论文标题
爆发:基于模型的贝叶斯推断疾病爆发动态具有可逆神经网络及其在德国的Covid-19 Pandemics的应用
OutbreakFlow: Model-based Bayesian inference of disease outbreak dynamics with invertible neural networks and its application to the COVID-19 pandemics in Germany
论文作者
论文摘要
流行病学中的数学模型是确定传染病的动态和重要特征的必不可少的工具。除了其科学优点外,这些模型通常可用于在爆发期间为政治决策和干预措施提供信息。但是,可靠地通过将复杂模型连接到真实数据来可靠地推断出正在进行的爆发的动态仍然很困难,并且需要艰苦的手动参数拟合或昂贵的优化方法,这些方法必须从划痕中重复进行给定模型的每种应用。在这项工作中,我们通过流行病学建模与专门神经网络的新型组合解决了这个问题。我们的方法需要两个计算阶段:在初始训练阶段,描述该流行病的数学模型被用作神经网络的教练,该模型获得了有关可能疾病动态的全球知识。在随后的推理阶段,受过训练的神经网络过程可观察到的实际爆发的数据,并渗透模型的参数,以便实际重现观察到的动力学并可靠地预测未来的进展。凭借其灵活的框架,我们的基于模拟的方法适用于各种流行病学模型。此外,由于我们的方法是完全贝叶斯的,因此它旨在合并有关合理参数值的所有可用的先验知识,并在这些参数上返回完整的关节后验分布。我们在德国的Covid-19-199早期爆发阶段的应用表明,我们能够获得有关重要疾病特征的可靠概率估计,例如生成时间,未发现的感染的部分,症状发作前传播的可能性以及使用非常适量的现实观察结果来报告延迟。
Mathematical models in epidemiology are an indispensable tool to determine the dynamics and important characteristics of infectious diseases. Apart from their scientific merit, these models are often used to inform political decisions and intervention measures during an ongoing outbreak. However, reliably inferring the dynamics of ongoing outbreaks by connecting complex models to real data is still hard and requires either laborious manual parameter fitting or expensive optimization methods which have to be repeated from scratch for every application of a given model. In this work, we address this problem with a novel combination of epidemiological modeling with specialized neural networks. Our approach entails two computational phases: In an initial training phase, a mathematical model describing the epidemic is used as a coach for a neural network, which acquires global knowledge about the full range of possible disease dynamics. In the subsequent inference phase, the trained neural network processes the observed data of an actual outbreak and infers the parameters of the model in order to realistically reproduce the observed dynamics and reliably predict future progression. With its flexible framework, our simulation-based approach is applicable to a variety of epidemiological models. Moreover, since our method is fully Bayesian, it is designed to incorporate all available prior knowledge about plausible parameter values and returns complete joint posterior distributions over these parameters. Application of our method to the early Covid-19 outbreak phase in Germany demonstrates that we are able to obtain reliable probabilistic estimates for important disease characteristics, such as generation time, fraction of undetected infections, likelihood of transmission before symptom onset, and reporting delays using a very moderate amount of real-world observations.