Businelle Michael S, Ma Ping, Kendzor Darla E, Frank Summer G, Wetter David W, Vidrine Damon J
Department of Family and Preventive Medicine, University of Oklahoma Health Sciences Center, Oklahoma City, OK, United States.
J Med Internet Res. 2016 Oct 17;18(10):e275. doi: 10.2196/jmir.6307.
Mobile phone‒based real-time ecological momentary assessments (EMAs) have been used to record health risk behaviors, and antecedents to those behaviors, as they occur in near real time.
The objective of this study was to determine if intensive longitudinal data, collected via mobile phone, could be used to identify imminent risk for smoking lapse among socioeconomically disadvantaged smokers seeking smoking cessation treatment.
Participants were recruited into a randomized controlled smoking cessation trial at an urban safety-net hospital tobacco cessation clinic. All participants completed in-person EMAs on mobile phones provided by the study. The presence of six commonly cited lapse risk variables (ie, urge to smoke, stress, recent alcohol consumption, interaction with someone smoking, cessation motivation, and cigarette availability) collected during 2152 prompted or self-initiated postcessation EMAs was examined to determine whether the number of lapse risk factors was greater when lapse was imminent (ie, within 4 hours) than when lapse was not imminent. Various strategies were used to weight variables in efforts to improve the predictive utility of the lapse risk estimator.
Participants (N=92) were mostly female (52/92, 57%), minority (65/92, 71%), 51.9 (SD 7.4) years old, and smoked 18.0 (SD 8.5) cigarettes per day. EMA data indicated significantly higher urges (P=.01), stress (P=.002), alcohol consumption (P<.001), interaction with someone smoking (P<.001), and lower cessation motivation (P=.03) within 4 hours of the first lapse compared with EMAs collected when lapse was not imminent. Further, the total number of lapse risk factors present within 4 hours of lapse (mean 2.43, SD 1.37) was significantly higher than the number of lapse risk factors present during periods when lapse was not imminent (mean 1.35, SD 1.04), P<.001. Overall, 62% (32/52) of all participants who lapsed completed at least one EMA wherein they reported ≥3 lapse risk factors within 4 hours of their first lapse. Differentially weighting lapse risk variables resulted in an improved risk estimator (weighted area=0.76 vs unweighted area=0.72, P<.004). Specifically, 80% (42/52) of all participants who lapsed had at least one EMA with a lapse risk score above the cut-off within 4 hours of their first lapse.
Real-time estimation of smoking lapse risk is feasible and may pave the way for development of mobile phone‒based smoking cessation treatments that automatically tailor treatment content in real time based on presence of specific lapse triggers. Interventions that identify risk for lapse and automatically deliver tailored messages or other treatment components in real time could offer effective, low cost, and highly disseminable treatments to individuals who do not have access to other more standard cessation treatments.
基于手机的实时生态瞬时评估(EMA)已被用于记录健康风险行为及其行为前因,因为这些行为几乎是实时发生的。
本研究的目的是确定通过手机收集的密集纵向数据是否可用于识别寻求戒烟治疗的社会经济弱势吸烟者即将出现吸烟复吸的风险。
在一家城市安全网医院的戒烟诊所,招募参与者进入一项随机对照戒烟试验。所有参与者使用研究提供的手机完成面对面的EMA。检查在2152次促发或自我发起的戒烟后EMA期间收集的六个常见的复吸风险变量(即吸烟冲动、压力、近期饮酒、与吸烟者互动、戒烟动机和香烟可得性)的存在情况,以确定复吸即将发生时(即4小时内)的复吸风险因素数量是否比复吸未即将发生时更多。使用了各种策略对变量进行加权,以提高复吸风险估计器的预测效用。
参与者(N = 92)大多为女性(52/92,57%),少数族裔(65/92,71%),年龄51.9(标准差7.4)岁,每天吸烟18.0(标准差8.5)支。EMA数据表明,与复吸未即将发生时收集的EMA相比,首次复吸前4小时内的吸烟冲动(P = 0.01)、压力(P = 0.002)、饮酒(P < 0.001)、与吸烟者互动(P < 0.001)显著更高,而戒烟动机更低(P = 0.03)。此外,复吸前4小时内存在的复吸风险因素总数(平均2.43,标准差1.37)显著高于复吸未即将发生期间存在的复吸风险因素数量(平均1.35,标准差1.04),P < 0.001。总体而言,所有复吸参与者中有62%(32/52)在首次复吸前4小时内完成了至少一次EMA,其中他们报告了≥3个复吸风险因素。对复吸风险变量进行差异加权导致风险估计器得到改进(加权面积 = 0.76,未加权面积 = 0.72,P < 0.004)。具体而言,所有复吸参与者中有80%(42/52)在首次复吸前4小时内至少有一次EMA的复吸风险评分高于临界值。
吸烟复吸风险的实时估计是可行的,可能为开发基于手机的戒烟治疗方法铺平道路,这些方法可根据特定复吸触发因素的存在实时自动调整治疗内容。识别复吸风险并实时自动发送定制信息或其他治疗组件的干预措施可以为无法获得其他更标准戒烟治疗的个人提供有效、低成本且高度可传播的治疗方法。