4.5 Article

New insights into the conversion of electropherograms to the effective electrophoretic mobility scale

Journal

ELECTROPHORESIS
Volume 42, Issue 19, Pages 1875-1884

Publisher

WILEY
DOI: 10.1002/elps.202000333

Keywords

Area correction; Compound identification; Electrophoretic mobility; Fundamentals; Quantitation

Funding

  1. Swiss National Science Foundation [31003A_166658]
  2. Swiss Centre for Applied Human Toxicology
  3. Swiss National Science Foundation (SNF) [31003A_166658] Funding Source: Swiss National Science Foundation (SNF)

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CE-MS as an analytical tool for metabolomics is increasingly popular, with the new version of ROMANCE software offering enhanced features and flexibility in handling various types of data. Through experimental validation, the software has shown increased peak position precision and has successfully been applied to actual untargeted metabolomics data.
CE-MS is increasingly gaining momentum as an analytical tool in metabolomics, due to its ability to obtain information about the most polar elements in biological samples. This has been helped by improvements of robustness in peak identification by means of mobility-scale representations of the electropherograms (mobilograms). As a necessary step toward facilitating the use of CE-MS for untargeted metabolomics data, the authors previously developed and introduced ROMANCE, a software automating mobilogram generation for large untargeted datasets through a simple and self-contained user interface. Herein, we introduce a new version of ROMANCE including new features such as compatibility with other types of data (targeted MS data and 2D UV-Vis absorption-like electropherograms), and the much needed additional flexibility in the transformation parameters (including field ramping and the use of secondary markers), more measurement conditions (depending on detection and integration modes), and most importantly tackling the issue of quantitative peak conversion. First, we present a review of the current theoretical framework with regard to peak characterization, and we develop new formulas for multiple marker peak area corrections, for anticipating peak position precision, and for assessing peak shape distortion. Then, the new version of the software is presented and validated experimentally. We contrast the multiple marker mobility transformations with previous results, finding increased peak position precision, and finally we showcase an application to actual untargeted metabolomics data.

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