变化(天文学)
规范化(社会学)
代谢组学
鉴定(生物学)
化学
生化工程
光学(聚焦)
数据挖掘
计算机科学
色谱法
生态学
工程类
光学
物理
社会学
天体物理学
人类学
生物
作者
Alysha De Livera,Daniel A. Dias,David P. De Souza,Thusitha Rupasinghe,James Pyke,Dedreia Tull,Ute Roessner,Malcolm J. McConville,Terence P. Speed
出处
期刊:Analytical Chemistry
[American Chemical Society]
日期:2012-11-14
卷期号:84 (24): 10768-10776
被引量:191
摘要
Metabolomics research often requires the use of multiple analytical platforms, batches of samples, and laboratories, any of which can introduce a component of unwanted variation. In addition, every experiment is subject to within-platform and other experimental variation, which often includes unwanted biological variation. Such variation must be removed in order to focus on the biological information of interest. We present a broadly applicable method for the removal of unwanted variation arising from various sources for the identification of differentially abundant metabolites and, hence, for the systematic integration of data on the same quantities from different sources. We illustrate the versatility and the performance of the approach in four applications, and we show that it has several advantages over the existing normalization methods.
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