Eberhard Karls University, Center for Bioinformatics Tübingen, Division for Simulation of Biological Systems, 72076 Tübingen, Germany +49 7071 2970458 ; +49 7071 295152 ;
Expert Opin Drug Discov. 2009 Oct;4(10):1047-60. doi: 10.1517/17460440903242283. Epub 2009 Aug 28.
Epitope-based vaccines (EVs) make use of immunogenic peptides (epitopes) to trigger an immune response. Due to their manifold advantages, EVs have recently been attracting growing interest. The success of an EV is determined by the choice of epitopes used as a basis. However, the experimental discovery of candidate epitopes is expensive in terms of time and money. Furthermore, for the final choice of epitopes various immunological requirements have to be considered.
Numerous in silico approaches exist that can guide the design of EVs. In particular, computational methods for MHC binding prediction have already become standard tools in immunology. Apart from binding prediction and prediction of antigen processing, methods for epitope design and selection have been suggested. We review these in silico approaches for epitope discovery and selection along with their strengths and weaknesses. Finally, we discuss some of the obvious problems in the design of EVs.
State-of-the-art in silico approaches to MHC binding prediction yield high accuracies. However, a more thorough understanding of the underlying biological processes and significant amounts of experimental data will be required for the validation and improvement of in silico approaches to the remaining aspects of EV design.
基于表位的疫苗 (EV) 利用免疫原性肽 (表位) 来触发免疫反应。由于其多种优势,EV 最近引起了越来越多的关注。EV 的成功取决于用作基础的表位的选择。然而,候选表位的实验发现既耗时又费钱。此外,对于表位的最终选择,必须考虑各种免疫学要求。
存在许多可用于指导 EV 设计的计算方法。特别是,MHC 结合预测的计算方法已经成为免疫学的标准工具。除了结合预测和抗原加工预测外,还提出了用于表位设计和选择的方法。我们沿着它们的优缺点来回顾这些用于表位发现和选择的计算方法。最后,我们讨论了 EV 设计中的一些明显问题。
用于 MHC 结合预测的最先进的计算方法具有较高的准确性。然而,为了验证和改进 EV 设计的其余方面的计算方法,需要对潜在的生物学过程有更深入的了解,并需要大量的实验数据。