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利用动态知识网络与多模态数据融合预测在线健康平台的咨询成功

Predicting Consultation Success in Online Health Platforms Using Dynamic Knowledge Networks and Multimodal Data Fusion

MIS Quarterly · 2025
被引 0
人大 A+FT50UTD24ABS 4*

中文导读

提出动态知识网络与多模态数据融合框架,通过分析咨询对话和利益相关者网络,预测在线健康咨询是否成功,帮助平台提升患者留存率。

Abstract

Online healthcare consultation in virtual health is an emerging industry marked by innovation and fierce competition. Accurate and early prediction of healthcare consultation success can help online platforms proactively address patient concerns and improve retention rates. However, this prediction task is inherently challenging due to several factors: patients’ needs often remain unclear until they explicitly articulate them, and their questions may evolve throughout the consultation process. Additionally, the task involves processing multimodal input information, including consultation dialogues and the complex network of various stakeholders in a patient’s healthcare journey. To address these issues, we propose the Dynamic Knowledge Network and Multimodal Data Fusion framework with a dynamic knowledge graph and multimodal data fusion, which enhances the predictive power of online healthcare consultations. Our work has important implications for new business models where specific and detailed online communication processes are stored in the IT database, and at the same time, latent information with predictive power is embedded in the network formed by stakeholders’ digital traces. It can be extended to diverse industries and domains, where the virtual or hybrid model (e.g., integration of online and offline services) is emerging as a prevailing trend.

在线医疗健康平台预测模型多模态数据融合知识图谱