skills/43-wentorai-research-plugins/skills/domains/biomedical/alphafold-api/SKILL.md
Query AlphaFold protein structure predictions by UniProt accession
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research alphafold-apiInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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The AlphaFold DB, maintained by EMBL-EBI and DeepMind, provides open access to over 200 million protein structure predictions. The REST API enables programmatic lookup of predicted structures, confidence metrics (pLDDT, PAE), and downloadable structure files (PDB, mmCIF, BinaryCIF) keyed on UniProt accessions. Free, no authentication required.
None. All endpoints are publicly accessible without API keys or tokens.
Base URL: https://alphafold.ebi.ac.uk/api
Retrieves all AlphaFold models for a given UniProt accession or model ID.
curl "https://alphafold.ebi.ac.uk/api/prediction/P04637"
Response (first entry, abbreviated):
[
{
"entryId": "AF-P04637-F1",
"uniprotAccession": "P04637",
"uniprotId": "P53_HUMAN",
"uniprotDescription": "Cellular tumor antigen p53",
"gene": "TP53",
"organismScientificName": "Homo sapiens",
"taxId": 9606,
"globalMetricValue": 75.06,
"fractionPlddtVeryHigh": 0.527,
"fractionPlddtConfident": 0.071,
"fractionPlddtLow": 0.104,
"fractionPlddtVeryLow": 0.298,
"latestVersion": 6,
"modelCreatedDate": "2025-08-01T00:00:00Z",
"sequenceStart": 1,
"sequenceEnd": 393,
"pdbUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-model_v6.pdb",
"cifUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-model_v6.cif",
"bcifUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-model_v6.bcif",
"paeImageUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-predicted_aligned_error_v6.png",
"paeDocUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-predicted_aligned_error_v6.json",
"plddtDocUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-confidence_v6.json",
"amAnnotationsUrl": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-aa-substitutions.csv"
}
]
Download the per-residue pLDDT confidence JSON linked in plddtDocUrl:
curl "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-confidence_v6.json"
Response (truncated):
{
"residueNumber": [1, 2, 3, 4, 5],
"confidenceScore": [40.66, 44.53, 49.97, 48.59, 44.88],
"confidenceCategory": ["D", "D", "D", "D", "D"]
}
Categories: A (Very High, >90), B (Confident, 70-90), C (Low, 50-70), D (Very Low, <50).
Returns model metadata following the 3D-Beacons data standard:
curl "https://alphafold.ebi.ac.uk/api/uniprot/summary/P04637.json"
Response (abbreviated):
{
"uniprot_entry": {
"ac": "P04637",
"id": "P53_HUMAN",
"sequence_length": 393
},
"structures": [
{
"summary": {
"model_identifier": "AF-P04637-F1",
"model_url": "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-model_v6.cif",
"provider": "AlphaFold DB",
"confidence_type": "pLDDT",
"confidence_avg_local_score": 75.06,
"coverage": 1.0
}
}
]
}
Structure files are available at the URLs returned in prediction responses:
# PDB format
curl -O "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-model_v6.pdb"
# mmCIF format
curl -O "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-model_v6.cif"
# Predicted Aligned Error (PAE) matrix
curl -O "https://alphafold.ebi.ac.uk/files/AF-P04637-F1-predicted_aligned_error_v6.json"
| Field | Type | Description |
|-------|------|-------------|
| entryId | string | AlphaFold model ID (e.g., AF-P04637-F1) |
| uniprotAccession | string | UniProt accession code |
| gene | string | Gene symbol |
| globalMetricValue | float | Average pLDDT score (0-100) |
| fractionPlddtVeryHigh | float | Fraction of residues with pLDDT > 90 |
| fractionPlddtConfident | float | Fraction with pLDDT 70-90 |
| fractionPlddtLow | float | Fraction with pLDDT 50-70 |
| fractionPlddtVeryLow | float | Fraction with pLDDT < 50 |
| pdbUrl | string | Direct download URL for PDB file |
| cifUrl | string | Direct download URL for mmCIF file |
| paeDocUrl | string | URL for predicted aligned error JSON |
| plddtDocUrl | string | URL for per-residue confidence JSON |
| latestVersion | int | Model version number |
The AlphaFold DB API has no published per-request rate limits. EMBL-EBI's general fair use policy applies: usage that degrades service for others may result in blocking. For bulk downloads (entire proteomes), use the FTP archive at https://ftp.ebi.ac.uk/pub/databases/alphafold/ rather than repeated API calls.
import requests
def get_alphafold_prediction(uniprot_id: str) -> dict:
"""Fetch AlphaFold structure prediction for a UniProt accession."""
url = f"https://alphafold.ebi.ac.uk/api/prediction/{uniprot_id}"
resp = requests.get(url)
resp.raise_for_status()
entries = resp.json()
# Return the canonical (first) entry
return entries[0] if entries else None
def get_confidence_scores(prediction: dict) -> dict:
"""Download per-residue pLDDT confidence scores."""
resp = requests.get(prediction["plddtDocUrl"])
resp.raise_for_status()
return resp.json()
def download_structure(prediction: dict, fmt: str = "pdb",
output_dir: str = ".") -> str:
"""Download structure file in pdb, cif, or bcif format."""
url_key = {"pdb": "pdbUrl", "cif": "cifUrl", "bcif": "bcifUrl"}[fmt]
url = prediction[url_key]
filename = url.split("/")[-1]
path = f"{output_dir}/{filename}"
resp = requests.get(url)
resp.raise_for_status()
with open(path, "wb") as f:
f.write(resp.content)
return path
# Example: fetch p53 structure and assess quality
pred = get_alphafold_prediction("P04637")
print(f"Gene: {pred['gene']} ({pred['uniprotDescription']})")
print(f"Organism: {pred['organismScientificName']}")
print(f"Average pLDDT: {pred['globalMetricValue']}")
print(f"Very high confidence: {pred['fractionPlddtVeryHigh']:.1%}")
# Download per-residue scores
scores = get_confidence_scores(pred)
high_conf = [i+1 for i, c in enumerate(scores["confidenceCategory"])
if c in ("A", "B")]
print(f"High-confidence residues: {len(high_conf)}/{len(scores['residueNumber'])}")
# Download PDB file
path = download_structure(pred, fmt="pdb")
print(f"Structure saved to: {path}")
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