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Adaptive step goals and rewards: a longitudinal growth model of daily steps for a smartphone-based walking intervention

机译:自适应步骤目标和奖励:基于智能手机的步行干预的日常步骤纵向增长模型

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Adaptive interventions are an emerging class of behavioral interventions that allow for individualized tailoring of intervention components over time to a person's evolving needs. The purpose of this study was to evaluate an adaptive step goal + reward intervention, grounded in Social Cognitive Theory delivered via a smartphone application (Just Walk), using a mixed modeling approach. Participants (N = 20) were overweight (mean BMI = 33.8 +/- 6.82 kg/m(2)), sedentary adults (90% female) interested in participating in a 14-week walking intervention. All participants received a Fitbit Zip that automatically synced with Just Walk to track daily steps. Step goals and expected points were delivered through the app every morning and were designed using a pseudo-random multisine algorithm that was a function of each participant's median baseline steps. Self-report measures were also collected each morning and evening via daily surveys administered through the app. The linear mixed effects model showed that, on average, participants significantly increased their daily steps by 2650 (t = 8.25, p 0.01) from baseline to intervention completion. A non-linear model with a quadratic time variable indicated an inflection point for increasing steps near the midpoint of the intervention and this effect was significant (t(2) = -247, t = -5.01, p 0.001). An adaptive step goal + rewards intervention using a smartphone app appears to be a feasible approach for increasing walking behavior in overweight adults. App satisfaction was high and participants enjoyed receiving variable goals each day. Future mHealth studies should consider the use of adaptive step goals + rewards in conjunction with other intervention components for increasing physical activity.
机译:自适应干预是一种新兴的行为干预阶级,允许随着时间的推移需求而对干预组件的个性化剪裁。本研究的目的是评估自适应步骤目标+奖励干预,在通过混合建模方法通过智能手机应用程序(公正的)交付的社会认知理论。参与者(n = 20)超重(平均bmi = 33.8 +/- 6.82 kg / m(2)),久坐的成年人(90%的女性)有兴趣参加14周的步行干预。所有参与者都收到了一个自动步行,以跟踪每日步骤的Fitbit Zip。步骤目标和预期点通过应用程序每天早晨交付,并使用伪随机多语算法设计,该算法是每个参与者的中位数基准步骤的函数。每天早上和晚上也通过应用程序管理的每天早上收集自我报告措施。线性混合效果模型表明,平均而言,参与者从基线到干预完成后,参与者将每日步骤显着增加2650(T = 8.25,P& 0.01)。具有二次时间变量的非线性模型表明了用于增加介入的中点附近的步骤的拐点,并且这种效果很大(T(2)= -247,T = -5.01,P <0.001)。使用智能手机应用程序的自适应步骤目标+奖励干预似乎是一种可行的方法,以增加超重成年人的行走行为。 App满意度高,参与者每天都能接受可变目标。未来的MHEHEATH研究应考虑使用自适应步骤目标+奖励与其他干预组件一起用于增加身体活动。

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