Group aggregating normalization method for the preprocessing of NMR-based metabolomic data
Data normalization plays a crucial role in metabolomics to take into account the inevitable variation in sample concentration and the efficiency of sample preparation procedure. The conventional methods such as constant sum normalization (CSN) and probabilistic quotient normalization (PQN) are widel...
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my.utm.291502020-10-22T04:04:14Z http://eprints.utm.my/id/eprint/29150/ Group aggregating normalization method for the preprocessing of NMR-based metabolomic data Dong, J. Cheng, Kian Kai Xu, J. Chen, Z. Griffin, J. L. QD Chemistry Data normalization plays a crucial role in metabolomics to take into account the inevitable variation in sample concentration and the efficiency of sample preparation procedure. The conventional methods such as constant sum normalization (CSN) and probabilistic quotient normalization (PQN) are widely used, but both methods have their own shortcomings. In the current study, a new data normalization method called group aggregating normalization (GAN) is proposed, by which the samples were normalized so that they aggregate close to their group centers in a principal component analysis (PCA) subspace. This is in contrast with CSN and PQN which rely on a constant reference for all samples. The evaluation of GAN method using both simulated and experimental metabolomic data demonstrated that GAN produces more robust model in the subsequent multivariate data analysis, more superior than both CSN and PQN methods. The current study also demonstrated that some of the differential metabolites identified using the CSN or PQN method could be false positives due to improper data normalization. Elsevier B.V. 2011-10-15 Article PeerReviewed Dong, J. and Cheng, Kian Kai and Xu, J. and Chen, Z. and Griffin, J. L. (2011) Group aggregating normalization method for the preprocessing of NMR-based metabolomic data. Chemometrics and Intelligent Laboratory Systems, 108 (2). pp. 123-132. ISSN 0169-7439 http://dx.doi.org/10.1016/j.chemolab.2011.06.002 DOI:10.1016/j.chemolab.2011.06.002 |
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QD Chemistry Dong, J. Cheng, Kian Kai Xu, J. Chen, Z. Griffin, J. L. Group aggregating normalization method for the preprocessing of NMR-based metabolomic data |
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Data normalization plays a crucial role in metabolomics to take into account the inevitable variation in sample concentration and the efficiency of sample preparation procedure. The conventional methods such as constant sum normalization (CSN) and probabilistic quotient normalization (PQN) are widely used, but both methods have their own shortcomings. In the current study, a new data normalization method called group aggregating normalization (GAN) is proposed, by which the samples were normalized so that they aggregate close to their group centers in a principal component analysis (PCA) subspace. This is in contrast with CSN and PQN which rely on a constant reference for all samples. The evaluation of GAN method using both simulated and experimental metabolomic data demonstrated that GAN produces more robust model in the subsequent multivariate data analysis, more superior than both CSN and PQN methods. The current study also demonstrated that some of the differential metabolites identified using the CSN or PQN method could be false positives due to improper data normalization. |
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Article |
author |
Dong, J. Cheng, Kian Kai Xu, J. Chen, Z. Griffin, J. L. |
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Dong, J. Cheng, Kian Kai Xu, J. Chen, Z. Griffin, J. L. |
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Dong, J. |
title |
Group aggregating normalization method for the preprocessing of NMR-based metabolomic data |
title_short |
Group aggregating normalization method for the preprocessing of NMR-based metabolomic data |
title_full |
Group aggregating normalization method for the preprocessing of NMR-based metabolomic data |
title_fullStr |
Group aggregating normalization method for the preprocessing of NMR-based metabolomic data |
title_full_unstemmed |
Group aggregating normalization method for the preprocessing of NMR-based metabolomic data |
title_sort |
group aggregating normalization method for the preprocessing of nmr-based metabolomic data |
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Elsevier B.V. |
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2011 |
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http://eprints.utm.my/id/eprint/29150/ http://dx.doi.org/10.1016/j.chemolab.2011.06.002 |
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