FDR-controlled metabolite annotation for high-resolution imaging mass spectrometry.
Abstract
High-mass-resolution imaging mass spectrometry promises to localize hundreds of metabolites in tissues, cell cultures, and agar plates with cellular resolution, but it is hampered by the lack of bioinformatics tools for automated metabolite identification. We report pySM, a framework for false discovery rate (FDR)-controlled metabolite annotation at the level of the molecular sum formula, for high-mass-resolution imaging mass spectrometry (https://github.com/alexandrovteam/pySM). We introduce a metabolite-signal match score and a target-decoy FDR estimate for spatial metabolomics.
Keywords
MALDI
Spatial Metabolomics
MeSH terms
Animals
Brain
Chromatography, Liquid
Computational Biology
False Positive Reactions
Female
Mass Spectrometry
Metabolome
Metabolomics
Mice
Mice, Inbred C57BL
Molecular Imaging
Software
Authors
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