The screening of cannabis addiction using machine learning, MoCA, and anxiety/depression tests

被引:0
|
作者
Elhachimi, Abdelilah [1 ,4 ]
Benksim, Abdelhafid [2 ]
Ibanni, Hamid [3 ]
Cherkaoui, Mohamed [1 ]
机构
[1] Univ Cadi Ayyad Marrakech UCAM, Dept Biol, Marrakech, Morocco
[2] Inst Nursing Profess & Healthcare Tech ISPITS, Marrakech, Morocco
[3] Natl Assoc Drug Risk Reduct RdR Maroc, Marrakech, Morocco
[4] Cadi Ayyad Univ, Sch Sci Semlalia FSSM, Dept Biol, Neurosci Pharmacol Anthropobiol & Environm Lab, Bd Prince Moulay Abdellah,BP2390, Marrakech 40000, Morocco
关键词
Cannabis addiction; Machine learning; MoCA; HAD; CUD; HOSPITAL ANXIETY; USE DISORDER; ALCOHOL; SUBSTANCE; VALIDITY; CLASSIFICATION; DSM-5; COSTS; SCALE; RISK;
D O I
10.1016/j.sciaf.2024.e02225
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
A new cannabis addiction screening approach is developed based on the use of Machine Learning (ML) alongside with psychological and cognitive assessment tests. The Hospital Anxiety and Depression (HAD) test is used to determine the Absence of Anxiety and Depression "No Disorder" or the presence of "Anxiety Only", "Depression Only", and both "Anxiety and Depression". These features are considered to evaluate the psychological effects of cannabis use. In addition to that, the Montreal Cognitive Assessment (MoCA) test is chosen as a feature to assess the cognitive state of the participants. Also, the Age of First Cannabis Use (AFCU) is included as a feature to incorporate participants with no prior cannabis use alongside with those who have used cannabis before. The portion of participants with prior experience consuming cannabis comprises a subset containing passive users and a subset of users that have developed cannabis addiction. This 6month study was conducted in Marrakech, Morocco in a center affiliated to the National Association of Drug -Risk Reduction of Morocco known as RdR-Maroc with the participation of 146 subjects. The participants in this study are grouped into two groups of 73 participants each. Both case and control groups were clinically assessed by a professional. In this paper, the classical statistical data analysis for the AFCU (M =15.6; SD =2.4), MoCA (M =25.0; SD =2.4), and HAD (58 cases with no disorder, 88 cases with disorder) failed to separate between the two classes. Also, the feature selection for modeling is performed using Spearman correlation, Kendall correlation, and the Odds Ratio (OR). These statistics showed that the selected features were associated to addiction except for "Anxiety Only". Moreover, ML models such as Logistic Regression (LR), Support Vector Machine (SVM), Artificial Neural Network (ANN), k th-Nearest Neighbor (KNN), and Decision Tree (DT) were used to classify participants into two categories (Addict vs. NonAddict) based on the selected features mentioned earlier. The Receiver Operating Characteristic (ROC) curve is used to overview the quality of the models and showed that they all captured the nonlinearities underlined in the data. On the other hand, the Area Under the Curve (AUC) allowed the ranking of these models and indicated that the SVM model outperformed all other models with an AUC of 0.97. After that, the SVM model was compared to the Cannabis Use Disorder (CUD) based screening method issued by the fifth edition of the Diagnostic and Statistical Manual of mental disorders (DSM-5). The SVM model's accuracy of 96.6 % outperformed the CUD questionnaires accuracy of 87.7 %. The validity of the proposed approach was investigated where the SVM model presented high validity characteristics (sensitivity =1, specificity =0.93) compared to the CUD questionnaire (sensitivity =0.75, specificity =1). Hence, the proposed approach provided satisfactory results compared to current adopted CUD based screening test. Our findings expand current research on the development of simple and powerful tools for cannabis addiction screening with the purpose of early detection in order to establish preventive and therapeutic strategies that could potentially mitigate the prevalence of cannabis addiction.
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页数:13
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