多阶段疫苗接种大流行动态模拟分区模型及其在意大利 COVID-19 数据中的应用

IF 5.4 3区 材料科学 Q2 CHEMISTRY, PHYSICAL
Roy Cerqueti , Alessandro Ramponi , Sergio Scarlatti
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引用次数: 0

摘要

我们首次引入了 [1] 中讨论的 4 区 SVIR 流行病模型的一般化。我们的模型有 K+4 个分区。其中 K-1 个分区代表原始 SVIR 模型中未考虑的额外后续接种阶段,而另一个分区则代表死亡人数。我们分析了模型的平衡点。然后,我们根据意大利 COVID-19 数据集校准了 K=3 个接种区间的时变参数版本。该分析针对三个特定的子时期进行:第一个时期从 2020 年 2 月 24 日到 2020 年 12 月 26 日,在此期间没有疫苗可用;第二个时期从 2020 年 12 月 27 日到 2021 年 12 月 31 日,在此期间病毒的 Delta 变种盛行,首次向人群接种了 Delta 疫苗;最后一个时期从 2022 年 1 月 10 日到 2022 年 6 月 3 日,其特点是 Omicron 变种的扩散。为了解决未检测到感染者或未检测到康复者的问题,我们采用了一种基于不同情景的方法。该模型的校准使用了离散时间版本的特性,即该模型在参数方面是显式可解的,从而提供了相关参数的每日估计值。这就产生了 COVID-19 流行病有意义的演变模式,从而可以更好地理解该流行病随时间的扩散行为。最后,对流行病学参数估计值的统计分析支持了其时间序列的非静态性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A compartmental model for the dynamic simulation of pandemics with a multi-phase vaccination and its application to Italian COVID-19 data

We introduce a generalization of the 4 compartments SVIR epidemic model discussed in [1] for the first time. Our model has K+4 compartments. K-1 of these compartments represent additional subsequent vaccination stages not considered in the original SVIR model, while a further compartment accounts for dead people. We analyze the equilibrium points of the model. A time-varying parameters version of it, having K=3 vaccination compartments, is then calibrated to Italian COVID-19 dataset. This analysis is carried out for three specific sub-periods: the first one, ranging from February 24th, 2020, up to December 26th 2020, when no vaccines were available; the second one, from the December 27th, 2020 up to December 31st, 2021, during which the Delta variant of the virus prevailed and Delta-targeted vaccination doses were administered to the population for the first time; finally, the last considered period is ranging from January 10th, 2022 up to June 3rd, 2022, and it was characterized by the diffusion of the Omicron variant. To tackle the problem of undetected infected or undetected recovered people we adopt an approach relying on different scenarios. The calibration of the model uses the property that the discrete-time version of it turns out to be explicitly solvable with respect to the parameters, hence providing a daily estimate of the involved parameters. This produces meaningful evolution patterns of the COVID-19 epidemic which allow a better understanding of the diffusive behavior of the pandemic along time. Lastly a statistical analysis of the epidemiological parameters estimators supports the non stationarity of their time series.

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来源期刊
ACS Applied Energy Materials
ACS Applied Energy Materials Materials Science-Materials Chemistry
CiteScore
10.30
自引率
6.20%
发文量
1368
期刊介绍: ACS Applied Energy Materials is an interdisciplinary journal publishing original research covering all aspects of materials, engineering, chemistry, physics and biology relevant to energy conversion and storage. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important energy applications.
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