Steinfath Matthias, Groth Detlef, Lisec Jan, Selbig Joachim
Department of Molecular Biology, Institute for Biology and Biochemistry, University of Potsdam, Karl-Liebknecht-Strasse 24-25, D-14476 Potsdam-Golm, Germany.
Physiol Plant. 2008 Feb;132(2):150-61. doi: 10.1111/j.1399-3054.2007.01006.x.
Successful metabolic profile analysis will aid in the fundamental understanding of physiology. Here, we present a possible analysis workflow. Initially, the procedure to transform raw data into a data matrix containing relative metabolite levels for each sample is described. Given that, because of experimental issues in the technical equipment, the levels of some metabolites cannot be universally determined or that different experiments need to be compared, missing value estimation and normalization are presented as helpful preprocessing steps. Regression methods are presented in this review as tools to relate metabolite levels with other physiological properties like biomass and gene expression. As the number of measured metabolites often exceeds the number of samples, dimensionality reduction methods are required. Two of these methods are discussed in detail in this review. Throughout this article, practical examples illustrating the application of the aforementioned methods are given. We focus on the uncovering the relationship between metabolism and growth-related properties.
成功的代谢谱分析将有助于从根本上理解生理学。在此,我们提出一种可能的分析流程。首先,描述了将原始数据转换为包含每个样本相对代谢物水平的数据矩阵的过程。鉴于由于技术设备中的实验问题,某些代谢物的水平无法普遍确定,或者需要比较不同的实验,缺失值估计和归一化作为有用的预处理步骤被提出。在本综述中,回归方法作为将代谢物水平与其他生理特性(如生物量和基因表达)相关联的工具被提出。由于测量的代谢物数量通常超过样本数量,因此需要降维方法。本综述详细讨论了其中两种方法。在整篇文章中,给出了说明上述方法应用的实际例子。我们专注于揭示代谢与生长相关特性之间的关系。