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Ebola Cases and Health System Demand in Liberia

In 2014, a major epidemic of human Ebola virus disease emerged in West Africa, where human-to-human transmission has now been sustained for greater than 12 months. In the summer of 2014, there was great uncertainty about the answers to several key policy questions concerning the path to containment....

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Autores principales: Drake, John M., Kaul, RajReni B., Alexander, Laura W., O’Regan, Suzanne M., Kramer, Andrew M., Pulliam, J. Tomlin, Ferrari, Matthew J., Park, Andrew W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4293091/
https://www.ncbi.nlm.nih.gov/pubmed/25585384
http://dx.doi.org/10.1371/journal.pbio.1002056
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author Drake, John M.
Kaul, RajReni B.
Alexander, Laura W.
O’Regan, Suzanne M.
Kramer, Andrew M.
Pulliam, J. Tomlin
Ferrari, Matthew J.
Park, Andrew W.
author_facet Drake, John M.
Kaul, RajReni B.
Alexander, Laura W.
O’Regan, Suzanne M.
Kramer, Andrew M.
Pulliam, J. Tomlin
Ferrari, Matthew J.
Park, Andrew W.
author_sort Drake, John M.
collection PubMed
description In 2014, a major epidemic of human Ebola virus disease emerged in West Africa, where human-to-human transmission has now been sustained for greater than 12 months. In the summer of 2014, there was great uncertainty about the answers to several key policy questions concerning the path to containment. What is the relative importance of nosocomial transmission compared with community-acquired infection? How much must hospital capacity increase to provide care for the anticipated patient burden? To which interventions will Ebola transmission be most responsive? What must be done to achieve containment? In recent years, epidemic models have been used to guide public health interventions. But, model-based policy relies on high quality causal understanding of transmission, including the availability of appropriate dynamic transmission models and reliable reporting about the sequence of case incidence for model fitting, which were lacking for this epidemic. To investigate the range of potential transmission scenarios, we developed a multi-type branching process model that incorporates key heterogeneities and time-varying parameters to reflect changing human behavior and deliberate interventions in Liberia. Ensembles of this model were evaluated at a set of parameters that were both epidemiologically plausible and capable of reproducing the observed trajectory. Results of this model suggested that epidemic outcome would depend on both hospital capacity and individual behavior. Simulations suggested that if hospital capacity was not increased, then transmission might outpace the rate of isolation and the ability to provide care for the ill, infectious, and dying. Similarly, the model suggested that containment would require individuals to adopt behaviors that increase the rates of case identification and isolation and secure burial of the deceased. As of mid-October, it was unclear that this epidemic would be contained even by 99% hospitalization at the planned hospital capacity. A new version of the model, updated to reflect information collected during October and November 2014, predicts a significantly more constrained set of possible futures. This model suggests that epidemic outcome still depends very heavily on individual behavior. Particularly, if future patient hospitalization rates return to background levels (estimated to be around 70%), then transmission is predicted to remain just below the critical point around R (eff) = 1. At the higher hospitalization rate of 85%, this model predicts near complete elimination in March to June, 2015.
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spelling pubmed-42930912015-01-22 Ebola Cases and Health System Demand in Liberia Drake, John M. Kaul, RajReni B. Alexander, Laura W. O’Regan, Suzanne M. Kramer, Andrew M. Pulliam, J. Tomlin Ferrari, Matthew J. Park, Andrew W. PLoS Biol Research Article In 2014, a major epidemic of human Ebola virus disease emerged in West Africa, where human-to-human transmission has now been sustained for greater than 12 months. In the summer of 2014, there was great uncertainty about the answers to several key policy questions concerning the path to containment. What is the relative importance of nosocomial transmission compared with community-acquired infection? How much must hospital capacity increase to provide care for the anticipated patient burden? To which interventions will Ebola transmission be most responsive? What must be done to achieve containment? In recent years, epidemic models have been used to guide public health interventions. But, model-based policy relies on high quality causal understanding of transmission, including the availability of appropriate dynamic transmission models and reliable reporting about the sequence of case incidence for model fitting, which were lacking for this epidemic. To investigate the range of potential transmission scenarios, we developed a multi-type branching process model that incorporates key heterogeneities and time-varying parameters to reflect changing human behavior and deliberate interventions in Liberia. Ensembles of this model were evaluated at a set of parameters that were both epidemiologically plausible and capable of reproducing the observed trajectory. Results of this model suggested that epidemic outcome would depend on both hospital capacity and individual behavior. Simulations suggested that if hospital capacity was not increased, then transmission might outpace the rate of isolation and the ability to provide care for the ill, infectious, and dying. Similarly, the model suggested that containment would require individuals to adopt behaviors that increase the rates of case identification and isolation and secure burial of the deceased. As of mid-October, it was unclear that this epidemic would be contained even by 99% hospitalization at the planned hospital capacity. A new version of the model, updated to reflect information collected during October and November 2014, predicts a significantly more constrained set of possible futures. This model suggests that epidemic outcome still depends very heavily on individual behavior. Particularly, if future patient hospitalization rates return to background levels (estimated to be around 70%), then transmission is predicted to remain just below the critical point around R (eff) = 1. At the higher hospitalization rate of 85%, this model predicts near complete elimination in March to June, 2015. Public Library of Science 2015-01-13 /pmc/articles/PMC4293091/ /pubmed/25585384 http://dx.doi.org/10.1371/journal.pbio.1002056 Text en © 2015 Drake et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Drake, John M.
Kaul, RajReni B.
Alexander, Laura W.
O’Regan, Suzanne M.
Kramer, Andrew M.
Pulliam, J. Tomlin
Ferrari, Matthew J.
Park, Andrew W.
Ebola Cases and Health System Demand in Liberia
title Ebola Cases and Health System Demand in Liberia
title_full Ebola Cases and Health System Demand in Liberia
title_fullStr Ebola Cases and Health System Demand in Liberia
title_full_unstemmed Ebola Cases and Health System Demand in Liberia
title_short Ebola Cases and Health System Demand in Liberia
title_sort ebola cases and health system demand in liberia
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4293091/
https://www.ncbi.nlm.nih.gov/pubmed/25585384
http://dx.doi.org/10.1371/journal.pbio.1002056
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