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首页> 外文期刊>BMC Genomics >Conformational epitope matching and prediction based on protein surface spiral features
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Conformational epitope matching and prediction based on protein surface spiral features

机译:基于蛋白质表面螺旋特征的构象表位匹配与预测

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摘要

A conformational epitope (CE) is composed of neighboring amino acid residues located on an antigenic protein surface structure. CEs bind their complementary paratopes in B-cell receptors and/or antibodies. An effective and efficient prediction tool for CE analysis is critical for the development of immunology-related applications, such as vaccine design and disease diagnosis. We propose a novel method consisting of two sequential modules: matching and prediction. The matching module includes two main approaches. The first approach is a complete sequence search (CSS) that applies BLAST to align the sequence with all known antigen sequences. Fragments with high epitope sequence identities are identified and the predicted residues are annotated on the query structure. The second approach is a spiral vector search (SVS) that adopts a novel surface spiral feature vector for large-scale surface patch detection when queried against a comprehensive epitope database. The prediction module also contains two proposed subsystems. The first system is based on knowledge-based energy and geometrical neighboring residue contents, and the second system adopts combinatorial features, including amino acid contents and physicochemical characteristics, to formulate corresponding geometric spiral vectors and compare them with all spiral vectors from known CEs. An integrated testing dataset was generated for method evaluation, and our two searching methods effectively identified all epitope regions. The prediction results show that our proposed method outperforms previously published systems in terms of sensitivity, specificity, positive predictive value, and accuracy. The proposed method significantly improves the performance of traditional epitope prediction. Matching followed by prediction is an efficient and effective approach compared to predicting directly on specific surfaces containing antigenic characteristics.
机译:构象表位(Ce)由位于抗原蛋白表面结构上的相邻氨基酸残基组成。 CES在B细胞受体和/或抗体中结合它们的互补估算。用于CE分析的有效和有效的预测工具对于开发免疫学相关的应用,例如疫苗设计和疾病诊断至关重要。我们提出了一种由两个连续模块组成的新方法:匹配和预测。匹配模块包括两个主要方法。第一种方法是一个完整的序列搜索(CSS),其适用于所有已知的抗原序列对准序列。识别具有高表位序列标识的片段,并且预测的残留物在查询结构上注释。第二种方法是一种螺旋向量搜索(SVS),其采用新的表面螺旋特征向量,用于在针对全面的表位数据库查询时进行大规模的表面贴片检测。预测模块还包含两个提出的子系统。第一系统基于基于知识的能量和几何相邻的残留物内容,第二系统采用组合特征,包括氨基酸内容物和物理化学特性,以配制相应的几何螺旋向量,并将它们与来自已知CE的所有螺旋矢量进行比较。生成用于方法评估的集成测试数据集,我们的两种搜索方法有效地识别了所有表位区域。预测结果表明,我们所提出的方法在敏感度,特异性,阳性预测值和准确性方面优于先前公布的系统。该方法显着提高了传统表位预测的性能。与预测直接预测含有抗原特征的特定表面相比,预测之后的匹配是一种有效且有效的方法。

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