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通过社交媒体帖子的大规模分析来分析孤独感趋势:观察性研究。

Analyzing Trends of Loneliness Through Large-Scale Analysis of Social Media Postings: Observational Study.

作者信息

Mazuz Keren, Yom-Tov Elad

机构信息

Hadassah Academic College Jerusalem, Jerusalem, Israel.

Microsoft Research, Herzeliya, Israel.

出版信息

JMIR Ment Health. 2020 Apr 20;7(4):e17188. doi: 10.2196/17188.

Abstract

BACKGROUND

Loneliness has become a public health problem described as an epidemic, and it has been argued that digital behavior such as social media posting affects loneliness.

OBJECTIVE

The aim of this study is to expand knowledge of the determinants of loneliness by investigating online postings in a social media forum devoted to loneliness. Specifically, this study aims to analyze the temporal trends in loneliness and their associations with topics of interest, especially with those related to mental health determinants.

METHODS

We collected a total of 19,668 postings from 11,054 users in the loneliness forum on Reddit. We asked seven crowdsourced workers to imagine themselves as writing 1 of 236 randomly chosen posts and to answer the short-form UCLA Loneliness Scale. After showing that these postings could provide an assessment of loneliness, we built a predictive model for loneliness scores based on the posts' text and applied it to all collected postings. We then analyzed trends in loneliness postings over time and their correlations with other topics of interest related to mental health determinants.

RESULTS

We found that crowdsourced workers can estimate loneliness (interclass correlation=0.19) and that predictive models are correlated with reported loneliness scores (Pearson r=0.38). Our results show that increases in loneliness are strongly associated with postings to a suicidality-related forum (hazard ratio 1.19) and to forums associated with other detrimental behaviors such as depression and illicit drug use. Clustering demonstrates that people who are lonely come from diverse demographics and from a variety of interests.

CONCLUSIONS

The results demonstrate that it is possible for unrelated individuals to assess people's social media postings for loneliness. Moreover, our findings show the multidimensional nature of online loneliness and its correlated behaviors. Our study shows the advantages of studying a hard-to-reach population through social media and suggests new directions for future studies.

摘要

背景

孤独已成为一个被描述为流行病的公共卫生问题,有人认为社交媒体发帖等数字行为会影响孤独感。

目的

本研究旨在通过调查一个致力于孤独话题的社交媒体论坛上的在线发帖,来扩展对孤独感决定因素的认识。具体而言,本研究旨在分析孤独感的时间趋势及其与感兴趣话题的关联,尤其是与那些与心理健康决定因素相关的话题。

方法

我们从Reddit上的孤独论坛收集了来自11,054名用户的总共19,668条帖子。我们让七名众包工作者想象自己在撰写236篇随机选择的帖子中的一篇,并回答简版加州大学洛杉矶分校孤独量表。在表明这些帖子可以提供孤独感评估后,我们基于帖子文本构建了孤独感得分的预测模型,并将其应用于所有收集到的帖子。然后,我们分析了孤独感帖子随时间的趋势及其与其他与心理健康决定因素相关的感兴趣话题的相关性。

结果

我们发现众包工作者能够估计孤独感(组内相关系数 = 0.19),并且预测模型与报告的孤独感得分相关(皮尔逊r = 0.38)。我们的结果表明,孤独感的增加与向自杀相关论坛的发帖(风险比1.19)以及与其他有害行为(如抑郁和非法药物使用)相关的论坛的发帖密切相关。聚类分析表明,孤独的人来自不同的人口统计学群体和各种兴趣领域。

结论

结果表明,无关个体有可能通过社交媒体帖子评估人们的孤独感。此外,我们的研究结果显示了在线孤独感及其相关行为的多维度性质。我们的研究展示了通过社交媒体研究难以接触到的人群的优势,并为未来研究提出了新方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7973/7199140/1572679b3d2a/mental_v7i4e17188_fig1.jpg

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