Immunoinformatics and Biophysics Approaches to Design a Novel Multi-Epitopes Vaccine Design against Staphylococcus auricularis
Abstract
:1. Introduction
2. Research Methodology
2.1. Bacterial Pan-Genomics, Subtractive Proteomics, and Reverse Vaccinology
2.2. Pre-Selection Stage
2.3. CD-Hit Analysis
2.4. Subcellular Localization Phase
2.5. Vaccine Candidate’s Prioritization Phase
2.6. Prediction of Immune Cell Epitopes
2.7. MHCPred 2.0 Analysis
2.8. Antigenicity, Allergenicity, and Adhesion Probability Prediction
2.9. Multi-Epitopes Peptide Designing
2.10. Codon Optimization
2.11. Docking and Refinement
2.12. Molecular Dynamics (MD) Simulation Assay
2.13. Free Energy of Immune Receptors and Vaccine Design
3. Results
3.1. Genomes Retrieval of S. auricularis
3.2. Bacterial Pan-Genome Analysis
3.3. CD-HIT Analysis and Proteins Subcellular Localization
3.4. VFDB Analysis
3.5. B-Cell Epitopes Prediction
3.6. MHC-I and MHC-II Epitopes Prediction
3.7. Epitope Prioritization Phase
3.8. MHCPred Analysis
3.9. Allergenicity and Antigenicity
3.10. Analysis of Solubility and Toxicity
3.11. Multi-Epitopes Vaccine Designing
3.12. Vaccine Structure Modeling
3.13. Loop Modeling and Refinement
3.14. Disulfide Engineering
3.15. Optimizing Codon Sequences
3.16. Analysis of Molecular Docking
3.17. Docked Complexes Refinement
3.18. Docked Conformation of Vaccine with Immune Receptors
3.19. Interactions of Vaccine to Immune Receptors
3.20. Molecular Dynamic Simulation
3.21. Estimation of Binding Free Energy
4. Discussion
5. Conclusions and Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Organism Name | Strain | Size (Mb) | GC% |
---|---|---|---|
S. auricularis | FDAARGOS_882 | 2.22 | 37.40 |
S. auricularis | NCTC12101 | 2.22 | 37.40 |
S. auricularis | JCM 2421 | 2.26 | 37.40 |
S. auricularis | DSM 20609 | 2.20 | 37.30 |
S. auricularis | NCTC 12101 | 2.20 | 37.20 |
S. auricularis | DE0381 | 2.42 | 37.40 |
S. auricularis | S52 | 2.28 | 37.10 |
S. auricularis | 1H20 | 2.25 | 37.10 |
S. auricularis | SNUC 3034 | 2.28 | 37.10 |
S. auricularis | SNUC 993 | 2.30 | 37.10 |
S. auricularis | CHK138−4784 | 1.68 | 37.10 |
Proteins | Subcellular Localization | Bit Score | Sequence Identity |
---|---|---|---|
core/231/1/Org1_Gene1151 gamma-glutamyl transferase | Extracellular | 244 bits | 34% |
core/1478/1/Org1_Gene484 superoxide dismutase | Periplasmic | 179 bits | 43% |
B-Cell Epitopes | Peptides |
---|---|
core/231/1/Org1_Gene1151 gamma-glutamyl transferase | PDTYDKNELYENKIAGHTQSASNQ |
QNAEPKQYQYKDISSYNFKQ | |
LYGSDVDRDSPFFDGSRTKREGDVVK | |
KQLDNKLTKKDFQDYEMT | |
VNGQDNNSENYLSQE | |
NEVNQTQEEINPEGIDN | |
SDPNSPNYGEKHKQ | |
IDVFKNMGYNVEEKRNDP | |
core/1478/1/Org1_Gene484 superoxide dismutase | LPNLPYDFDALEPYIDKE |
DLENKSIEEIVANLDSVPED | |
TPNSEEKGTVVDKIKEQWGSL | |
LKYQNKRPEYIE |
MHC-II | Percentile Score | MHC-I | Percentile Score |
---|---|---|---|
KIAGHTQSASN | 4.3 | KIAGHTQSA | 0.15 |
AGHTQSASN | 28 | ||
PDTYDKNELYENKI | 28 | PDTYDKNELY | 0.28 |
DKNELYENKI | 20 | ||
KQYQYKDISSYNFKQ | 4.8 | QYQYKDISSY | 0.01 |
DISSYNFKQ | 4.4 | ||
NAEPKQYQYKDISS | 28 | NAEPKQYQY | 0.03 |
KQYQYKDISS | 7.4 | ||
LYGSDVDRDSPFFD | 7 | DVDRDSPFF | 0.41 |
LYGSDVDRD | 24 | ||
DVDRDSPFFD | 9.9 | ||
SPFFDGSRTKREGDV | 37 | FFDGSRTKR | 0.17 |
SPFFDGSRTK | 0.31 | ||
GSRTKREGDV | 13 | ||
LTKKDFQDYEM | 7.2 | LTKKDFQDY | 0.2 |
KKDFQDYEM | 2.9 | ||
KQLDNKLTKKDFQDY | 33 | KQLDNKLTK | 0.05 |
LTKKDFQDY | 0.2 | ||
GQDNNSENYLSQE | 45 | GQDNNSENY | 0.28 |
NSENYLSQE | 7.8 | ||
NEVNQTQEEINPE | 13 | EVNQTQEEI | 0.1 |
NEVNQTQEEI | 0.79 | ||
QTQEEINPE | 6.3 | ||
VNQTQEEINPEGIDN | 22 | QEEINPEGI | 0.63 |
VNQTQEEINP | 37 | ||
SDPNSPNYGEKHKQ | 74 | NSPNYGEKHK | 3.4 |
DPNSPNYGEK | 3.5 | ||
SDPNSPNYGE | 6.8 | ||
IDVFKNMGYNV | 0.82 | DVFKNGYNV | 0.34 |
IDVFKNMGY | 1.4 | ||
VFKNMGYNVEEKRND | 12 | MGYNVEEKR | 0.62 |
VFKNMGYNV | 1.3 | ||
YNVEEKRND | 65 | ||
PNLPYDFDALEPYI | 1.1 | DFDALEPYI | 1.9 |
PNLPYDFDAL | 38 | ||
LPYDFDALEPYIDKE | LPYDFDALE | 1.7 | |
DALEPYIDKE | 14 | ||
IEEIVANLDSVPE | 3.2 | IEEIVANLD | 18 |
VANLDSVPE | 9.3 | ||
DLENKSIEEIVANLD | 11 | DLENKSIEEI | 1.4 |
SIEEIVANLD | 17 | ||
TVVDKIKEQWGSL | 22 | TVVDKIKEQW | 0.08 |
KIKEQWGSL | 0.26 | ||
TPNSEEKGTVVDKI | 43 | EEKGTVVDKI | 0.57 |
TPNSEEKGTV | 0.89 | ||
LKYQNKRPEYI | 3 | YQNKRPEYI | 0.21 |
MHC- Pred | DRB*0101 IC50 Score | Antigenicity | Allergenicity | Solubility | Toxin Pred |
---|---|---|---|---|---|
KNELYENKI | 7.768 | 0.5035 | |||
DISSYNFKQ | 57.15 | 1.5642 | |||
NAEPKQYQY | 2.93 | 1.0100 | |||
KQYQYKDISS | 83.37 | 0.5079 | |||
QYQYKDISS | 11.02 | 0.5677 | |||
LYGSDVDRD | 37.24 | 0.9838 | |||
GQDNNSENY | 64.86 | 1.5275 | Non-allergen | Good water solubility | Non-toxin |
QTQEEINPE | 6.34 | 1.1296 | |||
NQTQEEINP | 22.39 | 0.9309 | |||
DFDALEPYI | 9.38 | 1.2216 | |||
PNLPYDFDA | 18.54 | 1.0231 | |||
LPYDFDALE | 56.36 | 0.7775 | |||
DLENKSIEE | 32.43 | 1.3709 | |||
EEKGTVVDK | 42.27 | 0.8901 |
Sequence Number | Amino Acid | Sequence Number | Amino Acid | Chi3 | Energy | Sum B-Factors |
---|---|---|---|---|---|---|
7 | GLY | 34 | HIS | 67.21 | 2.37 | 0 |
15 | SER | 24 | GLN | 88.65 | 5.88 | 0 |
18 | TYR | 23 | PRO | 74.33 | 4.57 | 0 |
209 | ASP | 218 | ASN | 122.68 | 5.37 | 0 |
216 | GLN | 220 | SER | 122.93 | 4.95 | 0 |
225 | PRO | 229 | GLN | 113.02 | 3.01 | 0 |
238 | GLY | 245 | THR | 110.79 | 5.25 | 0 |
285 | LEU | 288 | ASP | 106.06 | 3.04 | 0 |
301 | GLU | 305 | ILE | 106.28 | 3.68 | 0 |
Solution No | Score | Area | ACE | Transformation |
---|---|---|---|---|
1 | 20132 | 3445.10 | 405.18 | −0.44 0.33 1.63 99.21 38.67 29.15 |
2 | 19844 | 3938.00 | 311.82 | −0.92 0.91 0.60 22.26–27.15 9.21 |
3 | 19282 | 2805.20 | 378.13 | −2.47–0.49 3.11–18.74 12.00 37.06 |
4 | 19272 | 3180.70 | 371.95 | −0.55–0.04 2.27 92.68 70.24 41.81 |
5 | 18218 | 2781.40 | 283.06 | −0.95 0.40–3.05 42.02 21.11 3.99 |
6 | 17986 | 2731.90 | 493.30 | −1.97 0.09 0.80 2.95 47.68 44.62 |
7 | 17968 | 3816.80 | 300.18 | −3.01 1.42 1.28–14.91–40.50–6.83 |
8 | 17940 | 2845.80 | 427.92 | −2.81 0.37–2.54 46.23–29.01 36.16 |
9 | 17936 | 3052.60 | 86.01 | −2.91–0.90 2.92–3.45 14.79 55.77 |
10 | 17934 | 3182.80 | 498.19 | 2.21 0.23–1.45 52.65–6.49 5.15 |
11 | 17904 | 2907.60 | 493.90 | −0.97 0.93 0.88 33.16–26.75 13.49 |
12 | 17688 | 2908.80 | 139.47 | 2.77–0.08–0.59 64.71 52.46 56.37 |
13 | 17674 | 2832.70 | 465.57 | 0.17–0.26 2.33 14.30–1.73–34.33 |
14 | 17502 | 2380.50 | 477.76 | −0.85–0.07 0.54 22.31 1.39 66.68 |
15 | 17168 | 2920.20 | 471.12 | 2.24 0.17–0.67 28.98 58.30–17.67 |
16 | 16922 | 2557.70 | 389.82 | −0.39 1.28 2.15 47.56 2.78–27.80 |
17 | 16866 | 3903.90 | 336.25 | −1.45 0.79 1.08 27.04–33.05 26.94 |
18 | 16826 | 2201.00 | 447.60 | −0.07–0.17–2.61–7.26 71.44 30.42 |
19 | 16782 | 3966.20 | 232.52 | −0.83–0.06–1.50 2.64 41.63 19.99 |
20 | 16776 | 3039.60 | 442.93 | −0.33 0.92–2.63–9.19 69.57 23.36 |
Solution No | Score | Area | ACE | Transformation |
---|---|---|---|---|
1 | 20570 | 3565.40 | 271.97 | −2.17 –0.39 –2.54 108.70 52.17 53.60 |
2 | 20382 | 3218.70 | −25.73 | –1.94 –0.37 2.71 87.91 105.99 58.18 |
3 | 19196 | 3055.90 | 213.63 | 1.68 0.11 1.94 111.16 36.90 –54.35 |
4 | 18992 | 3096.60 | 143.82 | 0.14 –0.74 –1.31 39.48 110.23 –5.13 |
5 | 18592 | 2957.80 | 177.57 | 1.48 –0.90 1.70 138.56 40.32 –13.49 |
6 | 18488 | 3716.80 | 101.29 | –1.83 –0.24 2.67 94.90 105.50 59.00 |
7 | 17942 | 2977.00 | 343.89 | −0.38 –0.06 0.02 117.98 14.99 –19.99 |
8 | 17780 | 2450.90 | 395.91 | 0.82 0.11 –1.88 125.52 53.90 –48.68 |
9 | 17736 | 3020.90 | 355.92 | 1.52 0.18 1.93 115.95 39.51 –55.51 |
10 | 17612 | 4129.70 | 451.99 | 1.30 –0.16 1.77 110.37 47.24 –52.75 |
11 | 17540 | 2462.60 | 404.36 | −1.18 0.51 –1.31 117.85 80.56 6.15 |
12 | 17310 | 2888.70 | 355.39 | −3.03 0.48 –1.16 105.35 115.94 –6.39 |
13 | 17232 | 2316.70 | 477.49 | −2.65 –0.81 –2.79 76.34 64.59 43.98 |
14 | 17136 | 2466.10 | 424.10 | −2.22 0.14 –0.88 133.03 42.01 49.26 |
15 | 17096 | 2801.00 | 425.08 | 1.22 –0.46 1.74 94.04 58.55 –31.78 |
16 | 17074 | 2166.70 | 249.61 | −3.05 0.31 0.14 88.68 108.92 35.75 |
17 | 16878 | 2952.00 | 489.28 | −1.91 0.06 2.00 123.27 28.22 11.90 |
18 | 16832 | 2913.60 | 347.82 | −0.77 –0.12 1.64 149.12 75.77 44.31 |
19 | 16808 | 2452.30 | 270.53 | −0.36 0.38 –1.74 81.35 107.07 26.55 |
20 | 16784 | 3289.80 | 440.55 | −1.76 –0.04 1.19 102.77 90.46 58.32 |
Solution No | Score | Area | ACE | Transformation |
---|---|---|---|---|
1 | 20378 | 3608.40 | 443.05 | 3.04 −0.64 1.00 −38.53 51.32 −52.20 |
2 | 20200 | 3636.60 | 420.46 | 2.82 0.21 −0.74 −50.55 43.33 −63.93 |
3 | 19730 | 3020.20 | 148.51 | 2.05 0.19 2.66 −27.29 20.10 −80.32 |
4 | 19420 | 3354.30 | 328.45 | −0.55 0.18 −2.68 −51.45 45.12 17.38 |
5 | 18960 | 3190.80 | 253.67 | −1.65 −0.25 −0.03 −36.03 32.54 −32.10 |
6 | 18942 | 3010.20 | 418.13 | −0.74 −0.23 1.98 −0.03 −42.39 −0.40 |
7 | 18908 | 3164.90 | 159.14 | 2.21 0.07 0.42 −62.64 46.15 −9.60 |
8 | 18654 | 2702.20 | 457.75 | 2.89 0.54 −1.86 −6.36 25.96 8.73 |
9 | 18428 | 2381.70 | 407.50 | 0.19 0.20 2.02 26.92 22.52 −8.30 |
10 | 18120 | 2812.80 | 185.16 | −0.76 −0.73 −1.94 −27.68 −21.12 14.81 |
11 | 17936 | 2628.00 | −81.00 | −0.16 −0.13 2.43 39.24 44.49 −72.70 |
12 | 17846 | 2217.50 | 249.64 | 1.79 −0.07 −1.37 30.39 33.31 −87.83 |
13 | 17816 | 2887.90 | 356.04 | −0.07 −0.95 2.66 46.97 46.18 −40.96 |
14 | 17780 | 2755.00 | 288.75 | 1.14 0.48 1.45 4.04 −19.81 −27.50 |
15 | 17736 | 2691.70 | 452.35 | 0.96 1.15 −3.01 −7.89 −5.87 −90.50 |
16 | 17596 | 3641.90 | 295.19 | −2.03 −0.23 −1.28 0.76 48.92 7.22 |
17 | 17324 | 2388.50 | 215.65 | 0.78 −0.70 −2.12 16.08 33.32 −89.40 |
18 | 17006 | 3484.90 | 158.11 | 1.30 −0.00 2.52 10.41 6.75 −92.90 |
19 | 17004 | 2233.20 | 413.44 | 1.14 0.40 1.64 5.01 −17.91 −26.25 |
20 | 16972 | 2286.50 | 443.84 | 0.89 −0.21 −2.41 −72.64 11.88 −109.83 |
Rank | Solution Number | Global Energy | Attractive VdW | Repulsive VdW | ACE | HB |
---|---|---|---|---|---|---|
1 | 4 | 4.17 | −31.16 | 19.84 | 11.47 | −5.30 |
2 | 5 | 6.15 | −0.68 | 0.00 | −0.75 | 0.00 |
3 | 3 | 19.06 | −22.15 | 22.69 | 19.85 | −0.33 |
4 | 8 | 52.95 | −14.47 | 49.91 | 11.17 | −3.19 |
5 | 10 | 455.54 | −48.39 | 574.75 | 33.65 | −7.69 |
6 | 6 | 743.07 | −36.55 | 965.01 | 16.58 | −8.90 |
7 | 9 | 1611.59 | −20.94 | 2061.10 | −6.63 | −5.60 |
8 | 1 | 3726.53 | −70.15 | 4711.56 | 12.36 | −7.89 |
9 | 2 | 8261.20 | −123.35 | 10537.72 | 22.74 | −27.64 |
10 | 7 | 10978.99 | −103.14 | 13898.94 | 7.02 | −12.71 |
Rank | Solution Number | Global Energy | Attractive VdW | Repulsive VdW | ACE | HB |
---|---|---|---|---|---|---|
1 | 9 | −5.24 | −4.69 | 3.43 | 0.93 | 0.00 |
2 | 8 | 19.99 | −16.03 | 44.33 | 3.41 | −2.16 |
3 | 4 | 87.59 | −20.16 | 93.00 | 12.23 | −0.25 |
4 | 3 | 266.04 | −22.59 | 342.76 | 5.64 | −2.57 |
5 | 5 | 323.56 | −29.38 | 438.65 | 9.04 | −1.39 |
6 | 6 | 411.02 | −30.17 | 555.41 | 6.83 | −4.74 |
7 | 1 | 869.72 | −55.34 | 1144.92 | 15.69 | −6.62 |
8 | 7 | 1648.44 | −43.84 | 2070.98 | 19.56 | −4.58 |
9 | 10 | 3313.72 | −59.53 | 4183.44 | 30.29 | −4.02 |
10 | 2 | 3450.81 | −76.67 | 4459.19 | 9.78 | −10.96 |
Rank | Solution Number | Global Energy | Attractive VdW | Repulsive VdW | ACE | HB |
---|---|---|---|---|---|---|
1 | 3 | −10.12 | −30.06 | 23.12 | 5.72 | −1.33 |
2 | 10 | −3.55 | −36.23 | 23.67 | 16.26 | −1.65 |
3 | 8 | 10.03 | −0.01 | 0.00 | 0.05 | 0.00 |
4 | 6 | 17.42 | −19.98 | 5.60 | 15.01 | −0.67 |
5 | 9 | 28.73 | −25.53 | 41.89 | 14.33 | −3.45 |
6 | 5 | 31.17 | −27.30 | 8.09 | 18.01 | −3.54 |
7 | 1 | 33.43 | −21.47 | 21.40 | 22.06 | −2.42 |
8 | 4 | 183.74 | −33.69 | 303.96 | 2.38 | −4.28 |
9 | 2 | 508.87 | −22.98 | 645.31 | 15.89 | −7.35 |
10 | 7 | 1460.30 | −73.92 | 1947.38 | −1.23 | −6.66 |
Vaccine Complex | Interactive Residues |
---|---|
MHC-I | ASN 42, ALA 59, ASN 131, ASP 276, ASN 218, ASN 110, GLU 104, GLY 182, GLN 187, GLY 240, GLU 307, HIS 34, ILE 138, ILE 234, LYS162, LYS 5, LEU 13, MET 58, PHE 150, PRO 170, PRO 269, TYR 148, TYR 33, THR 49, VAL 206, VAL 71 |
MHC-II | ASP 43, ASP 178, ALA 159, ASP 290, ALA 53, ARG 56, GLY 203, GLY 268, GLU 247, GLN 77, GLY 200, GLN 175, HIS 20, LEU 52, LYS 84, PRO 251, SER 195, SER 81, TYR 223, TYR 166, TYR 287 |
TLR-4 | ASP 28, ALA 59, ARG 94, ALA 119, ASP 144, ASN 302, ASP 320, CYS 30, CYS 107, GLY 184, GLY 256, GLY 296, ILE 45, ILE 68, ILU 133, LYS 162, LYS 315, LEU 200, PHE 10, THR 99, TRP 109, TYR 275VAL 71, VAL 206 |
Energy Parameter | TLR-4-Vaccine Complex | MHC-I-Vaccine Complex | MHC-II-Vaccine Complex |
---|---|---|---|
MM-GBSA | |||
VDWAALS | −280.47 | −214.36 | −194.85 |
Electrostatic | −172.96 | −146.39 | −105.61 |
Delta G solv | 40.00 | 49.74 | 30.00 |
Delta Total | −413.43 | −311.01 | −270.46 |
MM-PBSA | |||
VDWAALS | −280.47 | −214.36 | −194.85 |
EEL | −172.96 | −146.39 | −105.61 |
Delta G solv | 39.20 | 46.20 | 28.64 |
Delta Total | −414.23 | −314.55 | −271.82 |
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Attar, R.; Alatawi, E.A.; Aba Alkhayl, F.F.; Alharbi, K.N.; Allemailem, K.S.; Almatroudi, A. Immunoinformatics and Biophysics Approaches to Design a Novel Multi-Epitopes Vaccine Design against Staphylococcus auricularis. Vaccines 2022, 10, 637. https://doi.org/10.3390/vaccines10050637
Attar R, Alatawi EA, Aba Alkhayl FF, Alharbi KN, Allemailem KS, Almatroudi A. Immunoinformatics and Biophysics Approaches to Design a Novel Multi-Epitopes Vaccine Design against Staphylococcus auricularis. Vaccines. 2022; 10(5):637. https://doi.org/10.3390/vaccines10050637
Chicago/Turabian StyleAttar, Roba, Eid A. Alatawi, Faris F. Aba Alkhayl, Khloud Nawaf Alharbi, Khaled S. Allemailem, and Ahmad Almatroudi. 2022. "Immunoinformatics and Biophysics Approaches to Design a Novel Multi-Epitopes Vaccine Design against Staphylococcus auricularis" Vaccines 10, no. 5: 637. https://doi.org/10.3390/vaccines10050637
APA StyleAttar, R., Alatawi, E. A., Aba Alkhayl, F. F., Alharbi, K. N., Allemailem, K. S., & Almatroudi, A. (2022). Immunoinformatics and Biophysics Approaches to Design a Novel Multi-Epitopes Vaccine Design against Staphylococcus auricularis. Vaccines, 10(5), 637. https://doi.org/10.3390/vaccines10050637