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Topic Modeling and User Network Analysis on Twitter during World Lupus Awareness Day

机译:世界狼疮意识日推特主题建模与用户网络分析

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摘要

Twitter is increasingly used by individuals and organizations to broadcast their feelings and practices, providing access to samples of spontaneously expressed opinions on all sorts of themes. Social media offers an additional source of data to unlock information supporting new insights disclosures, particularly for public health purposes. Systemic lupus erythematosus (SLE) is a complex, systemic autoimmune disease that remains a major challenge in therapeutic diagnostic and treatment management. When supporting patients with such a complex disease, sharing information through social media can play an important role in creating better healthcare services. This study explores the nature of topics posted by users and organizations on Twitter during world Lupus day to extract latent topics that occur in tweet texts and to identify what information is most commonly discussed among users. We identified online influencers and opinion leaders who discussed different topics. During this analysis, we found two different types of influencers that employed different narratives about the communities they belong to. Therefore, this study identifies hidden information for healthcare decision-makers and provides a detailed model of the implications for healthcare organizations to detect, understand, and define hidden content behind large collections of text.
机译:Twitter越来越多地被个人和组织用于广播他们的感受和实践,提供对对各种主题的自发意见的样本。社交媒体提供了额外的数据来源,以解锁支持新的见解披露的信息,特别是为了公共卫生。 Systemic Lupus红斑(SLE)是一种复杂的全身自身免疫疾病,仍然是治疗性诊断和治疗管理中的主要挑战。当支持这种复杂疾病的患者时,通过社交媒体分享信息可以在创造更好的医疗保健服务方面发挥重要作用。本研究探讨了在世界卢布日的推特期间用户和组织发布的主题的性质,以提取推文文本中发生的潜在主题,并确定用户最常讨论的信息。我们发现了在线影响者和舆论领导者讨论了不同的主题。在此分析过程中,我们发现两种不同类型的影响因素,这些影响者采用了他们所属的社区的不同叙述。因此,本研究确定了医疗保健决策者的隐藏信息,并为医疗组织检测,理解和定义了大量文本背后的隐藏内容提供了详细的模型。

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