bundled/skills/biopython/SKILL.md
Primary Python toolkit for molecular biology. Preferred for Python-based PubMed/NCBI queries (Bio.Entrez), sequence manipulation, file parsing (FASTA, GenBank, FASTQ, PDB), advanced BLAST workflows, structures, phylogenetics. For quick BLAST, use gget. For direct REST API, use pubmed-database.
npx skillsauth add foryourhealth111-pixel/vco-skills-codex biopythonInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Biopython is a comprehensive set of freely available Python tools for biological computation. It provides functionality for sequence manipulation, file I/O, database access, structural bioinformatics, phylogenetics, and many other bioinformatics tasks. The current version is Biopython 1.85 (released January 2025), which supports Python 3 and requires NumPy.
Use this skill when:
Biopython is organized into modular sub-packages, each addressing specific bioinformatics domains:
Install Biopython using pip (requires Python 3 and NumPy):
uv pip install biopython
For NCBI database access, always set your email address (required by NCBI):
from Bio import Entrez
Entrez.email = "[email protected]"
# Optional: API key for higher rate limits (10 req/s instead of 3 req/s)
Entrez.api_key = "your_api_key_here"
This skill provides comprehensive documentation organized by functionality area. When working on a task, consult the relevant reference documentation:
Reference: references/sequence_io.md
Use for:
Quick example:
from Bio import SeqIO
# Read sequences from FASTA file
for record in SeqIO.parse("sequences.fasta", "fasta"):
print(f"{record.id}: {len(record.seq)} bp")
# Convert GenBank to FASTA
SeqIO.convert("input.gb", "genbank", "output.fasta", "fasta")
Reference: references/alignment.md
Use for:
Quick example:
from Bio import Align
# Pairwise alignment
aligner = Align.PairwiseAligner()
aligner.mode = 'global'
alignments = aligner.align("ACCGGT", "ACGGT")
print(alignments[0])
Reference: references/databases.md
Use for:
Quick example:
from Bio import Entrez
Entrez.email = "[email protected]"
# Search PubMed
handle = Entrez.esearch(db="pubmed", term="biopython", retmax=10)
results = Entrez.read(handle)
handle.close()
print(f"Found {results['Count']} results")
Reference: references/blast.md
Use for:
Quick example:
from Bio.Blast import NCBIWWW, NCBIXML
# Run BLAST search
result_handle = NCBIWWW.qblast("blastn", "nt", "ATCGATCGATCG")
blast_record = NCBIXML.read(result_handle)
# Display top hits
for alignment in blast_record.alignments[:5]:
print(f"{alignment.title}: E-value={alignment.hsps[0].expect}")
Reference: references/structure.md
Use for:
Quick example:
from Bio.PDB import PDBParser
# Parse structure
parser = PDBParser(QUIET=True)
structure = parser.get_structure("1crn", "1crn.pdb")
# Calculate distance between alpha carbons
chain = structure[0]["A"]
distance = chain[10]["CA"] - chain[20]["CA"]
print(f"Distance: {distance:.2f} Å")
Reference: references/phylogenetics.md
Use for:
Quick example:
from Bio import Phylo
# Read and visualize tree
tree = Phylo.read("tree.nwk", "newick")
Phylo.draw_ascii(tree)
# Calculate distance
distance = tree.distance("Species_A", "Species_B")
print(f"Distance: {distance:.3f}")
Reference: references/advanced.md
Use for:
Quick example:
from Bio.SeqUtils import gc_fraction, molecular_weight
from Bio.Seq import Seq
seq = Seq("ATCGATCGATCG")
print(f"GC content: {gc_fraction(seq):.2%}")
print(f"Molecular weight: {molecular_weight(seq, seq_type='DNA'):.2f} g/mol")
When a user asks about a specific Biopython task:
Example search patterns for reference files:
# Find information about specific functions
grep -n "SeqIO.parse" references/sequence_io.md
# Find examples of specific tasks
grep -n "BLAST" references/blast.md
# Find information about specific concepts
grep -n "alignment" references/alignment.md
Follow these principles when writing Biopython code:
Import modules explicitly
from Bio import SeqIO, Entrez
from Bio.Seq import Seq
Set Entrez email when using NCBI databases
Entrez.email = "[email protected]"
Use appropriate file formats - Check which format best suits the task
# Common formats: "fasta", "genbank", "fastq", "clustal", "phylip"
Handle files properly - Close handles after use or use context managers
with open("file.fasta") as handle:
records = SeqIO.parse(handle, "fasta")
Use iterators for large files - Avoid loading everything into memory
for record in SeqIO.parse("large_file.fasta", "fasta"):
# Process one record at a time
Handle errors gracefully - Network operations and file parsing can fail
try:
handle = Entrez.efetch(db="nucleotide", id=accession)
except HTTPError as e:
print(f"Error: {e}")
from Bio import Entrez, SeqIO
Entrez.email = "[email protected]"
# Fetch sequence
handle = Entrez.efetch(db="nucleotide", id="EU490707", rettype="gb", retmode="text")
record = SeqIO.read(handle, "genbank")
handle.close()
print(f"Description: {record.description}")
print(f"Sequence length: {len(record.seq)}")
from Bio import SeqIO
from Bio.SeqUtils import gc_fraction
for record in SeqIO.parse("sequences.fasta", "fasta"):
# Calculate statistics
gc = gc_fraction(record.seq)
length = len(record.seq)
# Find ORFs, translate, etc.
protein = record.seq.translate()
print(f"{record.id}: {length} bp, GC={gc:.2%}")
from Bio.Blast import NCBIWWW, NCBIXML
from Bio import Entrez, SeqIO
Entrez.email = "[email protected]"
# Run BLAST
result_handle = NCBIWWW.qblast("blastn", "nt", sequence)
blast_record = NCBIXML.read(result_handle)
# Get top hit accessions
accessions = [aln.accession for aln in blast_record.alignments[:5]]
# Fetch sequences
for acc in accessions:
handle = Entrez.efetch(db="nucleotide", id=acc, rettype="fasta", retmode="text")
record = SeqIO.read(handle, "fasta")
handle.close()
print(f">{record.description}")
from Bio import AlignIO, Phylo
from Bio.Phylo.TreeConstruction import DistanceCalculator, DistanceTreeConstructor
# Read alignment
alignment = AlignIO.read("alignment.fasta", "fasta")
# Calculate distances
calculator = DistanceCalculator("identity")
dm = calculator.get_distance(alignment)
# Build tree
constructor = DistanceTreeConstructor()
tree = constructor.nj(dm)
# Visualize
Phylo.draw_ascii(tree)
Solution: This is just a warning. Set Entrez.email to suppress it.
Solution: Check that IDs/accessions are valid and properly formatted.
Solution: Verify file format matches the specified format string.
Solution: Ensure sequences are aligned before using AlignIO or MultipleSeqAlignment.
Solution: Use local BLAST for large-scale searches, or cache results.
Solution: Use PDBParser(QUIET=True) to suppress warnings, or investigate structure quality.
To locate information in reference files, use these search patterns:
# Search for specific functions
grep -n "function_name" references/*.md
# Find examples of specific tasks
grep -n "example" references/sequence_io.md
# Find all occurrences of a module
grep -n "Bio.Seq" references/*.md
Biopython provides comprehensive tools for computational molecular biology. When using this skill:
references/ directoryThe modular reference documentation ensures detailed, searchable information for every major Biopython capability.
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