论文标题
建模新型冠状病毒(Covid-19):一种随机SEIR-HCD方法,具有实时参数估计和苏格兰预测
Modelling a novel Coronavirus (COVID-19): A stochastic SEIR-HCD approach, with real-time parameter estimation & forecasting for Scotland
论文作者
论文摘要
面对2020年SARS-COV2流行病,公共卫生官员一直在寻求模型,这些模型不仅可以预测新病例的数量,还可以预测住院水平,重症监护和死亡的水平。在本文中,我们提出了一个随机隔室模型,该模型能够实时监测和预测大流行,其中包含多个现实世界数据,报告的病例,测试强度,死亡,住院和重症监护率。模型参数是通过贝叶斯粒子过滤技术估算的。该模型成功地跟踪了苏格兰Covid-19的两波(3月至6月和2020年9月至9月11日)的关键变量(报告的病例,重症监护和死亡)。 2020年夏季的模型住院预测始终低于记录的数据,但与9月15日苏格兰健康保护标准的变化一致。大多数参数估计值在两个波浪中都是恒定的,但是在第一波的后期,感染率及其生殖数量下降,并且从2020年7月开始又增加了。死亡率最初很高,但在2020年夏季降低,然后在11月再次上升。该模型还可以用于提供短期预测。我们表明,即使在大流行的早期阶段,在3月至2020年6月的时期,这2周的可预测性也非常好。该模型在2020年9月的情况下增加了案件数量的增加,但预测在流行病的后期阶段再次有所改善。
Faced with the 2020 SARS-CoV2 epidemic, public health officials have been seeking models that could be used to predict not only the number of new cases but also the levels of hospitalisation, critical care and deaths. In this paper we present a stochastic compartmental model capable of real-time monitoring and forecasting of the pandemic incorporating multiple streams of real-world data, reported cases, testing intensity, deaths, hospitalisations and critical care occupancy. Model parameters are estimated via a Bayesian particle filtering technique. The model successfully tracks the key variables (reported cases, critical care and deaths) throughout the two waves (March-June and September-November 2020) of the COVID-19 outbreak in Scotland. The model hospitalisation predictions in Summer 2020 are consistently lower than the recorded data, but consistent with the change to the reporting criteria by the Health Protection Scotland on 15th September. Most parameter estimates were constant over the two waves, but the infection rate and consequently the reproductive number decrease in the later stages of the first wave and increase again from July 2020. The death rates are initially high but decrease over Summer 2020 before rising again in November. The model can also be used to provide short-term predictions. We show that the 2-week predictability is very good for the period from March to June 2020, even at early stages of the pandemic. The model has been slower to pick up the increase in the case numbers in September 2020 but forecasting improves again in the later stages of the epidemic.