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This skill provides direct KEGG REST API access for academic use, enabling pathway, gene, and drug data retrieval with Python workflows.

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---
name: kegg-database
description: "Direct REST API access to KEGG (academic use only). Pathway analysis, gene-pathway mapping, metabolic pathways, drug interactions, ID conversion. For Python workflows with multiple databases, prefer bioservices. Use this for direct HTTP/REST work or KEGG-specific control."
---

# KEGG Database

## Overview

KEGG (Kyoto Encyclopedia of Genes and Genomes) is a comprehensive bioinformatics resource for biological pathway analysis and molecular interaction networks.

**Important**: KEGG API is made available only for academic use by academic users.

## When to Use This Skill

This skill should be used when querying pathways, genes, compounds, enzymes, diseases, and drugs across multiple organisms using KEGG's REST API.

## Quick Start

The skill provides:
1. Python helper functions (`scripts/kegg_api.py`) for all KEGG REST API operations
2. Comprehensive reference documentation (`references/kegg_reference.md`) with detailed API specifications

When users request KEGG data, determine which operation is needed and use the appropriate function from `scripts/kegg_api.py`.

## Core Operations

### 1. Database Information (`kegg_info`)

Retrieve metadata and statistics about KEGG databases.

**When to use**: Understanding database structure, checking available data, getting release information.

**Usage**:
```python
from scripts.kegg_api import kegg_info

# Get pathway database info
info = kegg_info('pathway')

# Get organism-specific info
hsa_info = kegg_info('hsa')  # Human genome
```

**Common databases**: `kegg`, `pathway`, `module`, `brite`, `genes`, `genome`, `compound`, `glycan`, `reaction`, `enzyme`, `disease`, `drug`

### 2. Listing Entries (`kegg_list`)

List entry identifiers and names from KEGG databases.

**When to use**: Getting all pathways for an organism, listing genes, retrieving compound catalogs.

**Usage**:
```python
from scripts.kegg_api import kegg_list

# List all reference pathways
pathways = kegg_list('pathway')

# List human-specific pathways
hsa_pathways = kegg_list('pathway', 'hsa')

# List specific genes (max 10)
genes = kegg_list('hsa:10458+hsa:10459')
```

**Common organism codes**: `hsa` (human), `mmu` (mouse), `dme` (fruit fly), `sce` (yeast), `eco` (E. coli)

### 3. Searching (`kegg_find`)

Search KEGG databases by keywords or molecular properties.

**When to use**: Finding genes by name/description, searching compounds by formula or mass, discovering entries by keywords.

**Usage**:
```python
from scripts.kegg_api import kegg_find

# Keyword search
results = kegg_find('genes', 'p53')
shiga_toxin = kegg_find('genes', 'shiga toxin')

# Chemical formula search (exact match)
compounds = kegg_find('compound', 'C7H10N4O2', 'formula')

# Molecular weight range search
drugs = kegg_find('drug', '300-310', 'exact_mass')
```

**Search options**: `formula` (exact match), `exact_mass` (range), `mol_weight` (range)

### 4. Retrieving Entries (`kegg_get`)

Get complete database entries or specific data formats.

**When to use**: Retrieving pathway details, getting gene/protein sequences, downloading pathway maps, accessing compound structures.

**Usage**:
```python
from scripts.kegg_api import kegg_get

# Get pathway entry
pathway = kegg_get('hsa00010')  # Glycolysis pathway

# Get multiple entries (max 10)
genes = kegg_get(['hsa:10458', 'hsa:10459'])

# Get protein sequence (FASTA)
sequence = kegg_get('hsa:10458', 'aaseq')

# Get nucleotide sequence
nt_seq = kegg_get('hsa:10458', 'ntseq')

# Get compound structure
mol_file = kegg_get('cpd:C00002', 'mol')  # ATP in MOL format

# Get pathway as JSON (single entry only)
pathway_json = kegg_get('hsa05130', 'json')

# Get pathway image (single entry only)
pathway_img = kegg_get('hsa05130', 'image')
```

**Output formats**: `aaseq` (protein FASTA), `ntseq` (nucleotide FASTA), `mol` (MOL format), `kcf` (KCF format), `image` (PNG), `kgml` (XML), `json` (pathway JSON)

**Important**: Image, KGML, and JSON formats allow only one entry at a time.

### 5. ID Conversion (`kegg_conv`)

Convert identifiers between KEGG and external databases.

**When to use**: Integrating KEGG data with other databases, mapping gene IDs, converting compound identifiers.

**Usage**:
```python
from scripts.kegg_api import kegg_conv

# Convert all human genes to NCBI Gene IDs
conversions = kegg_conv('ncbi-geneid', 'hsa')

# Convert specific gene
gene_id = kegg_conv('ncbi-geneid', 'hsa:10458')

# Convert to UniProt
uniprot_id = kegg_conv('uniprot', 'hsa:10458')

# Convert compounds to PubChem
pubchem_ids = kegg_conv('pubchem', 'compound')

# Reverse conversion (NCBI Gene ID to KEGG)
kegg_id = kegg_conv('hsa', 'ncbi-geneid')
```

**Supported conversions**: `ncbi-geneid`, `ncbi-proteinid`, `uniprot`, `pubchem`, `chebi`

### 6. Cross-Referencing (`kegg_link`)

Find related entries within and between KEGG databases.

**When to use**: Finding pathways containing genes, getting genes in a pathway, mapping genes to KO groups, finding compounds in pathways.

**Usage**:
```python
from scripts.kegg_api import kegg_link

# Find pathways linked to human genes
pathways = kegg_link('pathway', 'hsa')

# Get genes in a specific pathway
genes = kegg_link('genes', 'hsa00010')  # Glycolysis genes

# Find pathways containing a specific gene
gene_pathways = kegg_link('pathway', 'hsa:10458')

# Find compounds in a pathway
compounds = kegg_link('compound', 'hsa00010')

# Map genes to KO (orthology) groups
ko_groups = kegg_link('ko', 'hsa:10458')
```

**Common links**: genes ↔ pathway, pathway ↔ compound, pathway ↔ enzyme, genes ↔ ko (orthology)

### 7. Drug-Drug Interactions (`kegg_ddi`)

Check for drug-drug interactions.

**When to use**: Analyzing drug combinations, checking for contraindications, pharmacological research.

**Usage**:
```python
from scripts.kegg_api import kegg_ddi

# Check single drug
interactions = kegg_ddi('D00001')

# Check multiple drugs (max 10)
interactions = kegg_ddi(['D00001', 'D00002', 'D00003'])
```

## Common Analysis Workflows

### Workflow 1: Gene to Pathway Mapping

**Use case**: Finding pathways associated with genes of interest (e.g., for pathway enrichment analysis).

```python
from scripts.kegg_api import kegg_find, kegg_link, kegg_get

# Step 1: Find gene ID by name
gene_results = kegg_find('genes', 'p53')

# Step 2: Link gene to pathways
pathways = kegg_link('pathway', 'hsa:7157')  # TP53 gene

# Step 3: Get detailed pathway information
for pathway_line in pathways.split('\n'):
    if pathway_line:
        pathway_id = pathway_line.split('\t')[1].replace('path:', '')
        pathway_info = kegg_get(pathway_id)
        # Process pathway information
```

### Workflow 2: Pathway Enrichment Context

**Use case**: Getting all genes in organism pathways for enrichment analysis.

```python
from scripts.kegg_api import kegg_list, kegg_link

# Step 1: List all human pathways
pathways = kegg_list('pathway', 'hsa')

# Step 2: For each pathway, get associated genes
for pathway_line in pathways.split('\n'):
    if pathway_line:
        pathway_id = pathway_line.split('\t')[0]
        genes = kegg_link('genes', pathway_id)
        # Process genes for enrichment analysis
```

### Workflow 3: Compound to Pathway Analysis

**Use case**: Finding metabolic pathways containing compounds of interest.

```python
from scripts.kegg_api import kegg_find, kegg_link, kegg_get

# Step 1: Search for compound
compound_results = kegg_find('compound', 'glucose')

# Step 2: Link compound to reactions
reactions = kegg_link('reaction', 'cpd:C00031')  # Glucose

# Step 3: Link reactions to pathways
pathways = kegg_link('pathway', 'rn:R00299')  # Specific reaction

# Step 4: Get pathway details
pathway_info = kegg_get('map00010')  # Glycolysis
```

### Workflow 4: Cross-Database Integration

**Use case**: Integrating KEGG data with UniProt, NCBI, or PubChem databases.

```python
from scripts.kegg_api import kegg_conv, kegg_get

# Step 1: Convert KEGG gene IDs to external database IDs
uniprot_map = kegg_conv('uniprot', 'hsa')
ncbi_map = kegg_conv('ncbi-geneid', 'hsa')

# Step 2: Parse conversion results
for line in uniprot_map.split('\n'):
    if line:
        kegg_id, uniprot_id = line.split('\t')
        # Use external IDs for integration

# Step 3: Get sequences using KEGG
sequence = kegg_get('hsa:10458', 'aaseq')
```

### Workflow 5: Organism-Specific Pathway Analysis

**Use case**: Comparing pathways across different organisms.

```python
from scripts.kegg_api import kegg_list, kegg_get

# Step 1: List pathways for multiple organisms
human_pathways = kegg_list('pathway', 'hsa')
mouse_pathways = kegg_list('pathway', 'mmu')
yeast_pathways = kegg_list('pathway', 'sce')

# Step 2: Get reference pathway for comparison
ref_pathway = kegg_get('map00010')  # Reference glycolysis

# Step 3: Get organism-specific versions
hsa_glycolysis = kegg_get('hsa00010')
mmu_glycolysis = kegg_get('mmu00010')
```

## Pathway Categories

KEGG organizes pathways into seven major categories. When interpreting pathway IDs or recommending pathways to users:

1. **Metabolism** (e.g., `map00010` - Glycolysis, `map00190` - Oxidative phosphorylation)
2. **Genetic Information Processing** (e.g., `map03010` - Ribosome, `map03040` - Spliceosome)
3. **Environmental Information Processing** (e.g., `map04010` - MAPK signaling, `map02010` - ABC transporters)
4. **Cellular Processes** (e.g., `map04140` - Autophagy, `map04210` - Apoptosis)
5. **Organismal Systems** (e.g., `map04610` - Complement cascade, `map04910` - Insulin signaling)
6. **Human Diseases** (e.g., `map05200` - Pathways in cancer, `map05010` - Alzheimer disease)
7. **Drug Development** (chronological and target-based classifications)

Reference `references/kegg_reference.md` for detailed pathway lists and classifications.

## Important Identifiers and Formats

### Pathway IDs
- `map#####` - Reference pathway (generic, not organism-specific)
- `hsa#####` - Human pathway
- `mmu#####` - Mouse pathway

### Gene IDs
- Format: `organism:gene_number` (e.g., `hsa:10458`)

### Compound IDs
- Format: `cpd:C#####` (e.g., `cpd:C00002` for ATP)

### Drug IDs
- Format: `dr:D#####` (e.g., `dr:D00001`)

### Enzyme IDs
- Format: `ec:EC_number` (e.g., `ec:1.1.1.1`)

### KO (KEGG Orthology) IDs
- Format: `ko:K#####` (e.g., `ko:K00001`)

## API Limitations

Respect these constraints when using the KEGG API:

1. **Entry limits**: Maximum 10 entries per operation (except image/kgml/json: 1 entry only)
2. **Academic use**: API is for academic use only; commercial use requires licensing
3. **HTTP status codes**: Check for 200 (success), 400 (bad request), 404 (not found)
4. **Rate limiting**: No explicit limit, but avoid rapid-fire requests

## Detailed Reference

For comprehensive API documentation, database specifications, organism codes, and advanced usage, refer to `references/kegg_reference.md`. This includes:

- Complete list of KEGG databases
- Detailed API operation syntax
- All organism codes
- HTTP status codes and error handling
- Integration with Biopython and R/Bioconductor
- Best practices for API usage

## Troubleshooting

**404 Not Found**: Entry or database doesn't exist; verify IDs and organism codes
**400 Bad Request**: Syntax error in API call; check parameter formatting
**Empty results**: Search term may not match entries; try broader keywords
**Image/KGML errors**: These formats only work with single entries; remove batch processing

## Additional Tools

For interactive pathway visualization and annotation:
- **KEGG Mapper**: https://www.kegg.jp/kegg/mapper/
- **BlastKOALA**: Automated genome annotation
- **GhostKOALA**: Metagenome/metatranscriptome annotation

Overview

This skill provides direct REST API access to the KEGG database for academic pathway, gene, compound, enzyme, disease, and drug queries. It supplies Python helper functions that wrap KEGG REST endpoints to support pathway analysis, ID conversion, gene-pathway mapping, and drug interaction checks. Use it when you need KEGG-specific control or direct HTTP/REST integration rather than higher-level libraries.

How this skill works

The skill exposes Python helper functions that implement KEGG REST operations: kegg_info, kegg_list, kegg_find, kegg_get, kegg_conv, kegg_link, and kegg_ddi. Each function maps to one or more KEGG endpoints and returns raw text, sequence formats, images, KGML/XML, or JSON where supported. The wrappers enforce API constraints (max entries per call, single-entry formats) and expect academic-use workflows.

When to use it

  • Query organism-specific or reference pathways and retrieve pathway maps or JSON.
  • Map gene lists to pathways or fetch genes contained in a pathway for enrichment analysis.
  • Convert identifiers between KEGG and external databases (NCBI, UniProt, PubChem, ChEBI).
  • Search compounds by formula, exact mass, or keywords and fetch molecular formats (MOL, KCF).
  • Check drug-drug interactions or enumerate drug-related pathway links for pharmacology research.

Best practices

  • Respect academic-use licensing and avoid commercial use without authorization.
  • Limit requests to the documented entry caps (max 10 entries per call; single-entry for image/KGML/JSON).
  • Batch queries conservatively and add small delays if running many calls to avoid server stress.
  • Validate IDs and organism codes before calling endpoints to reduce 400/404 errors.
  • Prefer conversion (kegg_conv) before downstream integration with UniProt, NCBI, or PubChem.

Example use cases

  • Map a differential gene list to KEGG pathways to prepare input for enrichment analysis.
  • Fetch human pathway images or KGML for visualization and overlay experimental results.
  • Convert KEGG gene IDs to NCBI Gene or UniProt IDs to integrate sequences into a pipeline.
  • Trace a metabolite through reactions and pathways to identify metabolic context for a compound.
  • Check possible interactions among a set of drugs using KEGG DDI for pharmacological safety checks.

FAQ

Is the KEGG API usable for commercial projects?

No. The KEGG REST API access available here is for academic use only; commercial use requires licensing from KEGG.

What formats can I request from kegg_get?

Supported formats include protein (aaseq), nucleotide (ntseq), MOL, KCF, image (PNG), KGML (XML), and JSON for pathways, noting that image/KGML/JSON accept only one entry at a time.

How many entries can I fetch per request?

Most operations accept up to 10 entries per call; image, KGML, and JSON formats accept a single entry only.