| name | chembl-database |
| description | Query ChEMBL's bioactive molecules and drug discovery data. Search compounds by structure/properties, retrieve bioactivity data (IC50, Ki), find inhibitors, perform SAR studies, for medicinal chemistry. |
ChEMBL Database
Overview
ChEMBL is a manually curated database of bioactive molecules maintained by the European Bioinformatics Institute (EBI), containing over 2 million compounds, 19 million bioactivity measurements, 13,000+ drug targets, and data on approved drugs and clinical candidates. Access and query this data programmatically using the ChEMBL Python client for drug discovery and medicinal chemistry research.
When to Use This Skill
This skill should be used when:
- Compound searches: Finding molecules by name, structure, or properties
- Target information: Retrieving data about proteins, enzymes, or biological targets
- Bioactivity data: Querying IC50, Ki, EC50, or other activity measurements
- Drug information: Looking up approved drugs, mechanisms, or indications
- Structure searches: Performing similarity or substructure searches
- Cheminformatics: Analyzing molecular properties and drug-likeness
- Target-ligand relationships: Exploring compound-target interactions
- Drug discovery: Identifying inhibitors, agonists, or bioactive molecules
Installation and Setup
Python Client
The ChEMBL Python client is required for programmatic access:
uv pip install chembl_webresource_client
Basic Usage Pattern
from chembl_webresource_client.new_client import new_client
molecule = new_client.molecule
target = new_client.target
activity = new_client.activity
drug = new_client.drug
Core Capabilities
1. Molecule Queries
Retrieve by ChEMBL ID:
molecule = new_client.molecule
aspirin = molecule.get('CHEMBL25')
Search by name:
results = molecule.filter(pref_name__icontains='aspirin')
Filter by properties:
results = molecule.filter(
molecule_properties__mw_freebase__lte=500,
molecule_properties__alogp__lte=5
)
2. Target Queries
Retrieve target information:
target = new_client.target
egfr = target.get('CHEMBL203')
Search for specific target types:
kinases = target.filter(
target_type='SINGLE PROTEIN',
pref_name__icontains='kinase'
)
3. Bioactivity Data
Query activities for a target:
activity = new_client.activity
results = activity.filter(
target_chembl_id='CHEMBL203',
standard_type='IC50',
standard_value__lte=100,
standard_units='nM'
)
Get all activities for a compound:
compound_activities = activity.filter(
molecule_chembl_id='CHEMBL25',
pchembl_value__isnull=False
)
4. Structure-Based Searches
Similarity search:
similarity = new_client.similarity
similar = similarity.filter(
smiles='CC(=O)Oc1ccccc1C(=O)O',
similarity=85
)
Substructure search:
substructure = new_client.substructure
results = substructure.filter(smiles='c1ccccc1')
5. Drug Information
Retrieve drug data:
drug = new_client.drug
drug_info = drug.get('CHEMBL25')
Get mechanisms of action:
mechanism = new_client.mechanism
mechanisms = mechanism.filter(molecule_chembl_id='CHEMBL25')
Query drug indications:
drug_indication = new_client.drug_indication
indications = drug_indication.filter(molecule_chembl_id='CHEMBL25')
Query Workflow
Workflow 1: Finding Inhibitors for a Target
-
Identify the target by searching by name:
targets = new_client.target.filter(pref_name__icontains='EGFR')
target_id = targets[0]['target_chembl_id']
-
Query bioactivity data for that target:
activities = new_client.activity.filter(
target_chembl_id=target_id,
standard_type='IC50',
standard_value__lte=100
)
-
Extract compound IDs and retrieve details:
compound_ids = [act['molecule_chembl_id'] for act in activities]
compounds = [new_client.molecule.get(cid) for cid in compound_ids]
Workflow 2: Analyzing a Known Drug
-
Get drug information:
drug_info = new_client.drug.get('CHEMBL1234')
-
Retrieve mechanisms:
mechanisms = new_client.mechanism.filter(molecule_chembl_id='CHEMBL1234')
-
Find all bioactivities:
activities = new_client.activity.filter(molecule_chembl_id='CHEMBL1234')
Workflow 3: Structure-Activity Relationship (SAR) Study
-
Find similar compounds:
similar = new_client.similarity.filter(smiles='query_smiles', similarity=80)
-
Get activities for each compound:
for compound in similar:
activities = new_client.activity.filter(
molecule_chembl_id=compound['molecule_chembl_id']
)
-
Analyze property-activity relationships using molecular properties from results.
Filter Operators
ChEMBL supports Django-style query filters:
__exact - Exact match
__iexact - Case-insensitive exact match
__contains / __icontains - Substring matching
__startswith / __endswith - Prefix/suffix matching
__gt, __gte, __lt, __lte - Numeric comparisons
__range - Value in range
__in - Value in list
__isnull - Null/not null check
Data Export and Analysis
Convert results to pandas DataFrame for analysis:
import pandas as pd
activities = new_client.activity.filter(target_chembl_id='CHEMBL203')
df = pd.DataFrame(list(activities))
print(df['standard_value'].describe())
print(df.groupby('standard_type').size())
Performance Optimization
Caching
The client automatically caches results for 24 hours. Configure caching:
from chembl_webresource_client.settings import Settings
Settings.Instance().CACHING = False
Settings.Instance().CACHE_EXPIRE = 86400
Lazy Evaluation
Queries execute only when data is accessed. Convert to list to force execution:
results = molecule.filter(pref_name__icontains='aspirin')
results_list = list(results)
Pagination
Results are paginated automatically. Iterate through all results:
for activity in new_client.activity.filter(target_chembl_id='CHEMBL203'):
print(activity['molecule_chembl_id'])
Common Use Cases
Find Kinase Inhibitors
kinases = new_client.target.filter(
target_type='SINGLE PROTEIN',
pref_name__icontains='kinase'
)
for kinase in kinases[:5]:
activities = new_client.activity.filter(
target_chembl_id=kinase['target_chembl_id'],
standard_type='IC50',
standard_value__lte=50
)
Explore Drug Repurposing
drugs = new_client.drug.filter()
for drug in drugs[:10]:
mechanisms = new_client.mechanism.filter(
molecule_chembl_id=drug['molecule_chembl_id']
)
Virtual Screening
candidates = new_client.molecule.filter(
molecule_properties__mw_freebase__range=[300, 500],
molecule_properties__alogp__lte=5,
molecule_properties__hba__lte=10,
molecule_properties__hbd__lte=5
)
Resources
scripts/example_queries.py
Ready-to-use Python functions demonstrating common ChEMBL query patterns:
get_molecule_info() - Retrieve molecule details by ID
search_molecules_by_name() - Name-based molecule search
find_molecules_by_properties() - Property-based filtering
get_bioactivity_data() - Query bioactivities for targets
find_similar_compounds() - Similarity searching
substructure_search() - Substructure matching
get_drug_info() - Retrieve drug information
find_kinase_inhibitors() - Specialized kinase inhibitor search
export_to_dataframe() - Convert results to pandas DataFrame
Consult this script for implementation details and usage examples.
references/api_reference.md
Comprehensive API documentation including:
- Complete endpoint listing (molecule, target, activity, assay, drug, etc.)
- All filter operators and query patterns
- Molecular properties and bioactivity fields
- Advanced query examples
- Configuration and performance tuning
- Error handling and rate limiting
Refer to this document when detailed API information is needed or when troubleshooting queries.
Important Notes
Data Reliability
- ChEMBL data is manually curated but may contain inconsistencies
- Always check
data_validity_comment field in activity records
- Be aware of
potential_duplicate flags
Units and Standards
- Bioactivity values use standard units (nM, uM, etc.)
pchembl_value provides normalized activity (-log scale)
- Check
standard_type to understand measurement type (IC50, Ki, EC50, etc.)
Rate Limiting
- Respect ChEMBL's fair usage policies
- Use caching to minimize repeated requests
- Consider bulk downloads for large datasets
- Avoid hammering the API with rapid consecutive requests
Chemical Structure Formats
- SMILES strings are the primary structure format
- InChI keys available for compounds
- SVG images can be generated via the image endpoint
Additional Resources