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利用基因组选择预测软红冬小麦育种计划中高级试验的赤霉病抗性

Predicting Fusarium Head Blight Resistance for Advanced Trials in a Soft Red Winter Wheat Breeding Program With Genomic Selection.

作者信息

Larkin Dylan L, Mason Richard Esten, Moon David E, Holder Amanda L, Ward Brian P, Brown-Guedira Gina

机构信息

Department of Crop, Soil, and Environmental Sciences, University of Arkansas, Fayetteville, AR, United States.

USDA-ARS SEA, Plant Science Research, Raleigh, NC, United States.

出版信息

Front Plant Sci. 2021 Oct 22;12:715314. doi: 10.3389/fpls.2021.715314. eCollection 2021.

Abstract

Many studies have evaluated the effectiveness of genomic selection (GS) using cross-validation within training populations; however, few have looked at its performance for forward prediction within a breeding program. The objectives for this study were to compare the performance of naïve GS (NGS) models without covariates and multi-trait GS (MTGS) models by predicting two years of F advanced breeding lines for three Fusarium head blight (FHB) resistance traits, deoxynivalenol (DON) accumulation, Fusarium damaged kernels (FDK), and severity (SEV) in soft red winter wheat and comparing predictions with phenotypic performance over two years of selection based on selection accuracy and response to selection. On average, for DON, the NGS model correctly selected 69.2% of elite genotypes, while the MTGS model correctly selected 70.1% of elite genotypes compared with 33.0% based on phenotypic selection from the advanced generation. During the 2018 breeding cycle, GS models had the greatest response to selection for DON, FDK, and SEV compared with phenotypic selection. The MTGS model performed better than NGS during the 2019 breeding cycle for all three traits, whereas NGS outperformed MTGS during the 2018 breeding cycle for all traits except for SEV. Overall, GS models were comparable, if not better than phenotypic selection for FHB resistance traits. This is particularly helpful when adverse environmental conditions prohibit accurate phenotyping. This study also shows that MTGS models can be effective for forward prediction when there are strong correlations between traits of interest and covariates in both training and validation populations.

摘要

许多研究在训练群体中使用交叉验证评估了基因组选择(GS)的有效性;然而,很少有研究考察其在育种计划中进行向前预测的表现。本研究的目的是通过预测软红冬小麦三个赤霉病(FHB)抗性性状(脱氧雪腐镰刀菌烯醇(DON)积累量、镰刀菌损伤粒(FDK)和严重程度(SEV))的两年F代先进育种系,并基于选择准确性和对选择的响应,将预测结果与两年选择期内的表型表现进行比较,来比较无协变量的朴素GS(NGS)模型和多性状GS(MTGS)模型的表现。平均而言,对于DON,NGS模型正确选择了69.2%的优良基因型,而MTGS模型正确选择了70.1%的优良基因型,相比之下,基于从高世代进行表型选择的比例为33.0%。在2018年育种周期中,与表型选择相比,GS模型对DON、FDK和SEV的选择响应最大。在2019年育种周期中,MTGS模型在所有三个性状上的表现均优于NGS,而在2018年育种周期中,除SEV外,NGS在所有性状上均优于MTGS。总体而言,对于FHB抗性性状,GS模型即使不比表型选择更好,也与之相当。当不利的环境条件妨碍准确的表型分析时,这一点尤其有用。本研究还表明,当感兴趣的性状与训练群体和验证群体中的协变量之间存在强相关性时,MTGS模型可有效地进行向前预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b27a/8569947/0e6ea21faf0d/fpls-12-715314-g001.jpg

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