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在 COVID-19 大流行早期,利用机器学习方法挖掘医生评价网站上的主题和情绪动态。

Mining topic and sentiment dynamics in physician rating websites during the early wave of the COVID-19 pandemic: Machine learning approach.

机构信息

Department of Management Science and Engineering, School of Management, Harbin Institute of Technology, Harbin, China.

School of Economics and Management, University of Science and Technology, Beijing, China.

出版信息

Int J Med Inform. 2021 May;149:104434. doi: 10.1016/j.ijmedinf.2021.104434. Epub 2021 Feb 26.

Abstract

INTRODUCTION

An increasing number of patients are voicing their opinions and expectations about the quality of care in online forums and on physician rating websites (PRWs). This paper analyzes patient online reviews (PORs) to identify emerging and fading topics and sentiment trends in PRWs during the early stage of the COVID-19 outbreak.

METHODS

Text data were collected, including 55,612 PORs of 3430 doctors from three popular PRWs in the United States (RateMDs, HealthGrades, and Vitals) from March 01 to June 27, 2020. An improved latent Dirichlet allocation (LDA)-based topic modeling (topic coherence-based LDA [TCLDA]), manual annotation, and sentiment analysis tool were applied to extract a suitable number of topics, generate corresponding keywords, assign topic names, and determine trends in the extracted topics and specific emotions.

RESULTS

According to the coherence value and manual annotation, the identified taxonomy includes 30 topics across high-rank and low-rank disease categories. The emerging topics in PRWs focus mainly on themes such as treatment experience, policy implementation regarding epidemic control measures, individuals' attitudes toward the pandemic, and mental health across high-rank diseases. In contrast, the treatment process and experience during COVID-19, awareness and COVID-19 control measures, and COVID-19 deaths, fear, and stress were the most popular themes for low-rank diseases. Panic buying and daily life impact, treatment processes, and bedside manner were the fading themes across high-rank diseases. In contrast, provider attitude toward patients during the pandemic, detection at public transportation, passenger, travel bans and warnings, and materials supplies and society support during COVID-19 were the most fading themes across low-rank diseases. Regarding sentiment analysis, negative emotions (fear, anger, and sadness) prevail during the early wave of the COVID-19.

CONCLUSION

Mining topic dynamics and sentiment trends in PRWs may provide valuable knowledge of patients' opinions during the COVID-19 crisis. Policymakers should consider these PORs and develop global healthcare policies and surveillance systems through monitoring PRWs. The findings of this study identify research gaps in the areas of e-health and text mining and offer future research directions.

摘要

简介

越来越多的患者在在线论坛和医生评级网站(PRW)上表达他们对医疗质量的意见和期望。本文分析了患者在线评论(POR),以确定 COVID-19 爆发初期 PRW 中新兴和逐渐消失的主题和情绪趋势。

方法

收集了包括来自美国三个流行的 PRW(RateMDs、HealthGrades 和 Vitals)的 3430 名医生的 55612 份 POR 文本数据,时间范围为 2020 年 3 月 1 日至 6 月 27 日。采用改进的基于潜在狄利克雷分配(LDA)的主题建模(基于主题连贯性的 LDA[TCLDA])、手动注释和情感分析工具来提取合适数量的主题,生成相应的关键词,分配主题名称,并确定提取主题和特定情绪的趋势。

结果

根据连贯性值和手动注释,确定的分类法包括高等级和低等级疾病类别中 30 个主题。PRW 中的新兴主题主要集中在治疗体验、控制措施相关政策实施、个人对大流行的态度和高等级疾病的心理健康等主题上。相比之下,低等级疾病的最热门主题是 COVID-19 期间的治疗过程和体验、对 COVID-19 的认识和控制措施以及 COVID-19 死亡、恐惧和压力。恐慌购买和日常生活影响、治疗过程和态度、床边态度是高等级疾病中逐渐消失的主题。相比之下,大流行期间对患者的提供者态度、公共交通、乘客、旅行禁令和警告、COVID-19 期间的物资供应和社会支持是低等级疾病中最淡出的主题。关于情感分析,在 COVID-19 早期,负面情绪(恐惧、愤怒和悲伤)占主导地位。

结论

挖掘 PRW 中主题动态和情感趋势可以为 COVID-19 危机期间患者意见提供有价值的知识。政策制定者应考虑这些 POR,并通过监测 PRW 来制定全球医疗保健政策和监测系统。本研究的结果确定了电子健康和文本挖掘领域的研究空白,并提供了未来的研究方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7a8c/9760788/2e6c4dfde3d2/gr1_lrg.jpg

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