Metabolomics, similarly to other high-throughput “-omics” techniques, generates large arrays of data, whose analysis and interpretation can be difficult and not always straightforward. Several software for the detailed metabolomics statistical analysis are available, however there is a lack of simple protocols guiding the user through a standard statistical analysis of the data. Herein we present “muma”, an R package providing a simple step-wise pipeline for metabolomics univariate and multi- variate statistical analyses. Based on published statistical algorithms and techniques, muma provides user-friendly tools for the whole process of data analysis, ranging from data imputation and preprocessing, to dataset exploration, to data in- terpretation through unsupervised/supervised multivariate and/or univariate techniques. Of note, specific tools and graph- ics aiding the explanation of statistical outcomes have been developed. Finally, a section dedicated to metabolomics data interpretation has been implemented, providing specific techniques for molecular assignments and biochemical interpreta- tion of metabolic patterns. muma is a free, user-friendly and versatile tool suite tailored to assist the user in the interpretation of metabolomics data in the identification of biomarkers and in the analysis of metabolic patterns

muma, An R Package for Metabolomics Univariate and Multivariate Statistical Analysis / E. Gaude, F. Chignola, D. Spiliotopoulos, A. Spitaleri, M. Ghitti, J. M Garcia-Manteiga, S. Mari, G. Musco. - In: CURRENT METABOLOMICS. - ISSN 2213-2368. - 1:2(2013), pp. 180-189. [10.2174/2213235X11301020005]

muma, An R Package for Metabolomics Univariate and Multivariate Statistical Analysis

A. Spitaleri
Writing – Review & Editing
;
2013

Abstract

Metabolomics, similarly to other high-throughput “-omics” techniques, generates large arrays of data, whose analysis and interpretation can be difficult and not always straightforward. Several software for the detailed metabolomics statistical analysis are available, however there is a lack of simple protocols guiding the user through a standard statistical analysis of the data. Herein we present “muma”, an R package providing a simple step-wise pipeline for metabolomics univariate and multi- variate statistical analyses. Based on published statistical algorithms and techniques, muma provides user-friendly tools for the whole process of data analysis, ranging from data imputation and preprocessing, to dataset exploration, to data in- terpretation through unsupervised/supervised multivariate and/or univariate techniques. Of note, specific tools and graph- ics aiding the explanation of statistical outcomes have been developed. Finally, a section dedicated to metabolomics data interpretation has been implemented, providing specific techniques for molecular assignments and biochemical interpreta- tion of metabolic patterns. muma is a free, user-friendly and versatile tool suite tailored to assist the user in the interpretation of metabolomics data in the identification of biomarkers and in the analysis of metabolic patterns
No
English
Chemometrics; metabonomics; metabolic pattern; multivariate analysis; R package; statistical analysis; univariate analysis
Settore FIS/07 - Fisica Applicata(Beni Culturali, Ambientali, Biol.e Medicin)
Articolo
Esperti anonimi
Pubblicazione scientifica
2013
1
2
180
189
10
Pubblicato
Periodico con rilevanza internazionale
orcid
Aderisco
info:eu-repo/semantics/article
muma, An R Package for Metabolomics Univariate and Multivariate Statistical Analysis / E. Gaude, F. Chignola, D. Spiliotopoulos, A. Spitaleri, M. Ghitti, J. M Garcia-Manteiga, S. Mari, G. Musco. - In: CURRENT METABOLOMICS. - ISSN 2213-2368. - 1:2(2013), pp. 180-189. [10.2174/2213235X11301020005]
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Article (author)
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E. Gaude, F. Chignola, D. Spiliotopoulos, A. Spitaleri, M. Ghitti, J. M Garcia-Manteiga, S. Mari, G. Musco
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1041626
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