Graduate Program in Urban Management (PPGTU), Pontifical Catholic University of Paraná (PUCPR), Curitiba, Brazil.
Department of Computer Science, Pontifical Catholic University of Paraná (PUCPR), Curitiba, Brazil.
Sci Rep. 2021 Dec 29;11(1):24491. doi: 10.1038/s41598-021-04029-6.
There is an ongoing need for scientific analysis to help governments and public health authorities make decisions regarding the COVID-19 pandemic. This article presents a methodology based on data mining that can offer support for coping with epidemic diseases. The methodological approach was applied in São Paulo, Rio de Janeiro and Manaus, the cities in Brazil with the most COVID-19 deaths until the first half of 2021. We aimed to predict the evolution of COVID-19 in metropolises and identify air quality and meteorological variables correlated with confirmed cases and deaths. The statistical analyses indicated the most important explanatory environmental variables, while the cluster analyses showed the potential best input variables for the forecasting models. The forecast models were built by two different algorithms and their results have been compared. The relationship between epidemiological and environmental variables was particular to each of the three cities studied. Low solar radiation periods predicted in Manaus can guide managers to likely increase deaths due to COVID-19. In São Paulo, an increase in the mortality rate can be indicated by drought periods. The developed models can predict new cases and deaths by COVID-19 in studied cities. Furthermore, the methodological approach can be applied in other cities and for other epidemic diseases.
科学分析对于帮助政府和公共卫生当局就 COVID-19 大流行做出决策一直很有必要。本文提出了一种基于数据挖掘的方法,可为应对传染病提供支持。该方法应用于巴西拥有 COVID-19 死亡人数最多的城市圣保罗、里约热内卢和玛瑙斯,直至 2021 年上半年。我们旨在预测大都市中 COVID-19 的演变,并确定与确诊病例和死亡相关的空气质量和气象变量。统计分析指出了最重要的解释性环境变量,而聚类分析则显示了预测模型的潜在最佳输入变量。通过两种不同的算法构建了预测模型,并对其结果进行了比较。流行病学和环境变量之间的关系在三个研究城市中的每一个都具有特殊性。马瑙斯预测的低太阳辐射期可能会导致管理人员预计 COVID-19 死亡人数增加。在圣保罗,干旱期可能预示着死亡率的增加。所开发的模型可以预测研究城市中 COVID-19 的新病例和死亡人数。此外,该方法还可以应用于其他城市和其他传染病。