Authors
Lauritz F Brorsen, James S McKenzie, Mette F Tullin, Katja MS Bendtsen, Fernanda E Pinto, Henrik E Jensen, Merete Haedersdal, Zoltan Takats, Christian Janfelt, Catharina M Lerche
Publication date
2024/5/15
Journal
Scientific Reports
Volume
14
Issue
1
Pages
11091
Publisher
Nature Publishing Group UK
Description
Cutaneous squamous cell carcinoma (SCC) is an increasingly prevalent global health concern. Current diagnostic and surgical methods are reliable, but they require considerable resources and do not provide metabolomic insight. Matrix-assisted laser desorption/ionization mass spectrometry imaging (MALDI-MSI) enables detailed, spatially resolved metabolomic analysis of tissue samples. Integrated with machine learning, MALDI-MSI could yield detailed information pertaining to the metabolic alterations characteristic for SCC. These insights have the potential to enhance SCC diagnosis and therapy, improving patient outcomes while tackling the growing disease burden. This study employs MALDI-MSI data, labelled according to histology, to train a supervised machine learning model (logistic regression) for the recognition and delineation of SCC. The model, based on data acquired from discrete tumor sections …
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