Abstract
MotivationThe conformational B-cell epitopes are the specific sites on the antigens that have immune functions. The identification of conformational B-cell epitopes is of great importance to immunologists for facilitating the design of peptide-based vaccines. As an attempt to narrow the search for experimental validation, various computational models have been developed for the epitope prediction by using antigen structures. However, the application of these models is undermined by the limited number of available antigen structures. In contrast to the most of available structure-based methods, we here attempt to accurately predict conformational B-cell epitopes from antigen sequences.MethodsIn this paper, we explore various sequence-derived features, which have been observed to be associated with the location of epitopes or ever used in the similar tasks. These features are evaluated and ranked by their discriminative performance on the benchmark datasets. From the perspective of information science, the combination of various features can usually lead to better results than the individual features. In order to build the robust model, we adopt the ensemble learning approach to incorporate various features, and develop the ensemble model to predict conformational epitopes from antigen sequences.ResultsEvaluated by the leave-one-out cross validation, the proposed method gives out the mean AUC scores of 0.687 and 0.651 on two datasets respectively compiled from the bound structures and unbound structures. When compared with publicly available servers by using the independent dataset, our method yields better or comparable performance. The results demonstrate the proposed method is useful for the sequence-based conformational epitope prediction.AvailabilityThe web server and datasets are freely available at http://bcell.whu.edu.cn.
Highlights
Antigen-antibody interaction is a critical event in the immune process, and it can elucidate the underlying mechanism of immune recognition
Evaluated by the leave-one-out cross validation, the proposed method gives out the mean area under ROC curve (AUC) scores of 0.687 and 0.651 on two datasets respectively compiled from the bound structures and unbound structures
The results demonstrate the proposed method is useful for the sequence-based conformational epitope prediction
Summary
Antigen-antibody interaction is a critical event in the immune process, and it can elucidate the underlying mechanism of immune recognition. The sites on antigens recognized and bound by B cellproduced antibodies are well known as B-cell epitopes [1]. The location of B-cell epitopes is useful for synthesizing peptides that can elicit the immune response with specific cross-reacting antibodies. For this reason, the identification of B-cell epitopes facilitates the design of the potentially safer peptide-based vaccines [2,3]. B-cell epitopes can be classified into two categories: linear (continuous) epitopes and conformational (discontinuous) epitopes [4]. Linear epitopes are formed by continuous amino acid sequences, while conformational epitopes consist of residues that are distantly separated in the sequences but spatially proximal
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