skills/tooluniverse-chemical-safety/SKILL.md
Chemical safety and toxicology assessment integrating ADMET-AI predictions, CTD toxicogenomics, PubChemTox experimental data, GHS/IARC hazard classification, and exposure-context analysis. Use for chemical hazard identification, occupational/consumer-product toxicity, dose-response evaluation, and acute (LD50) vs chronic toxicity assessment. Distinguishes drug toxicity from environmental chemical toxicity.
npx skillsauth add mims-harvard/tooluniverse tooluniverse-chemical-safetyInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Toxicity assessment: identify the chemical, check known hazards (GHS, IARC), then look for ADMET predictions. Dose makes the poison — always consider exposure level, as a compound that is toxic at high doses may be safe at relevant exposures. Distinguish between acute toxicity (LD50, GHS category) and chronic hazards (carcinogenicity, endocrine disruption) — they require different risk management approaches. Computational predictions (ADMETAI) are T3 evidence and must be anchored by experimental data from PubChemTox or FDA labels wherever available. When evidence conflicts between prediction and experiment, always defer to the experimental finding.
LOOK UP DON'T GUESS: never assume GHS categories, IARC classification, or CTD disease links — always call PubChemTox and CTD tools to retrieve current classifications before reporting.
Comprehensive chemical safety analysis integrating predictive AI models, curated toxicogenomics databases, regulatory safety data, and chemical-biological interaction networks.
Triggers:
Use Cases:
When analysis requires computation (statistics, data processing, scoring, enrichment), write and run Python code via Bash. Don't describe what you would do — execute it and report actual results. Use ToolUniverse tools to retrieve data, then Python (pandas, scipy, statsmodels, matplotlib) to analyze it.
get_tool_info before calling unfamiliar tools| Tier | Symbol | Criteria | Examples | |------|--------|----------|----------| | T1 | [T1] | Direct human evidence, regulatory finding | FDA boxed warning, clinical trial toxicity | | T2 | [T2] | Animal studies, validated in vitro | Nonclinical toxicology, AMES positive, animal LD50 | | T3 | [T3] | Computational prediction, association data | ADMET-AI prediction, CTD association | | T4 | [T4] | Database annotation, text-mined | Literature mention, unvalidated database entry |
Evidence grades MUST appear in: Executive Summary, Toxicity Predictions, Regulatory Safety, Chemical-Gene Interactions, Risk Assessment.
Chemical/Drug Query
|
+-- PHASE 0: Compound Disambiguation (ALWAYS FIRST)
| Resolve name -> SMILES, PubChem CID, ChEMBL ID, formula, weight
|
+-- PHASE 1: Predictive Toxicology (ADMET-AI)
| AMES, DILI, ClinTox, carcinogenicity, LD50, hERG, skin reaction
| Stress response pathways, nuclear receptor activity
|
+-- PHASE 2: ADMET Properties
| BBB penetrance, bioavailability, clearance, CYP interactions, physicochemical
|
+-- PHASE 3: Toxicogenomics (CTD)
| Chemical-gene interactions, chemical-disease associations
|
+-- PHASE 4: Regulatory Safety (FDA Labels)
| Boxed warnings, contraindications, adverse reactions, nonclinical tox
|
+-- PHASE 5: Drug Safety Profile (DrugBank)
| Toxicity data, contraindications, drug interactions
|
+-- PHASE 6: Chemical-Protein Interactions (STITCH)
| Direct binding, off-target effects, interaction confidence
|
+-- PHASE 7: Structural Alerts (ChEMBL)
| PAINS, Brenk, Glaxo structural alerts
|
+-- SYNTHESIS: Integrated Risk Assessment
Risk classification, evidence summary, data gaps, recommendations
See phase-procedures-detailed.md for complete tool parameters, decision logic, output templates, and fallback strategies for each phase.
PubChem_get_CID_by_compound_name (name: str)PubChem_get_compound_properties_by_CID (cid: int)ChEMBL_get_molecule (if ChEMBL ID available)Dependency: ADMET-AI tools require
pip install tooluniverse[ml]. If unavailable, skip to Phase 3 and use CTD + PubChemTox as alternatives.
ADMETAI_predict_toxicity (smiles: list[str]) - AMES, DILI, ClinTox, LD50, hERG, etc.ADMETAI_predict_stress_response (smiles: list[str])ADMETAI_predict_nuclear_receptor_activity (smiles: list[str])ADMETAI_predict_BBB_penetrance / _bioavailability / _clearance_distribution / _CYP_interactions / _physicochemical_properties / _solubility_lipophilicity_hydration (all take smiles: list[str])CTD_get_chemical_gene_interactions (input_terms: str) — chemical name, returns gene interactions across speciesCTD_get_chemical_diseases (input_terms: str) — chemical-disease associations with evidence typePubChemTox_get_toxicity_values (cid: int) — LD50, LC50, NOAEL reference valuesPubChemTox_get_ghs_classification (cid: int) — GHS hazard classification and pictogramsPubChemTox_get_carcinogen_classification (cid: int) — NTP/IARC carcinogenicity assessmentsPubChemTox_get_acute_effects (cid: int) — acute toxicity by route/speciesPubChemTox_get_toxicity_summary (cid: int) — integrated toxicity overviewAOPWiki_list_aops (keyword: str) — search for relevant AOPs by chemical/mechanismAOPWiki_get_aop (aop_id: int) — full AOP detail: MIE, key events, adverse outcomeEnvironmental chemicals: Skip Phases 4-5 (no FDA labels/DrugBank). Use CTD + PubChemTox + AOPWiki instead.
FDA_get_boxed_warning_info_by_drug_name / _contraindications_ / _adverse_reactions_ / _warnings_ (all take drug_name: str)drugbank_get_safety_by_drug_name_or_drugbank_id (query, case_sensitive, exact_match, limit - all 4 required)STITCH_get_chemical_protein_interactions (identifiers: list[str], species: int)STRING_get_interaction_partners for key target genes (e.g., ESR1 for endocrine disruptors)DGIdb_get_drug_gene_interactions (genes: list[str]) — for target druggability contextChEMBL_search_compound_structural_alerts (molecule_chembl_id: str)| Risk Level | Criteria | |-----------|----------| | CRITICAL | FDA boxed warning OR multiple [T1] toxicity findings OR active DILI + active hERG | | HIGH | FDA warnings OR [T2] animal toxicity OR multiple active ADMET endpoints | | MEDIUM | Some [T3] predictions positive OR CTD disease associations OR structural alerts | | LOW | All ADMET endpoints negative AND no FDA/DrugBank flags AND no CTD concerns | | INSUFFICIENT DATA | Fewer than 3 phases returned data |
# Chemical Safety & Toxicology Report: [Compound Name]
**Generated**: YYYY-MM-DD | **SMILES**: [...] | **CID**: [...]
## Executive Summary (risk classification + key findings, all graded)
## 1. Compound Identity (disambiguation table)
## 2. Predictive Toxicology (ADMET-AI endpoints)
## 3. ADMET Profile (absorption, distribution, metabolism, excretion)
## 4. Toxicogenomics (CTD chemical-gene-disease)
## 5. Regulatory Safety (FDA label data)
## 6. Drug Safety Profile (DrugBank)
## 7. Chemical-Protein Interactions (STITCH network)
## 8. Structural Alerts (ChEMBL)
## 9. Integrated Risk Assessment (classification, evidence summary, gaps, recommendations)
## Appendix: Methods and Data Sources
See report-templates.md for full section templates with example tables.
Total tools integrated: 25+ tools across 6 databases (ADMET-AI, CTD, FDA, DrugBank, STITCH, ChEMBL)
Best for: Drug safety assessment, chemical hazard profiling, environmental toxicology, ADMET characterization, toxicogenomic analysis
Outputs: Structured markdown report with risk classification (Critical/High/Medium/Low), evidence grading [T1-T4], and actionable recommendations
tools
PCR / qPCR primer and oligo design — design forward/reverse primers for a target region (SantaLucia nearest-neighbor thermodynamics), compute melting temperature (Tm) and annealing temperature (Ta), check GC content, and screen an oligo for hairpins and primer-dimers. Use when you need primers for a sequence, want to QC an existing primer pair, or need the Tm of an oligo. Covers the primer-design rules (Tm matching, GC clamp, 3'-end, length) and the tools' constraint quirks.
tools
Pharmacokinetic (PK) analysis of concentration-time data — non-compartmental analysis (NCA) for Cmax, Tmax, AUC (0-t and 0-∞), terminal half-life, clearance (CL), volume of distribution (Vd), MRT, and absolute bioavailability (F). Also one-compartment fitting. Use when you have plasma/serum drug concentrations over time after a dose and need PK parameters, or to compute bioavailability from IV + oral AUCs. NOT for ADMET property prediction from structure (use tooluniverse-admet-prediction).
tools
Molecular cloning assembly design — Gibson Assembly (overlap design for seamless multi-fragment joining) and Golden Gate Assembly (Type IIS / BsaI / BbsI design with unique 4-bp fusion overhangs). Use when you need to plan how to join DNA fragments into a construct, design assembly overlaps/overhangs, or decide between cloning methods. Covers the domestication (internal-site removal), overhang-uniqueness, and overlap-Tm rules. For PCR primers to generate the fragments, see tooluniverse-primer-design.
tools
Meta-analysis / evidence synthesis — pool effect sizes across studies (odds ratios, risk ratios, hazard ratios, mean differences, correlations, GWAS betas) with fixed- or random-effects models, quantify heterogeneity (Q, I², τ²), and build a forest plot. Use when you have results from MULTIPLE studies and need a single pooled estimate, or to synthesize evidence from a systematic review / multiple GWAS / replicated experiments. Handles the error-prone effect-size + standard-error preparation (converting OR/HR/CI, two-group means±SD, proportions, and correlations into the (effect, SE) the pooling step needs).