Leveraging mathematical models of disease dynamics and machine learning to improve development of novel malaria interventions

ConclusionsOur approach uses disease dynamic models and machine learning to support decision-making and resource investment, facilitating development of new malaria interventions. By evaluating the intervention capabilities in relation to the targeted health goal, our analysis allows prioritization of interventions and of their specifications from an early stage in development, and subsequent investments to be channeled cost-effectively towards impact maximization. This study highlights the role of mathematical models to support intervention development. Although we focus on five malaria interventions, the analysis is generalizable to other new malaria interventions.Graphical abstract
Source: Infectious Diseases of Poverty - Category: Infectious Diseases Source Type: research