基于埃博拉病毒的硅肽疫苗设计新算法

S. Biswas, Tathagata Dey, Shreyans Chatterjee, S. Manna, A. Nandy, Sukhen Das, P. Nandy, S. Basak
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引用次数: 1

摘要

病毒流行对快速开发药物和疫苗来控制这种威胁构成了一个问题。非洲高致死率的埃博拉病毒病就是一个很好的例子。2014年至2016年,埃博拉病毒在西非肆虐,引发了人们对导致大流行的担忧,目前埃博拉病毒正在刚果民主共和国卷土重来。实验性的rVSV-ZEBOV等疫苗为70-80%的病例提供了保护,但这类疫苗供应短缺,并且在大流行病例中存在对其可获得性和可持续性的怀疑。多肽疫苗有望弥补这一缺陷,因为它是一种化学结构,可以按生产装置的要求扩大规模,易于纯形式生产和储存,并且比传统疫苗更容易和经济地运输。虽然目前还没有多肽疫苗获得人类使用许可,但在多肽疫苗设计和应用于无数病毒感染的硅方法的应用迅速增长,以及随后的后续实验工作,使人们期望在不久的将来获得许可。我们提出了一种使用数学和计算建模方法自动搜索过程的方案,以生成肽库,即使面对病毒序列的快速突变变化,也能促进此类疫苗的长寿命。在本文中,我们概述了我们使用的数学模型和最近在技术上的改进,以确保对肽疫苗库的最佳建议,特别是针对有可能蔓延到刚果边境并在全球化的世界中引起流行病和流行病的埃博拉病毒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Algorithms for In Silico Peptide Vaccine Design with Reference to Ebola Virus
Viral epidemics have posed a problem for quick development of drugs and vaccines to control the menace. A case in point is the Ebola viral disease with high fatality ratio in Africa. It is making a comeback in the Democratic Republic of Congo (DRC), after its rampage in West Africa in 2014-16 that has spawned fears of leading to a pandemic. Vaccines such as the experimental rVSV-ZEBOV has provided protection in 70-80% of the cases, but such vaccines are in short supply and doubts exist of its availability and sustainability in pandemic cases. Peptide vaccines promise to amend this lacuna as a chemical construct that can be scaled up to requirement in manufacturing set-up, are easy to produce in pure form and store as well as transport much more easily and economically than traditional vaccines. Although no peptide vaccines have been licensed yet for human use, the rapid growth of applications of in silico approaches to peptide vaccine design and application to a myriad of virus infections, and subsequent follow-up experimental work, have led to expectations of licensures in the near future. We have proposed a protocol to automate the search procedure using mathematical and computational modelling approaches to generate peptide libraries that promote long life of such vaccines even in the face of rapid mutational changes in the viral sequences. In this paper, we outline the mathematical model we have used and the recent improvements in the techniques to ensure the best recommendations for peptide vaccine libraries, especially against the Ebola virus that threatens to spill over the Congo border and cause epidemics and pandemics in a globalized world.
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