Abstract

BackgroundPrediction of B-cell epitopes from antigens is useful to understand the immune basis of antibody-antigen recognition, and is helpful in vaccine design and drug development. Tremendous efforts have been devoted to this long-studied problem, however, existing methods have at least two common limitations. One is that they only favor prediction of those epitopes with protrusive conformations, but show poor performance in dealing with planar epitopes. The other limit is that they predict all of the antigenic residues of an antigen as belonging to one single epitope even when multiple non-overlapping epitopes of an antigen exist.ResultsIn this paper, we propose to divide an antigen surface graph into subgraphs by using a Markov Clustering algorithm, and then we construct a classifier to distinguish these subgraphs as epitope or non-epitope subgraphs. This classifier is then taken to predict epitopes for a test antigen. On a big data set comprising 92 antigen-antibody PDB complexes, our method significantly outperforms the state-of-the-art epitope prediction methods, achieving 24.7% higher averaged f-score than the best existing models. In particular, our method can successfully identify those epitopes with a non-planarity which is too small to be addressed by the other models. Our method can also detect multiple epitopes whenever they exist.ConclusionsVarious protrusive and planar patches at the surface of antigens can be distinguishable by using graphical models combined with unsupervised clustering and supervised learning ideas. The difficult problem of identifying multiple epitopes from an antigen can be made easied by using our subgraph approach. The outstanding residue combinations found in the supervised learning will be useful for us to form new hypothesis in future studies.

Highlights

  • Prediction of B-cell epitopes from antigens is useful to understand the immune basis of antibodyantigen recognition, and is helpful in vaccine design and drug development

  • Experimental results on a set of 92 non-redundant antibody-antigen complexes compiled from the Protein Data Bank (PDB) [23] show that our proposed graph model improves the performance of B-cell epitope prediction significantly and, it is able to identify multiple epitopes as well as predict epitopes with various geometrical formations

  • We refer to the proposed B-Cell epiTope prediction model as BeTop

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Summary

Results

We propose to divide an antigen surface graph into subgraphs by using a Markov Clustering algorithm, and we construct a classifier to distinguish these subgraphs as epitope or non-epitope subgraphs. This classifier is taken to predict epitopes for a test antigen. On a big data set comprising 92 antigen-antibody PDB complexes, our method significantly outperforms the state-of-the-art epitope prediction methods, achieving 24.7% higher averaged f-score than the best existing models. Our method can successfully identify those epitopes with a non-planarity which is too small to be addressed by the other models. Our method can detect multiple epitopes whenever they exist

Conclusions
Background
Materials and methods
Results and discussions
Conclusion
Atassi M: Antigenic structure of myoglobin
18. Reimer U
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