
pmid: 14644141
As torrents of new data now emerge from microbial genomics, bioinformatic prediction of immunogenic epitopes remains challenging but vital. In silico methods often produce paradoxically inconsistent results: good prediction rates on certain test sets but not others. The inherent complexity of immune presentation and recognition processes complicates epitope prediction. Two encouraging developments - data driven artificial intelligence sequence-based methods for epitope prediction and molecular modeling methods based on three-dimensional protein structures - offer hope for the future.
Models, Molecular, Antigen Presentation, Models, Immunological, Animals, Epitopes, T-Lymphocyte, Humans, Protein Binding
Models, Molecular, Antigen Presentation, Models, Immunological, Animals, Epitopes, T-Lymphocyte, Humans, Protein Binding
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