Machine Learning Helps in Prediction of Tobacco Smoking in Adolescents.

IF 1.7 Q2 MEDICINE, GENERAL & INTERNAL
International Journal of Preventive Medicine Pub Date : 2025-04-24 eCollection Date: 2025-01-01 DOI:10.4103/ijpvm.ijpvm_306_23
Hamidreza Roohafza, Elahe Mousavi, Razieh Omidi, Masoumeh Sadeghi, Mohammadreza Sehhati, Ahmad Vaez
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引用次数: 0

Abstract

Background: Considering the increasing prevalence of adolescent smoking in recent years, this study proposes a machine learning (ML) approach for distinguishing adolescents who are prone to start smoking and those who do not directly confess to smoking.

Methods: We used two repeated measures cross-sectional studies, including data from 7940 individuals as distinct training and test datasets. Utilizing the randomized least absolute shrinkage and selector operator (LASSO), the most influential factors were selected. We then investigated the performance of different ML approaches for the automatic classification of students into smoker/nonsmoker and low-risk/high-risk categories.

Results: Randomized LASSO feature selection prioritized 15 factors, including peer influence, risky behaviors, attitude and school policy toward smoking, family factors, depression, and sex as the most influential factors in smoking. Applying different ML approaches to the three study plans yielded an AUC of up to 0.92, sensitivity of up to 0.88, PPV of up to 0.72, specificity of up to 0.98, and NPV of up to 0.99.

Conclusions: The results showed the capability of our ML approach to distinguish between classes of smokers and nonsmokers. This model can be used as a brief screening tool for automated prediction of individuals susceptible to smoking for more precise preventive intervention plans focusing on adolescents.

机器学习有助于预测青少年吸烟情况。
背景:考虑到近年来青少年吸烟的日益普遍,本研究提出了一种机器学习(ML)方法来区分容易开始吸烟的青少年和不直接承认吸烟的青少年。方法:我们使用两个重复测量横断面研究,包括7940个人的数据作为不同的训练和测试数据集。利用随机最小绝对收缩和选择算子(LASSO),选择影响最大的因素。然后,我们研究了不同ML方法的性能,将学生自动分类为吸烟者/非吸烟者和低风险/高风险类别。结果:随机LASSO特征选择将同伴影响、危险行为、吸烟态度和学校政策、家庭因素、抑郁和性别等15个因素作为吸烟的主要影响因素。对三个研究计划应用不同的ML方法,AUC高达0.92,灵敏度高达0.88,PPV高达0.72,特异性高达0.98,NPV高达0.99。结论:结果表明我们的ML方法能够区分吸烟者和非吸烟者。该模型可作为一种简单的筛选工具,用于自动预测易吸烟个体,从而制定针对青少年的更精确的预防干预计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Preventive Medicine
International Journal of Preventive Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
3.20
自引率
4.80%
发文量
107
期刊介绍: International Journal of Preventive Medicine, a publication of Isfahan University of Medical Sciences, is a peer-reviewed online journal with Continuous print on demand compilation of issues published. The journal’s full text is available online at http://www.ijpvmjournal.net. The journal allows free access (Open Access) to its contents and permits authors to self-archive final accepted version of the articles on any OAI-compliant institutional / subject-based repository. The journal will cover technical and clinical studies related to health, ethical and social issues in field of Preventive Medicine. Articles with clinical interest and implications will be given preference.
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