A Text Mining Approach to Covid-19 Literature

Fangyao Liu, Daji Ergu, Biao Li, Wei Deng, Zhengxin Chen, G. Lu, Yong Shi
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Abstract

The novel coronavirus disease — COVID-19 is a historic catastrophe that has caused many devastating impacts on human life and wellness. Researchers in academia and industry strive to understand the causes of this pandemic disease and find new therapeutics combating it. Consequently, the number of COVID-19 related publications increases rapidly, and it is too difficult for medical researchers and practitioners to keep up with the latest research and development. Literature filtering and categorization, and knowledge discovery can use text mining as a powerful tool. In this paper, we propose a text mining method to explore the categories of COVID-19 related themes and identify the standard methodologies that have been used. We discuss the potential limitations of this preliminary study and present future perspectives related to COVID-19 research. This paper provides an quantitative and qualitative mixed analysis example of using some research papers by data mining method to dig out several hidden information and set up a foundation for data scientists to develop more effective algorithms to deal with COVID-19 related problems.
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Covid-19文献的文本挖掘方法
新型冠状病毒疾病- COVID-19是一场历史性灾难,对人类生活和健康造成了许多破坏性影响。学术界和工业界的研究人员努力了解这种大流行疾病的原因,并寻找新的治疗方法。因此,与COVID-19相关的出版物数量迅速增加,医学研究人员和从业人员很难跟上最新的研究和发展。文献过滤、分类和知识发现都可以利用文本挖掘作为一种强大的工具。在本文中,我们提出了一种文本挖掘方法来探索COVID-19相关主题的类别,并确定已使用的标准方法。我们讨论了这项初步研究的潜在局限性,并提出了与COVID-19研究相关的未来展望。本文提供了一个定量和定性混合分析的例子,利用一些研究论文,通过数据挖掘方法挖掘出一些隐藏的信息,为数据科学家开发更有效的算法来处理COVID-19相关问题奠定了基础。
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