De Nicola Giacomo, Schneble Marc, Kauermann Göran, Berger Ursula
Department of Statistics, Ludwig-Maximillians-Universität München, Munich, Germany.
Institute for Medical Information Processing, Biometry and Epidemiology, Ludwig-Maximillians-Universität München, Munich, Germany.
Adv Stat Anal. 2022;106(3):407-426. doi: 10.1007/s10182-021-00433-5. Epub 2022 Jan 18.
Governments around the world continue to act to contain and mitigate the spread of COVID-19. The rapidly evolving situation compels officials and executives to continuously adapt policies and social distancing measures depending on the current state of the spread of the disease. In this context, it is crucial for policymakers to have a firm grasp on what the current state of the pandemic is, and to envision how the number of infections is going to evolve over the next days. However, as in many other situations involving compulsory registration of sensitive data, cases are reported with delay to a central register, with this delay deferring an up-to-date view of the state of things. We provide a stable tool for monitoring current infection levels as well as predicting infection numbers in the immediate future at the regional level. We accomplish this through nowcasting of cases that have not yet been reported as well as through predictions of future infections. We apply our model to German data, for which our focus lies in predicting and explain infectious behavior by district.
The online version contains supplementary material available at 10.1007/s10182-021-00433-5.
世界各国政府继续采取行动遏制和减轻新冠病毒的传播。迅速演变的形势迫使官员和管理人员根据疾病传播的当前状况不断调整政策和社交距离措施。在这种背景下,政策制定者牢牢掌握疫情的当前状况,并设想未来几天感染人数将如何演变至关重要。然而,正如在许多其他涉及敏感数据强制登记的情况一样,病例报告延迟到中央登记处,这种延迟推迟了对实际情况的最新了解。我们提供了一个稳定的工具,用于监测当前感染水平以及预测区域层面近期的感染人数。我们通过对尚未报告的病例进行即时预报以及对未来感染情况进行预测来实现这一点。我们将我们的模型应用于德国数据,我们的重点在于按地区预测和解释感染行为。
在线版本包含可在10.1007/s10182-021-00433-5获取的补充材料。