Section of Cell Biology and Biophysics, Department of Biology, School of Sciences, National and Kapodistrian University of Athens, 15701 Athens, Greece.
Int J Mol Sci. 2021 Mar 22;22(6):3210. doi: 10.3390/ijms22063210.
Linear B-cell epitope prediction research has received a steadily growing interest ever since the first method was developed in 1981. B-cell epitope identification with the help of an accurate prediction method can lead to an overall faster and cheaper vaccine design process, a crucial necessity in the COVID-19 era. Consequently, several B-cell epitope prediction methods have been developed over the past few decades, but without significant success. In this study, we review the current performance and methodology of some of the most widely used linear B-cell epitope predictors which are available via a command-line interface, namely, BcePred, BepiPred, ABCpred, COBEpro, SVMTriP, LBtope, and LBEEP. Additionally, we attempted to remedy performance issues of the individual methods by developing a consensus classifier, which combines the separate predictions of these methods into a single output, accelerating the epitope-based vaccine design. While the method comparison was performed with some necessary caveats and individual methods might perform much better for specialized datasets, we hope that this update in performance can aid researchers towards the choice of a predictor, for the development of biomedical applications such as designed vaccines, diagnostic kits, immunotherapeutics, immunodiagnostic tests, antibody production, and disease diagnosis and therapy.
自 1981 年首次开发出方法以来,线性 B 细胞表位预测研究一直受到越来越多的关注。借助准确的预测方法识别 B 细胞表位,可以使整体疫苗设计过程更快、更便宜,这在 COVID-19 时代是至关重要的。因此,在过去几十年中已经开发了几种 B 细胞表位预测方法,但没有取得显著成功。在本研究中,我们回顾了一些最广泛使用的线性 B 细胞表位预测器的当前性能和方法,这些预测器可通过命令行界面获得,即 BcePred、BepiPred、ABCpred、COBEpro、SVMTriP、LBtope 和 LBEEP。此外,我们试图通过开发共识分类器来解决个别方法的性能问题,该分类器将这些方法的单独预测组合成一个单一的输出,从而加速基于表位的疫苗设计。虽然在进行方法比较时存在一些必要的注意事项,并且个别方法可能在专门的数据集上表现更好,但我们希望这种性能的提升可以帮助研究人员选择预测器,用于开发生物医学应用,如设计疫苗、诊断试剂盒、免疫疗法、免疫诊断测试、抗体生产以及疾病诊断和治疗。