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Modeling, Estimation, and Analysis of COVID-19 Secondary Waves: the Case of the Italian Country

机译:Covid-19二次波的建模,估计和分析:意大利国家的案例

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The recent trends of the COVID-19 research have been devoted to disease transmission modeling, with the aim of investigating the effects of different mitigation strategies mainly through scenario-based simulations. In this context we propose a novel non-linear time-varying model that effectively supports policy-makers in predicting and analyzing the dynamics of COVID-19 secondary waves. Specifically, this paper proposes an accurate SIRUCQTHE epidemiological model to get reliable predictions on the pandemic dynamics. Differently from the related literature, in the fitting phase, we make use of the google mobility reports to identify and predict the evolution of the infection rate. The effectiveness of the presented method is tested on the network of Italian regions. First, we describe the Italian epidemiological scenario in the COVID-19 second wave of contagions, showing the raw data available for the Italian scenario and discussing the main assumptions on the system parameters. Then, we present the different steps of the procedure used for the dynamical fitting of the SIRUCQTHE model. Finally, we compare the estimation results with the real data on the COVID-19 secondary waves in Italy. Provided the availability of reliable data to calibrate the model in heterogeneous scenarios, the proposed approach can be easily extended to cope with other scenarios.
机译:最近的Covid-19研究趋势已经致力于疾病传输建模,目的是通过基于场景的模拟来研究不同缓解策略的影响。在这种情况下,我们提出了一种新颖的非线性时变模型,有效地支持政策制定者预测和分析Covid-19二次波的动态。具体而言,本文提出了一种精确的SIRUCQ流行病学模型,以获得对大流行动态的可靠预测。与相关文献不同,在拟合阶段,我们利用谷歌流动性报告来识别和预测感染率的演变。对意大利地区网络进行了测试的效果。首先,我们描述了Covid-19第二次传染病中的意大利流行病情景,显示了意大利情景的原始数据,并讨论了系统参数的主要假设。然后,我们介绍了用于Sirucq模型的动态拟合的过程的不同步骤。最后,我们将估计结果与意大利Covid-19二次波的真实数据进行比较。提供了可靠数据来校准异构情景中的模型,所以可以轻松扩展到应对其他场景的建议方法。

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