Branda Francesco, Abenavoli Ludovico, Pierini Massimo, Mazzoli Sandra
Department of Computer Science, Modeling, Electronics and Systems Engineering (DIMES), University of Calabria, 87036 Rende, Italy.
Department of Health Sciences, University Magna Graecia, 88100 Catanzaro, Italy.
Diseases. 2022 Jun 30;10(3):38. doi: 10.3390/diseases10030038.
Despite the stunning speed with which highly effective and safe vaccines have been developed, the emergence of new variants of SARS-CoV-2 causes high rates of (re)infection, a major impact on health care services, and a slowdown to the socio-economic system. For COVID-19, accurate and timely forecasts are therefore essential to provide the opportunity to rapidly identify risk areas affected by the pandemic, reallocate the use of health resources, design countermeasures, and increase public awareness. This paper presents the design and implementation of an approach based on autoregressive models to reliably forecast the spread of COVID-19 in Italian regions. Starting from the database of the Italian Civil Protection Department (DPC), the experimental evaluation was performed on real-world data collected from February 2020 to March 2022, focusing on Calabria, a region of Southern Italy. This evaluation shows that the proposed approach achieves a good predictive power for out-of-sample predictions within one week (R-squared > 0.9 at 1 day, R-squared > 0.7 at 7 days), although it decreases with increasing forecasted days (R-squared > 0.5 at 14 days).
尽管高效且安全的疫苗研发速度惊人,但新型严重急性呼吸综合征冠状病毒2(SARS-CoV-2)变体的出现导致了高(再)感染率,对医疗服务产生了重大影响,并使社会经济系统放缓。因此,对于2019冠状病毒病(COVID-19)而言,准确及时的预测对于提供机会快速识别受疫情影响的风险区域、重新分配卫生资源的使用、设计应对措施以及提高公众意识至关重要。本文介绍了一种基于自回归模型的方法的设计与实施,以可靠地预测COVID-19在意大利各地区的传播情况。从意大利民防部(DPC)的数据库出发,对2020年2月至2022年3月收集的实际数据进行了实验评估,重点关注意大利南部的卡拉布里亚地区。该评估表明,所提出的方法对于一周内的样本外预测具有良好的预测能力(第1天的决定系数R²>0.9,第7天的R²>0.7),尽管随着预测天数的增加其预测能力会下降(第14天的R²>0.5)。