Dagpunar John, Wu Chenchen
School of Mathematical Sciences, University of Southampton, Southampton, UK.
Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing, People's Republic of China.
R Soc Open Sci. 2023 May 10;10(5):221277. doi: 10.1098/rsos.221277. eCollection 2023 May.
For an infectious disease such as COVID-19, we present a new four-stage vaccination model (unvaccinated, dose 1 + 2, booster, repeated boosters), which examines the impact of vaccination coverage, vaccination rate, generation interval, control reproduction number, vaccine efficacies and rates of waning immunity upon the dynamics of infection. We derive a single equation that allows computation of equilibrium prevalence and incidence of infection, given knowledge about these parameters and variable values. Based upon a 20-compartment model, we develop a numerical simulation of the associated differential equations. The model is not a forecasting or even predictive one, given the uncertainty about several biological parameter values. Rather, it is intended to aid a qualitative understanding of how equilibrium levels of infection may be impacted upon, by the parameters of the system. We examine one-at-a-time sensitivity analysis around a base case scenario. The key finding which should be of interest to policymakers is that while factors such as improved vaccine efficacy, increased vaccination rates, lower waning rates and more stringent non-pharmaceutical interventions might be thought to improve equilibrium levels of infection, this might only be done to good effect if vaccination coverage on a recurrent basis is sufficiently high.
对于像新冠肺炎这样的传染病,我们提出了一种新的四阶段疫苗接种模型(未接种、第1剂+第2剂、加强剂、重复加强剂),该模型研究了疫苗接种覆盖率、接种率、代间隔、控制繁殖数、疫苗效力和免疫衰退率对感染动态的影响。给定这些参数和变量值的相关知识,我们推导出一个单一方程,用于计算感染的平衡患病率和发病率。基于一个20隔室模型,我们对相关微分方程进行了数值模拟。鉴于几个生物学参数值的不确定性,该模型不是一个预测性甚至前瞻性的模型。相反,它旨在帮助定性理解系统参数如何影响感染的平衡水平。我们围绕一个基础案例进行了一次一个因素的敏感性分析。政策制定者应该感兴趣的关键发现是,虽然提高疫苗效力、提高接种率、降低衰退率和采取更严格的非药物干预等因素可能被认为会改善感染的平衡水平,但只有在反复接种的覆盖率足够高的情况下,才能取得良好效果。