代谢组学
代谢物
计算生物学
代谢途径
代谢组
串扰
代谢调节
系统生物学
激发子
计算机科学
电厂系统
生化工程
生物
生物信息学
生物化学
生物技术
新陈代谢
工程类
物理
光学
基因
作者
Nikolay Vasilev,Julien Boccard,Gerhard Lang,Ulrike Grömping,Rainer Fischer,Simon Goepfert,Serge Rudaz,Stefan Schillberg
摘要
Abstract Multiple factors act simultaneously on plants to establish complex interaction networks involving nutrients, elicitors and metabolites. Metabolomics offers a better understanding of complex biological systems, but evaluating the simultaneous impact of different parameters on metabolic pathways that have many components is a challenging task. We therefore developed a novel approach that combines experimental design, untargeted metabolic profiling based on multiple chromatography systems and ionization modes, and multiblock data analysis, facilitating the systematic analysis of metabolic changes in plants caused by different factors acting at the same time. Using this method, target geraniol compounds produced in transgenic tobacco cell cultures were grouped into clusters based on their response to different factors. We hypothesized that our novel approach may provide more robust data for process optimization in plant cell cultures producing any target secondary metabolite, based on the simultaneous exploration of multiple factors rather than varying one factor each time. The suitability of our approach was verified by confirming several previously reported examples of elicitor–metabolite crosstalk. However, unravelling all factor–metabolite networks remains challenging because it requires the identification of all biochemically significant metabolites in the metabolomics dataset.
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