针对Orthohantavirus的基于T细胞表位的疫苗设计:一种致命的心肺疾病的病原体。

IF 2 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Amit Joshi, Nillohit Mitra Ray, Joginder Singh, Atul Kumar Upadhyay, Vikas Kaushik
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引用次数: 16

摘要

正汉坦病毒是一种引起人类心肺疾病的人畜共患病毒,已被证明是一种致命疾病。由于缺乏治疗该疾病的方案和根除这种致命病毒的有效管理,因此不断需要扩展属于免疫学领域的计算机方法,以制定最佳可行的基于肽的疫苗。与此相反,我们预测并验证了一个9个残基长的序列“MIGLLSSRI”的表位。预测表位与MHCⅱ类蛋白的HLA等位基因(DRB1_0101、DRB1_0401、DRB1_0405、DRB1_0701、DRB1_0901、DRB1_1302和DRB1_1501)相互作用最好。利用PEPFOLD 3.5对表位结构进行建模,并通过Ramachandran plot分析进行验证。分子对接和模拟研究表明,该表位具有令人满意的结合分数、ACE值和对接配合物的全局能量,RMSD和RMSF值具有可选择的范围。预测表位“MIGLLSSRI”在世界人口中的人口覆盖率超过62%,在美国的人口覆盖率最高达70%。在这项深入的研究中,我们使用了许多工具,如AllergenFP, NETMHCII 3.2, VaxiJen, ToxinPred, PEPFOLD 3.5, DINC, IEDB-Population coverage, MHCPred和JCat server。这些工具中的大多数都是基于现代创新的统计算法,如HMM, ANN, ML等,有助于更好地预测疫苗制作的假定候选者。这一创新方法简便、成本效益高、省时,有助于设计针对这种病毒的疫苗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

T-cell epitope-based vaccine designing against Orthohantavirus: a causative agent of deadly cardio-pulmonary disease.

T-cell epitope-based vaccine designing against Orthohantavirus: a causative agent of deadly cardio-pulmonary disease.

T-cell epitope-based vaccine designing against Orthohantavirus: a causative agent of deadly cardio-pulmonary disease.

T-cell epitope-based vaccine designing against Orthohantavirus: a causative agent of deadly cardio-pulmonary disease.

Orthohantavirus, a zoonotic virus responsible for causing human cardio-pulmonary disease, is proven to be a fatal disease. Due to the paucity of regimens to cure the disease and efficient management to eradicate this deadly virus, there is a constant need to expand in-silico approaches belonging to immunology domain to formulate best feasible peptide-based vaccine against it. In lieu of that, we have predicted and validated an epitope of nine-residue-long sequence "MIGLLSSRI". The predicted epitope has shown best interactions with HLA alleles of MHC Class II proteins, namely HLA DRB1_0101, DRB1_0401, DRB1_0405, DRB1_0701, DRB1_0901, DRB1_1302, and DRB1_1501. The structure of the epitope was modeled by deploying PEPFOLD 3.5 and verified by Ramachandran plot analysis. Molecular docking and simulation studies reveal that this epitope has satisfactory binding scores, ACE value and global energies for docked complexes along with selectable range of RMSD and RMSF values. Also, the predicted epitope "MIGLLSSRI" exhibits population coverage of more than 62% in world population and maximum of 70% in the United States of America. In this intensive study, we have used many tools like AllergenFP, NETMHCII 3.2, VaxiJen, ToxinPred, PEPFOLD 3.5, DINC, IEDB-Population coverage, MHCPred and JCat server. Most of these tools are based on modern innovative statistical algorithms like HMM, ANN, ML, etc. that help in better predictions of putative candidates for vaccine crafting. This innovative methodology is facile, cost-effective and time-efficient, which could facilitate designing of a vaccine against this virus.

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来源期刊
CiteScore
5.40
自引率
4.30%
发文量
43
期刊介绍: NetMAHIB publishes original research articles and reviews reporting how graph theory, statistics, linear algebra and machine learning techniques can be effectively used for modelling and analysis in health informatics and bioinformatics. It aims at creating a synergy between these disciplines by providing a forum for disseminating the latest developments and research findings; hence, results can be shared with readers across institutions, governments, researchers, students, and the industry. The journal emphasizes fundamental contributions on new methodologies, discoveries and techniques that have general applicability and which form the basis for network based modelling, knowledge discovery, knowledge sharing and decision support to the benefit of patients, healthcare professionals and society in traditional and advanced emerging settings, including eHealth and mHealth .
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