Untargeted pixel-by-pixel metabolite ratio imaging as a novel tool for biomedical discovery in mass spectrometry imaging.

TitleUntargeted pixel-by-pixel metabolite ratio imaging as a novel tool for biomedical discovery in mass spectrometry imaging.
Publication TypeJournal Article
Year of Publication2025
AuthorsCheng H, Miller D, Southwell N, Porcari P, Fischer JL, Taylor I, J Salbaum M, Kappen C, Hu F, Yang C, Keshari KR, Gross SS, D'Aurelio M, Chen Q
JournalElife
Volume13
Date Published2025 Mar 18
ISSN2050-084X
KeywordsAlgorithms, Animals, Brain, Image Processing, Computer-Assisted, Mass Spectrometry, Metabolome, Metabolomics, Mice, Software
Abstract

Mass spectrometry imaging (MSI) is a powerful technology used to define the spatial distribution and relative abundance of metabolites across tissue cryosections. While software packages exist for pixel-by-pixel individual metabolite and limited target pairs of ratio imaging, the research community lacks an easy computing and application tool that images any metabolite abundance ratio pairs. Importantly, recognition of correlated metabolite pairs may contribute to the discovery of unanticipated molecules in shared metabolic pathways. Here, we describe the development and implementation of an untargeted R package workflow for pixel-by-pixel ratio imaging of all metabolites detected in an MSI experiment. Considering untargeted MSI studies of murine brain and embryogenesis, we demonstrate that ratio imaging minimizes systematic data variation introduced by sample handling, markedly enhances spatial image contrast, and reveals previously unrecognized metabotype-distinct tissue regions. Furthermore, ratio imaging facilitates identification of novel regional biomarkers and provides anatomical information regarding spatial distribution of metabolite-linked biochemical pathways. The algorithm described herein is applicable to any MSI dataset containing spatial information for metabolites, peptides or proteins, offering a potent hypothesis generation tool to enhance knowledge obtained from current spatial metabolite profiling technologies.

DOI10.7554/eLife.96892
Alternate JournalElife
PubMed ID40100251
PubMed Central IDPMC11919253
Grant ListR21 NS118233 / NS / NINDS NIH HHS / United States
R21 ES032347 / GF / NIH HHS / United States
S10 OD023652 / OD / NIH HHS / United States
R21 NS118233-01A1 / GF / NIH HHS / United States
R01 AR076029 / AR / NIAMS NIH HHS / United States
S10OD023652 / / Nation Institute /
R21 ES032347 / ES / NIEHS NIH HHS / United States