Feature extraction for proteomics imaging mass spectrometry data
Lyron J. Winderbaum, Inge Koch, Ove J. R. Gustafsson, Stephan Meding,, Peter Hoffmann

TL;DR
This paper introduces a novel method combining clustering and feature extraction tailored for spatially structured proteomics imaging mass spectrometry data, effectively distinguishing tissue types and cancerous regions.
Contribution
It presents an integrated approach that leverages spatial information and binary ion presence data for accurate tissue classification and feature selection in IMS data.
Findings
Effective separation of tissue types in ovarian cancer data
High agreement with pathologist-identified tissue regions
Clear visualization of key molecular features
Abstract
Imaging mass spectrometry (IMS) has transformed proteomics by providing an avenue for collecting spatially distributed molecular data. Mass spectrometry data acquired with matrix assisted laser desorption ionization (MALDI) IMS consist of tens of thousands of spectra, measured at regular grid points across the surface of a tissue section. Unlike the more standard liquid chromatography mass spectrometry, MALDI-IMS preserves the spatial information inherent in the tissue. Motivated by the need to differentiate cell populations and tissue types in MALDI-IMS data accurately and efficiently, we propose an integrated cluster and feature extraction approach for such data. We work with the derived binary data representing presence/absence of ions, as this is the essential information in the data. Our approach takes advantage of the spatial structure of the data in a noise removal and initial…
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