A smartphone “app”-delivered randomized factorial trial targeting physical activity in adults

被引:0
作者
Jason Fanning
Sarah Roberts
Charles H. Hillman
Sean P. Mullen
Lee Ritterband
Edward McAuley
机构
[1] University of Illinois at Urbana-Champaign,Department of Kinesiology and Community Health
[2] University of Virginia Health System,Department of Psychiatry and Neurobehavioral Sciences
来源
Journal of Behavioral Medicine | 2017年 / 40卷
关键词
Physical activity; Technology; Health behavior; Theory;
D O I
暂无
中图分类号
学科分类号
摘要
Rapid technological development has challenged researchers developing mobile moderate-to-vigorous physical activity (MVPA) interventions. This 12-week randomized factorial intervention aimed to determine the individual and combined impact of a self-monitoring smartphone-app (tracking, feedback, education) and two theory-based modules (goal-setting, points-based feedback) on MVPA, key psychosocial outcomes, and application usage. Adults (N = 116; Mage = 41.38 ± 7.57) received (1) a basic self-monitoring app, (2) the basic app plus goal setting, (3) the basic app plus points-based feedback, or (4) the basic app plus both modules. All individuals increased MVPA by more than 11 daily minutes. Those with points-based feedback demonstrated still higher levels of MVPA and more favorable psychosocial and app usage outcomes across the intervention. Those with access to in-app goal setting had higher levels of app usage relative to those without the component. It is imperative that effective digital intervention “ingredients” are identified, and these findings provide early evidence to this effect.
引用
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页码:712 / 729
页数:17
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