» Articles » PMID: 36852029

Investigating the Effect of Vaccinated Population on the COVID-19 Prediction Using FA and ABC-based Feed-forward Neural Networks

Overview
Journal Heliyon
Specialty Social Sciences
Date 2023 Feb 28
PMID 36852029
Authors
Affiliations
Soon will be listed here.
Abstract

Since 2019, the coronavirus outbreak has caused many catastrophic events all over the world. At the current time, the massive vaccination has been considered as the most efficient way to fight against the pandemic. This study schemes to explain and model COVID-19 cases by considering the vaccination rate. We utilized an amalgamation of neural network (NN) with two powerful optimization algorithms, i.e., firefly algorithm and artificial bee colony. For validating the models, we employed the COVID-19 datasets regarding the vaccination rate and the total confirmed cases for 51 states since the beginning of vaccination in the US. The numerical experiment indicated that by considering the vaccinated population, the accuracy of NN increases exponentially when compared with the same NN in the absence of the vaccinated population. During the next stage, the NN with vaccinated input data is elected for firefly and bee optimizing. Based upon the firefly optimizing, 93.75% of COVID-19 cases can be explained in all states. According to the bee optimizing, 92.3% of COVID-19 cases is explained since the massive vaccination. Overall, it can be concluded that the massive vaccination is the key predictor of COVID-19 cases on a grand scale.

Citing Articles

Electrical Impedance Tomography of Industrial Two-Phase Flow Based on Radial Basis Function Neural Network Optimized by the Artificial Bee Colony Algorithm.

Zhu Z, Li G, Luo M, Zhang P, Gao Z Sensors (Basel). 2023; 23(17).

PMID: 37688101 PMC: 10490594. DOI: 10.3390/s23177645.


The impact of COVID-19 vaccination on human mobility: The London case.

Bei H, Li P, Cai Z, Murcio R Heliyon. 2023; 9(8):e18769.

PMID: 37636432 PMC: 10447923. DOI: 10.1016/j.heliyon.2023.e18769.

References
1.
Roy S, Bhunia G, Shit P . Spatial prediction of COVID-19 epidemic using ARIMA techniques in India. Model Earth Syst Environ. 2020; 7(2):1385-1391. PMC: 7363688. DOI: 10.1007/s40808-020-00890-y. View

2.
Dhamodharavadhani S, Rathipriya R, Chatterjee J . COVID-19 Mortality Rate Prediction for India Using Statistical Neural Network Models. Front Public Health. 2020; 8:441. PMC: 7485390. DOI: 10.3389/fpubh.2020.00441. View

3.
Ribeiro S, Dattilo W, Barbosa D, Coura-Vital W, Chagas I, Dias C . Worldwide COVID-19 spreading explained: traveling numbers as a primary driver for the pandemic. An Acad Bras Cienc. 2020; 92(4):e20201139. DOI: 10.1590/0001-3765202020201139. View

4.
Senapati A, Nag A, Mondal A, Maji S . A novel framework for COVID-19 case prediction through piecewise regression in India. Int J Inf Technol. 2020; 13(1):41-48. PMC: 7652706. DOI: 10.1007/s41870-020-00552-3. View

5.
Mallapaty S . Can COVID vaccines stop transmission? Scientists race to find answers. Nature. 2021; . DOI: 10.1038/d41586-021-00450-z. View