Sahu Sujit K, Böhning Dankmar
Southampton Statistical Sciences Research Institute, University of Southampton, Southampton, SO17 1BJ, UK.
Spat Stat. 2022 Jun;49:100519. doi: 10.1016/j.spasta.2021.100519. Epub 2021 May 12.
The overwhelming spatio-temporal nature of the spread of the ongoing Covid-19 pandemic demands urgent attention of data analysts and model developers. Modelling results obtained from analytical tool development are essential to understand the ongoing pandemic dynamics with a view to helping the public and policy makers. The pandemic has generated data on a huge number of interesting statistics such as the number of new cases, hospitalisations and deaths in many spatio-temporal resolutions for the analysts to investigate. The multivariate nature of these data sets, along with the inherent spatio-temporal dependencies, poses new challenges for modellers. This article proposes a two-stage hierarchical Bayesian model as a joint bivariate model for the number of cases and deaths observed weekly for the different local authority administrative regions in England. An adaptive model is proposed for the weekly Covid-19 death rates as part of the joint bivariate model. The adaptive model is able to detect possible step changes in death rates in neighbouring areas. The joint model is also used to evaluate the effects of several socio-economic and environmental covariates on the rates of cases and deaths. Inclusion of these covariates points to the presence of a north-south divide in both the case and death rates. Nitrogen dioxide, the only air pollution measure used in the model, is seen to be significantly positively associated with the number cases, even in the presence of the spatio-temporal random effects taking care of spatio-temporal dependencies present in the data. The proposed models provide excellent fits to the observed data and are seen to perform well for predicting the location specific number of deaths a week in advance. The structure of the models is very general and the same framework can be used for modelling other areally aggregated temporal statistics of the pandemics, e.g. the rate of hospitalisation.
当前新冠疫情传播在时空上的压倒性特征,急需数据分析师和模型开发者的关注。通过分析工具开发获得的建模结果,对于理解当前疫情动态至关重要,有助于公众和政策制定者。疫情产生了大量有趣的统计数据,如许多时空分辨率下的新增病例数、住院人数和死亡人数,供分析师研究。这些数据集的多变量性质,以及内在的时空依赖性,给建模者带来了新的挑战。本文提出了一种两阶段分层贝叶斯模型,作为英格兰不同地方当局行政区每周观察到的病例数和死亡数的联合双变量模型。作为联合双变量模型的一部分,针对每周的新冠死亡率提出了一种自适应模型。该自适应模型能够检测相邻地区死亡率可能的阶跃变化。联合模型还用于评估若干社会经济和环境协变量对病例率和死亡率的影响。纳入这些协变量表明,病例率和死亡率都存在南北差异。模型中使用的唯一空气污染指标二氧化氮,即使在考虑了数据中存在的时空依赖性的时空随机效应的情况下,也被发现与病例数显著正相关。所提出的模型对观测数据拟合良好,并且在提前一周预测特定地点的死亡人数方面表现出色。模型结构非常通用,相同的框架可用于对疫情的其他区域汇总时间统计数据进行建模,例如住院率。