4.2 Review

Understanding mass spectrometry images: complexity to clarity with machine learning

Journal

BIOPOLYMERS
Volume 112, Issue 4, Pages -

Publisher

WILEY
DOI: 10.1002/bip.23400

Keywords

-

Funding

  1. Australian National Fabrication Facility
  2. National Breast Cancer Foundation

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This paper focuses on the application of artificial intelligence and machine learning in hyperspectral mass spectrometry imaging data analysis, particularly in biological samples. Various machine learning methods have been applied to MSI data over the past two decades, with a specific emphasis on non-linear techniques used in the past five years.
The application of artificial intelligence and machine learning to hyperspectral mass spectrometry imaging (MSI) data has received considerable attention over recent years. Various methodologies have shown great promise in their ability to handle the complexity and size of MSI data sets. Advances in this area have been particularly appealing for MSI of biological samples, which typically produce highly complicated data with often subtle relationships between features. There are many different machine learning approaches that have been applied to MSI data over the past two decades. In this review, we focus on a subset of non-linear machine learning techniques that have mostly only been applied in the past 5 years. Specifically, we review the use of the self-organizing map (SOM), SOM with relational perspective mapping (SOM-RPM), t-distributed stochastic neighbor embedding (t-SNE) and uniform manifold approximation and projection (UMAP). While not their only functionality, we have grouped these techniques based on their ability to produce what we refer to as similarity maps. Similarity maps are color representations of hyperspectral data, in which spectral similarity between pixels-that is, their distance in high-dimensional space-is represented by relative color similarity. In discussing these techniques, we describe, briefly, their associated algorithms and functionalities, and also outline applications in MSI research with a strong focus on biological sample types. The aim of this review is therefore to introduce this relatively recent paradigm for visualizing and exploring hyperspectral MSI, while also providing a comparison between each technique discussed.

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