Ecofisiologia i Biotecnologia, Departament de Ciències Agràries i del Medi Natural, Universitat Jaume I, Castelló de la Plana, Spain.
J Agric Food Chem. 2009 Aug 26;57(16):7338-47. doi: 10.1021/jf9009137.
The characterization of the metabolome is a critical aspect in basic research and plant breeding. In this work, the putative application of metabolomics for phenotyping closely related genotypes has been tested. Crude extracts were profiled by LC-MS and GC-MS, and mass data extraction was performed with XCMS software. Result validation was achieved with principal component analysis (PCA). The ability of the profiling methodologies to discriminate plant genotypes was assessed after hierarchical clustering analysis (HCA). Cluster robustness was assessed by a multiscale bootstrap resampling method. A better performance of LC-MS profiling over GC-MS was evidenced in terms of phenotype demarcation after PCA and HCA. Citrus demarcation was similarly achieved independently of the environmental conditions used to grow plants. In addition, when all different locations were pooled in a single experimental design, it was still possible to differentiate the three closely related genotypes. The presented methodology provides a fast and nontargeted workflow as a powerful tool to discriminate related plant phenotypes. The novelty of the technique relies on the use of mass signals as markers for phenotype demarcation independent of putative metabolite identities and the relatively simple analytical strategy that can be applicable to a wide range of plant matrices with no previous optimization.
代谢组学的特征描述是基础研究和植物育种的一个关键方面。在这项工作中,测试了代谢组学在表型相近基因型中的应用。采用 LC-MS 和 GC-MS 对粗提物进行了分析,并使用 XCMS 软件进行了质谱数据提取。主成分分析 (PCA) 用于验证结果。采用层次聚类分析 (HCA) 评估了分析方法区分植物基因型的能力。通过多尺度自举重采样方法评估了聚类的稳健性。就 PCA 和 HCA 后的表型划分而言,LC-MS 分析的性能优于 GC-MS。无论用于种植植物的环境条件如何,都可以实现柑橘的区分。此外,当将所有不同的地点汇集在一个单独的实验设计中时,仍然可以区分三个密切相关的基因型。所提出的方法提供了一种快速的非靶向工作流程,是一种强大的工具,可以区分相关的植物表型。该技术的新颖之处在于使用质量信号作为表型划分的标记,而与假定的代谢物身份无关,并且具有相对简单的分析策略,可适用于广泛的植物基质,无需事先优化。