Ciencias de la Información y de la Comunicación, Universitat Oberta de Catalunya, 08035 Barcelona, Spain.
Tactical Whistleblower Association, 46022 València, Spain.
Int J Environ Res Public Health. 2020 Feb 8;17(3):1066. doi: 10.3390/ijerph17031066.
Comments and information appearing on the internet and on different social media sway opinion concerning potential remedies for diagnosing and curing diseases. In many cases, this has an impact on citizens' health and affects medical professionals, who find themselves having to defend their diagnoses as well as the treatments they propose against ill-informed patients. The propagation of these opinions follows the same pattern as the dissemination of fake news about other important topics, such as the environment, via social media networks, which we use as a testing ground for checking our procedure. In this article, we present an algorithm to analyse the behaviour of users of Twitter, the most important social network with respect to this issue, as well as a dynamic knowledge graph construction method based on information gathered from Twitter and other open data sources such as web pages. To show our methodology, we present a concrete example of how the associated graph structure of the tweets related to World Environment Day 2019 is used to develop a heuristic analysis of the validity of the information. The proposed analytical scheme is based on the interaction between the computer tool-a database implemented with Neo4j-and the analyst, who must ask the right questions to the tool, allowing to follow the line of any doubtful data. We also show how this method can be used. We also present some methodological guidelines on how our system could allow, in the future, an automation of the procedures for the construction of an autonomous algorithm for the detection of false news on the internet related to health.
互联网和各种社交媒体上的评论和信息影响着人们对于潜在疾病诊断和治疗方法的看法。在很多情况下,这会对公民的健康产生影响,并对医疗专业人员造成影响,因为他们必须为自己的诊断和提出的治疗方案辩护,以对抗那些缺乏医学知识的患者。这些观点的传播模式与通过社交媒体网络传播有关其他重要主题(如环境)的假新闻相同,我们使用社交媒体网络作为检验我们程序的试验场。在本文中,我们提出了一种分析 Twitter 用户行为的算法,Twitter 是与该问题最相关的最重要的社交媒体网络,以及一种基于从 Twitter 和其他开放数据源(如网页)收集的信息构建动态知识图的方法。为了展示我们的方法,我们提出了一个具体示例,说明如何使用与 2019 年世界环境日相关的推文的关联图结构来开发对信息有效性的启发式分析。所提出的分析方案基于计算机工具(使用 Neo4j 实现的数据库)与分析师之间的交互,分析师必须向工具提出正确的问题,以便跟踪任何可疑数据的线索。我们还展示了如何使用这种方法。我们还提出了一些关于我们的系统如何能够在未来允许对互联网上与健康相关的虚假新闻的检测的自主算法构建过程进行自动化的方法学指南。