Hekler Eric B, Michie Susan, Pavel Misha, Rivera Daniel E, Collins Linda M, Jimison Holly B, Garnett Claire, Parral Skye, Spruijt-Metz Donna
School of Nutrition and Health Promotion, Arizona State University, Phoenix, Arizona.
Centre for Behaviour Change, University College London, London, United Kingdom.
Am J Prev Med. 2016 Nov;51(5):825-832. doi: 10.1016/j.amepre.2016.06.013.
To be suitable for informing digital behavior change interventions, theories and models of behavior change need to capture individual variation and changes over time. The aim of this paper is to provide recommendations for development of models and theories that are informed by, and can inform, digital behavior change interventions based on discussions by international experts, including behavioral, computer, and health scientists and engineers. The proposed framework stipulates the use of a state-space representation to define when, where, for whom, and in what state for that person, an intervention will produce a targeted effect. The "state" is that of the individual based on multiple variables that define the "space" when a mechanism of action may produce the effect. A state-space representation can be used to help guide theorizing and identify crossdisciplinary methodologic strategies for improving measurement, experimental design, and analysis that can feasibly match the complexity of real-world behavior change via digital behavior change interventions.
为适用于指导数字行为改变干预措施,行为改变的理论和模型需要捕捉个体差异以及随时间的变化。本文旨在基于包括行为科学家、计算机科学家、健康科学家和工程师在内的国际专家的讨论,为模型和理论的开发提供建议,这些模型和理论应以数字行为改变干预措施为依据,并能为其提供指导。所提出的框架规定使用状态空间表示法来定义干预措施将在何时、何地、针对何人以及该人处于何种状态下产生预期效果。“状态”是基于多个变量的个体状态,这些变量定义了可能产生效果时的“空间”。状态空间表示法可用于帮助指导理论构建,并识别跨学科的方法策略,以改进测量、实验设计和分析,这些策略能够通过数字行为改变干预措施切实匹配现实世界行为改变的复杂性。