COVID-19 病例和死亡的中期流行预测:应用于英国的双变量模型。

Q3 Immunology and Microbiology
Interdisciplinary Perspectives on Infectious Diseases Pub Date : 2021-02-12 eCollection Date: 2021-01-01 DOI:10.1155/2021/8847116
Peter Congdon
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引用次数: 0

摘要

背景:随着 COVID-19 流行病的发展,我们一直在努力提供有关新病例和死亡病例的可比国际数据。有关 COVID-19 基本流行病学参数的证据也在不断积累。因此,疫情模型有可能利用这些信息提供疫情轨迹的中期预测。封锁或封锁放松的效果也可以通过模拟后期流行阶段来评估,可能使用多阶段流行病模型:分析流行病轨迹或进行预测的常用方法包括现象学增长模型(如理查兹密度系列)和易感-感染-恢复(SIR)分区模型的变体。在此,我们重点介绍一种实用的预测方法,该方法适用于英国 COVID 的中期数据,使用双变量雷诺模型(病例和死亡病例),并基于贝叶斯推理进行实施。我们展示了信息先验在开发和估计模型中的实用性,并比较了新病例和死亡病例过度分散数据的误差密度(泊松-伽马、泊松-对数正态和泊松-log-学生)。我们使用交叉验证来评估中期预测。我们还考虑了封锁后的长期疫情概况,使用两阶段模型评估疫情遏制情况:对中期疫情数据的拟合显示,泊松-log-Student 模型与训练数据的拟合度更高,交叉验证性能更好。对封锁放松后的长期疫情数据进行估计,其特点是病例数长期缓慢下降,然后又回升,这使人们对有效遏制疫情产生怀疑:现象学模型的许多应用都是针对完全流行病的。然而,仅仅根据与观察到的数据的拟合程度来评估这些模型可能只能得出部分结果,根据实际趋势进行交叉验证也很有价值。同样,对发病率而不是累积数据进行建模可能更好,但这也提出了对经常不稳定的波动进行建模的合适误差密度问题。因此,对其他误差假设进行评估可能是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mid-Epidemic Forecasts of COVID-19 Cases and Deaths: A Bivariate Model Applied to the UK.

Mid-Epidemic Forecasts of COVID-19 Cases and Deaths: A Bivariate Model Applied to the UK.

Mid-Epidemic Forecasts of COVID-19 Cases and Deaths: A Bivariate Model Applied to the UK.

Mid-Epidemic Forecasts of COVID-19 Cases and Deaths: A Bivariate Model Applied to the UK.

Background: The evolution of the COVID-19 epidemic has been accompanied by efforts to provide comparable international data on new cases and deaths. There is also accumulating evidence on the epidemiological parameters underlying COVID-19. Hence, there is potential for epidemic models providing mid-term forecasts of the epidemic trajectory using such information. The effectiveness of lockdown or lockdown relaxation can also be assessed by modelling later epidemic stages, possibly using a multiphase epidemic model.

Methods: Commonly applied methods to analyse epidemic trajectories or make forecasts include phenomenological growth models (e.g., the Richards family of densities) and variants of the susceptible-infected-recovered (SIR) compartment model. Here, we focus on a practical forecasting approach, applied to interim UK COVID data, using a bivariate Reynolds model (for cases and deaths), with implementation based on Bayesian inference. We show the utility of informative priors in developing and estimating the model and compare error densities (Poisson-gamma, Poisson-lognormal, and Poisson-log-Student) for overdispersed data on new cases and deaths. We use cross validation to assess medium-term forecasts. We also consider the longer-term postlockdown epidemic profile to assess epidemic containment, using a two-phase model.

Results: Fit to interim mid-epidemic data show better fit to training data and better cross-validation performance for a Poisson-log-Student model. Estimation of longer-term epidemic data after lockdown relaxation, characterised by protracted slow downturn and then upturn in cases, casts doubt on effective containment.

Conclusions: Many applications of phenomenological models have been to complete epidemics. However, evaluation of such models based simply on their fit to observed data may give only a partial picture, and cross validation against actual trends is also valuable. Similarly, it may be preferable to model incidence rather than cumulative data, although this raises questions about suitable error densities for modelling often erratic fluctuations. Hence, there may be utility in evaluating alternative error assumptions.

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