Raman spectroscopy accurately classifies burn severity in an ex vivo model

Burns. 2021 Jun;47(4):812-820. doi: 10.1016/j.burns.2020.08.006. Epub 2020 Aug 31.

Abstract

Accurate classification of burn severities is of vital importance for proper burn treatments. A recent article reported that using the combination of Raman spectroscopy and optical coherence tomography (OCT) classifies different degrees of burns with an overall accuracy of 85% [1]. In this study, we demonstrate the feasibility of using Raman spectroscopy alone to classify burn severities on ex vivo porcine skin tissues. To create different levels of burns, four burn conditions were designed: (i) 200°F for 10s, (ii) 200°F for 30s, (iii) 450°F for 10s and (iv) 450°F for 30s. Raman spectra from 500-2000cm-1 were collected from samples of the four burn conditions as well as the unburnt condition. Classifications were performed using kernel support vector machine (KSVM) with features extracted from the spectra by principal component analysis (PCA), and partial least-square (PLS). Both techniques yielded an average accuracy of approximately 92%, which was independently evaluated by leave-one-out cross-validation (LOOCV). By comparison, PCA+KSVM provides higher accuracy in classifying severe burns, while PLS performs better in classifying mild burns. Variable importance in the projection (VIP) scores from the PLS models reveal that proteins and lipids, amide III, and amino acids are important indicators in separating unburnt or mild burns (200°F), while amide I has a more pronounced impact in separating severe burns (450°F).

Keywords: Biomarkers; Classification; Partial least square (PLS); Raman spectroscopy; Skin burns; Support vector machine (SVM).

Publication types

  • Research Support, U.S. Gov't, Non-P.H.S.

MeSH terms

  • Burns / complications
  • Burns / diagnostic imaging*
  • Humans
  • Principal Component Analysis
  • Severity of Illness Index
  • Spectrum Analysis, Raman / methods
  • Spectrum Analysis, Raman / standards*
  • Support Vector Machine / standards
  • Support Vector Machine / statistics & numerical data