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Immunization using a heterogeneous geo-spatial population model: A qualitative perspective on COVID-19 vaccination strategies

机译:使用异质地质空间群体的免疫:Covid-19疫苗接种策略的定性视角

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Epidemic modeling has been a key tool for understanding the impact of global viral outbreaks for over two decades. Recent developments of the COVID-19 pandemic have accelerated research using compartmental models, like SI, SIR, SEIR, with their appropriate modifications. However, there is a large body of recent research consolidated on homogeneous population mixing models, which are known to offer reduced tractability, and render conclusions hard to quantify. As such, based on our recent work, introducing the heterogeneous geo-spatial mobility population model (GPM), we adapt a modified SIR-V (susceptible-infected-recovered-vaccinated) epidemic model which embodies the idea of patient relapse from R back to S, vaccination of R and S patients (reducing their infectiousness), thus altering the infectiousness of V patients (fromλntoλr).Simulation results spanning over a period oft =2000 days (6 years, the period ? 2020-2025) compare the impact of an epidemic outbreak with variable vaccination strategies, starting after 1 year (as is the case of COVID-19). The infected proportion in the remaining 5-year period is analyzed using vaccination rates fromrv=0 (no vaccination) torv=1. Whilerv<0.4 is less effective during the earlier stages, all strategies withrv>0.4 show a similar downward convergence reducing the number of infected by more than half, compared to no vaccination. Given the complexity of epidemic processes, we conclude that higher vaccination rates yield similar results, but a minimalrv=0.4 (40% of population over five years) should be targeted.
机译:流行病模型是了解全球病毒爆发超过二十年的关键工具。 Covid-19大流行的最新进程使用Complational Models的研究加速了,如SI,SIR,SIIR,他们适当的修改。然而,在均质人口混合模型中,存在大量的最近研究,该模型已知可提供减少的途径,并且结论难以量化。因此,基于我们最近的工作,引入异质地质空间移动性群体模型(GPM),我们适应改性的SIR-V(易感染回收的疫苗接种)的疫情模型,其体现了R回来的患者复发的想法对于S,R和S患者的疫苗接种(降低它们的传染病),从而改变V患者的传染病(来自λntoλr)。刺激结果跨越= 2000天(6年,期间?2020-2025)比较影响在1年后开始的可变疫苗接种策略的流行病爆发(如Covid-19的情况)。使用来自rv = 0(无疫苗接种)Torv = 1的疫苗接种速率分析剩余的5年期间的感染比例。 Whilerv <0.4在早期的阶段效果较低,所有策略都有频率> 0.4显示出类似的下行收敛,与无疫苗接种相比,减少了超过一半的感染数量。鉴于流行过程的复杂性,我们得出结论,较高的疫苗接种率产生类似的结果,但最小值= 0.4(五年超过5岁以下的人口)。

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