2024
DOI: 10.1186/s12859-024-05972-7
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Predicting viral proteins that evade the innate immune system: a machine learning-based immunoinformatics tool

Jorge F. Beltrán,
Lisandra Herrera Belén,
Alejandro J. Yáñez
et al.

Abstract: Viral proteins that evade the host’s innate immune response play a crucial role in pathogenesis, significantly impacting viral infections and potential therapeutic strategies. Identifying these proteins through traditional methods is challenging and time-consuming due to the complexity of virus-host interactions. Leveraging advancements in computational biology, we present VirusHound-II, a novel tool that utilizes machine learning techniques to predict viral proteins evading the innate immune response with hig… Show more

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