VirVACPRED: A Web Server for Prediction of Protective Viral Antigens

Herrera-Bravo, Jesus; Farias, Jorge G.; Contreras, Fernanda Parraguez; Herrera-Belen, Lisandra; Norambuena, Juan-Alejandro; Beltran, Jorge F.

Abstract

Viral antigens are key in the development of vaccines that prevent or eradicate infections caused by these pathogens. Bioinformatics tools are modern alternatives that facilitate the discovery of viral antigens, reducing the costs of experimental assays. We developed a bioinformatics tool called VirVACPRED, which is highly efficient in predicting viral antigens. In this study, we obtained a model based on the gradient boosting classifier, which showed high performance during the training, leave-one-out cross-validation (accuracy = 0.7402, sensitivity = 0.7319, precision = 0.7503, F1 = 0.7251, kappa = 0.4774, Matthews correlation coefficient = 0.4981) and testing (accuracy = 0.8889, sensitivity = 1.0, precision = 0.8276, F1 = 0.9057, kappa = 0.7734, Matthews correlation coefficient = 0.7941). VirVACPRED is a robust tool that can be of great help in the search and proposal of new viral antigens, which can be considered in the development of future vaccines against infections caused by viruses.

Más información

Título según WOS: VirVACPRED: A Web Server for Prediction of Protective Viral Antigens
Título de la Revista: INTERNATIONAL JOURNAL OF PEPTIDE RESEARCH AND THERAPEUTICS
Volumen: 28
Número: 1
Editorial: Springer
Fecha de publicación: 2022
DOI:

10.1007/s10989-021-10345-2

Notas: ISI