| Literature DB >> 32992643 |
Abdelrahman E E Eltoukhy1, Ibrahim Abdelfadeel Shaban2, Felix T S Chan3, Mohammad A M Abdel-Aal1.
Abstract
The outbreak of the 2019 novel coronavirus disease (COVID-19) has adversely affected many countries in the world. The unexpected large number of COVID-19 cases has disrupted the healthcare system in many countries and resulted in a shortage of bed spaces in the hospitals. Consequently, predicting the number of COVID-19 cases is imperative for governments to take appropriate actions. The number of COVID-19 cases can be accurately predicted by considering historical data of reported cases alongside some external factors that affect the spread of the virus. In the literature, most of the existing prediction methods focus only on the historical data and overlook most of the external factors. Hence, the number of COVID-19 cases is inaccurately predicted. Therefore, the main objective of this study is to simultaneously consider historical data and the external factors. This can be accomplished by adopting data analytics, which include developing a nonlinear autoregressive exogenous input (NARX) neural network-based algorithm. The viability and superiority of the developed algorithm are demonstrated by conducting experiments using data collected for top five affected countries in each continent. The results show an improved accuracy when compared with existing methods. Moreover, the experiments are extended to make future prediction for the number of patients afflicted with COVID-19 during the period from August 2020 until September 2020. By using such predictions, both the government and people in the affected countries can take appropriate measures to resume pre-epidemic activities.Entities:
Keywords: COVID-19; data analytics; neural network; pandemic
Mesh:
Year: 2020 PMID: 32992643 PMCID: PMC7579012 DOI: 10.3390/ijerph17197080
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Types of documents published on COVID-19 disease (from Scopus Database).
Figure 2Classifications of COVID-19 publications based on the subject area (Scopus database).
Figure 3Structure of neural network.
Top five affected countries in each continent.
| Continent | Country |
|---|---|
| Europe | Spain, Italy, UK, Russia, and France |
| North and South America | USA, Brazil, Canada, Peru, and Ecuador |
| Asia | Turkey, Iran, China, India, and Saudi Arabia |
| Africa | Egypt, South Africa, Morocco, Algeria, and Nigeria |
Results of regression analysis.
| Hypothesis | Decision | Interpretation | |
|---|---|---|---|
| Hypothesis # 1: population |
| Reject | Population is significant |
| Hypothesis # 2: median age index |
| Reject | Median age index is significant |
| Hypothesis # 3: public healthcare expenditure | 0.523 | Cannot Reject | Public healthcare expenditure is not significant |
| Hypothesis # 4: private healthcare expenditure |
| Reject | Private healthcare expenditure is significant |
| Hypothesis # 5: air quality as a CO2 trend | 0.476 | Cannot Reject | Air quality as a CO2 trend is not significant |
| Hypothesis # 6: number of arrivals in the countries/territories |
| Reject | Number of arrivals in the countries/territories is significant |
| Hypothesis # 7: education index |
| Reject | Education index is significant |
| Hypothesis # 8: seasonality as month of collecting data |
| Reject | Seasonality as month of collecting data is significant |
Levels for the NARX neural network- based algorithm.
| Parameter | Level 1 | Level 2 | Level 3 |
|---|---|---|---|
| Learning rate | 0.01 |
| 0.3 |
| Momentum | 0.1 | 0.3 |
|
| Number of neurons in the first hidden layer |
|
|
|
| Number of neurons in the second hidden layer | 0 |
|
|
it equals the number of input data, which is 224 in this study.
Figure 4Main effect plot for S/N ratio while using the NARX neural network-based algorithm.
Results of the NARX neural network-based algorithm.
| Continent | Country | NARX Neural Network-Based Algorithm | |||
|---|---|---|---|---|---|
| Root Mean Square Error (RMSE) | Spearman Correlation | Error Standard Deviation | |||
| Correlation Factor | |||||
| Europe | Spain | 300 | 0.9687 | 0.000 | 902.74 |
| Italy | 71 | 0.9725 | 0.000 | 215.38 | |
| UK | 113 | 0.9770 | 0.000 | 343.13 | |
| Russia | 150 | 0.9748 | 0.000 | 420.57 | |
| France | 189 | 0.9753 | 0.000 | 587.11 | |
| North and South America | USA | 786 | 0.9882 | 0.000 | 23,792.25 |
| Brazil | 1146 | 0.9828 | 0.000 | 3463.52 | |
| Canada | 54 | 0. 9566 | 0.000 | 163.93 | |
| Peru | 148 | 0.9716 | 0.000 | 423.08 | |
| Ecuador | 18 | 0.9712 | 0.000 | 57.03 | |
| Asia | Turkey | 78 | 0.9753 | 0.000 | 251.77 |
| Iran | 56 | 0.9784 | 0.000 | 170.81 | |
| China | 14 | 0.9319 | 0.000 | 34.36 | |
| India | 180 | 0.9946 | 0.000 | 550.63 | |
| Saudi Arabia | 56 | 0.9720 | 0.000 | 171.79 | |
| Africa | Egypt | 20 | 0.9696 | 0.000 | 61.55 |
| South Africa | 79 | 0.9847 | 0.000 | 241.57 | |
| Morocco | 28 | 0.9461 | 0.000 | 85.74 | |
| Algeria | 7 | 0.9740 | 0.000 | 22.87 | |
| Nigeria | 19 | 0.9695 | 0.000 | 57.61 | |
Comparison of the results obtained from the NARX neural network-based algorithm and traditional methods.
| Continent | Country | Improvement of NARX over Traditional Method (%) | ||
|---|---|---|---|---|
| Europe | Spain | 300 | 49,492 | 99.39 |
| Italy | 71 | 257 | 72.38 | |
| UK | 113 | 988 | 88.56 | |
| Russia | 150 | 371 | 59.59 | |
| France | 189 | 1973 | 90.42 | |
| North and South America | USA | 786 | 15,840 | 95.04 |
| Brazil | 1146 | 3891 | 70.55 | |
| Canada | 54 | 162 | 66.64 | |
| Peru | 148 | 2229 | 93.36 | |
| Ecuador | 18 | 777 | 97.68 | |
| Asia | Turkey | 78 | 336 | 76.79 |
| Iran | 56 | 152 | 63.10 | |
| China | 14 | 334 | 95.81 | |
| India | 180 | 615 | 70.73 | |
| Saudi Arabia | 56 | 140 | 60.07 | |
| Africa | Egypt | 20 | 32 | 37.07 |
| South Africa | 79 | 149 | 46.98 | |
| Morocco | 28 | 45 | 38.10 | |
| Algeria | 7 | 12 | 39.78 | |
| Nigeria | 19 | 27 | 28.76 |
Improvement (%) = [58].
Figure 5Future prediction of COVID-19 cases in European countries.
Figure 6Future prediction of COVID-19 cases in North and South American countries.
Figure 7Future prediction of COVID-19 cases in Asian countries.
Figure 8Future prediction of COVID-19 cases in African countries.