Epidemiology-informed Graph Neural Network for Heterogeneity-aware Epidemic Forecasting
Yufan Zheng, Wei Jiang, Tong Chen, Alexander Zhou, Nguyen Quoc Viet Hung, Choujun Zhan, Hongzhi Yin

TL;DR
This paper introduces HeatGNN, a graph neural network that incorporates epidemiological mechanisms to better capture heterogeneity across locations, significantly improving epidemic forecasting accuracy.
Contribution
The paper presents HeatGNN, a novel GNN framework that integrates epidemiological models to learn location-specific transmission mechanisms for more accurate epidemic predictions.
Findings
HeatGNN outperforms existing baselines on three benchmark datasets.
The model effectively captures heterogeneity in transmission mechanisms.
Efficiency analysis shows HeatGNN's practicality for real-world datasets.
Abstract
Among various spatio-temporal prediction tasks, epidemic forecasting plays a critical role in public health management. Recent studies have demonstrated the strong potential of spatio-temporal graph neural networks (STGNNs) in extracting heterogeneous spatio-temporal patterns for epidemic forecasting. However, most of these methods bear an over-simplified assumption that two locations (e.g., cities) with similar observed features in previous time steps will develop similar infection numbers in the future. In fact, for any epidemic disease, there exists strong heterogeneity of its intrinsic evolution mechanisms across geolocation and time, which can eventually lead to diverged infection numbers in two ``similar'' locations. However, such mechanistic heterogeneity is non-trivial to be captured due to the existence of numerous influencing factors like medical resource accessibility, virus…
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Taxonomy
TopicsMachine Learning in Healthcare · Artificial Intelligence in Healthcare
MethodsGraph Neural Network
