Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka

Abstract In response to an outbreak of coronavirus disease 2019 (COVID-19) within a cluster of Navy personnel in Sri Lanka commencing from 22nd April 2020, an aggressive outbreak management program was launched by the Epidemiology Unit of the Ministry of Health. To predict the possible number of cas...

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Main Authors: N. W. A. N. Y. Wijesekara, Nayomi Herath, K. A. L. C. Kodituwakku, H. D. B. Herath, Samitha Ginige, Thilanga Ruwanpathirana, Manjula Kariyawasam, Sudath Samaraweera, Anuruddha Herath, Senarupa Jayawardena, Deepa Gamge
Format: Article
Language:English
Published: BMC 2021-05-01
Series:Military Medical Research
Subjects:
Online Access:https://doi.org/10.1186/s40779-021-00325-4
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spelling doaj-261bf1c20381422d8d8d120a3a9f8bfd2021-05-23T11:19:33ZengBMCMilitary Medical Research2054-93692021-05-01811310.1186/s40779-021-00325-4Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri LankaN. W. A. N. Y. Wijesekara0Nayomi Herath1K. A. L. C. Kodituwakku2H. D. B. Herath3Samitha Ginige4Thilanga Ruwanpathirana5Manjula Kariyawasam6Sudath Samaraweera7Anuruddha Herath8Senarupa Jayawardena9Deepa Gamge10Disaster Preparedness and Response Division, Ministry of HealthDisaster Preparedness and Response Division, Ministry of HealthDisaster Preparedness and Response Division, Ministry of HealthDisaster Preparedness and Response Division, Ministry of HealthEpidemiology Unit of the Ministry of HealthEpidemiology Unit of the Ministry of HealthEpidemiology Unit of the Ministry of HealthEpidemiology Unit of the Ministry of HealthSri Lanka NavySri Lanka NavyEpidemiology Unit of the Ministry of HealthAbstract In response to an outbreak of coronavirus disease 2019 (COVID-19) within a cluster of Navy personnel in Sri Lanka commencing from 22nd April 2020, an aggressive outbreak management program was launched by the Epidemiology Unit of the Ministry of Health. To predict the possible number of cases within the susceptible population under four social distancing scenarios, the COVID-19 Hospital Impact Model for Epidemics (CHIME) was used. With increasing social distancing, the epidemiological curve flattened, and its peak shifted to the right. The observed or actually reported number of cases was above the projected number of cases at the onset; however, subsequently, it fell below all predicted trends. Predictive modelling is a useful tool for the control of outbreaks such as COVID-19 in a closed community.https://doi.org/10.1186/s40779-021-00325-4COVID-19Predictive modellingSIR modelNavy clusterOutbreak management
collection DOAJ
language English
format Article
sources DOAJ
author N. W. A. N. Y. Wijesekara
Nayomi Herath
K. A. L. C. Kodituwakku
H. D. B. Herath
Samitha Ginige
Thilanga Ruwanpathirana
Manjula Kariyawasam
Sudath Samaraweera
Anuruddha Herath
Senarupa Jayawardena
Deepa Gamge
spellingShingle N. W. A. N. Y. Wijesekara
Nayomi Herath
K. A. L. C. Kodituwakku
H. D. B. Herath
Samitha Ginige
Thilanga Ruwanpathirana
Manjula Kariyawasam
Sudath Samaraweera
Anuruddha Herath
Senarupa Jayawardena
Deepa Gamge
Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka
Military Medical Research
COVID-19
Predictive modelling
SIR model
Navy cluster
Outbreak management
author_facet N. W. A. N. Y. Wijesekara
Nayomi Herath
K. A. L. C. Kodituwakku
H. D. B. Herath
Samitha Ginige
Thilanga Ruwanpathirana
Manjula Kariyawasam
Sudath Samaraweera
Anuruddha Herath
Senarupa Jayawardena
Deepa Gamge
author_sort N. W. A. N. Y. Wijesekara
title Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka
title_short Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka
title_full Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka
title_fullStr Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka
title_full_unstemmed Predictive modelling for COVID-19 outbreak control: lessons from the navy cluster in Sri Lanka
title_sort predictive modelling for covid-19 outbreak control: lessons from the navy cluster in sri lanka
publisher BMC
series Military Medical Research
issn 2054-9369
publishDate 2021-05-01
description Abstract In response to an outbreak of coronavirus disease 2019 (COVID-19) within a cluster of Navy personnel in Sri Lanka commencing from 22nd April 2020, an aggressive outbreak management program was launched by the Epidemiology Unit of the Ministry of Health. To predict the possible number of cases within the susceptible population under four social distancing scenarios, the COVID-19 Hospital Impact Model for Epidemics (CHIME) was used. With increasing social distancing, the epidemiological curve flattened, and its peak shifted to the right. The observed or actually reported number of cases was above the projected number of cases at the onset; however, subsequently, it fell below all predicted trends. Predictive modelling is a useful tool for the control of outbreaks such as COVID-19 in a closed community.
topic COVID-19
Predictive modelling
SIR model
Navy cluster
Outbreak management
url https://doi.org/10.1186/s40779-021-00325-4
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