1. Towards Graph Neural Network Surrogates Leveraging Mechanistic Expert Knowledge for Pandemic Response
- Author
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Schmidt, Agatha, Zunker, Henrik, Heinlein, Alexander, and Kühn, Martin J.
- Subjects
Computer Science - Machine Learning ,Quantitative Biology - Populations and Evolution ,68T07, 92B20, 92B05 - Abstract
During the COVID-19 crisis, mechanistic models have been proven fundamental to guide evidence-based decision making. However, time-critical decisions in a dynamically changing environment restrict the time available for modelers to gather supporting evidence. As infectious disease dynamics are often heterogeneous on a spatial or demographic scale, models should be resolved accordingly. In addition, with a large number of potential interventions, all scenarios can barely be computed on time, even when using supercomputing facilities. We suggest to combine complex mechanistic models with data-driven surrogate models to allow for on-the-fly model adaptations by public health experts. We build upon a spatially and demographically resolved infectious disease model and train a graph neural network for data sets representing early phases of the pandemic. The resulting networks reached an execution time of less than a second, a significant speedup compared to the metapopulation approach. The suggested approach yields potential for on-the-fly execution and, thus, integration of disease dynamics models in low-barrier website applications. For the approach to be used with decision-making, datasets with larger variance will have to be considered., Comment: 22 pages, 8 figures
- Published
- 2024