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Fine-scale estimation of effective reproduction numbers for dengue surveillance

The effective reproduction number R(t) is an epidemiological quantity that provides an instantaneous measure of transmission potential of an infectious disease. While dengue is an increasingly important vector-borne disease, few have used R(t) as a measure to inform public health operations and poli...

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Autores principales: Ong, Janet, Soh, Stacy, Ho, Soon Hoe, Seah, Annabel, Dickens, Borame Sue, Tan, Ken Wei, Koo, Joel Ruihan, Cook, Alex R., Richards, Daniel R., Gaw, Leon Yan-Feng, Ng, Lee Ching, Lim, Jue Tao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8836367/
https://www.ncbi.nlm.nih.gov/pubmed/35051176
http://dx.doi.org/10.1371/journal.pcbi.1009791
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author Ong, Janet
Soh, Stacy
Ho, Soon Hoe
Seah, Annabel
Dickens, Borame Sue
Tan, Ken Wei
Koo, Joel Ruihan
Cook, Alex R.
Richards, Daniel R.
Gaw, Leon Yan-Feng
Ng, Lee Ching
Lim, Jue Tao
author_facet Ong, Janet
Soh, Stacy
Ho, Soon Hoe
Seah, Annabel
Dickens, Borame Sue
Tan, Ken Wei
Koo, Joel Ruihan
Cook, Alex R.
Richards, Daniel R.
Gaw, Leon Yan-Feng
Ng, Lee Ching
Lim, Jue Tao
author_sort Ong, Janet
collection PubMed
description The effective reproduction number R(t) is an epidemiological quantity that provides an instantaneous measure of transmission potential of an infectious disease. While dengue is an increasingly important vector-borne disease, few have used R(t) as a measure to inform public health operations and policy for dengue. This study demonstrates the utility of R(t) for real time dengue surveillance. Using nationally representative, geo-located dengue case data from Singapore over 2010–2020, we estimated R(t) by modifying methods from Bayesian (EpiEstim) and filtering (EpiFilter) approaches, at both the national and local levels. We conducted model assessment of R(t) from each proposed method and determined exogenous temporal and spatial drivers for R(t) in relation to a wide range of environmental and anthropogenic factors. At the national level, both methods achieved satisfactory model performance (R(2)(EpiEstim) = 0.95, R(2)(EpiFilter) = 0.97), but disparities in performance were large at finer spatial scales when case counts are low (MASE (EpiEstim) = 1.23, MASE(EpiFilter) = 0.59). Impervious surfaces and vegetation with structure dominated by human management (without tree canopy) were positively associated with increased transmission intensity. Vegetation with structure dominated by human management (with tree canopy), on the other hand, was associated with lower dengue transmission intensity. We showed that dengue outbreaks were preceded by sustained periods of high transmissibility, demonstrating the potential of R(t) as a dengue surveillance tool for detecting large rises in dengue cases. Real time estimation of R(t) at the fine scale can assist public health agencies in identifying high transmission risk areas and facilitating localised outbreak preparedness and response.
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spelling pubmed-88363672022-02-12 Fine-scale estimation of effective reproduction numbers for dengue surveillance Ong, Janet Soh, Stacy Ho, Soon Hoe Seah, Annabel Dickens, Borame Sue Tan, Ken Wei Koo, Joel Ruihan Cook, Alex R. Richards, Daniel R. Gaw, Leon Yan-Feng Ng, Lee Ching Lim, Jue Tao PLoS Comput Biol Research Article The effective reproduction number R(t) is an epidemiological quantity that provides an instantaneous measure of transmission potential of an infectious disease. While dengue is an increasingly important vector-borne disease, few have used R(t) as a measure to inform public health operations and policy for dengue. This study demonstrates the utility of R(t) for real time dengue surveillance. Using nationally representative, geo-located dengue case data from Singapore over 2010–2020, we estimated R(t) by modifying methods from Bayesian (EpiEstim) and filtering (EpiFilter) approaches, at both the national and local levels. We conducted model assessment of R(t) from each proposed method and determined exogenous temporal and spatial drivers for R(t) in relation to a wide range of environmental and anthropogenic factors. At the national level, both methods achieved satisfactory model performance (R(2)(EpiEstim) = 0.95, R(2)(EpiFilter) = 0.97), but disparities in performance were large at finer spatial scales when case counts are low (MASE (EpiEstim) = 1.23, MASE(EpiFilter) = 0.59). Impervious surfaces and vegetation with structure dominated by human management (without tree canopy) were positively associated with increased transmission intensity. Vegetation with structure dominated by human management (with tree canopy), on the other hand, was associated with lower dengue transmission intensity. We showed that dengue outbreaks were preceded by sustained periods of high transmissibility, demonstrating the potential of R(t) as a dengue surveillance tool for detecting large rises in dengue cases. Real time estimation of R(t) at the fine scale can assist public health agencies in identifying high transmission risk areas and facilitating localised outbreak preparedness and response. Public Library of Science 2022-01-20 /pmc/articles/PMC8836367/ /pubmed/35051176 http://dx.doi.org/10.1371/journal.pcbi.1009791 Text en © 2022 Ong et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Ong, Janet
Soh, Stacy
Ho, Soon Hoe
Seah, Annabel
Dickens, Borame Sue
Tan, Ken Wei
Koo, Joel Ruihan
Cook, Alex R.
Richards, Daniel R.
Gaw, Leon Yan-Feng
Ng, Lee Ching
Lim, Jue Tao
Fine-scale estimation of effective reproduction numbers for dengue surveillance
title Fine-scale estimation of effective reproduction numbers for dengue surveillance
title_full Fine-scale estimation of effective reproduction numbers for dengue surveillance
title_fullStr Fine-scale estimation of effective reproduction numbers for dengue surveillance
title_full_unstemmed Fine-scale estimation of effective reproduction numbers for dengue surveillance
title_short Fine-scale estimation of effective reproduction numbers for dengue surveillance
title_sort fine-scale estimation of effective reproduction numbers for dengue surveillance
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8836367/
https://www.ncbi.nlm.nih.gov/pubmed/35051176
http://dx.doi.org/10.1371/journal.pcbi.1009791
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