论文标题
根据社交媒体帖子评估健康状态的严重性
Assessing the Severity of Health States based on Social Media Posts
论文作者
论文摘要
互联网用户的前所未有的增长导致社交媒体上的大量非结构化信息,包括健康论坛,患者请求与健康有关的信息或其他用户的意见。先前的研究表明,在线同伴支持无需专家干预而具有有限的有效性。因此,能够评估患者社交媒体职位的健康状况严重程度的系统可以帮助卫生专业人员(HP)优先考虑用户的职位。在这项研究中,我们检查了自然语言理解(NLU)不同方面的功效,以确定用户健康状态与两种观点(任务)(a)医疗状况(即康复,存在,恶化,其他)和(b)药物(即有效,无效,无效,无效,不利影响,在线健康社区中)的严重程度。我们提出了一个多视图学习框架,该框架既建模文本内容又是上下文信息,以评估用户健康状态的严重性。具体而言,我们的模型利用了NLU的观点,例如情感,情感,个性和使用比喻语言来提取上下文信息。多样化的NLU观点证明了其对任务以及个人疾病的有效性,以评估用户的健康。
The unprecedented growth of Internet users has resulted in an abundance of unstructured information on social media including health forums, where patients request health-related information or opinions from other users. Previous studies have shown that online peer support has limited effectiveness without expert intervention. Therefore, a system capable of assessing the severity of health state from the patients' social media posts can help health professionals (HP) in prioritizing the user's post. In this study, we inspect the efficacy of different aspects of Natural Language Understanding (NLU) to identify the severity of the user's health state in relation to two perspectives(tasks) (a) Medical Condition (i.e., Recover, Exist, Deteriorate, Other) and (b) Medication (i.e., Effective, Ineffective, Serious Adverse Effect, Other) in online health communities. We propose a multiview learning framework that models both the textual content as well as contextual-information to assess the severity of the user's health state. Specifically, our model utilizes the NLU views such as sentiment, emotions, personality, and use of figurative language to extract the contextual information. The diverse NLU views demonstrate its effectiveness on both the tasks and as well as on the individual disease to assess a user's health.