Agent skill

bio-pathway-kegg-pathways

KEGG pathway and module enrichment analysis using clusterProfiler enrichKEGG and enrichMKEGG. Use when identifying metabolic and signaling pathways over-represented in a gene list. Supports 4000+ organisms via KEGG online database.

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Install this agent skill to your Project

npx add-skill https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills/tree/main/skills/bio-pathway-kegg-pathways

SKILL.md

Version Compatibility

Reference examples tested with: R stats (base), clusterProfiler 4.10+

Before using code patterns, verify installed versions match. If versions differ:

  • R: packageVersion('<pkg>') then ?function_name to verify parameters

If code throws ImportError, AttributeError, or TypeError, introspect the installed package and adapt the example to match the actual API rather than retrying.

KEGG Pathway Enrichment

Core Pattern

Goal: Identify KEGG metabolic and signaling pathways over-represented in a gene list.

Approach: Test for enrichment using the hypergeometric test via clusterProfiler enrichKEGG against the KEGG online database.

"Find enriched KEGG pathways in my gene list" → Test whether KEGG pathway gene sets are over-represented among significant genes.

r
library(clusterProfiler)

kk <- enrichKEGG(
    gene = gene_list,           # Character vector of gene IDs
    organism = 'hsa',           # KEGG organism code
    pvalueCutoff = 0.05,
    pAdjustMethod = 'BH'
)

Prepare Gene List

Goal: Extract significant Entrez gene IDs from DE results in the format required by enrichKEGG.

Approach: Filter by significance thresholds and convert gene symbols to Entrez IDs (KEGG requires NCBI Entrez).

r
library(org.Hs.eg.db)

de_results <- read.csv('de_results.csv')
sig_genes <- de_results$gene_id[de_results$padj < 0.05 & abs(de_results$log2FoldChange) > 1]

# KEGG requires NCBI Entrez gene IDs (kegg, ncbi-geneid)
gene_ids <- bitr(sig_genes, fromType = 'SYMBOL', toType = 'ENTREZID', OrgDb = org.Hs.eg.db)
gene_list <- gene_ids$ENTREZID

KEGG ID Conversion

Goal: Convert between KEGG-specific identifiers and other gene ID formats.

Approach: Use bitr_kegg to map between kegg, ncbi-geneid, ncbi-proteinid, and uniprot ID types.

r
# Convert between KEGG and other IDs
kegg_ids <- bitr_kegg(gene_list, fromType = 'ncbi-geneid', toType = 'kegg', organism = 'hsa')

# Available types: kegg, ncbi-geneid, ncbi-proteinid, uniprot

Run KEGG Pathway Enrichment

Goal: Perform KEGG pathway over-representation analysis with customizable parameters.

Approach: Run enrichKEGG with specified organism, ID type, and statistical thresholds.

r
kk <- enrichKEGG(
    gene = gene_list,
    organism = 'hsa',
    keyType = 'ncbi-geneid',    # or 'kegg'
    pvalueCutoff = 0.05,
    pAdjustMethod = 'BH',
    minGSSize = 10,
    maxGSSize = 500
)

# View results
head(kk)
results <- as.data.frame(kk)

Make Results Readable

r
# enrichKEGG does NOT have readable parameter - use setReadable
library(org.Hs.eg.db)
kk_readable <- setReadable(kk, OrgDb = org.Hs.eg.db, keyType = 'ENTREZID')

KEGG Module Enrichment

Goal: Test for enrichment of KEGG modules (smaller functional units than pathways).

Approach: Use enrichMKEGG which tests against KEGG module definitions rather than full pathways.

r
# KEGG modules are smaller functional units than pathways
mkk <- enrichMKEGG(
    gene = gene_list,
    organism = 'hsa',
    pvalueCutoff = 0.05
)

Common Organism Codes

Organism Code Common Name
hsa Human Homo sapiens
mmu Mouse Mus musculus
rno Rat Rattus norvegicus
dre Zebrafish Danio rerio
dme Fruit fly Drosophila melanogaster
cel Worm C. elegans
sce Yeast S. cerevisiae
ath Arabidopsis A. thaliana
eco E. coli K-12
r
# Find organism codes
search_kegg_organism('mouse')
search_kegg_organism('zebrafish')

With Background Universe

Goal: Restrict KEGG enrichment to genes actually measured in the experiment.

Approach: Convert all tested genes to Entrez IDs and pass as the universe parameter.

r
all_genes <- de_results$gene_id
universe_ids <- bitr(all_genes, fromType = 'SYMBOL', toType = 'ENTREZID', OrgDb = org.Hs.eg.db)

kk <- enrichKEGG(
    gene = gene_list,
    universe = universe_ids$ENTREZID,
    organism = 'hsa',
    pvalueCutoff = 0.05
)

Extract and Export Results

Goal: Save KEGG enrichment results to CSV and extract genes belonging to specific pathways.

Approach: Convert enrichment object to data frame, export, and access pathway gene sets via the geneSets slot.

r
# Convert to data frame
results_df <- as.data.frame(kk)

# Key columns: ID (pathway), Description, GeneRatio, BgRatio, pvalue, p.adjust, geneID, Count

# Export
write.csv(results_df, 'kegg_enrichment_results.csv', row.names = FALSE)

# Get genes in a specific pathway
pathway_genes <- kk@geneSets[['hsa04110']]  # Cell cycle

Browse KEGG Pathways

Goal: Visualize enriched genes overlaid on KEGG pathway diagrams.

Approach: Use browseKEGG for interactive browser view or pathview to generate annotated pathway images.

r
# View pathway in browser (opens KEGG website)
browseKEGG(kk, 'hsa04110')

# Download pathway image
library(pathview)
pathview(gene.data = gene_list, pathway.id = 'hsa04110', species = 'hsa')

Key Parameters

Parameter Default Description
gene required Vector of gene IDs
organism hsa KEGG organism code
keyType kegg Input ID type
pvalueCutoff 0.05 P-value threshold
qvalueCutoff 0.2 Q-value threshold
pAdjustMethod BH Adjustment method
universe NULL Background genes
minGSSize 10 Min genes per pathway
maxGSSize 500 Max genes per pathway
use_internal_data FALSE Use local KEGG data

Compare Multiple Gene Lists

Goal: Compare KEGG pathway enrichment across multiple gene lists (e.g., upregulated vs downregulated).

Approach: Use compareCluster with enrichKEGG to run enrichment per group and visualize with dotplot.

r
# Compare KEGG enrichment across groups
gene_lists <- list(
    up = up_genes,
    down = down_genes
)

ck <- compareCluster(
    geneClusters = gene_lists,
    fun = 'enrichKEGG',
    organism = 'hsa'
)

dotplot(ck)

Notes

  • No readable parameter - use setReadable() with OrgDb
  • Requires internet - queries KEGG database online
  • use_internal_data - set TRUE to use cached KEGG data (may be outdated)
  • Pathway IDs - format is organism code + 5 digits (e.g., hsa04110)

Related Skills

  • go-enrichment - Gene Ontology enrichment analysis
  • gsea - GSEA using KEGG pathways (gseKEGG)
  • enrichment-visualization - Visualize KEGG results

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