Ma Juan, Cao Yanyong
Institute of Cereal Crops, Henan Academy of Agricultural Sciences, Zhengzhou, China.
Front Plant Sci. 2021 Jul 15;12:690059. doi: 10.3389/fpls.2021.690059. eCollection 2021.
High yield is the primary objective of maize breeding. Genomic dissection of grain yield and yield-related traits contribute to understanding the yield formation and improving the yield of maize. In this study, two genome-wide association study (GWAS) methods and genomic prediction were made on an association panel of 309 inbred lines. GWAS analyses revealed 22 significant trait-marker associations for grain yield per plant (GYP) and yield-related traits. Genomic prediction analyses showed that reproducing kernel Hilbert space (RKHS) outperformed the other four models based on GWAS-derived markers for GYP, ear weight, kernel number per ear and row, ear length, and ear diameter, whereas genomic best linear unbiased prediction (GBLUP) showed a slight superiority over other modes in most subsets of the trait-associated marker (TAM) for thousand kernel weight and kernel row number. The prediction accuracy could be improved when significant single-nucleotide polymorphisms were fitted as the fixed effects. Integrating information on population structure into the fixed model did not improve the prediction performance. For GYP, the prediction accuracy of TAMs derived from fixed and random model Circulating Probability Unification (FarmCPU) was comparable to that of the compressed mixed linear model (CMLM). For yield-related traits, CMLM-derived markers provided better accuracies than FarmCPU-derived markers in most scenarios. Compared with all markers, TAMs could effectively improve the prediction accuracies for GYP and yield-related traits. For eight traits, moderate- and high-prediction accuracies were achieved using TAMs. Taken together, genomic prediction incorporating prior information detected by GWAS could be a promising strategy to improve the grain yield of maize.
高产是玉米育种的主要目标。对籽粒产量及产量相关性状进行基因组解析有助于理解玉米产量形成并提高其产量。本研究对309个自交系的关联群体采用了两种全基因组关联研究(GWAS)方法及基因组预测。GWAS分析揭示了22个与单株籽粒产量(GYP)及产量相关性状显著的性状-标记关联。基因组预测分析表明,对于GYP、穗重、每穗粒数及行数、穗长和穗直径,基于GWAS衍生标记的再生核希尔伯特空间(RKHS)优于其他四个模型,而基因组最佳线性无偏预测(GBLUP)在千粒重和粒行数的性状关联标记(TAM)的大多数子集中比其他模型略有优势。当将显著的单核苷酸多态性作为固定效应纳入时,预测准确性可得到提高。将群体结构信息整合到固定模型中并不能提高预测性能。对于GYP,来自固定和随机模型循环概率统一法(FarmCPU)的TAM的预测准确性与压缩混合线性模型(CMLM)相当。对于产量相关性状,在大多数情况下,CMLM衍生的标记比FarmCPU衍生的标记提供了更高的准确性。与所有标记相比,TAM可有效提高GYP和产量相关性状的预测准确性。对于八个性状,使用TAM可实现中等和高预测准确性。综上所述,纳入GWAS检测到的先验信息的基因组预测可能是提高玉米籽粒产量的一种有前景的策略。