Skip to content

This project holds a line-list data (including mobility and exposure history, as well as epidemiological Timelines) of 10,000+ COVID-19 cases reported by Chinese local health committees.

Notifications You must be signed in to change notification settings

abcdefg3381/COVID_19_China_case_reports

Repository files navigation

COVID-19 Case Reports in China

This project holds the data curated from daily COVID-19 case reports that are publicly disclosed by local health committees in China outside Hubei Province, starting January 2019.

A brief description

Chinese prefectural level governments started to report daily confirmed COVID-19 cases online, starting from January 2020. The disclosures may contain the mobility, potential exposure scenario, epidemiological characteristics, and other useful information of individual cases. We organized a group of content coders since early March 2020, kept monitoring the information updates, manually extracted useful information from the public disclosures, and compiled these datasets.

We welcome any form of collaborations with us and non-commercial reuse of our dataset. We highly encourage interested parties to examine the data, report errors in our coding, and help us to keep the data updated.

The detailed data description can be found on Scientific Data.

File name explanation

  • data_sources.csv: the URLs to online disclosure venues.

  • dataset EN.csv: coded information in English.

  • reasons_for_missing_data.csv: The reasons for missing cases in some prefecturals.

Suggested citation

Liu, X.F., Xu, XK. & Wu, Y. Mobility, exposure, and epidemiological timelines of COVID-19 infections in China outside Hubei province. Sci Data 8, 54 (2021). https://doi.org/10.1038/s41597-021-00844-8

Automated information extraction using NLP models

Manual data curation has been costly in the past two years. In fact, these repetitive works can be and should be automated with artificial intelligence. Dr Yuanyuan Sun and her student Mr Zhizheng Wang from Dalian University of Technology collaborated with us and developed a deep-learning based text anaysis framework to extract the information from natural language written texts. Case reports since 2022 are curated with the help of this framework. The code and model are also shared through our repository.

File name explanation

More details can be referred to the README.md in CCIE.zip

Online system

Based on our information extraction framework (CCIE), we provided an online system to help extract structured data fields from open-access COVID-19 case reports. The system can automatically extract the activity trajectory (e.g., places of departure, transit, and destination), infection cycle (such as dates of arrival, symptom onset, quarantine, hospitalization, and confirmation), and the admitted hospital of infected patients. The front page of our system is shown as follows:

https://github.com/abcdefg3381/COVID_19_China_case_reports/blob/main/Front%20Page.jpg

Suggested citation

Wang, Zhizheng and Liu, Xiao Fan and Du, Zhanwei and Wang, Lin and Wu, Ye and Holme, Petter and Lachmann, Michael and lin, hongfei and Wong, Zoie S. Y. and Xu, Xiao-Ke and Sun, Yuanyuan, Epidemiologic Information Discovery from Open-Access COVID-19 Case Reports Via Pretrained Language Model. Available at SSRN: https://ssrn.com/abstract=4060371.

License

This project is licensed under the terms of the Creative Commons Attribution 4.0 International (CC BY 4.0) license. View license Deed https://creativecommons.org/licenses/by/4.0/deed.en and Legal Code https://creativecommons.org/licenses/by/4.0/legalcode.

About

This project holds a line-list data (including mobility and exposure history, as well as epidemiological Timelines) of 10,000+ COVID-19 cases reported by Chinese local health committees.

Topics

Resources

Stars

Watchers

Forks

Contributors 3

  •  
  •  
  •