Department of Psychology, UR 7273 CRP-CPO, University of Picardie Jules Verne, Amiens, France.
Addiction Medicine, Lausanne University Hospital, Lausanne, Switzerland.
Eur Addict Res. 2023;29(3):171-181. doi: 10.1159/000530111. Epub 2023 Apr 25.
Studies of the users' engagement with smoking cessation application (apps) can help understand how these apps are used by smokers, in order to improve their reach and efficacy.
The present study aimed at identifying the best predictors of the users' level of engagement with a smartphone app for smoking cessation and at examining the relationships between predictors and outcomes related to the users' level of engagement with the app.
A secondary analysis of data from a randomized trial testing the efficacy of the Stop-Tabac smartphone app was used. The experimental group used the "full" app and the control group used a "dressed down" app. The study included a baseline and 1-month and 6-month follow-up questionnaires. A total of 5,293 participants answered at least the baseline questionnaires; however, in the current study, only the 1,861 participants who answered at least the baseline and the 1-month follow-up questionnaire were included. Predictors were measured at baseline and after 1 month and outcomes after 6 months. Data were analyzed using machine learning algorithms.
The best predictors of the outcomes were, in decreasing order of importance, intention to stop smoking, dependence level, perceived helpfulness of the app, having quit smoking after 1 month, self-reported usage of the app after 1 month, belonging to the experimental group (vs. control group), age, and years of smoking. Most of these predictors were also significantly associated with the participants' level of engagement with the app.
This information can be used to further target the app to specific groups of users, to develop strategies to enroll more smokers, and to better adapt the app's content to the users' needs.
研究用户对戒烟应用程序(apps)的参与度可以帮助了解吸烟者如何使用这些应用程序,从而提高它们的覆盖面和效果。
本研究旨在确定预测用户对智能手机戒烟应用程序参与度的最佳指标,并研究这些预测指标与与用户参与应用程序相关的结果之间的关系。
使用随机试验测试 Stop-Tabac 智能手机应用程序功效的数据进行二次分析。实验组使用“完整”应用程序,对照组使用“简化”应用程序。研究包括基线和 1 个月及 6 个月随访问卷。共有 5293 名参与者至少回答了基线问卷;然而,在本研究中,仅包括至少回答了基线和 1 个月随访问卷的 1861 名参与者。预测指标在基线和 1 个月后测量,结果在 6 个月后测量。使用机器学习算法进行数据分析。
按重要性降序排列,对结果的最佳预测指标是戒烟意愿、依赖程度、对应用程序的感知有用性、1 个月后戒烟、1 个月后自我报告的应用程序使用情况、属于实验组(与对照组相比)、年龄和吸烟年限。这些预测指标中的大多数也与参与者对应用程序的参与程度显著相关。
这些信息可用于进一步针对特定用户群体的应用程序,制定策略以招募更多的吸烟者,并更好地根据用户需求调整应用程序的内容。