ICF, Rockville, MD.
Tobacco Control Research Branch, Behavioral Research Program, Division of Cancer Control and Population Sciences, National Cancer Institute, Bethesda, MD.
Nicotine Tob Res. 2019 Apr 17;21(5):663-669. doi: 10.1093/ntr/nty073.
Smoking continues to be a leading cause of preventable death. Mobile health (mHealth) can extend the reach of smoking cessation programs; however, user dropout, especially in real-world implementations of these programs, limit their potential effectiveness. Research is needed to understand patterns of engagement in mHealth cessation programs.
SmokefreeTXT (SFTXT) is the National Cancer Institute's 6-8 week smoking cessation text-messaging intervention. Latent growth mixture modeling was used to identify unique classes of engagement among SFTXT users using real-world program data from 7090 SFTXT users. Survival analysis was conducted to model program dropout over time by class, and multilevel modeling was used to explore differences in abstinence over time.
We identified four unique patterns of engagement groups. The largest percentage of users (61.6%) were in the low-engagers declining group; these users started off with low level of engagement and their engagement decreased over time. Users in this group were more likely to drop out from the program and less likely to be abstinent than users in the other groups. Users in the high engagers-maintaining group (ie, the smallest but most engaged group) were less likely to be daily smokers at baseline and were slightly older than those in the other groups. They were most likely to complete the program and report being abstinent.
Our findings show the importance of maintaining active engagement in text-based cessation programs. Future research is needed to elucidate predictors of the various levels of engagement, and to assess whether strategies aimed at increasing engagement result in higher abstinence rates.
The current study enabled us to investigate differing engagement patterns in non-incentivized program participants, which can help inform program modifications in real-world settings. Lack of engagement and dropout continue to impede the potential effectiveness of mHealth interventions, and understanding patterns and predictors of engagement can enhance the impact of these programs.
吸烟仍是可预防死亡的主要原因。移动医疗(mHealth)可以扩大戒烟计划的覆盖范围;然而,用户流失,尤其是在这些计划的实际实施中,限制了它们的潜在有效性。需要研究了解 mHealth 戒烟计划中的参与模式。
SmokefreeTXT(SFTXT)是美国国家癌症研究所的 6-8 周戒烟短信干预措施。使用来自 7090 名 SFTXT 用户的真实计划数据,使用潜在增长混合模型来识别 SFTXT 用户中独特的参与类别。通过类别的生存分析来模拟随时间推移的程序退出,使用多层模型来探索随时间推移的禁欲差异。
我们确定了四个独特的参与模式群体。最大比例的用户(61.6%)属于低参与度下降组;这些用户一开始参与度较低,随着时间的推移,他们的参与度下降。与其他群体相比,该组的用户更有可能退出该计划,并且更不可能保持禁欲状态。高参与度维持组(即最小但最投入的群体)的用户在基线时更不可能是每日吸烟者,而且比其他群体稍年长。他们最有可能完成该计划并报告保持禁欲状态。
我们的研究结果表明,在基于文本的戒烟计划中保持积极参与的重要性。需要进一步研究来阐明各种参与水平的预测因素,并评估旨在增加参与度的策略是否会导致更高的禁欲率。
本研究使我们能够调查非激励计划参与者中不同的参与模式,这有助于为现实环境中的计划修改提供信息。缺乏参与度和流失继续阻碍 mHealth 干预措施的潜在有效性,了解参与度的模式和预测因素可以增强这些计划的影响力。