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GO/KEGG Enrichment

Performs GO (Gene Ontology) and KEGG pathway enrichment analysis on gene lists. Trigger when: - User provides a list of genes (symbols or IDs) and asks for e...

v1.0.0
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Description


name: go-kegg-enrichment description: "Performs GO (Gene Ontology) and KEGG pathway enrichment analysis on
\ gene lists.\nTrigger when: \n- User provides a list of genes (symbols or IDs)
\ and asks for enrichment analysis\n- User mentions "GO enrichment", "KEGG enrichment"
, "pathway analysis"\n- User wants to understand biological functions of gene
\ sets\n- User provides differentially expressed genes (DEGs) and asks for interpretation\n\

  • Input: gene list (file or inline), organism (human/mouse/rat), background gene
    \ set (optional)\n- Output: enriched terms, statistics, visualizations (barplot,
    \ dotplot, enrichment map)" version: 1.0.0 category: Bioinfo tags: [] author: AIPOCH license: MIT status: Draft risk_level: Medium skill_type: Tool/Script owner: AIPOCH reviewer: '' last_updated: '2026-02-06'

GO/KEGG Enrichment Analysis

Automated pipeline for Gene Ontology and KEGG pathway enrichment analysis with result interpretation and visualization.

Features

  • GO Enrichment: Biological Process (BP), Molecular Function (MF), Cellular Component (CC)
  • KEGG Pathway: Pathway enrichment with organism-specific mapping
  • Multiple ID Support: Gene symbols, Entrez IDs, Ensembl IDs, RefSeq
  • Statistical Methods: Hypergeometric test, Fisher's exact test, GSEA support
  • Visualizations: Bar plots, dot plots, enrichment maps, cnet plots
  • Result Interpretation: Automatic biological significance summary

Supported Organisms

Common Name Scientific Name KEGG Code OrgDB Package
Human Homo sapiens hsa org.Hs.eg.db
Mouse Mus musculus mmu org.Mm.eg.db
Rat Rattus norvegicus rno org.Rn.eg.db
Zebrafish Danio rerio dre org.Dr.eg.db
Fly Drosophila melanogaster dme org.Dm.eg.db
Yeast Saccharomyces cerevisiae sce org.Sc.sgd.db

Usage

Basic Usage

# Run enrichment analysis with gene list
python scripts/main.py --genes gene_list.txt --organism human --output results/

Parameters

Parameter Description Default Required
--genes Path to gene list file (one gene per line) - Yes
--organism Organism code (human/mouse/rat/zebrafish/fly/yeast) human No
--id-type Gene ID type (symbol/entrez/ensembl/refseq) symbol No
--background Background gene list file all genes No
--pvalue-cutoff P-value cutoff for significance 0.05 No
--qvalue-cutoff Adjusted p-value (q-value) cutoff 0.2 No
--analysis Analysis type (go/kegg/all) all No
--output Output directory ./enrichment_results No
--format Output format (csv/tsv/excel/all) all No

Advanced Usage

# GO enrichment only with specific ontology
python scripts/main.py \
    --genes deg_upregulated.txt \
    --organism mouse \
    --analysis go \
    --go-ontologies BP,MF \
    --pvalue-cutoff 0.01 \
    --output go_results/

# KEGG enrichment with custom background
python scripts/main.py \
    --genes treatment_genes.txt \
    --background all_expressed_genes.txt \
    --organism human \
    --analysis kegg \
    --qvalue-cutoff 0.05 \
    --output kegg_results/

Input Format

Gene List File

TP53
BRCA1
EGFR
MYC
KRAS
PTEN

With Expression Values (for GSEA)

gene,log2FoldChange
TP53,2.5
BRCA1,-1.8
EGFR,3.2

Output Files

output/
├── go_enrichment/
│   ├── GO_BP_results.csv       # Biological Process results
│   ├── GO_MF_results.csv       # Molecular Function results
│   ├── GO_CC_results.csv       # Cellular Component results
│   ├── GO_BP_barplot.pdf       # Visualization
│   ├── GO_MF_dotplot.pdf
│   └── GO_summary.txt          # Interpretation summary
├── kegg_enrichment/
│   ├── KEGG_results.csv        # Pathway results
│   ├── KEGG_barplot.pdf
│   ├── KEGG_dotplot.pdf
│   └── KEGG_pathview/          # Pathway diagrams
└── combined_report.html        # Interactive report

Result Interpretation

The tool automatically generates biological interpretation including:

  1. Top Enriched Terms: Significant GO terms/pathways ranked by enrichment ratio
  2. Functional Themes: Clustered biological themes from enriched terms
  3. Key Genes: Core genes driving enrichment in significant terms
  4. Network Relationships: Gene-term relationship visualization
  5. Clinical Relevance: Disease associations (for human genes)

Technical Difficulty: HIGH

⚠️ AI自主验收状态: 需人工检查

This skill requires:

  • R/Bioconductor environment with clusterProfiler
  • Multiple annotation databases (org.*.eg.db)
  • KEGG REST API access
  • Complex visualization dependencies

Dependencies

Required R Packages

install.packages(c("BiocManager", "ggplot2", "dplyr", "readr"))
BiocManager::install(c(
    "clusterProfiler", 
    "org.Hs.eg.db", "org.Mm.eg.db", "org.Rn.eg.db",
    "enrichplot", "pathview", "DOSE"
))

Python Dependencies

pip install pandas numpy matplotlib seaborn rpy2

Example Workflow

  1. Prepare Input: Create gene list from DEG analysis
  2. Run Analysis: Execute main.py with appropriate parameters
  3. Review Results: Check generated CSV files and visualizations
  4. Interpret: Read auto-generated summary for biological insights

References

See references/ for:

  • clusterProfiler documentation
  • KEGG API guide
  • Statistical methods explanation
  • Visualization examples

Limitations

  • Requires internet connection for KEGG database queries
  • Large gene lists (>5000) may require increased memory
  • Some pathways may not be available for all organisms
  • KEGG API has rate limits (max 3 requests/second)

Risk Assessment

Risk Indicator Assessment Level
Code Execution Python/R scripts executed locally Medium
Network Access No external API calls Low
File System Access Read input files, write output files Medium
Instruction Tampering Standard prompt guidelines Low
Data Exposure Output files saved to workspace Low

Security Checklist

  • No hardcoded credentials or API keys
  • No unauthorized file system access (../)
  • Output does not expose sensitive information
  • Prompt injection protections in place
  • Input file paths validated (no ../ traversal)
  • Output directory restricted to workspace
  • Script execution in sandboxed environment
  • Error messages sanitized (no stack traces exposed)
  • Dependencies audited

Prerequisites

# Python dependencies
pip install -r requirements.txt

Evaluation Criteria

Success Metrics

  • Successfully executes main functionality
  • Output meets quality standards
  • Handles edge cases gracefully
  • Performance is acceptable

Test Cases

  1. Basic Functionality: Standard input → Expected output
  2. Edge Case: Invalid input → Graceful error handling
  3. Performance: Large dataset → Acceptable processing time

Lifecycle Status

  • Current Stage: Draft
  • Next Review Date: 2026-03-06
  • Known Issues: None
  • Planned Improvements:
    • Performance optimization
    • Additional feature support

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Compatible Platforms

Pricing

Free

Related Configs