Improving physical activity among prostate cancer survivors through a peer-based digital walking program.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Savitha Sangameswaran, Reggie Casanova-Perez, Harsh Patel, David J Cronkite, Ayah Idris, Dori E Rosenberg, Jonathan L Wright, John L Gore, Andrea L Hartzler
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Abstract

Physical activity is important for prostate cancer survivors. Yet survivors face significant barriers to traditional structured exercise programs, limiting engagement and impact. Digital programs that incorporate fitness trackers and peer support via social media have potential to improve the reach and impact of traditional support. Using a digital walking program with prostate cancer survivors, we employed mixed methods to assess program outcomes, engagement, perceived utility, and social influence. After 6 weeks of program use, survivors and loved ones (n=18) significantly increased their average daily step count. Although engagement and perceived utility of using a fitness tracker and interacting with walking buddies was high, social media engagement and utility were limited. Group strategies associated with social influence were driven more by group attraction to the collective task of walking than by interpersonal bonds. Findings demonstrate the feasibility of a digital walking program to improve physical activity and extend the reach of traditional support.

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通过基于同伴的数字化步行计划,提高前列腺癌幸存者的体育锻炼水平。
体育锻炼对前列腺癌幸存者非常重要。然而,幸存者在参加传统的结构化锻炼计划时面临着巨大障碍,从而限制了参与度和影响力。通过社交媒体整合健身追踪器和同伴支持的数字项目有可能提高传统支持的覆盖面和影响力。我们采用混合方法评估了前列腺癌幸存者的数字步行计划成果、参与度、感知效用和社会影响力。在使用该计划 6 周后,幸存者和亲人(18 人)的日均步数显著增加。虽然使用健身追踪器和与步行伙伴互动的参与度和感知效用很高,但社交媒体的参与度和效用却很有限。与社会影响相关的团体策略更多是由团体对步行这一集体任务的吸引力而非人际纽带驱动的。研究结果表明,通过数字步行计划来提高体育锻炼和扩大传统支持范围是可行的。
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