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基于考虑表位变异性的共进化免疫信息学方法来对抗不同株:以 SARS-CoV-2 的刺突蛋白为例。

Coevolution based immunoinformatics approach considering variability of epitopes to combat different strains: A case study using spike protein of SARS-CoV-2.

机构信息

Department of Bioinformatics, Central University of South Bihar, Gaya, Bihar, India.

Department of Botany, Purnea Mahila College, Purnia, Bihar, India.

出版信息

Comput Biol Med. 2023 Sep;163:107233. doi: 10.1016/j.compbiomed.2023.107233. Epub 2023 Jul 1.

Abstract

In the recent past several vaccines were developed to combat the COVID-19 disease. Unfortunately, the protective efficacy of the current vaccines has been reduced due to the high mutation rate in SARS-CoV-2. Here, we successfully implemented a coevolution based immunoinformatics approach to design an epitope-based peptide vaccine considering variability in spike protein of SARS-CoV-2. The spike glycoprotein was investigated for B- and T-cell epitope prediction. Identified T-cell epitopes were mapped on previously reported coevolving amino acids in the spike protein to introduce mutation. The non-mutated and mutated vaccine components were constructed by selecting epitopes showing overlapping with the predicted B-cell epitopes and highest antigenicity. Selected epitopes were linked with the help of a linker to construct a single vaccine component. Non-mutated and mutated vaccine component sequences were modelled and validated. The in-silico expression level of the vaccine constructs (non-mutated and mutated) in E. coli K12 shows promising results. The molecular docking analysis of vaccine components with toll-like receptor 5 (TLR5) demonstrated strong binding affinity. The time series calculations including root mean square deviation (RMSD), radius of gyration (RGYR), and energy of the system over 100 ns trajectory obtained from all atom molecular dynamics simulation showed stability of the system. The combined coevolutionary and immunoinformatics approach used in this study will certainly help to design an effective peptide vaccine that may work against different strains of SARS-CoV-2. Moreover, the strategy used in this study can be implemented on other pathogens.

摘要

在最近的一段时间里,已经开发出了几种疫苗来对抗 COVID-19 疾病。不幸的是,由于 SARS-CoV-2 的高突变率,当前疫苗的保护效果已经降低。在这里,我们成功地实施了一种基于共进化的免疫信息学方法,设计了一种基于表位的肽疫苗,考虑了 SARS-CoV-2 刺突蛋白的变异性。对刺突糖蛋白进行了 B 细胞和 T 细胞表位预测。鉴定的 T 细胞表位被映射到刺突蛋白中先前报道的共进化氨基酸上,以引入突变。非突变和突变的疫苗成分通过选择与预测的 B 细胞表位和最高抗原性重叠的表位来构建。选择的表位在接头的帮助下与单个疫苗成分相连。构建了非突变和突变疫苗成分序列,并对其进行了建模和验证。疫苗构建体(非突变和突变)在大肠杆菌 K12 中的体外表达水平显示出有希望的结果。疫苗成分与 toll 样受体 5(TLR5)的分子对接分析表明具有很强的结合亲和力。包括均方根偏差(RMSD)、回转半径(RGYR)和系统能量在内的时间序列计算,从所有原子分子动力学模拟获得的 100 ns 轨迹,表明系统的稳定性。本研究中使用的组合共进化和免疫信息学方法肯定有助于设计一种有效的肽疫苗,该疫苗可能对 SARS-CoV-2 的不同菌株有效。此外,本研究中使用的策略可以应用于其他病原体。

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