌病。利用基因分型技术进行植物育种是提高品种遗传抗性的有效手段。1995年开始,统一区域疮痂苗圃(URSN)由来自美国北部地区几个公共育种计划的种质组成。其主要目标是展示新的抗性来源,并使合作伙伴之间能够进行种质交流;然而,来自URSN的数据还没有被研究过。我们收集了该苗圃的表型和基因型数据,以及美国中西部两个目前的育种项目的数据。对8个与FHB和农艺性状相关的性状进行基因组预测,研究了统计方法、标记密度、训练集大小、遗传结构和遗传结构对FHB和农艺性状的影响。利用URSN总体,在各种预测设置下,重构核Hilbert空间是最好的方法,平均准确率为0.63,标记密度可低至500而不降低预测精度,训练集优化对两个性状都有用。此外,利用URSN种群作为训练集,在不同的预测情景下预测育种计划中的基因型值。预测不相关种群导致准确性显著下降,但对某些性状和种群具有令人鼓舞的价值。最终,当训练集中的育种种群数量逐渐减少时,增加URSN种群的优势更加明显,准确率提高到0.19。
Leveraging historical trials to predict Fusarium head blight resistance in spring wheat breeding programs.
Fusarium head blight (FHB) is a fungal disease posing a major threat to wheat production. Plant breeding that leverages genotyping is an effective method to improve the genetic resistance of cultivars. Started in 1995, the uniform regional scab nursery (URSN) consists of germplasm from several public breeding programs in the Northern US region. Its main objective is to showcase new sources of resistance and enable germplasm exchange among the cooperators; however, the data from the URSN have not been studied. Phenotypic and genotypic data from this nursery were gathered, as well as from two current breeding programs in the US Midwest. Genomic prediction on eight traits related to FHB and agronomic traits was applied, and the effects of statistical method, marker density, training set size, genetic structure, and genetic architecture of the trait were studied. Using the URSN population, reproducing kernel Hilbert space was the best method in various prediction settings, with an average accuracy of 0.63, marker density could be as low as 500 without decreasing the prediction accuracy, and training set optimization was useful for two traits. Furthermore, genotypic values were predicted in breeding programs using the URSN population as a training set with various prediction scenarios. Predicting unrelated populations led to a significant decrease in accuracy but with encouraging values for some traits and populations. Ultimately, when progressively decreasing the number of lines from breeding populations in the training set, the advantage of adding the URSN population was more pronounced, with an increase in accuracy up to 0.19.
期刊介绍:
The Plant Genome publishes original research investigating all aspects of plant genomics. Technical breakthroughs reporting improvements in the efficiency and speed of acquiring and interpreting plant genomics data are welcome. The editorial board gives preference to novel reports that use innovative genomic applications that advance our understanding of plant biology that may have applications to crop improvement. The journal also publishes invited review articles and perspectives that offer insight and commentary on recent advances in genomics and their potential for agronomic improvement.