Kyasanur forest disease virus (KFDV) causing tick-borne hemorrhagic fever which was earlier endemic to western Ghats, southern India, it is now encroaching into new geographic regions, but there is no approved medicine or effective vaccine against this deadly disease. In this study, we did in-silico design of multi-epitope subunit vaccine for KFDV. B-cell and T-cell epitopes were predicted from conserved regions of KFDV envelope protein and two vaccine candidates (VC1 and VC2) were constructed, those were found to be non-allergic and possess good antigenic properties, also gives cross-protection against Alkhurma hemorrhagic fever virus. The 3D structures of vaccine candidates were built and validated. Docking analysis of vaccine candidates with toll-like receptor-2 (TLR-2) by Cluspro and PatchDock revealed strong affinity between VC1 and TLR2. Ligplot tool was identified the intermolecular hydrogen bonds between vaccine candidates and TLR-2, iMOD server confirmed the stability of the docking complexes. JCAT sever ensured cloning efficiency of both vaccine constructs and in-silico cloning into pET30a (+) vector by SnapGene showed successful translation of epitope region. IMMSIM server was identified increased immunological responses. Finally, multi-epitope vaccine candidates were designed and validated their efficiency, it may pave the way for up-coming vaccine and diagnostic kit development.
Lycopersene is a stable and safe triterpenoid. Lycopersen had utilized as an antioxidant, antimutagenic, antiproliferative, cytotoxicity, antibacterial and pesticide. Obtaining pure Lycopersene from natural sources is very important for fundamental research and the above applications. The present overview provides an up‐to‐date and comprehensive summary of the various methods used for extraction, isolation and purification of Lycopersene from natural sources with its applications in food, cosmetics and pharmaceutical fields. Many different extraction methods ranging from conventional techniques (e.g. Soxhlet extraction, Maceration and Rotary evaporator) and other advanced extraction technologies (e.g. Solid‐phase microextraction, steam distillation with Clevenger, Clevenger apparatus, Chromatography on SiO2 column, centrifuge, sonication) had been used to obtain Lycopersene from flora and fauna. Purification techniques, alone or in combination, have been investigated for isolation and purification of Lycopersene from crude extracts in various natural sources. The review of Lycopersene identified cap areas like purity and application in various fields.
Kyasanur Forest Disease Virus (KFDV) causing common tick-borne hemorrhagic fever in south India, there is no approved anti-viral or efficacious vaccine against this disease. Recent KFDV spread into new geographic locations gives urgent call for development of new vaccine and drugs. In this study, we adapted in-silico approach to design multi-epitope subunit vaccine for KFDV. Conserved regions of KFDV envelope protein sequences reported during 1962 to 2016 were identified. Eight different immuno-informatics tools were employed to predict the linear B-cell and T-cell epitopes, high scored and/or multi-immunogenic epitopes were linked together and obtained two vaccine candidates (VC1 and VC2). Obtained vaccine candidates were found to be non-allergic and had good antigenic properties, also gives the cross-protection against to Alkhurma Hemorrhagic Fever virus (AHFV). The 3D structures of vaccine candidates were built and validated. Docking of vaccine candidates with toll-like receptor-8 (TLR-8) was performed by Hex 8.0 and Cluspro, highest binding energy observed between VC2 and TLR8. JCAT sever confirmed cloning efficiency of both vaccine constructs and in-silico cloning into pET30a (+) vector by SnapGene suggests successful translation of vaccine constructs. In this study, multi-epitope vaccine candidates were designed and validated, it paves the way for up-coming vaccine and diagnostic kit development.
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