生物
混合的
基因
植物育种
遗传学
多基因
数量性状位点
最佳线性无偏预测
计算生物学
生物技术
农学
机器学习
选择(遗传算法)
计算机科学
作者
Yunhua Liu,Meiping Zhang,Chantel F. Scheuring,Mustafa Cilkiz,Sing‐Hoi Sze,C. Wayne Smith,Seth C. Murray,Wenwei Xu,Hong‐Bin Zhang
出处
期刊:Plant Science
[Elsevier]
日期:2021-12-13
卷期号:316: 111153-111153
被引量:6
标识
DOI:10.1016/j.plantsci.2021.111153
摘要
Accurate, simple, rapid, and inexpensive prediction of complex traits controlled by numerous genes is paramount to enhanced plant breeding, animal breeding, and human medicine. Here we report a novel method that enables accurate, simple, and rapid prediction of complex traits of individuals or offspring from parents based on the number of favorable alleles (NFAs) of the genes controlling the objective traits. The NFAs of 226 cotton fiber length (GFL) genes and nine maize hybrid grain yield related (ZmF1GY) genes were directly used to predict cotton fiber lengths of individual plants and maize grain yields of F1 hybrids from parents, respectively, using prediction model-based methods as controls. The NFAs of the 226 GFL genes predicted cotton fiber lengths at an accuracy of 0.85, as the model methods and outperforming genomic prediction by 82 % - 170 %. The NFAs of the nine ZmF1GY genes predicted grain yields of maize hybrids from parents at an accuracy of 0.80, outperforming genomic prediction by 67 %. Moreover, the prediction accuracies of these traits were consistent across years, environments, and eco-agricultural systems. Importantly, the accurate prediction of these traits directly using the NFAs of the genes allows breeding to be performed in greenhouse, phytotron, or off-season, without the need of the model training and validation steps essential and costly for model-based genomic or genic prediction. Therefore, this new method dramatically outperforms the current model-based genomic methods used for phenotype prediction and streamlines the process of breeding, thus promising to substantially enhance current plant and animal breeding.
科研通智能强力驱动
Strongly Powered by AbleSci AI