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A Bayesian Monte Carlo approach for predicting the spread of infectious diseases

机译:一种预测传染病传播的贝叶斯蒙特卡罗方法

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In this paper, a simple yet interpretable, probabilistic model is proposed for the prediction of reported case counts of infectious diseases. A spatio-temporal kernel is derived from training data to capture the typical interaction effects of reported infections across time and space, which provides insight into the dynamics of the spread of infectious diseases. Testing the model on a one-week-ahead prediction task for campylobacteriosis and rotavirus infections across Germany, as well as Lyme borreliosis across the federal state of Bavaria, shows that the proposed model performs on-par with the state-of-the-art hhh4 model. However, it provides a full posterior distribution over parameters in addition to model predictions, which aides in the assessment of the model. The employed Bayesian Monte Carlo regression framework is easily extensible and allows for incorporating prior domain knowledge, which makes it suitable for use on limited, yet complex datasets as often encountered in epidemiology.
机译:本文提出了一种简单但可解释的概率模型,用于预测报告的传染病案例。时空内核来自训练数据,以捕获报告的感染跨时空和空间的典型相互作用,这提供了对传染病传播的动态的洞察力。在德国弯曲的预测任务中测试一周前一周的预测任务,以及在巴伐利亚州联邦联邦州的莱姆·孕雷氏症,表明拟议的模式与最先进的HHH4模型。然而,除了模型预测之外,它还提供了完整的后部分布,除了模型预测,还在模型的评估中的助行。聘用的贝叶斯蒙特卡罗回归框架很容易可扩展,并允许结合现有域知识,这使其适用于流行病学中经常遇到的有限但复杂的数据集。

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