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International Journal of Frontiers in Medicine, 2024, 6(3); doi: 10.25236/IJFM.2024.060304.

Progress in methodological research of infectious disease prediction

Author(s)

Ruidong Lv1, Feng Liu2

Corresponding Author:
Feng Liu
Affiliation(s)

1Shaanxi University of Chinese Medicine, Xianyang, Shaanxi, 712046, China

2Shaanxi Provincial Center for Disease Control and Prevention, Xi'an, Shaanxi, 710054, China

Abstract

Infectious diseases occur all year round in China, and often cause outbreaks and epidemics, which have made a great effect on people's health and economic development. The prevention and control of infectious diseases becoming an important public health issue. As a result, based on the previous surveillance data of infectious diseases, a prediction model suitable for the disease is built through the epidemic characteristics of various infectious diseases, and the prediction results are used to give early warning of the occurrence of infectious diseases and formulate corresponding prevention and control strategies. This paper summarizes the models used by scholars to predict infectious diseases in recent years, and provides ideas for establishing suitable models for different infectious diseases.

Keywords

Infectious diseases; prediction model

Cite This Paper

Ruidong Lv, Feng Liu. Progress in methodological research of infectious disease prediction. International Journal of Frontiers in Medicine (2024), Vol. 6, Issue 3: 23-27. https://doi.org/10.25236/IJFM.2024.060304.

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