Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances
In this review, we summarize established and recent bioinformatic and statistical methods for the analysis of NMR-based metabolomics. Data analysis of NMR metabolic fingerprints exhibits several challenges, including unwanted biases, high dimensionality, and typically low sample numbers. Common anal...
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doaj-8879e4e861f046ed9e7a07382a9f51092020-11-25T00:13:18ZengMDPI AGMetabolites2218-19892018-08-01834710.3390/metabo8030047metabo8030047Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent AdvancesHelena U. Zacharias0Michael Altenbuchinger1Wolfram Gronwald2Institute of Computational Biology, Helmholtz Zentrum München, Ingolstädter Landstraße 1, 85764 Neuherberg, GermanyStatistical Bioinformatics, Institute of Functional Genomics, University of Regensburg, Am Biopark 9, 93053 Regensburg, GermanyInstitute of Functional Genomics, University of Regensburg, Am Biopark 9, 93053 Regensburg, GermanyIn this review, we summarize established and recent bioinformatic and statistical methods for the analysis of NMR-based metabolomics. Data analysis of NMR metabolic fingerprints exhibits several challenges, including unwanted biases, high dimensionality, and typically low sample numbers. Common analysis tasks comprise the identification of differential metabolites and the classification of specimens. However, analysis results strongly depend on the preprocessing of the data, and there is no consensus yet on how to remove unwanted biases and experimental variance prior to statistical analysis. Here, we first review established and new preprocessing protocols and illustrate their pros and cons, including different data normalizations and transformations. Second, we give a brief overview of state-of-the-art statistical analysis in NMR-based metabolomics. Finally, we discuss a recent development in statistical data analysis, where data normalization becomes obsolete. This method, called zero-sum regression, builds metabolite signatures whose estimation as well as predictions are independent of prior normalization.http://www.mdpi.com/2218-1989/8/3/47data normalizationdata scalingzero-summetabolic fingerprintingNMRstatistical data analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Helena U. Zacharias Michael Altenbuchinger Wolfram Gronwald |
spellingShingle |
Helena U. Zacharias Michael Altenbuchinger Wolfram Gronwald Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances Metabolites data normalization data scaling zero-sum metabolic fingerprinting NMR statistical data analysis |
author_facet |
Helena U. Zacharias Michael Altenbuchinger Wolfram Gronwald |
author_sort |
Helena U. Zacharias |
title |
Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances |
title_short |
Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances |
title_full |
Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances |
title_fullStr |
Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances |
title_full_unstemmed |
Statistical Analysis of NMR Metabolic Fingerprints: Established Methods and Recent Advances |
title_sort |
statistical analysis of nmr metabolic fingerprints: established methods and recent advances |
publisher |
MDPI AG |
series |
Metabolites |
issn |
2218-1989 |
publishDate |
2018-08-01 |
description |
In this review, we summarize established and recent bioinformatic and statistical methods for the analysis of NMR-based metabolomics. Data analysis of NMR metabolic fingerprints exhibits several challenges, including unwanted biases, high dimensionality, and typically low sample numbers. Common analysis tasks comprise the identification of differential metabolites and the classification of specimens. However, analysis results strongly depend on the preprocessing of the data, and there is no consensus yet on how to remove unwanted biases and experimental variance prior to statistical analysis. Here, we first review established and new preprocessing protocols and illustrate their pros and cons, including different data normalizations and transformations. Second, we give a brief overview of state-of-the-art statistical analysis in NMR-based metabolomics. Finally, we discuss a recent development in statistical data analysis, where data normalization becomes obsolete. This method, called zero-sum regression, builds metabolite signatures whose estimation as well as predictions are independent of prior normalization. |
topic |
data normalization data scaling zero-sum metabolic fingerprinting NMR statistical data analysis |
url |
http://www.mdpi.com/2218-1989/8/3/47 |
work_keys_str_mv |
AT helenauzacharias statisticalanalysisofnmrmetabolicfingerprintsestablishedmethodsandrecentadvances AT michaelaltenbuchinger statisticalanalysisofnmrmetabolicfingerprintsestablishedmethodsandrecentadvances AT wolframgronwald statisticalanalysisofnmrmetabolicfingerprintsestablishedmethodsandrecentadvances |
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