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Published in: BMC Public Health 1/2022

Open Access 01-12-2022 | Mumps | Research

Application of logistic differential equation models for early warning of infectious diseases in Jilin Province

Authors: Tianlong Yang, Yao Wang, Laishun Yao, Xiaohao Guo, Mikah Ngwanguong Hannah, Chan Liu, Jia Rui, Zeyu Zhao, Jiefeng Huang, Weikang Liu, Bin Deng, Li Luo, Zhuoyang Li, Peihua Li, Yuanzhao Zhu, Xingchun Liu, Jingwen Xu, Meng Yang, Qinglong Zhao, Yanhua Su, Tianmu Chen

Published in: BMC Public Health | Issue 1/2022

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Abstract

Background

There is still a relatively serious disease burden of infectious diseases and the warning time for different infectious diseases before implementation of interventions is important. The logistic differential equation models can be used for predicting early warning of infectious diseases. The aim of this study is to compare the disease fitting effects of the logistic differential equation (LDE) model and the generalized logistic differential equation (GLDE) model for the first time using data on multiple infectious diseases in Jilin Province and to calculate the early warning signals for different types of infectious diseases using these two models in Jilin Province to solve the disease early warning schedule for Jilin Province throughout the year.

Methods

Collecting the incidence of 22 infectious diseases in Jilin Province, China. The LDE and GLDE models were used to calculate the recommended warning week (RWW), the epidemic acceleration week (EAW) and warning removed week (WRW) for acute infectious diseases with seasonality, respectively.

Results

Five diseases were selected for analysis based on screening principles: hemorrhagic fever with renal syndrome (HFRS), shigellosis, mumps, Hand, foot and mouth disease (HFMD), and scarlet fever. The GLDE model fitted the above diseases better (0.80 ≤ R2 ≤ 0.94, P <  0. 005) than the LDE model. The estimated warning durations (per year) of the LDE model for the above diseases were: weeks 12–23 and 40–50; weeks 20–36; weeks 15–24 and 43–52; weeks 26–34; and weeks 16–25 and 41–50. While the durations of early warning (per year) estimated by the GLDE model were: weeks 7–24 and 36–51; weeks 13–37; weeks 11–26 and 39–54; weeks 23–35; and weeks 12–26 and 40–50.

Conclusions

Compared to the LDE model, the GLDE model provides a better fit to the actual disease incidence data. The RWW appeared to be earlier when estimated with the GLDE model than the LDE model. In addition, the WRW estimated with the GLDE model were more lagged and had a longer warning time.
Appendix
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Metadata
Title
Application of logistic differential equation models for early warning of infectious diseases in Jilin Province
Authors
Tianlong Yang
Yao Wang
Laishun Yao
Xiaohao Guo
Mikah Ngwanguong Hannah
Chan Liu
Jia Rui
Zeyu Zhao
Jiefeng Huang
Weikang Liu
Bin Deng
Li Luo
Zhuoyang Li
Peihua Li
Yuanzhao Zhu
Xingchun Liu
Jingwen Xu
Meng Yang
Qinglong Zhao
Yanhua Su
Tianmu Chen
Publication date
01-12-2022
Publisher
BioMed Central
Keyword
Mumps
Published in
BMC Public Health / Issue 1/2022
Electronic ISSN: 1471-2458
DOI
https://doi.org/10.1186/s12889-022-14407-y

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