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The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba

To better guide dengue prevention and control efforts, the use of routinely collected data to develop risk maps is proposed. For this purpose, dengue experts identified indicators representative of entomological, epidemiological and demographic risks, hereafter called components, by using surveillan...

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Autores principales: Baldoquín Rodríguez, Waldemar, Mirabal, Mayelin, Van der Stuyft, Patrick, Gómez Padrón, Tania, Fonseca, Viviana, Castillo, Rosa María, Monteagudo Díaz, Sonia, Baetens, Jan M., De Baets, Bernard, Toledo Romaní, Maria Eugenia, Vanlerberghe, Veerle
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10143650/
https://www.ncbi.nlm.nih.gov/pubmed/37104355
http://dx.doi.org/10.3390/tropicalmed8040230
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author Baldoquín Rodríguez, Waldemar
Mirabal, Mayelin
Van der Stuyft, Patrick
Gómez Padrón, Tania
Fonseca, Viviana
Castillo, Rosa María
Monteagudo Díaz, Sonia
Baetens, Jan M.
De Baets, Bernard
Toledo Romaní, Maria Eugenia
Vanlerberghe, Veerle
author_facet Baldoquín Rodríguez, Waldemar
Mirabal, Mayelin
Van der Stuyft, Patrick
Gómez Padrón, Tania
Fonseca, Viviana
Castillo, Rosa María
Monteagudo Díaz, Sonia
Baetens, Jan M.
De Baets, Bernard
Toledo Romaní, Maria Eugenia
Vanlerberghe, Veerle
author_sort Baldoquín Rodríguez, Waldemar
collection PubMed
description To better guide dengue prevention and control efforts, the use of routinely collected data to develop risk maps is proposed. For this purpose, dengue experts identified indicators representative of entomological, epidemiological and demographic risks, hereafter called components, by using surveillance data aggregated at the level of Consejos Populares (CPs) in two municipalities of Cuba (Santiago de Cuba and Cienfuegos) in the period of 2010–2015. Two vulnerability models (one with equally weighted components and one with data-derived weights using Principal Component Analysis), and three incidence-based risk models were built to construct risk maps. The correlation between the two vulnerability models was high (tau > 0.89). The single-component and multicomponent incidence-based models were also highly correlated (tau ≥ 0.9). However, the agreement between the vulnerability- and the incidence-based risk maps was below 0.6 in the setting with a prolonged history of dengue transmission. This may suggest that an incidence-based approach does not fully reflect the complexity of vulnerability for future transmission. The small difference between single- and multicomponent incidence maps indicates that in a setting with a narrow availability of data, simpler models can be used. Nevertheless, the generalized linear mixed multicomponent model provides information of covariate-adjusted and spatially smoothed relative risks of disease transmission, which can be important for the prospective evaluation of an intervention strategy. In conclusion, caution is needed when interpreting risk maps, as the results vary depending on the importance given to the components involved in disease transmission. The multicomponent vulnerability mapping needs to be prospectively validated based on an intervention trial targeting high-risk areas.
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spelling pubmed-101436502023-04-29 The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba Baldoquín Rodríguez, Waldemar Mirabal, Mayelin Van der Stuyft, Patrick Gómez Padrón, Tania Fonseca, Viviana Castillo, Rosa María Monteagudo Díaz, Sonia Baetens, Jan M. De Baets, Bernard Toledo Romaní, Maria Eugenia Vanlerberghe, Veerle Trop Med Infect Dis Article To better guide dengue prevention and control efforts, the use of routinely collected data to develop risk maps is proposed. For this purpose, dengue experts identified indicators representative of entomological, epidemiological and demographic risks, hereafter called components, by using surveillance data aggregated at the level of Consejos Populares (CPs) in two municipalities of Cuba (Santiago de Cuba and Cienfuegos) in the period of 2010–2015. Two vulnerability models (one with equally weighted components and one with data-derived weights using Principal Component Analysis), and three incidence-based risk models were built to construct risk maps. The correlation between the two vulnerability models was high (tau > 0.89). The single-component and multicomponent incidence-based models were also highly correlated (tau ≥ 0.9). However, the agreement between the vulnerability- and the incidence-based risk maps was below 0.6 in the setting with a prolonged history of dengue transmission. This may suggest that an incidence-based approach does not fully reflect the complexity of vulnerability for future transmission. The small difference between single- and multicomponent incidence maps indicates that in a setting with a narrow availability of data, simpler models can be used. Nevertheless, the generalized linear mixed multicomponent model provides information of covariate-adjusted and spatially smoothed relative risks of disease transmission, which can be important for the prospective evaluation of an intervention strategy. In conclusion, caution is needed when interpreting risk maps, as the results vary depending on the importance given to the components involved in disease transmission. The multicomponent vulnerability mapping needs to be prospectively validated based on an intervention trial targeting high-risk areas. MDPI 2023-04-18 /pmc/articles/PMC10143650/ /pubmed/37104355 http://dx.doi.org/10.3390/tropicalmed8040230 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Baldoquín Rodríguez, Waldemar
Mirabal, Mayelin
Van der Stuyft, Patrick
Gómez Padrón, Tania
Fonseca, Viviana
Castillo, Rosa María
Monteagudo Díaz, Sonia
Baetens, Jan M.
De Baets, Bernard
Toledo Romaní, Maria Eugenia
Vanlerberghe, Veerle
The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba
title The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba
title_full The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba
title_fullStr The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba
title_full_unstemmed The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba
title_short The Potential of Surveillance Data for Dengue Risk Mapping: An Evaluation of Different Approaches in Cuba
title_sort potential of surveillance data for dengue risk mapping: an evaluation of different approaches in cuba
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10143650/
https://www.ncbi.nlm.nih.gov/pubmed/37104355
http://dx.doi.org/10.3390/tropicalmed8040230
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