University of Southern California Keck School of Medicine, Los Angeles, CA, USA.
Indiana University School of Public Health, Bloomington, IN, USA.
Drug Alcohol Depend. 2022 Mar 1;232:109330. doi: 10.1016/j.drugalcdep.2022.109330. Epub 2022 Jan 29.
This study attempted to identify risk profiles of marijuana vaping by state-level recreational marijuana legalization (RML) status among U.S. young adults (YA).
Data were drawn from the most recent two waves of restricted use files of the Population Assessment of Tobacco and Health Study with state identifiers. We analyzed 6155 young adult (18-24 years) respondents who were naïve to marijuana vaping at Wave 4 and had matched data at Wave 5. We employed a two-stage machine learning approach to predict marijuana vaping initiation at Wave 5 with predictors measured at Wave 4.
Among YA who had never vaped marijuana at Wave 4, 19% of those who lived in the states with RML and 15% of those who lived in the states without RML reported marijuana vaping at Wave 5. Substance-use-related predictors were rarely found as leading predictors in the states with RML. In the states without RML, substance use behaviors, including electronic nicotine delivery systems and smokeless tobacco use, and the presence of externalizing symptoms emerged as predictors for marijuana vaping. Results also revealed that nonlinear interactions between the predictors of marijuana vaping.
Our results highlight the importance of accounting for the RML status in developing risk profiles of marijuana vaping. Externalizing symptoms may be a behavioral endophenotype of marijuana vaping in the states without RML. Machine learning appears to be a promising analytical approach to identify complex interactions between factors in predicting an emerging risk behavior such as marijuana vaping.
本研究试图通过美国年轻成年人(YA)所处的州级娱乐用大麻合法化(RML)状态,确定大麻吸食的风险特征。
数据来自于具有州标识符的受限使用文件的人口评估烟草与健康研究的最近两个波次。我们分析了 6155 名在第 4 波次对大麻吸食一无所知但在第 5 波次有匹配数据的年轻成年人(18-24 岁)受访者。我们采用了两阶段机器学习方法,用第 4 波次测量的预测因子来预测第 5 波次大麻吸食的起始。
在第 4 波次从未吸食过大麻的 YA 中,有 19%的人居住在 RML 的州,有 15%的人居住在没有 RML 的州,报告在第 5 波次吸食大麻。在 RML 的州,很少有物质使用相关的预测因子成为主要预测因子。在没有 RML 的州,物质使用行为,包括电子烟和无烟烟草使用,以及外化症状的出现,成为大麻吸食的预测因子。结果还显示,大麻吸食预测因子之间存在非线性相互作用。
我们的结果强调了在制定大麻吸食风险特征时考虑 RML 状态的重要性。外化症状可能是没有 RML 的州大麻吸食的行为表型。机器学习似乎是一种很有前途的分析方法,可以识别预测大麻吸食等新兴风险行为的因素之间的复杂相互作用。