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COVID-Scraper: An Open-Source Toolset for Automatically Scraping and Processing Global Multi-Scale Spatiotemporal COVID-19 Records.
Lan, Hai; Sha, Dexuan; Malarvizhi, Anusha Srirenganathan; Liu, Yi; Li, Yun; Meister, Nadine; Liu, Qian; Wang, Zifu; Yang, Jingchao; Yang, Chaowei Phil.
  • Lan H; NSF Spatiotemporal Innovation CenterGeorge Mason University Fairfax VA 22030 USA.
  • Sha D; NSF Spatiotemporal Innovation CenterGeorge Mason University Fairfax VA 22030 USA.
  • Malarvizhi AS; Department of Geography and Geoinformation ScienceGeorge Mason University Fairfax VA 22030 USA.
  • Liu Y; NSF Spatiotemporal Innovation CenterGeorge Mason University Fairfax VA 22030 USA.
  • Li Y; Department of Geography and Geoinformation ScienceGeorge Mason University Fairfax VA 22030 USA.
  • Meister N; Department of Aerospace and Mechanical EngineeringUniversity of Notre Dame Notre Dame IN 46556 USA.
  • Liu Q; NSF Spatiotemporal Innovation CenterGeorge Mason University Fairfax VA 22030 USA.
  • Wang Z; Department of Geography and Geoinformation ScienceGeorge Mason University Fairfax VA 22030 USA.
  • Yang J; Department of PhysicsHarvard University Cambridge MA 2138 USA.
  • Yang CP; NSF Spatiotemporal Innovation CenterGeorge Mason University Fairfax VA 22030 USA.
IEEE Access ; 9: 84783-84798, 2021.
Article in English | MEDLINE | ID: covidwho-1324871
ABSTRACT
In 2019, COVID-19 quickly spread across the world, infecting billions of people and disrupting the normal lives of citizens in every country. Governments, organizations, and research institutions all over the world are dedicating vast resources to research effective strategies to fight this rapidly propagating virus. With virus testing, most countries publish the number of confirmed cases, dead cases, recovered cases, and locations routinely through various channels and forms. This important data source has enabled researchers worldwide to perform different COVID-19 scientific studies, such as modeling this virus's spreading patterns, developing prevention strategies, and studying the impact of COVID-19 on other aspects of society. However, one major challenge is that there is no standardized, updated, and high-quality data product that covers COVID-19 cases data internationally. This is because different countries may publish their data in unique channels, formats, and time intervals, which hinders researchers from fetching necessary COVID-19 datasets effectively, especially for fine-scale studies. Although existing solutions such as John's Hopkins COVID-19 Dashboard and 1point3acres COVID-19 tracker are widely used, it is difficult for users to access their original dataset and customize those data to meet specific requirements in categories, data structure, and data source selection. To address this challenge, we developed a toolset using cloud-based web scraping to extract, refine, unify, and store COVID-19 cases data at multiple scales for all available countries around the world automatically. The toolset then publishes the data for public access in an effective manner, which could offer users a real time COVID-19 dynamic dataset with a global view. Two case studies are presented about how to utilize the datasets. This toolset can also be easily extended to fulfill other purposes with its open-source nature.
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Full text: Available Collection: International databases Database: MEDLINE Language: English Journal: IEEE Access Year: 2021 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Language: English Journal: IEEE Access Year: 2021 Document Type: Article