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Spatial probabilistic mapping of metabolite ensembles in mass spectrometry imaging.

Denis Abu SammourJames L CairnsTobias BoskampChristian MarschingTobias KesslerCarina Ramallo GuevaraVerena PanitzAhmed SadikJonas CordesStefan SchmidtShad A MohammedMiriam F RittelMirco FriedrichMichael PlattenIvo WolfAndreas von DeimlingChristiane A OpitzWolfgang WickCarsten Hopf
Published in: Nature communications (2023)
Mass spectrometry imaging vows to enable simultaneous spatially resolved investigation of hundreds of metabolites in tissues, but it primarily relies on traditional ion images for non-data-driven metabolite visualization and analysis. The rendering and interpretation of ion images neither considers nonlinearities in the resolving power of mass spectrometers nor does it yet evaluate the statistical significance of differential spatial metabolite abundance. Here, we outline the computational framework moleculaR ( https://github.com/CeMOS-Mannheim/moleculaR ) that is expected to improve signal reliability by data-dependent Gaussian-weighting of ion intensities and that introduces probabilistic molecular mapping of statistically significant nonrandom patterns of relative spatial abundance of metabolites-of-interest in tissue. moleculaR also enables cross-tissue statistical comparisons and collective molecular projections of entire biomolecular ensembles followed by their spatial statistical significance evaluation on a single tissue plane. It thereby fosters the spatially resolved investigation of ion milieus, lipid remodeling pathways, or complex scores like the adenylate energy charge within the same image.
Keyphrases
  • high resolution
  • mass spectrometry
  • deep learning
  • single molecule
  • ms ms
  • convolutional neural network
  • machine learning
  • high density
  • wastewater treatment
  • fatty acid
  • fluorescence imaging