Publication | Open Access
Identification of vaccine targets in pathogens and design of a vaccine using computational approaches
142
Citations
105
References
2021
Year
ImmunologyReverse VaccinologyVaccine TargetProteomicsAntigen IdentificationHost-pathogen InteractionsVaccine DevelopmentComputational ApproachesVirologyBioinformaticsMhc Class IiVaccinationNatural SciencesComputational BiologyPrecision VaccineMicrobiologyVaccine DesignSystems BiologyMedicineVaccine ResearchB Cell EpitopesVaccine Targets
Antigen identification is a critical step in vaccine development, and computational approaches such as deep learning can aid in identifying vaccine targets from genomic and proteomic data. The study introduces a computational system to discover and analyze novel vaccine targets for designing a multi‑epitope subunit vaccine candidate. The system combines reverse vaccinology and immunoinformatics to screen pathogen datasets, selects eight T. cruzi proteins based on secretion, essentiality, and antigenicity, extracts MHC I/II and B‑cell epitopes, and builds a 24‑epitope vaccine construct with adjuvants and linkers, which is then evaluated for physicochemical properties and docking.
Antigen identification is an important step in the vaccine development process. Computational approaches including deep learning systems can play an important role in the identification of vaccine targets using genomic and proteomic information. Here, we present a new computational system to discover and analyse novel vaccine targets leading to the design of a multi-epitope subunit vaccine candidate. The system incorporates reverse vaccinology and immuno-informatics tools to screen genomic and proteomic datasets of several pathogens such as Trypanosoma cruzi, Plasmodium falciparum, and Vibrio cholerae to identify potential vaccine candidates (PVC). Further, as a case study, we performed a detailed analysis of the genomic and proteomic dataset of T. cruzi (CL Brenner and Y strain) to shortlist eight proteins as possible vaccine antigen candidates using properties such as secretory/surface-exposed nature, low transmembrane helix (< 2), essentiality, virulence, antigenic, and non-homology with host/gut flora proteins. Subsequently, highly antigenic and immunogenic MHC class I, MHC class II and B cell epitopes were extracted from top-ranking vaccine targets. The designed vaccine construct containing 24 epitopes, 3 adjuvants, and 4 linkers was analysed for its physicochemical properties using different tools, including docking analysis. Immunological simulation studies suggested significant levels of T-helper, T-cytotoxic cells, and IgG1 will be elicited upon administration of such a putative multi-epitope vaccine construct. The vaccine construct is predicted to be soluble, stable, non-allergenic, non-toxic, and to offer cross-protection against related Trypanosoma species and strains. Further, studies are required to validate safety and immunogenicity of the vaccine.
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