Computer-Aided Analysis of West Sub-Saharan Africa Snakes Venom towards the Design of Epitope-Based Poly-Specific Antivenoms
Abstract
:1. Introduction
2. Results
3. Discussion
4. Methods
4.1. Collection of Protein Sequences from West Sub-Saharan Snakes
4.2. Clustering, Filtering and Multiple Sequence Alignments (MSAs)
4.3. Conservation Analysis
4.4. PDB BLASTP and Modeling
4.5. B-Cell Epitopes Prediction and Features for Epitopes Characterization and Triage
4.6. Epitope Scoring and Selection
- For predicted epitopes in which their best tier value (Table 2) was between 1 and 4 inclusive, three points; for tiers 5 and 6, two points; and for tier 7, one point.
- If a predicted epitope covered two species, one extra point was given. If it covered three or more, two extra points were given.
- If the cluster depth (number of peptide sequences within a given cluster) was higher than 10, two extra points were given. If it was between 5 and 10, one extra point was given.
- If any predicted epitope was found inside an IEDB epitope or the other way around, three extra points were given.
4.7. Genetic Construct and Codon Optimization
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Species | Common Name | Taxid | Family 1 | Cat. 2 |
---|---|---|---|---|
Bitis arietans | Puff adder | 8692 | V | 1 |
Bitis gabonica | East African Gaboon viper | 8694 | V | 1 |
Bitis nasicornis | Rhinoceros viper | 8695 | V | 1 |
Bitis rhinoceros | West African Gaboon viper | 715877 | V | 1 |
Cerastes cerastes | Horned viper | 8697 | V | 1 |
Dendroaspis jamesoni | Jameson’s mamba | 8623 | E | 1 |
Dendroaspis polylepis | Black mamba | 8624 | E | 1 |
Dendroaspis viridis | Western green mamba | 8621 | E | 1 |
Echis jogeri | Joger’s carpet viper | 696809 | V | 1 |
Echis leucogaster | White-bellied carpet viper | 504457 | V | 1 |
Echis ocellatus | West African carpet viper | 99586 | V | 1 |
Naja haje | Egyptian cobra | 8639 | E | 1 |
Naja katiensis | West African brown spitting cobra | 409859 | E | 1 |
Naja melanoleuca | Forest cobra | 8643 | E | 1 |
Naja nigricollis | Black-necked spitting cobra | 8654 | E | 1 |
Naja senegalensis | Senegalese cobra | 862238 | E | 1 |
Atheris broadleyi 3 | Broadley’s bush viper | NA | V | 2 |
Atheris chlorechis | West African bush viper | 110216 | V | 2 |
Atheris squamigera | Variable bush viper | 110225 | V | 2 |
Atractaspis irregularis | Variable burrowing asp | 512568 | L | 2 |
Dispholidus typus | Boomslang | 46295 | C | 2 |
Naja annulata | Banded water cobra | 8609 | E | 2 |
Naja nubiae | Nubian spitting cobra | 186441 | E | 2 |
Pseudohaje goldii | Gold’s tree cobra | 1545503 | E | 2 |
Pseudohaje nigra 3 | Black tree cobra | NA | E | 2 |
Thelotornis kirtlandii | Forest vine or twig snake | 292880 | C | 2 |
Tier | BepiPred2 | Hydrophobicity | RSA | Flexibility |
---|---|---|---|---|
Tier 1 | X | X | X | X |
Tier 2 | X | X | X | |
Tier 3 | X | X | X | |
Tier 4 | X | X | ||
Tier 5 | X | X | X | |
Tier 6 | X | X | ||
Tier 7 | X | X |
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Ros-Lucas, A.; Bigey, P.; Chippaux, J.-P.; Gascón, J.; Alonso-Padilla, J. Computer-Aided Analysis of West Sub-Saharan Africa Snakes Venom towards the Design of Epitope-Based Poly-Specific Antivenoms. Toxins 2022, 14, 418. https://doi.org/10.3390/toxins14060418
Ros-Lucas A, Bigey P, Chippaux J-P, Gascón J, Alonso-Padilla J. Computer-Aided Analysis of West Sub-Saharan Africa Snakes Venom towards the Design of Epitope-Based Poly-Specific Antivenoms. Toxins. 2022; 14(6):418. https://doi.org/10.3390/toxins14060418
Chicago/Turabian StyleRos-Lucas, Albert, Pascal Bigey, Jean-Philippe Chippaux, Joaquim Gascón, and Julio Alonso-Padilla. 2022. "Computer-Aided Analysis of West Sub-Saharan Africa Snakes Venom towards the Design of Epitope-Based Poly-Specific Antivenoms" Toxins 14, no. 6: 418. https://doi.org/10.3390/toxins14060418
APA StyleRos-Lucas, A., Bigey, P., Chippaux, J. -P., Gascón, J., & Alonso-Padilla, J. (2022). Computer-Aided Analysis of West Sub-Saharan Africa Snakes Venom towards the Design of Epitope-Based Poly-Specific Antivenoms. Toxins, 14(6), 418. https://doi.org/10.3390/toxins14060418