2018
DOI: 10.20944/preprints201807.0059.v1
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Data Normalization in NMR-based Metabolomics

Abstract: The aim of this article is to summarize recent bioinformatic and statistical developments applicable to NMR-based metabolomics. Extracting relevant information from large multivariate datasets by statistical data analysis strategies may be of considerable complexity. Typical tasks comprise for example classification of specimens, identification of differentially produced metabolites, and estimation of fold changes. In this context it is of prime importance to minimize contributions from unwanted biases and exp… Show more

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“…A recent study provided proof of concept for quantitative urine NMR metabolomics pipeline for large‐scale epidemiology and genetics study . Tools for NMR data normalization continue to evolve . Another recent treatise underscored the developments in the areas of preprocessing and statistical analysis of NMR metabolomics data, including Bayesian methods, statistical correlation analysis, statistical association networks, and data standards, among others .…”
Section: Tools For Analytical Platformsmentioning
confidence: 99%
“…A recent study provided proof of concept for quantitative urine NMR metabolomics pipeline for large‐scale epidemiology and genetics study . Tools for NMR data normalization continue to evolve . Another recent treatise underscored the developments in the areas of preprocessing and statistical analysis of NMR metabolomics data, including Bayesian methods, statistical correlation analysis, statistical association networks, and data standards, among others .…”
Section: Tools For Analytical Platformsmentioning
confidence: 99%