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首页> 外文期刊>Journal of medical Internet research >The Voice of Chinese Health Consumers: A Text Mining Approach to Web-Based Physician Reviews
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The Voice of Chinese Health Consumers: A Text Mining Approach to Web-Based Physician Reviews

机译:中国医疗保健消费者的心声:基于文本的基于Web的医师评论挖掘方法

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Background: Many Web-based health care platforms allow patients to evaluate physicians by posting open-end textual reviews based on their experiences. These reviews are helpful resources for other patients to choose high-quality doctors, especially in countries like China where no doctor referral systems exist. Analyzing such a large amount of user-generated content to understand the voice of health consumers has attracted much attention from health care providers and health care researchers.Objective: The aim of this paper is to automatically extract hidden topics from Web-based physician reviews using text-mining techniques to examine what Chinese patients have said about their doctors and whether these topics differ across various specialties. This knowledge will help health care consumers, providers, and researchers better understand this information.Methods: We conducted two-fold analyses on the data collected from the “Good Doctor Online” platform, the largest online health community in China. First, we explored all reviews from 2006-2014 using descriptive statistics. Second, we applied the well-known topic extraction algorithm Latent Dirichlet Allocation to more than 500,000 textual reviews from over 75,000 Chinese doctors across four major specialty areas to understand what Chinese health consumers said online about their doctor visits.Results: On the “Good Doctor Online” platform, 112,873 out of 314,624 doctors had been reviewed at least once by April 11, 2014. Among the 772,979 textual reviews, we chose to focus on four major specialty areas that received the most reviews: Internal Medicine, Surgery, Obstetrics/Gynecology and Pediatrics, and Chinese Traditional Medicine. Among the doctors who received reviews from those four medical specialties, two-thirds of them received more than two reviews and in a few extreme cases, some doctors received more than 500 reviews. Across the four major areas, the most popular topics reviewers found were the experience of finding doctors, doctors’ technical skills and bedside manner, general appreciation from patients, and description of various symptoms.Conclusions: To the best of our knowledge, our work is the first study using an automated text-mining approach to analyze a large amount of unstructured textual data of Web-based physician reviews in China. Based on our analysis, we found that Chinese reviewers mainly concentrate on a few popular topics. This is consistent with the goal of Chinese online health platforms and demonstrates the health care focus in China’s health care system. Our text-mining approach reveals a new research area on how to use big data to help health care providers, health care administrators, and policy makers hear patient voices, target patient concerns, and improve the quality of care in this age of patient-centered care. Also, on the health care consumer side, our text mining technique helps patients make more informed decisions about which specialists to see without reading thousands of reviews, which is simply not feasible. In addition, our comparison analysis of Web-based physician reviews in China and the United States also indicates some cultural differences.
机译:背景:许多基于Web的医疗保健平台允许患者通过根据经验发布开放式文本评论来评估医生。这些评论为其他患者选择高质量的医生提供了有用的资源,尤其是在像中国这样的不存在医生推荐系统的国家。分析大量用户生成的内容以了解健康消费者的声音已引起了医疗保健提供者和医疗保健研究人员的广泛关注。目的:本文的目的是使用以下方法自动从基于Web的医生评论中提取隐藏的主题:文本挖掘技术来检查中国患者对医生的看法以及这些主题在各个专业之间是否存在差异。该知识将帮助医疗保健消费者,提供者和研究人员更好地理解此信息。方法:我们对从“ Good Doctor Online”平台(中国最大的在线健康社区)收集的数据进行了两次分析。首先,我们使用描述性统计资料探索了2006-2014年的所有评论。其次,我们将著名的主题提取算法Latent Dirichlet Allocation应用到来自四个主要专业领域的75,000多名中国医生的500,000篇文字评论中,以了解中国卫生保健消费者在网上对他们看病的看法。截至2014年4月11日,“在线”平台上的314,624位医生中的112,873位已至少接受过一次检查。在772,979条文本评论中,我们选择重点关注获得最多评论的四个主要专业领域:内科,外科,妇产科和儿科以及中医。在接受这四个医学专业的评论的医生中,三分之二的人接受了两次以上的评论,在一些极端情况下,一些医生获得了500多次评论。在这四个主要领域中,评论者发现的最受欢迎的主题是找医生的经历,医生的技术技能和床旁态度,对患者的普遍赞赏以及对各种症状的描述。结论:据我们所知,我们的工作是第一项研究使用自动文本挖掘方法来分析中国基于Web的医生评论的大量非结构化文本数据。根据我们的分析,我们发现中国评论者主要集中在一些热门话题上。这与中国在线医疗平台的目标相符,并证明了中国医疗体系中对医疗的关注。我们的文本挖掘方法揭示了一个新的研究领域,即如何使用大数据来帮助医疗保健提供者,医疗保健管理员和政策制定者听取患者的声音,解决患者的疑虑并提高以患者为中心的时代的护理质量关心。此外,在医疗保健消费者方面,我们的文本挖掘技术可帮助患者在不阅读成千上万条评论的情况下,就应该看哪位专家做出更明智的决定,这根本不可行。此外,我们对中美网络医生评论的比较分析还表明了一些文化差异。

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