Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand

Abstract Background With the challenges that dengue fever (DF) presents to healthcare systems and societies, public health officials must determine where best to allocate scarce resources and restricted budgets. Constrained optimization (CO) helps to address some of the acknowledged limitations of c...

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Main Authors: Gerhart Knerer, Christine S. M. Currie, Sally C. Brailsford
Format: Article
Language:English
Published: BMC 2021-04-01
Series:BMC Public Health
Subjects:
Online Access:https://doi.org/10.1186/s12889-021-10747-3
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spelling doaj-758151c48a694f26b7b54083b032698e2021-05-02T11:04:06ZengBMCBMC Public Health1471-24582021-04-0121111410.1186/s12889-021-10747-3Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to ThailandGerhart Knerer0Christine S. M. Currie1Sally C. Brailsford2Mathematical Sciences, University of SouthamptonMathematical Sciences, University of SouthamptonSouthampton Business School, University of SouthamptonAbstract Background With the challenges that dengue fever (DF) presents to healthcare systems and societies, public health officials must determine where best to allocate scarce resources and restricted budgets. Constrained optimization (CO) helps to address some of the acknowledged limitations of conventional health economic analyses and has typically been used to identify the optimal allocation of resources across interventions subject to a variety of constraints. Methods A dynamic transmission model was developed to predict the number of dengue cases in Thailand at steady state. A CO was then applied to identify the optimal combination of interventions (release of Wolbachia-infected mosquitoes and paediatric vaccination) within the constraints of a fixed budget, set no higher than cost estimates of the current vector control programme, to minimize the number of dengue cases and disability-adjusted life years (DALYs) lost. Epidemiological, cost, and effectiveness data were informed by national data and the research literature. The time horizon was 10 years. Scenario analyses examined different disease management and intervention costs, budget constraints, vaccine efficacy, and optimization time horizon. Results Under base-case budget constraints, the optimal coverage of the two interventions to minimize dengue incidence was predicted to be nearly equal (Wolbachia 50%; paediatric vaccination 49%) with corresponding coverages under lower bound (Wolbachia 54%; paediatric vaccination 10%) and upper bound (Wolbachia 67%; paediatric vaccination 100%) budget ceilings. Scenario analyses indicated that the most impactful situations related to the costs of Wolbachia and paediatric vaccination with decreases/ increases in costs of interventions demonstrating a direct correlation with coverage (increases/ decreases) of the respective control strategies under examination. Conclusions Determining the best investment strategy for dengue control requires the identification of the optimal mix of interventions to implement in order to maximize public health outcomes, often under fixed budget constraints. A CO model was developed with the objective of minimizing dengue cases (and DALYs lost) over a 10-year time horizon, within the constraints of the estimated budgets for vector control in the absence of vaccination and Wolbachia. The model provides a tool for developing estimates of optimal coverage of combined dengue control strategies that minimize dengue burden at the lowest budget.https://doi.org/10.1186/s12889-021-10747-3DengueVaccination WolbachiaConstrained optimization
collection DOAJ
language English
format Article
sources DOAJ
author Gerhart Knerer
Christine S. M. Currie
Sally C. Brailsford
spellingShingle Gerhart Knerer
Christine S. M. Currie
Sally C. Brailsford
Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand
BMC Public Health
Dengue
Vaccination Wolbachia
Constrained optimization
author_facet Gerhart Knerer
Christine S. M. Currie
Sally C. Brailsford
author_sort Gerhart Knerer
title Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand
title_short Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand
title_full Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand
title_fullStr Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand
title_full_unstemmed Reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to Thailand
title_sort reducing dengue fever cases at the lowest budget: a constrained optimization approach applied to thailand
publisher BMC
series BMC Public Health
issn 1471-2458
publishDate 2021-04-01
description Abstract Background With the challenges that dengue fever (DF) presents to healthcare systems and societies, public health officials must determine where best to allocate scarce resources and restricted budgets. Constrained optimization (CO) helps to address some of the acknowledged limitations of conventional health economic analyses and has typically been used to identify the optimal allocation of resources across interventions subject to a variety of constraints. Methods A dynamic transmission model was developed to predict the number of dengue cases in Thailand at steady state. A CO was then applied to identify the optimal combination of interventions (release of Wolbachia-infected mosquitoes and paediatric vaccination) within the constraints of a fixed budget, set no higher than cost estimates of the current vector control programme, to minimize the number of dengue cases and disability-adjusted life years (DALYs) lost. Epidemiological, cost, and effectiveness data were informed by national data and the research literature. The time horizon was 10 years. Scenario analyses examined different disease management and intervention costs, budget constraints, vaccine efficacy, and optimization time horizon. Results Under base-case budget constraints, the optimal coverage of the two interventions to minimize dengue incidence was predicted to be nearly equal (Wolbachia 50%; paediatric vaccination 49%) with corresponding coverages under lower bound (Wolbachia 54%; paediatric vaccination 10%) and upper bound (Wolbachia 67%; paediatric vaccination 100%) budget ceilings. Scenario analyses indicated that the most impactful situations related to the costs of Wolbachia and paediatric vaccination with decreases/ increases in costs of interventions demonstrating a direct correlation with coverage (increases/ decreases) of the respective control strategies under examination. Conclusions Determining the best investment strategy for dengue control requires the identification of the optimal mix of interventions to implement in order to maximize public health outcomes, often under fixed budget constraints. A CO model was developed with the objective of minimizing dengue cases (and DALYs lost) over a 10-year time horizon, within the constraints of the estimated budgets for vector control in the absence of vaccination and Wolbachia. The model provides a tool for developing estimates of optimal coverage of combined dengue control strategies that minimize dengue burden at the lowest budget.
topic Dengue
Vaccination Wolbachia
Constrained optimization
url https://doi.org/10.1186/s12889-021-10747-3
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