Zhu James, Gouru Anagha, Wu Fangjiang, Berzofsky Jay A, Xie Yang, Wang Tao
Quantitative Biomedical Research Center, Department of Population and Data Sciences, University of Texas Southwestern Medical Center, Dallas, TX 75390, USA.
Vaccine Branch, Center for Cancer Research, National Cancer Institute, Bethesda, MD 20892, USA.
iScience. 2022 Jan 12;25(2):103764. doi: 10.1016/j.isci.2022.103764. eCollection 2022 Feb 18.
The ability to predict B cell epitopes is critical for biomedical research and many clinical applications. Investigators have observed the phenomenon of T-B reciprocity, in which candidate B cell epitopes with nearby CD4 T cell epitopes have higher chances of being immunogenic. To our knowledge, existing B cell epitope prediction algorithms have not considered this interesting observation. We developed a linear B cell epitope prediction model, BepiTBR, based on T-B reciprocity. We showed that explicitly including the enrichment of putative CD4 T cell epitopes (predicted HLA class II epitopes) in the model leads to significant enhancement in the prediction of linear B cell epitopes. Curiously, the positive impact on B cell epitope generation is specific to the enrichment of DQ allele binders. Overall, our work provides interesting mechanistic insights into the generation of B cell epitopes and points to a new avenue to improve B cell epitope prediction for the field.
预测B细胞表位的能力对于生物医学研究和许多临床应用至关重要。研究人员观察到了T-B相互作用现象,即具有附近CD4 T细胞表位的候选B细胞表位具有更高的免疫原性几率。据我们所知,现有的B细胞表位预测算法尚未考虑这一有趣的观察结果。我们基于T-B相互作用开发了一种线性B细胞表位预测模型BepiTBR。我们表明,在模型中明确纳入推定的CD4 T细胞表位(预测的HLA II类表位)的富集,会显著增强线性B细胞表位的预测。奇怪的是,对B细胞表位产生的积极影响特定于DQ等位基因结合物的富集。总体而言,我们的工作为B细胞表位的产生提供了有趣的机制见解,并为该领域改进B细胞表位预测指出了一条新途径。