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A novel computer algorithm improves antibody epitope prediction using affinity-selected mimotopes: A case study using monoclonal antibodies against the West Nile virus E protein

机译:一种新颖的计算机算法使用亲和力选择的拟表位改善抗体表位的预测:使用针对西尼罗河病毒E蛋白的单克隆抗体的案例研究

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摘要

Understanding antibody function is often enhanced by knowledge of the specific binding epitope. Here, we describe a computer algorithm that permits epitope prediction based on a collection of random peptide epitopes (mimotopes) isolated by antibody affinity purification. We applied this methodology to the prediction of epitopes for five monoclonal antibodies against the West Nile virus (WNV) E protein, two of which exhibit therapeutic activity in vivo. This strategy was validated by comparison of our results with existing F(ab)-E protein crystal structures and mutational analysis by yeast surface display. We demonstrate that by combining the results of the mimotope method with our data from mutational analysis, epitopes could be predicted with greater certainty. The two methods displayed great complementarity as the mutational analysis facilitated epitope prediction when the results with the mimotope method were equivocal and the mimotope method revealed a broader number of residues within the epitope than the mutational analysis. Our results demonstrate that the combination of these two prediction strategies provides a robust platform for epitope characterization.
机译:通常通过了解特异性结合表位来增强对抗体功能的了解。在这里,我们描述了一种计算机算法,该算法允许根据通过抗体亲和纯化分离的随机肽表位(模拟表位)的集合进行表位预测。我们将这种方法应用于预测针对西尼罗河病毒(WNV)E蛋白的五种单克隆抗体的表位,其中两种在体内表现出治疗活性。通过将我们的结果与现有F(ab)-E蛋白晶体结构进行比较,并通过酵母表面展示进行突变分析,验证了该策略。我们证明,通过将模拟表位方法的结果与突变分析数据相结合,可以更加确定地预测表位。这两种方法显示出极大的互补性,因为当模拟表位方法的结果模棱两可时,突变分析有助于表位的预测,并且模拟表位方法揭示的表位中的残基比突变分析的数目更大。我们的结果表明,这两种预测策略的组合为表位表征提供了一个可靠的平台。

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