Department of molecular physiology, Max-Planck-Institute of Molecular Plant Physiology , Potsdam-Golm, Germany.
Department of plant metabolomics, Centre of Plant Systems Biology and Biotechnology , Plovdiv, Bulgaria.
Expert Rev Proteomics. 2020 Apr;17(4):243-255. doi: 10.1080/14789450.2020.1766975. Epub 2020 Jun 4.
Metabolomics has become a crucial part of systems biology; however, data analysis is still often undertaken in a reductionist way focusing on changes in individual metabolites. Whilst such approaches indeed provide relevant insights into the metabolic phenotype of an organism, the intricate nature of metabolic relationships may be better explored when considering the whole system.
This review highlights multiple network strategies that can be applied for metabolomics data analysis from different perspectives including: association networks based on quantitative information, mass spectra similarity networks to assist metabolite annotation and biochemical networks for systematic data interpretation. We also highlight some relevant insights into metabolic organization obtained through the exploration of such approaches.
Network based analysis is an established method that allows the identification of non-intuitive metabolic relationships as well as the identification of unknown compounds in mass spectrometry. Additionally, the representation of data from metabolomics within the context of metabolic networks is intuitive and allows for the use of statistical analysis that can better summarize relevant metabolic changes from a systematic perspective.
代谢组学已成为系统生物学的重要组成部分;然而,数据分析仍然常常采用还原论的方法,侧重于单个代谢物的变化。虽然这些方法确实为生物体的代谢表型提供了相关的见解,但当考虑整个系统时,考虑复杂的代谢关系可能会得到更好的探索。
本文从多个角度强调了可应用于代谢组学数据分析的多种网络策略,包括:基于定量信息的关联网络、辅助代谢物注释的质谱相似网络以及用于系统数据解释的生化网络。我们还强调了通过探索这些方法获得的一些关于代谢组织的相关见解。
基于网络的分析是一种已确立的方法,它允许识别非直观的代谢关系以及鉴定质谱中的未知化合物。此外,将代谢组学数据在代谢网络的背景下表示是直观的,并允许使用统计分析更好地从系统的角度总结相关的代谢变化。