Lobato Fran Sérgio, Libotte Gustavo Barbosa, Platt Gustavo Mendes
Chemical Engineering Faculty, Federal University of Uberlândia, Uberlândia, Brazil.
National Laboratory for Scientific Computing, Petrópolis, Brazil.
Nonlinear Dyn. 2021;106(2):1359-1373. doi: 10.1007/s11071-021-06680-0. Epub 2021 Jul 7.
Recently, various countries from across the globe have been facing the second wave of COVID-19 infections. In order to understand the dynamics of the spread of the disease, much effort has been made in terms of mathematical modeling. In this scenario, compartmental models are widely used to simulate epidemics under various conditions. In general, there are uncertainties associated with the reported data, which must be considered when estimating the parameters of the model. In this work, we propose an effective methodology for estimating parameters of compartmental models in multiple wave scenarios by means of a dynamic data segmentation approach. This robust technique allows the description of the dynamics of the disease without arbitrary choices for the end of the first wave and the start of the second. Furthermore, we adopt a time-dependent function to describe the probability of transmission by contact for each wave. We also assess the uncertainties of the parameters and their influence on the simulations using a stochastic strategy. In order to obtain realistic results in terms of the basic reproduction number, a constraint is incorporated into the problem. We adopt data from Germany and Italy, two of the first countries to experience the second wave of infections. Using the proposed methodology, the end of the first wave (and also the start of the second wave) occurred on 166 and 187 days from the beginning of the epidemic, for Germany and Italy, respectively. The estimated effective reproduction number for the first wave is close to that obtained by other approaches, for both countries. The results demonstrate that the proposed methodology is able to find good estimates for all parameters. In relation to uncertainties, we show that slight variations in the design variables can give rise to significant changes in the value of the effective reproduction number. The results provide information on the characteristics of the epidemic for each country, as well as elements for decision-making in the economic and governmental spheres.
最近,全球各国都在面临新冠疫情的第二波感染。为了了解疾病传播的动态情况,在数学建模方面付出了很多努力。在这种情况下, compartmental模型被广泛用于模拟各种条件下的疫情。一般来说,报告的数据存在不确定性,在估计模型参数时必须加以考虑。在这项工作中,我们提出了一种有效的方法,通过动态数据分割方法来估计多波疫情场景下compartmental模型的参数。这种稳健的技术能够描述疾病的动态,而无需对第一波疫情的结束和第二波疫情的开始进行任意选择。此外,我们采用一个随时间变化的函数来描述每一波疫情通过接触传播的概率。我们还使用一种随机策略评估参数的不确定性及其对模拟结果的影响。为了在基本再生数方面获得现实的结果,在问题中纳入了一个约束条件。我们采用了德国和意大利的数据,这两个国家是最早经历第二波感染的国家。使用所提出的方法,对于德国和意大利,第一波疫情的结束(也就是第二波疫情的开始)分别发生在疫情开始后的166天和187天。对于这两个国家,第一波疫情估计的有效再生数与其他方法得到的结果相近。结果表明,所提出的方法能够对所有参数找到良好的估计。关于不确定性,我们表明设计变量的微小变化可能会导致有效再生数的值发生显著变化。这些结果提供了每个国家疫情特征的信息,以及经济和政府领域决策的要素。