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A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics

BACKGROUND: With an influenza pandemic seemingly imminent, we constructed a model simulating the spread of influenza within the community, in order to test the impact of various interventions. METHODS: The model includes an individual level, in which the risk of influenza virus infection and the dyn...

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Autores principales: Carrat, Fabrice, Luong, Julie, Lao, Hervé, Sallé, Anne-Violaine, Lajaunie, Christian, Wackernagel, Hans
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2006
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1626479/
https://www.ncbi.nlm.nih.gov/pubmed/17059593
http://dx.doi.org/10.1186/1741-7015-4-26
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author Carrat, Fabrice
Luong, Julie
Lao, Hervé
Sallé, Anne-Violaine
Lajaunie, Christian
Wackernagel, Hans
author_facet Carrat, Fabrice
Luong, Julie
Lao, Hervé
Sallé, Anne-Violaine
Lajaunie, Christian
Wackernagel, Hans
author_sort Carrat, Fabrice
collection PubMed
description BACKGROUND: With an influenza pandemic seemingly imminent, we constructed a model simulating the spread of influenza within the community, in order to test the impact of various interventions. METHODS: The model includes an individual level, in which the risk of influenza virus infection and the dynamics of viral shedding are simulated according to age, treatment, and vaccination status; and a community level, in which meetings between individuals are simulated on randomly generated graphs. We used data on real pandemics to calibrate some parameters of the model. The reference scenario assumes no vaccination, no use of antiviral drugs, and no preexisting herd immunity. We explored the impact of interventions such as vaccination, treatment/prophylaxis with neuraminidase inhibitors, quarantine, and closure of schools or workplaces. RESULTS: In the reference scenario, 57% of realizations lead to an explosive outbreak, lasting a mean of 82 days (standard deviation (SD) 12 days) and affecting 46.8% of the population on average. Interventions aimed at reducing the number of meetings, combined with measures reducing individual transmissibility, would be partly effective: coverage of 70% of affected households, with treatment of the index patient, prophylaxis of household contacts, and confinement to home of all household members, would reduce the probability of an outbreak by 52%, and the remaining outbreaks would be limited to 17% of the population (range 0.8%–25%). Reactive vaccination of 70% of the susceptible population would significantly reduce the frequency, size, and mean duration of outbreaks, but the benefit would depend markedly on the interval between identification of the first case and the beginning of mass vaccination. The epidemic would affect 4% of the population if vaccination started immediately, 17% if there was a 14-day delay, and 36% if there was a 28-day delay. Closing schools when the number of infections in the community exceeded 50 would be very effective, limiting the size of outbreaks to 10% of the population (range 0.9%–22%). CONCLUSION: This flexible tool can help to determine the interventions most likely to contain an influenza pandemic. These results support the stockpiling of antiviral drugs and accelerated vaccine development.
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spelling pubmed-16264792006-11-07 A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics Carrat, Fabrice Luong, Julie Lao, Hervé Sallé, Anne-Violaine Lajaunie, Christian Wackernagel, Hans BMC Med Research Article BACKGROUND: With an influenza pandemic seemingly imminent, we constructed a model simulating the spread of influenza within the community, in order to test the impact of various interventions. METHODS: The model includes an individual level, in which the risk of influenza virus infection and the dynamics of viral shedding are simulated according to age, treatment, and vaccination status; and a community level, in which meetings between individuals are simulated on randomly generated graphs. We used data on real pandemics to calibrate some parameters of the model. The reference scenario assumes no vaccination, no use of antiviral drugs, and no preexisting herd immunity. We explored the impact of interventions such as vaccination, treatment/prophylaxis with neuraminidase inhibitors, quarantine, and closure of schools or workplaces. RESULTS: In the reference scenario, 57% of realizations lead to an explosive outbreak, lasting a mean of 82 days (standard deviation (SD) 12 days) and affecting 46.8% of the population on average. Interventions aimed at reducing the number of meetings, combined with measures reducing individual transmissibility, would be partly effective: coverage of 70% of affected households, with treatment of the index patient, prophylaxis of household contacts, and confinement to home of all household members, would reduce the probability of an outbreak by 52%, and the remaining outbreaks would be limited to 17% of the population (range 0.8%–25%). Reactive vaccination of 70% of the susceptible population would significantly reduce the frequency, size, and mean duration of outbreaks, but the benefit would depend markedly on the interval between identification of the first case and the beginning of mass vaccination. The epidemic would affect 4% of the population if vaccination started immediately, 17% if there was a 14-day delay, and 36% if there was a 28-day delay. Closing schools when the number of infections in the community exceeded 50 would be very effective, limiting the size of outbreaks to 10% of the population (range 0.9%–22%). CONCLUSION: This flexible tool can help to determine the interventions most likely to contain an influenza pandemic. These results support the stockpiling of antiviral drugs and accelerated vaccine development. BioMed Central 2006-10-23 /pmc/articles/PMC1626479/ /pubmed/17059593 http://dx.doi.org/10.1186/1741-7015-4-26 Text en Copyright © 2006 Carrat et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Carrat, Fabrice
Luong, Julie
Lao, Hervé
Sallé, Anne-Violaine
Lajaunie, Christian
Wackernagel, Hans
A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
title A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
title_full A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
title_fullStr A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
title_full_unstemmed A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
title_short A 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
title_sort 'small-world-like' model for comparing interventions aimed at preventing and controlling influenza pandemics
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1626479/
https://www.ncbi.nlm.nih.gov/pubmed/17059593
http://dx.doi.org/10.1186/1741-7015-4-26
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