Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk

OBJECTIVES According to the World Health Organization, there have been frequent reports of Ebola virus disease (EVD) since the 2014 EVD pandemic in West Africa. We aim to estimate the outbreak scale when an EVD infected person arrives in Korea. METHODS Western Africa EVD epidemic mathematical model...

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Main Authors: Youngsuk Ko, Seok-Min Lee, Soyoung Kim, Moran Ki, Eunok Jung
Format: Article
Language:English
Published: Korean Society of Epidemiology 2019-11-01
Series:Epidemiology and Health
Subjects:
Online Access:http://e-epih.org/upload/pdf/epih-41-e2019048.pdf
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spelling doaj-9f691398303f4314af1d8494b94ff2092020-11-25T01:41:40ZengKorean Society of Epidemiology Epidemiology and Health2092-71932019-11-014110.4178/epih.e20190481064Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate riskYoungsuk Ko0Seok-Min Lee1Soyoung Kim2Moran Ki3Eunok Jung4 Department of Mathematics, Konkuk University, Seoul, Korea Department of Liberal Arts, Hongik University College of Engineering, Seoul, Korea Department of Mathematics, Konkuk University, Seoul, Korea Department of Cancer Control and Population Health, Graduate School of Cancer Science and Policy, National Cancer Center, Goyang, Korea Department of Mathematics, Konkuk University, Seoul, KoreaOBJECTIVES According to the World Health Organization, there have been frequent reports of Ebola virus disease (EVD) since the 2014 EVD pandemic in West Africa. We aim to estimate the outbreak scale when an EVD infected person arrives in Korea. METHODS Western Africa EVD epidemic mathematical model SEIJR or SEIJQR was modified to create a Korean EVD outbreak model. The expected number of EVD patients and outbreak duration were calculated by stochastic simulation under the scenarios of Best case, Diagnosis delay, and Case missing. RESULTS The 2,000 trials of stochastic simulation for each scenario demonstrated the following results: The possible median number of patients is 2 and the estimated maximum number is 11 when the government intervention is proceeded immediately right after the first EVD case is confirmed. With a 6-day delay in diagnosis of the first case, the median number of patients becomes 7, and the maximum, 20. If the first case is missed and the government intervention is not activated until 2 cases of secondary infection occur, the median number of patients is estimated at 15, and the maximum, at 35. CONCLUSIONS Timely and rigorous diagnosis is important to reduce the spreading scale of infection when a new communicable disease is inflowed into Korea. Moreover, it is imperative to strengthen the local surveillance system and diagnostic protocols to avoid missing cases of secondary infection.http://e-epih.org/upload/pdf/epih-41-e2019048.pdfebolavirustheoretical modelsdisease outbreaksstochastic processesrepublic of korea
collection DOAJ
language English
format Article
sources DOAJ
author Youngsuk Ko
Seok-Min Lee
Soyoung Kim
Moran Ki
Eunok Jung
spellingShingle Youngsuk Ko
Seok-Min Lee
Soyoung Kim
Moran Ki
Eunok Jung
Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk
Epidemiology and Health
ebolavirus
theoretical models
disease outbreaks
stochastic processes
republic of korea
author_facet Youngsuk Ko
Seok-Min Lee
Soyoung Kim
Moran Ki
Eunok Jung
author_sort Youngsuk Ko
title Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk
title_short Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk
title_full Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk
title_fullStr Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk
title_full_unstemmed Ebola virus disease outbreak in Korea: use of a mathematical model and stochastic simulation to estimate risk
title_sort ebola virus disease outbreak in korea: use of a mathematical model and stochastic simulation to estimate risk
publisher Korean Society of Epidemiology
series Epidemiology and Health
issn 2092-7193
publishDate 2019-11-01
description OBJECTIVES According to the World Health Organization, there have been frequent reports of Ebola virus disease (EVD) since the 2014 EVD pandemic in West Africa. We aim to estimate the outbreak scale when an EVD infected person arrives in Korea. METHODS Western Africa EVD epidemic mathematical model SEIJR or SEIJQR was modified to create a Korean EVD outbreak model. The expected number of EVD patients and outbreak duration were calculated by stochastic simulation under the scenarios of Best case, Diagnosis delay, and Case missing. RESULTS The 2,000 trials of stochastic simulation for each scenario demonstrated the following results: The possible median number of patients is 2 and the estimated maximum number is 11 when the government intervention is proceeded immediately right after the first EVD case is confirmed. With a 6-day delay in diagnosis of the first case, the median number of patients becomes 7, and the maximum, 20. If the first case is missed and the government intervention is not activated until 2 cases of secondary infection occur, the median number of patients is estimated at 15, and the maximum, at 35. CONCLUSIONS Timely and rigorous diagnosis is important to reduce the spreading scale of infection when a new communicable disease is inflowed into Korea. Moreover, it is imperative to strengthen the local surveillance system and diagnostic protocols to avoid missing cases of secondary infection.
topic ebolavirus
theoretical models
disease outbreaks
stochastic processes
republic of korea
url http://e-epih.org/upload/pdf/epih-41-e2019048.pdf
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