Quantile normalization approach for liquid chromatography- mass spectrometry-based metabolomic data from healthy human volunteers

Joomi Lee, Jeonghyeon Park, Mi Sun Lim, Sook Jin Seong, Jeong Ju Seo, Sung Min Park, Hae Won Lee, Young Ran Yoon

Research output: Contribution to journalArticlepeer-review

39 Scopus citations

Abstract

In metabolomic research, it is important to reduce systematic error in experimental conditions. To ensure that metabolomic data from different studies are comparable, it is necessary to remove unwanted systematic factors by data normalization. Several normalization methods are used for metabolomic data, but the best method has not yet been identified. In this study, to reduce variation from non-biological systematic errors, we applied 1-norm, 2-norm, and quantile normalization methods to liquid chromatography-mass spectrometry (LC-MS)-based metabolomic data from human urine samples after oral administration of cyclosporine (high- and low-dose) in healthy volunteers and compared the effectiveness of the three methods. The principal component analysis (PCA) score plot showed more obvious groupings according to the cyclosporine dose after quantile normalization than after the other two methods and prior to normalization. Quantile normalization is a simple and effective method to reduce non-biological systematic variation from human LC-MS-based metabolomic data, revealing the biological variance.

Original languageEnglish
Pages (from-to)801-805
Number of pages5
JournalAnalytical Sciences
Volume28
Issue number8
DOIs
StatePublished - 2012

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