A besyian regularisation neural network approach for hepatitis B virus spread prediction and immune system therapy model
Ahmed M. Galal,
Qusain Haider,
Ali Hassan
et al.
Abstract:The primary aim of the article is to analyze the response of the human immune system when it encounters the hepatitis B virus. This is done using a mathematical system of differential equations. The differential equation system has six components, likely representing various aspects of the immune response or virus dynamics. A Bayesian regularization neural network has been presented in the process of training. These networks are employed to find solutions for different categories or scenarios related to hepati… Show more
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