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首页> 外文期刊>ACM Transactions on Spatial Algorithms and Systems >TDEFSI: Theory-guided Deep Learning-based Epidemic Forecasting with Synthetic Information
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TDEFSI: Theory-guided Deep Learning-based Epidemic Forecasting with Synthetic Information

机译:TDEFSI:理论引导的基于深度学习的合成信息的流行病预测

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Influenza-like illness (ELI) places a heavy social and economic burden on our society. Traditionally, ILI surveillance data are updated weekly and provided at a spatially coarse resolution. Producing timely and reliable high-resolution spatiotemporal forecasts for ILI is crucial for local preparedness and optimal interventions. We present Theory-guided Deep Learning-based Epidemic Forecasting with Synthetic information (TDEFSI),1 an epidemic forecasting framework that integrates the strengths of deep neural networks and high-resolution simulations of epidemic processes over networks. TDEFSI yields accurate high-resolution spatiotemporal forecasts using low-resolution time-series data. During the training phase, TDEFSI uses high-resolution simulations of epidemics that explicitly model spatial and social heterogeneity inherent in urban regions as one component of training data. We train a two-branch recurrent neural network model to take both within-season and between-season low-resolution observations as features and output high-resolution detailed forecasts. The resulting forecasts are not just driven by observed data but also capture the intricate social, demographic, and geographic attributes of specific urban regions and mathematical theories of disease propagation over networks. We focus on forecasting the incidence of ILI and evaluate TDEFSI's performance using synthetic and real-world testing datasets at the state and county levels in the USA. The results show that, at the state level, our method achieves comparable/better performance than several state-of-the-art methods. At the county level, TDEFSI outperforms the other methods. The proposed method can be applied to other infectious diseases as well.
机译:流感样疾病(Eli)对社会造成了沉重的社会和经济负担。传统上,ILI监控数据每周更新,并以空间粗略分辨率提供。为伊利生产及时可靠的高分辨率时空预测对局部准备和最佳干预措施至关重要。我们展示了与综合信息(TDEFSI)的理论引导的深度学习流行病预测,1个流行性预测框架,整合了网络的深度神经网络和高分辨率模拟的网络。 TDEFSI使用低分辨率时间序列数据产生精确的高分辨率时空预测。在培训阶段,TDEFSI使用高分辨率模拟的流行病,明确地模拟城市地区固有的空间和社会异质性作为培训数据的一个组成部分。我们训练双分支经常性神经网络模型,以便在季节内和季节之间的低分辨率观测,作为特征和输出高分辨率详细预测。由此产生的预测不仅是由观察到的数据驱动,而且还捕获了特定城市地区的复杂社会,人口和地理属性以及网络传播的数学理论。我们专注于预测ILI的发病率,并在美国国家和县级水平使用综合性和现实世界测试数据集进行TDEFSI的绩效。结果表明,在州等级,我们的方法比几种最先进的方法实现了相当/更好的性能。在县级,TDEFSI优于其他方法。该方法也可以应用于其他传染病。

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