Alyami Lamia, Das Saptarshi, Townley Stuart
Centre for Environmental Mathematics, Faculty of Environment, Science and Economy, University of Exeter, Penryn Campus, Penryn, United Kingdom.
Department of Mathematics, College of Science, Najran University, Najran, Saudi Arabia.
PLOS Glob Public Health. 2024 Jul 25;4(7):e0003467. doi: 10.1371/journal.pgph.0003467. eCollection 2024.
Quantifying the uncertainty in data-driven mechanistic models is fundamental in public health applications. COVID-19 is a complex disease that had a significant impact on global health and economies. Several mathematical models were used to understand the complexity of the transmission dynamics under different hypotheses to support the decision-making for disease management. This paper highlights various scenarios of a 6D epidemiological model known as SEIQRD (Susceptible-Exposed-Infected-Quarantined-Recovered-Deceased) to evaluate its effectiveness in prediction and state estimation during the spread of COVID-19 pandemic. Then we investigate the suitability of the classical 4D epidemiological model known as SIRD (Susceptible-Infected-Recovered-Deceased) in the long-term behaviour in order to make a comparison between these models. The primary aim of this paper is to establish a foundational basis for the validity and epidemiological model comparisons in long-term behaviour which may help identify the degree of model complexity that is required based on two approaches viz. the Bayesian inference employing the nested sampling algorithm and recursive state estimation utilizing the Extended Kalman Filter (EKF). Our approach acknowledges the potential imperfections and uncertainties inherent in compartmental epidemiological models. By integrating our proposed methodology, these models can consistently generate predictions closely aligned with the observed data on active cases and deaths. This framework, implemented within the EKF algorithm, offers a robust tool for addressing future, unknown pandemics. Moreover, we present a systematic methodology for time-varying parameter estimation along with uncertainty quantification using Saudi Arabia COVID-19 data and obtain the credible confidence intervals of the epidemiological nonlinear dynamical system model parameters.
量化数据驱动的机制模型中的不确定性在公共卫生应用中至关重要。新冠疫情是一种复杂疾病,对全球健康和经济产生了重大影响。人们使用了几种数学模型来理解不同假设下传播动态的复杂性,以支持疾病管理的决策。本文重点介绍了一种名为SEIQRD(易感-暴露-感染-隔离-康复-死亡)的6维流行病学模型的各种情景,以评估其在新冠疫情传播期间预测和状态估计方面的有效性。然后,我们研究了名为SIRD(易感-感染-康复-死亡)的经典4维流行病学模型在长期行为中的适用性,以便对这些模型进行比较。本文的主要目的是为长期行为中的有效性和流行病学模型比较建立一个基础,这可能有助于根据两种方法确定所需的模型复杂程度,即采用嵌套采样算法的贝叶斯推理和利用扩展卡尔曼滤波器(EKF)的递归状态估计。我们的方法承认 compartmental 流行病学模型中固有的潜在缺陷和不确定性。通过整合我们提出的方法,这些模型可以持续生成与活跃病例和死亡的观测数据紧密匹配的预测。在EKF算法中实现的这个框架为应对未来未知的疫情提供了一个强大的工具。此外,我们提出了一种用于时变参数估计以及使用沙特阿拉伯新冠疫情数据进行不确定性量化的系统方法,并获得了流行病学非线性动力系统模型参数的可信置信区间。