Center for Informational Biology, University of Electronic Science and Technology of China, Sichuan, China.
Key Laboratory for Neuroinformation of Ministry of Education, Chengdu 611731, China.
Biomed Res Int. 2017;2017:5761517. doi: 10.1155/2017/5761517. Epub 2017 Dec 27.
Polystyrene surface-binding peptides (PSBPs) are useful as affinity tags to build a highly effective ELISA system. However, they are also a quite common type of target-unrelated peptides (TUPs) in the panning of phage-displayed random peptide library. As TUP, PSBP will mislead the analysis of panning results if not identified. Therefore, it is necessary to find a way to quickly and easily foretell if a peptide is likely to be a PSBP or not. In this paper, we describe PSBinder, a predictor based on SVM. To our knowledge, it is the first web server for predicting PSBP. The SVM model was built with the feature of optimized dipeptide composition and 87.02% (MCC = 0.74; AUC = 0.91) of peptides were correctly classified by fivefold cross-validation. PSBinder can be used to exclude highly possible PSBP from biopanning results or to find novel candidates for polystyrene affinity tags. Either way, it is valuable for biotechnology community.
聚苯乙烯表面结合肽(PSBPs)可用作亲和标签,构建高效的 ELISA 系统。然而,在噬菌体展示随机肽库的淘选中,它们也是一种相当常见的非目标相关肽(TUP)。作为 TUP,如果不加以识别,PSBP 会误导淘选结果的分析。因此,有必要找到一种快速、简便的方法来预测一个肽是否可能是 PSBP。在本文中,我们描述了 PSBinder,这是一种基于 SVM 的预测器。据我们所知,这是第一个用于预测 PSBP 的网络服务器。SVM 模型是基于优化的二肽组成特征构建的,通过五重交叉验证,87.02%(MCC=0.74;AUC=0.91)的肽被正确分类。PSBinder 可用于从生物淘选结果中排除高度可能的 PSBP,或寻找聚苯乙烯亲和标签的新候选物。无论哪种方式,它对生物技术界都具有重要价值。