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基于黑箱的皮尔逊相关方法的新冠病毒疾病预测

COVID-19 Prediction Using Black-Box Based Pearson Correlation Approach.

作者信息

Uzun Ozsahin Dilber, Precious Onakpojeruo Efe, Bartholomew Duwa Basil, Usman Abdullahi Garba, Isah Abba Sani, Uzun Berna

机构信息

Department of Medical Diagnostic Imaging, College of Health Science, University of Sharjah, Sharjah 27272, United Arab Emirates.

Operational Research Centre in Healthcare, Near East University, TRNC Mersin 10, Nicosia 99138, Turkey.

出版信息

Diagnostics (Basel). 2023 Mar 27;13(7):1264. doi: 10.3390/diagnostics13071264.

Abstract

The novel coronavirus (COVID-19), also known as SARS-CoV-2, is a highly contagious respiratory disease that first emerged in Wuhan, China in 2019 and has since become a global pandemic. The virus is spread through respiratory droplets produced when an infected person coughs or sneezes, and it can lead to a range of symptoms, from mild to severe. Some people may not have any symptoms at all and can still spread the virus to others. The best way to prevent the spread of COVID-19 is to practice good hygiene. It is also important to follow the guidelines set by local health authorities, such as physical distancing and quarantine measures. The World Health Organization (WHO), on the other hand, has classified this virus as a pandemic, and as a result, all nations are attempting to exert control and secure all public spaces. The current study aimed to (I) compare the weekly COVID-19 cases between Israel and Greece, (II) compare the monthly COVID-19 mortality cases between Israel and Greece, (III) evaluate and report the influence of the vaccination rate on COVID-19 mortality cases in Israel, and (IV) predict the number of COVID-19 cases in Israel. The advantage of completing these tasks is the minimization of the spread of the virus by deploying different mitigations. To attain our objective, a correlation analysis was carried out, and two distinct artificial intelligence (AI)-based models-specifically, an artificial neural network (ANN) and a classical multiple linear regression (MLR)-were developed for the prediction of COVID-19 cases in Greece and Israel by utilizing related variables as the input variables for the models. For the evaluation of the models, four evaluation metrics (determination coefficient (R2), mean square error (MSE), root mean square error (RMSE), and correlation coefficient (R)) were considered in order to determine the performance of the deployed models. From a variety of perspectives, the corresponding determination coefficient (R2) demonstrated the statistical advantages of MLR over the ANN model by following a linear pattern. The MLR predictive model was both efficient and accurate, with 98% accuracy, while ANN showed 94% accuracy in the effective prediction of COVID-19 cases.

摘要

新型冠状病毒(COVID-19),也被称为严重急性呼吸综合征冠状病毒2(SARS-CoV-2),是一种极具传染性的呼吸道疾病,于2019年在中国武汉首次出现,此后成为全球大流行疾病。该病毒通过感染者咳嗽或打喷嚏时产生的呼吸道飞沫传播,可导致一系列症状,从轻症到重症不等。有些人可能根本没有任何症状,但仍可将病毒传播给他人。预防COVID-19传播的最佳方法是保持良好的卫生习惯。遵循当地卫生当局制定的指导方针也很重要,如保持社交距离和隔离措施。另一方面,世界卫生组织(WHO)已将这种病毒列为大流行疾病,因此,所有国家都在努力进行管控并确保所有公共场所的安全。当前的研究旨在:(I)比较以色列和希腊之间每周的COVID-19病例数;(II)比较以色列和希腊之间每月的COVID-19死亡病例数;(III)评估并报告疫苗接种率对以色列COVID-19死亡病例的影响;以及(IV)预测以色列的COVID-19病例数。完成这些任务的好处是通过采取不同的缓解措施将病毒传播降至最低。为实现我们的目标,进行了相关性分析,并开发了两种基于不同人工智能(AI)的模型,具体而言,是一个人工神经网络(ANN)和一个经典多元线性回归(MLR),通过利用相关变量作为模型的输入变量来预测希腊和以色列的COVID-19病例。为评估这些模型,考虑了四个评估指标(决定系数(R2)、均方误差(MSE)、均方根误差(RMSE)和相关系数(R)),以确定所部署模型的性能。从各种角度来看,相应的决定系数(R2)通过遵循线性模式证明了MLR相对于ANN模型的统计优势。MLR预测模型既高效又准确,准确率达98%,而ANN在有效预测COVID-19病例方面的准确率为94%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/664c/10093123/6e63c9a4fa27/diagnostics-13-01264-g001.jpg

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