| author | luo-kai |
| name | brenda-database |
| description | Access BRENDA enzyme database via SOAP API. Retrieve kinetic parameters (Km, kcat), reaction equations, organism data, and substrate-specific enzyme information for biochemical research and metabolic pathway analysis. |
| license | Unknown |
| metadata | {"skill-author":"K-Dense Inc."} |
BRENDA Database
Overview
BRENDA (BRaunschweig ENzyme DAtabase) is the world's most comprehensive enzyme information system, containing detailed enzyme data from scientific literature. Query kinetic parameters (Km, kcat), reaction equations, substrate specificities, organism information, and optimal conditions for enzymes using the official SOAP API. Access over 45,000 enzymes with millions of kinetic data points for biochemical research, metabolic engineering, and enzyme discovery.
When to Use This Skill
This skill should be used when:
- Searching for enzyme kinetic parameters (Km, kcat, Vmax)
- Retrieving reaction equations and stoichiometry
- Finding enzymes for specific substrates or reactions
- Comparing enzyme properties across different organisms
- Investigating optimal pH, temperature, and conditions
- Accessing enzyme inhibition and activation data
- Supporting metabolic pathway reconstruction and retrosynthesis
- Performing enzyme engineering and optimization studies
- Analyzing substrate specificity and cofactor requirements
Core Capabilities
1. Kinetic Parameter Retrieval
Access comprehensive kinetic data for enzymes:
Get Km Values by EC Number:
from brenda_client import get_km_values
km_data = get_km_values("1.1.1.1")
km_data = get_km_values("1.1.1.1", organism="Saccharomyces cerevisiae")
km_data = get_km_values("1.1.1.1", substrate="ethanol")
Parse Km Results:
for entry in km_data:
print(f"Km: {entry}")
Extract Specific Information:
from scripts.brenda_queries import parse_km_entry, extract_organism_data
for entry in km_data:
parsed = parse_km_entry(entry)
organism = extract_organism_data(entry)
print(f"Organism: {parsed['organism']}")
print(f"Substrate: {parsed['substrate']}")
print(f"Km value: {parsed['km_value']}")
print(f"pH: {parsed.get('ph', 'N/A')}")
print(f"Temperature: {parsed.get('temperature', 'N/A')}")
2. Reaction Information
Retrieve reaction equations and details:
Get Reactions by EC Number:
from brenda_client import get_reactions
reactions = get_reactions("1.1.1.1")
reactions = get_reactions("1.1.1.1", organism="Escherichia coli")
reactions = get_reactions("1.1.1.1", reaction="ethanol + NAD+")
Process Reaction Data:
from scripts.brenda_queries import parse_reaction_entry, extract_substrate_products
for reaction in reactions:
parsed = parse_reaction_entry(reaction)
substrates, products = extract_substrate_products(reaction)
print(f"Reaction: {parsed['reaction']}")
print(f"Organism: {parsed['organism']}")
print(f"Substrates: {substrates}")
print(f"Products: {products}")
3. Enzyme Discovery
Find enzymes for specific biochemical transformations:
Find Enzymes by Substrate:
from scripts.brenda_queries import search_enzymes_by_substrate
enzymes = search_enzymes_by_substrate("glucose", limit=20)
for enzyme in enzymes:
print(f"EC: {enzyme['ec_number']}")
print(f"Name: {enzyme['enzyme_name']}")
print(f"Reaction: {enzyme['reaction']}")
Find Enzymes by Product:
from scripts.brenda_queries import search_enzymes_by_product
enzymes = search_enzymes_by_product("lactate", limit=10)
Search by Reaction Pattern:
from scripts.brenda_queries import search_by_pattern
enzymes = search_by_pattern("oxidation", limit=15)
4. Organism-Specific Enzyme Data
Compare enzyme properties across organisms:
Get Enzyme Data for Multiple Organisms:
from scripts.brenda_queries import compare_across_organisms
organisms = ["Escherichia coli", "Saccharomyces cerevisiae", "Homo sapiens"]
comparison = compare_across_organisms("1.1.1.1", organisms)
for org_data in comparison:
print(f"Organism: {org_data['organism']}")
print(f"Avg Km: {org_data['average_km']}")
print(f"Optimal pH: {org_data['optimal_ph']}")
print(f"Temperature range: {org_data['temperature_range']}")
Find Organisms with Specific Enzyme:
from scripts.brenda_queries import get_organisms_for_enzyme
organisms = get_organisms_for_enzyme("6.3.5.5")
print(f"Found {len(organisms)} organisms with this enzyme")
5. Environmental Parameters
Access optimal conditions and environmental parameters:
Get pH and Temperature Data:
from scripts.brenda_queries import get_environmental_parameters
params = get_environmental_parameters("1.1.1.1")
print(f"Optimal pH range: {params['ph_range']}")
print(f"Optimal temperature: {params['optimal_temperature']}")
print(f"Stability pH: {params['stability_ph']}")
print(f"Temperature stability: {params['temperature_stability']}")
Cofactor Requirements:
from scripts.brenda_queries import get_cofactor_requirements
cofactors = get_cofactor_requirements("1.1.1.1")
for cofactor in cofactors:
print(f"Cofactor: {cofactor['name']}")
print(f"Type: {cofactor['type']}")
print(f"Concentration: {cofactor['concentration']}")
6. Substrate Specificity
Analyze enzyme substrate preferences:
Get Substrate Specificity Data:
from scripts.brenda_queries import get_substrate_specificity
specificity = get_substrate_specificity("1.1.1.1")
for substrate in specificity:
print(f"Substrate: {substrate['name']}")
print(f"Km: {substrate['km']}")
print(f"Vmax: {substrate['vmax']}")
print(f"kcat: {substrate['kcat']}")
print(f"Specificity constant: {substrate['kcat_km_ratio']}")
Compare Substrate Preferences:
from scripts.brenda_queries import compare_substrate_affinity
comparison = compare_substrate_affinity("1.1.1.1")
sorted_by_km = sorted(comparison, key=lambda x: x['km'])
for substrate in sorted_by_km[:5]:
print(f"{substrate['name']}: Km = {substrate['km']}")
7. Inhibition and Activation
Access enzyme regulation data:
Get Inhibitor Information:
from scripts.brenda_queries import get_inhibitors
inhibitors = get_inhibitors("1.1.1.1")
for inhibitor in inhibitors:
print(f"Inhibitor: {inhibitor['name']}")
print(f"Type: {inhibitor['type']}")
print(f"Ki: {inhibitor['ki']}")
print(f"IC50: {inhibitor['ic50']}")
Get Activator Information:
from scripts.brenda_queries import get_activators
activators = get_activators("1.1.1.1")
for activator in activators:
print(f"Activator: {activator['name']}")
print(f"Effect: {activator['effect']}")
print(f"Mechanism: {activator['mechanism']}")
8. Enzyme Engineering Support
Find engineering targets and alternatives:
Find Thermophilic Homologs:
from scripts.brenda_queries import find_thermophilic_homologs
thermophilic = find_thermophilic_homologs("1.1.1.1", min_temp=50)
for enzyme in thermophilic:
print(f"Organism: {enzyme['organism']}")
print(f"Optimal temp: {enzyme['optimal_temperature']}")
print(f"Km: {enzyme['km']}")
Find Alkaline/ Acid Stable Variants:
from scripts.brenda_queries import find_ph_stable_variants
alkaline = find_ph_stable_variants("1.1.1.1", min_ph=8.0)
acidic = find_ph_stable_variants("1.1.1.1", max_ph=6.0)
9. Kinetic Modeling
Prepare data for kinetic modeling:
Get Kinetic Parameters for Modeling:
from scripts.brenda_queries import get_modeling_parameters
model_data = get_modeling_parameters("1.1.1.1", substrate="ethanol")
print(f"Km: {model_data['km']}")
print(f"Vmax: {model_data['vmax']}")
print(f"kcat: {model_data['kcat']}")
print(f"Enzyme concentration: {model_data['enzyme_conc']}")
print(f"Temperature: {model_data['temperature']}")
print(f"pH: {model_data['ph']}")
Generate Michaelis-Menten Plots:
from scripts.brenda_visualization import plot_michaelis_menten
plot_michaelis_menten("1.1.1.1", substrate="ethanol")
Installation Requirements
uv pip install zeep requests pandas matplotlib seaborn
Authentication Setup
BRENDA requires authentication credentials:
- Create .env file:
BRENDA_EMAIL=your.email@example.com
BRENDA_PASSWORD=your_brenda_password
- Or set environment variables:
export BRENDA_EMAIL="your.email@example.com"
export BRENDA_PASSWORD="your_brenda_password"
- Register for BRENDA access:
- Visit https://www.brenda-enzymes.org/
- Create an account
- Check your email for credentials
- Note: There's also
BRENDA_EMIAL (note the typo) for legacy support
Helper Scripts
This skill includes comprehensive Python scripts for BRENDA database queries:
scripts/brenda_queries.py
Provides high-level functions for enzyme data analysis:
Key Functions:
parse_km_entry(entry): Parse BRENDA Km data entries
parse_reaction_entry(entry): Parse reaction data entries
extract_organism_data(entry): Extract organism-specific information
search_enzymes_by_substrate(substrate, limit): Find enzymes for substrates
search_enzymes_by_product(product, limit): Find enzymes producing products
compare_across_organisms(ec_number, organisms): Compare enzyme properties
get_environmental_parameters(ec_number): Get pH and temperature data
get_cofactor_requirements(ec_number): Get cofactor information
get_substrate_specificity(ec_number): Analyze substrate preferences
get_inhibitors(ec_number): Get enzyme inhibition data
get_activators(ec_number): Get enzyme activation data
find_thermophilic_homologs(ec_number, min_temp): Find heat-stable variants
get_modeling_parameters(ec_number, substrate): Get parameters for kinetic modeling
export_kinetic_data(ec_number, format, filename): Export data to file
Usage:
from scripts.brenda_queries import search_enzymes_by_substrate, compare_across_organisms
enzymes = search_enzymes_by_substrate("glucose", limit=20)
comparison = compare_across_organisms("1.1.1.1", ["E. coli", "S. cerevisiae"])
scripts/brenda_visualization.py
Provides visualization functions for enzyme data:
Key Functions:
plot_kinetic_parameters(ec_number): Plot Km and kcat distributions
plot_organism_comparison(ec_number, organisms): Compare organisms
plot_pH_profiles(ec_number): Plot pH activity profiles
plot_temperature_profiles(ec_number): Plot temperature activity profiles
plot_substrate_specificity(ec_number): Visualize substrate preferences
plot_michaelis_menten(ec_number, substrate): Generate kinetic curves
create_heatmap_data(enzymes, parameters): Create data for heatmaps
generate_summary_plots(ec_number): Create comprehensive enzyme overview
Usage:
from scripts.brenda_visualization import plot_kinetic_parameters, plot_michaelis_menten
plot_kinetic_parameters("1.1.1.1")
plot_michaelis_menten("1.1.1.1", substrate="ethanol")
scripts/enzyme_pathway_builder.py
Build enzymatic pathways and retrosynthetic routes:
Key Functions:
find_pathway_for_product(product, max_steps): Find enzymatic pathways
build_retrosynthetic_tree(target, depth): Build retrosynthetic tree
suggest_enzyme_substitutions(ec_number, criteria): Suggest enzyme alternatives
calculate_pathway_feasibility(pathway): Evaluate pathway viability
optimize_pathway_conditions(pathway): Suggest optimal conditions
generate_pathway_report(pathway, filename): Create detailed pathway report
Usage:
from scripts.enzyme_pathway_builder import find_pathway_for_product, build_retrosynthetic_tree
pathway = find_pathway_for_product("lactate", max_steps=3)
tree = build_retrosynthetic_tree("lactate", depth=2)
API Rate Limits and Best Practices
Rate Limits:
- BRENDA API has moderate rate limiting
- Recommended: 1 request per second for sustained usage
- Maximum: 5 requests per 10 seconds
Best Practices:
- Cache results: Store frequently accessed enzyme data locally
- Batch queries: Combine related requests when possible
- Use specific searches: Narrow down by organism, substrate when possible
- Handle missing data: Not all enzymes have complete data
- Validate EC numbers: Ensure EC numbers are in correct format
- Implement delays: Add delays between consecutive requests
- Use wildcards wisely: Use '*' for broader searches when appropriate
- Monitor quota: Track your API usage
Error Handling:
from brenda_client import get_km_values, get_reactions
from zeep.exceptions import Fault, TransportError
try:
km_data = get_km_values("1.1.1.1")
except RuntimeError as e:
print(f"Authentication error: {e}")
except Fault as e:
print(f"BRENDA API error: {e}")
except TransportError as e:
print(f"Network error: {e}")
except Exception as e:
print(f"Unexpected error: {e}")
Common Workflows
Workflow 1: Enzyme Discovery for New Substrate
Find suitable enzymes for a specific substrate:
from brenda_client import get_km_values
from scripts.brenda_queries import search_enzymes_by_substrate, compare_substrate_affinity
substrate = "2-phenylethanol"
enzymes = search_enzymes_by_substrate(substrate, limit=15)
print(f"Found {len(enzymes)} enzymes for {substrate}")
for enzyme in enzymes:
print(f"EC {enzyme['ec_number']}: {enzyme['enzyme_name']}")
if enzymes:
best_ec = enzymes[0]['ec_number']
km_data = get_km_values(best_ec, substrate=substrate)
if km_data:
print(f"Kinetic data for {best_ec}:")
for entry in km_data[:3]:
print(f" {entry}")
Workflow 2: Cross-Organism Enzyme Comparison
Compare enzyme properties across different organisms:
from scripts.brenda_queries import compare_across_organisms, get_environmental_parameters
organisms = [
"Escherichia coli",
"Saccharomyces cerevisiae",
"Bacillus subtilis",
"Thermus thermophilus"
]
comparison = compare_across_organisms("1.1.1.1", organisms)
print("Cross-organism comparison:")
for org_data in comparison:
print(f"\n{org_data['organism']}:")
print(f" Average Km: {org_data['average_km']}")
print(f" Optimal pH: {org_data['optimal_ph']}")
print(f" Temperature: {org_data['optimal_temperature']}°C")
env_params = get_environmental_parameters("1.1.1.1")
print(f"\nOverall optimal pH range: {env_params['ph_range']}")
Workflow 3: Enzyme Engineering Target Identification
Find engineering opportunities for enzyme improvement:
from scripts.brenda_queries import (
find_thermophilic_homologs,
find_ph_stable_variants,
compare_substrate_affinity
)
thermophilic = find_thermophilic_homologs("1.1.1.1", min_temp=50)
print(f"Found {len(thermophilic)} thermophilic variants")
alkaline = find_ph_stable_variants("1.1.1.1", min_ph=8.0)
print(f"Found {len(alkaline)} alkaline-stable variants")
specificity = compare_substrate_affinity("1.1.1.1")
print("Substrate affinity ranking:")
for i, sub in enumerate(specificity[:5]):
print(f" {i+1}. {sub['name']}: Km = {sub['km']}")
Workflow 4: Enzymatic Pathway Construction
Build enzymatic synthesis pathways:
from scripts.enzyme_pathway_builder import (
find_pathway_for_product,
build_retrosynthetic_tree,
calculate_pathway_feasibility
)
target = "lactate"
pathway = find_pathway_for_product(target, max_steps=3)
if pathway:
print(f"Found pathway to {target}:")
for i, step in enumerate(pathway['steps']):
print(f" Step {i+1}: {step['reaction']}")
print(f" Enzyme: EC {step['ec_number']}")
print(f" Organism: {step['organism']}")
feasibility = calculate_pathway_feasibility(pathway)
print(f"\nPathway feasibility score: {feasibility['score']}/10")
print(f"Potential issues: {feasibility['warnings']}")
Workflow 5: Kinetic Parameter Analysis
Comprehensive kinetic analysis for enzyme selection:
from brenda_client import get_km_values
from scripts.brenda_queries import parse_km_entry, get_modeling_parameters
from scripts.brenda_visualization import plot_kinetic_parameters
ec_number = "1.1.1.1"
km_data = get_km_values(ec_number)
all_entries = []
for entry in km_data:
parsed = parse_km_entry(entry)
if parsed['km_value']:
all_entries.append(parsed)
print(f"Analyzed {len(all_entries)} kinetic entries")
best_km = min(all_entries, key=lambda x: x['km_value'])
print(f"\nBest kinetic performer:")
print(f" Organism: {best_km['organism']}")
print(f" Substrate: {best_km['substrate']}")
print(f" Km: {best_km['km_value']}")
model_data = get_modeling_parameters(ec_number, substrate=best_km['substrate'])
print(f"\nModeling parameters:")
print(f" Km: {model_data['km']}")
print(f" kcat: {model_data['kcat']}")
print(f" Vmax: {model_data['vmax']}")
plot_kinetic_parameters(ec_number)
Workflow 6: Industrial Enzyme Selection
Select enzymes for industrial applications:
from scripts.brenda_queries import (
find_thermophilic_homologs,
get_environmental_parameters,
get_inhibitors
)
target_enzyme = "1.1.1.1"
thermophilic = find_thermophilic_homologs(target_enzyme, min_temp=60)
print(f"Thermophilic candidates: {len(thermophilic)}")
inhibitors = get_inhibitors(target_enzyme)
solvent_tolerant = [
inv for inv in inhibitors
if 'ethanol' not in inv['name'].lower() and
'methanol' not in inv['name'].lower()
]
print(f"Solvent tolerant candidates: {len(solvent_tolerant)}")
for candidate in thermophilic[:3]:
print(f"\nCandidate: {candidate['organism']}")
print(f" Optimal temp: {candidate['optimal_temperature']}°C")
print(f" Km: {candidate['km']}")
print(f" pH range: {candidate.get('ph_range', 'N/A')}")
Data Formats and Parsing
BRENDA Response Format
BRENDA returns data in specific formats that need parsing:
Km Value Format:
organism*Escherichia coli#substrate*ethanol#kmValue*1.2#kmValueMaximum*#commentary*pH 7.4, 25°C#ligandStructureId*#literature*
Reaction Format:
ecNumber*1.1.1.1#organism*Saccharomyces cerevisiae#reaction*ethanol + NAD+ <=> acetaldehyde + NADH + H+#commentary*#literature*
Data Extraction Patterns
import re
def parse_brenda_field(data, field_name):
"""Extract specific field from BRENDA data entry"""
pattern = f"{field_name}\\*([^#]*)"
match = re.search(pattern, data)
return match.group(1) if match else None
def extract_multiple_values(data, field_name):
"""Extract multiple values for a field"""
pattern = f"{field_name}\\*([^#]*)"
matches = re.findall(pattern, data)
return [match for match in matches if match.strip()]
Reference Documentation
For detailed BRENDA documentation, see references/api_reference.md. This includes:
- Complete SOAP API method documentation
- Full parameter lists and formats
- EC number structure and validation
- Response format specifications
- Error codes and handling
- Data field definitions
- Literature citation formats
Troubleshooting
Authentication Errors:
- Verify BRENDA_EMAIL and BRENDA_PASSWORD in .env file
- Check for correct spelling (note BRENDA_EMIAL legacy support)
- Ensure BRENDA account is active and has API access
No Results Returned:
- Try broader searches with wildcards (*)
- Check EC number format (e.g., "1.1.1.1" not "1.1.1")
- Verify substrate spelling and naming
- Some enzymes may have limited data in BRENDA
Rate Limiting:
- Add delays between requests (0.5-1 second)
- Cache results locally
- Use more specific queries to reduce data volume
- Consider batch operations for multiple queries
Network Errors:
- Check internet connection
- BRENDA server may be temporarily unavailable
- Try again after a few minutes
- Consider using VPN if geo-restricted
Data Format Issues:
- Use the provided parsing functions in scripts
- BRENDA data can be inconsistent in formatting
- Handle missing fields gracefully
- Validate parsed data before use
Performance Issues:
- Large queries can be slow; limit search scope
- Use specific organism or substrate filters
- Consider asynchronous processing for batch operations
- Monitor memory usage with large datasets
Additional Resources