{"title":"应用机器学习技术剖析加纳少女的吸烟行为","authors":"Sara V. Flanagan, Ariadna Vargas, Jana Smith","doi":"10.12688/gatesopenres.14991.1","DOIUrl":null,"url":null,"abstract":"Background Tobacco use trends among adolescents in low- and middle-income countries, and in particular narrowing gender gaps, highlight the need for interventions to prevent and/or reduce tobacco use among adolescent girls. We evaluated a social marketing program in Ghana discouraging tobacco use among adolescent girls and additionally investigated the pathways influencing smoking behaviors to identify programmatic opportunities for impact. Leveraging the data collected through the stepped wedge cluster randomized trial and panel survey of 9000 girls aged 13–19 , we sought to apply machine learning (ML) techniques to identify the most important variables for predicting initiation of smoking. Methods To identify predictors of smoking initiation we sought to develop a model which could accurately differentiate smokers from non-smokers and evaluated various ML approaches for training classifier algorithms to achieve this. We selected a Synthetic Minority Over-sampling Technique (SMOTE) because it optimized the recall and precision of the model. We then utilized the technique of feature importance for greater insight into how the model arrived at its decisions and to rank the most important variables for predicting smokers. To explore different dimensions of smoking behavior, including initiation and continuation, we trained our model by using several combinations of target outcomes and input variables from the panel survey. Results The resulting features of smokers highlight the importance of girls’ independence and connectivity, social environment, and peer influence on likelihood of smoking, and in particular subsequent initiation. These results were largely consistent with our formative research findings based on qualitative interviews informed by behavioral science. Conclusions This novel application of ML techniques demonstrates how data science approaches can generate new programmatic insights from rigorous evaluation data, especially when data collection is informed by behavioral theory. Such insights about the relative importance of different features can be valuable input for program planning and outreach.","PeriodicalId":12593,"journal":{"name":"Gates Open Research","volume":"3 6","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-01-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Application of machine learning techniques to profile smoking behavior of adolescent girls in Ghana\",\"authors\":\"Sara V. Flanagan, Ariadna Vargas, Jana Smith\",\"doi\":\"10.12688/gatesopenres.14991.1\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Background Tobacco use trends among adolescents in low- and middle-income countries, and in particular narrowing gender gaps, highlight the need for interventions to prevent and/or reduce tobacco use among adolescent girls. We evaluated a social marketing program in Ghana discouraging tobacco use among adolescent girls and additionally investigated the pathways influencing smoking behaviors to identify programmatic opportunities for impact. Leveraging the data collected through the stepped wedge cluster randomized trial and panel survey of 9000 girls aged 13–19 , we sought to apply machine learning (ML) techniques to identify the most important variables for predicting initiation of smoking. Methods To identify predictors of smoking initiation we sought to develop a model which could accurately differentiate smokers from non-smokers and evaluated various ML approaches for training classifier algorithms to achieve this. We selected a Synthetic Minority Over-sampling Technique (SMOTE) because it optimized the recall and precision of the model. We then utilized the technique of feature importance for greater insight into how the model arrived at its decisions and to rank the most important variables for predicting smokers. To explore different dimensions of smoking behavior, including initiation and continuation, we trained our model by using several combinations of target outcomes and input variables from the panel survey. Results The resulting features of smokers highlight the importance of girls’ independence and connectivity, social environment, and peer influence on likelihood of smoking, and in particular subsequent initiation. These results were largely consistent with our formative research findings based on qualitative interviews informed by behavioral science. Conclusions This novel application of ML techniques demonstrates how data science approaches can generate new programmatic insights from rigorous evaluation data, especially when data collection is informed by behavioral theory. 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引用次数: 0
摘要
背景中低收入国家青少年吸烟的趋势,尤其是性别差距的缩小,凸显了采取干预措施预防和/或减少少女吸烟的必要性。我们对加纳一项阻止少女吸烟的社会营销项目进行了评估,此外还调查了影响吸烟行为的途径,以确定产生影响的项目机会。利用通过阶梯式楔形群组随机试验和对 9000 名 13-19 岁女孩的小组调查收集到的数据,我们试图应用机器学习(ML)技术来确定预测开始吸烟的最重要变量。方法 为了确定预测开始吸烟的因素,我们试图开发一种能够准确区分吸烟者和非吸烟者的模型,并评估了各种用于训练分类器算法的 ML 方法,以实现这一目标。我们选择了合成少数群体过度采样技术(SMOTE),因为它能优化模型的召回率和精确度。然后,我们采用了特征重要性技术,以便更深入地了解模型是如何做出决定的,并对预测吸烟者的最重要变量进行排序。为了探索吸烟行为的不同维度,包括开始吸烟和持续吸烟,我们使用目标结果和来自小组调查的输入变量的多种组合来训练我们的模型。结果 由此得出的吸烟者特征凸显了女孩的独立性和连通性、社会环境和同伴影响对吸烟可能性的重要性,尤其是对随后开始吸烟的影响。这些结果与我们基于行为科学的定性访谈得出的初步研究结果基本一致。结论 这种对 ML 技术的新颖应用展示了数据科学方法如何从严格的评估数据中产生新的计划见解,尤其是当数据收集以行为理论为依据时。这些关于不同特征相对重要性的见解可以为项目规划和推广提供宝贵的意见。
Application of machine learning techniques to profile smoking behavior of adolescent girls in Ghana
Background Tobacco use trends among adolescents in low- and middle-income countries, and in particular narrowing gender gaps, highlight the need for interventions to prevent and/or reduce tobacco use among adolescent girls. We evaluated a social marketing program in Ghana discouraging tobacco use among adolescent girls and additionally investigated the pathways influencing smoking behaviors to identify programmatic opportunities for impact. Leveraging the data collected through the stepped wedge cluster randomized trial and panel survey of 9000 girls aged 13–19 , we sought to apply machine learning (ML) techniques to identify the most important variables for predicting initiation of smoking. Methods To identify predictors of smoking initiation we sought to develop a model which could accurately differentiate smokers from non-smokers and evaluated various ML approaches for training classifier algorithms to achieve this. We selected a Synthetic Minority Over-sampling Technique (SMOTE) because it optimized the recall and precision of the model. We then utilized the technique of feature importance for greater insight into how the model arrived at its decisions and to rank the most important variables for predicting smokers. To explore different dimensions of smoking behavior, including initiation and continuation, we trained our model by using several combinations of target outcomes and input variables from the panel survey. Results The resulting features of smokers highlight the importance of girls’ independence and connectivity, social environment, and peer influence on likelihood of smoking, and in particular subsequent initiation. These results were largely consistent with our formative research findings based on qualitative interviews informed by behavioral science. Conclusions This novel application of ML techniques demonstrates how data science approaches can generate new programmatic insights from rigorous evaluation data, especially when data collection is informed by behavioral theory. Such insights about the relative importance of different features can be valuable input for program planning and outreach.