Department of Chemistry and Biochemistry, Yeshiva College, New York, NY 10033, United States.
Department of Chemistry and Biochemistry, Stern College for Women, New York, NY 10016, United States.
Bioinformatics. 2024 Oct 1;40(10). doi: 10.1093/bioinformatics/btae556.
Identifying antigen epitopes is essential in medical applications, such as immunodiagnostic reagent discovery, vaccine design, and drug development. Computational approaches can complement low-throughput, time-consuming, and costly experimental determination of epitopes. Currently available prediction methods, however, have moderate success predicting epitopes, which limits their applicability. Epitope prediction is further complicated by the fact that multiple epitopes may be located on the same antigen and complete experimental data is often unavailable.
Here, we introduce the antigen epitope prediction program ISPIPab that combines information from two feature-based methods and a docking-based method. We demonstrate that ISPIPab outperforms each of its individual classifiers as well as other state-of-the-art methods, including those designed specifically for epitope prediction. By combining the prediction algorithm with hierarchical clustering, we show that we can effectively capture epitopes that align with available experimental data while also revealing additional novel targets for future experimental investigations.
鉴定抗原表位在医学应用中至关重要,如免疫诊断试剂发现、疫苗设计和药物开发。计算方法可以补充低通量、耗时和昂贵的实验确定表位。然而,目前可用的预测方法在预测表位方面只有中等的成功,这限制了它们的适用性。表位预测还因多个表位可能位于同一抗原上以及完整的实验数据通常不可用而变得更加复杂。
在这里,我们引入了抗原表位预测程序 ISPIPab,它结合了两种基于特征的方法和一种基于对接的方法的信息。我们证明 ISPIPab 优于其每个单独的分类器以及其他最先进的方法,包括专门为表位预测设计的方法。通过将预测算法与层次聚类相结合,我们表明我们可以有效地捕获与现有实验数据一致的表位,同时还揭示了未来实验研究的其他新目标。