4.6 Article

Probabilistic quotient's work and pharmacokinetics' contribution: countering size effect in metabolic time series measurements

Journal

BMC BIOINFORMATICS
Volume 23, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12859-022-04918-1

Keywords

Metabolomics; Finger Sweat; Blood Plasma; PKM; PQN

Funding

  1. University of Vienna

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The study presents an improved normalization method, MIX, that combines the advantages of a pharmacokinetic model and probabilistic quotient normalization. Testing on synthetic and real biofluid data shows that MIX can better correct for size effects.
Metabolomic time course analyses of biofluids are highly relevant for clinical diagnostics. However, many sampling methods suffer from unknown sample sizes, commonly known as size effects. This prevents absolute quantification of biomarkers. Recently, several mathematical post acquisition normalization methods have been developed to overcome these problems either by exploiting already known pharmacokinetic information or by statistical means. Here we present an improved normalization method, MIX, that combines the advantages of both approaches. It couples two normalization terms, one based on a pharmacokinetic model (PKM) and the other representing a popular statistical approach, probabilistic quotient normalization (PQN), in a single model. To test the performance of MIX, we generated synthetic data closely resembling real finger sweat metabolome measurements. We show that MIX normalization successfully tackles key weaknesses of the individual strategies: it (i) reduces the risk of overfitting with PKM, and (ii), contrary to PQN, it allows to compute sample volumes. Finally, we validate MIX by using real finger sweat as well as blood plasma metabolome data and demonstrate that MIX allows to better and more robustly correct for size effects. In conclusion, the MIX method improves the reliability and robustness of quantitative biomarker detection in finger sweat and other biofluids, paving the way for biomarker discovery and hypothesis generation from metabolomic time course data.

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