Li Shen, Li Yiyang, Xu Chenhao, Tao Siheng, Sun Haozhen, Yang Jiaqing, Wang Yilin, Li Sheyu, Ma Xuelei
Department of Biotherapy, West China Hospital and State Key Laboratory of Biotherapy, Sichuan University, Chengdu, China.
West China School of Medicine, West China Hospital, Sichuan University, Chengdu, China.
Nat Hum Behav. 2025 Sep 2. doi: 10.1038/s41562-025-02295-2.
Smoking cessation is the only evidence-based approach to reducing tobacco-related health risks, yet traditional interventions suffer from limited coverage. Although digital interventions show promise, their comparative efficacy across methodological frameworks and technology types remains unclear. Here we assessed digital interventions versus standard care via frequentist random-effects network meta-analysis of 152 randomized controlled trials (48.8% USA, 7.5% China). Interventions were categorized by methodology and technology type, with cross-matched subgroup analyses. Results showed that personalized interventions significantly improved smoking cessation rates compared with standard care (relative risk (RR) 1.86, 95% confidence interval (CI) 1.54-2.24), while group-customized interventions were more effective (RR 1.93, 95% CI 1.30-2.86) compared with standard digital interventions (RR 1.50, 95% CI 1.31-1.72). Among the various technology types, text message-based interventions were the most effective (RR 1.63, 95% CI 1.38-1.92). Intervention effectiveness was also influenced by age, with middle-aged individuals benefitting more than younger individuals. Short- and medium-term interventions were more effective than long-term interventions. Sensitivity analyses further confirmed these low-to-moderate findings. However, this study has some limitations, including methodological heterogeneity, potential bias and inconsistent definitions of numerical interventions. In addition, long-term follow-up data remain limited. Future studies require large-scale trials to assess long-term sustainability and population-specific responses, as well as standardization of methods and integration of data at the individual level.
戒烟是降低烟草相关健康风险的唯一基于证据的方法,但传统干预措施的覆盖范围有限。尽管数字干预措施显示出前景,但其在不同方法框架和技术类型中的相对疗效仍不明确。在此,我们通过对152项随机对照试验(48.8%来自美国,7.5%来自中国)进行频率学派随机效应网络荟萃分析,评估了数字干预措施与标准护理的效果。干预措施按方法和技术类型进行分类,并进行交叉匹配的亚组分析。结果表明,与标准护理相比,个性化干预显著提高了戒烟率(相对风险(RR)为1.86,95%置信区间(CI)为1.54 - 2.24),而与标准数字干预措施(RR为1.50,95% CI为1.31 - 1.72)相比,群体定制干预措施更有效(RR为1.93,95% CI为1.30 - 2.86)。在各种技术类型中,基于短信的干预措施最有效(RR为1.63,95% CI为1.38 - 1.92)。干预效果还受年龄影响,中年个体比年轻个体受益更多。短期和中期干预比长期干预更有效。敏感性分析进一步证实了这些中低程度的研究结果。然而,本研究存在一些局限性,包括方法学异质性、潜在偏倚以及数字干预措施定义不一致。此外,长期随访数据仍然有限。未来的研究需要大规模试验来评估长期可持续性和特定人群的反应,以及方法的标准化和个体层面的数据整合。