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On the application of reverse vaccinology to parasitic diseases: a perspective on feature selection and ranking of vaccine candidates

机译:逆向疫苗学在寄生虫疾病中的应用:疫苗候选特征选择和排名的视角

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Reverse vaccinology has the potential to rapidly advance vaccine development against parasites, but it is unclear which features studied in silico will advance vaccine development. Here we consider Neospora caninum which is a globally distributed protozoan parasite causing significant economic and reproductive loss to cattle industries worldwide. The aim of this study was to use a reverse vaccinology approach to compile a worthy vaccine candidate list for N. caninum, including proteins containing pathogen associated molecular patterns to act as vaccine carriers. The in silico approach essentially involved collecting a wide range of gene and protein features from public databases or computationally predicting those for every known Neospora protein. This data collection was then analysed using an automated high-throughput process to identify candidates. The final vaccine list compiled was judged to be the optimum within the constraints of available data, current knowledge, and existing bioinformatics programs. We consider and provide some suggestions and experience on how ranking of vaccine candidate lists can be performed. This study is therefore important in that it provides a valuable resource for establishing new directions in vaccine research against neosporosis and other parasitic diseases of economic and medical importance. (C) 2017 Australian Society for Parasitology. Published by Elsevier Ltd. All rights reserved.
机译:反向疫苗学有可能迅速推进对寄生虫的疫苗发育,但目前尚不清楚在硅中研究的特征将推进疫苗发育。在这里,我们认为Neospora Caninum,这是全球分布的原生动物寄生虫,对全球养牛行业造成显着的经济和生殖损失。本研究的目的是使用反向疫苗学方法来编制N.甘氨酸的价值疫苗候选名单,包括含有病原体相关分子模式的蛋白质以充当疫苗载体。基本上涉及从公共数据库收集广泛的基因和蛋白质特征或计算每个已知的新孢子蛋白的基因和蛋白质特征。然后使用自动化的高吞吐量来分析该数据集合来识别候选者。编译的最终疫苗清单被判断为可用数据,当前知识和现有生物信息学计划的限制内的最佳选择。我们考虑并提供一些关于如何执行疫苗候选列表的排名的建议和经验。因此,本研究非常重要,因为它提供了一种有价值的资源,用于在疫苗研究中建立针对近代孢子症和其他经济和医学意义的其他寄生虫病的新方向。 (c)2017年澳大利亚寄生虫学会。 elsevier有限公司出版。保留所有权利。

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