From model-development-and-experiments
Queries PrimeKG knowledge graph for genes, drugs, diseases, phenotypes, and associations via Python. Useful for drug discovery, repurposing, and multiscale biology analysis.
How this skill is triggered — by the user, by Claude, or both
Slash command
/model-development-and-experiments:primekgThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
PrimeKG is a precision medicine knowledge graph that integrates over 20 primary databases and high-quality scientific literature into a single resource. It contains over 100,000 nodes and 4 million edges across 29 relationship types, including drug-target, disease-gene, and phenotype-disease associations.
PrimeKG is a precision medicine knowledge graph that integrates over 20 primary databases and high-quality scientific literature into a single resource. It contains over 100,000 nodes and 4 million edges across 29 relationship types, including drug-target, disease-gene, and phenotype-disease associations.
Key capabilities:
Data access: Programmatic access via query_primekg.py. Data is stored at C:\Users\eamon\Documents\Data\PrimeKG\kg.csv.
This skill should be used when:
Find identifiers for genes, drugs, or diseases.
from scripts.query_primekg import search_nodes
# Search for Alzheimer's disease nodes
results = search_nodes("Alzheimer", node_type="disease")
# Returns: [{"id": "EFO_0000249", "type": "disease", "name": "Alzheimer's disease", ...}]
Retrieve all connected nodes and relationship types.
from scripts.query_primekg import get_neighbors
# Get all neighbors of a specific disease ID
neighbors = get_neighbors("EFO_0000249")
# Returns: List of neighbors like {"neighbor_name": "APOE", "relation": "disease_gene", ...}
A high-level function to summarize associations for a disease.
from scripts.query_primekg import get_disease_context
# Comprehensive summary for a disease
context = get_disease_context("Alzheimer's disease")
# Access: context['associated_genes'], context['associated_drugs'], context['phenotypes']
The graph contains several key relationship types including:
protein_protein: Physical PPIsdrug_protein: Drug target/mechanism associationsdisease_gene: Genetic associationsdrug_disease: Indications and contraindicationsdisease_phenotype: Clinical signs and symptomsgwas: Genome-wide association studies evidenceget_neighbors, ensure you have the correct ID from search_nodes.get_disease_context for a broad overview before diving into specific genes or drugs.relation_type filter in get_neighbors to focus on specific evidence (e.g., only drug_protein).OpenTargets for deeper genetic evidence or Semantic Scholar for the latest literature context.scripts/query_primekg.py: Core functions for searching and querying the knowledge graph./mnt/c/Users/eamon/Documents/Data/PrimeKG/kg.csvnpx claudepluginhub youyinnn/skills-collection --plugin model-development-and-experimentsQueries the PrimeKG knowledge graph for relationships between genes, drugs, diseases, and phenotypes. Useful for drug repurposing and disease context analysis.
Queries the Precision Medicine Knowledge Graph (PrimeKG) for multiscale biomedical relationships across genes, drugs, diseases, phenotypes, pathways, and biological processes. Useful for drug repurposing, disease-gene analysis, and precision-medicine research.
Queries KEGG databases to connect diseases, causal genes, drugs, and variants for drug repurposing and pathway-based target discovery.