Factors Associated with Tobacco Cessation Services Request Among Users of an Online Self-Screening Questionnaire.

IF 1.8 4区 医学 Q3 PSYCHIATRY
Substance Use & Misuse Pub Date : 2025-01-01 Epub Date: 2024-12-28 DOI:10.1080/10826084.2024.2445851
Norberto F Hernández-Llanes, Ricardo Sánchez-Domínguez, Sofía Álvarez-Reza, Carmen Fernández-Cáceres, Rodrigo Marín-Navarrete
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引用次数: 0

Abstract

Objectives: Tobacco smoking remains a major public health risk, responsible for millions of deaths worldwide. While smoking patterns in Mexico differ from those in countries with higher rates, comorbidities such as diabetes pose a health risk. Although many smokers want to quit, access to cessation services is limited. Internet-based cessation (I-BC) services are a promising modality that offers accessibility and machine learning (ML) has been successfully used to predict tobacco outcomes. This study uses ML to identify characteristics associated with requesting I-BC through an online self-assessment questionnaire in Mexico.

Methods: This was a retrospective, predictive, secondary analysis of 14,182 records of individuals aged 18 years and older who completed an online screening for nicotine dependence and their request for tobacco cessation services. Random forest algorithm with four oversampling methods was compared to select the best predictive model. The relative importance of predictor variables was measured as well.

Results: The algorithm had a sensitivity of 78.6% and a specificity of 68.8%. Specifically, age, sex, dependence severity indicators, locations such as the state of Mexico or Sinaloa, and even occasions such as World No Tobacco Day were identified as key factors influencing cessation service requests.

Conclusions: These results suggest the random forest algorithm's effectiveness in predicting potential cessation service users. Furthermore, the predictor variables provide valuable insights for designing targeted prevention and awareness campaigns, potentially leading to improved campaign effectiveness and more individuals receiving cessation support.

在线自我筛选问卷使用者中与戒烟服务请求相关的因素
目标:吸烟仍然是一个主要的公共健康风险,造成全世界数百万人死亡。虽然墨西哥的吸烟模式与吸烟率较高的国家不同,但糖尿病等合并症对健康构成了威胁。尽管许多吸烟者想戒烟,但获得戒烟服务的机会有限。基于互联网的戒烟(I-BC)服务是一种很有前途的模式,它提供了可访问性,机器学习(ML)已成功用于预测烟草结果。本研究在墨西哥通过在线自我评估问卷,使用ML识别与I-BC请求相关的特征。方法:对14182名18岁及以上完成尼古丁依赖在线筛查并要求戒烟服务的个体进行回顾性、预测性、二次分析。将随机森林算法与四种过采样方法进行比较,选择最佳预测模型。预测变量的相对重要性也被测量。结果:该算法的敏感性为78.6%,特异性为68.8%。具体而言,年龄、性别、依赖严重程度指标、地点(如墨西哥州或锡那罗亚州)甚至场合(如世界无烟日)被确定为影响戒烟服务请求的关键因素。结论:这些结果表明随机森林算法在预测潜在戒烟服务使用者方面是有效的。此外,预测变量为设计有针对性的预防和意识运动提供了有价值的见解,可能会提高运动的有效性,并使更多的人获得戒烟支持。
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来源期刊
Substance Use & Misuse
Substance Use & Misuse 医学-精神病学
CiteScore
3.20
自引率
5.00%
发文量
200
审稿时长
3 months
期刊介绍: For over 50 years, Substance Use & Misuse (formerly The International Journal of the Addictions) has provided a unique international multidisciplinary venue for the exchange of original research, theories, policy analyses, and unresolved issues concerning substance use and misuse (licit and illicit drugs, alcohol, nicotine, and eating disorders). Guest editors for special issues devoted to single topics of current concern are invited. Topics covered include: Clinical trials and clinical research (treatment and prevention of substance misuse and related infectious diseases) Epidemiology of substance misuse and related infectious diseases Social pharmacology Meta-analyses and systematic reviews Translation of scientific findings to real world clinical and other settings Adolescent and student-focused research State of the art quantitative and qualitative research Policy analyses Negative results and intervention failures that are instructive Validity studies of instruments, scales, and tests that are generalizable Critiques and essays on unresolved issues Authors can choose to publish gold open access in this journal.
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