Deep-Data-Driven Neural Networks for COVID-19 Vaccine Efficacy

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Abstract

Vaccination strategies to lessen the impact of the spread of a disease are fundamental to public health authorities and policy makers. The socio-economic benefit of full return to normalcy is the core of such strategies. In this paper, a COVID-19 vaccination model with efficacy rate is developed and analyzed. The epidemiological parameters of the model are learned via a feed-forward neural network. A hybrid approach that combines residual neural network with variants of recurrent neural network is implemented and analyzed for reliable and accurate prediction of daily cases. The error metrics and a k-fold cross validation with random splitting reveal that a particular type of hybrid approach called residual neural network with gated recurrent unit is the best hybrid neural network architecture. The data-driven simulations confirm the fact that the vaccination rate with higher efficacy lowers the infectiousness and basic reproduction number. As a study case, COVID-19 data for the state of Tennessee in USA is used.

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Torku, T. K., Khaliq, A. Q. M., & Furati, K. M. (2021). Deep-Data-Driven Neural Networks for COVID-19 Vaccine Efficacy. Epidemiologia, 2(4), 564–586. https://doi.org/10.3390/epidemiologia2040039

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