用于疫苗研制的克里米亚-刚果出血热病毒糖蛋白多表位抗原的计算机设计。

Megan C Mears, Dennis A Bente
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引用次数: 1

摘要

目的:目前尚无许可疫苗可用于预防由克里米亚-刚果出血热病毒(CCHFV)引起的严重蜱传疾病克里米亚-刚果出血热(CCHF)。本研究旨在表明,计算方法和已发表文献数据的结合可以为设计具有免疫原性潜力的CCHFV多表位抗原提供信息。方法:使用生物信息学服务器评估CCHFV GPC上的细胞毒性和辅助t细胞表位,并将这些数据与先前的研究相结合,以确定GPC的潜在免疫优势区域。选择GPC上的区域,用硅法生成模型多表位抗原,并比较每个区域的百分比残基同源性和相似性,代表了CCHFV广泛的地理和生态分布。结果:11个多表位区通过柔性连接体在硅片上连接,生成了一个模型多表位抗原,称为EPIC,其中包括812个(75.7%)预测的表位。两个独立的生物信息学服务器预测EPIC具有抗原性,提示应进一步探索多表位抗原用于CCHFV疫苗的开发。结论:本文的结果为CCHFV GPC的潜在靶点提供了信息,为未来疫苗的开发提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

<i>In silico</i> Design of a Crimean-Congo Hemorrhagic Fever Virus Glycoprotein Multi-Epitope Antigen for Vaccine Development.

In silico Design of a Crimean-Congo Hemorrhagic Fever Virus Glycoprotein Multi-Epitope Antigen for Vaccine Development.

Objective: There is no licensed vaccine available to prevent the severe tick-borne disease Crimean-Congo hemorrhagic fever (CCHF), caused by the CCHF virus (CCHFV). This study sought to show that a combination of computational methods and data from published literature can inform the design of a multi-epitope antigen for CCHFV that has the potential to be immunogenic.

Methods: Cytotoxic and helper T-cell epitopes were evaluated on the CCHFV GPC using bioinformatic servers, and this data was combined with work from previous studies to identify potentially immunodominant regions of the GPC. Regions of the GPC were selected for generation of a model multi-epitope antigen in silico, and the percent residue identity and similarity of each region was compared across sequences representing the widespread geographical and ecological distribution of CCHFV.

Results: Eleven multi-epitope regions were joined together with flexible linkers in silico to generate a model multi-epitope antigen, termed EPIC, which included 812 (75.7%) of all predicted epitopes. EPIC was predicted to be antigenic by two independent bioinformatic servers, suggesting that multi-epitope antigens should be explored further for CCHFV vaccine development.

Conclusion: The results presented within this manuscript provide information for potential targets within the CCHFV GPC for guiding future vaccine development.

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