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

被引:1
|
作者
Gardner, Wil [1 ,2 ]
Winkler, David A. [3 ,4 ,5 ]
Bamford, Sarah E. [1 ,2 ]
Muir, Benjamin W. [6 ]
Pigram, Paul J. [1 ,2 ]
机构
[1] La Trobe Univ, Ctr Mat & Surface Sci, Bundoora, Vic 3086, Australia
[2] La Trobe Univ, Dept Math & Phys Sci, Bundoora, Vic 3086, Australia
[3] La Trobe Univ, La Trobe Inst Mol Sci, Dept Biochem & Chem, Melbourne, Vic 3086, Australia
[4] Monash Univ, Monash Inst Pharmaceut Sci, Parkville, Vic 3052, Australia
[5] Univ Nottingham, Sch Pharm, Adv Mat & Healthcare Technol, Nottingham NG7 2RD, England
[6] CSIRO Mfg, Clayton, Vic 3168, Australia
关键词
machine learning; mass spectrometry imaging; multiple instance learning; time-of-flight secondary ion mass spectrometry; CLASSIFICATION; INKS;
D O I
10.1002/smtd.202301230
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Supervised 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. Weakly labeled data are common in mass spectrometry imaging (MSI). Such data contain labels at the image-level, but not at the pixel level. Despite being ubiquitous, minimal attention is given to developing machine learning methods targeted toward such data. This work describes a multiple-instance learning methodology for handling weakly labeled MSI data sets, with promising results.image
引用
收藏
页数:15
相关论文
共 50 条
  • [21] Combination of mass spectrometry-based targeted lipidomics and supervised machine learning algorithms in detecting adulterated admixtures of white rice
    Lim, Dong Kyu
    Long, Nguyen Phuoc
    Mo, Changyeun
    Dong, Ziyuan
    Cui, Lingmei
    Kim, Giyoung
    Kwon, Sung Won
    FOOD RESEARCH INTERNATIONAL, 2017, 100 : 814 - 821
  • [22] Unsupervised machine learning for exploratory data analysis in imaging mass spectrometry
    Verbeeck, Nico
    Caprioli, Richard M.
    van de Plas, Raf
    MASS SPECTROMETRY REVIEWS, 2020, 39 (03) : 245 - 291
  • [23] Spatially aware clustering of ion images in mass spectrometry imaging data using deep learning
    Zhang, Wanqiu
    Claesen, Marc
    Moerman, Thomas
    Groseclose, M. Reid
    Waelkens, Etienne
    De Moor, Bart
    Verbeeck, Nico
    ANALYTICAL AND BIOANALYTICAL CHEMISTRY, 2021, 413 (10) : 2803 - 2819
  • [24] Machine Learning Applications for Mass Spectrometry-Based Metabolomics
    Liebal, Ulf W.
    Phan, An N. T.
    Sudhakar, Malvika
    Raman, Karthik
    Blank, Lars M.
    METABOLITES, 2020, 10 (06) : 1 - 23
  • [25] Segmentation and morphological analysis of wear track/particles images using machine learning
    Bouchot, Alizee
    Ferrieux-Paquet, Amandine
    Mollon, Guilhem
    Descartes, Sylvie
    Debayle, Johan
    JOURNAL OF ELECTRONIC IMAGING, 2022, 31 (05)
  • [26] Rapid analysis and authentication of Chinese propolis using nanoelectrospray ionization mass spectrometry combined with machine learning
    Wang, Ruiyue
    Qu, Liangliang
    Wang, Yiran
    Qu, Yijiao
    Xie, Quanyuan
    Liu, Huihui
    Nie, Zongxiu
    FOOD CHEMISTRY, 2024, 447
  • [27] Medical Equipment Failure Rate Analysis Using Supervised Machine Learning
    Aboul-Yazeed, Rasha S.
    El-Bialy, Ahmed
    Mohamed, Abdalla S. A.
    INTERNATIONAL CONFERENCE ON ADVANCED MACHINE LEARNING TECHNOLOGIES AND APPLICATIONS (AMLTA2018), 2018, 723 : 319 - 327
  • [28] Analysis and classification of coffee beans using single coffee bean mass spectrometry with machine learning strategy
    Tsai, Jia-Jen
    Chang, Che-Chia
    Huang, De-Yi
    Lin, Te-Sheng
    Chen, Yu-Chie
    FOOD CHEMISTRY, 2023, 426
  • [29] On Multi-Tier Sentiment Analysis using Supervised Machine Learning
    Moh, Melody
    Gajjala, Abhiteja
    Gangireddy, Siva Charan Reddy
    Moh, Teng-Sheng
    2015 IEEE/WIC/ACM INTERNATIONAL CONFERENCE ON WEB INTELLIGENCE AND INTELLIGENT AGENT TECHNOLOGY (WI-IAT), VOL 1, 2015, : 341 - 344
  • [30] Real or Fake: An intrinsic analysis using supervised machine learning algorithms
    Biwalkar, Ameyaa
    Rao, Ashwini
    Shah, Ketan
    PROCEEDINGS OF THE 2021 FIFTH INTERNATIONAL CONFERENCE ON I-SMAC (IOT IN SOCIAL, MOBILE, ANALYTICS AND CLOUD) (I-SMAC 2021), 2021, : 372 - 380