| Literature DB >> 32984242 |
S Dhamodharavadhani1, R Rathipriya1, Jyotir Moy Chatterjee2.
Abstract
The primary aim of this study is to investigate suitable Statistical Neural Network (SNN) models and their hybrid version for COVID-19 mortality prediction in Indian populations and is to estimate the future COVID-19 death cases for India. SNN models such as Probabilistic Neural Network (PNN), Radial Basis Function Neural Network (RBFNN), and Generalized Regression Neural Network (GRNN) are applied to develop the COVID-19 Mortality Rate Prediction (MRP) model for India. For this purpose, we have used two datasets as D1 and D2. The performances of these models are evaluated using Root Mean Square Error (RMSE) and "R," a correlation value between actual and predicted value. To improve prediction accuracy, the new hybrid models have been constructed by combining SNN models and the Non-linear Autoregressive Neural Network (NAR-NN). This is to predict the future error of the SNN models, which adds to the predicted value of these models for getting better MRP value. The results showed that the PNN and RBFNN-based MRP model performed better than the other models for COVID-19 datasets D2 and D1, respectively.Entities:
Keywords: Covid-19; generalized regression neural network (GRNN); mortality rate prediction (MRP); non-linear autoregressive (NAR); probabilistic neural network (PNN); radial basis function neural network (RBFNN); root mean square error (RMSE); statistical neural network (SNN)
Year: 2020 PMID: 32984242 PMCID: PMC7485390 DOI: 10.3389/fpubh.2020.00441
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Proposed methodology for COVID-19 MRP model.
Model parameters setup.
| Hidden layer (HL) | Fixed architecture | Fixed architecture | Fixed architecture |
| Number of neurons in HL | 10–15 | 10–15 | 10–15 |
| Training algorithm | Bayesian regularization | Bayesian regularization | Bayesian regularization |
| SPREAD (σ) | 0–4 | 0–4 | 0–4 |
| Performance indicator Measure | RMSE | RMSE | RMSE |
Figure 2Workflow of NAR-NN time series forecasting.
Performance metrics for datasets.
| PNN | 8.889595 | 7.898071 | 0.999978 | 0.999983 |
| GRNN | 9.713768 | 8.388667 | 0.999975 | 0.999981 |
| RBFNN | 8.528095 | 9.50462 | 0.99998 | 0.999977 |
Figure 3Comparison of RMSE values with a different model.
SPREAD value for PNN, GRNN, and RBFNN.
| PNN | 0.5 | 2 |
| GRNN | 4 | 4 |
| RBFNN | 1.5 | 1.68 |
Figure 4Predicted curve for standard SNN.
Figure 5Predicted curve for hybrid SNN.
Predicted value Ypred for D1 using standard models.
| 31-May-20 | 5,409 | 5,454 | 5,574 |
| 1-Jun-20 | 5,608 | 5,732 | 5,957 |
| 2-Jun-20 | 5,776 | 6,026 | 6,403 |
| 3-Jun-20 | 5,906 | 6,333 | 6,917 |
| 4-Jun-20 | 5,990 | 6,649 | 7,501 |
| 5-Jun-20 | 6,028 | 6,970 | 8,151 |
| 6-Jun-20 | 6,022 | 7,291 | 8,859 |
| 7-Jun-20 | 5,976 | 7,609 | 9,614 |
| 8-Jun-20 | 5,896 | 7,920 | 10,398 |
| 9-Jun-20 | 5,787 | 8,219 | 11,191 |
| 10-Jun-20 | 5,656 | 8,506 | 11,972 |
| 11-Jun-20 | 5,509 | 8,776 | 12,721 |
| 12-Jun-20 | 5,350 | 9,029 | 13,422 |
| 13-Jun-20 | 5,183 | 9,263 | 14,061 |
| 14-Jun-20 | 5,013 | 9,479 | 14,631 |
| 15-Jun-20 | 4,841 | 9,675 | 15,129 |
| 16-Jun-20 | 4,670 | 9,854 | 15,555 |
| 17-Jun-20 | 4,502 | 10,015 | 15,913 |
| 18-Jun-20 | 4,337 | 10,159 | 16,209 |
| 19-Jun-20 | 4,177 | 10,288 | 16,450 |
| 20-Jun-20 | 4,022 | 10,402 | 16,643 |
| 21-Jun-20 | 3,872 | 10,503 | 16,795 |
| 22-Jun-20 | 3,729 | 10,593 | 16,912 |
| 23-Jun-20 | 3,592 | 10,672 | 17,000 |
| 24-Jun-20 | 3,461 | 10,742 | 17,066 |
| 25-Jun-20 | 3,336 | 10,803 | 17,112 |
| 26-Jun-20 | 3,218 | 10,856 | 17,143 |
| 27-Jun-20 | 3,105 | 10,903 | 17,163 |
| 28-Jun-20 | 2,998 | 10,944 | 17,172 |
| 29-Jun-20 | 2,896 | 10,980 | 17,175 |
| 30-Jun-20 | 2,800 | 11,012 | 17,171 |
| 1-Jul-20 | 2,709 | 11,040 | 17,164 |
| 2-Jul-20 | 2,623 | 11,064 | 17,153 |
| 3-Jul-20 | 2,542 | 11,085 | 17,140 |
| 4-Jul-20 | 2,465 | 11,103 | 17,125 |
| 5-Jul-20 | 2,393 | 11,120 | 17,109 |
| 6-Jul-20 | 2,324 | 11,134 | 17,093 |
| 7-Jul-20 | 2,260 | 11,147 | 17,076 |
| 8-Jul-20 | 2,199 | 11,158 | 17,059 |
| 9-Jul-20 | 2,142 | 11,168 | 17,043 |
| 10-Jul-20 | 2,088 | 11,176 | 17,026 |
| 11-Jul-20 | 2,038 | 11,184 | 17,010 |
| 12-Jul-20 | 1,990 | 11,191 | 16,995 |
| 13-Jul-20 | 1,945 | 11,197 | 16,980 |
| 14-Jul-20 | 1,903 | 11,202 | 16,966 |
| 15-Jul-20 | 1,863 | 11,207 | 16,952 |
| 16-Jul-20 | 1,826 | 11,211 | 16,939 |
| 17-Jul-20 | 1,791 | 11,215 | 16,926 |
| 18-Jul-20 | 1,758 | 11,219 | 16,915 |
| 19-Jul-20 | 1,727 | 11,222 | 16,903 |
Predicted value Ypred for D1 using hybrid models.
| 31-May-20 | 5,404 | 5,434 | 5,574 |
| 1-Jun-20 | 5,608 | 5,731 | 6,111 |
| 2-Jun-20 | 5,781 | 6,048 | 6,403 |
| 3-Jun-20 | 5,906 | 6,333 | 6,744 |
| 4-Jun-20 | 5,993 | 6,648 | 7,500 |
| 5-Jun-20 | 6,029 | 6,970 | 8,342 |
| 6-Jun-20 | 6,025 | 7,291 | 8,861 |
| 7-Jun-20 | 5,976 | 7,609 | 9,441 |
| 8-Jun-20 | 5,898 | 7,920 | 10,396 |
| 9-Jun-20 | 5,787 | 8,220 | 11,382 |
| 10-Jun-20 | 5,658 | 8,506 | 11,975 |
| 11-Jun-20 | 5,509 | 8,777 | 12,548 |
| 12-Jun-20 | 5,351 | 9,029 | 13,419 |
| 13-Jun-20 | 5,183 | 9,264 | 14,252 |
| 14-Jun-20 | 5,014 | 9,479 | 14,634 |
| 15-Jun-20 | 4,841 | 9,676 | 14,955 |
| 16-Jun-20 | 4,671 | 9,854 | 15,552 |
| 17-Jun-20 | 4,502 | 10,015 | 16,104 |
| 18-Jun-20 | 4,338 | 10,160 | 16,212 |
| 19-Jun-20 | 4,177 | 10,288 | 16,277 |
| 20-Jun-20 | 4,022 | 10,403 | 16,640 |
| 21-Jun-20 | 3,873 | 10,504 | 16,986 |
| 22-Jun-20 | 3,730 | 10,594 | 16,915 |
| 23-Jun-20 | 3,592 | 10,673 | 16,827 |
| 24-Jun-20 | 3,462 | 10,742 | 17,063 |
| 25-Jun-20 | 3,336 | 10,804 | 17,303 |
| 26-Jun-20 | 3,218 | 10,857 | 17,146 |
| 27-Jun-20 | 3,105 | 10,904 | 16,989 |
| 28-Jun-20 | 2,998 | 10,945 | 17,170 |
| 29-Jun-20 | 2,896 | 10,981 | 17,366 |
| 30-Jun-20 | 2,800 | 11,013 | 17,174 |
| 1-Jul-20 | 2,709 | 11,040 | 16,990 |
| 2-Jul-20 | 2,623 | 11,065 | 17,150 |
| 3-Jul-20 | 2,542 | 11,086 | 17,331 |
| 4-Jul-20 | 2,465 | 11,104 | 17,128 |
| 5-Jul-20 | 2,393 | 11,121 | 16,936 |
| 6-Jul-20 | 2,325 | 11,135 | 17,090 |
| 7-Jul-20 | 2,260 | 11,148 | 17,267 |
| 8-Jul-20 | 2,200 | 11,159 | 17,062 |
| 9-Jul-20 | 2,142 | 11,169 | 16,869 |
| 10-Jul-20 | 2,089 | 11,177 | 17,024 |
| 11-Jul-20 | 2,038 | 11,185 | 17,201 |
| 12-Jul-20 | 1,990 | 11,192 | 16,998 |
| 13-Jul-20 | 1,945 | 11,198 | 16,807 |
| 14-Jul-20 | 1,903 | 11,203 | 16,963 |
| 15-Jul-20 | 1,863 | 11,208 | 17,143 |
| 16-Jul-20 | 1,826 | 11,212 | 16,942 |
| 17-Jul-20 | 1,791 | 11,216 | 16,753 |
| 18-Jul-20 | 1,758 | 11,220 | 16,912 |
| 19-Jul-20 | 1,727 | 11,223 | 17,094 |
Predicted death cases for D2.
| 200,000 | 5465.563 | 4839.117 | 6206.483 |
| 210,000 | 5469.28 | 4300.973 | 6872.048 |
| 220,000 | 5377.04 | 3797.288 | 7468.859 |
| 230,000 | 5211.424 | 3437.197 | 7938.901 |
| 240,000 | 4996.182 | 3216.437 | 8276.483 |
| 250,000 | 4751.402 | 3092.094 | 8504.179 |
| 260,000 | 4492.206 | 3025.066 | 8651.558 |
| 270,000 | 4229.201 | 2989.672 | 8744.469 |
| 280,000 | 3969.475 | 2971.118 | 8802.077 |
| 290,000 | 3717.585 | 2961.382 | 8837.423 |
| 300,000 | 3476.337 | 2956.237 | 8858.968 |
MRP for D2.
| 200,000 | 2.7 | 2.4 | 3.1 |
| 210,000 | 2.6 | 2.0 | 3.3 |
| 220,000 | 2.4 | 1.7 | 3.4 |
| 230,000 | 2.2 | 1.5 | 3.4 |
| 240,000 | 2.1 | 1.3 | 3.4 |
| 250,000 | 1.9 | 1.2 | 3.4 |
| 260,000 | 1.7 | 1.2 | 3.3 |
| 270,000 | 1.6 | 1.1 | 3.2 |
| 280,000 | 1.4 | 1.1 | 3.1 |
| 290,000 | 1.3 | 1.0 | 3.0 |
| 300,000 | 1.1 | 1.0 | 2.9 |
Figure 6Predicted curve for D1 using PNN.
Figure 7Predicted curve for D1 using GRNN.
Figure 8Predicted curve for D1 using RBFNN.
Figure 9Predicted curve for D2 using PNN.
Figure 10Predicted curve for D2 using GRNN.
Figure 11Predicted curve for D2 using RBFNN.
Figure 12Comparison of SNN models and hybrid models for D1.