bundled/skills/drugbank-database/SKILL.md
Access and analyze comprehensive drug information from the DrugBank database including drug properties, interactions, targets, pathways, chemical structures, and pharmacology data. This skill should be used when working with pharmaceutical data, drug discovery research, pharmacology studies, drug-drug interaction analysis, target identification, chemical similarity searches, ADMET predictions, or any task requiring detailed drug and drug target information from DrugBank.
npx skillsauth add foryourhealth111-pixel/vco-skills-codex drugbank-databaseInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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DrugBank is a comprehensive bioinformatics and cheminformatics database containing detailed information on drugs and drug targets. This skill enables programmatic access to DrugBank data including ~9,591 drug entries (2,037 FDA-approved small molecules, 241 biotech drugs, 96 nutraceuticals, and 6,000+ experimental compounds) with 200+ data fields per entry.
Download and access DrugBank data using Python with proper authentication. The skill provides guidance on:
drugbank-downloader packageWhen to use: Setting up DrugBank access, downloading database updates, initial project configuration.
Reference: See references/data-access.md for detailed authentication, download procedures, API access, caching strategies, and troubleshooting.
Extract comprehensive drug information from the database including identifiers, chemical properties, pharmacology, clinical data, and cross-references to external databases.
Query capabilities:
When to use: Retrieving specific drug information, building drug databases, pharmacology research, literature review, drug profiling.
Reference: See references/drug-queries.md for XML navigation, query functions, data extraction methods, and performance optimization.
Analyze drug-drug interactions (DDIs) including mechanism, clinical significance, and interaction networks for pharmacovigilance and clinical decision support.
Analysis capabilities:
When to use: Polypharmacy safety analysis, clinical decision support, drug interaction prediction, pharmacovigilance research, identifying contraindications.
Reference: See references/interactions.md for interaction extraction, classification methods, network analysis, and clinical applications.
Access detailed information about drug-protein interactions including targets, enzymes, transporters, carriers, and biological pathways.
Target analysis capabilities:
When to use: Mechanism of action studies, drug repurposing research, target identification, pathway analysis, predicting off-target effects, understanding drug metabolism.
Reference: See references/targets-pathways.md for target extraction, pathway analysis, repurposing strategies, CYP450 profiling, and transporter analysis.
Perform structure-based analysis including molecular similarity searches, property calculations, substructure searches, and ADMET predictions.
Chemical analysis capabilities:
When to use: Structure-activity relationship (SAR) studies, drug similarity searches, QSAR modeling, drug-likeness assessment, ADMET prediction, chemical space exploration.
Reference: See references/chemical-analysis.md for structure extraction, similarity calculations, fingerprint generation, ADMET predictions, and chemical space analysis.
data-access.md to download and access latest DrugBank datadrug-queries.md to build searchable drug databasechemical-analysis.md to find similar compoundstargets-pathways.md to identify shared targetsinteractions.md to check safety of candidate combinationsdrug-queries.md to look up patient medicationsinteractions.md to check all pairwise interactionsinteractions.md to classify interaction severityinteractions.md to calculate overall risk scoretargets-pathways.md to understand interaction mechanismstargets-pathways.md to find drugs with shared targetschemical-analysis.md to find structurally similar drugsdrug-queries.md to extract indication and pharmacology datainteractions.md to assess potential combination therapiesdrug-queries.md to extract drug of interesttargets-pathways.md to identify all protein interactionstargets-pathways.md to map to biological pathwayschemical-analysis.md to predict ADMET propertiesinteractions.md to identify potential contraindicationsuv pip install drugbank-downloader # Core access
uv pip install bioversions # Latest version detection
uv pip install lxml # XML parsing optimization
uv pip install pandas # Data manipulation
uv pip install rdkit # Chemical informatics (for similarity)
uv pip install networkx # Network analysis (for interactions)
uv pip install scikit-learn # ML/clustering (for chemical space)
references/data-access.mdAlways specify the DrugBank version for reproducible research:
from drugbank_downloader import download_drugbank
path = download_drugbank(version='5.1.10') # Specify exact version
Document the version used in publications and analysis scripts.
All detailed implementation guidance is organized in modular reference files:
Load these references as needed based on your specific analysis requirements.
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