- Gene Enrichment and Pathway Analysis
- Perform comprehensive gene enrichment analysis including Gene Ontology (GO), KEGG, Reactome, WikiPathways, and MSigDB enrichment using both Over-Representation Analysis (ORA) and Gene Set Enrichment Analysis (GSEA). Integrates local computation via gseapy with ToolUniverse pathway databases for cross-validated, publication-ready results.
- IMPORTANT
- Always use English terms in tool calls (gene names, pathway names, organism names), even if the user writes in another language. Only try original-language terms as a fallback if English returns no results. Respond in the user's language. When to Use This Skill Apply when users: Ask about gene enrichment analysis (GO, KEGG, Reactome, etc.) Have a gene list from differential expression, clustering, or any experiment Want to know which biological processes, molecular functions, or cellular components are enriched Need KEGG or Reactome pathway enrichment analysis Ask about GSEA (Gene Set Enrichment Analysis) with ranked gene lists Want over-representation analysis (ORA) with Fisher's exact test Need multiple testing correction (Benjamini-Hochberg, Bonferroni) Ask about enrichGO, gseapy, clusterProfiler-style analyses NOT for (use other skills instead): Network pharmacology / drug repurposing → Use tooluniverse-network-pharmacology Disease characterization → Use tooluniverse-multiomic-disease-characterization Single gene function lookup → Use tooluniverse-disease-research Spatial omics analysis → Use tooluniverse-spatial-omics-analysis Protein-protein interaction analysis only → Use tooluniverse-protein-interactions Input Parameters Parameter Required Description Example gene_list Yes List of gene symbols, Ensembl IDs, or Entrez IDs ["TP53", "BRCA1", "EGFR"] organism No Organism (default: human). Supported: human, mouse, rat, fly, worm, yeast, zebrafish human analysis_type No ORA (default) or GSEA ORA enrichment_databases No Which databases to query. Default: all applicable ["GO_BP", "GO_MF", "GO_CC", "KEGG", "Reactome"] gene_id_type No Input ID type: symbol , ensembl , entrez , uniprot (auto-detected if omitted) symbol p_value_cutoff No Significance threshold (default: 0.05) 0.05 correction_method No Multiple testing: BH (Benjamini-Hochberg, default), bonferroni , fdr BH background_genes No Custom background gene set (default: genome-wide) ["GENE1", "GENE2", ...] ranked_gene_list No For GSEA: gene-to-score mapping (e.g., log2FC) {"TP53": 2.5, "BRCA1": -1.3, ...} Core Principles Report-first approach - Create report file FIRST, then populate progressively ID disambiguation FIRST - Detect and convert gene IDs before ANY enrichment Multi-source validation - Run enrichment on at least 2 independent tools, cross-validate Exact p-values - Report raw p-values AND adjusted p-values with correction method Multiple testing correction - ALWAYS apply Benjamini-Hochberg unless user specifies otherwise Gene set size filtering - Filter by min/max gene set size to avoid trivial/overly broad terms Evidence grading - Grade enrichment sources T1-T4 Negative results documented - "No significant enrichment" is a valid finding Source references - Every enrichment result must cite the tool/database/library used Completeness checklist - Mandatory section at end showing analysis coverage Decision Tree: ORA vs GSEA Q: Do you have a ranked gene list (with scores/fold-changes)? YES → Use GSEA (gseapy.prerank) - Input: Gene-to-score mapping (e.g., log2FC) - Statistics: Running enrichment score, permutation test - Cutoff: FDR q-val < 0.25 (standard for GSEA) - Output: NES (Normalized Enrichment Score), lead genes See: references/gsea_workflow.md NO → Use ORA (gseapy.enrichr) - Input: Gene list only - Statistics: Fisher's exact test, hypergeometric - Cutoff: Adjusted P-value < 0.05 (or user specified) - Output: P-value, adjusted P-value, overlap, odds ratio See: references/ora_workflow.md Decision Tree: gseapy vs ToolUniverse Tools Q: Which enrichment method should I use? Primary Analysis (ALWAYS): ├─ gseapy.enrichr (ORA) OR gseapy.prerank (GSEA) │ - Most comprehensive (225+ Enrichr libraries) │ - GO (BP, MF, CC), KEGG, Reactome, WikiPathways, MSigDB │ - All organisms supported │ - Returns: P-value, Adjusted P-value, Overlap, Genes │ See: references/enrichr_guide.md Cross-Validation (REQUIRED for publication): ├─ PANTHER_enrichment [T1 - curated] │ - Curated GO enrichment │ - Multiple organisms (taxonomy ID) │ - GO BP, MF, CC, PANTHER pathways, Reactome │ ├─ STRING_functional_enrichment [T2 - validated] │ - Returns ALL categories in one call │ - Filter by category: Process, Function, Component, KEGG, Reactome │ - Network-based enrichment │ └─ ReactomeAnalysis_pathway_enrichment [T1 - curated] - Reactome curated pathways - Cross-species projection - Detailed pathway hierarchy Additional Context (Optional): ├─ GO_get_term_by_id, QuickGO_get_term_detail (GO term details) ├─ Reactome_get_pathway, Reactome_get_pathway_hierarchy (pathway context) ├─ WikiPathways_search, WikiPathways_get_pathway (community pathways) └─ STRING_ppi_enrichment (network topology analysis) Quick Start Workflow Step 1: Create Report File (IMMEDIATE) report_path = f" { analysis_name } _enrichment_report.md"
Write header with placeholder sections
Update progressively as analysis proceeds
Step 2: ID Conversion and Validation from tooluniverse import ToolUniverse tu = ToolUniverse ( ) tu . load_tools ( )
Detect ID type
gene_list
[ "TP53" , "BRCA1" , "EGFR" ]
Auto-detect: ENSG* = Ensembl, numeric = Entrez, pattern = UniProt, else = Symbol
Convert if needed (Ensembl/Entrez → Symbol)
result
tu . tools . MyGene_batch_query ( gene_ids = gene_list , fields = "symbol,entrezgene,ensembl.gene" )
Extract symbols from results
Validate with STRING
mapped
tu . tools . STRING_map_identifiers ( protein_ids = gene_symbols , species = 9606
human
)
Use preferredName for canonical symbols
- See
- references/id_conversion.md for complete examples Step 3: Primary Enrichment with gseapy For ORA (gene list only) : import gseapy
GO Biological Process
go_bp
gseapy . enrichr ( gene_list = gene_symbols , gene_sets = 'GO_Biological_Process_2021' , organism = 'human' , outdir = None , no_plot = True , background = background_genes
None = genome-wide
) go_bp_sig = go_bp . results [ go_bp . results [ 'Adjusted P-value' ] < 0.05 ] For GSEA (ranked gene list) : import pandas as pd
Ranked by log2FC
ranked_series
pd . Series ( gene_to_score ) . sort_values ( ascending = False ) gsea_result = gseapy . prerank ( rnk = ranked_series , gene_sets = 'GO_Biological_Process_2021' , outdir = None , no_plot = True , seed = 42 , min_size = 5 , max_size = 500 , permutation_num = 1000 ) gsea_sig = gsea_result . res2d [ gsea_result . res2d [ 'FDR q-val' ] < 0.25 ] See : references/ora_workflow.md for complete ORA examples references/gsea_workflow.md for complete GSEA examples references/enrichr_guide.md for all 225+ libraries Step 4: Cross-Validation with ToolUniverse
PANTHER [T1 - curated]
panther_bp
tu . tools . PANTHER_enrichment ( gene_list = ',' . join ( gene_symbols ) ,
comma-separated string
organism
9606 , annotation_dataset = 'GO:0008150'
biological_process
)
STRING [T2 - validated]
string_result
tu . tools . STRING_functional_enrichment ( protein_ids = gene_symbols , species = 9606 )
Filter by category: Process, Function, Component, KEGG, Reactome
Reactome [T1 - curated]
reactome_result
tu . tools . ReactomeAnalysis_pathway_enrichment ( identifiers = ' ' . join ( gene_symbols ) ,
space-separated
page_size
- 50
- ,
- include_disease
- =
- True
- )
- See
- references/cross_validation.md for comparison strategies Step 5: Report Compilation
Results
GO Biological Process (Top 10) | Term | P-value | Adj. P-value | Overlap | Genes | Evidence | |
|
|
|
|
|
| | regulation of cell cycle (GO:0051726) | 1.2e-08 | 3.4e-06 | 12/45 | TP53;BRCA1;... | [T2] gseapy |
Cross-Validation | GO Term | gseapy FDR | PANTHER FDR | STRING FDR | Consensus | |
|
|
|
|
| | GO:0051726 | 3.4e-06 | 2.1e-05 | 1.8e-05 | 3/3 ✓ |
Completeness Checklist
[x] ID Conversion (MyGene, STRING) - 95% mapped
[x] GO BP (gseapy, PANTHER, STRING) - 24 significant terms
[x] GO MF (gseapy, PANTHER, STRING) - 18 significant terms
[x] GO CC (gseapy, PANTHER, STRING) - 12 significant terms
[x] KEGG (gseapy, STRING) - 8 significant pathways
[x] Reactome (gseapy, ReactomeAPI) - 15 significant pathways
- [x] Cross-validation - 12 consensus terms (2+ sources)
- See
-
- scripts/format_enrichment_output.py for automated formatting
- Evidence Grading
- Tier
- Symbol
- Criteria
- Examples
- T1
- [T1]
- Curated/experimental enrichment
- PANTHER, Reactome Analysis Service
- T2
- [T2]
- Computational enrichment, well-validated
- gseapy ORA/GSEA, STRING functional enrichment
- T3
- [T3]
- Text-mining/predicted enrichment
- Enrichr non-curated libraries
- T4
- [T4]
- Single-source annotation
- Individual gene GO annotations from QuickGO
- Supported Organisms
- Organism
- Taxonomy ID
- gseapy
- PANTHER
- STRING
- Reactome
- Human
- 9606
- Yes
- Yes
- Yes
- Yes
- Mouse
- 10090
- Yes (
- *_Mouse
- )
- Yes
- Yes
- Yes (projection)
- Rat
- 10116
- Limited
- Yes
- Yes
- Yes (projection)
- Fly
- 7227
- Limited
- Yes
- Yes
- Yes (projection)
- Worm
- 6239
- Limited
- Yes
- Yes
- Yes (projection)
- Yeast
- 4932
- Limited
- Yes
- Yes
- Yes
- See
-
- references/organism_support.md for organism-specific libraries
- Common Patterns
- Pattern 1: Standard DEG Enrichment (ORA)
- Input: List of differentially expressed gene symbols
- Flow: ID validation → gseapy ORA (GO + KEGG + Reactome) →
- PANTHER + STRING cross-validation → Report top enriched terms
- Use: When you have unranked gene list from DESeq2/edgeR
- Pattern 2: Ranked Gene List (GSEA)
- Input: Gene-to-log2FC mapping from differential expression
- Flow: Convert to ranked Series → gseapy GSEA (GO + KEGG + MSigDB) →
- Filter by FDR < 0.25 → Report NES and lead genes
- Use: When you have fold-changes or other ranking metric
- Pattern 3: BixBench Enrichment Question
- Input: Specific question about enrichment (e.g., "What is the adjusted p-val for neutrophil activation?")
- Flow: Parse question for gene list and library → Run gseapy with exact library →
- Find specific term → Report exact p-value and adjusted p-value
- Use: When answering targeted questions about specific terms
- Pattern 4: Multi-Organism Enrichment
- Input: Gene list from mouse experiment
- Flow: Use organism='mouse' for gseapy → organism=10090 for PANTHER/STRING →
- projection=True for Reactome human pathway mapping
- Use: When working with non-human organisms
- See
-
- references/common_patterns.md for more examples
- Troubleshooting
- "No significant enrichment found"
- :
- Verify gene symbols are valid (STRING_map_identifiers)
- Try different library versions (2021 vs 2023 vs 2025)
- Try relaxing significance cutoff or use GSEA instead
- "Gene not found" errors
- :
- Check ID type and convert using MyGene_batch_query
- Remove version suffixes from Ensembl IDs (ENSG00000141510.16 → ENSG00000141510)
- "STRING returns all categories"
- :
- This is expected; filter by
- d['category'] == 'Process'
- after receiving results
- See
-
- references/troubleshooting.md for complete guide
- Tool Reference
- Primary Enrichment Tools
- Tool
- Input
- Output
- Use For
- gseapy.enrichr()
- gene_list, gene_sets, organism
- .results
- DataFrame
- ORA with 225+ libraries
- gseapy.prerank()
- rnk (ranked Series), gene_sets
- .res2d
- DataFrame
- GSEA analysis
- Cross-Validation Tools
- Tool
- Key Parameters
- Evidence Grade
- PANTHER_enrichment
- gene_list (comma-sep), organism, annotation_dataset
- [T1]
- STRING_functional_enrichment
- protein_ids, species
- [T2]
- ReactomeAnalysis_pathway_enrichment
- identifiers (space-sep), page_size
- [T1]
- ID Conversion Tools
- Tool
- Input
- Output
- MyGene_batch_query
- gene_ids, fields
- Symbol, Entrez, Ensembl mappings
- STRING_map_identifiers
- protein_ids, species
- Preferred names, STRING IDs
- See
- references/tool_parameters.md for complete parameter documentation Detailed Documentation All detailed examples, code blocks, and advanced topics have been moved to references/ : references/ora_workflow.md - Complete ORA examples with all databases references/gsea_workflow.md - Complete GSEA workflow with ranked lists references/enrichr_guide.md - All 225+ Enrichr libraries and usage references/cross_validation.md - Multi-source validation strategies references/id_conversion.md - Gene ID disambiguation and conversion references/tool_parameters.md - Complete tool parameter reference references/organism_support.md - Organism-specific configurations references/common_patterns.md - Detailed use case examples references/troubleshooting.md - Complete troubleshooting guide references/multiple_testing.md - Correction methods (BH, Bonferroni, BY) references/report_template.md - Standard report format Helper scripts: scripts/format_enrichment_output.py - Format results for reports scripts/compare_enrichment_sources.py - Cross-validation analysis scripts/filter_by_gene_set_size.py - Filter terms by size Resources For network-level analysis: tooluniverse-network-pharmacology For disease characterization: tooluniverse-multiomic-disease-characterization For spatial omics: tooluniverse-spatial-omics-analysis For protein interactions: tooluniverse-protein-interactions gseapy documentation: https://gseapy.readthedocs.io/ PANTHER API: http://pantherdb.org/services/oai/pantherdb/ STRING API: https://string-db.org/cgi/help?sessionId=&subpage=api Reactome Analysis: https://reactome.org/AnalysisService/