Cohort-based strategies as an in-house tool to evaluate and improve phenotyping robustness of LC–MS/MS lipidomics platforms

Research output: Contribution to journalJournal articleResearchpeer-review

  • Benedikt Zöhrer
  • Cristina Gómez
  • Joaquim Jaumot
  • Helena Idborg
  • Torekov, Signe Sørensen
  • Åsa M. Wheelock
  • Craig E. Wheelock
  • Antonio Checa

In recent years, instrumental improvements have enabled the spread of mass spectrometry–based lipidomics platforms in biomedical research. In mass spectrometry, the reliability of generated data varies for each compound, contingent on, among other factors, the availability of labeled internal standards. It is challenging to evaluate the data for lipids without specific labeled internal standards, especially when dozens to hundreds of lipids are measured simultaneously. Thus, evaluation of the performance of these platforms at the individual lipid level in interlaboratory studies is generally not feasible in a time-effective manner. Herein, using a focused subset of sphingolipids, we present an in-house validation methodology for individual lipid reliability assessment, tailored to the statistical analysis to be applied. Moreover, this approach enables the evaluation of various methodological aspects, including discerning coelutions sharing identical selected reaction monitoring transitions, pinpointing optimal labeled internal standards and their concentrations, and evaluating different extraction techniques. While the full validation according to analytical guidelines for all lipids included in a lipidomics method is currently not possible, this process shows areas to focus on for subsequent method development iterations as well as the robustness of data generated across diverse methodologies. Graphical abstract: (Figure presented.)

Original languageEnglish
JournalAnalytical and Bioanalytical Chemistry
ISSN1618-2642
DOIs
Publication statusE-pub ahead of print - 2024

Bibliographical note

Publisher Copyright:
© The Author(s) 2024.

    Research areas

  • Bioanalytical methods, LC-MS/MS, Lipidomics, Sphingolipids

ID: 398346705