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电子烟、戒烟与体重变化:对评估电子烟用于戒烟试验疗效的回顾性二次分析

e-Cigarettes, Smoking Cessation, and Weight Change: Retrospective Secondary Analysis of the Evaluating the Efficacy of e-Cigarette Use for Smoking Cessation Trial.

作者信息

Lyzwinski Lynnette, Dong Meichen, Wolfinger Russell D, Filion Kristian B, Eisenberg Mark J

机构信息

Centre for Clinical Epidemiology, Lady Davis Institute, McGill University, Montreal, QC, Canada.

Department of Epidemiology, Biostatistics, and Occupational Health, Faculty of Medicine, McGill University, Montreal, QC, Canada.

出版信息

JMIR Public Health Surveill. 2024 Sep 16;10:e58260. doi: 10.2196/58260.

Abstract

BACKGROUND

While smoking cessation has been linked to substantial weight gain, the potential influence of e-cigarettes on weight changes among individuals who use these devices to quit smoking is not fully understood.

OBJECTIVE

This study aims to reanalyze data from the Evaluating the Efficacy of e-Cigarette Use for Smoking Cessation (E3) trial to assess the causal effects of e-cigarette use on change in body weight.

METHODS

This is a secondary analysis of the E3 trial in which participants were randomized into 3 groups: nicotine e-cigarettes plus counseling, nonnicotine e-cigarettes plus counseling, and counseling alone. With adjustment for baseline variables and the follow-up smoking abstinence status, weight changes were compared between the groups from baseline to 12 weeks' follow-up. Intention-to-treat and as-treated analyses were conducted using doubly robust estimation. Further causal analysis used 2 different propensity scoring methods to estimate causal regression curves for 4 smoking-related continuous variables. We evaluated 5 different subsets of data for each method. Selection bias was addressed, and missing data were imputed by the machine learning method extreme gradient boosting (XGBoost).

RESULTS

A total of 257 individuals with measured weight at week 12 (mean age: 52, SD 12 y; women: n=122, 47.5%) were included. Across the 3 treatment groups, of the 257 participants, 204 (79.4%) who continued to smoke had, on average, largely unchanged weight at 12 weeks, with comparable mean weight gain ranging from -0.24 kg to 0.33 kg, while 53 (20.6%) smoking-abstinent participants gained weight, with a mean weight gain ranging from 2.05 kg to 2.70 kg. After adjustment, our analyses showed that the 2 e-cigarette arms exhibited a mean gain of 0.56 kg versus the counseling alone arm. The causal regression curves analysis also showed no strong evidence supporting a causal relationship between weight gain and the 3 e-cigarette-related variables. e-Cigarettes have small and variable causal effects on weight gain associated with smoking cessation.

CONCLUSIONS

In the E3 trial, e-cigarettes seemed to have minimal effects on mitigating the weight gain observed in individuals who smoke and subsequently quit at 3 months. However, given the modest sample size and the potential underuse of e-cigarettes among those randomized to the e-cigarette treatment arms, these results need to be replicated in large, adequately powered trials.

TRIAL REGISTRATION

ClinicalTrials.gov NCT02417467; https://www.clinicaltrials.gov/study/NCT02417467.

摘要

背景

虽然戒烟与显著体重增加有关,但电子烟对使用这些设备戒烟的个体体重变化的潜在影响尚未完全了解。

目的

本研究旨在重新分析来自评估电子烟用于戒烟效果(E3)试验的数据,以评估使用电子烟对体重变化的因果效应。

方法

这是对E3试验的二次分析,参与者被随机分为3组:尼古丁电子烟加咨询、无尼古丁电子烟加咨询和仅咨询。在调整基线变量和随访戒烟状态后,比较各组从基线到12周随访的体重变化。使用双重稳健估计进行意向性分析和实际治疗分析。进一步的因果分析使用两种不同的倾向评分方法来估计4个与吸烟相关的连续变量的因果回归曲线。我们对每种方法评估了5个不同的数据子集。解决了选择偏倚问题,并通过机器学习方法极端梯度提升(XGBoost)对缺失数据进行了插补。

结果

共有257名在第12周测量了体重的个体(平均年龄:52岁,标准差12岁;女性:n = 122,47.5%)被纳入研究。在这257名参与者的3个治疗组中,204名(79.4%)继续吸烟的参与者在12周时平均体重基本未变,平均体重增加范围为-0.24千克至0.33千克,而53名(20.6%)戒烟的参与者体重增加,平均体重增加范围为2.05千克至2.70千克。调整后,我们的分析表明,两个电子烟组的平均体重增加为0.56千克,而仅咨询组为0。因果回归曲线分析也没有显示出有力证据支持体重增加与3个与电子烟相关的变量之间存在因果关系。电子烟对与戒烟相关的体重增加有微小且多变的因果效应。

结论

在E3试验中,电子烟似乎对减轻在3个月内吸烟并随后戒烟的个体中观察到的体重增加影响极小。然而,鉴于样本量较小以及随机分配到电子烟治疗组的人群中电子烟的潜在使用不足,这些结果需要在大型、有足够效力的试验中进行重复验证。

试验注册

ClinicalTrials.gov NCT02417467;https://www.clinicaltrials.gov/study/NCT02417467。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b94/11443201/9d7960214ee2/publichealth_v10i1e58260_fig1.jpg

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