Advanced intelligent health advice with informative summaries to facilitate treatment decision-making

Yi-Hung Liu, Sheng-Fong Chen
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Abstract

Purpose Whether automatically generated summaries of health social media can assist users in appropriately managing their diseases and ensuring better communication with health professionals becomes an important issue. This paper aims to develop a novel deep learning-based summarization approach for obtaining the most informative summaries from online patient reviews accurately and effectively. Design/methodology/approach This paper proposes a framework to generate summaries that integrates a domain-specific pre-trained embedding model and a deep neural extractive summary approach by considering content features, text sentiment, review influence and readability features. Representative health-related summaries were identified, and user judgements were analysed. Findings Experimental results on the three real-world health forum data sets indicate that awarding sentences without incorporating all the adopted features leads to declining summarization performance. The proposed summarizer significantly outperformed the comparison baseline. User judgement through the questionnaire provides realistic and concrete evidence of crucial features that remarkably influence patient forum review summaries. Originality/value This study contributes to health analytics and management literature by exploring users’ expressions and opinions through the health deep learning summarization model. The research also developed an innovative mindset to design summarization weighting methods from user-created content on health topics.
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先进的智能健康建议,提供信息丰富的摘要,以促进治疗决策
目的自动生成的健康社交媒体摘要是否能够帮助用户适当地管理自己的疾病,并确保与卫生专业人员更好地沟通,成为一个重要问题。本文旨在开发一种新颖的基于深度学习的摘要方法,以准确有效地从在线患者评论中获取最具信息量的摘要。设计/方法/方法本文提出了一个框架来生成摘要,该框架集成了特定领域的预训练嵌入模型和深度神经提取摘要方法,考虑了内容特征、文本情感、评论影响和可读性特征。确定了具有代表性的健康相关摘要,并分析了用户的判断。在三个真实世界的健康论坛数据集上的实验结果表明,在没有纳入所有采用的特征的情况下授予句子会导致摘要性能下降。建议的摘要器显著优于比较基线。通过问卷的用户判断提供了现实和具体的证据,证明了显著影响患者论坛审查摘要的关键特征。独创性/价值本研究通过健康深度学习总结模型探索用户的表达和意见,为健康分析和管理文献做出贡献。该研究还开发了一种创新思维,从用户创建的健康主题内容中设计摘要加权方法。
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