Epitope-Based Peptide Vaccine Design against Fructose Bisphosphate Aldolase of Candida glabrata: An Immunoinformatics Approach
Autor: | Essam Ammar Salih, Hozaifa Saif Osman, Mohamed Hassan, Athar A Alsafi, Amna A Mohamed, Reham M. Elhassan, Mohamed Bashair Hassan, Abeer Babiker Idris, Fatima A. Abdelrhman, Marwa Saad M Khalil, Lina Mohamed Elamin Elhasan, Asma Ibrahim H |
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Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Article Subject
Immunology Epitopes T-Lymphocyte Fructose-bisphosphate aldolase Candida glabrata Computational biology Major histocompatibility complex Epitope Fungal Proteins 03 medical and health sciences Immunogenicity Vaccine Antigen Fructose-Bisphosphate Aldolase MHC class I Humans Immunology and Allergy Amino Acid Sequence Homology modeling Conserved Sequence 030304 developmental biology 0303 health sciences biology 030306 microbiology Histocompatibility Antigens Class I Candidiasis Histocompatibility Antigens Class II Computational Biology General Medicine RC581-607 biology.organism_classification Protein Structure Tertiary Molecular Docking Simulation Drug Design Vaccines Subunit Peptide vaccine biology.protein Epitopes B-Lymphocyte Fungal Vaccines Immunologic diseases. Allergy Epitope Mapping Research Article |
Zdroj: | Journal of Immunology Research, Vol 2021 (2021) Journal of Immunology Research |
ISSN: | 2314-8861 |
DOI: | 10.1155/2021/8280925 |
Popis: | Background. Candida glabrata is a human opportunistic pathogen that can cause life-threatening systemic infections. Although there are multiple effective vaccines against fungal infections and some of these vaccines are engaged in different stages of clinical trials, none of them have yet been approved by the FDA. Aim. Using immunoinformatics approach to predict the most conserved and immunogenic B- and T-cell epitopes from the fructose bisphosphate aldolase (Fba1) protein of C. glabrata. Material and Method. 13 C. glabrata fructose bisphosphate aldolase protein sequences (361 amino acids) were retrieved from NCBI and presented in several tools on the IEDB server for prediction of the most promising epitopes. Homology modeling and molecular docking were performed. Result. The promising B-cell epitopes were AYFKEH, VDKESLYTK, and HVDKESLYTK, while the promising peptides which have high affinity to MHC I binding were AVHEALAPI, KYFKRMAAM, QTSNGGAAY, RMAAMNQWL, and YFKEHGEPL. Two peptides, LFSSHMLDL and YIRSIAPAY, were noted to have the highest affinity to MHC class II that interact with 9 alleles. The molecular docking revealed that the epitopes QTSNGGAAY and LFSSHMLDL have the lowest binding energy to MHC molecules. Conclusion. The epitope-based vaccines predicted by using immunoinformatics tools have remarkable advantages over the conventional vaccines in that they are more specific, less time consuming, safe, less allergic, and more antigenic. Further in vivo and in vitro experiments are needed to prove the effectiveness of the best candidate’s epitopes (QTSNGGAAY and LFSSHMLDL). To the best of our knowledge, this is the first study that has predicted B- and T-cell epitopes from the Fba1 protein by using in silico tools in order to design an effective epitope-based vaccine against C. glabrata. |
Databáze: | OpenAIRE |
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