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LEAPS-MPS: Refining Inverse Methods and Advancing Hybrid Forecasting Approaches for Influenza Transmission Dynamics

NSF

open

About This Grant

Respiratory infectious diseases like influenza pose a significant global public health challenge, causing substantial morbidity, mortality, and economic costs. Environmental factors—such as temperature, humidity, and air quality—critically influence influenza transmission by affecting viral survival, host susceptibility, and human behavior. However, most existing influenza models rely solely on disease incidence data for forecasts and early warning signals. This project integrates environmental conditions into a hybrid forecasting and early warning system for influenza outbreaks, enhancing public health preparedness and response to emerging and re-emerging infectious diseases in a changing environment. The interdisciplinary nature of this work—bridging mathematics, statistics, epidemiology, environmental science, and artificial intelligence (AI)—fosters collaboration across fields, accelerating scientific progress and knowledge exchange. Additionally, the project inspires the next generation of mathematical scientists, supports workforce development in quantitative public health, and expands access to high-quality STEM education. This project develops a cutting-edge hybrid framework that combines differential equations, machine learning, and statistical techniques to forecast influenza outbreaks and detect early warning signals driven by environmental conditions. The principal investigator and her team refine inverse methods to estimate time-varying transmission rates, evaluating their robustness across model structures and revealing mechanisms behind observed transmission patterns. By incorporating environmental factors, the team enhances the accuracy of outbreak forecasts and identifies key environmental drivers of early warnings. These tools are validated using real-world influenza and environmental data from New York, California, and Tennessee. The research produces generalizable methodologies adaptable to other environmentally influenced diseases, strengthening our ability to predict complex disease dynamics. In parallel, the project prioritizes education and outreach by providing research opportunities for students, hosting an annual mathematics poster competition for middle and high schoolers, and launching a webinar series on mathematical epidemiology. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

Focus Areas

machine learningmathematicseducation

Eligibility

universitynonprofitsmall business

How to Apply

Funding Range

Up to $250K

Deadline

2027-08-31

Complexity
Medium
Start Application

One-time $749 fee · Includes AI drafting + templates + PDF export

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