How to Apply Supervised Machine Learning Tools to MS Imaging Files: Case Study with Cancer Spheroids Undergoing Treatment with the Monoclonal Antibody Cetuximab

J Am Soc Mass Spectrom. 2020 Jul 1;31(7):1350-1357. doi: 10.1021/jasms.0c00010. Epub 2020 Jun 10.

Abstract

As the field of mass spectrometry imaging continues to grow, so too do its needs for optimal methods of data analysis. One general need in image analysis is the ability to classify the underlying regions within an image, as healthy or diseased, for example. Classification, as a general problem, is often best accomplished by supervised machine learning strategies; unfortunately, conducting supervised machine learning on MS imaging files is not typically done by mass spectrometrists because a high degree of specialized knowledge is needed. To address this problem, we developed a fully open-source approach that facilitates supervised machine learning on MS imaging files, and we demonstrated its implementation on sets of cancer spheroids that either had or had not undergone chemotherapy treatment. These supervised machine learning studies demonstrated that metabolic changes induced by the monoclonal antibody, Cetuximab, are detectable but modest at 24 h, and by 72 h, the drug induces a larger and more diverse metabolic response.

MeSH terms

  • Cetuximab / pharmacology*
  • Cetuximab / therapeutic use
  • Humans
  • Image Processing, Computer-Assisted / methods
  • Mass Spectrometry / methods*
  • Metabolome / drug effects
  • Neoplasms* / chemistry
  • Neoplasms* / drug therapy
  • Neoplasms* / metabolism
  • Spheroids, Cellular / drug effects*
  • Supervised Machine Learning*
  • Tumor Cells, Cultured

Substances

  • Cetuximab