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社交媒体时代的糖尿病自我管理:使用半自动化方法对同伴互动进行大规模分析

Diabetes Self-Management in the Age of Social Media: Large-Scale Analysis of Peer Interactions Using Semiautomated Methods.

作者信息

Myneni Sahiti, Lewis Brittney, Singh Tavleen, Paiva Kristi, Kim Seon Min, Cebula Adrian V, Villanueva Gloria, Wang Jing

机构信息

University of Texas School of Biomedical Informatics at Houston, Houston, TX, United States.

Center on Smart and Connected Health Technologies, School of Nursing, The University of Texas Health Science Center at San Antonio, San Antonio, TX, United States.

出版信息

JMIR Med Inform. 2020 Jun 30;8(6):e18441. doi: 10.2196/18441.

Abstract

BACKGROUND

Online communities have been gaining popularity as support venues for chronic disease management. User engagement, information exposure, and social influence mechanisms can play a significant role in the utility of these platforms.

OBJECTIVE

In this paper, we characterize peer interactions in an online community for chronic disease management. Our objective is to identify key communications and study their prevalence in online social interactions.

METHODS

The American Diabetes Association Online community is an online social network for diabetes self-management. We analyzed 80,481 randomly selected deidentified peer-to-peer messages from 1212 members, posted between June 1, 2012, and May 30, 2019. Our mixed methods approach comprised qualitative coding and automated text analysis to identify, visualize, and analyze content-specific communication patterns underlying diabetes self-management.

RESULTS

Qualitative analysis revealed that "social support" was the most prevalent theme (84.9%), followed by "readiness to change" (18.8%), "teachable moments" (14.7%), "pharmacotherapy" (13.7%), and "progress" (13.3%). The support vector machine classifier resulted in reasonable accuracy with a recall of 0.76 and precision 0.78 and allowed us to extend our thematic codes to the entire data set.

CONCLUSIONS

Modeling health-related communication through high throughput methods can enable the identification of specific content related to sustainable chronic disease management, which facilitates targeted health promotion.

摘要

背景

在线社区作为慢性病管理的支持场所越来越受欢迎。用户参与度、信息曝光度和社会影响机制在这些平台的效用中可以发挥重要作用。

目的

在本文中,我们描述了一个慢性病管理在线社区中的同伴互动。我们的目标是识别关键通信并研究它们在在线社交互动中的流行程度。

方法

美国糖尿病协会在线社区是一个用于糖尿病自我管理的在线社交网络。我们分析了从2012年6月1日至2019年5月30日期间1212名成员发布的80481条随机选择的匿名同伴间消息。我们的混合方法包括定性编码和自动文本分析,以识别、可视化和分析糖尿病自我管理背后特定内容的通信模式。

结果

定性分析表明,“社会支持”是最普遍的主题(84.9%),其次是“准备改变”(18.8%)、“可教时刻”(14.7%)、“药物治疗”(13.7%)和“进展”(13.3%)。支持向量机分类器具有合理的准确性,召回率为0.76,精确率为0.78,使我们能够将主题代码扩展到整个数据集。

结论

通过高通量方法对健康相关通信进行建模,可以识别与可持续慢性病管理相关的特定内容,这有助于有针对性的健康促进。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a34f/7367515/563254736988/medinform_v8i6e18441_fig1.jpg

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