以生活方式为重点的冠心病患者短信支持项目中戒烟的预测因素:来自烟草运动和饮食信息(TEXTME)随机临床试验的分析

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Tobacco Use Insights Pub Date : 2020-01-28 eCollection Date: 2020-01-01 DOI:10.1177/1179173X20901486
Harry Klimis, Simone Marschner, Amy Von Huben, Aravinda Thiagalingam, Clara K Chow
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引用次数: 4

摘要

背景:研究已经证明了基于短信的戒烟预防项目的有效性,包括我们最近发表的TEXTME随机对照试验。然而,在这种情况下,人们对戒烟的预测因素知之甚少,也不知道其他重要的临床因素是否与戒烟计划相互作用。因此,本研究的目的是首先评估TEXTME中戒烟的预测因素,然后确定发短信对戒烟的影响是否通过与重要临床变量的相互作用而改变。这将使我们更好地了解短信是如何工作的,从而有助于优化未来基于短信的预防项目。方法:本亚分析使用的数据是作为TEXTME试验的一部分收集的,该试验在2011年9月至2013年11月期间从澳大利亚悉尼的一家大型三级医院招募了710名参与者(377名当前吸烟者为基线)。6个月后,研究人员对基线吸烟者进行了分析,并将其分为戒烟者和未戒烟者。进行单因素分析以确定主要结果与先验选择的临床重要基线因素之间的关联。采用多元二项logistic回归分析,建立因变量戒烟的预测模型。对干预组和基线变量之间的相互作用进行了测试,这些变量与戒烟的结果是先验选择的。结果:单变量分析确定接收短信、年龄和每天平均吸烟数量与戒烟有关。调整年龄后,接收短信程序(OR 2.34;95%可信区间1.43 - -3.86;结论:基线吸烟量与戒烟独立相关,高LDL-C可能与干预相互作用导致戒烟。那些基线风险较高的人可能更有动力改变有益的生活方式,包括戒烟,因此更有可能对移动健康戒烟计划做出反应。在二级预防队列中,短信对戒烟的影响与年龄、性别、社会心理参数、教育程度和危险因素基线控制无关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predictors of Smoking Cessation in a Lifestyle-Focused Text-Message Support Programme Delivered to People with Coronary Heart Disease: An Analysis From the Tobacco Exercise and Diet Messages (TEXTME) Randomised Clinical Trial.

Predictors of Smoking Cessation in a Lifestyle-Focused Text-Message Support Programme Delivered to People with Coronary Heart Disease: An Analysis From the Tobacco Exercise and Diet Messages (TEXTME) Randomised Clinical Trial.

Predictors of Smoking Cessation in a Lifestyle-Focused Text-Message Support Programme Delivered to People with Coronary Heart Disease: An Analysis From the Tobacco Exercise and Diet Messages (TEXTME) Randomised Clinical Trial.

Predictors of Smoking Cessation in a Lifestyle-Focused Text-Message Support Programme Delivered to People with Coronary Heart Disease: An Analysis From the Tobacco Exercise and Diet Messages (TEXTME) Randomised Clinical Trial.

Background: Studies have demonstrated the effectiveness of text message-based prevention programs on smoking cessation, including our recently published TEXTME randomised controlled trial. However, little is known about the predictors of smoking cessation in this context and if other clinically important factors interact with the program to lead to quitting. Hence, the objective of this study was to first assess the predictors of smoking cessation in TEXTME and then determine if the effect of texting on quitting was modified by interactions with important clinical variables. This will allow us to better understand how text messaging works and thus help optimise future text-message based prevention programs.

Methods: This sub-analysis used data collected as part of the TEXTME trial which recruited 710 participants (377 current smokers at baseline) between September 2011 and November 2013 from a large tertiary hospital in Sydney, Australia. Smokers at baseline were analysed at 6 months and grouped into those who quit and those who did not. Univariate analyses were performed to determine associations between the main outcome and clinically important baseline factors selected a priori. A multiple binominal logistic regression analysis was conducted to develop a predictive model for the dependent variable smoking cessation. A test of interaction between the intervention group and baseline variables selected a priori with the outcome smoking cessation was performed.

Results: Univariate analysis identified receiving text-messages, age, and mean number of cigarettes smoked each day as being associated with quitting smoking. After adjusting for age, receiving the text-messaging program (OR 2.34; 95%CI 1.43-3.86; p<0.01) and mean number of cigarettes smoked per day (OR 1.02; 95%CI 1.00-1.04; p=0.03) were independent predictors for smoking cessation. LDL-C showed a significant interaction effect with the intervention (High LDL*Intervention OR 3.77 (95%CI 2.05-6.94); Low LDL*Intervention OR 1.42 (95%CI 0.77-2.60); P=0.03).

Conclusions: Smoking quantity at baseline is independently associated with smoking cessation and higher LDL-C may interact with the intervention to result in quitting smoking. Those who have a higher baseline risk maybe more motivated towards beneficial lifestyle change including quitting smoking, and thus more likely to respond to mHealth smoking cessation programs. The effect of text-messages on smoking cessation was independent of age, gender, psychosocial parameters, education, and baseline control of risk factors in a secondary prevention cohort.

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Tobacco Use Insights
Tobacco Use Insights PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
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