Van der Mispel Celien, Poppe Louise, Crombez Geert, Verloigne Maïté, De Bourdeaudhuij Ilse
Research Group Physical Activity and Health, Department of Movement and Sports Sciences, Ghent University, Ghent, Belgium.
Ghent Health Psychology Lab, Department of Experimental-Clinical and Health Psychology, Ghent University, Ghent, Belgium.
J Med Internet Res. 2017 Jul 11;19(7):e241. doi: 10.2196/jmir.7277.
eHealth interventions can reach large populations and are effective in increasing physical activity (PA) and fruit and vegetable intake. Nevertheless, the effects of eHealth interventions are overshadowed by high attrition rates. Examining more closely when users decide to leave the intervention can help eHealth developers to make informed decisions about which intervention components should be reshaped or simply removed. Investigating which users are more likely to quit an intervention can inform developers about whether and how their intervention should be adapted to specific subgroups of users.
This study investigated the pattern of attrition in a Web-based intervention to increase PA, fruit, and vegetable intake. The first aim was to describe attrition rates according to different self-regulation components. A second aim was to investigate whether certain user characteristics are predictors for start session completion, returning to a follow-up session and intervention completion.
The sample consisted of 549 adults who participated in an online intervention, based on self-regulation theory, to promote PA and fruit and vegetable intake, called "MyPlan 1.0." Using descriptive analysis, attrition was explored per self-regulation component (eg, action planning and coping planning). To identify which user characteristics predict completion, logistic regression analyses were conducted.
At the end of the intervention program, there was an attrition rate of 78.2% (330/422). Attrition rates were very similar for the different self-regulation components. However, attrition levels were higher for the fulfillment of questionnaires (eg, to generate tailored feedback) than for the more interactive components. The highest amount of attrition could be observed when people were asked to make their own action plan. There were no significant predictors for first session completion. Yet, two subgroups had a lower chance to complete the intervention, namely male users (OR: 2.24, 95% CI=1.23-4.08) and younger adults (OR: 1.02, 95% CI=1.00-1.04). Furthermore, younger adults were less likely to return to the website for the first follow-up after one week (OR: 1.03, 95% CI=1.01-1.04).
This study informs us that eHealth interventions should avoid the use of extensive questionnaires and that users should be provided with a rationale for several components (eg, making an action plan and completing questions). Furthermore, future interventions should focus first on motivating users for the behavior change before guiding them through action planning. Though, this study provides no evidence for removal of one of the self-regulation techniques based on attrition rates. Finally, strong efforts are needed to motivate male users and younger adults to complete eHealth interventions.
电子健康干预措施能够覆盖大量人群,并且在增加身体活动(PA)以及水果和蔬菜摄入量方面具有成效。然而,高流失率使电子健康干预的效果大打折扣。更深入地研究用户决定退出干预的时间点,有助于电子健康开发者做出明智决策,确定哪些干预组件需要重新设计或直接移除。调查哪些用户更有可能退出干预,能够让开发者了解他们的干预措施是否以及如何针对特定用户亚组进行调整。
本研究调查了一项基于网络的干预措施中,旨在增加PA、水果和蔬菜摄入量的流失模式。首要目标是根据不同的自我调节组件描述流失率。第二个目标是调查某些用户特征是否是开始课程完成、返回随访课程以及干预完成的预测因素。
样本包括549名成年人,他们参与了一项基于自我调节理论的在线干预措施,以促进PA以及水果和蔬菜的摄入,该措施名为“MyPlan 1.0”。通过描述性分析,按自我调节组件(如行动计划和应对计划)探究流失情况。为确定哪些用户特征可预测完成情况,进行了逻辑回归分析。
在干预项目结束时,流失率为78.2%(330/422)。不同自我调节组件的流失率非常相似。然而,完成问卷(例如生成个性化反馈)的流失水平高于互动性更强的组件。当要求人们制定自己的行动计划时,流失量最大。首次课程完成情况没有显著的预测因素。然而,有两个亚组完成干预的机会较低,即男性用户(比值比:2.24,95%置信区间=1.23 - 4.08)和年轻人(比值比:1.02,95%置信区间=1.00 - 1.04)。此外,年轻人在一周后首次随访时返回网站的可能性较小(比值比:1.03,95%置信区间=1.01 - 1.04)。
本研究告诉我们,电子健康干预应避免使用大量问卷,并且应向用户说明几个组件(如制定行动计划和完成问题)的基本原理。此外,未来的干预措施应首先专注于激励用户改变行为,然后再引导他们进行行动计划。不过,本研究没有提供基于流失率而移除其中一种自我调节技术的证据。最后,需要做出巨大努力来激励男性用户和年轻人完成电子健康干预。