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Understanding attrition from international internet health interventions: A step towards global eHealth

机译:了解国际互联网健康干预带来的消耗:迈向全球电子健康的一步

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Worldwide automated Internet health interventions have the potential to greatly reduce health disparities. High attrition from automated Internet interventions is ubiquitous, and presents a challenge in the evaluation of their effectiveness. Our objective was to evaluate variables hypothesized to be related to attrition, by modeling predictors of attrition in a secondary data analysis of two cohorts of an international, dual language (English and Spanish) Internet smoking cessation intervention. The two cohorts were identical except for the approach to follow-up (FU): one cohort employed only fully automated FU (n= 16 430), while the other cohort also used 'live' contact conditional upon initial non-response (n= 1000). Attrition rates were 48.1 and 10.8% for the automated FU and live FU cohorts, respectively. Significant attrition predictors in the automated FU cohort included higher levels of nicotine dependency, lower education, lower quitting confidence and receiving more contact emails. Participants' younger age was the sole predictor of attrition in the live FU cohort. While research on large-scale deployment of Internet interventions is at an early stage, this study demonstrates that differences in attrition from trials on this scale are (i) systematic and predictable and (ii) can largely be eliminated by live FU efforts. In fully automated trials, targeting the predictors we identify may reduce attrition, a necessary precursor to effective behavioral Internet interventions that can be accessed globally.
机译:全球范围内的自动化Internet健康干预措施有可能极大地减少健康差异。互联网自动干预带来的高损耗是无处不在的,并且在评估其有效性方面提出了挑战。我们的目标是通过对两个国际,双重语言(英语和西班牙语)互联网戒烟干预措施队列的二级数据分析中的磨损预测因子进行建模,从而评估假设的与磨损相关的变量。除随访方法(FU)外,这两个队列是相同的:一个队列仅使用全自动FU(n = 16 430),而另一个队列也使用“实时”接触,但要以初始无反应为条件(n = 1000)。自动化FU和实时FU队列的人员流失率分别为48.1和10.8%。自动化FU队列中的重要损耗预测因素包括更高水平的尼古丁依赖性,较低的教育程度,较低的戒断信心以及接收更多的联系电子邮件。参与者的年轻年龄是现场FU队列中流失的唯一预测因素。尽管有关互联网干预大规模部署的研究尚处于早期阶段,但这项研究表明,在此规模的试验中,损耗的差异是(i)系统的和可预测的,并且(ii)实时FU可以大幅度消除。在全自动试验中,以我们确定的预测因子为目标可能会减少损耗,这是可以在全球范围内访问的有效行为互联网干预措施的必要先兆。

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