Artificial Intelligence and Data Analytics Lab, CCIS Prince Sultan University, Riyadh, Saudi Arabia.
Department of Statistics, University of Gujrat, Gujrat, Pakistan.
Microsc Res Tech. 2021 Jul;84(7):1462-1474. doi: 10.1002/jemt.23702. Epub 2021 Feb 1.
COVID-19 has impacted the world in many ways, including loss of lives, economic downturn and social isolation. COVID-19 was emerged due to the SARS-CoV-2 that is highly infectious pandemic. Every country tried to control the COVID-19 spread by imposing different types of lockdowns. Therefore, there is an urgent need to forecast the daily confirmed infected cases and deaths in different types of lockdown to select the most appropriate lockdown strategies to control the intensity of this pandemic and reduce the burden in hospitals. Currently are imposed three types of lockdown (partial, herd, complete) in different countries. In this study, three countries from every type of lockdown were studied by applying time-series and machine learning models, named as random forests, K-nearest neighbors, SVM, decision trees (DTs), polynomial regression, Holt winter, ARIMA, and SARIMA to forecast daily confirm infected cases and deaths due to COVID-19. The models' accuracy and effectiveness were evaluated by error based on three performance criteria. Actually, a single forecasting model could not capture all data sets' trends due to the varying nature of data sets and lockdown types. Three top-ranked models were used to predict the confirmed infected cases and deaths, the outperformed models were also adopted for the out-of-sample prediction and obtained very close results to the actual values of cumulative infected cases and deaths due to COVID-19. This study has proposed the auspicious models for forecasting and the best lockdown strategy to mitigate the causalities of COVID-19.
新冠疫情以多种方式影响了世界,包括生命损失、经济衰退和社会隔离。新冠疫情是由高度传染性的大流行 SARS-CoV-2 引起的。每个国家都试图通过实施不同类型的封锁来控制新冠疫情的传播。因此,迫切需要预测不同类型封锁下的每日确诊感染病例和死亡人数,以选择最合适的封锁策略来控制这一疫情的强度,减少医院的负担。目前,不同国家实施了三种类型的封锁(局部、群体、全面)。在这项研究中,通过应用时间序列和机器学习模型(随机森林、K 最近邻、支持向量机、决策树、多项式回归、霍尔特冬季、ARIMA 和 SARIMA),对来自每种封锁类型的三个国家进行了研究,以预测因新冠疫情导致的每日确诊感染病例和死亡人数。模型的准确性和有效性通过基于三个性能标准的误差进行评估。实际上,由于数据集和封锁类型的性质不同,单个预测模型无法捕捉所有数据集的趋势。使用了三个排名最高的模型来预测确诊感染病例和死亡人数,表现出色的模型也被用于样本外预测,并获得了与新冠疫情导致的累计感染病例和死亡人数的实际值非常接近的结果。这项研究提出了用于预测的有利模型和减轻新冠疫情影响的最佳封锁策略。