EpiGNN: Exploring Spatial Transmission with Graph Neural Network for Regional Epidemic Forecasting

Feng Xie, Zhong Zhang, Liang Li, B. Zhou, Yusong Tan
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引用次数: 10

Abstract

Epidemic forecasting is the key to effective control of epidemic transmission and helps the world mitigate the crisis that threatens public health. To better understand the transmission and evolution of epidemics, we propose EpiGNN, a graph neural network-based model for epidemic forecasting. Specifically, we design a transmission risk encoding module to characterize local and global spatial effects of regions in epidemic processes and incorporate them into the model. Meanwhile, we develop a Region-Aware Graph Learner (RAGL) that takes transmission risk, geographical dependencies, and temporal information into account to better explore spatial-temporal dependencies and makes regions aware of related regions' epidemic situations. The RAGL can also combine with external resources, such as human mobility, to further improve prediction performance. Comprehensive experiments on five real-world epidemic-related datasets (including influenza and COVID-19) demonstrate the effectiveness of our proposed method and show that EpiGNN outperforms state-of-the-art baselines by 9.48% in RMSE.
EpiGNN:基于图神经网络的区域流行病预测的空间传播研究
疫情预测是有效控制疫情传播的关键,有助于世界减轻威胁公共卫生的危机。为了更好地理解流行病的传播和演变,我们提出了一种基于图神经网络的流行病预测模型EpiGNN。具体而言,我们设计了一个传播风险编码模块,以表征流行病过程中区域的局部和全局空间效应,并将其纳入模型。同时,我们开发了一种考虑传播风险、地理依赖关系和时间信息的区域感知图学习器(RAGL),以更好地探索时空依赖关系,使区域了解相关区域的疫情情况。RAGL还可以与外部资源相结合,例如人类的流动性,以进一步提高预测性能。在五个现实世界流行病相关数据集(包括流感和COVID-19)上的综合实验证明了我们提出的方法的有效性,并表明EpiGNN在RMSE上优于最先进的基线9.48%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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