Development of a neural network model to predict the presence of fentanyl in community drug samples

Original research
par
Ti, Lianping et al

Date de publication

2023

Géographie

Canada

Langue de la ressource

English

Texte disponible en version intégrale

Oui

Open Access / OK to Reproduce

Oui

Évalué par des pairs

Yes

L’objectif

The objective of this study was to develop a neural network model to identify fentanyl and related analogues more accurately in drug samples compared to traditional analysis by technicians.

Constatations/points à retenir

Neural network models can accurately predict the presence of fentanyl and related analogues using FTIR data, including samples with low fentanyl concentrations. Integrating this tool within drug checking services utilizing FTIR spectroscopy has the potential to improve decision making to reduce the risk of overdose and other negative health outcomes.

La conception ou méthodologie de recherche

Data were drawn from samples analyzed point-of-care using combination Fourier-transform infrared (FTIR) spectroscopy and fentanyl immunoassay strips in British Columbia between August 2018 and January 2021. We developed neural network models to predict the presence of fentanyl based on FTIR data. The final model was validated against the results from immunoassay strips

Mots clés

Drug checking
Illegal drugs