Iedb Prediction Tools¶
Configuration File: iedb_prediction_tools.json
Tool Type: Local
Tools Count: 3
This page contains all tools defined in the iedb_prediction_tools.json configuration file.
Available Tools¶
IEDB_predict_bcell_epitopes (Type: IEDBPredictionTool)¶
Predict linear B-cell (antibody) epitopes along a protein sequence using the IEDB B-cell tool (de…
IEDB_predict_bcell_epitopes tool specification
Tool Information:
Name:
IEDB_predict_bcell_epitopesType:
IEDBPredictionToolDescription: Predict linear B-cell (antibody) epitopes along a protein sequence using the IEDB B-cell tool (default BepiPred). Scores every residue and returns the contiguous regions predicted to be antibody-accessible epitopes, plus the per-residue scores. Use for vaccine antigen design and antibody target selection. Example: a viral surface protein sequence returns its predicted surface-exposed epitope stretches.
Parameters:
sequence(string) (required) Protein amino-acid sequence (single-letter codes), e.g. an antigen of interest.method([‘string’, ‘null’]) (optional) Prediction method: ‘Bepipred’ (default, BepiPred-2.0), ‘Emini’ (surface accessibility), ‘Kolaskar-Tongaonkar’ (antigenicity), ‘Parker’ (hydrophilicity), ‘Chou-Fasman’ (beta-turn).
Example Usage:
query = {
"name": "IEDB_predict_bcell_epitopes",
"arguments": {
"sequence": "example_value"
}
}
result = tu.run(query)
IEDB_predict_mhci_binding (Type: IEDBPredictionTool)¶
Predict MHC class I peptide binding using NetMHCpan via the IEDB Analysis Resource API. Given a p…
IEDB_predict_mhci_binding tool specification
Tool Information:
Name:
IEDB_predict_mhci_bindingType:
IEDBPredictionToolDescription: Predict MHC class I peptide binding using NetMHCpan via the IEDB Analysis Resource API. Given a protein sequence and HLA allele, predicts which peptides will bind and be presented on the cell surface. Returns peptides ranked by percentile rank (lower = stronger binding). Essential for vaccine design, neoantigen prediction, and epitope mapping. Supports human HLA-A/B/C and mouse H-2 alleles.
Parameters:
sequence(string) (required) Protein sequence (amino acid letters, e.g., ‘TYQRTRALVFQRTRALKMFAL’). Multiple peptides can be concatenated.allele(string) (optional) MHC allele name. Human: ‘HLA-A*02:01’, ‘HLA-B*07:02’. Mouse: ‘H-2-Kd’, ‘H-2-Db’. Default: HLA-A*02:01method(string) (optional) Prediction method. ‘netmhcpan_el’ (recommended, eluted ligand), ‘netmhcpan_ba’ (binding affinity), ‘ann’, ‘smm’length(integer) (optional) Peptide length (8-14 for MHC-I, typically 9)
Example Usage:
query = {
"name": "IEDB_predict_mhci_binding",
"arguments": {
"sequence": "example_value"
}
}
result = tu.run(query)
IEDB_predict_mhcii_binding (Type: IEDBPredictionTool)¶
Predict MHC class II peptide binding using NetMHCIIpan via the IEDB Analysis Resource API. Predic…
IEDB_predict_mhcii_binding tool specification
Tool Information:
Name:
IEDB_predict_mhcii_bindingType:
IEDBPredictionToolDescription: Predict MHC class II peptide binding using NetMHCIIpan via the IEDB Analysis Resource API. Predicts CD4+ T helper cell epitopes. Given a protein sequence and HLA-DR/DP/DQ allele, returns predicted binding peptides ranked by percentile rank. Essential for vaccine design (helper epitopes) and autoimmunity research.
Parameters:
sequence(string) (required) Protein sequence (amino acid letters)allele(string) (optional) MHC-II allele. Examples: ‘HLA-DRB1*01:01’, ‘HLA-DRB1*15:01’. Default: HLA-DRB1*01:01method(string) (optional) Prediction method: ‘netmhciipan_el’ (recommended), ‘netmhciipan_ba’, ‘nn_align’
Example Usage:
query = {
"name": "IEDB_predict_mhcii_binding",
"arguments": {
"sequence": "example_value"
}
}
result = tu.run(query)