Toward Personalized Digital Experiences to Promote Diabetes Self-Management: Mixed Methods Social Computing Approach.

Q2 Medicine
JMIR Diabetes Pub Date : 2025-01-07 DOI:10.2196/60109
Tavleen Singh, Kirk Roberts, Kayo Fujimoto, Jing Wang, Constance Johnson, Sahiti Myneni
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引用次数: 0

Abstract

Background: Type 2 diabetes affects nearly 34.2 million adults and is the seventh leading cause of death in the United States. Digital health communities have emerged as avenues to provide social support to individuals engaging in diabetes self-management (DSM). The analysis of digital peer interactions and social connections can improve our understanding of the factors underlying behavior change, which can inform the development of personalized DSM interventions.

Objective: Our objective is to apply our methodology using a mixed methods approach to (1) characterize the role of context-specific social influence patterns in DSM and (2) derive interventional targets that enhance individual engagement in DSM.

Methods: Using the peer messages from the American Diabetes Association support community for DSM (n=~73,000 peer interactions from 2014 to 2021), (1) a labeled set of peer interactions was generated (n=1501 for the American Diabetes Association) through manual annotation, (2) deep learning models were used to scale the qualitative codes to the entire datasets, (3) the validated model was applied to perform a retrospective analysis, and (4) social network analysis techniques were used to portray large-scale patterns and relationships among the communication dimensions (content and context) embedded in peer interactions.

Results: The affiliation exposure model showed that exposure to community users through sharing interactive communication style speech acts had a positive association with the engagement of community users. Our results also suggest that pre-existing users with type 2 diabetes were more likely to stay engaged in the community when they expressed patient-reported outcomes and progress themes (communication content) using interactive communication style speech acts (communication context). It indicates the potential for targeted social network interventions in the form of structural changes based on the user's context and content exchanges with peers, which can exert social influence to modify user engagement behaviors.

Conclusions: In this study, we characterize the role of social influence in DSM as observed in large-scale social media datasets. Implications for multicomponent digital interventions are discussed.

迈向个性化数位体验以促进糖尿病自我管理:混合方法与社会计算方法。
背景:2型糖尿病影响了近3420万成年人,是美国第七大死因。数字健康社区已经成为为参与糖尿病自我管理(DSM)的个人提供社会支持的途径。对数字同伴互动和社会联系的分析可以提高我们对行为改变背后因素的理解,这可以为个性化DSM干预措施的发展提供信息。目标:我们的目标是使用混合方法方法应用我们的方法来(1)描述特定环境的社会影响模式在DSM中的作用,(2)得出增强个人参与DSM的干预目标。方法:利用来自美国糖尿病协会DSM支持社区的同行信息(2014年至2021年n=~73,000次同行互动),(1)通过手工注释生成了一组标记的同行互动(美国糖尿病协会n=1501),(2)使用深度学习模型将定性代码扩展到整个数据集,(3)应用验证模型进行回顾性分析。(4)利用社会网络分析技术描绘了嵌入在同伴互动中的传播维度(内容和语境)之间的大规模模式和关系。结果:隶属关系暴露模型显示,通过分享互动沟通式言语行为接触社区用户与社区用户的参与有正相关关系。我们的研究结果还表明,当2型糖尿病患者使用交互式沟通风格的言语行为(沟通语境)表达患者报告的结果和进展主题(沟通内容)时,他们更有可能留在社区中。它表明,基于用户情境和与同伴的内容交换,以结构变化的形式进行有针对性的社会网络干预的潜力,可以发挥社会影响来改变用户参与行为。结论:在本研究中,我们描述了在大规模社交媒体数据集中观察到的社会影响在DSM中的作用。讨论了多组分数字干预的含义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
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