Over the course of the COVID-19 pandemic, Generalised Additive Models (GAMs) have been successfully employed on numerous occasions to obtain vital data-driven insights. In this paper we further substantiate the success story of GAMs, demonstrating their flexibility by focusing on three relevant pandemic-related issues. First, we examine the interdepency among infections in different age groups, concentrating on school children. In this context, we derive the setting under which parameter estimates are independent of the (unknown) case-detection ratio, which plays an important role in COVID-19 surveillance data. Second, we model the incidence of hospitalisations, for which data is only available with a temporal delay. We illustrate how correcting for this reporting delay through a nowcasting procedure can be naturally incorporated into the GAM framework as an offset term. Third, we propose a multinomial model for the weekly occupancy of intensive care units (ICU), where we distinguish between the number of COVID-19 patients, other patients and vacant beds. With these three examples, we aim to showcase the practical and "off-the-shelf" applicability of GAMs to gain new insights from real-world data.
翻译:在COVID-19大流行期间,普遍Additive模型(GAMS)多次成功地用于获得重要的数据驱动的洞察力。在本文件中,我们进一步证实了GAMS的成功故事,通过集中关注与流行病有关的三个问题展示了它们的灵活性。首先,我们审查了不同年龄组感染者的间歇性,重点是学童。在这方面,我们得出参数估计独立于(未知的)病例检测比率的设置,该比率在COVID-19监测数据中起着重要作用。第二,我们模拟住院率,而这方面的数据只能延迟提供。我们说明如何通过现在播送的程序自然地将这种报告延误的纠正纳入GAM框架,作为抵消术语。第三,我们提出了每周使用集中护理单位的多位数模型,我们在此区分COVID-19病人、其他病人和空床位病人的人数。我们用这三个例子来展示GAMS的实际和“脱位”适用性,以便从现实世界数据中获得新的洞察力。