High-mass-resolution imaging mass spectrometry promises to localize hundreds of metabolites directly from tissues, cell cultures, and agar plates with cellular resolution, but is hampered by the lack of bioinformatics for automated metabolite identification. We developed the first bioinformatics framework for False Discovery Rate (FDR)-controlled metabolite annotation for high-mass-resolution imaging mass spectrometry (https://github.com/alexandrovteam/pySM) introducing a Metabolite-Signal Match (MSM) score and a target-decoy FDR-estimate for spatial metabolomics. LC-MS(/MS) datasets acquired from wild type adult mouse brain were used for the development of spatial metabolomics annotation bioinformatics. This study together with MTBLS317 and MTBLS378 provide the accompanying data for FDR-controlled metabolite annotation for high-resolution imaging mass spectrometry.
[dataset license: CC0 1.0 Universal (CC0 1.0)]
Keywords: GNPS Metabolomics MetaboLights
Principal Investigators: (in alphabetical order) |
Andrew Palmer, EMBL, N/A |
Submitting User: | caceves |
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