Nagler Matthias, Nägele Thomas, Gilli Christian, Fragner Lena, Korte Arthur, Platzer Alexander, Farlow Ashley, Nordborg Magnus, Weckwerth Wolfram
Department of Ecogenomics and Systems Biology, University of Vienna, Vienna, Austria.
LMU Munich, Plant Evolutionary Cell Biology, Munich, Germany.
Front Plant Sci. 2018 Nov 6;9:1556. doi: 10.3389/fpls.2018.01556. eCollection 2018.
Experimental high-throughput analysis of molecular networks is a central approach to characterize the adaptation of plant metabolism to the environment. However, recent studies have demonstrated that it is hardly possible to predict metabolic phenotypes from experiments under controlled conditions, such as growth chambers or greenhouses. This is particularly due to the high molecular variance of samples induced by environmental fluctuations. An approach of functional metabolome interpretation of field samples would be desirable in order to be able to identify and trace back the impact of environmental changes on plant metabolism. To test the applicability of metabolomics studies for a characterization of plant populations in the field, we have identified and analyzed samples of nearby grown natural populations of in Austria. is the primary molecular biological model system in plant biology with one of the best functionally annotated genomes representing a reference system for all other plant genome projects. The genomes of these novel natural populations were sequenced and phylogenetically compared to a comprehensive genome database of ecotypes. Experimental results on primary and secondary metabolite profiling and genotypic variation were functionally integrated by a data mining strategy, which combines statistical output of metabolomics data with genome-derived biochemical pathway reconstruction and metabolic modeling. Correlations of biochemical model predictions and population-specific genetic variation indicated varying strategies of metabolic regulation on a population level which enabled the direct comparison, differentiation, and prediction of metabolic adaptation of the same species to different habitats. These differences were most pronounced at organic and amino acid metabolism as well as at the interface of primary and secondary metabolism and allowed for the direct classification of population-specific metabolic phenotypes within geographically contiguous sampling sites.
分子网络的实验性高通量分析是表征植物代谢对环境适应性的核心方法。然而,最近的研究表明,在可控条件下(如生长室或温室)进行的实验几乎无法预测代谢表型。这尤其归因于环境波动引起的样本分子高变异性。为了能够识别并追溯环境变化对植物代谢的影响,一种对田间样本进行功能代谢组解读的方法将是可取的。为了测试代谢组学研究在表征田间植物种群方面的适用性,我们在奥地利识别并分析了附近生长的自然种群的样本。拟南芥是植物生物学中主要的分子生物学模型系统,其功能注释最好的基因组之一代表了所有其他植物基因组计划的参考系统。对这些新的自然种群的基因组进行了测序,并与拟南芥生态型的综合基因组数据库进行了系统发育比较。通过一种数据挖掘策略,将初级和次级代谢物谱分析以及基因型变异的实验结果进行了功能整合,该策略将代谢组学数据的统计输出与源自基因组的生化途径重建和代谢建模相结合。生化模型预测与种群特异性遗传变异之间的相关性表明,在种群水平上存在不同的代谢调控策略,这使得能够直接比较、区分和预测同一物种对不同栖息地的代谢适应性。这些差异在有机和氨基酸代谢以及初级和次级代谢的界面最为明显,并允许在地理上相邻的采样点内对种群特异性代谢表型进行直接分类。