Corporate Center for Analytical Sciences, DuPont Experimental Station , 200 Powder Mill Road, Wilmington, Delaware 19803, United States.
Analytical & Genomics Technologies, DuPont Pioneer , 8325 NW 62nd Avenue, Johnston, Iowa 50131-7062, United States.
J Agric Food Chem. 2017 Jun 28;65(25):5215-5225. doi: 10.1021/acs.jafc.7b00456. Epub 2017 Jun 14.
We evaluated the variability of metabolites in various maize hybrids due to the effect of environment, genotype, phenotype as well as the interaction of the first two factors. We analyzed 480 forage and the same number of grain samples from 21 genetically diverse non-GM Pioneer brand maize hybrids, including some with drought tolerance and viral resistance phenotypes, grown at eight North American locations. As complementary platforms, both GC/MS and LC/MS were utilized to detect a wide diversity of metabolites. GC/MS revealed 166 and 137 metabolites in forage and grain samples, respectively, while LC/MS captured 1341 and 635 metabolites in forage and grain samples, respectively. Univariate and multivariate analyses were utilized to investigate the response of the maize metabolome to the environment, genotype, phenotype, and their interaction. Based on combined percentages from GC/MS and LC/MS datasets, the environment affected 36% to 84% of forage metabolites, while less than 7% were affected by genotype. The environment affected 12% to 90% of grain metabolites, whereas less than 27% were affected by genotype. Less than 10% and 11% of the metabolites were affected by phenotype in forage and grain, respectively. Unsupervised PCA and HCA analyses revealed similar trends, i.e., environmental effect was much stronger than genotype or phenotype effects. On the basis of comparisons of disease tolerant and disease susceptible hybrids, neither forage nor grain samples originating from different locations showed obvious phenotype effects. Our findings demonstrate that the combination of GC/MS and LC/MS based metabolite profiling followed by broad statistical analysis is an effective approach to identify the relative impact of environmental, genetic and phenotypic effects on the forage and grain composition of maize hybrids.
我们评估了不同玉米杂交种中由于环境、基因型、表型以及前两个因素相互作用的影响而导致的代谢物的可变性。我们分析了 21 种不同非转基因先锋品牌玉米杂交种的 480 份饲料和相同数量的谷物样本,其中包括一些具有耐旱和抗病毒表型的品种,这些品种在北美 8 个地点种植。作为补充平台,我们同时使用 GC/MS 和 LC/MS 来检测广泛的代谢物多样性。GC/MS 分别在饲料和谷物样本中发现了 166 种和 137 种代谢物,而 LC/MS 分别在饲料和谷物样本中发现了 1341 种和 635 种代谢物。我们使用单变量和多变量分析来研究玉米代谢组对环境、基因型、表型及其相互作用的响应。基于 GC/MS 和 LC/MS 数据集的综合百分比,环境因素影响了 36%至 84%的饲料代谢物,而基因型的影响不到 7%。环境因素影响了 12%至 90%的谷物代谢物,而基因型的影响不到 27%。在饲料和谷物中,表型分别影响了不到 10%和 11%的代谢物。无监督的 PCA 和 HCA 分析揭示了相似的趋势,即环境效应比基因型或表型效应强得多。基于对耐病和易感杂交种的比较,来自不同地点的饲料和谷物样本均未表现出明显的表型效应。我们的研究结果表明,基于 GC/MS 和 LC/MS 的代谢物分析结合广泛的统计分析是一种有效的方法,可以确定环境、遗传和表型效应对玉米杂交种饲料和谷物成分的相对影响。