Huang Yan Xin, Bao Yong Li, Guo Shu Yan, Wang Yan, Zhou Chun Guang, Li Yu Xin
Institute of Genetics and Cytology, Northeast Normal University, Changchun, PR China.
BMC Bioinformatics. 2008 Dec 16;9:538. doi: 10.1186/1471-2105-9-538.
The prediction of conformational B-cell epitopes is one of the most important goals in immunoinformatics. The solution to this problem, even if approximate, would help in designing experiments to precisely map the residues of interaction between an antigen and an antibody. Consequently, this area of research has received considerable attention from immunologists, structural biologists and computational biologists. Phage-displayed random peptide libraries are powerful tools used to obtain mimotopes that are selected by binding to a given monoclonal antibody (mAb) in a similar way to the native epitope. These mimotopes can be considered as functional epitope mimics. Mimotope analysis based methods can predict not only linear but also conformational epitopes and this has been the focus of much research in recent years. Though some algorithms based on mimotope analysis have been proposed, the precise localization of the interaction site mimicked by the mimotopes is still a challenging task.
In this study, we propose a method for B-cell epitope prediction based on mimotope analysis called Pep-3D-Search. Given the 3D structure of an antigen and a set of mimotopes (or a motif sequence derived from the set of mimotopes), Pep-3D-Search can be used in two modes: mimotope or motif. To evaluate the performance of Pep-3D-Search to predict epitopes from a set of mimotopes, 10 epitopes defined by crystallography were compared with the predicted results from a Pep-3D-Search: the average Matthews correlation coefficient (MCC), sensitivity and precision were 0.1758, 0.3642 and 0.6948. Compared with other available prediction algorithms, Pep-3D-Search showed comparable MCC, specificity and precision, and could provide novel, rational results. To verify the capability of Pep-3D-Search to align a motif sequence to a 3D structure for predicting epitopes, 6 test cases were used. The predictive performance of Pep-3D-Search was demonstrated to be superior to that of other similar programs. Furthermore, a set of test cases with different lengths of sequences was constructed to examine Pep-3D-Search's capability in searching sequences on a 3D structure. The experimental results demonstrated the excellent search capability of Pep-3D-Search, especially when the length of the query sequence becomes longer; the iteration numbers of Pep-3D-Search to precisely localize the target paths did not obviously increase. This means that Pep-3D-Search has the potential to quickly localize the epitope regions mimicked by longer mimotopes.
Our Pep-3D-Search provides a powerful approach for localizing the surface region mimicked by the mimotopes. As a publicly available tool, Pep-3D-Search can be utilized and conveniently evaluated, and it can also be used to complement other existing tools. The data sets and open source code used to obtain the results in this paper are available on-line and as supplementary material. More detailed materials may be accessed at (http://kyc.nenu.edu.cn/Pep3DSearch/).
构象性B细胞表位的预测是免疫信息学中最重要的目标之一。即便只是近似地解决这个问题,也将有助于设计实验来精确绘制抗原与抗体之间相互作用的残基图谱。因此,这一研究领域受到了免疫学家、结构生物学家和计算生物学家的广泛关注。噬菌体展示随机肽库是一种强大的工具,用于获得模拟表位,这些模拟表位通过与给定单克隆抗体(mAb)结合而被选择,其方式类似于天然表位。这些模拟表位可被视为功能性表位模拟物。基于模拟表位分析的方法不仅可以预测线性表位,还可以预测构象性表位,这一直是近年来众多研究的焦点。尽管已经提出了一些基于模拟表位分析的算法,但模拟表位所模拟的相互作用位点的精确定位仍然是一项具有挑战性的任务。
在本研究中,我们提出了一种基于模拟表位分析的B细胞表位预测方法,称为Pep - 3D - Search。给定抗原的三维结构和一组模拟表位(或从模拟表位集合衍生的基序序列),Pep - 3D - Search可以在两种模式下使用:模拟表位模式或基序模式。为了评估Pep - 3D - Search从一组模拟表位预测表位的性能,将10个通过晶体学定义的表位与Pep - 3D - Search的预测结果进行了比较:平均马修斯相关系数(MCC)、灵敏度和精确率分别为0.1758、0.3642和0.6948。与其他可用的预测算法相比,Pep - 3D - Search显示出相当的MCC、特异性和精确率,并且能够提供新颖、合理的结果。为了验证Pep - 3D - Search将基序序列与三维结构进行比对以预测表位的能力,使用了6个测试案例。结果表明Pep - 3D - Search的预测性能优于其他类似程序。此外,构建了一组具有不同序列长度的测试案例,以检验Pep - 3D - Search在三维结构上搜索序列的能力。实验结果证明了Pep - 3D - Search具有出色的搜索能力,尤其是当查询序列长度变长时;Pep - 3D - Search精确定位目标路径的迭代次数没有明显增加。这意味着Pep - 3D - Search有潜力快速定位由更长模拟表位模拟的表位区域。
我们的Pep - 3D - Search为定位模拟表位所模拟的表面区域提供了一种强大的方法。作为一个公开可用的工具,Pep - 3D - Search可以被使用并方便地进行评估,它还可以用于补充其他现有工具。用于获得本文结果的数据集和开源代码可在线获取并作为补充材料。更详细的材料可在(http://kyc.nenu.edu.cn/Pep3DSearch/)访问。