bio-similarity-searching
$
npx mdskill add GPTomics/bioSkills/bio-similarity-searchingSearches for structurally similar compounds using RDKit fingerprints
- Finds analogs of query molecules in chemical libraries.
- Depends on RDKit and DataStructs Tanimoto coefficient APIs.
- Ranks candidates by fingerprint similarity scores or clusters via Butina algorithm.
- Returns ranked lists or clustered groups matching structural resemblance criteria.
SKILL.md
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---
name: bio-similarity-searching
description: Performs molecular similarity searches using Tanimoto coefficient on fingerprints via RDKit. Finds structurally similar compounds using ECFP or MACCS keys and clusters molecules by structural similarity using Butina clustering. Use when finding analogs of a query compound or clustering chemical libraries.
tool_type: python
primary_tool: RDKit
---
## Version Compatibility
Reference examples tested with: RDKit 2024.03+
Before using code patterns, verify installed versions match. If versions differ:
- Python: `pip show <package>` then `help(module.function)` to check signatures
If code throws ImportError, AttributeError, or TypeError, introspect the installed
package and adapt the example to match the actual API rather than retrying.
# Similarity Searching
**"Find compounds similar to my query molecule"** → Compute pairwise Tanimoto similarity on molecular fingerprints to rank a library by structural resemblance to a query, or cluster compounds by chemical similarity using Butina clustering.
- Python: `DataStructs.TanimotoSimilarity()`, `Butina.ClusterData()` (RDKit)
Find structurally similar molecules and cluster compound libraries.
## Tanimoto Similarity
```python
from rdkit import Chem, DataStructs
from rdkit.Chem import AllChem
# Generate fingerprints
mol1 = Chem.MolFromSmiles('CCO')
mol2 = Chem.MolFromSmiles('CCCO')
fp1 = AllChem.GetMorganFingerprintAsBitVect(mol1, radius=2, nBits=2048)
fp2 = AllChem.GetMorganFingerprintAsBitVect(mol2, radius=2, nBits=2048)
# Tanimoto similarity (0-1)
similarity = DataStructs.TanimotoSimilarity(fp1, fp2)
print(f'Tanimoto similarity: {similarity:.3f}')
```
## Similarity Thresholds
| Threshold | Interpretation |
|-----------|----------------|
| > 0.85 | Very similar (likely same scaffold) |
| > 0.70 | Similar (likely related series) |
| > 0.50 | Moderate similarity |
| < 0.50 | Dissimilar |
## Search Library Against Query
**Goal:** Find molecules structurally similar to a query compound within a library.
**Approach:** Generate fingerprints for the query and each library molecule, compute Tanimoto similarity, and return hits above a chosen threshold sorted by similarity.
```python
from rdkit import Chem, DataStructs
from rdkit.Chem import AllChem
def find_similar_molecules(query_smiles, library, threshold=0.7, fp_type='ecfp4'):
'''
Find molecules similar to query in library.
Args:
query_smiles: Query molecule SMILES
library: List of (smiles, name) tuples or SMILES list
threshold: Minimum Tanimoto similarity
fp_type: 'ecfp4', 'ecfp6', or 'maccs'
'''
query = Chem.MolFromSmiles(query_smiles)
if query is None:
raise ValueError('Invalid query SMILES')
# Generate query fingerprint
if fp_type == 'ecfp4':
query_fp = AllChem.GetMorganFingerprintAsBitVect(query, 2, nBits=2048)
elif fp_type == 'ecfp6':
query_fp = AllChem.GetMorganFingerprintAsBitVect(query, 3, nBits=2048)
else: # maccs
from rdkit.Chem import MACCSkeys
query_fp = MACCSkeys.GenMACCSKeys(query)
# Search library
hits = []
for item in library:
smiles = item[0] if isinstance(item, tuple) else item
name = item[1] if isinstance(item, tuple) and len(item) > 1 else smiles
mol = Chem.MolFromSmiles(smiles)
if mol is None:
continue
if fp_type == 'ecfp4':
lib_fp = AllChem.GetMorganFingerprintAsBitVect(mol, 2, nBits=2048)
elif fp_type == 'ecfp6':
lib_fp = AllChem.GetMorganFingerprintAsBitVect(mol, 3, nBits=2048)
else:
lib_fp = MACCSkeys.GenMACCSKeys(mol)
sim = DataStructs.TanimotoSimilarity(query_fp, lib_fp)
if sim >= threshold:
hits.append((smiles, name, sim))
return sorted(hits, key=lambda x: x[2], reverse=True)
```
## Bulk Similarity Search
```python
from rdkit import DataStructs
def bulk_similarity_search(query_fp, library_fps, threshold=0.7):
'''
Fast similarity search using bulk operations.
Args:
query_fp: Query fingerprint
library_fps: List of library fingerprints
threshold: Minimum similarity
'''
# BulkTanimotoSimilarity is faster for large libraries
similarities = DataStructs.BulkTanimotoSimilarity(query_fp, library_fps)
hits = [(i, sim) for i, sim in enumerate(similarities) if sim >= threshold]
return sorted(hits, key=lambda x: x[1], reverse=True)
```
## Butina Clustering
**Goal:** Group a compound library into clusters of structurally similar molecules.
**Approach:** Compute an all-vs-all Tanimoto distance matrix from fingerprints and apply Taylor-Butina clustering with a distance cutoff.
```python
from rdkit import Chem
from rdkit.ML.Cluster import Butina
def cluster_molecules(molecules, cutoff=0.4):
'''
Cluster molecules by Tanimoto similarity using Taylor-Butina algorithm.
Args:
molecules: List of RDKit mol objects
cutoff: Distance cutoff (1 - similarity threshold)
cutoff=0.4 means similarity threshold of 0.6
'''
# Generate fingerprints
fps = [AllChem.GetMorganFingerprintAsBitVect(m, 2, nBits=2048)
for m in molecules if m is not None]
# Calculate distance matrix (upper triangle)
n = len(fps)
dists = []
for i in range(1, n):
sims = DataStructs.BulkTanimotoSimilarity(fps[i], fps[:i])
dists.extend([1 - s for s in sims])
# Cluster
clusters = Butina.ClusterData(dists, n, cutoff, isDistData=True)
return clusters
# Usage
# clusters = cluster_molecules(molecules, cutoff=0.3) # 70% similarity
# print(f'Found {len(clusters)} clusters')
# for i, cluster in enumerate(clusters[:5]):
# print(f'Cluster {i}: {len(cluster)} molecules')
```
## Maximum Common Substructure
**Goal:** Identify the largest shared substructure across a set of molecules.
**Approach:** Use FindMCS with ring-matching constraints and a timeout to find the maximum common substructure as a SMARTS pattern.
```python
from rdkit.Chem import rdFMCS
def find_mcs(molecules, timeout=60):
'''Find maximum common substructure.'''
mcs = rdFMCS.FindMCS(
molecules,
timeout=timeout,
matchValences=False,
ringMatchesRingOnly=True
)
return mcs.smartsString, mcs.numAtoms, mcs.numBonds
# Get MCS as molecule for visualization
mcs_smarts, n_atoms, n_bonds = find_mcs(molecules)
mcs_mol = Chem.MolFromSmarts(mcs_smarts)
```
## Related Skills
- molecular-descriptors - Generate fingerprints for similarity
- substructure-search - Pattern-based searching
- molecular-io - Load molecules for searching
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