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首页> 外文期刊>Preventive Medicine: An International Journal Devoted to Practice and Theory >Identifying emerging predictors for adolescent electronic nicotine delivery systems use: A machine learning analysis of the Population Assessment of Tobacco and Health Study
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Identifying emerging predictors for adolescent electronic nicotine delivery systems use: A machine learning analysis of the Population Assessment of Tobacco and Health Study

机译:识别青少年电子尼古丁送货系统的新兴预测因子使用:烟草和健康研究人口评估的机器学习分析

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Intervention strategies to prevent adolescents from using electronic nicotine delivery systems (ENDS) should be based on robust predictors of ENDS use that may differ from predictors of conventional cigarette use. Literature points to the need for uncovering emerging predictors of ENDS use. This study identified emerging predictors of adolescent ENDS use using machine learning (ML) techniques. We analyzed nationally representative multi-wave longitudinal survey data (2013?2018) drawn from the Population Assessment of Tobacco and Health Study. A sample of adolescents (12?17 years) who never used any tobacco products at baseline and completed Wave 2 (n = 7958), Wave 3 (n = 6260) and Wave 4 (n = 4544) were analyzed. We developed a supervised ML prediction model using the penalized logistic regression to assess self-reported past-month ENDS use (i.e., current use) at Waves 2?4 based on the variables measured at the previous wave. We then extracted important predictors from each model. The penalized logistic regression models showed suitable capability to discriminate between ENDS uses and non-uses at each wave based on the area under the receiver operating characteristic curve and the area under the precision-recall curve. Interestingly, social media use emerged as an important variable in predicting adolescent ENDS use. ML models appear to be a promising method to identify unique population-level predictors for U.S. adolescent ENDS use behaviors. More research is warranted to investigate emerging predictors of ENDS use and experimentally examine the mechanism by which these emerging predictors affect ENDS use behavior across different spectrum of populations.
机译:预防青少年使用电子尼古丁输送系统(ENDS)的干预策略应基于ENDS使用的稳健预测因素,该预测因素可能不同于传统香烟使用的预测因素。文献指出,需要发现终端使用的新预测因素。这项研究使用机器学习(ML)技术确定了青少年终端使用的新预测因子。我们分析了从烟草与健康人口评估研究中得出的具有全国代表性的多波纵向调查数据(2013年至2018年)。对一组在基线检查时从未使用过任何烟草制品的青少年(12-17岁)进行了分析,并完成了第2波(n=7958)、第3波(n=6260)和第4波(n=4544)。我们开发了一个有监督的ML预测模型,使用惩罚逻辑回归来评估自我报告的过去一个月末在Waves 2?的使用情况(即当前使用情况)?4基于前一波测得的变量。然后,我们从每个模型中提取重要的预测因子。惩罚logistic回归模型显示,根据受试者工作特征曲线下的面积和精确召回曲线下的面积,在每波中区分最终使用和未使用的合适能力。有趣的是,社交媒体的使用成为预测青少年最终使用的一个重要变量。ML模型似乎是一种很有前途的方法,可以识别美国青少年最终使用行为的独特人群水平预测因子。有必要进行更多研究,以调查终端使用的新兴预测因素,并通过实验检验这些新兴预测因素影响不同人群终端使用行为的机制。

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