by davila7
为分子数据构建机器学习模型需要将化学结构转换为数值表示。Molfeat提供100多种特征化器,包括ECFP、MACCS、描述符以及如ChemBERTa等预训练变换器,以简化QSAR建模和虚拟筛选。
1. 打开 Claude 聊天界面
2. 点击下方 "📋 复制" 按钮
3. 粘贴到 Claude 聊天框中并发送
4. 输入 "使用 molfeat 技能" 开始使用
=== molfeat 技能 === 作者: davila7 描述: 为分子数据构建机器学习模型需要将化学结构转换为数值表示。Molfeat提供100多种特征化器,包括ECFP、MACCS、描述符以及如ChemBERTa等预训练变换器,以简化QSAR建模和虚拟筛选。 使用方法: 1. 调用技能: "使用 molfeat 技能" 2. 提供相关信息: 根据技能要求提供必要参数 3. 查看结果: 技能会返回处理结果 示例: "使用 molfeat 技能,帮我分析一下这段代码"
这种方法适用于所有 Claude 用户,不需要安装额外工具。
productivity
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Molfeat is a comprehensive Python library for molecular featurization that unifies 100+ pre-trained embeddings and hand-crafted featurizers. Convert chemical structures (SMILES strings or RDKit molecules) into numerical representations for machine learning tasks including QSAR modeling, virtual screening, similarity searching, and deep learning applications. Features fast parallel processing, scikit-learn compatible transformers, and built-in caching.
This skill should be used when working with:
uv pip install molfeat
# With all optional dependencies
uv pip install "molfeat[all]"
Optional dependencies for specific featurizers:
molfeat[dgl] - GNN models (GIN variants)molfeat[graphormer] - Graphormer modelsmolfeat[transformer] - ChemBERTa, ChemGPT, MolT5molfeat[fcd] - FCD descriptorsmolfeat[map4] - MAP4 fingerprintsMolfeat organizes featurization into three hierarchical classes:
molfeat.calc)Callable objects that convert individual molecules into feature vectors. Accept RDKit Chem.Mol objects or SMILES strings.
Use calculators for:
Example:
from molfeat.calc import FPCalculator
calc = FPCalculator("ecfp", radius=3, fpSize=2048)
features = calc("CCO") # Returns numpy array (2048,)
molfeat.trans)Scikit-learn compatible transformers that wrap calculators for batch processing with parallelization.
Use transformers for:
Example:
from molfeat.trans import MoleculeTransformer
from molfeat.calc import FPCalculator
transformer = MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1)
features = transformer(smiles_list) # Parallel processing
molfeat.trans.pretrained)Specialized transformers for deep learning models with batched inference and caching.
Use pretrained transformers for:
Example:
from molfeat.trans.pretrained import PretrainedMolTransformer
transformer = PretrainedMolTransformer("ChemBERTa-77M-MLM", n_jobs=-1)
embeddings = transformer(smiles_list) # Deep learning embeddings
import datamol as dm
from molfeat.calc import FPCalculator
from molfeat.trans import MoleculeTransformer
# Load molecular data
smiles = ["CCO", "CC(=O)O", "c1ccccc1", "CC(C)O"]
# Create calculator and transformer
calc = FPCalculator("ecfp", radius=3)
transformer = MoleculeTransformer(calc, n_jobs=-1)
# Featurize molecules
features = transformer(smiles)
print(f"Shape: {features.shape}") # (4, 2048)
# Save featurizer configuration for reproducibility
transformer.to_state_yaml_file("featurizer_config.yml")
# Reload exact configuration
loaded = MoleculeTransformer.from_state_yaml_file("featurizer_config.yml")
# Process dataset with potentially invalid SMILES
transformer = MoleculeTransformer(
calc,
n_jobs=-1,
ignore_errors=True, # Continue on failures
verbose=True # Log error details
)
features = transformer(smiles_with_errors)
# Returns None for failed molecules
Start with fingerprints:
# ECFP - Most popular, general-purpose
FPCalculator("ecfp", radius=3, fpSize=2048)
# MACCS - Fast, good for scaffold hopping
FPCalculator("maccs")
# MAP4 - Efficient for large-scale screening
FPCalculator("map4")
For interpretable models:
# RDKit 2D descriptors (200+ named properties)
from molfeat.calc import RDKitDescriptors2D
RDKitDescriptors2D()
# Mordred (1800+ comprehensive descriptors)
from molfeat.calc import MordredDescriptors
MordredDescriptors()
Combine multiple featurizers:
from molfeat.trans import FeatConcat
concat = FeatConcat([
FPCalculator("maccs"), # 167 dimensions
FPCalculator("ecfp") # 2048 dimensions
]) # Result: 2215-dimensional combined features
Transformer-based embeddings:
# ChemBERTa - Pre-trained on 77M PubChem compounds
PretrainedMolTransformer("ChemBERTa-77M-MLM")
# ChemGPT - Autoregressive language model
PretrainedMolTransformer("ChemGPT-1.2B")
Graph neural networks:
# GIN models with different pre-training objectives
PretrainedMolTransformer("gin-supervised-masking")
PretrainedMolTransformer("gin-supervised-infomax")
# Graphormer for quantum chemistry
PretrainedMolTransformer("Graphormer-pcqm4mv2")
# ECFP - General purpose, most widely used
FPCalculator("ecfp")
# MACCS - Fast, scaffold-based similarity
FPCalculator("maccs")
# MAP4 - Efficient for large databases
FPCalculator("map4")
# USR/USRCAT - 3D shape similarity
from molfeat.calc import USRDescriptors
USRDescriptors()
# FCFP - Functional group based
FPCalculator("fcfp")
# CATS - Pharmacophore pair distributions
from molfeat.calc import CATSCalculator
CATSCalculator(mode="2D")
# Gobbi - Explicit pharmacophore features
FPCalculator("gobbi2D")
from molfeat.trans import MoleculeTransformer
from molfeat.calc import FPCalculator
from sklearn.ensemble import RandomForestRegressor
from sklearn.model_selection import cross_val_score
# Featurize molecules
transformer = MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1)
X = transformer(smiles_train)
# Train model
model = RandomForestRegressor(n_estimators=100)
scores = cross_val_score(model, X, y_train, cv=5)
print(f"R² = {scores.mean():.3f}")
# Save configuration for deployment
transformer.to_state_yaml_file("production_featurizer.yml")
from sklearn.ensemble import RandomForestClassifier
# Train on known actives/inactives
transformer = MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1)
X_train = transformer(train_smiles)
clf = RandomForestClassifier(n_estimators=500)
clf.fit(X_train, train_labels)
# Screen large library
X_screen = transformer(screening_library) # e.g., 1M compounds
predictions = clf.predict_proba(X_screen)[:, 1]
# Rank and select top hits
top_indices = predictions.argsort()[::-1][:1000]
top_hits = [screening_library[i] for i in top_indices]
from sklearn.metrics.pairwise import cosine_similarity
# Query molecule
calc = FPCalculator("ecfp")
query_fp = calc(query_smiles).reshape(1, -1)
# Database fingerprints
transformer = MoleculeTransformer(calc, n_jobs=-1)
database_fps = transformer(database_smiles)
# Compute similarity
similarities = cosine_similarity(query_fp, database_fps)[0]
top_similar = similarities.argsort()[-10:][::-1]
from sklearn.pipeline import Pipeline
from sklearn.ensemble import RandomForestClassifier
# Create end-to-end pipeline
pipeline = Pipeline([
('featurizer', MoleculeTransformer(FPCalculator("ecfp"), n_jobs=-1)),
('classifier', RandomForestClassifier(n_estimators=100))
])
# Train and predict directly on SMILES
pipeline.fit(smiles_train, y_train)
predictions = pipeline.predict(smiles_test)
featurizers = {
'ECFP': FPCalculator("ecfp"),
'MACCS': FPCalculator("maccs"),
'Descriptors': RDKitDescriptors2D(),
'ChemBERTa': PretrainedMolTransformer("ChemBERTa-77M-MLM")
}
results = {}
for name, feat in featurizers.items():
transformer = MoleculeTransformer(feat, n_jobs=-1)
X = transformer(smiles)
# Evaluate with your ML model
score = evaluate_model(X, y)
results[name] = score
Use the ModelStore to explore all available featurizers:
from molfeat.store.modelstore import ModelStore
store = ModelStore()
# List all available models
all_models = store.available_models
print(f"Total featurizers: {len(all_models)}")
# Search for specific models
chemberta_models = store.search(name="ChemBERTa")
for model in chemberta_models:
print(f"- {model.name}: {model.description}")
# Get usage information
model_card = store.search(name="ChemBERTa-77M-MLM")[0]
model_card.usage() # Display usage examples
# Load model
transformer = store.load("ChemBERTa-77M-MLM")
class CustomTransformer(MoleculeTransformer):
def preprocess(self, mol):
"""Custom preprocessing pipeline"""
if isinstance(mol, str):
mol = dm.to_mol(mol)
mol = dm.standardize_mol(mol)
mol = dm.remove_salts(mol)
return mol
transformer = CustomTransformer(FPCalculator("ecfp"), n_jobs=-1)
def featurize_in_chunks(smiles_list, transformer, chunk_size=10000):
"""Process large datasets in chunks to manage memory"""
all_features = []
for i in range(0, len(smiles_list), chunk_size):
chunk = smiles_list[i:i+chunk_size]
features = transformer(chunk)
all_features.append(features)
return np.vstack(all_features)
import pickle
cache_file = "embeddings_cache.pkl"
transformer = PretrainedMolTransformer("ChemBERTa-77M-MLM", n_jobs=-1)
try:
with open(cache_file, "rb") as f:
embeddings = pickle.load(f)
except FileNotFoundError:
embeddings = transformer(smiles_list)
with open(cache_file, "wb") as f:
pickle.dump(embeddings, f)
n_jobs=-1 to utilize all CPU coresdtype=np.float32 when precision allowsignore_errors=True for large datasetsQuick reference for frequently used featurizers:
| Featurizer | Type | Dimensions | Speed | Use Case |
|---|---|---|---|---|
ecfp | Fingerprint | 2048 | Fast | General purpose |
maccs | Fingerprint | 167 | Very fast | Scaffold similarity |
desc2D | Descriptors | 200+ | Fast | Interpretable models |
mordred | Descriptors | 1800+ | Medium | Comprehensive features |
map4 | Fingerprint | 1024 | Fast | Large-scale screening |
ChemBERTa-77M-MLM | Deep learning | 768 | Slow* | Transfer learning |
gin-supervised-masking | GNN | Variable | Slow* | Graph-based models |
*First run is slow; subsequent runs benefit from caching
This skill includes comprehensive reference documentation:
Complete API documentation covering:
molfeat.calc - All calculator classes and parametersmolfeat.trans - Transformer classes and methodsmolfeat.store - ModelStore usageWhen to load: Reference when implementing specific calculators, understanding transformer parameters, or integrating with scikit-learn/PyTorch.
Comprehensive catalog of all 100+ featurizers organized by category:
When to load: Reference when selecting the optimal featurizer for a specific task, exploring available options, or understanding featurizer characteristics.
Search tip: Use grep to find specific featurizer types:
grep -i "chembert" references/available_featurizers.md
grep -i "pharmacophore" references/available_featurizers.md
Practical code examples for common scenarios:
When to load: Reference when implementing specific workflows, troubleshooting issues, or learning molfeat patterns.
Enable error handling to skip invalid SMILES:
transformer = MoleculeTransformer(
calc,
ignore_errors=True,
verbose=True
)
Process in chunks or use streaming approaches for datasets > 100K molecules.
Some models require additional packages. Install specific extras:
uv pip install "molfeat[transformer]" # For ChemBERTa/ChemGPT
uv pip install "molfeat[dgl]" # For GIN models
Save exact configurations and document versions:
transformer.to_state_yaml_file("config.yml")
import molfeat
print(f"molfeat version: {molfeat.__version__}")
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