Concepts and Software Package for Efficient Quality Control in Targeted Metabolomics Studies: MeTaQuaC

Targeted quantitative mass spectrometry metabolite profiling is the workhorse of metabolomics research. Robust and reproducible data are essential for confidence in analytical results and are particularly important with large-scale studies. Commercial kits are now available which use carefully calib...

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Veröffentlicht in:Analytical chemistry (Washington) 2020-08, Vol.92 (15), p.10241-10245
Hauptverfasser: Kuhring, Mathias, Eisenberger, Alina, Schmidt, Vanessa, Kränkel, Nicolle, Leistner, David M, Kirwan, Jennifer, Beule, Dieter
Format: Artikel
Sprache:eng
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Zusammenfassung:Targeted quantitative mass spectrometry metabolite profiling is the workhorse of metabolomics research. Robust and reproducible data are essential for confidence in analytical results and are particularly important with large-scale studies. Commercial kits are now available which use carefully calibrated and validated internal and external standards to provide such reliability. However, they are still subject to processing and technical errors in their use and should be subject to a laboratory’s routine quality assurance and quality control measures to maintain confidence in the results. We discuss important systematic and random measurement errors when using these kits and suggest measures to detect and quantify them. We demonstrate how wider analysis of the entire data set alongside standard analyses of quality control samples can be used to identify outliers and quantify systematic trends to improve downstream analysis. Finally, we present the MeTaQuaC software which implements the above concepts and methods for Biocrates kits and other target data sets and creates a comprehensive quality control report containing rich visualization and informative scores and summary statistics. Preliminary unsupervised multivariate analysis methods are also included to provide rapid insight into study variables and groups. MeTaQuaC is provided as an open source R package under a permissive MIT license and includes detailed user documentation.
ISSN:0003-2700
1520-6882
DOI:10.1021/acs.analchem.0c00136