Obtaining up to date information on the number of UK COVID-19 regional infections is hampered by the reporting lag in positive test results for people with COVID-19 symptoms. In the UK, for "Pillar 2" swab tests for those showing symptoms, it can take up to five days for results to be collated. We make use of the stability of the under reporting process over time to motivate a statistical temporal model that infers the final total count given the partial count information as it arrives. We adopt a Bayesian approach that provides for subjective priors on parameters and a hierarchical structure for an underlying latent intensity process for the infection counts. This results in a smoothed time-series representation now-casting the expected number of daily counts of positive tests with uncertainty bands that can be used to aid decision making. Inference is performed using sequential Monte Carlo.
翻译:获得关于联合王国COVID-19区域感染人数的最新信息,由于对COVID-19症状患者的正测试结果报告滞后而受阻;在联合王国,对显示症状的人进行“Pillar 2” spwab 测试,可能需要5天时间才能对结果进行整理;我们利用报告程序的长期稳定性来激励一个统计时间模型,根据部分计数信息推算最终计数;我们采用巴伊西亚方法,为感染计数的潜在强度过程的参数和等级结构提供主观的先验;这导致平稳的时间序列代表现在预测每天的肯定测试数量,用不确定性段来帮助决策;推论是使用连续的蒙特卡洛进行的。