Cao Yue, Zhang Xuxi, Fearon Ian M, Li Jiaxuan, Chen Xi, Zheng Fangzhen, Zhang Jianqiang, Sun Xinying, Liu Xiaona
Department of Health Sciences, Smoore Research Institute, Shenzen, CHN.
School of Public Health, Peking University, Beijing, CHN.
Cureus. 2024 Sep 11;16(9):e69183. doi: 10.7759/cureus.69183. eCollection 2024 Sep.
Completely abstaining from cigarette smoking or fully switching to e-cigarette (EC) use may be beneficial for reducing the global burden of smoking-related diseases. This study aimed to identify and compare the top 10 prospective predictors of smokers switching away from smoking in the United States. Data from adult exclusive cigarette smokers at Wave 4 of the Population Assessment of Tobacco and Health (PATH) study, who were followed up at Wave 6, were analysed. An Xgboost-based machine learning (ML) approach with a nested cross-validation scheme was utilised to develop a multiclass predictive model to classify smokers' behavioural changes from W4 to W6, including smoking cessation, full and partial switching to EC, and cigarette non-switching. The SHapley Additive exPlanations (SHAP) algorithm was deployed to interpret the top 10 predictors of each switching behaviour. A total of 396 variables were selected to generate the four-class prediction model, which demonstrated a micro- and macro-average area under the receiver operating characteristics curve (ROC-AUC) of 0.91 and 0.81, respectively. The top three predictors of smoking cessation were prior regular EC use, age, and household rules about non-combusted tobacco. For full switching to EC use, the leading predictors were age, type of living space, and frequency of social media visits. For partial switching to EC use, the key predictors were daily cigarette consumption, the time from waking up to smoking the first cigarette, and living with tobacco users. ML is a promising technique for providing comprehensive insights into predicting smokers' behavioural changes. Public health interventions aimed at helping adults switch away from smoking should consider the predictors identified in this study.
完全戒烟或完全改用电子烟可能有助于减轻全球吸烟相关疾病的负担。本研究旨在识别和比较美国吸烟者戒烟的前10个前瞻性预测因素。对烟草与健康人口评估(PATH)研究第4波的成年纯吸烟者数据进行了分析,这些吸烟者在第6波进行了随访。采用基于Xgboost的机器学习(ML)方法和嵌套交叉验证方案,开发了一个多类预测模型,以对吸烟者从第4波到第6波的行为变化进行分类,包括戒烟、完全和部分改用电子烟以及继续吸烟。使用SHapley加性解释(SHAP)算法来解释每种转变行为的前10个预测因素。总共选择了396个变量来生成四类预测模型,该模型在接收器操作特征曲线(ROC-AUC)下的微观和宏观平均面积分别为0.91和0.81。戒烟的前三个预测因素是以前经常使用电子烟、年龄和关于非燃烧烟草的家庭规定。对于完全改用电子烟,主要预测因素是年龄、居住空间类型和社交媒体访问频率。对于部分改用电子烟,关键预测因素是每日香烟消费量、从醒来至吸第一支烟的时间以及与吸烟者同住。机器学习是一种很有前景的技术,可用于深入了解预测吸烟者行为变化。旨在帮助成年人戒烟的公共卫生干预措施应考虑本研究中确定的预测因素。