rMSIfragment: improving MALDI-MSI lipidomics through automated in-source fragment annotation

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Abstract

Matrix-Assisted Laser Desorption Ionization Mass Spectrometry Imaging (MALDI-MSI) spatially resolves the chemical composition of tissues. Lipids are of particular interest, as they influence important biological processes in health and disease. However, the identification of lipids in MALDI-MSI remains a challenge due to the lack of chromatographic separation or untargeted tandem mass spectrometry. Recent studies have proposed the use of MALDI in-source fragmentation to infer structural information and aid identification. Here we present rMSIfragment, an open-source R package that exploits known adducts and fragmentation pathways to confidently annotate lipids in MALDI-MSI. The annotations are ranked using a novel score that demonstrates an area under the curve of 0.7 in ROC analyses using HPLC–MS and Target-Decoy validations. rMSIfragment applies to multiple MALDI-MSI sample types and experimental setups. Finally, we demonstrate that overlooking in-source fragments increases the number of incorrect annotations. Annotation workflows should consider in-source fragmentation tools such as rMSIfragment to increase annotation confidence and reduce the number of false positives.

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Baquer, G., Sementé, L., Ràfols, P., Martín-Saiz, L., Bookmeyer, C., Fernández, J. A., … García-Altares, M. (2023). rMSIfragment: improving MALDI-MSI lipidomics through automated in-source fragment annotation. Journal of Cheminformatics, 15(1). https://doi.org/10.1186/s13321-023-00756-2

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