代谢标记辅助基因组预测改善杂交育种。

IF 9.4 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Plant Communications Pub Date : 2024-11-29 DOI:10.1016/j.xplc.2024.101199
Yang Xu, Wenyan Yang, Jie Qiu, Kai Zhou, Guangning Yu, Yuxiang Zhang, Xin Wang, Yuxin Jiao, Xinyi Wang, Shujun Hu, Xuecai Zhang, Pengcheng Li, Yue Lu, Rujia Chen, Tianyun Tao, Zefeng Yang, Yunbi Xu, Chenwu Xu
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引用次数: 0

摘要

杂交育种被广泛认为是提高作物产量的最有效方法,特别是玉米和水稻。然而,杂交育种的一个主要挑战是从大量潜在的杂交品种中选择理想的组合。基因组选择(GS)已成为解决这一挑战的有力工具,但其在实际育种中的成功取决于预测的准确性。为了提高复杂性状的预测精度,人们已经探索了几种策略,如结合功能标记和多组学数据。全代谢组关联研究(MWAS)有助于鉴定与表型密切相关的代谢物,称为代谢标志物。然而,利用来自亲本系的预选代谢标记来预测杂交性能尚未进行探索。在这项研究中,我们开发了一种称为代谢标记辅助基因组预测(MM_GP)的新方法,将从MWAS中鉴定的重要代谢物纳入GS模型,以提高基因组杂交预测的准确性。在玉米和水稻杂交群体中,无论使用何种方法(GBLUP或XGBoost), MM_GP在所有性状上都优于GP。MM_GP对玉米和水稻的平均预测能力分别比GP高4.6%和13.6%。此外,MM_GP对大多数性状的预测能力可以匹配甚至超过M_GP(基因组-代谢组学综合预测)。值得注意的是,仅整合6个与多个性状显著相关的代谢标记,玉米的平均预测能力分别比GP和M_GP高5.0%和3.1%。随着高通量代谢组学技术和预测模型的发展,该方法通过提高其准确性和效率,有望彻底改变基因组杂交育种。
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Metabolic marker-assisted genomic prediction improves hybrid breeding.

Hybrid breeding is widely acknowledged as the most effective method for increasing crop yield, particularly in maize and rice. However, a major challenge in hybrid breeding is the selection of desirable combinations from the vast pool of potential crosses. Genomic selection (GS) has emerged as a powerful tool to tackle this challenge, but its success in practical breeding depends on prediction accuracy. Several strategies have been explored to enhance prediction accuracy for complex traits, such as the incorporation of functional markers and multi-omics data. Metabolome-wide association studies (MWAS) help to identify metabolites that are closely linked to phenotypes, known as metabolic markers. However, the use of preselected metabolic markers from parental lines to predict hybrid performance has not yet been explored. In this study, we developed a novel approach called metabolic marker-assisted genomic prediction (MM_GP), which incorporates significant metabolites identified from MWAS into GS models to improve the accuracy of genomic hybrid prediction. In maize and rice hybrid populations, MM_GP outperformed genomic prediction (GP) for all traits, regardless of the method used (genomic best linear unbiased prediction or eXtreme gradient boosting). On average, MM_GP demonstrated 4.6% and 13.6% higher predictive abilities than GP for maize and rice, respectively. MM_GP could also match or even surpass the predictive ability of M_GP (integrated genomic-metabolomic prediction) for most traits. In maize, the integration of only six metabolic markers significantly associated with multiple traits resulted in 5.0% and 3.1% higher average predictive ability compared with GP and M_GP, respectively. With advances in high-throughput metabolomics technologies and prediction models, this approach holds great promise for revolutionizing genomic hybrid breeding by enhancing its accuracy and efficiency.

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来源期刊
Plant Communications
Plant Communications Agricultural and Biological Sciences-Plant Science
CiteScore
15.70
自引率
5.70%
发文量
105
审稿时长
6 weeks
期刊介绍: Plant Communications is an open access publishing platform that supports the global plant science community. It publishes original research, review articles, technical advances, and research resources in various areas of plant sciences. The scope of topics includes evolution, ecology, physiology, biochemistry, development, reproduction, metabolism, molecular and cellular biology, genetics, genomics, environmental interactions, biotechnology, breeding of higher and lower plants, and their interactions with other organisms. The goal of Plant Communications is to provide a high-quality platform for the dissemination of plant science research.
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