Salehinejad Simin, Jangipour Afshar Parya, Borhaninejad Vahidreza
Medical Informatics Research Center, Institute for Futures Studies in Health, Kerman University of Medical Sciences, Kerman, Iran.
Department of Biostatistics and Epidemiology, Faculty of Public Health, Kerman University of Medical Sciences, Kerman, Iran.
Health Promot Perspect. 2021 Feb 7;11(1):12-19. doi: 10.34172/hpp.2021.03. eCollection 2021.
The spreading of health-related rumors can profoundly put society at risk, and the investigation of strategies and methods can efficiently prevent the dissemination of hazardous rumor is necessary, especially during a public health emergency including disease outbreaks. In this article we review the studies that implicated the surveillance system in identifying rumors and discuss the different aspects of current methods in this field. We searched PubMed, EMBASE, Scopus, and Web of Science databases for relevant publications in English from 2000 to 2020. The PICOS approach was used to select articles, and two reviewers extracted the data. Findings were categorized as a source of rumors, type of systems, data collection, and data transmission methods. The quality of the articles was assessed using the Mixed Method Appraisal Tool (MMAT) checklist. Five studies that presented the methods used for rumor detection in different outbreaks were included in the critical appraisal process. Findings were grouped into four categories: source of rumors, type of systems, data collection, and data transmission methods. The source of rumors in most studies was media, including new social and traditional media. The most used data collection methods were human-computer interaction technique, and automatic and manual methods each were discussed in one study. Also, the data transmission method was asynchronous in the majority of studies. Based on our findings, the most common rumor detection systems used in the outbreaks were manual and/or human-computer methods which are considered to be time-consuming processes. Due to the ever-increasing amount of modern social media platforms and the fast-spreading of misinformation in the times of outbreaks, developing the automatically and real-time tools for rumor detection is a vital need.
与健康相关谣言的传播会严重危及社会,因此研究有效预防有害谣言传播的策略和方法很有必要,尤其是在包括疾病爆发在内的突发公共卫生事件期间。在本文中,我们回顾了涉及监测系统识别谣言的研究,并讨论了该领域当前方法的不同方面。我们在PubMed、EMBASE、Scopus和Web of Science数据库中搜索了2000年至2020年期间的英文相关出版物。采用PICOS方法筛选文章,两名评审员提取数据。研究结果分为谣言来源、系统类型、数据收集和数据传输方法几类。使用混合方法评估工具(MMAT)清单评估文章质量。五项介绍了不同疫情中谣言检测方法的研究纳入了批判性评价过程。研究结果分为四类:谣言来源、系统类型、数据收集和数据传输方法。大多数研究中的谣言来源是媒体,包括新兴社交媒体和传统媒体。最常用的数据收集方法是人机交互技术,自动和手动方法在一项研究中分别进行了讨论。此外,大多数研究中的数据传输方法是异步的。根据我们的研究结果,疫情中最常用的谣言检测系统是手动和/或人机方法,这些方法被认为耗时较长。由于现代社交媒体平台数量不断增加,且在疫情期间错误信息传播迅速,开发自动实时的谣言检测工具至关重要。