bioservices
Unified Python interface to 40+ bioinformatics services for cross-database analysis and ID mapping.
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Installation Guide
How to use bioservices on Cursor
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Prerequisites
Before installing skills in Cursor, ensure your development environment meets these requirements:
- ›Cursor installed and configured on your machine
- ›Node.js 16+ with npm — verify with
node --version - ›Active project directory where you want to add
bioservices
Run the install command
Execute the skills CLI command in your project's root directory to begin installation:
Fetches bioservices from cokelaer/bioservices and configures it for Cursor.
Select Cursor when prompted
The CLI shows a list of agents. Use arrow keys and space to select Cursor:
Verify installation
Confirm successful installation by checking the skill directory location:
Restart Cursor to activate bioservices. Access via /bioservices in your agent's command palette.
Security Notice
We perform automated surface-level scans (Gen AI Scanner, Socket, Snyk) during installation. These checks detect common vulnerabilities but do not guarantee complete security. Always review skill source code and verify the publisher's reputation before production use.
Skills execute code in your environment. Always review source, verify the publisher, and test in isolation before production.
Documentation
| name | bioservices |
| description | Unified Python interface to 40+ bioinformatics services. Use when querying multiple databases (UniProt, KEGG, ChEMBL, Reactome) in a single workflow with consistent API. Best for cross-database analysis, ID mapping across services. For quick single-database lookups use gget; for sequence/file manipulation use biopython. |
| license | GPLv3 license |
| metadata | skill-author: K-Dense Inc. |
BioServices
Overview
BioServices is a Python package providing programmatic access to approximately 40 bioinformatics web services and databases. Retrieve biological data, perform cross-database queries, map identifiers, analyze sequences, and integrate multiple biological resources in Python workflows. The package handles both REST and SOAP/WSDL protocols transparently.
When to Use This Skill
This skill should be used when:
- Retrieving protein sequences, annotations, or structures from UniProt, PDB, Pfam
- Analyzing metabolic pathways and gene functions via KEGG or Reactome
- Searching compound databases (ChEBI, ChEMBL, PubChem) for chemical information
- Converting identifiers between different biological databases (KEGG↔UniProt, compound IDs)
- Running sequence similarity searches (BLAST, MUSCLE alignment)
- Querying gene ontology terms (QuickGO, GO annotations)
- Accessing protein-protein interaction data (PSICQUIC, IntactComplex)
- Mining genomic data (BioMart, ArrayExpress, ENA)
- Integrating data from multiple bioinformatics resources in a single workflow
Core Capabilities
1. Protein Analysis
Retrieve protein information, sequences, and functional annotations:
from bioservices import UniProt
u = UniProt(verbose=False)
# Search for protein by name
results = u.search("ZAP70_HUMAN", frmt="tab", columns="id,genes,organism")
# Retrieve FASTA sequence
sequence = u.retrieve("P43403", "fasta")
# Map identifiers between databases
kegg_ids = u.mapping(fr="UniProtKB_AC-ID", to="KEGG", query="P43403")
Key methods:
search(): Query UniProt with flexible search termsretrieve(): Get protein entries in various formats (FASTA, XML, tab)mapping(): Convert identifiers between databases
Reference: references/services_reference.md for complete UniProt API details.
2. Pathway Discovery and Analysis
Access KEGG pathway information for genes and organisms:
from bioservices import KEGG
k = KEGG()
k.organism = "hsa" # Set to human
# Search for organisms
k.lookfor_organism("droso") # Find Drosophila species
# Find pathways by name
k.lookfor_pathway("B cell") # Returns matching pathway IDs
# Get pathways containing specific genes
pathways = k.get_pathway_by_gene("7535", "hsa") # ZAP70 gene
# Retrieve and parse pathway data
data = k.get("hsa04660")
parsed = k.parse(data)
# Extract pathway interactions
interactions = k.parse_kgml_pathway("hsa04660")
relations = interactions['relations'] # Protein-protein interactions
# Convert to Simple Interaction Format
sif_data = k.pathway2sif("hsa04660")
Key methods:
lookfor_organism(),lookfor_pathway(): Search by nameget_pathway_by_gene(): Find pathways containing genesparse_kgml_pathway(): Extract structured pathway datapathway2sif(): Get protein interaction networks
Reference: references/workflow_patterns.md for complete pathway analysis workflows.
3. Compound Database Searches
Search and cross-reference compounds across multiple databases:
from bioservices import KEGG, UniChem
k = KEGG()
# Search compounds by name
results = k.find("compound", "Geldanamycin") # Returns cpd:C11222
# Get compound information with database links
compound_info = k.get("cpd:C11222") # Includes ChEBI links
# Cross-reference KEGG → ChEMBL using UniChem
u = UniChem()
chembl_id = u.get_compound_id_from_kegg("C11222") # Returns CHEMBL278315
Common workflow:
- Search compound by name in KEGG
- Extract KEGG compound ID
- Use UniChem for KEGG → ChEMBL mapping
- ChEBI IDs are often provided in KEGG entries
Reference: references/identifier_mapping.md for complete cross-database mapping guide.
4. Sequence Analysis
Run BLAST searches and sequence alignments:
from bioservices import NCBIblast
s = NCBIblast(verbose=False)
# Run BLASTP against UniProtKB
jobid = s.run(
program="blastp",
sequence=protein_sequence,
stype="protein",
database="uniprotkb",
email="[email protected]" # Required by NCBI
)
# Check job status and retrieve results
s.getStatus(jobid)
results = s.getResult(jobid, "out")
Note: BLAST jobs are asynchronous. Check status before retrieving results.
5. Identifier Mapping
Convert identifiers between different biological databases:
from bioservices import UniProt, KEGG
# UniProt mapping (many database pairs supported)
u = UniProt()
results = u.mapping(
fr="UniProtKB_AC-ID", # Source database
to="KEGG", # Target database
query="P43403" # Identifier(s) to convert
)
# KEGG gene ID → UniProt
kegg_to_uniprot = u.mapping(fr="KEGG", to="UniProtKB_AC-ID", query="hsa:7535")
# For compounds, use UniChem
from bioservices import UniChem
u = UniChem()
chembl_from_kegg = u.get_compound_id_from_kegg("C11222")
Supported mappings (UniProt):
- UniProtKB ↔ KEGG
- UniProtKB ↔ Ensembl
- UniProtKB ↔ PDB
- UniProtKB ↔ RefSeq
- And many more (see
references/identifier_mapping.md)
6. Gene Ontology Queries
Access GO terms and annotations:
from bioservices import QuickGO
g = QuickGO(verbose=False)
# Retrieve GO term information
term_info = g.Term("GO:0003824", frmt="obo")
# Search annotations
annotations = g.Annotation(protein="P43403", format="tsv")
7. Protein-Protein Interactions
Query interaction databases via PSICQUIC:
from bioservices import PSICQUIC
s = PSICQUIC(verbose=False)
# Query specific database (e.g., MINT)
interactions = s.query("mint", "ZAP70 AND species:9606")
# List available interaction databases
databases = s.activeDBs
Available databases: MINT, IntAct, BioGRID, DIP, and 30+ others.
Multi-Service Integration Workflows
BioServices excels at combining multiple services for comprehensive analysis. Common integration patterns:
Complete Protein Analysis Pipeline
Execute a full protein characterization workflow:
python scripts/protein_analysis_workflow.py ZAP70_HUMAN [email protected]
This script demonstrates:
- UniProt search for protein entry
- FASTA sequence retrieval
- BLAST similarity search
- KEGG pathway discovery
- PSICQUIC interaction mapping
Pathway Network Analysis
Analyze all pathways for an organism:
python scripts/pathway_analysis.py hsa output_directory/
Extracts and analyzes:
- All pathway IDs for organism
- Protein-protein interactions per pathway
- Interaction type distributions
- Exports to CSV/SIF formats
Cross-Database Compound Search
Map compound identifiers across databases:
python scripts/compound_cross_reference.py Geldanamycin
Retrieves:
- KEGG compound ID
- ChEBI identifier
- ChEMBL identifier
- Basic compound properties
Batch Identifier Conversion
Convert multiple identifiers at once:
python scripts/batch_id_converter.py input_ids.txt --from UniProtKB_AC-ID --to KEGG
Best Practices
Output Format Handling
Different services return data in various formats:
- XML: Parse using BeautifulSoup (most SOAP services)
- Tab-separated (TSV): Pandas DataFrames for tabular data
- Dictionary/JSON: Direct Python manipulation
- FASTA: BioPython integration for sequence analysis
Rate Limiting and Verbosity
Control API request behavior:
from bioservices import KEGG
k = KEGG(verbose=False) # Suppress HTTP request details
k.TIMEOUT = 30 # Adjust timeout for slow connections
Error Handling
Wrap service calls in try-except blocks:
try:
results = u.search("ambiguous_query")
if results:
# Process results
pass
except Exception as e:
print(f"Search failed: {e}")
Organism Codes
Use standard organism abbreviations:
hsa: Homo sapiens (human)mmu: Mus musculus (mouse)dme: Drosophila melanogastersce: Saccharomyces cerevisiae (yeast)
List all organisms: k.list("organism") or k.organismIds
Integration with Other Tools
BioServices works well with:
- BioPython: Sequence analysis on retrieved FASTA data
- Pandas: Tabular data manipulation
- PyMOL: 3D structure visualization (retrieve PDB IDs)
- NetworkX: Network analysis of pathway interactions
- Galaxy: Custom tool wrappers for workflow platforms
Resources
scripts/
Executable Python scripts demonstrating complete workflows:
protein_analysis_workflow.py: End-to-end protein characterizationpathway_analysis.py: KEGG pathway discovery and network extractioncompound_cross_reference.py: Multi-database compound searchingbatch_id_converter.py: Bulk identifier mapping utility
Scripts can be executed directly or adapted for specific use cases.
references/
Detailed documentation loaded as needed:
services_reference.md: Comprehensive list of all 40+ services with methodsworkflow_patterns.md: Detailed multi-step analysis workflowsidentifier_mapping.md: Complete guide to cross-database ID conversion
Load references when working with specific services or complex integration tasks.
Installation
uv pip install bioservices
Dependencies are automatically managed. Package is tested on Python 3.9-3.12.
Additional Information
For detailed API documentation and advanced features, refer to:
- Official documentation: https://bioservices.readthedocs.io/
- Source code: https://github.com/cokelaer/bioservices
- Service-specific references in
references/services_reference.md
List & Monetize Your Skill
Submit your Claude Code skill and start earning
Use Cases
Exploratory Data Analysis
Quickly understand datasets, identify patterns, and generate insights
Example
Analyze CSV with 100K rows, identify outliers, visualize correlations, suggest hypotheses
Reduce EDA time from hours to minutes, uncover insights faster
Data Cleaning & Transformation
Write scripts to clean messy data, handle missing values, normalize formats
Example
Generate Python/SQL to fix date formats, impute missing values, remove duplicates
Automate 80% of data preprocessing work
Statistical Analysis
Perform hypothesis testing, regression, and statistical modeling
Example
Run A/B test analysis, calculate confidence intervals, interpret p-values
Get statistically sound analysis without PhD in statistics
Data Visualization
Create charts, dashboards, and visual reports
Example
Generate matplotlib/seaborn code for time series plots, distribution charts, heatmaps
Build presentation-ready visualizations 3x faster
Implementation Guide
Prerequisites
- ›Claude Desktop or compatible AI client
- ›Python environment (pandas, numpy, matplotlib) or SQL database access
- ›Basic understanding of data analysis concepts
- ›Sample datasets for testing skill capabilities
Time Estimate
20-40 minutes to set up and run first analysis
Steps
- 1Install data analysis skill using provided command
- 2Prepare a sample dataset (CSV, JSON, or database connection)
- 3Start with descriptive statistics: 'Summarize this dataset'
- 4Progress to visualization: 'Create a scatter plot of X vs Y'
- 5Advanced analysis: 'Run linear regression and interpret results'
- 6Validate outputs: check calculations, verify visualizations make sense
- 7Document analysis workflow for reproducibility
Common Pitfalls
- ⚠Not validating statistical assumptions before applying tests
- ⚠Accepting visualizations without checking data accuracy
- ⚠Overlooking data quality issues (missing values, outliers)
- ⚠Misinterpreting correlation as causation
- ⚠Using wrong statistical test for data distribution
- ⚠Not considering sample size and statistical power
Best Practices
✓ Do
- +Always validate data quality before analysis
- +Check statistical assumptions (normality, independence, etc.)
- +Visualize data before running statistical tests
- +Document analysis steps for reproducibility
- +Cross-validate findings with domain experts
- +Use skill for initial exploration, then dive deeper manually
- +Save generated code for reuse on similar datasets
✗ Don't
- −Don't trust analysis without verifying data quality
- −Don't apply statistical tests without checking assumptions
- −Don't make business decisions solely on AI-generated analysis
- −Don't ignore outliers without investigating cause
- −Don't skip data validation and sanity checks
- −Don't use for mission-critical financial or medical analysis without expert review
💡 Pro Tips
- ★Describe data context: 'This is user behavior data from e-commerce site'
- ★Ask for interpretation: 'What does this correlation mean for business?'
- ★Request multiple approaches: 'Show 3 ways to handle missing data'
- ★Combine AI analysis with domain expertise for best insights
- ★Use for rapid prototyping, then refine analysis manually
When to Use This
✓ Use when
Use for exploratory data analysis, data cleaning, statistical testing, visualization prototyping, and learning new analysis techniques. Best for initial exploration and rapid insights.
✗ Avoid when
Avoid for mission-critical financial analysis, medical research requiring regulatory compliance, production ML models, or when deep statistical expertise is required for nuanced interpretation.
Learning Path
- 1Basic: descriptive statistics, data cleaning, simple visualizations
- 2Intermediate: hypothesis testing, regression, correlation analysis
- 3Advanced: time series analysis, clustering, predictive modeling
- 4Expert: causal inference, experimental design, advanced statistical methods
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Reviews
- CChaitanya Patil★★★★★Dec 28, 2024
I recommend bioservices for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.
- NNeel Thompson★★★★★Dec 28, 2024
Useful defaults in bioservices — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.
- LLi Malhotra★★★★★Dec 28, 2024
Solid pick for teams standardizing on skills: bioservices is focused, and the summary matches what you get after install.
- AAlexander Chen★★★★★Dec 28, 2024
I recommend bioservices for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.
- LLiam Huang★★★★★Dec 28, 2024
bioservices has been reliable in day-to-day use. Documentation quality is above average for community skills.
- AAditi Verma★★★★★Dec 24, 2024
bioservices is among the better-maintained entries we tried; worth keeping pinned for repeat workflows.
- IIra Kapoor★★★★★Dec 24, 2024
Useful defaults in bioservices — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.
- PPiyush G★★★★★Nov 19, 2024
bioservices fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.
- EEmma Agarwal★★★★★Nov 19, 2024
bioservices has been reliable in day-to-day use. Documentation quality is above average for community skills.
- LLi Bhatia★★★★★Nov 19, 2024
bioservices fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.
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