Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan

This article presents the assessment of time-dependent national-level restrictions and control actions and their effects in fighting the COVID-19 pandemic. By analysing the transmission dynamics during the first wave of COVID-19 in the country, the effectiveness of the various levels of control acti...

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Main Authors: Ton Duc Do, Meei Mei Gui, Kok Yew Ng
Format: Article
Language:English
Published: PeerJ Inc. 2021-02-01
Series:PeerJ
Subjects:
Online Access:https://peerj.com/articles/10806.pdf
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spelling doaj-58c664f022344f3f999f008fee5044692021-02-05T15:05:22ZengPeerJ Inc.PeerJ2167-83592021-02-019e1080610.7717/peerj.10806Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in KazakhstanTon Duc Do0Meei Mei Gui1Kok Yew Ng2Department of Robotics and Mechatronics, School of Engineering and Digital Sciences, Nazarbayev University, Nur-Sultan, KazakhstanSchool of Chemistry and Chemical Engineering, Queen’s University Belfast, Belfast, United KingdomEngineering Research Institute, University of Ulster, Belfast, United KingdomThis article presents the assessment of time-dependent national-level restrictions and control actions and their effects in fighting the COVID-19 pandemic. By analysing the transmission dynamics during the first wave of COVID-19 in the country, the effectiveness of the various levels of control actions taken to flatten the curve can be better quantified and understood. This in turn can help the relevant authorities to better plan for and control the subsequent waves of the pandemic. To achieve this, a deterministic population model for the pandemic is firstly developed to take into consideration the time-dependent characteristics of the model parameters, especially on the ever-evolving value of the reproduction number, which is one of the critical measures used to describe the transmission dynamics of this pandemic. The reproduction number alongside other key parameters of the model can then be estimated by fitting the model to real-world data using numerical optimisation techniques or by inducing ad-hoc control actions as recorded in the news platforms. In this article, the model is verified using a case study based on the data from the first wave of COVID-19 in the Republic of Kazakhstan. The model is fitted to provide estimates for two settings in simulations; time-invariant and time-varying (with bounded constraints) parameters. Finally, some forecasts are made using four scenarios with time-dependent control measures so as to determine which would reflect on the actual situations better.https://peerj.com/articles/10806.pdfCOVID-19CoronavirusModellingSEIRDTime-dependent analysis
collection DOAJ
language English
format Article
sources DOAJ
author Ton Duc Do
Meei Mei Gui
Kok Yew Ng
spellingShingle Ton Duc Do
Meei Mei Gui
Kok Yew Ng
Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
PeerJ
COVID-19
Coronavirus
Modelling
SEIRD
Time-dependent analysis
author_facet Ton Duc Do
Meei Mei Gui
Kok Yew Ng
author_sort Ton Duc Do
title Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
title_short Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
title_full Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
title_fullStr Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
title_full_unstemmed Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
title_sort assessing the effects of time-dependent restrictions and control actions to flatten the curve of covid-19 in kazakhstan
publisher PeerJ Inc.
series PeerJ
issn 2167-8359
publishDate 2021-02-01
description This article presents the assessment of time-dependent national-level restrictions and control actions and their effects in fighting the COVID-19 pandemic. By analysing the transmission dynamics during the first wave of COVID-19 in the country, the effectiveness of the various levels of control actions taken to flatten the curve can be better quantified and understood. This in turn can help the relevant authorities to better plan for and control the subsequent waves of the pandemic. To achieve this, a deterministic population model for the pandemic is firstly developed to take into consideration the time-dependent characteristics of the model parameters, especially on the ever-evolving value of the reproduction number, which is one of the critical measures used to describe the transmission dynamics of this pandemic. The reproduction number alongside other key parameters of the model can then be estimated by fitting the model to real-world data using numerical optimisation techniques or by inducing ad-hoc control actions as recorded in the news platforms. In this article, the model is verified using a case study based on the data from the first wave of COVID-19 in the Republic of Kazakhstan. The model is fitted to provide estimates for two settings in simulations; time-invariant and time-varying (with bounded constraints) parameters. Finally, some forecasts are made using four scenarios with time-dependent control measures so as to determine which would reflect on the actual situations better.
topic COVID-19
Coronavirus
Modelling
SEIRD
Time-dependent analysis
url https://peerj.com/articles/10806.pdf
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