TY - GEN
T1 - Towards Data-Driven Artificial Intelligence Models for Monitoring, Modelling and Predicting Illicit Substance Use
AU - Mbunge, Elliot
AU - Batani, John
AU - Chitungo, Itai
AU - Moyo, Enos
AU - Musuka, Godfrey
AU - Muchemwa, Benhildah
AU - Dzinamarira, Tafadzwa
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Springer Nature Switzerland AG 2024.
PY - 2024
Y1 - 2024
N2 - Illicit substance use (ISU) is a major public health problem and a significant cause of morbidity and mortality globally. Early assessment of risk behaviour, predicting, identifying risk factors, and detecting illicit substance use become imperative to reduce the burden. Unfortunately, current digital tools for early detection and modelling ISU are largely ineffective and sometimes inaccessible. Data-driven artificial intelligence (AI) models can assist in alleviating the burden and tackling illicit substance use but their adoption and use remain nascent. This study applied the PRISMA model to conduct a systematic literature review on the application of artificial intelligence models to tackle illicit substance use. The study revealed that elastic net, artificial neural networks support vector machines, random forest, logistic regression, KNN, decision trees and deep learning models have been used to predict illicit substance use. These models were applied to tackle different substance classes, including alcohol, cannabis, hallucinogens, tobacco, opioids, sedatives, and hypnotics among others. The models were trained and tested using various substance use data from social media platforms and risk factors such as socioeconomic and demographic data, behavioural, phenotypic characteristics, and psychopathology data. Understanding the impact of these risk factors can assist policymakers and health workers in effective screening, assessing risk behaviours and, most importantly, predicting illicit substance use. Using AI models and risk factors to develop data-driven intelligent applications for monitoring, modelling, and predicting illicit substance use can expedite the early implementation of interventions to reduce the associated adverse consequences.
AB - Illicit substance use (ISU) is a major public health problem and a significant cause of morbidity and mortality globally. Early assessment of risk behaviour, predicting, identifying risk factors, and detecting illicit substance use become imperative to reduce the burden. Unfortunately, current digital tools for early detection and modelling ISU are largely ineffective and sometimes inaccessible. Data-driven artificial intelligence (AI) models can assist in alleviating the burden and tackling illicit substance use but their adoption and use remain nascent. This study applied the PRISMA model to conduct a systematic literature review on the application of artificial intelligence models to tackle illicit substance use. The study revealed that elastic net, artificial neural networks support vector machines, random forest, logistic regression, KNN, decision trees and deep learning models have been used to predict illicit substance use. These models were applied to tackle different substance classes, including alcohol, cannabis, hallucinogens, tobacco, opioids, sedatives, and hypnotics among others. The models were trained and tested using various substance use data from social media platforms and risk factors such as socioeconomic and demographic data, behavioural, phenotypic characteristics, and psychopathology data. Understanding the impact of these risk factors can assist policymakers and health workers in effective screening, assessing risk behaviours and, most importantly, predicting illicit substance use. Using AI models and risk factors to develop data-driven intelligent applications for monitoring, modelling, and predicting illicit substance use can expedite the early implementation of interventions to reduce the associated adverse consequences.
KW - Africa
KW - Artificial Intelligence
KW - Data-driven
KW - Illicit Substance Use
UR - http://www.scopus.com/inward/record.url?scp=85197336121&partnerID=8YFLogxK
U2 - 10.1007/978-3-031-54820-8_29
DO - 10.1007/978-3-031-54820-8_29
M3 - Conference contribution
AN - SCOPUS:85197336121
SN - 9783031548192
T3 - Lecture Notes in Networks and Systems
SP - 361
EP - 379
BT - Data Analytics in System Engineering - Proceedings of 7th Computational Methods in Systems and Software 2023, Vol. 4
A2 - Silhavy, Radek
A2 - Silhavy, Petr
PB - Springer Science and Business Media Deutschland GmbH
T2 - 7th Computational Methods in Systems and Software, CoMeSySo 2023
Y2 - 12 April 2023 through 13 April 2023
ER -