Analysis and Visualization Data of Covid-19 Based on Scopus

Khizanah alHikmah Pub Date : 2021-06-03 DOI:10.24252/V9I1A6
Tupan Tupan, Nur Rizzal Rosiyan
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引用次数: 1

Abstract

This study analyzes the amount of documentation about COVID-19 by year, publication source, institution, country, type of document, and funding agency and maps it based on keywords. The research data was obtained through the Scopus database with the keywords novel corona virus or corona virus 2019 or covid 2019 and covid 19, which were further explored. For mapping, the Covid 19 data, the VOSviewer software was used. The findings show that there are 723 covid 19 documents, 569 of which can be accessed openly and 154 can be accessed by subscription. Most of the COVID-19 data published in the Journal of The American College of Radiology with the subject categories discussed were radiology, nuclear medicine, and imaging. Huazhong University of Science and Technology is the most productive institution in producing covid 19 data. China is the country that produces the most covid data. The most type of Covid 19 data documents are articles with the most medicine subject category. Most of the funding sponsors were awarded by the National Science Foundation of China. The visualization of the covid 19 data was mapped into 5 clusters with the most groups from each cluster being cluster 1 being severe acute respiratory syndrome coronavirus, cluster 2 coronavirus disease 2019, cluster 3 fever (fever), cluster 4 epidemiology, cluster 5 disease severity.
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基于Scopus的Covid-19数据分析与可视化
本研究按年份、出版来源、机构、国家、文献类型和资助机构对COVID-19相关文献数量进行了分析,并根据关键词绘制了地图。研究数据通过Scopus数据库获取,关键词为novel corona virus或corona virus 2019或covid 2019 and covid 19,并进行进一步挖掘。使用VOSviewer软件绘制Covid - 19数据。调查结果显示,共有723份covid - 19文件,其中569份可以公开访问,154份可以订阅访问。发表在《美国放射学会杂志》上的大多数COVID-19数据,讨论的主题类别是放射学、核医学和成像。华中科技大学是新冠肺炎数据产出最高的院校。中国是提供covid数据最多的国家。Covid - 19数据文件类型最多的是医学主题类别最多的文章。大多数资助人是由中国国家科学基金委员会授予的。将covid - 19数据可视化成5个聚类,每个聚类中分组最多的是:聚类1为严重急性呼吸综合征冠状病毒,聚类2为冠状病毒病2019,聚类3为发热(发热),聚类4为流行病学,聚类5为疾病严重程度。
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来源期刊
自引率
0.00%
发文量
11
审稿时长
4 weeks
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