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Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics

Background: The World Health Organization declared the ongoing Zika virus (ZIKV) epidemic in the Americas a Public Health Emergency of International Concern on February 1, 2016. ZIKV disease in humans is characterized by a “dengue-like” syndrome including febrile illness and rash. However, ZIKV infe...

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Autores principales: Chowell, Gerardo, Hincapie-Palacio, Doracelly, Ospina, Juan, Pell, Bruce, Tariq, Amna, Dahal, Sushma, Moghadas, Seyed, Smirnova, Alexandra, Simonsen, Lone, Viboud, Cécile
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4922743/
https://www.ncbi.nlm.nih.gov/pubmed/27366586
http://dx.doi.org/10.1371/currents.outbreaks.f14b2217c902f453d9320a43a35b9583
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author Chowell, Gerardo
Hincapie-Palacio, Doracelly
Ospina, Juan
Pell, Bruce
Tariq, Amna
Dahal, Sushma
Moghadas, Seyed
Smirnova, Alexandra
Simonsen, Lone
Viboud, Cécile
author_facet Chowell, Gerardo
Hincapie-Palacio, Doracelly
Ospina, Juan
Pell, Bruce
Tariq, Amna
Dahal, Sushma
Moghadas, Seyed
Smirnova, Alexandra
Simonsen, Lone
Viboud, Cécile
author_sort Chowell, Gerardo
collection PubMed
description Background: The World Health Organization declared the ongoing Zika virus (ZIKV) epidemic in the Americas a Public Health Emergency of International Concern on February 1, 2016. ZIKV disease in humans is characterized by a “dengue-like” syndrome including febrile illness and rash. However, ZIKV infection in early pregnancy has been associated with severe birth defects, including microcephaly and other developmental issues. Mechanistic models of disease transmission can be used to forecast trajectories and likely disease burden but are currently hampered by substantial uncertainty on the epidemiology of the disease (e.g., the role of asymptomatic transmission, generation interval, incubation period, and key drivers). When insight is limited, phenomenological models provide a starting point for estimation of key transmission parameters, such as the reproduction number, and forecasts of epidemic impact. Methods: We obtained daily counts of suspected Zika cases by date of symptoms onset from the Secretary of Health of Antioquia, Colombia during January-April 2016. We calibrated the generalized Richards model, a phenomenological model that accommodates a variety of early exponential and sub-exponential growth kinetics, against the early epidemic trajectory and generated predictions of epidemic size. The reproduction number was estimated by applying the renewal equation to incident cases simulated from the fitted generalized-growth model and assuming gamma or exponentially-distributed generation intervals derived from the literature. We estimated the reproduction number for an increasing duration of the epidemic growth phase. Results: The reproduction number rapidly declined from 10.3 (95% CI: 8.3, 12.4) in the first disease generation to 2.2 (95% CI: 1.9, 2.8) in the second disease generation, assuming a gamma-distributed generation interval with the mean of 14 days and standard deviation of 2 days. The generalized-Richards model outperformed the logistic growth model and provided forecasts within 22% of the actual epidemic size based on an assessment 30 days into the epidemic, with the epidemic peaking on day 36. Conclusion: Phenomenological models represent promising tools to generate early forecasts of epidemic impact particularly in the context of substantial uncertainty in epidemiological parameters. Our findings underscore the need to treat the reproduction number as a dynamic quantity even during the early growth phase, and emphasize the sensitivity of reproduction number estimates to assumptions on the generation interval distribution.
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spelling pubmed-49227432016-06-29 Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics Chowell, Gerardo Hincapie-Palacio, Doracelly Ospina, Juan Pell, Bruce Tariq, Amna Dahal, Sushma Moghadas, Seyed Smirnova, Alexandra Simonsen, Lone Viboud, Cécile PLoS Curr Research Article Background: The World Health Organization declared the ongoing Zika virus (ZIKV) epidemic in the Americas a Public Health Emergency of International Concern on February 1, 2016. ZIKV disease in humans is characterized by a “dengue-like” syndrome including febrile illness and rash. However, ZIKV infection in early pregnancy has been associated with severe birth defects, including microcephaly and other developmental issues. Mechanistic models of disease transmission can be used to forecast trajectories and likely disease burden but are currently hampered by substantial uncertainty on the epidemiology of the disease (e.g., the role of asymptomatic transmission, generation interval, incubation period, and key drivers). When insight is limited, phenomenological models provide a starting point for estimation of key transmission parameters, such as the reproduction number, and forecasts of epidemic impact. Methods: We obtained daily counts of suspected Zika cases by date of symptoms onset from the Secretary of Health of Antioquia, Colombia during January-April 2016. We calibrated the generalized Richards model, a phenomenological model that accommodates a variety of early exponential and sub-exponential growth kinetics, against the early epidemic trajectory and generated predictions of epidemic size. The reproduction number was estimated by applying the renewal equation to incident cases simulated from the fitted generalized-growth model and assuming gamma or exponentially-distributed generation intervals derived from the literature. We estimated the reproduction number for an increasing duration of the epidemic growth phase. Results: The reproduction number rapidly declined from 10.3 (95% CI: 8.3, 12.4) in the first disease generation to 2.2 (95% CI: 1.9, 2.8) in the second disease generation, assuming a gamma-distributed generation interval with the mean of 14 days and standard deviation of 2 days. The generalized-Richards model outperformed the logistic growth model and provided forecasts within 22% of the actual epidemic size based on an assessment 30 days into the epidemic, with the epidemic peaking on day 36. Conclusion: Phenomenological models represent promising tools to generate early forecasts of epidemic impact particularly in the context of substantial uncertainty in epidemiological parameters. Our findings underscore the need to treat the reproduction number as a dynamic quantity even during the early growth phase, and emphasize the sensitivity of reproduction number estimates to assumptions on the generation interval distribution. Public Library of Science 2016-05-31 /pmc/articles/PMC4922743/ /pubmed/27366586 http://dx.doi.org/10.1371/currents.outbreaks.f14b2217c902f453d9320a43a35b9583 Text en © 2016 Chowell, Hincapie-Palacio, Ospina, Pell, Tariq, Dahal, Moghadas, Smirnova, Simonsen, Viboud, 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
Chowell, Gerardo
Hincapie-Palacio, Doracelly
Ospina, Juan
Pell, Bruce
Tariq, Amna
Dahal, Sushma
Moghadas, Seyed
Smirnova, Alexandra
Simonsen, Lone
Viboud, Cécile
Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics
title Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics
title_full Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics
title_fullStr Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics
title_full_unstemmed Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics
title_short Using Phenomenological Models to Characterize Transmissibility and Forecast Patterns and Final Burden of Zika Epidemics
title_sort using phenomenological models to characterize transmissibility and forecast patterns and final burden of zika epidemics
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4922743/
https://www.ncbi.nlm.nih.gov/pubmed/27366586
http://dx.doi.org/10.1371/currents.outbreaks.f14b2217c902f453d9320a43a35b9583
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