Cargando…

Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis

BACKGROUND: On September 28, 2022, the first case of Omicron subvariant BF.7 was discovered among coronavirus disease 2019 (COVID-19) infections in Hohhot, China, and then the epidemic broke out on a large scale during the National Day holiday. It is imminently necessary to construct a mathematical...

Descripción completa

Detalles Bibliográficos
Autores principales: Ma, Yifei, Xu, Shujun, Luo, Yuxin, Qin, Yao, Li, Jiantao, Lei, Lijian, He, Lu, Wang, Tong, Yu, Hongmei, Xie, Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10321150/
https://www.ncbi.nlm.nih.gov/pubmed/37415698
http://dx.doi.org/10.3389/fpubh.2023.1175869
_version_ 1785068567357554688
author Ma, Yifei
Xu, Shujun
Luo, Yuxin
Qin, Yao
Li, Jiantao
Lei, Lijian
He, Lu
Wang, Tong
Yu, Hongmei
Xie, Jun
author_facet Ma, Yifei
Xu, Shujun
Luo, Yuxin
Qin, Yao
Li, Jiantao
Lei, Lijian
He, Lu
Wang, Tong
Yu, Hongmei
Xie, Jun
author_sort Ma, Yifei
collection PubMed
description BACKGROUND: On September 28, 2022, the first case of Omicron subvariant BF.7 was discovered among coronavirus disease 2019 (COVID-19) infections in Hohhot, China, and then the epidemic broke out on a large scale during the National Day holiday. It is imminently necessary to construct a mathematical model to investigate the transmission dynamics of COVID-19 in Hohhot. METHODS: In this study, we first investigated the epidemiological characteristics of COVID-19 cases in Hohhot, including the spatiotemporal distribution and sociodemographic distribution. Then, we proposed a time-varying Susceptible-Quarantined Susceptible-Exposed-Quarantined Exposed-Infected-Asymptomatic-Hospitalized-Removed (SQEIAHR) model to derive the epidemic curves. The next-generation matrix method was used to calculate the effective reproduction number (R(e)). Finally, we explored the effects of higher stringency measures on the development of the epidemic through scenario analysis. RESULTS: Of the 4,889 positive infected cases, the vast majority were asymptomatic and mild, mainly concentrated in central areas such as Xincheng District. People in the 30–59 age group primarily were affected by the current outbreak, accounting for 53.74%, but females and males were almost equally affected (1.03:1). Community screening (35.70%) and centralized isolation screening (26.28%) were the main ways to identify positive infected cases. Our model predicted the peak of the epidemic on October 6, 2022, the dynamic zero-COVID date on October 15, 2022, a number of peak cases of 629, and a cumulative number of infections of 4,963 (95% confidential interval (95%CI): 4,692 ~ 5,267), all four of which were highly consistent with the actual situation in Hohhot. Early in the outbreak, the basic reproduction number (R(0)) was approximately 7.01 (95%CI: 6.93 ~ 7.09), and then R(e) declined sharply to below 1.0 on October 6, 2022. Scenario analysis of higher stringency measures showed the importance of decreasing the transmission rate and increasing the quarantine rate to shorten the time to peak, dynamic zero-COVID and an R(e) below 1.0, as well as to reduce the number of peak cases and final affected population. CONCLUSION: Our model was effective in predicting the epidemic trends of COVID-19, and the implementation of a more stringent combination of measures was indispensable in containing the spread of the virus.
format Online
Article
Text
id pubmed-10321150
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-103211502023-07-06 Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis Ma, Yifei Xu, Shujun Luo, Yuxin Qin, Yao Li, Jiantao Lei, Lijian He, Lu Wang, Tong Yu, Hongmei Xie, Jun Front Public Health Public Health BACKGROUND: On September 28, 2022, the first case of Omicron subvariant BF.7 was discovered among coronavirus disease 2019 (COVID-19) infections in Hohhot, China, and then the epidemic broke out on a large scale during the National Day holiday. It is imminently necessary to construct a mathematical model to investigate the transmission dynamics of COVID-19 in Hohhot. METHODS: In this study, we first investigated the epidemiological characteristics of COVID-19 cases in Hohhot, including the spatiotemporal distribution and sociodemographic distribution. Then, we proposed a time-varying Susceptible-Quarantined Susceptible-Exposed-Quarantined Exposed-Infected-Asymptomatic-Hospitalized-Removed (SQEIAHR) model to derive the epidemic curves. The next-generation matrix method was used to calculate the effective reproduction number (R(e)). Finally, we explored the effects of higher stringency measures on the development of the epidemic through scenario analysis. RESULTS: Of the 4,889 positive infected cases, the vast majority were asymptomatic and mild, mainly concentrated in central areas such as Xincheng District. People in the 30–59 age group primarily were affected by the current outbreak, accounting for 53.74%, but females and males were almost equally affected (1.03:1). Community screening (35.70%) and centralized isolation screening (26.28%) were the main ways to identify positive infected cases. Our model predicted the peak of the epidemic on October 6, 2022, the dynamic zero-COVID date on October 15, 2022, a number of peak cases of 629, and a cumulative number of infections of 4,963 (95% confidential interval (95%CI): 4,692 ~ 5,267), all four of which were highly consistent with the actual situation in Hohhot. Early in the outbreak, the basic reproduction number (R(0)) was approximately 7.01 (95%CI: 6.93 ~ 7.09), and then R(e) declined sharply to below 1.0 on October 6, 2022. Scenario analysis of higher stringency measures showed the importance of decreasing the transmission rate and increasing the quarantine rate to shorten the time to peak, dynamic zero-COVID and an R(e) below 1.0, as well as to reduce the number of peak cases and final affected population. CONCLUSION: Our model was effective in predicting the epidemic trends of COVID-19, and the implementation of a more stringent combination of measures was indispensable in containing the spread of the virus. Frontiers Media S.A. 2023-06-21 /pmc/articles/PMC10321150/ /pubmed/37415698 http://dx.doi.org/10.3389/fpubh.2023.1175869 Text en Copyright © 2023 Ma, Xu, Luo, Qin, Li, Lei, He, Wang, Yu and Xie. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Public Health
Ma, Yifei
Xu, Shujun
Luo, Yuxin
Qin, Yao
Li, Jiantao
Lei, Lijian
He, Lu
Wang, Tong
Yu, Hongmei
Xie, Jun
Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis
title Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis
title_full Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis
title_fullStr Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis
title_full_unstemmed Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis
title_short Epidemiological characteristics and transmission dynamics of the COVID-19 outbreak in Hohhot, China: a time-varying SQEIAHR model analysis
title_sort epidemiological characteristics and transmission dynamics of the covid-19 outbreak in hohhot, china: a time-varying sqeiahr model analysis
topic Public Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10321150/
https://www.ncbi.nlm.nih.gov/pubmed/37415698
http://dx.doi.org/10.3389/fpubh.2023.1175869
work_keys_str_mv AT mayifei epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT xushujun epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT luoyuxin epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT qinyao epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT lijiantao epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT leilijian epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT helu epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT wangtong epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT yuhongmei epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis
AT xiejun epidemiologicalcharacteristicsandtransmissiondynamicsofthecovid19outbreakinhohhotchinaatimevaryingsqeiahrmodelanalysis