单变量
多元统计
主成分分析
代谢组学
多元分析
多元方差分析
线性判别分析
偏最小二乘回归
统计
计算机科学
数据分析
差异(会计)
数据挖掘
生物
数学
生物信息学
会计
业务
作者
Edoardo Saccenti,Huub C. J. Hoefsloot,Age K. Smilde,Johan A. Westerhuis,Margriet M. W. B. Hendriks
出处
期刊:Metabolomics
[Springer Science+Business Media]
日期:2013-10-25
卷期号:10 (3): 361-374
被引量:595
标识
DOI:10.1007/s11306-013-0598-6
摘要
Metabolomics experiments usually result in a large quantity of data. Univariate and multivariate analysis techniques are routinely used to extract relevant information from the data with the aim of providing biological knowledge on the problem studied. Despite the fact that statistical tools like the t test, analysis of variance, principal component analysis, and partial least squares discriminant analysis constitute the backbone of the statistical part of the vast majority of metabolomics papers, it seems that many basic but rather fundamental questions are still often asked, like: Why do the results of univariate and multivariate analyses differ? Why apply univariate methods if you have already applied a multivariate method? Why if I do not see something univariately I see something multivariately? In the present paper we address some aspects of univariate and multivariate analysis, with the scope of clarifying in simple terms the main differences between the two approaches. Applications of the t test, analysis of variance, principal component analysis and partial least squares discriminant analysis will be shown on both real and simulated metabolomics data examples to provide an overview on fundamental aspects of univariate and multivariate methods.
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