Vivona Sandro, Bernante Filippo, Filippini Francesco
Molecular Biology and Bioinformatics (MOLBINFO), Department of Biology, University of Padua, viale G, Colombo 3, 35131 Padova, Italy.
BMC Biotechnol. 2006 Jul 18;6:35. doi: 10.1186/1472-6750-6-35.
Since a milestone work on Neisseria meningitidis B, Reverse Vaccinology has strongly enhanced the identification of vaccine candidates by replacing several experimental tasks using in silico prediction steps. These steps have allowed scientists to face the selection of antigens from the predicted proteome of pathogens, for which cell culture is difficult or impossible, saving time and money. However, this good example of bioinformatics-driven immunology can be further developed by improving in silico steps and implementing biologist-friendly tools.
We introduce NERVE (New Enhanced Reverse Vaccinology Environment), an user-friendly software environment for the in silico identification of the best vaccine candidates from whole proteomes of bacterial pathogens. The software integrates multiple robust and well-known algorithms for protein analysis and comparison. Vaccine candidates are ranked and presented in a html table showing relevant information and links to corresponding primary data. Information concerning all proteins of the analyzed proteome is not deleted along selection steps but rather flows into an SQL database for further mining and analyses.
After learning from recent years' works in this field and analysing a large dataset, NERVE has been implemented and tuned as the first available tool able to rank a restricted pool (approximately 8-9% of the whole proteome) of vaccine candidates and to show high recall (approximately 75-80%) of known protective antigens. These vaccine candidates are required to be "safe" (taking into account autoimmunity risk) and "easy" for further experimental, high-throughput screening (avoiding possibly not soluble antigens). NERVE is expected to help save time and money in vaccine design and is available as an additional file with this manuscript; updated versions will be available at http://www.bio.unipd.it/molbinfo.
自关于B群脑膜炎奈瑟菌的一项具有里程碑意义的研究以来,反向疫苗学通过使用计算机预测步骤取代多项实验任务,极大地增强了疫苗候选物的识别。这些步骤使科学家能够从病原体的预测蛋白质组中筛选抗原,而对于这些病原体,细胞培养困难或无法进行,从而节省了时间和金钱。然而,通过改进计算机步骤并实施对生物学家友好的工具,可以进一步发展这个生物信息学驱动免疫学的良好范例。
我们引入了NERVE(新型增强反向疫苗学环境),这是一个用户友好的软件环境,用于从细菌病原体的全蛋白质组中通过计算机识别最佳疫苗候选物。该软件集成了多种用于蛋白质分析和比较的强大且知名的算法。疫苗候选物被排序并呈现在一个HTML表格中,显示相关信息以及到相应原始数据的链接。在选择步骤中,关于所分析蛋白质组的所有蛋白质的信息不会被删除,而是流入一个SQL数据库进行进一步挖掘和分析。
在借鉴该领域近年来的研究成果并分析大量数据集之后,NERVE已被实现并调整为首个能够对有限的疫苗候选物池(约占整个蛋白质组的8 - 9%)进行排序并显示出对已知保护性抗原的高召回率(约75 - 80%)的可用工具。这些疫苗候选物需要“安全”(考虑自身免疫风险)且便于进一步进行实验性高通量筛选(避免可能不溶性的抗原)。预计NERVE将有助于在疫苗设计中节省时间和金钱,可作为本文的补充文件获取;更新版本将在http://www.bio.unipd.it/molbinfo上提供。