Ng Qin Xiang, Lee Dawn Yi Xin, Yau Chun En, Lim Yu Liang, Ng Clara Xinyi, Liew Tau Ming
Health Services Research Unit, Singapore General Hospital, Singapore 169608, Singapore.
Ministry of Health Holdings Pte Ltd., Singapore 099253, Singapore.
Healthcare (Basel). 2023 May 19;11(10):1485. doi: 10.3390/healthcare11101485.
Loneliness is an issue of public health significance. Longitudinal studies indicate that feelings of loneliness are prevalent and were exacerbated by the Coronavirus Disease 2019 (COVID-19) pandemic. With the advent of new media, more people are turning to social media platforms such as Twitter and Reddit as well as online forums, e.g., loneliness forums, to seek advice and solace regarding their health and well-being. The present study therefore aimed to investigate the public messaging on loneliness via an unsupervised machine learning analysis of posts made by organisations on Twitter. We specifically examined tweets put out by organisations (companies, agencies or common interest groups) as the public may view them as more credible information as opposed to individual opinions. A total of 68,345 unique tweets in English were posted by organisations on Twitter from 1 January 2012 to 1 September 2022. These tweets were extracted and analysed using unsupervised machine learning approaches. BERTopic, a topic modelling technique that leverages state-of-the-art natural language processing, was applied to generate interpretable topics around the public messaging of loneliness and highlight the key words in the topic descriptions. The topics and topic labels were then reviewed independently by all study investigators for thematic analysis. Four key themes were uncovered, namely, the experience of loneliness, people who experience loneliness, what exacerbates loneliness and what could alleviate loneliness. Notably, a significant proportion of the tweets centred on the impact of the COVID-19 pandemic on loneliness. While current online interactions are largely descriptive of the complex and multifaceted problem of loneliness, more targeted prosocial messaging appears to be lacking to combat the causes of loneliness brought up in public messaging.
孤独是一个具有公共卫生意义的问题。纵向研究表明,孤独感普遍存在,且在2019年冠状病毒病(COVID-19)大流行期间加剧。随着新媒体的出现,越来越多的人转向推特和Reddit等社交媒体平台以及在线论坛,如孤独论坛,寻求有关自身健康和幸福的建议与慰藉。因此,本研究旨在通过对推特上各组织发布的帖子进行无监督机器学习分析,来调查关于孤独的公共信息。我们特别考察了各组织(公司、机构或共同兴趣团体)发布的推文,因为公众可能认为这些推文比个人观点更具可信度。2012年1月1日至2022年9月1日期间,各组织在推特上共发布了68345条英文独特推文。这些推文被提取出来,并使用无监督机器学习方法进行分析。BERTopic是一种利用最先进自然语言处理技术的主题建模技术,被用于围绕孤独的公共信息生成可解释的主题,并突出主题描述中的关键词。然后,所有研究调查人员对这些主题和主题标签进行独立审查,以进行主题分析。研究发现了四个关键主题,即孤独的体验、经历孤独的人、加剧孤独的因素以及缓解孤独的方法。值得注意的是,相当一部分推文聚焦于COVID-19大流行对孤独的影响。虽然当前的在线互动很大程度上描述了孤独这一复杂多面的问题,但似乎缺乏更有针对性的亲社会信息来应对公共信息中提出的孤独成因。