TY - JOUR AU - Palacz-Poborczyk, Iga AU - Idziak, Paulina AU - Januszewicz, Anna AU - Luszczynska, Aleksandra AU - questest, Eleanor AU - Naughton, Felix AU - Hagger, Martin S AU - Pagoto, Sherry AU - Verboon, Peter AU - Robinson, Suzanne AU - Kwasnicka, Dominika PY - 2022 DA - 2022/10/18 TI -开发“选择健康”数字减肥和维持干预:干预映射研究JO - J Med Internet Res SP - e34089 VL - 24is - 10kw -行为改变KW -行为维持KW -行为理论KW -体重减轻KW -超重KW -肥胖KW -随机对照试验KW -数字健康KW -人内设计KW -干预映射AB -背景:为个人量身定制的数字健康促进项目是一种潜在的、具有成本效益和可扩展的解决方案,可以为体重超标的人提供自我管理和支持。然而,可广泛获得的、个性化的、基于理论和证据的解决方案仍然有限。目的:本研究旨在开发一个数字行为改变程序,选择健康,可以确定每个个体的体重减轻和维持的可修改的预测因素,并使用这些来提供量身定制的支持。方法:应用介入映射协议进行程序设计。这种系统的方法开发理论和循证的健康促进项目包括6个步骤:开发问题的逻辑模型、变化模型、干预设计和干预生产、实施计划和评估计划。干预制图过程中所做的决策是由理论、现有证据和我们自己的研究指导的,包括4个焦点小组(n=40)、专家咨询(n=12)和访谈(n=11)。利益攸关方包括研究人员、公众代表(包括超重和肥胖的个人)和来自各种相关背景的专家(包括营养、体育活动和卫生保健部门)。结果:按照结构化的过程,我们开发了一种量身定制的干预措施,有可能减少超重和肥胖患者的超重体重,并支持他们改变行为。 The Choosing Health intervention consists of tailored, personalized text messages and email support that correspond with theoretical domains potentially predictive of weight outcomes for each participant. The intervention content includes behavior change techniques to support motivation maintenance, self-regulation, habit formation, environmental restructuring, social support, and addressing physical and psychological resources. Conclusions: The use of an Intervention Mapping protocol enabled the systematic development of the Choosing Health intervention and guided the implementation and evaluation of the program. Through the involvement of different stakeholders, including representatives of the general public, we were able to map out program facilitators and barriers while increasing the ecological validity of the program to ensure that we build an intervention that is useful, user-friendly, and informative. We also summarized the lessons learned for the Choosing Health intervention development and for other health promotion programs. International Registered Report Identifier (IRRID): RR2-10.1136/bmjopen-2020-040183 SN - 1438-8871 UR - //www.mybigtv.com/2022/10/e34089 UR - https://doi.org/10.2196/34089 UR - http://www.ncbi.nlm.nih.gov/pubmed/362568 DO - 10.2196/34089 ID - info:doi/10.2196/34089 ER -
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