open access publication

Article, 2024

Applying machine learning to international drug monitoring: classifying cannabis resin collected in Europe using cannabinoid concentrations

European Archives of Psychiatry and Clinical Neuroscience, ISSN 0940-1334, 1433-8491, Pages 1-9, 10.1007/s00406-024-01816-w

Contributors

Freeman, Tom P 0000-0002-5667-507X (Corresponding author) [1] Beeching, Edward [2] Craft, Sam 0000-0002-5663-2731 [1] Di Forti, Marta M 0000-0002-3218-6925 [3] [4] Frison, Giampietro [5] Lindholst, Christian 0000-0001-7293-1611 [6] Oomen, Pieter E 0000-0001-8395-7331 [7] Potter, David [8] Rigter, Sander 0000-0002-7628-8229 [7] Rømer Thomsen, Kristine 0000-0003-3612-5529 [6] Zamengo, Luca [5] Cunningham, Andrew [9] Groshkova, Teodora 0000-0003-1108-8047 [9] Sedefov, Roumen S [9]

Affiliations

  1. [1] University of Bath
  2. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  3. [2] Hugging Face, Paris, France
  4. [NORA names: France; Europe, EU; OECD];
  5. [3] Cannabis Clinic for Psychosis, South London and Maudsley Foundation Trust, London, UK
  6. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  7. [4] King's College London
  8. [NORA names: United Kingdom; Europe, Non-EU; OECD];
  9. [5] Laboratory of Clinical and Forensic Toxicology, DMPO Department, AULSS 3, Venice, Italy
  10. [NORA names: Italy; Europe, EU; OECD];

Abstract

In Europe, concentrations of ∆9-tetrahydrocannabinol (THC) in cannabis resin (also known as hash) have risen markedly in the past decade, potentially increasing risks of mental health disorders. Current approaches to international drug monitoring cannot distinguish between different types of cannabis resin which may have contrasting health effects due to THC and cannabidiol (CBD) content. Here, we compared concentrations of THC and CBD in different types of cannabis resin collected in Europe (either Moroccan-type, or Dutch-type). We then tested the ability of machine learning algorithms to classify the type of cannabis resin (either Moroccan-type, or Dutch-type) using routinely collected monitoring data on THC and CBD. Finally, we applied the optimal algorithm to new samples collected in countries where the type of cannabis resin was unknown, the UK and Denmark. Results showed that overall, Dutch-type samples had higher THC (Hedges’ g = 2.39) and lower CBD (Hedges’ g = 0.81) than Moroccan-type samples. A Support Vector Machine algorithm achieved classification accuracy exceeding 95%, with little variation in this estimate, good interpretability, and plausibility. It made contrasting predictions about the type of cannabis resin collected in the UK (94% Moroccan-type; 6% Dutch-type) and Denmark (36% Moroccan-type; 64% Dutch-type). In conclusion, we provide proof-of-concept evidence for the potential of machine learning to inform international drug monitoring. Our findings should not be interpreted as objective confirmatory evidence but suggest that Dutch-type cannabis resin has higher THC concentrations than Moroccan-type cannabis resin, which may contribute to variation in drug markets and health outcomes for people who use cannabis in Europe.

Keywords

Denmark, Europe, International Drug Monitoring, THC, THC concentrations, UK, accuracy, algorithm, cannabidiol, cannabinoid, cannabinoid concentrations, cannabis, cannabis resin, classification, classification accuracy, concentration, concentrations of THC, confirmatory evidence, content, countries, data, disorders, drug, drug market, drug monitoring, estimation, evidence, findings, health, health disorders, health outcomes, higher THC, increased risk, increased risk of mental health disorders, interpretation, learning, learning algorithms, machine, machine algorithm, machine learning, machine learning algorithms, market, mental health disorders, monitoring, monitoring data, optimization algorithm, outcomes, people, plausibility, potential, potential of machine learning, prediction, resin, results, risk of mental health disorders, samples, support, support vector machine algorithm, variation, vector machine algorithm

Funders

  • European Commission

Data Provider: Digital Science