Syngenta Crop Protection, LLC, 3054 E Cornwallis Rd., Research Triangle Park, NC, 27709, USA.
Syngenta Crop Protection, LLC, 2369 330th Street, Slater, IA, 50244, USA.
Theor Appl Genet. 2016 Dec;129(12):2413-2427. doi: 10.1007/s00122-016-2780-5. Epub 2016 Sep 1.
Predictive ability derived from gene expression and metabolic information was evaluated using genomic prediction methods based on datasets from a public maize panel. With the rapid development of high throughput biological technologies, information from gene expression and metabolites has received growing attention in plant genetics and breeding. In this study, we evaluated the utility of gene expression and metabolic information for genomic prediction using data obtained from a maize diversity panel. Our results show that, when used as predictor variables, gene expression levels and metabolite abundances provided reasonable predictive abilities relative to those based on genetic markers, although these values were not as large as those with genetic markers. Integrating gene expression levels and metabolite abundances with genetic markers significantly improved predictive abilities in comparison to the benchmark genomic best linear unbiased prediction model using genome-wide markers only. Predictive abilities based on gene expression and metabolites were trait-specific and were affected by the time of measurement and tissue samples as well as the number of genes and metabolites included in the model. In general, our results suggest that, rather than being conventionally used as intermediate phenotypes, gene expression and metabolic information can be used as predictors for genomic prediction and help improve genetic gains for complex traits in breeding programs.
利用基于公共玉米群体数据集的基因组预测方法,评估了来自基因表达和代谢信息的预测能力。随着高通量生物技术的快速发展,基因表达和代谢物信息在植物遗传学和育种中受到越来越多的关注。在本研究中,我们利用从玉米多样性群体获得的数据,评估了基因表达和代谢信息在基因组预测中的应用。我们的结果表明,与基于遗传标记的预测相比,尽管其预测值不如基于遗传标记的预测值大,但基因表达水平和代谢物丰度作为预测变量提供了合理的预测能力。将基因表达水平和代谢物丰度与遗传标记相结合,与仅使用全基因组标记的基准基因组最佳线性无偏预测模型相比,显著提高了预测能力。基于基因表达和代谢物的预测能力是特定于性状的,并且受到测量时间和组织样本以及模型中包含的基因和代谢物数量的影响。总的来说,我们的结果表明,基因表达和代谢信息可以作为基因组预测的预测因子,而不是传统上作为中间表型,有助于提高育种计划中复杂性状的遗传增益。