Research on Patient Information Demand Preference in Network Health Community based on TF-IDF Algorithm and BTM Model

Rong Hu, Yiting Guo, Yunxia Cheng, Yuzhu Zhang, Shuang Liu
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Abstract

With the rapid development of information technology, the network health community has become an important way of doctor-patient communication in the new era. As the starting point of the doctor-patient communication process, patient information needs are an important basis for conducting information communication research in online health communities. In this study, we take the question data of medical patients in the "ask and answer" community from the website called "xunyiwenyao" in 2022 as samples, and the TF-IDF algorithm was applied to draw word cloud map to reveal the hot spots of patient information demand in the secondary department, apply the BTM toic model to identify the information demand topic of patients in the network health community, and extract the information demand preferences of internal medicine patients. The study found that users of patients in online health communities pay more attention to the causes and countermeasures of initial symptoms and uncomfortable symptoms, and prefer to obtain relevant information about the efficacy and side effects of medical products.
基于 TF-IDF 算法和 BTM 模型的网络健康社区患者信息需求偏好研究
随着信息技术的飞速发展,网络健康社区已成为新时期医患沟通的重要方式。作为医患沟通过程的起点,患者的信息需求是开展网络健康社区信息沟通研究的重要依据。本研究以2022年 "xunyiwenyao "网站 "有问必答 "社区中内科患者的提问数据为样本,应用TF-IDF算法绘制词云图揭示二级科室患者信息需求热点,应用BTM toic模型识别网络健康社区中患者的信息需求主题,提取内科患者的信息需求偏好。研究发现,网络健康社区中的患者用户更关注初期症状和不适症状的原因和对策,更希望获得医疗产品的疗效和副作用等相关信息。
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