Paiva Henrique Mohallem, Afonso Rubens Junqueira Magalhães, Caldeira Fabiana Mara Scarpelli de Lima Alvarenga, Velasquez Ester de Andrade
Institute of Science and Technology (ICT), Federal University of Sao Paulo (UNIFESP), Rua Talim, 330, São José dos Campos, SP, Brazil.
Institute of Flight System Dynamics, Technical University of Munich (TUM), München, Bayern, 85748, Germany.
Appl Soft Comput. 2021 Jul;105:107289. doi: 10.1016/j.asoc.2021.107289. Epub 2021 Mar 10.
This paper proposes a methodology and a computational tool to study the COVID-19 pandemic throughout the world and to perform a trend analysis to assess its local dynamics.
Mathematical functions are employed to describe the number of cases and demises in each region and to predict their final numbers, as well as the dates of maximum daily occurrences and the local stabilization date. The model parameters are calibrated using a computational methodology for numerical optimization. Trend analyses are run, allowing to assess the effects of public policies. Easy to interpret metrics over the quality of the fitted curves are provided. Country-wise data from the European Centre for Disease Prevention and Control (ECDC) concerning the daily number of cases and demises around the world are used, as well as detailed data from Johns Hopkins University and from the Brasil.io project describing individually the occurrences in United States counties and in Brazilian states and cities, respectively. U. S. and Brazil were chosen for a more detailed analysis because they are the current focus of the pandemic.
Illustrative results for different countries, U. S. counties and Brazilian states and cities are presented and discussed.
The main contributions of this work lie in (i) a straightforward model of the curves to represent the data, which allows automation of the process without requiring interventions from experts; (ii) an innovative approach for trend analysis, whose results provide important information to support authorities in their decision-making process; and (iii) the developed computational tool, which is freely available and allows the user to quickly update the COVID-19 analyses and forecasts for any country, United States county or Brazilian state or city present in the periodic reports from the authorities.
本文提出一种方法和计算工具,用于研究全球范围内的新冠疫情,并进行趋势分析以评估其局部动态。
采用数学函数来描述每个地区的病例数和死亡数,并预测其最终数量、每日最大发病日期和局部稳定日期。使用数值优化的计算方法对模型参数进行校准。进行趋势分析,以评估公共政策的效果。提供了易于解释的关于拟合曲线质量的指标。使用了欧洲疾病预防与控制中心(ECDC)提供的关于全球每日病例数和死亡数的国家层面数据,以及约翰·霍普金斯大学和巴西项目Brasil.io分别提供的详细数据,这些数据分别单独描述了美国各县以及巴西各州和城市的疫情发生情况。选择美国和巴西进行更详细的分析,因为它们是当前疫情的焦点。
展示并讨论了不同国家、美国各县以及巴西各州和城市的说明性结果。
这项工作的主要贡献在于:(i)一种用于表示数据的曲线的简单模型,该模型无需专家干预即可实现过程自动化;(ii)一种创新的趋势分析方法,其结果为当局的决策过程提供重要信息;(iii)开发的计算工具,该工具可免费获取,允许用户快速更新当局定期报告中任何国家、美国各县或巴西各州及城市的新冠疫情分析和预测。