Department of Science and Innovation/Mintek Nanotechnology Innovation Centre, Biolabels Node, Department of Biotechnology, Faculty of Natural Sciences, University of the Western Cape, Bellville, South Africa.
Plant Omics Laboratory, Department of Biotechnology, Faculty of Natural Sciences, University of the Western Cape, Private Bag X17, Bellville, 7535, Cape Town, South Africa.
Sci Rep. 2021 Oct 5;11(1):19707. doi: 10.1038/s41598-021-99227-7.
Dengue poses a global health threat, which will persist without therapeutic intervention. Immunity induced by exposure to one serotype does not confer long-term protection against secondary infection with other serotypes and is potentially capable of enhancing this infection. Although vaccination is believed to induce durable and protective responses against all the dengue virus (DENV) serotypes in order to reduce the burden posed by this virus, the development of a safe and efficacious vaccine remains a challenge. Immunoinformatics and computational vaccinology have been utilized in studies of infectious diseases to provide insight into the host-pathogen interactions thus justifying their use in vaccine development. Since vaccination is the best bet to reduce the burden posed by DENV, this study is aimed at developing a multi-epitope based vaccines for dengue control. Combined approaches of reverse vaccinology and immunoinformatics were utilized to design multi-epitope based vaccine from the sequence of DENV. Specifically, BCPreds and IEDB servers were used to predict the B-cell and T-cell epitopes, respectively. Molecular docking was carried out using Schrödinger, PATCHDOCK and FIREDOCK. Codon optimization and in silico cloning were done using JCAT and SnapGene respectively. Finally, the efficiency and stability of the designed vaccines were assessed by an in silico immune simulation and molecular dynamic simulation, respectively. The predicted epitopes were prioritized using in-house criteria. Four candidate vaccines (DV-1-4) were designed using suitable adjuvant and linkers in addition to the shortlisted epitopes. The binding interactions of these vaccines against the receptors TLR-2, TLR-4, MHC-1 and MHC-2 show that these candidate vaccines perfectly fit into the binding domains of the receptors. In addition, DV-1 has a better binding energies of - 60.07, - 63.40, - 69.89 kcal/mol against MHC-1, TLR-2, and TLR-4, with respect to the other vaccines. All the designed vaccines were highly antigenic, soluble, non-allergenic, non-toxic, flexible, and topologically assessable. The immune simulation analysis showed that DV-1 may elicit specific immune response against dengue virus. Moreover, codon optimization and in silico cloning validated the expressions of all the designed vaccines in E. coli. Finally, the molecular dynamic study shows that DV-1 is stable with minimum RMSF against TLR4. Immunoinformatics tools are now applied to screen genomes of interest for possible vaccine target. The designed vaccine candidates may be further experimentally investigated as potential vaccines capable of providing definitive preventive measure against dengue virus infection.
登革热对全球健康构成威胁,如果没有治疗干预,这种威胁将持续存在。暴露于一种血清型会产生的免疫,不能提供针对其他血清型的长期保护,并且有可能增强这种感染。尽管人们认为疫苗接种可以诱导针对所有登革热病毒(DENV)血清型的持久和保护性反应,以减轻这种病毒带来的负担,但开发安全有效的疫苗仍然是一个挑战。免疫信息学和计算疫苗学已被用于传染病研究,以提供对宿主-病原体相互作用的深入了解,从而证明它们在疫苗开发中的使用是合理的。由于疫苗接种是减轻 DENV 带来的负担的最佳选择,因此本研究旨在开发基于多表位的登革热控制疫苗。利用反向疫苗学和免疫信息学的综合方法,从 DENV 序列中设计基于多表位的疫苗。具体来说,分别使用 BCPreds 和 IEDB 服务器来预测 B 细胞和 T 细胞表位。使用 Schrödinger、PATCHDOCK 和 FIREDOCK 进行分子对接。使用 JCAT 和 SnapGene 进行密码子优化和虚拟克隆。最后,通过体内免疫模拟和分子动力学模拟分别评估设计疫苗的效率和稳定性。使用内部标准对预测的表位进行优先级排序。使用合适的佐剂和接头,以及精选的表位,设计了四个候选疫苗(DV-1-4)。这些疫苗与受体 TLR-2、TLR-4、MHC-1 和 MHC-2 的结合相互作用表明,这些候选疫苗与受体的结合域完全匹配。此外,DV-1 与其他疫苗相比,对 MHC-1、TLR-2 和 TLR-4 的结合能分别为-60.07、-63.40 和-69.89kcal/mol,具有更好的结合能。所有设计的疫苗均具有高抗原性、可溶性、非变应原性、非毒性、柔韧性和拓扑可评估性。免疫模拟分析表明,DV-1 可能引发针对登革热病毒的特异性免疫反应。此外,密码子优化和虚拟克隆验证了所有设计疫苗在大肠杆菌中的表达。最后,分子动力学研究表明,DV-1 与 TLR4 相比具有最小的 RMSF,是稳定的。免疫信息学工具现已用于筛选感兴趣的基因组,以寻找可能的疫苗靶标。设计的候选疫苗可能会进一步进行实验研究,作为能够提供针对登革热病毒感染的明确预防措施的潜在疫苗。