A review on recent machine learning applications for imaging mass spectrometry studies

Author:

Jetybayeva Albina1ORCID,Borodinov Nikolay2ORCID,Ievlev Anton V.2ORCID,Haque Md Inzamam Ul1,Hinkle Jacob3,Lamberti William A.4,Meredith J. Carson5,Abmayr David6,Ovchinnikova Olga S.1ORCID

Affiliation:

1. The Bredesen Center, University of Tennessee 1 , Knoxville, Tennessee 37996-3394, USA

2. Center for Nanophase Materials Sciences, Oak Ridge National Laboratory 2 , Oak Ridge, Tennessee 37830, USA

3. Computational Sciences and Engineering Division, Oak Ridge National Laboratory 3 , Oak Ridge, Tennessee 37830, USA

4. ExxonMobil Technology and Engineering Company 4 , Annandale, New Jersey 08801, USA

5. School of Chemical and Biomolecular Engineering, Georgia Institute of Technology 5 , Atlanta, Georgia 30332-0100, USA

6. ExxonMobil Technology and Engineering Company 6 , Baytown, Texas 77520, USA

Abstract

Imaging mass spectrometry (IMS) is a powerful analytical technique widely used in biology, chemistry, and materials science fields that continue to expand. IMS provides a qualitative compositional analysis and spatial mapping with high chemical specificity. The spatial mapping information can be 2D or 3D depending on the analysis technique employed. Due to the combination of complex mass spectra coupled with spatial information, large high-dimensional datasets (hyperspectral) are often produced. Therefore, the use of automated computational methods for an exploratory analysis is highly beneficial. The fast-paced development of artificial intelligence (AI) and machine learning (ML) tools has received significant attention in recent years. These tools, in principle, can enable the unification of data collection and analysis into a single pipeline to make sampling and analysis decisions on the go. There are various ML approaches that have been applied to IMS data over the last decade. In this review, we discuss recent examples of the common unsupervised (principal component analysis, non-negative matrix factorization, k-means clustering, uniform manifold approximation and projection), supervised (random forest, logistic regression, XGboost, support vector machine), and other methods applied to various IMS datasets in the past five years. The information from this review will be useful for specialists from both IMS and ML fields since it summarizes current and representative studies of computational ML-based exploratory methods for IMS.

Funder

ExxonMobil Research and Engineering Company

U.S. Department of Energy

Procter and Gamble

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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