Optimized machine learning approaches to combine surface-enhanced Raman scattering and infrared data for trace detection of xylazine in illicit opioids.

Journal: The Analyst
PMID:

Abstract

Infrared absorption spectroscopy and surface-enhanced Raman spectroscopy were integrated into three data fusion strategies-hybrid (concatenated spectra), mid-level (extracted features from both datasets) and high-level (fusion of predictions from both models)-to enhance the predictive accuracy for xylazine detection in illicit opioid samples. Three chemometric approaches-random forest, support vector machine, and -nearest neighbor algorithms-were employed and optimized using a 5-fold cross-validation grid search for all fusion strategies. Validation results identified the random forest classifier as the optimal model for all fusion strategies, achieving high sensitivity (88% for hybrid, 92% for mid-level, and 96% for high-level) and specificity (88% for hybrid, mid-level, and high-level). The enhanced performance of the high-level fusion approach (F1 score of 92%) is demonstrated, effectively leveraging the surface-enhanced Raman data with a 90% voting weight, without compromising prediction accuracy (92%) when combined with infrared spectral data. This highlights the viability of a multi-instrument approach using data fusion and random forest classification to improve the detection of various components in complex opioid samples in a point-of-care setting.

Authors

  • Rebecca R Martens
    Department of Chemistry, University of Victoria, Victoria, British Columbia, V8W 3V6, Canada. dkhore@uvic.ca.
  • Lea Gozdzialski
    Department of Chemistry, University of Victoria, Victoria, British Columbia, V8W 3V6, Canada. dkhore@uvic.ca.
  • Ella Newman
    Department of Chemistry, University of Victoria, Victoria, British Columbia, V8W 3V6, Canada. dkhore@uvic.ca.
  • Chris Gill
    Department of Chemistry, Vancouver Island University, Nanaimo, British Columbia, V9R 5S5, Canada.
  • Bruce Wallace
    School of Social Work, University of Victoria, Victoria, British Columbia, V8W 2Y2, Canada.
  • Dennis K Hore
    Department of Chemistry, University of Victoria, Victoria, British Columbia, V8W 3V6, Canada. dkhore@uvic.ca.