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NEP: web server for epitope prediction based on antibody neutralization of viral strains with diverse sequences

机译:NEP:Web服务器,用于基于具有不同序列的病毒株的抗体中和来进行表位预测

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Delineation of the antigenic site, or epitope, recognized by an antibody can provide clues about functional vulnerabilities and resistance mechanisms, and can therefore guide antibody optimization and epitope-based vaccine design. Previously, we developed an algorithm for antibody-epitope prediction based on antibody neutralization of viral strains with diverse sequences and validated the algorithm on a set of broadly neutralizing HIV-1 antibodies. Here we describe the implementation of this algorithm, NEP (Neutralization-based Epitope Prediction), as a web-based server. The users must supply as input: (i) an alignment of antigen sequences of diverse viral strains; (ii) neutralization data for the antibody of interest against the same set of antigen sequences; and (iii) (optional) a structure of the unbound antigen, for enhanced prediction accuracy. The prediction results can be downloaded or viewed interactively on the antigen structure (if supplied) from the web browser using a JSmol applet. Since neutralization experiments are typically performed as one of the first steps in the characterization of an antibody to determine its breadth and potency, the NEP server can be used to predict antibody-epitope information at no additional experimental costs. NEP can be accessed on the internet at http://exon.niaid.nih.govep.
机译:抗体识别的抗原位点或表位的描述可以提供有关功能脆弱性和耐药机制的线索,因此可以指导抗体优化和基于表位的疫苗设计。以前,我们开发了一种基于具有不同序列的病毒株抗体中和的抗体表位预测算法,并在一组广泛中和的HIV-1抗体上验证了该算法。在这里,我们将这种算法NEP(基于中和的表位预测)的实现描述为基于Web的服务器。使用者必须提供:(i)不同病毒株的抗原序列比对; (ii)针对同一组抗原序列的目标抗体的中和数据; (iii)(可选)未结合抗原的结构,以提高预测准确性。可以使用JSmol小程序从Web浏览器在抗原结构(如果提供)上交互下载或查看预测结果。由于中和实验通常是表征抗体以确定其广度和效能的第一步,因此可以将NEP服务器用于预测抗体表位信息,而无需额外的实验费用。 NEP可以从Internet上访问,网址为http://exon.niaid.nih.govep。

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