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bio-metagenomics-kraken

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Taxonomic classification of metagenomic reads using Kraken2. Fast k-mer based classification against RefSeq database. Use when performing initial taxonomic classification of shotgun metagenomic reads before abundance estimation with Bracken.

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1.2k downloads
Updated 2/5/2026

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SKILL.md

Kraken2 Classification

Basic Classification

# Classify reads against standard database
kraken2 --db /path/to/kraken2_db \
    --output output.kraken \
    --report report.txt \
    reads.fastq.gz

Paired-End Reads

kraken2 --db /path/to/kraken2_db \
    --paired \
    --output output.kraken \
    --report report.txt \
    reads_R1.fastq.gz reads_R2.fastq.gz

Common Options

kraken2 --db /path/to/kraken2_db \
    --threads 8 \                  # CPU threads
    --confidence 0.1 \             # Confidence threshold
    --minimum-base-quality 20 \    # Quality filter
    --output output.kraken \
    --report report.txt \
    --use-names \                  # Add taxon names to output
    --gzip-compressed \            # Input is gzipped
    reads.fastq.gz

Memory-Efficient Mode

# For systems with limited RAM
kraken2 --db /path/to/kraken2_db \
    --memory-mapping \             # Use disk-based database
    --output output.kraken \
    --report report.txt \
    reads.fastq.gz

Report Only (No Per-Read Output)

# Save space by not writing per-read classifications
kraken2 --db /path/to/kraken2_db \
    --report report.txt \
    --report-zero-counts \         # Include taxa with 0 counts
    reads.fastq.gz

Classified/Unclassified Output

# Separate classified and unclassified reads
kraken2 --db /path/to/kraken2_db \
    --classified-out classified#.fq \     # # replaced by 1/2 for PE
    --unclassified-out unclassified#.fq \
    --output output.kraken \
    --report report.txt \
    --paired \
    reads_R1.fastq.gz reads_R2.fastq.gz

Build Custom Database

# Download taxonomy
kraken2-build --download-taxonomy --db custom_db

# Download specific libraries
kraken2-build --download-library bacteria --db custom_db
kraken2-build --download-library archaea --db custom_db
kraken2-build --download-library viral --db custom_db

# Build database
kraken2-build --build --db custom_db --threads 8

# Clean up intermediate files
kraken2-build --clean --db custom_db

Add Custom Sequences

# Add FASTA sequences to library
kraken2-build --add-to-library custom_genomes.fasta --db custom_db

# Then build
kraken2-build --build --db custom_db

Inspect Database

# View database contents
kraken2-inspect --db /path/to/kraken2_db | head -50

Report Format

 17.45  1745    1745    U   0       unclassified
 82.55  8255    48      R   1       root
 82.07  8207    2       R1  131567    cellular organisms
 81.99  8199    132     D   2           Bacteria
 76.23  7623    178     P   1224          Proteobacteria

Columns:

  1. Percentage of reads
  2. Number of reads rooted at taxon
  3. Number of reads directly assigned
  4. Rank code (U, R, D, P, C, O, F, G, S)
  5. NCBI taxon ID
  6. Scientific name

Parse Kraken Output in Python

import pandas as pd

report = pd.read_csv('report.txt', sep='\t', header=None,
                      names=['pct', 'reads_clade', 'reads_taxon', 'rank', 'taxid', 'name'])

report['name'] = report['name'].str.strip()

species = report[report['rank'] == 'S']
species_sorted = species.sort_values('pct', ascending=False)
species_sorted.head(20)

Filter Report by Rank

# Get only species-level classifications
awk '$4 == "S"' report.txt > species_report.txt

# Get genus level
awk '$4 == "G"' report.txt > genus_report.txt

Key Parameters

ParameterDefaultDescription
--dbrequiredDatabase path
--threads1CPU threads
--confidence0.0Confidence threshold (0-1)
--minimum-base-quality0Phred quality threshold
--memory-mappingfalseUse disk-based database
--pairedfalsePaired-end mode
--use-namesfalseInclude taxon names
--report-zero-countsfalseInclude 0-count taxa

Database Libraries

LibraryContent
bacteriaRefSeq complete bacterial genomes
archaeaRefSeq complete archaeal genomes
viralRefSeq complete viral genomes
plasmidRefSeq plasmid nucleotide sequences
humanGRCh38 human genome
fungiRefSeq fungi
protozoaRefSeq protozoa
UniVec_CoreCommon vector sequences

Related Skills

  • abundance-estimation - Estimate abundances with Bracken
  • metaphlan-profiling - Alternative marker-based profiling
  • metagenome-visualization - Visualize results

Install

Download ZIP
Requires askill CLI v1.0+

AI Quality Score

95/100Analyzed 2/12/2026

An excellent, comprehensive reference for the Kraken2 bioinformatics tool. It provides detailed CLI commands for various modes, explains output formats, includes database building instructions, and even offers a Python parsing snippet. Highly actionable and well-structured.

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Metadata

Licenseunknown
Version-
Updated2/5/2026
Publishermajiayu000

Tags

ci-cddatabase