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cobrapy

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About

The cobrapy skill enables constraint-based metabolic modeling for systems biology and metabolic engineering. It provides tools for flux balance analysis (FBA), flux variability analysis (FVA), gene knockouts, and working with SBML models. Use this skill when you need to simulate cellular metabolism, analyze metabolic networks, or perform computational biology research in Python.

Quick Install

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Documentation

COBRApy - Constraint-Based Reconstruction and Analysis

Overview

COBRApy is a Python library for constraint-based reconstruction and analysis (COBRA) of metabolic models, essential for systems biology research. Work with genome-scale metabolic models, perform computational simulations of cellular metabolism, conduct metabolic engineering analyses, and predict phenotypic behaviors.

Version note: Examples target cobra 0.31.1 on PyPI (import cobra). Docs: cobrapy.readthedocs.io. Repo: opencobra/cobrapy.

When to Use This Skill

Use this skill when:

  • Loading, building, or exporting genome-scale metabolic models (SBML, JSON, YAML)
  • Running FBA, pFBA, FVA, or flux sampling on COBRA models
  • Performing gene or reaction knockout screens and production envelope analysis
  • Designing or optimizing growth media and exchange constraints
  • Gap-filling infeasible models or validating model consistency

Installation

uv pip install "cobra==0.31.1"

MATLAB model I/O (optional):

uv pip install "cobra[array]==0.31.1"

COBRApy uses optlang for solvers. GLPK installs automatically via swiglpk. For large MILPs/QPs, cobra 0.29+ adds a hybrid solver (HIGHS/OSQP); model.solver = "osqp" now routes through hybrid and may error on plain LPs in a future release—prefer model.solver = "hybrid" when available.

Core Capabilities

COBRApy provides comprehensive tools organized into several key areas:

1. Model Management

Load existing models from repositories or files:

from cobra.io import load_model

# Bundled locally (no network): textbook, iJO1366, salmonella
model = load_model("textbook")      # alias for e_coli_core (95 reactions)
model = load_model("e_coli_core")   # same core E. coli model
model = load_model("iJO1366")       # genome-scale E. coli (bundled)
model = load_model("salmonella")    # Salmonella iYS1720 (bundled)

# Remote (BiGG / BioModels; requires network, cached after first fetch)
model = load_model("iML1515")       # E. coli genome-scale on BiGG

# Load from files
from cobra.io import read_sbml_model, load_json_model, load_yaml_model
model = read_sbml_model("path/to/model.xml")
model = load_json_model("path/to/model.json")
model = load_yaml_model("path/to/model.yml")

Save models in various formats:

from cobra.io import write_sbml_model, save_json_model, save_yaml_model
write_sbml_model(model, "output.xml")  # Preferred format
save_json_model(model, "output.json")  # For Escher compatibility
save_yaml_model(model, "output.yml")   # Human-readable

2. Model Structure and Components

Access and inspect model components:

# Access components
model.reactions      # DictList of all reactions
model.metabolites    # DictList of all metabolites
model.genes          # DictList of all genes

# Get specific items by ID or index
reaction = model.reactions.get_by_id("PFK")
metabolite = model.metabolites[0]

# Inspect properties
print(reaction.reaction)        # Stoichiometric equation
print(reaction.bounds)          # Flux constraints
print(reaction.gene_reaction_rule)  # GPR logic
print(metabolite.formula)       # Chemical formula
print(metabolite.compartment)   # Cellular location

3. Flux Balance Analysis (FBA)

Perform standard FBA simulation:

# Basic optimization
solution = model.optimize()
print(f"Objective value: {solution.objective_value}")
print(f"Status: {solution.status}")

# Access fluxes
print(solution.fluxes["PFK"])
print(solution.fluxes.head())

# Fast optimization (objective value only)
objective_value = model.slim_optimize()

# Change objective
model.objective = "ATPM"
solution = model.optimize()

Parsimonious FBA (minimize total flux):

from cobra.flux_analysis import pfba
solution = pfba(model)

Geometric FBA (find central solution):

from cobra.flux_analysis import geometric_fba
solution = geometric_fba(model)

4. Flux Variability Analysis (FVA)

Determine flux ranges for all reactions:

from cobra.flux_analysis import flux_variability_analysis

# Standard FVA
fva_result = flux_variability_analysis(model)

# FVA at 90% optimality
fva_result = flux_variability_analysis(model, fraction_of_optimum=0.9)

# Loopless FVA (eliminates thermodynamically infeasible loops)
fva_result = flux_variability_analysis(model, loopless=True)

# FVA for specific reactions
fva_result = flux_variability_analysis(
    model,
    reaction_list=["PFK", "FBA", "PGI"]
)

5. Gene and Reaction Deletion Studies

Perform knockout analyses:

from cobra.flux_analysis import (
    single_gene_deletion,
    single_reaction_deletion,
    double_gene_deletion,
    double_reaction_deletion
)

# Single deletions
gene_results = single_gene_deletion(model)
reaction_results = single_reaction_deletion(model)

# Double deletions (uses multiprocessing)
double_gene_results = double_gene_deletion(
    model,
    processes=4  # Number of CPU cores
)

# Manual knockout using context manager
with model:
    model.genes.get_by_id("b0008").knock_out()
    solution = model.optimize()
    print(f"Growth after knockout: {solution.objective_value}")
# Model automatically reverts after context exit

6. Growth Media and Minimal Media

Manage growth medium:

# View current medium
print(model.medium)

# Modify medium (must reassign entire dict)
medium = model.medium
medium["EX_glc__D_e"] = 10.0  # Set glucose uptake
medium["EX_o2_e"] = 0.0       # Anaerobic conditions
model.medium = medium

# Calculate minimal media
from cobra.medium import minimal_medium

# Minimize total import flux
min_medium = minimal_medium(model, minimize_components=False)

# Minimize number of components (uses MILP, slower)
min_medium = minimal_medium(
    model,
    minimize_components=True,
    open_exchanges=True
)

7. Flux Sampling

Sample the feasible flux space:

from cobra.sampling import sample

# Sample using OptGP (default, supports parallel processing)
samples = sample(model, n=1000, method="optgp", processes=4)

# Sample using ACHR
samples = sample(model, n=1000, method="achr")

# Validate samples
from cobra.sampling import OptGPSampler
sampler = OptGPSampler(model, processes=4)
sampler.sample(1000)
validation = sampler.validate(sampler.samples)
print(validation.value_counts())  # Should be all 'v' for valid

8. Production Envelopes

Calculate phenotype phase planes:

from cobra.flux_analysis import production_envelope

# Standard production envelope
envelope = production_envelope(
    model,
    reactions=["EX_glc__D_e", "EX_o2_e"],
    objective="EX_ac_e"  # Acetate production
)

# With carbon yield
envelope = production_envelope(
    model,
    reactions=["EX_glc__D_e", "EX_o2_e"],
    carbon_sources="EX_glc__D_e"
)

# Visualize (use matplotlib or pandas plotting)
import matplotlib.pyplot as plt
envelope.plot(x="EX_glc__D_e", y="EX_o2_e", kind="scatter")
plt.show()

9. Gapfilling

Add reactions to make models feasible:

from cobra.flux_analysis import gapfill

# Provide a universal reaction database (SBML/JSON); not bundled in cobra 0.31+
from cobra.io import read_sbml_model
universal = read_sbml_model("path/to/universal_reactions.xml")

# Perform gapfilling
with model:
    # Remove reactions to create gaps for demonstration
    model.remove_reactions([model.reactions.PGI])

    # Find reactions needed
    solution = gapfill(model, universal)
    print(f"Reactions to add: {solution}")

10. Model Building

Build models from scratch:

from cobra import Model, Reaction, Metabolite

# Create model
model = Model("my_model")

# Create metabolites
atp_c = Metabolite("atp_c", formula="C10H12N5O13P3",
                   name="ATP", compartment="c")
adp_c = Metabolite("adp_c", formula="C10H12N5O10P2",
                   name="ADP", compartment="c")
pi_c = Metabolite("pi_c", formula="HO4P",
                  name="Phosphate", compartment="c")

# Create reaction
reaction = Reaction("ATPASE")
reaction.name = "ATP hydrolysis"
reaction.subsystem = "Energy"
reaction.lower_bound = 0.0
reaction.upper_bound = 1000.0

# Add metabolites with stoichiometry
reaction.add_metabolites({
    atp_c: -1.0,
    adp_c: 1.0,
    pi_c: 1.0
})

# Add gene-reaction rule
reaction.gene_reaction_rule = "(gene1 and gene2) or gene3"

# Add to model
model.add_reactions([reaction])

# Add boundary reactions
model.add_boundary(atp_c, type="exchange")
model.add_boundary(adp_c, type="demand")

# Set objective
model.objective = "ATPASE"

Common Workflows

Workflow 1: Load Model and Predict Growth

from cobra.io import load_model

# Load model (textbook = fast tutorial; iJO1366 / iML1515 for genome-scale)
model = load_model("textbook")

# Run FBA
solution = model.optimize()
print(f"Growth rate: {solution.objective_value:.3f} /h")

# Show active pathways
print(solution.fluxes[solution.fluxes.abs() > 1e-6])

Workflow 2: Gene Knockout Screen

from cobra.io import load_model
from cobra.flux_analysis import single_gene_deletion

# Load model
model = load_model("textbook")
baseline = model.slim_optimize()

# Perform single gene deletions
results = single_gene_deletion(model)

# Find essential genes (growth < threshold)
essential_genes = results[results["growth"] < 0.01]
print(f"Found {len(essential_genes)} essential genes")

# Find genes with minimal impact
neutral_genes = results[results["growth"] > 0.9 * baseline]

Workflow 3: Media Optimization

from cobra.io import load_model
from cobra.medium import minimal_medium

# Load model
model = load_model("textbook")

# Calculate minimal medium for 50% of max growth
target_growth = model.slim_optimize() * 0.5
min_medium = minimal_medium(
    model,
    target_growth,
    minimize_components=True
)

print(f"Minimal medium components: {len(min_medium)}")
print(min_medium)

Workflow 4: Flux Uncertainty Analysis

from cobra.io import load_model
from cobra.flux_analysis import flux_variability_analysis
from cobra.sampling import sample

# Load model
model = load_model("textbook")

# First check flux ranges at optimality
fva = flux_variability_analysis(model, fraction_of_optimum=1.0)

# For reactions with large ranges, sample to understand distribution
samples = sample(model, n=1000)

# Analyze specific reaction
reaction_id = "PFK"
import matplotlib.pyplot as plt
samples[reaction_id].hist(bins=50)
plt.xlabel(f"Flux through {reaction_id}")
plt.ylabel("Frequency")
plt.show()

Workflow 5: Context Manager for Temporary Changes

Use context managers to make temporary modifications:

# Model remains unchanged outside context
with model:
    # Temporarily change objective
    model.objective = "ATPM"

    # Temporarily modify bounds
    model.reactions.EX_glc__D_e.lower_bound = -5.0

    # Temporarily knock out genes
    model.genes.b0008.knock_out()

    # Optimize with changes
    solution = model.optimize()
    print(f"Modified growth: {solution.objective_value}")

# All changes automatically reverted
solution = model.optimize()
print(f"Original growth: {solution.objective_value}")

Key Concepts

DictList Objects

Models use DictList objects for reactions, metabolites, and genes - behaving like both lists and dictionaries:

# Access by index
first_reaction = model.reactions[0]

# Access by ID
pfk = model.reactions.get_by_id("PFK")

# Query methods
atp_reactions = model.reactions.query("atp")

Flux Constraints

Reaction bounds define feasible flux ranges:

  • Irreversible: lower_bound = 0, upper_bound > 0
  • Reversible: lower_bound < 0, upper_bound > 0
  • Set both bounds simultaneously with .bounds to avoid inconsistencies

Gene-Reaction Rules (GPR)

Boolean logic linking genes to reactions:

# AND logic (both required)
reaction.gene_reaction_rule = "gene1 and gene2"

# OR logic (either sufficient)
reaction.gene_reaction_rule = "gene1 or gene2"

# Complex logic
reaction.gene_reaction_rule = "(gene1 and gene2) or (gene3 and gene4)"

Exchange Reactions

Special reactions representing metabolite import/export:

  • Named with prefix EX_ by convention
  • Positive flux = secretion, negative flux = uptake
  • Managed through model.medium dictionary

Best Practices

  1. Use context managers for temporary modifications to avoid state management issues
  2. Validate models before analysis using model.slim_optimize() to ensure feasibility
  3. Check solution status after optimization - optimal indicates successful solve
  4. Use loopless FVA when thermodynamic feasibility matters
  5. Set fraction_of_optimum appropriately in FVA to explore suboptimal space
  6. Parallelize computationally expensive operations (sampling, double deletions) — start with small n and processes=1 on genome-scale models
  7. Prefer SBML format for model exchange and long-term storage
  8. Use slim_optimize() when only objective value needed for performance
  9. Validate flux samples to ensure numerical stability
  10. Confirm output paths before writing CSV/PNG files from workflow examples

Troubleshooting

Infeasible solutions: Check medium constraints, reaction bounds, and model consistency Slow optimization: Try different solvers (GLPK, CPLEX, Gurobi) via model.solver Unbounded solutions: Verify exchange reactions have appropriate upper bounds Import errors: Ensure correct file format and valid SBML identifiers

References

For detailed workflows and API patterns, refer to:

  • references/workflows.md - Comprehensive step-by-step workflow examples
  • references/api_quick_reference.md - Common function signatures and patterns

Official documentation: https://cobrapy.readthedocs.io/en/latest/

GitHub Repository

K-Dense-AI/claude-scientific-skills
Path: skills/cobrapy
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agent-skillsai-scientistbioinformaticschemoinformaticsclaudeclaude-skills

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