Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.

Multiple prevention measures have the possibility of impacting HIV incidence in South Korea, including early diagnosis, early treatment, and pre-exposure prophylaxis (PrEP). We investigated how each of these interventions could impact the local HIV epidemic, especially among men who have sex with me...

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Main Authors: Sun Bean Kim, Myoungho Yoon, Nam Su Ku, Min Hyung Kim, Je Eun Song, Jin Young Ahn, Su Jin Jeong, Changsoo Kim, Hee-Dae Kwon, Jeehyun Lee, Davey M Smith, Jun Yong Choi
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3963840?pdf=render
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spelling doaj-eead1d5c67454ff3aa0cb04e40521f382020-11-24T21:38:22ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0193e9008010.1371/journal.pone.0090080Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.Sun Bean KimMyoungho YoonNam Su KuMin Hyung KimJe Eun SongJin Young AhnSu Jin JeongChangsoo KimHee-Dae KwonJeehyun LeeDavey M SmithJun Yong ChoiMultiple prevention measures have the possibility of impacting HIV incidence in South Korea, including early diagnosis, early treatment, and pre-exposure prophylaxis (PrEP). We investigated how each of these interventions could impact the local HIV epidemic, especially among men who have sex with men (MSM), who have become the major risk group in South Korea. A mathematical model was used to estimate the effects of each these interventions on the HIV epidemic in South Korea over the next 40 years, as compared to the current situation.We constructed a mathematical model of HIV infection among MSM in South Korea, dividing the MSM population into seven groups, and simulated the effects of early antiretroviral therapy (ART), early diagnosis, PrEP, and combination interventions on the incidence and prevalence of HIV infection, as compared to the current situation that would be expected without any new prevention measures.Overall, the model suggested that the most effective prevention measure would be PrEP. Even though PrEP effectiveness could be lessened by increased unsafe sex behavior, PrEP use was still more beneficial than the current situation. In the model, early diagnosis of HIV infection was also effectively decreased HIV incidence. However, early ART did not show considerable effectiveness. As expected, it would be most effective if all interventions (PrEP, early diagnosis and early treatment) were implemented together.This model suggests that PrEP and early diagnosis could be a very effective way to reduce HIV incidence in South Korea among MSM.http://europepmc.org/articles/PMC3963840?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Sun Bean Kim
Myoungho Yoon
Nam Su Ku
Min Hyung Kim
Je Eun Song
Jin Young Ahn
Su Jin Jeong
Changsoo Kim
Hee-Dae Kwon
Jeehyun Lee
Davey M Smith
Jun Yong Choi
spellingShingle Sun Bean Kim
Myoungho Yoon
Nam Su Ku
Min Hyung Kim
Je Eun Song
Jin Young Ahn
Su Jin Jeong
Changsoo Kim
Hee-Dae Kwon
Jeehyun Lee
Davey M Smith
Jun Yong Choi
Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.
PLoS ONE
author_facet Sun Bean Kim
Myoungho Yoon
Nam Su Ku
Min Hyung Kim
Je Eun Song
Jin Young Ahn
Su Jin Jeong
Changsoo Kim
Hee-Dae Kwon
Jeehyun Lee
Davey M Smith
Jun Yong Choi
author_sort Sun Bean Kim
title Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.
title_short Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.
title_full Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.
title_fullStr Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.
title_full_unstemmed Mathematical modeling of HIV prevention measures including pre-exposure prophylaxis on HIV incidence in South Korea.
title_sort mathematical modeling of hiv prevention measures including pre-exposure prophylaxis on hiv incidence in south korea.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Multiple prevention measures have the possibility of impacting HIV incidence in South Korea, including early diagnosis, early treatment, and pre-exposure prophylaxis (PrEP). We investigated how each of these interventions could impact the local HIV epidemic, especially among men who have sex with men (MSM), who have become the major risk group in South Korea. A mathematical model was used to estimate the effects of each these interventions on the HIV epidemic in South Korea over the next 40 years, as compared to the current situation.We constructed a mathematical model of HIV infection among MSM in South Korea, dividing the MSM population into seven groups, and simulated the effects of early antiretroviral therapy (ART), early diagnosis, PrEP, and combination interventions on the incidence and prevalence of HIV infection, as compared to the current situation that would be expected without any new prevention measures.Overall, the model suggested that the most effective prevention measure would be PrEP. Even though PrEP effectiveness could be lessened by increased unsafe sex behavior, PrEP use was still more beneficial than the current situation. In the model, early diagnosis of HIV infection was also effectively decreased HIV incidence. However, early ART did not show considerable effectiveness. As expected, it would be most effective if all interventions (PrEP, early diagnosis and early treatment) were implemented together.This model suggests that PrEP and early diagnosis could be a very effective way to reduce HIV incidence in South Korea among MSM.
url http://europepmc.org/articles/PMC3963840?pdf=render
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