Metabolic profiling of murine radiation-induced lung injury with Raman spectroscopy and comparative machine learning.

Journal: The Analyst
PMID:

Abstract

Radiation-induced lung injury (RILI) is a dose-limiting toxicity for cancer patients receiving thoracic radiotherapy. As such, it is important to characterize metabolic associations with the early and late stages of RILI, namely pneumonitis and pulmonary fibrosis. Recently, Raman spectroscopy has shown utility for the differentiation of pneumonitic and fibrotic tissue states in a mouse model; however, the specific metabolite-disease associations remain relatively unexplored from a Raman perspective. This work harnesses Raman spectroscopy and supervised machine learning to investigate metabolic associations with radiation pneumonitis and pulmonary fibrosis in a mouse model. To this end, Raman spectra were collected from lung tissues of irradiated/non-irradiated C3H/HeJ and C57BL/6J mice and labelled as normal, pneumonitis, or fibrosis, based on histological assessment. Spectra were decomposed into metabolic scores group and basis restricted non-negative matrix factorization, classified with random forest (GBR-NMF-RF), and metabolites predictive of RILI were identified. To provide comparative context, spectra were decomposed and classified principal component analysis with random forest (PCA-RF), and full spectra were classified with a convolutional neural network (CNN), as well as logistic regression (LR). Through leave-one-mouse-out cross-validation, we observed that GBR-NMF-RF was comparable to other methods by measure of accuracy and log-loss ( > 0.10 by Mann-Whitney test), and no methodology was dominant across all classification tasks by measure of area under the receiver operating characteristic curve. Moreover, GBR-NMF-RF results were directly interpretable and identified collagen and specific collagen precursors as top fibrosis predictors, while metabolites with immune and inflammatory functions, such as serine and histidine, were top pneumonitis predictors. Further support for GBR-NMF-RF and the identified metabolite associations with RILI was found as CNN interpretation heatmaps revealed spectral regions consistent with these metabolites.

Authors

  • Mitchell Wiebe
    Department of Physics, The University of British Columbia Okanagan Campus, Kelowna, Canada. andrew.jirasek@ubc.ca.
  • Kirsty Milligan
    Department of Physics, The University of British Columbia - Okanagan campus, Kelowna, BC, Canada.
  • Joan Brewer
    Department of Computer Science, Mathematics, Physics, and Statistics, The University of British Columbia Okanagan Campus, Kelowna, Canada. christina.haston@ubc.ca.
  • Alejandra M Fuentes
    Department of Physics, The University of British Columbia Okanagan Campus, Kelowna, Canada. andrew.jirasek@ubc.ca.
  • Ramie Ali-Adeeb
    Department of Chemistry, The University of Victoria, Victoria, Canada.
  • Alexandre G Brolo
    Department of Chemistry, The University of Victoria, Victoria, Canada.
  • Julian J Lum
    Department of Biochemistry and Microbiology, The University of Victoria, Victoria, Canada.
  • Jeffrey L Andrews
    Department of Statistics, The University of British Columbia - Okanagan campus, Kelowna, BC, Canada.
  • Christina Haston
    Department of Physics, The University of British Columbia - Okanagan campus, Kelowna, BC, Canada.
  • Andrew Jirasek
    Department of Physics, The University of British Columbia - Okanagan campus, Kelowna, BC, Canada.