Markedly Enhanced Analysis of Mass Spectrometry Images Using Weakly Supervised Machine Learning

Author:

Gardner Wil1,Winkler David A.234,Bamford Sarah E.1,Muir Benjamin W.5,Pigram Paul J.1ORCID

Affiliation:

1. Centre for Materials and Surface Science and Department of Mathematical and Physical Sciences La Trobe University Bundoora Victoria 3086 Australia

2. Department of Biochemistry and Chemistry La Trobe Institute for Molecular Sciences La Trobe University Melbourne Victoria 3086 Australia

3. Monash Institute of Pharmaceutical Sciences Monash University Parkville Victoria 3052 Australia

4. Advanced Materials and Healthcare Technologies School of Pharmacy University of Nottingham Nottingham NG7 2RD UK

5. CSIRO Manufacturing Clayton Victoria 3168 Australia

Abstract

AbstractSupervised and unsupervised machine learning algorithms are routinely applied to time‐of‐flight secondary ion mass spectrometry (ToF‐SIMS) imaging data and, more broadly, to mass spectrometry imaging (MSI). These algorithms have accelerated large‐scale, single‐pixel analysis, classification, and regression. However, there is relatively little research on methods suited for so‐called weakly supervised problems, where ground‐truth class labels exist at the image level, but not at the individual pixel level. Unsupervised learning methods are usually applied to these problems. However, these methods cannot make use of available labels. Here a novel method specifically designed for weakly supervised MSI data is presented. A dual‐stream multiple instance learning (MIL) approach is adapted from computational pathology that reveals the spatial‐spectral characteristics distinguishing different classes of MSI images. The method uses an information entropy‐regularized attention mechanism to identify characteristic class pixels that are then used to extract characteristic mass spectra. This work provides a proof‐of‐concept exemplification using printed ink samples imaged by ToF‐SIMS. A second application‐oriented study is also presented, focusing on the analysis of a mixed powder sample type. Results demonstrate the potential of the MIL method for broader application in MSI, with implications for understanding subtle spatial‐spectral characteristics in various applications and contexts.

Funder

Australian National Fabrication Facility

Office of National Intelligence

Publisher

Wiley

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