Advances in the application of big data in infectious disease surveillance

ZHU Yuliang, WANG Liping

Anhui Journal of Preventive Medicine ›› 2019, Vol. 25 ›› Issue (5) : 370-373.

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Anhui Journal of Preventive Medicine ›› 2019, Vol. 25 ›› Issue (5) : 370-373.

Advances in the application of big data in infectious disease surveillance

  • ZHU Yuliang1, WANG Liping2
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Abstract

Since the 21st century, with the continuous development of the Internet, infectious disease surveillance system based on big data has gradually become a research hotspot. It combines big data from different sources with traditional surveillance data, takes advantage of big data, carries out timely surveillance and early warning of infectious diseases, identifies potential outbreak areas and the direction of spread. This paper mainly introduces the concept of big data, the analysis methods of association rules and the application of big data from different data sources in infectious disease surveillance.

Key words

Big data / Infectious diseases / Surveillance

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ZHU Yuliang, WANG Liping. Advances in the application of big data in infectious disease surveillance[J]. Anhui Journal of Preventive Medicine. 2019, 25(5): 370-373

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