Litcius/Paper detail

Data normalization strategies in metabolomics: Current challenges, approaches, and tools

Biswapriya B. Misra

2020European Journal of Mass Spectrometry125 citationsDOI

Abstract

Data normalization is a big challenge in quantitative metabolomics approaches, whether targeted or untargeted. Without proper normalization, the mass-spectrometry and spectroscopy data can provide erroneous, sub-optimal data, which can lead to misleading and confusing biological results and thereby result in failed application to human healthcare, clinical, and other research avenues. To address this issue, a number of statistical approaches and software tools have been proposed in the literature and implemented over the years, thereby providing a multitude of approaches to choose from - either sample-based or data-based normalization strategies. In recent years, new dedicated software tools for metabolomics data normalization have surfaced as well. In this account article, I summarize the existing approaches and the new discoveries and research findings in this area of metabolomics data normalization, and I introduce some recent tools that aid in data normalization.

Topics & Concepts

Normalization (sociology)Computer scienceDatabase normalizationMetabolomicsData scienceSoftwareBig dataData miningArtificial intelligenceBioinformaticsPattern recognition (psychology)BiologySociologyProgramming languageAnthropologyMetabolomics and Mass Spectrometry StudiesIsotope Analysis in EcologyAdvanced Chemical Sensor Technologies