Department of Poultry Science, Faculty of Veterinary, Animal and Biomedical Sciences, Sylhet Agricultural University, Sylhet 3100, Bangladesh; Faculty of Veterinary, Animal and Biomedical Sciences, Sylhet Agricultural University, Sylhet 3100, Bangladesh.
Faculty of Veterinary, Animal and Biomedical Sciences, Sylhet Agricultural University, Sylhet 3100, Bangladesh.
Infect Genet Evol. 2022 Oct;104:105355. doi: 10.1016/j.meegid.2022.105355. Epub 2022 Aug 22.
The rampant spread of highly pathogenic avian influenza A (H5N6) virus has drawn additional concerns along with ongoing Covid-19 pandemic. Due to its migration-related diffusion, the situation is deteriorating. Without an existing effective therapy and vaccines, it will be baffling to take control measures. In this regard, we propose a revers vaccinology approach for prediction and design of a multi-epitope peptide based vaccine. The induction of humoral and cell-mediated immunity seems to be the paramount concern for a peptide vaccine candidate; thus, antigenic B and T cell epitopes were screened from the surface, membrane and envelope proteins of the avian influenza A (H5N6) virus, and passed through several immunological filters to determine the best possible one. Following that, the selected antigenic with immunogenic epitopes and adjuvant were linked to finalize the multi-epitope-based peptide vaccine by appropriate linkers. For the prediction of an effective binding, molecular docking was carried out between the vaccine and immunological receptors (TLR8). Strong binding affinity and good docking scores clarified the stringency of the vaccines. Furthermore, molecular dynamics simulation was performed within the highest binding affinity complex to observe the stability, and minimize the designed vaccine's high mobility region to order to increase its stability. Then, Codon optimization and other physicochemical properties were performed to reveal that the vaccine would be suitable for a higher expression at cloning level and satisfactory thermostability condition. In conclusion, predicting the overall in silico assessment, we anticipated that our designed vaccine would be a plausible prevention against avian influenza A (H5N6) virus.
高致病性禽流感 A(H5N6)病毒的猖獗传播引起了人们的额外关注,与此同时,新冠疫情仍在持续。由于其与迁移相关的扩散,情况正在恶化。由于没有现有的有效治疗方法和疫苗,控制措施将令人困惑。在这方面,我们提出了一种反向疫苗学方法,用于预测和设计基于多表位肽的疫苗。诱导体液和细胞介导的免疫似乎是肽疫苗候选物的首要关注点;因此,从禽流感 A(H5N6)病毒的表面、膜和包膜蛋白中筛选出抗原 B 和 T 细胞表位,并通过几种免疫过滤来确定最佳的表位。随后,将所选的具有免疫原性的抗原表位与佐剂连接起来,通过适当的接头最终确定基于多表位的肽疫苗。为了预测有效的结合,对疫苗和免疫受体(TLR8)之间进行了分子对接。强结合亲和力和良好的对接分数阐明了疫苗的严格性。此外,在最高结合亲和力复合物内进行了分子动力学模拟,以观察稳定性,并最小化设计疫苗的高迁移区域,以提高其稳定性。然后,进行了密码子优化和其他物理化学性质分析,以表明疫苗在克隆水平上具有较高的表达和令人满意的热稳定性。总之,通过对整体的计算机模拟评估,我们预计我们设计的疫苗将是预防禽流感 A(H5N6)病毒的一种合理选择。