Claude-skill-registry admet-prediction
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/admet-prediction" ~/.claude/skills/majiayu000-claude-skill-registry-admet-prediction && rm -rf "$T"
manifest:
skills/data/admet-prediction/SKILL.mdsafety · automated scan (low risk)
This is a pattern-based risk scan, not a security review. Our crawler flagged:
- pip install
Always read a skill's source content before installing. Patterns alone don't mean the skill is malicious — but they warrant attention.
source content
ADMET Prediction Skill
Predict ADMET properties to prioritize compounds for development.
Quick Start
/admet "CC1=CC=C(C=C1)CNC" --full /pk-prediction --library compounds.sdf --threshold 0.7 /toxicity-screen CHEMBL210 --include hERG,DILI,Ames
What's Included
| Property | Prediction | Model |
|---|---|---|
| Absorption | Caco-2, HIA, Pgp | ML/QSAR |
| Distribution | VDss, PPB, BBB | ML/QSAR |
| Metabolism | CYP inhibition, clearance | ML/QSAR |
| Excretion | Clearance, half-life | ML/QSAR |
| Toxicity | hERG, DILI, Ames, mutagenicity | ML/QSAR |
Output Structure
# ADMET Profile: CHEMBL210 (Osimertinib) ## Summary | Property | Value | Status | |----------|-------|--------| | Drug-likeness | Pass | ✓ | | Lipinski Ro5 | 0 violations | ✓ | | VEBER | Pass | ✓ | | PAINS | 0 alerts | ✓ | | Brenk | 0 alerts | ✓ | ## Absorption | Property | Prediction | Confidence | |----------|------------|-------------| | HIA | 98% | High | | Caco-2 | 15.2 × 10⁻⁶ cm/s | High | | Pgp substrate | Yes | Medium | | F30% | 65% | Medium | ## Distribution | Property | Prediction | Confidence | |----------|------------|-------------| | VDss | 5.2 L/kg | Medium | | PPB | 95% | High | | BBB | Yes | High | | CNS MPO | 5.5 | Good | ## Metabolism | Property | Prediction | Confidence | |----------|------------|-------------| | CYP3A4 substrate | Yes | High | | CYP3A4 inhibitor | Yes | Medium | | CYP2D6 inhibitor | No | High | | CYP2C9 inhibitor | No | Medium | | Clearance | 8.5 mL/min/kg | Low | ## Excretion | Property | Prediction | Confidence | |----------|------------|-------------| | Renal clearance | 10% | Medium | | Half-life | 48 hours | High | ## Toxicity | Property | Prediction | Confidence | |----------|------------|-------------| | hERG inhibition | No | High | | DILI | Concern | Medium | | Ames mutagenicity | Negative | High | | Carcinogenicity | Negative | Medium | | Respiratory toxicity | No | Low | ## Recommendations **Strengths**: - Good oral bioavailability (65%) - Brain penetration (BBB permeable) - Low hERG risk **Concerns**: - DILI concern - monitor in preclinical studies - CYP3A4 inhibition - potential DDIs **Overall**: Good ADMET profile. Progress to in vivo PK.
Property Ranges
Drug-Likeness
| Rule | Pass Criteria |
|---|---|
| Lipinski Ro5 | ≤ 1 violation |
| Veber | RotB ≤ 10, PSA ≤ 140 Ų |
| Egan | LogP ≤ 5, PSA ≤ 131 Ų |
| MDDR | MW ≤ 600, LogP ≤ 5 |
Absorption
| Property | Good | Moderate | Poor |
|---|---|---|---|
| HIA | >80% | 40-80% | <40% |
| Caco-2 | >10 | 1-10 | <1 |
| F30% | >70% | 30-70% | <30% |
Distribution
| Property | Good | Moderate | Poor |
|---|---|---|---|
| VDss | 0.3-5 L/kg | <0.3 or >5 | Extreme |
| PPB | <90% | 90-95% | >95% |
| BBB | LogBB > 0.3 | -0.3 to 0.3 | < -0.3 |
Toxicity Alerts
| Alert | Action |
|---|---|
| hERG inhibition | Cardiotoxicity risk |
| DILI positive | Hepatotoxicity risk |
| Ames positive | Mutagenicity risk |
| PAINS | Assay interference |
| Structural alerts | Investigate further |
Running Scripts
# Full ADMET profile python scripts/admet_predict.py --smiles "CC1=CC=C..." --full # Batch prediction python scripts/admet_predict.py --library compounds.sdf --output results.csv # Specific properties python scripts/admet_predict.py --smiles "..." --properties hERG,DILI,CYP # Filter by criteria python scripts/admet_filter.py --library compounds.sdf --rules lipinski,veber
Requirements
pip install rdkit # Optional for advanced models pip install deepchem admet-x
Reference
- reference/admet-properties.md - Detailed property reference
- reference/toxicity-alerts.md - Toxicity alerts reference
- reference/pk-models.md - PK prediction models
Best Practices
- Use multiple models: Consensus predictions more reliable
- Check confidence: Low confidence = experimental verification needed
- Consider chemistry: Novel structures less reliable
- Iterative design: Use predictions to guide synthesis
- Validate early: Confirm key predictions experimentally
Common Pitfalls
| Pitfall | Solution |
|---|---|
| Over-reliance on predictions | Experimental validation required |
| Ignoring confidence | Check model applicability domain |
| Single model only | Use consensus of multiple models |
| Ignoring chemistry | Novel scaffolds = uncertain predictions |
| Late-stage testing | Early ADMET screening saves time |
Limitations
- Models are approximate: Errors common
- Novel chemistry: Less reliable for new scaffolds
- In vitro-in vivo gap: Predictions don't always translate
- Species differences: Human predictions based on animal data
- Complex mechanisms: Some toxicity not predicted