Mathematical models in epidemiology strive to describe the dynamics and important characteristics of infectious diseases. Apart from their scientific merit, these models are often used to inform political decisions and interventional measures during an ongoing outbreak. Since high-fidelity models are often quite complex and analytically intractable, their applicability to real data depends on powerful estimation algorithms. Moreover, uncertainty quantification in such models is far from trivial, and different types of uncertainty are often confounded. With this work, we introduce a novel coupling between epidemiological models and specialized neural network architectures. This coupling results in a powerful Bayesian inference framework capable of principled uncertainty quantification and efficient amortized inference once the networks have been trained on simulations from an arbitrarily complex model. We illustrate the utility of our framework by applying it to real Covid-19 cases from entire Germany and German federal states.
翻译:流行病学的数学模型努力描述传染病的动态和重要特征。这些模型除了具有科学价值外,还常常被用于为一场持续爆发的政治决定和干预措施提供信息。由于高度忠诚模型往往相当复杂,而且分析上难以掌握,因此其对真实数据的可适用性取决于强大的估算算法。此外,这些模型中的不确定性的量化远非微不足道,而不同种类的不确定性也往往相互混淆。通过这项工作,我们引入了流行病学模型和专门神经网络结构之间的新型组合。这种组合导致一个强大的巴伊西亚推论框架,一旦这些网络接受了关于从任意复杂模型中模拟的训练,就能够有原则的不确定性量化和有效摊销推论。我们通过将这一框架应用于整个德国和德国联邦州真实的Covid-19案例来说明我们的框架的效用。