Frontiers in Molecular Biosciences (Aug 2022)

Comparison of extraction methods for intracellular metabolomics of human tissues

  • Carolin Andresen,
  • Carolin Andresen,
  • Carolin Andresen,
  • Tobias Boch,
  • Tobias Boch,
  • Tobias Boch,
  • Tobias Boch,
  • Tobias Boch,
  • Hagen M. Gegner,
  • Nils Mechtel,
  • Andreas Narr,
  • Andreas Narr,
  • Andreas Narr,
  • Emrullah Birgin,
  • Erik Rasbach,
  • Nuh Rahbari,
  • Andreas Trumpp,
  • Andreas Trumpp,
  • Andreas Trumpp,
  • Gernot Poschet,
  • Daniel Hübschmann,
  • Daniel Hübschmann,
  • Daniel Hübschmann

DOI
https://doi.org/10.3389/fmolb.2022.932261
Journal volume & issue
Vol. 9

Abstract

Read online

Analyses of metabolic compounds inside cells or tissues provide high information content since they represent the endpoint of biological information flow and are a snapshot of the integration of many regulatory processes. However, quantification of the abundance of metabolites requires their careful extraction. We present a comprehensive study comparing ten extraction protocols in four human sample types (liver tissue, bone marrow, HL60, and HEK cells) aiming to detect and quantify up to 630 metabolites of different chemical classes. We show that the extraction efficiency and repeatability are highly variable across protocols, tissues, and chemical classes of metabolites. We used different quality metrics including the limit of detection and variability between replicates as well as the sum of concentrations as a global estimate of analytical repeatability of the extraction. The coverage of extracted metabolites depends on the used solvents, which has implications for the design of measurements of different sample types and metabolic compounds of interest. The benchmark dataset can be explored in an easy-to-use, interactive, and flexible online resource (R/shiny app MetaboExtract: http://www.metaboextract.shiny.dkfz.de) for context-specific selection of the optimal extraction method. Furthermore, data processing and conversion functionality underlying the shiny app are accessible as an R package: https://cran.r-project.org/package=MetAlyzer.

Keywords