Toward automated infrared spectral analysis in community drug checking

Author:

Gozdzialski Lea1,Hutchison Abby23,Wallace Bruce24,Gill Chris12567ORCID,Hore Dennis28ORCID

Affiliation:

1. Department of Chemistry University of Victoria Victoria British Columbia Canada

2. Canadian Institute for Substance Use Research University of Victoria Victoria British Columbia Canada

3. School of Public Health and Social Policy University of Victoria Victoria British Columbia Canada

4. School of Social Work University of Victoria Victoria British Columbia Canada

5. Department of Chemistry, Applied Environmental Research Laboratories (AERL) Vancouver Island University Nanaimo British Columbia Canada

6. Department of Chemistry Simon Fraser University Burnaby British Columbia Canada

7. Department of Environmental and Occupational Health Sciences University of Washington Seattle Washington USA

8. Department of Computer Science University of Victoria Victoria British Columbia Canada

Abstract

AbstractThe body of knowledge surrounding infrared spectral analysis of drug mixtures continues to grow alongside the physical expansion of drug checking services. Technicians trained in the analysis of spectroscopic data are essential for reasons that go beyond the accuracy of the analytical results. Significant barriers faced by people who use drugs in engaging with drug checking services include the speed and accuracy of the results, and the availability and accessibility of the service. These barriers can be overcome by the automation of interpretations. A random forest model for the detection of two compounds, MDA and fluorofentanyl, was trained and optimized with drug samples acquired at a community drug checking site. This resulted in a 79% true positive and 100% true negative rate for MDA, and 61% true positive and 97% true negative rate for fluorofentanyl. The trained models were applied to selected drug samples to demonstrate a proposed workflow for interpreting and validating model predictions. The detection of MDA was demonstrated on three mixtures: (1) MDMA and MDA, (2) MDA and dimethylsulfone, and (3) fentanyl, etizolam, and benzocaine. The classification of fluorofentanyl was applied to a drug mixture containing fentanyl, fluorofentanyl, 4‐anilino‐N‐phenethylpiperidine, caffeine, and mannitol. Feature importance was calculated using shapely additive explanations to better explain the model predictions and k‐nearest neighbors was used for visual comparison to labelled training data. This is a step toward building appropriate trust in computer‐assisted interpretations in order to promote their use in a harm reduction context.

Funder

Vancouver Foundation

Publisher

Wiley

Subject

Spectroscopy,Pharmaceutical Science,Environmental Chemistry,Analytical Chemistry

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