Nature Communications (Oct 2024)

METASPACE-ML: Context-specific metabolite annotation for imaging mass spectrometry using machine learning

  • Bishoy Wadie,
  • Lachlan Stuart,
  • Christopher M. Rath,
  • Bernhard Drotleff,
  • Sergii Mamedov,
  • Theodore Alexandrov

DOI
https://doi.org/10.1038/s41467-024-52213-9
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 16

Abstract

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Abstract Imaging mass spectrometry is a powerful technology enabling spatial metabolomics, yet metabolites can be assigned only to a fraction of the data generated. METASPACE-ML is a machine learning-based approach addressing this challenge which incorporates new scores and computationally-efficient False Discovery Rate estimation. For training and evaluation, we use a comprehensive set of 1710 datasets from 159 researchers from 47 labs encompassing both animal and plant-based datasets representing multiple spatial metabolomics contexts derived from the METASPACE knowledge base. Here we show that, METASPACE-ML outperforms its rule-based predecessor, exhibiting higher precision, increased throughput, and enhanced capability in identifying low-intensity and biologically-relevant metabolites.