Journal article
Cancer tissue classification using supervised machine learning applied to maldi mass spectrometry imaging
P Mittal, MR Condina, M Klingler-Hoffmann, G Kaur, MK Oehler, OM Sieber, M Palmieri, S Kommoss, S Brucker, MD McDonnell, P Hoffmann
Cancers | MDPI | Published : 2021
Open access
Abstract
Matrix assisted laser desorption/ionization mass spectrometry imaging (MALDI MSI) can determine the spatial distribution of analytes such as protein distributions in a tissue section according to their mass-to-charge ratio. Here, we explored the clinical potential of machine learning (ML) applied to MALDI MSI data for cancer diagnostic classification using tissue microarrays (TMAs) on 302 colorectal (CRC) and 257 endometrial cancer (EC)) patients. ML based on deep neural networks discriminated colorectal tumour from normal tissue with an overall accuracy of 98% in balanced cross-validation (98.2% sensitivity and 98.6% specificity). Moreover, our machine learning approach predicted the presen..
View full abstractGrants
Awarded by Government of South Australia
Funding Acknowledgements
The authors acknowledge Bioplatforms Australia, the Federal Australian Government, and the South Australian Government, which co-fund the Mass spectrometry and Proteomics facility at the University of South Australia. O.M.S. is supported by a NHMRC Senior Research Fellowship (GNT1136119).