Ying Wu College of Computing, New Jersey Institute of Technology, Newark, NJ, United States.
Martin Tuchman School of Management, New Jersey Institute of Technology, Newark, NJ, United States.
J Med Internet Res. 2022 Aug 31;24(8):e30634. doi: 10.2196/30634.
In recent years, an increasing number of users have joined online health communities (OHCs) to obtain information and seek support. Patients often look for information and suggestions to support their health care decision-making. It is important to understand patient decision-making processes and identify the influences that patients receive from OHCs.
We aimed to identify the posts in discussion threads that have influence on users who seek help in their decision-making.
We proposed a definition of influence relationship of posts in discussion threads. We then developed a framework and a deep learning model for identifying influence relationships. We leveraged the state-of-the-art text relevance measurement methods to generate sparse feature vectors to present text relevance. We modeled the probability of question and action presence in a post as dense features. We then used deep learning techniques to combine the sparse and dense features to learn the influence relationships.
We evaluated the proposed techniques on discussion threads from a popular cancer survivor OHC. The empirical evaluation demonstrated the effectiveness of our approach.
It is feasible to identify influence relationships in OHCs. Using the proposed techniques, a significant number of discussions on an OHC were identified to have had influence. Such discussions are more likely to affect user decision-making processes and engage users' participation in OHCs. Studies on those discussions can help improve information quality, user engagement, and user experience.
近年来,越来越多的用户加入在线健康社区(OHC)以获取信息并寻求支持。患者经常寻找信息和建议来支持他们的医疗决策。了解患者的决策过程并识别患者从 OHC 中获得的影响非常重要。
我们旨在确定在讨论主题中对寻求帮助进行决策的用户有影响的帖子。
我们提出了一种在讨论主题中确定帖子的影响关系的定义。然后,我们开发了一个框架和一个深度学习模型来识别影响关系。我们利用最先进的文本相关性测量方法来生成稀疏特征向量来表示文本相关性。我们将帖子中问题和操作存在的概率建模为密集特征。然后,我们使用深度学习技术将稀疏和密集特征结合起来学习影响关系。
我们在一个流行的癌症幸存者 OHC 的讨论主题上评估了所提出的技术。实证评估证明了我们方法的有效性。
在 OHC 中识别影响关系是可行的。使用所提出的技术,确定了大量对 OHC 有影响的讨论。这些讨论更有可能影响用户的决策过程并吸引用户参与 OHC。对这些讨论的研究可以帮助提高信息质量、用户参与度和用户体验。