Characteristics of spatial statistical models and their application in the prevention and control of infectious diseases

WANG Jia-min, ZHOU Yi-biao

Anhui Journal of Preventive Medicine ›› 2022, Vol. 28 ›› Issue (6) : 437-442.

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Anhui Journal of Preventive Medicine ›› 2022, Vol. 28 ›› Issue (6) : 437-442. DOI: 10.19837/j.cnki.ahyf.2022.06.001

Characteristics of spatial statistical models and their application in the prevention and control of infectious diseases

  • WANG Jia-min, ZHOU Yi-biao
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Abstract

The prevention and control of infectious diseases is a great challenge.Spatial statistical models have been increasingly applied to the research of infectious diseases.It is used to reveal the spatial and temporal distribution of infectious diseases and make reasonable predictions,and to provide technical support for the prevention and control of infectious diseases.In order to improve researchers' understanding of spatial statistical models and apply them to the study of infectious diseases properly,this paper mainly reviews the characteristics of various spatial statistical models and their applications in infectious diseases.

Key words

Spatial statistics / Model / Infectious disease

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WANG Jia-min, ZHOU Yi-biao. Characteristics of spatial statistical models and their application in the prevention and control of infectious diseases[J]. Anhui Journal of Preventive Medicine. 2022, 28(6): 437-442 https://doi.org/10.19837/j.cnki.ahyf.2022.06.001

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