Natural Selection Footprint in Novel Coronavirus: A Genomic Perspective of SARS-COV2 Pandemic and Hypothesis for Peptide-Based Vaccine

Mojtaba Mohammadnezhad Leila La Manna Marco Pio Dieli Fran ShekarkarAzgomi, L. Mohammadnezhad, M. P. Manna, F. Dieli, N. Caccamo
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引用次数: 3

Abstract

We retrospective analyzed in silico the binding affinity of SARS-CoV-2 peptides to MHC class I HLA-A, -B, and –C molecules in different countries with high and low morbidity and mortality rates. We used bioinformatics approach to screen 18260 SARS-CoV-2 epitopes that have significant affinity for different MHC class I alleles and found approximately five thousand predicted nonamers to bind different alleles. Those predicted epitopes show different significant affinity for frequently occurring MHC I alleles. regarding to HLA frequencies within different populations that can vary due to differences in their evolutionary histories, we showed that those alleles have different correlation with SARS-CoV-2 pandemic in 22 country based on different mortality and morbidity rate.     There was a strong negative correlation between morbidity and mortality rates and the frequency of HLA-A*24, HLA-C*06 and HLA-B*5, while a strong positive correlation is detected between HLA-A*02, HLA-B*38, HLA-C*04 and HLA-C*08. We speculate that HLA class I polymorphism, by governing the set of viral peptides presented to CD8 + T cells, influences the outcome of SARS-Cov-2 infection. Finally, we were able to draw a foot print of natural selection on MHC I alleles base on significant different affinity of predicted peptide for known alleles. Our data showed that the HLA class I genetic background and the study epitope prediction should be taken into account for the generation of epitope-based vaccine or diagnostic tools. Funding: This work was supported by grants from the European Commission within the Horizon2020 Programmed TBVAC2020 [Horizon 2020 cod 643381]. Conflict of Interest: All the authors declare that no conflict of interests exist.
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新型冠状病毒的自然选择足迹:SARS-COV2大流行的基因组视角和肽基疫苗假说
我们回顾性分析了SARS-CoV-2肽与MHC I类HLA-A、-B和-C分子在不同发病率和死亡率高和低的国家的结合亲和力。我们使用生物信息学方法筛选了18260个与不同MHC I类等位基因有显著亲和力的SARS-CoV-2表位,发现了大约5000个与不同等位基因结合的预测命名。这些预测表位对频繁出现的MHC I等位基因表现出不同的显著亲和力。对于不同人群的HLA频率,由于其进化历史的差异而存在差异,我们发现这些等位基因与22个国家的SARS-CoV-2大流行具有不同的相关性,基于不同的死亡率和发病率。发病率和死亡率与HLA-A*24、HLA-C*06、HLA-B*5的频率呈显著负相关,与HLA-A*02、HLA-B*38、HLA-C*04、HLA-C*08的频率呈显著正相关。我们推测,HLA I类多态性通过控制提交给CD8 + T细胞的病毒肽集,影响SARS-Cov-2感染的结果。最后,基于预测肽对已知等位基因的显著不同亲和力,我们能够绘制MHC I等位基因的自然选择足迹。我们的数据表明,HLA I类遗传背景和研究表位预测应该考虑到基于表位的疫苗或诊断工具的产生。资助:本工作由欧盟委员会在地平线2020计划TBVAC2020[地平线2020编号643381]内提供资助。利益冲突:所有作者均声明不存在利益冲突。
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