Affiliation:
1. Ph.D. candidates of Zhejiang University, China, and jointly cultivated by the School of Pharmaceutical Sciences in Chongqing University, China. Their main research interests include OMICs-based bioinformatics and statistical metabolomics
Abstract
Abstract
Unwanted experimental/biological variation and technical error are frequently encountered in current metabolomics, which requires the employment of normalization methods for removing undesired data fluctuations. To ensure the ‘thorough’ removal of unwanted variations, the collective consideration of multiple criteria (‘intragroup variation’, ‘marker stability’ and ‘classification capability’) was essential. However, due to the limited number of available normalization methods, it is extremely challenging to discover the appropriate one that can meet all these criteria. Herein, a novel approach was proposed to discover the normalization strategies that are consistently well performing (CWP) under all criteria. Based on various benchmarks, all normalization methods popular in current metabolomics were ‘first’ discovered to be non-CWP. ‘Then’, 21 new strategies that combined the ‘sample’-based method with the ‘metabolite’-based one were found to be CWP. ‘Finally’, a variety of currently available methods (such as cubic splines, range scaling, level scaling, EigenMS, cyclic loess and mean) were identified to be CWP when combining with other normalization. In conclusion, this study not only discovered several strategies that performed consistently well under all criteria, but also proposed a novel approach that could ensure the identification of CWP strategies for future biological problems.
Funder
Innovation Project on Industrial Generic Key Technologies of Chongqing
Fundamental Research Fund for Central University
National Natural Science Foundation of China
National Key Research and Development Program of China
Publisher
Oxford University Press (OUP)
Subject
Molecular Biology,Information Systems
Cited by
48 articles.
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