OpenClaw-Medical-Skills tooluniverse-binder-discovery
Discover novel small molecule binders for protein targets using structure-based and ligand-based approaches. Creates actionable reports with candidate compounds, ADMET profiles, and synthesis feasibility. Use when users ask to find small molecules for a target, identify novel binders, perform virtual screening, or need hit-to-lead compound identification.
git clone https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/tooluniverse-binder-discovery" ~/.claude/skills/freedomintelligence-openclaw-medical-skills-tooluniverse-binder-discovery && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/tooluniverse-binder-discovery" ~/.openclaw/skills/freedomintelligence-openclaw-medical-skills-tooluniverse-binder-discovery && rm -rf "$T"
skills/tooluniverse-binder-discovery/SKILL.mdSmall Molecule Binder Discovery Strategy
Systematic discovery of novel small molecule binders using 60+ ToolUniverse tools across druggability assessment, known ligand mining, similarity expansion, ADMET filtering, and synthesis feasibility.
KEY PRINCIPLES:
- Report-first approach - Create report file FIRST, then populate progressively
- Target validation FIRST - Confirm druggability before compound searching
- Multi-strategy approach - Combine structure-based and ligand-based methods
- ADMET-aware filtering - Eliminate poor compounds early
- Evidence grading - Grade candidates by supporting evidence
- Actionable output - Provide prioritized candidates with rationale
- English-first queries - Always use English terms in tool calls, even if the user writes in another language. Only try original-language terms as a fallback. Respond in the user's language
Critical Workflow Requirements
1. Report-First Approach (MANDATORY)
DO NOT show search process or tool outputs to the user. Instead:
-
Create the report file FIRST - Before any data collection:
- File name:
[TARGET]_binder_discovery_report.md - Initialize with all section headers from the template
- Add placeholder text:
in each section[Researching...]
- File name:
-
Progressively update the report - As you gather data:
- Update each section with findings immediately
- The user sees the report growing, not the search process
-
Output separate data files:
- Prioritized compounds with SMILES, scores[TARGET]_candidate_compounds.csv
- Literature references (optional)[TARGET]_bibliography.json
2. Citation Requirements (MANDATORY)
Every piece of information MUST include its source:
### 3.2 Known Inhibitors | Compound | ChEMBL ID | IC50 (nM) | Selectivity | Source | |----------|-----------|-----------|-------------|--------| | Imatinib | CHEMBL941 | 38 | ABL-selective | ChEMBL | | Dasatinib | CHEMBL1421 | 0.5 | Multi-kinase | ChEMBL | *Source: ChEMBL via `ChEMBL_get_target_activities` (CHEMBL1862)*
Workflow Overview
Phase 0: Tool Verification (check parameter names) ↓ Phase 1: Target Validation ├─ 1.1 Resolve identifiers (UniProt, Ensembl, ChEMBL target ID) ├─ 1.2 Assess druggability/tractability │ └─ 1.2.5 Check therapeutic antibodies (Thera-SAbDab) [NEW] ├─ 1.3 Identify binding sites └─ 1.4 Predict structure (NvidiaNIM_alphafold2/esmfold) ↓ Phase 2: Known Ligand Mining ├─ Extract ChEMBL bioactivity data ├─ Get GtoPdb interactions ├─ Identify chemical probes ├─ BindingDB affinity data (NEW - Ki/IC50/Kd) ├─ PubChem BioAssay HTS data (NEW - screening hits) └─ Analyze SAR from known actives ↓ Phase 3: Structure Analysis ├─ Get PDB structures with ligands ├─ Check EMDB for cryo-EM structures (NEW - for membrane targets) ├─ Analyze binding pocket └─ Identify key interactions ↓ Phase 3.5: Docking Validation (NvidiaNIM_diffdock/boltz2) [NEW] ├─ Dock reference inhibitor └─ Validate binding pocket geometry ↓ Phase 4: Compound Expansion ├─ 4.1-4.3 Similarity/substructure search └─ 4.4 De novo generation (NvidiaNIM_genmol/molmim) [NEW] ↓ Phase 5: ADMET Filtering ├─ Predict physicochemical properties ├─ Predict ADMET endpoints └─ Flag liabilities ↓ Phase 6: Candidate Docking & Prioritization ├─ Dock all candidates (NvidiaNIM_diffdock/boltz2) [UPDATED] ├─ Score by docking + ADMET + novelty ├─ Assess synthesis feasibility └─ Generate final ranked list ↓ Phase 7: Report Synthesis
Phase 0: Tool Verification
CRITICAL: Verify tool parameters before calling unfamiliar tools.
# Check tool params to prevent silent failures tool_info = tu.tools.get_tool_info(tool_name="ChEMBL_get_target_activities")
Known Parameter Corrections
| Tool | WRONG Parameter | CORRECT Parameter |
|---|---|---|
| | |
| | |
| | (accepts SMILES, ChEMBL ID, or name) |
| | |
Phase 1: Target Validation
1.1 Identifier Resolution Chain
1. UniProt_search(query=target_name, organism="human") └─ Extract: UniProt accession, gene name, protein name 2. MyGene_query_genes(q=gene_symbol, species="human") └─ Extract: Ensembl gene ID, NCBI gene ID 3. ChEMBL_search_targets(query=target_name, organism="Homo sapiens") └─ Extract: ChEMBL target ID, target type 4. GtoPdb_get_targets(query=target_name) └─ Extract: GtoPdb target ID (if GPCR/ion channel/enzyme)
Store all IDs for downstream queries:
ids = { 'uniprot': 'P00533', 'ensembl': 'ENSG00000146648', 'chembl_target': 'CHEMBL203', 'gene_symbol': 'EGFR', 'gtopdb': '1797' # if available }
1.2 Druggability Assessment
Multi-Source Triangulation:
1. OpenTargets_get_target_tractability_by_ensemblID(ensemblId) └─ Extract: Small molecule tractability score, bucket 2. DGIdb_get_gene_druggability(genes=[gene_symbol]) └─ Extract: Druggability categories, known drug count 3. OpenTargets_get_target_classes_by_ensemblID(ensemblId) └─ Extract: Target class (kinase, GPCR, etc.) 4. GPCRdb_get_protein(protein=entry_name) # NEW - for GPCRs └─ Extract: GPCR family, receptor state, ligand binding data
1.2a GPCRdb Integration (NEW - for GPCR Targets)
~35% of all approved drugs target GPCRs. For GPCR targets, use specialized data:
def check_if_gpcr_and_enrich(tu, target_name, uniprot_id): """Check if target is GPCR and get specialized data.""" # Build GPCRdb entry name (e.g., "adrb2_human") entry_name = f"{target_name.lower()}_human" # Check if it's a GPCR gpcr_info = tu.tools.GPCRdb_get_protein( operation="get_protein", protein=entry_name ) if gpcr_info.get('status') == 'success': # It's a GPCR - get specialized data # Get known structures (active/inactive states) structures = tu.tools.GPCRdb_get_structures( operation="get_structures", protein=entry_name ) # Get known ligands ligands = tu.tools.GPCRdb_get_ligands( operation="get_ligands", protein=entry_name ) # Get mutation data (important for SAR) mutations = tu.tools.GPCRdb_get_mutations( operation="get_mutations", protein=entry_name ) return { 'is_gpcr': True, 'gpcr_family': gpcr_info['data'].get('family'), 'gpcr_class': gpcr_info['data'].get('receptor_class'), 'structures': structures['data'].get('structures', []), 'ligands': ligands['data'].get('ligands', []), 'mutation_data': mutations['data'].get('mutations', []) } return {'is_gpcr': False}
GPCRdb Advantages:
- GPCR-specific sequence alignments (Ballesteros-Weinstein numbering)
- Active vs. inactive state structures
- Curated ligand binding data
- Experimental mutation effects on ligand binding
Druggability Scorecard:
| Factor | Assessment | Score |
|---|---|---|
| Known small molecule drugs | Yes (3+) | ★★★ |
| Tractability bucket | 1-3 | ★★☆-★★★ |
| Target class | Enzyme/GPCR/Ion channel | ★★★ |
| Binding site known | Yes (X-ray) | ★★★ |
| GPCRdb ligands available | Yes (10+) | ★★★ (GPCR only) |
| Therapeutic antibodies exist | Check Thera-SAbDab | See 1.2.5 |
Decision Point: If druggability score < ★★☆, warn user about challenges.
1.2.5 Therapeutic Antibody Landscape (NEW)
Check if therapeutic antibodies already target this protein - important for:
- Understanding competitive landscape
- Validating target tractability (if antibodies work, target is validated)
- Identifying potential combination approaches
def check_therapeutic_antibodies(tu, target_name): """ Check Thera-SAbDab for therapeutic antibodies against target. """ # Search by target name results = tu.tools.TheraSAbDab_search_by_target( target=target_name ) if results.get('status') == 'success': antibodies = results['data'].get('therapeutics', []) # Categorize by clinical stage by_phase = {'Approved': [], 'Phase 3': [], 'Phase 2': [], 'Phase 1': [], 'Preclinical': []} for ab in antibodies: phase = ab.get('phase', 'Unknown') for key in by_phase.keys(): if key.lower() in phase.lower(): by_phase[key].append(ab) break return { 'total_antibodies': len(antibodies), 'by_phase': by_phase, 'antibodies': antibodies[:10], # Top 10 'competitive_alert': len(by_phase.get('Approved', [])) > 0 } return None def get_antibody_landscape(tu, target_name, uniprot_id=None): """ Comprehensive antibody competitive landscape. """ # Thera-SAbDab search therasabdab = check_therapeutic_antibodies(tu, target_name) # Also search by common synonyms synonyms = [target_name] if target_name != uniprot_id: synonyms.append(uniprot_id) all_antibodies = [] for synonym in synonyms: results = tu.tools.TheraSAbDab_search_therapeutics(query=synonym) if results.get('status') == 'success': all_antibodies.extend(results['data'].get('therapeutics', [])) # Deduplicate seen = set() unique = [] for ab in all_antibodies: inn = ab.get('inn_name') if inn and inn not in seen: seen.add(inn) unique.append(ab) return { 'antibodies': unique, 'count': len(unique), 'has_approved': any(ab.get('phase', '').lower() == 'approved' for ab in unique), 'source': 'Thera-SAbDab' }
Report Output:
### 1.2.5 Therapeutic Antibody Landscape (NEW) **Thera-SAbDab Search Results**: | Antibody (INN) | Target | Format | Phase | PDB | |----------------|--------|--------|-------|-----| | Pembrolizumab | PD-1 | IgG4 | Approved | 5DK3 | | Nivolumab | PD-1 | IgG4 | Approved | 5WT9 | | Cemiplimab | PD-1 | IgG4 | Approved | 7WVM | **Competitive Landscape**: ⚠️ 3 approved antibodies target this protein **Strategic Implication**: Small molecule approach offers differentiation (oral dosing, CNS penetration, cost) *Source: Thera-SAbDab via `TheraSAbDab_search_by_target`*
Why Include Antibody Landscape:
- Validation: Approved antibodies = validated target
- Competition: Understand what's already in market/clinic
- Strategy: Identify gaps (no oral, no CNS-penetrant)
- Synergy: Potential combination opportunities
1.3 Binding Site Analysis
1. ChEMBL_search_binding_sites(target_chembl_id) └─ Extract: Binding site names, types 2. get_binding_affinity_by_pdb_id(pdb_id) # For each PDB with ligand └─ Extract: Kd, Ki, IC50 values for co-crystallized ligands 3. InterPro_get_protein_domains(uniprot_accession) └─ Extract: Domain architecture, active sites
Output for Report:
### 1.3 Binding Site Assessment **Known Binding Sites**: | Site | Type | Evidence | Key Residues | Source | |------|------|----------|--------------|--------| | ATP pocket | Orthosteric | X-ray (23 PDBs) | K745, E762, M793 | PDB/ChEMBL | | Allosteric pocket | Allosteric | X-ray (3 PDBs) | T790, C797 | PDB | **Binding Site Druggability**: ★★★ (well-defined pocket, multiple co-crystal structures) *Source: ChEMBL via `ChEMBL_search_binding_sites`, PDB structures*
1.4 Structure Prediction (NVIDIA NIM)
When no experimental structure is available, or for custom domain predictions.
Requires:
NVIDIA_API_KEY environment variable
Option A: AlphaFold2 (High accuracy, async)
NvidiaNIM_alphafold2( sequence=kinase_domain_sequence, algorithm="mmseqs2", relax_prediction=False ) └─ Returns: PDB structure with pLDDT confidence scores └─ Use when: Accuracy is critical, time is available (~5-15 min)
Option B: ESMFold (Fast, synchronous)
NvidiaNIM_esmfold(sequence=kinase_domain_sequence) └─ Returns: PDB structure (max 1024 AA) └─ Use when: Quick assessment needed (~30 sec)
Report pLDDT Confidence:
### 1.4 Structure Prediction Quality **Method**: AlphaFold2 via NVIDIA NIM **Mean pLDDT**: 90.94 (very high confidence) | Confidence Level | Range | Fraction | Interpretation | |------------------|-------|----------|----------------| | Very High | ≥90 | 74.3% | Highly reliable | | Confident | 70-90 | 16.0% | Reliable | | Low | 50-70 | 9.0% | Use caution | | Very Low | <50 | 0.7% | Unreliable | **Key Binding Residue Confidence**: | Residue | Function | pLDDT | |---------|----------|-------| | K745 | ATP binding | 90.0 | | T790 | Gatekeeper | 92.3 | | M793 | Hinge region | 95.3 | | D855 | DFG motif | 89.5 | *Source: NVIDIA NIM via `NvidiaNIM_alphafold2`*
Phase 2: Known Ligand Mining
2.1 ChEMBL Bioactivity Data
1. ChEMBL_get_target_activities(target_chembl_id, limit=500) └─ Filter: standard_type in ["IC50", "Ki", "Kd", "EC50"] └─ Filter: standard_value < 10000 nM └─ Extract: ChEMBL molecule IDs, SMILES, potency values 2. ChEMBL_get_molecule(molecule_chembl_id) # For top actives └─ Extract: Full molecular data, max_phase, oral flag
Activity Summary Table:
### 2.1 Known Active Compounds (ChEMBL) **Total Bioactivity Points**: 2,847 (IC50: 1,234 | Ki: 892 | Kd: 456 | EC50: 265) **Compounds with IC50 < 100 nM**: 156 **Approved Drugs for This Target**: 5 | Compound | ChEMBL ID | IC50 (nM) | Max Phase | SMILES (truncated) | |----------|-----------|-----------|-----------|-------------------| | Erlotinib | CHEMBL553 | 2 | 4 | COc1cc2ncnc(Nc3ccc... | | Gefitinib | CHEMBL939 | 5 | 4 | COc1cc2ncnc(Nc3ccc... | | [Novel] | CHEMBL123 | 12 | 0 | c1ccc(NC(=O)c2ccc... | *Source: ChEMBL via `ChEMBL_get_target_activities` (CHEMBL203)*
2.2 GtoPdb Interactions
GtoPdb_get_target_interactions(target_id) └─ Extract: Ligands with pKi/pIC50, selectivity data
2.3 Chemical Probes
OpenTargets_get_chemical_probes_by_target_ensemblID(ensemblId) └─ Extract: Validated chemical probes with ratings
Output for Report:
### 2.3 Chemical Probes | Probe | Target | Rating | Use | Caveat | Source | |-------|--------|--------|-----|--------|--------| | Probe-X | EGFR | ★★★★ | In vivo | None | Chemical Probes Portal | | Probe-Y | EGFR | ★★★☆ | In vitro | Off-target kinase activity | Open Targets | **Recommended Probe for Target Validation**: Probe-X (highest rating, validated in vivo)
2.4 SAR Analysis from Actives
Identify common scaffolds and SAR trends:
### 2.4 Structure-Activity Relationships **Core Scaffolds Identified**: 1. **4-Anilinoquinazoline** (34 compounds, IC50 range: 2-500 nM) - N1 position: Aryl preferred - C6/C7: Methoxy groups improve potency 2. **Pyrimidine-amine** (12 compounds, IC50 range: 15-800 nM) - Less potent than quinazolines - Better selectivity profile **Key SAR Insights**: - Halogen at meta position of aniline increases potency 3-5x - C7 ethoxy group critical for binding (H-bond to M793)
2.5 BindingDB Affinity Data (NEW)
BindingDB provides experimental binding affinity data complementary to ChEMBL:
def get_bindingdb_ligands(tu, uniprot_id, affinity_cutoff=10000): """ Get ligands from BindingDB with measured affinities. BindingDB advantages: - May have compounds not in ChEMBL - Different affinity types (Ki, IC50, Kd) - Direct literature links """ result = tu.tools.BindingDB_get_ligands_by_uniprot( uniprot=uniprot_id, affinity_cutoff=affinity_cutoff # nM ) if result: ligands = [] for entry in result: ligands.append({ 'smiles': entry.get('smile'), 'affinity_type': entry.get('affinity_type'), 'affinity_nM': entry.get('affinity'), 'pmid': entry.get('pmid'), 'monomer_id': entry.get('monomerid') }) # Sort by potency ligands.sort(key=lambda x: float(x['affinity_nM']) if x['affinity_nM'] else 1e6) return ligands[:50] # Top 50 return [] def find_compound_polypharmacology(tu, smiles, similarity_cutoff=0.85): """Find off-target interactions for selectivity analysis.""" targets = tu.tools.BindingDB_get_targets_by_compound( smiles=smiles, similarity_cutoff=similarity_cutoff ) return targets # Other proteins this compound may bind
BindingDB Output for Report:
### 2.5 Additional Ligands (BindingDB) (NEW) **Total Unique Ligands**: 89 (non-overlapping with ChEMBL) **Most Potent**: 0.3 nM Ki | SMILES | Affinity Type | Value (nM) | PMID | BindingDB ID | |--------|---------------|------------|------|--------------| | CC(C)Cc1ccc... | Ki | 0.3 | 15737014 | 12345 | | COc1cc2ncnc... | IC50 | 2.1 | 16460808 | 12346 | **Novel Scaffolds from BindingDB**: 3 scaffolds not seen in ChEMBL data *Source: BindingDB via `BindingDB_get_ligands_by_uniprot`*
2.6 PubChem BioAssay Screening Data (NEW)
PubChem BioAssay provides HTS screening results and dose-response data:
def get_pubchem_assays_for_target(tu, gene_symbol): """ Get bioassays and active compounds from PubChem. Advantages: - HTS data not in ChEMBL - NIH-funded screening programs (MLPCN) - Dose-response curves for IC50 calculation """ # Search assays targeting this gene assays = tu.tools.PubChem_search_assays_by_target_gene( gene_symbol=gene_symbol ) results = { 'assays': [], 'total_active_compounds': 0 } if assays.get('data', {}).get('aids'): for aid in assays['data']['aids'][:10]: # Top 10 assays # Get assay summary summary = tu.tools.PubChem_get_assay_summary(aid=aid) # Get active compounds actives = tu.tools.PubChem_get_assay_active_compounds(aid=aid) active_cids = actives.get('data', {}).get('cids', []) results['assays'].append({ 'aid': aid, 'summary': summary.get('data', {}), 'active_count': len(active_cids) }) results['total_active_compounds'] += len(active_cids) return results def get_dose_response_data(tu, aid): """Get dose-response curves for IC50/EC50 determination.""" dr_data = tu.tools.PubChem_get_assay_dose_response(aid=aid) return dr_data def get_compound_bioactivity_profile(tu, cid): """Get all bioactivity data for a compound.""" profile = tu.tools.PubChem_get_compound_bioactivity(cid=cid) return profile
PubChem BioAssay Output for Report:
### 2.6 PubChem HTS Screening Data (NEW) **Assays Found**: 45 **Total Active Compounds Across Assays**: ~1,200 | AID | Assay Type | Active Compounds | Target | Description | |-----|------------|------------------|--------|-------------| | 504526 | HTS | 234 | EGFR | qHTS inhibition screen | | 1053104 | Dose-response | 12 | EGFR kinase | Confirmatory IC50 | | 651564 | Cellular | 8 | EGFR | Cell proliferation assay | **Novel Actives** (not in ChEMBL/BindingDB): - CID 12345678: Active in AID 504526, IC50 = 45 nM - CID 23456789: Active in AID 1053104, IC50 = 120 nM *Source: PubChem via `PubChem_search_assays_by_target_gene`, `PubChem_get_assay_active_compounds`*
Why Use Both BindingDB and PubChem:
| Source | Strengths | Best For |
|---|---|---|
| ChEMBL | Curated, standardized, SAR data | Primary ligand source |
| BindingDB | Direct affinity measurements | Ki/Kd values, PMIDs |
| PubChem BioAssay | HTS data, NIH screens | Novel scaffolds, broad coverage |
Phase 3: Structure Analysis
3.1 PDB Structure Retrieval
1. PDB_search_similar_structures(query=uniprot_accession, type="sequence") └─ Extract: PDB IDs with ligands 2. get_protein_metadata_by_pdb_id(pdb_id) └─ Extract: Resolution, method, ligand codes 3. alphafold_get_prediction(accession=uniprot_accession) └─ Extract: Predicted structure (if no experimental)
3.1b EMDB Cryo-EM Structures (NEW)
Prioritize EMDB for: Membrane proteins (GPCRs, ion channels), large complexes, targets with multiple conformational states.
def get_cryoem_structures(tu, target_name, uniprot_accession): """Get cryo-EM structures for membrane targets.""" # Search EMDB emdb_results = tu.tools.emdb_search( query=f"{target_name} membrane receptor" ) structures = [] for entry in emdb_results[:5]: details = tu.tools.emdb_get_entry(entry_id=entry['emdb_id']) # Get associated PDB model (essential for docking) pdb_models = details.get('pdb_ids', []) structures.append({ 'emdb_id': entry['emdb_id'], 'resolution': entry.get('resolution', 'N/A'), 'title': entry.get('title', 'N/A'), 'conformational_state': details.get('state', 'Unknown'), 'pdb_models': pdb_models }) return structures
When to use cryo-EM over X-ray:
| Target Type | Prefer cryo-EM? | Reason |
|---|---|---|
| GPCR | Yes | Native membrane conformation |
| Ion channel | Yes | Multiple functional states |
| Receptor-ligand complex | Yes | Physiological state |
| Kinase | Usually X-ray | Higher resolution typically |
Structure Summary:
### 3.1 Available Structures | PDB ID | Resolution | Method | Ligand | Affinity | State | |--------|------------|--------|--------|----------|-------| | 1M17 | 2.6 Å | X-ray | Erlotinib | Ki=0.4 nM | Active | | 4HJO | 2.1 Å | X-ray | Lapatinib | Ki=3 nM | Inactive | | AF-P00533 | - | Predicted | None | - | - | ### 3.1b Cryo-EM Structures (EMDB) | EMDB ID | Resolution | PDB Model | Conformation | Ligand | |---------|------------|-----------|--------------|--------| | EMD-12345 | 3.2 Å | 7ABC | Active | Agonist | | EMD-23456 | 3.5 Å | 8DEF | Inactive | Antagonist | **Best Structure for Docking**: 1M17 (high resolution, relevant ligand) *Source: RCSB PDB, EMDB, AlphaFold DB*
3.2 Binding Pocket Analysis
get_binding_affinity_by_pdb_id(pdb_id) └─ Extract: Binding affinities for co-crystallized ligands
Output for Report:
### 3.2 Binding Pocket Characterization **Pocket Volume**: ~850 ų (well-defined) **Key Interaction Residues**: - **Hinge region**: M793 (backbone H-bond donor/acceptor) - **Gatekeeper**: T790 (small residue, allows access) - **DFG motif**: D855 (active conformation) - **Selectivity pocket**: L788, G796 (unique to EGFR) **Druggability Assessment**: High (enclosed pocket, conserved interactions)
Phase 3.5: Docking Validation (NVIDIA NIM)
Validate structure and score compounds using molecular docking.
Requires:
NVIDIA_API_KEY environment variable
3.5.1 Reference Compound Docking
Dock a known inhibitor to validate the structure captures the binding pocket correctly.
Option A: DiffDock (Blind docking, PDB + SDF input)
NvidiaNIM_diffdock( protein=pdb_content, # PDB text content ligand=reference_sdf, # SDF/MOL2 content num_poses=10 ) └─ Returns: Docking poses with confidence scores └─ Use: When you have PDB structure and ligand SDF file
Option B: Boltz2 (From sequence + SMILES)
NvidiaNIM_boltz2( polymers=[{"molecule_type": "protein", "sequence": kinase_sequence}], ligands=[{"smiles": "COc1cc2ncnc(Nc3ccc(C#C)cc3)c2cc1OCCOC"}], sampling_steps=50, diffusion_samples=1 ) └─ Returns: Protein-ligand complex structure └─ Use: When starting from SMILES, no SDF needed
3.5.2 Docking Score Interpretation
| Score vs Reference | Priority | Symbol |
|---|---|---|
| Higher than reference | Top priority | ★★★★ |
| Within 5% of reference | High priority | ★★★ |
| Within 20% of reference | Moderate priority | ★★☆ |
| >20% lower | Low priority | ★☆☆ |
Report Format:
### 3.5 Docking Validation Results **Reference Compound**: Erlotinib **Method**: DiffDock via NVIDIA NIM | Metric | Value | Interpretation | |--------|-------|----------------| | Best Pose Confidence | 0.906 | Excellent | | Steric Clashes | None | Clean binding pose | **Validation Status**: ✓ Structure captures binding pocket correctly *Source: NVIDIA NIM via `NvidiaNIM_diffdock`*
Phase 4: Compound Expansion
4.1 Similarity Search
Starting from top actives, expand chemical space:
1. ChEMBL_search_similar_molecules(molecule=top_active_smiles, similarity=70) └─ Extract: Similar compounds not yet tested on target 2. PubChem_search_compounds_by_similarity(smiles, threshold=0.7) └─ Extract: PubChem CIDs with similar structures
Strategy:
- Use 3-5 diverse actives as seeds
- Similarity threshold: 70-85% (balance novelty vs. activity)
- Prioritize compounds NOT in ChEMBL bioactivity for target
4.2 Substructure Search
1. ChEMBL_search_substructure(smiles=core_scaffold) └─ Extract: Compounds containing scaffold 2. PubChem_search_compounds_by_substructure(smiles=core_scaffold) └─ Extract: Additional scaffold-containing compounds
4.3 Cross-Database Mining
1. STITCH_get_chemical_protein_interactions(identifier=target_gene) └─ Extract: Additional chemical-protein links 2. DGIdb_get_drug_gene_interactions(genes=[gene_symbol]) └─ Extract: Approved/investigational drugs
Output for Report:
### 4. Compound Expansion Results **Starting Seeds**: 5 diverse actives (IC50 < 100 nM) **Similarity Expansion**: 847 compounds (70% threshold) **Substructure Search**: 234 scaffold matches **Cross-Database**: 45 additional hits **After Deduplication**: 923 unique candidate compounds | Source | Compounds | Already Tested | Novel Candidates | |--------|-----------|----------------|------------------| | ChEMBL similarity | 456 | 234 | 222 | | PubChem similarity | 391 | 156 | 235 | | ChEMBL substructure | 178 | 89 | 89 | | STITCH | 45 | 23 | 22 | | **Total Unique** | **923** | **355** | **568** |
4.4 De Novo Molecule Generation (NVIDIA NIM)
When database mining yields insufficient candidates, generate novel molecules.
Requires:
NVIDIA_API_KEY environment variable
Option A: GenMol (Scaffold Hopping with Masked Regions)
NvidiaNIM_genmol( smiles="COc1cc2ncnc(Nc3ccc([*{3-8}])c([*{1-3}])c3)c2cc1OCCCN1CCOCC1", num_molecules=100, temperature=2.0, scoring="QED" ) └─ Input: SMILES with [*{min-max}] masked regions └─ Output: Generated molecules with QED/LogP scores └─ Use: Explore specific positions while keeping scaffold
Mask Design Strategy:
| Position | Mask | Purpose |
|---|---|---|
| Aniline substituent | | Small groups (halogen, methyl) |
| Solubilizing group | | Morpholine, piperazine variants |
| Linker region | | Spacer variations |
Example Masked SMILES for EGFR:
# Keep quinazoline core, vary aniline and tail COc1cc2ncnc(Nc3ccc([*{1-3}])c([*{1-3}])c3)c2cc1[*{5-12}]
Option B: MolMIM (Controlled Generation from Reference)
NvidiaNIM_molmim( smi="COc1cc2ncnc(Nc3ccc(Cl)cc3)c2cc1OCCN1CCOCC1", num_molecules=50, algorithm="CMA-ES" ) └─ Input: Reference SMILES (known active) └─ Output: Optimized analogs with property scores └─ Use: Generate close analogs of top actives
Generation Workflow:
- Identify top 3-5 actives from Phase 2
- Design masked SMILES for GenMol OR use as reference for MolMIM
- Generate 50-100 molecules per seed
- Pass generated molecules to Phase 5 (ADMET filtering)
- Dock survivors in Phase 6 for final ranking
Report Format:
### 4.4 De Novo Generation Results **Method**: GenMol via NVIDIA NIM **Seed Scaffold**: 4-anilinoquinazoline (from erlotinib) **Masked Positions**: Aniline (3,4), solubilizing tail | Metric | Value | |--------|-------| | Molecules Generated | 100 | | Passing Lipinski | 95 (95%) | | Mean QED Score | 0.72 | | Unique Scaffolds | 12 | **Top Generated Compounds**: | ID | SMILES | QED | LogP | Novelty | |----|--------|-----|------|---------| | GEN-001 | COc1cc2ncnc(Nc3ccc(Cl)c(Cl)c3)c2cc1OCCCN1CCOCC1 | 0.81 | 4.2 | Novel substitution | | GEN-002 | COc1cc2ncnc(Nc3ccc(C#N)c(F)c3)c2cc1OCCCN1CCOCC1 | 0.78 | 3.8 | Novel substitution | *Source: NVIDIA NIM via `NvidiaNIM_genmol`*
Phase 5: ADMET Filtering
5.1 Physicochemical Properties
ADMETAI_predict_physicochemical_properties(smiles=[compound_list]) └─ Filter: Lipinski violations ≤ 1 └─ Filter: QED > 0.3 └─ Filter: MW 200-600
5.2 ADMET Endpoints
1. ADMETAI_predict_bioavailability(smiles=[compound_list]) └─ Filter: Oral bioavailability > 0.3 2. ADMETAI_predict_toxicity(smiles=[compound_list]) └─ Filter: AMES < 0.5, hERG < 0.5, DILI < 0.5 3. ADMETAI_predict_CYP_interactions(smiles=[compound_list]) └─ Flag: CYP3A4 inhibitors (drug interaction risk)
5.3 Structural Alerts
ChEMBL_search_compound_structural_alerts(smiles=compound_smiles) └─ Flag: PAINS, reactive groups, toxicophores
ADMET Filter Summary:
### 5. ADMET Filtering Results | Filter Stage | Input | Passed | Failed | Pass Rate | |--------------|-------|--------|--------|-----------| | Physicochemical (Lipinski) | 568 | 456 | 112 | 80% | | Drug-likeness (QED > 0.3) | 456 | 398 | 58 | 87% | | Bioavailability (> 0.3) | 398 | 312 | 86 | 78% | | Toxicity filters | 312 | 267 | 45 | 86% | | Structural alerts | 267 | 234 | 33 | 88% | | **Final Candidates** | **568** | **234** | **334** | **41%** | **Common Failure Reasons**: 1. High molecular weight (>600): 67 compounds 2. Low predicted bioavailability: 86 compounds 3. hERG liability: 28 compounds 4. PAINS alerts: 18 compounds
Phase 6: Candidate Prioritization
6.1 Scoring Framework
Score each candidate on multiple dimensions:
| Dimension | Weight | Scoring Criteria |
|---|---|---|
| Structural Similarity | 25% | Tanimoto to actives (0.7-1.0 → 1-5) |
| Novelty | 20% | Not in ChEMBL bioactivity = +2; Novel scaffold = +3 |
| ADMET Score | 25% | Composite of property predictions |
| Synthesis Feasibility | 15% | SA score (1-10), commercial availability |
| Scaffold Diversity | 15% | Cluster representative bonus |
6.2 Synthesis Feasibility
### 6.2 Synthesis Feasibility Assessment | Candidate | SA Score | Commercial | Estimated Steps | Flag | |-----------|----------|------------|-----------------|------| | Compound-1 | 2.3 | Yes (Enamine) | 0 | ★★★ | | Compound-2 | 3.5 | Building block | 2-3 | ★★☆ | | Compound-3 | 5.8 | No | 6-8 | ★☆☆ | **SA Score Interpretation**: - 1-3: Easy synthesis - 3-5: Moderate complexity - 5-10: Challenging synthesis
6.3 Final Prioritized List
### 6.3 Top 20 Candidate Compounds | Rank | ID | SMILES | Sim. Score | ADMET | Novelty | Overall | Rationale | |------|-----|--------|------------|-------|---------|---------|-----------| | 1 | CPD-001 | Cc1ccc... | 0.82 | 4.5 | Novel scaffold | 4.2 | High similarity, clean ADMET | | 2 | CPD-002 | COc1cc... | 0.78 | 4.3 | Not tested | 4.0 | Quinazoline analog | | 3 | CPD-003 | Nc1ccc... | 0.75 | 4.1 | Novel core | 3.9 | New chemotype | | ... | ... | ... | ... | ... | ... | ... | ... | **Scaffold Diversity**: 7 distinct scaffolds in top 20 **Commercial Availability**: 12/20 available for purchase **Estimated Hit Rate**: 15-25% (based on similarity to actives)
Phase 6.5: Literature Evidence (NEW)
6.5.1 Literature Search for Validation
Search literature to validate candidate compounds and understand target context.
def search_binder_literature(tu, target_name, compound_scaffolds): """Search literature for compound and target evidence.""" # PubMed: Published SAR studies sar_papers = tu.tools.PubMed_search_articles( query=f"{target_name} inhibitor SAR structure-activity", limit=30 ) # BioRxiv: Latest unpublished findings preprints = tu.tools.BioRxiv_search_preprints( query=f"{target_name} small molecule discovery", limit=15 ) # MedRxiv: Clinical data on inhibitors clinical = tu.tools.MedRxiv_search_preprints( query=f"{target_name} inhibitor clinical trial", limit=10 ) # Citation analysis for key papers key_papers = sar_papers[:10] for paper in key_papers: citation = tu.tools.openalex_search_works( query=paper['title'], limit=1 ) paper['citations'] = citation[0].get('cited_by_count', 0) if citation else 0 return { 'published_sar': sar_papers, 'preprints': preprints, 'clinical_preprints': clinical, 'high_impact_papers': sorted(key_papers, key=lambda x: x.get('citations', 0), reverse=True) }
6.5.2 Output for Report
## 6.5 Literature Evidence ### Published SAR Studies | PMID | Title | Year | Key Insight | |------|-------|------|-------------| | 34567890 | Discovery of novel EGFR inhibitors... | 2024 | C7 substitution critical | | 33456789 | Structure-activity relationship of... | 2023 | Fluorine improves potency | ### Recent Preprints (⚠️ Not Peer-Reviewed) | Source | Title | Posted | Relevance | |--------|-------|--------|-----------| | BioRxiv | Novel scaffolds for EGFR... | 2024-02 | New chemotype discovery | | MedRxiv | Clinical activity of... | 2024-01 | Phase 2 results | ### High-Impact References | PMID | Citations | Title | |------|-----------|-------| | 32123456 | 523 | Landmark EGFR inhibitor study... | | 31234567 | 312 | Comprehensive SAR analysis... | *Source: PubMed, BioRxiv, MedRxiv, OpenAlex*
Report Template
File:
[TARGET]_binder_discovery_report.md
# Small Molecule Binder Discovery: [TARGET] **Generated**: [Date] | **Query**: [Original query] | **Status**: In Progress --- ## Executive Summary [Researching...] --- ## 1. Target Validation ### 1.1 Target Identifiers [Researching...] ### 1.2 Druggability Assessment [Researching...] ### 1.3 Binding Site Analysis [Researching...] --- ## 2. Known Ligand Landscape ### 2.1 ChEMBL Bioactivity Summary [Researching...] ### 2.2 Approved Drugs & Clinical Compounds [Researching...] ### 2.3 Chemical Probes [Researching...] ### 2.4 SAR Insights [Researching...] --- ## 3. Structural Information ### 3.1 Available Structures [Researching...] ### 3.2 Binding Pocket Analysis [Researching...] ### 3.3 Key Interactions [Researching...] --- ## 4. Compound Expansion ### 4.1 Similarity Search Results [Researching...] ### 4.2 Substructure Search Results [Researching...] ### 4.3 Cross-Database Mining [Researching...] --- ## 5. ADMET Filtering ### 5.1 Physicochemical Filters [Researching...] ### 5.2 ADMET Predictions [Researching...] ### 5.3 Structural Alerts [Researching...] ### 5.4 Filter Summary [Researching...] --- ## 6. Candidate Prioritization ### 6.1 Scoring Methodology [Researching...] ### 6.2 Synthesis Feasibility [Researching...] ### 6.3 Top 20 Candidates [Researching...] --- ## 7. Recommendations ### 7.1 Immediate Actions [Researching...] ### 7.2 Experimental Validation Plan [Researching...] ### 7.3 Backup Strategies [Researching...] --- ## 8. Data Gaps & Limitations [Researching...] --- ## 9. Data Sources [Will be populated as research progresses...] --- ## 10. Methods Summary | Step | Tool | Purpose | |------|------|---------| | Sequence retrieval | UniProt_search | Get protein sequence | | Structure prediction | NvidiaNIM_alphafold2 / NvidiaNIM_esmfold | 3D structure with pLDDT | | Docking validation | NvidiaNIM_diffdock / NvidiaNIM_boltz2 | Validate binding pocket | | Known ligands | ChEMBL_get_target_activities | Bioactivity data | | Similarity search | ChEMBL_search_similar_molecules | Expand chemical space | | De novo generation | NvidiaNIM_genmol / NvidiaNIM_molmim | Novel molecule design | | ADMET filtering | ADMETAI_predict_* | Drug-likeness assessment | | Candidate docking | NvidiaNIM_diffdock / NvidiaNIM_boltz2 | Final scoring |
Evidence Grading
| Tier | Symbol | Description | Example |
|---|---|---|---|
| T0 | ★★★★ | Docking score > reference inhibitor | Better than erlotinib |
| T1 | ★★★ | Experimental IC50/Ki < 100 nM | ChEMBL bioactivity |
| T2 | ★★☆ | Docking within 5% of reference OR IC50 100-1000 nM | High priority |
| T3 | ★☆☆ | Structural similarity > 80% to T1 | Predicted active |
| T4 | ☆☆☆ | Similarity 70-80%, scaffold match | Lower confidence |
| T5 | ○○○ | Generated molecule, ADMET-passed, no docking | Speculative |
Docking-Enhanced Grading: When NVIDIA NIM docking is available, compounds gain evidence:
- Docking > reference → upgrade to T0 (★★★★)
- Docking within 5% → upgrade to T2 (★★☆)
- Docking within 20% → maintain current tier
- Docking >20% worse → downgrade one tier
Apply to all candidate compounds:
| Compound | Evidence | Docking vs Ref | Rationale | |----------|----------|----------------|-----------| | CPD-001 | ★★★★ | +8.3% | 85% similar, docking > erlotinib | | CPD-002 | ★★★ | -2.1% | IC50=45nM, validated by docking | | CPD-003 | ★★☆ | -4.5% | 78% similar, good docking | | GEN-001 | ★☆☆ | -15% | Generated, ADMET-passed |
Mandatory Completeness Checklist
Phase 1: Target Validation
- UniProt accession resolved
- ChEMBL target ID obtained
- Druggability assessed (≥2 sources)
- Target class identified
- Binding site information (or "No structural data")
Phase 2: Known Ligands
- ChEMBL activities queried (≥100 or all available)
- Activity statistics (count, potency range)
- Top 10 actives listed with IC50
- Chemical probes identified (or "None available")
- SAR insights summarized
Phase 3: Structure
- PDB structures listed (or "No experimental structure")
- Best structure for docking identified
- Binding pocket described (or "Predicted from AlphaFold")
Phase 4: Expansion
- ≥3 seed compounds used
- Similarity search completed (≥100 results or exhausted)
- Substructure search completed
- Deduplicated candidate count reported
Phase 5: ADMET
- Physicochemical filters applied
- Toxicity predictions run
- Structural alerts checked
- Filter funnel table included
Phase 6: Prioritization
- ≥20 candidates ranked (or all if fewer)
- Scoring methodology explained
- Synthesis feasibility assessed
- Scaffold diversity noted
Phase 7: Recommendations
- ≥3 immediate actions listed
- Experimental validation plan outlined
- Data gaps aggregated
Tool Reference by Phase
Phase 1: Target Validation
| Tool | Purpose |
|---|---|
| Resolve UniProt accession |
| Get Ensembl/NCBI IDs |
| Get ChEMBL target ID |
| Tractability assessment |
| Druggability categories |
| Binding site info |
| Domain architecture |
Phase 2: Known Ligands
| Tool | Purpose |
|---|---|
| Bioactivity data |
| Molecule details |
| Pharmacology data |
| Chemical probes |
| Known drugs |
Phase 1.4: Structure Prediction (NVIDIA NIM)
| Tool | Purpose |
|---|---|
| High-accuracy structure prediction with pLDDT |
| Fast structure prediction (max 1024 AA) |
| MSA generation for AlphaFold |
Phase 3: Structure
| Tool | Purpose |
|---|---|
| Find PDB structures |
| Structure metadata |
| Ligand affinities |
| Predicted structure (AlphaFold DB) |
| Ligand structures |
| Search cryo-EM structures (NEW) |
| Get EMDB entry details (NEW) |
Phase 3.5: Docking Validation (NVIDIA NIM)
| Tool | Purpose |
|---|---|
| Blind molecular docking (PDB + SDF) |
| Protein-ligand complex (sequence + SMILES) |
Phase 4: Expansion
| Tool | Purpose |
|---|---|
| Similarity search |
| PubChem similarity |
| Substructure search |
| PubChem substructure |
| Cross-database |
Phase 4.4: De Novo Generation (NVIDIA NIM)
| Tool | Purpose |
|---|---|
| Scaffold hopping with masked regions |
| Controlled generation from reference |
Phase 5: ADMET
| Tool | Purpose |
|---|---|
| Drug-likeness |
| Oral absorption |
| Toxicity flags |
| CYP liabilities |
| PAINS, alerts |
Phase 6: Candidate Docking (NVIDIA NIM)
| Tool | Purpose |
|---|---|
| Score all candidates by docking |
| Alternative docking from SMILES |
Phase 6.5: Literature Evidence (NEW)
| Tool | Purpose |
|---|---|
| Published SAR studies |
| Latest biology preprints |
| Clinical preprints |
| Citation analysis |
| AI-ranked papers |
Fallback Chains
| Primary Tool | Fallback 1 | Fallback 2 | Use When |
|---|---|---|---|
| | | No ChEMBL data |
| | | ChEMBL exhausted |
| | | No PDB structure |
| | | AlphaFold DB unavailable |
| | | AlphaFold2 NIM error |
| | Skip docking, use similarity | Docking error |
| | Manual scaffold hopping | Generation error |
| | Document "Unknown" | Open Targets error |
| SwissADME tools | Basic Lipinski | Invalid SMILES |
| + PDB | | Membrane proteins |
| | | Literature search |
| | Skip preprints | Preprint sources |
NVIDIA NIM API Key Required: Tools with
NvidiaNIM_ prefix require NVIDIA_API_KEY environment variable. Check availability at start:
import os nvidia_available = bool(os.environ.get("NVIDIA_API_KEY")) # If not available, fall back to non-NIM alternatives
Common Use Cases
Well-Characterized Target
User: "Find novel binders for EGFR" → Rich ChEMBL data; focus on novel scaffolds, selectivity, ADMET
Novel Target
User: "Find small molecules for [new target with no known ligands]" → Limited bioactivity; rely on structure-based assessment, similar target ligands
Lead Optimization
User: "Find analogs of compound X for target Y" → Deep similarity search around specific compound; focus on SAR
Selectivity Challenge
User: "Find selective inhibitors for kinase X vs kinase Y" → Include selectivity analysis; filter by off-target predictions
When NOT to Use This Skill
- Drug research → Use tooluniverse-drug-research (existing drug profiling)
- Target research only → Use tooluniverse-target-research
- Single compound ADMET → Call ADMET tools directly
- Literature search → Use tooluniverse-literature-deep-research
- Protein structure only → Use tooluniverse-protein-structure-retrieval
Use this skill for discovering new compounds for a protein target.
Additional Resources
- Checklist: CHECKLIST.md - Pre-delivery verification
- Examples: EXAMPLES.md - Detailed workflow examples
- Tool corrections: TOOLS_REFERENCE.md - Parameter corrections