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Analyze haplotypes from Illumina paired-end amplicon sequencing

Project description

CloneArmy

CloneArmy is a modern Python package for analyzing haplotypes from Illumina paired-end amplicon sequencing data. It provides a streamlined workflow for processing FASTQ files, aligning reads, identifying sequence variants, and performing comparative analyses between samples.

Features

  • Fast paired-end read processing using BWA-MEM
  • Quality-based filtering of bases and alignments
  • Haplotype identification and frequency analysis
  • Statistical comparison between samples with FDR correction
  • Interactive visualization of mutation frequencies
  • Rich command-line interface with progress tracking and tabular output
  • Comprehensive HTML reports
  • Multi-threading support
  • Support for full-length sequence analysis
  • Real-time progress monitoring with progress bars
  • Automatic downsampling of large FASTQ files
  • Exportable results in multiple formats (CSV, JSON, Excel)

Installation

pip install clonearmy

Requirements

  • Python ≥ 3.8
  • BWA (must be installed and available in PATH)
  • Samtools (must be installed and available in PATH)
  • Seqtk (must be installed and available in PATH)

You can install the required tools using conda:

conda install -c bioconda bwa samtools seqtk

Usage

Command Line Interface

Basic Analysis

# Basic usage with progress tracking
clonearmy run /path/to/fastq/directory reference.fasta

# With all options
clonearmy run /path/to/fastq/directory reference.fasta \
    --threads 8 \
    --output results \
    --min-base-quality 20 \
    --min-mapping-quality 30 \
    --min-read-count 10 \
    --max-file-size 100000000 \  # Target size for downsampling (100MB)
    --report  # Generate HTML report (default: true)

The --max-file-size option specifies the target size for downsampling large FASTQ files. If your input files are larger than this size, they will be automatically downsampled while maintaining paired-end relationships. This is useful for quick testing or when working with very large datasets. The size is specified in bytes (e.g., 100000000 for 100MB).

Comparative Analysis

# Compare two samples
clonearmy compare \
    /path/to/sample1/fastq \
    /path/to/sample2/fastq \
    reference.fasta \
    --threads 8 \
    --output comparison_results \
    --min-base-quality 20 \
    --min-mapping-quality 30 \
    --min-read-count 10 \
    --max-file-size 100000000 \  # Target size for downsampling (100MB)
    --full-length-only  # Only consider full-length sequences

Output Examples

Sample Analysis Results

╒════════════════╤══════════╤════════════╤══════════════╕
│ Sample         │ Reads    │ Haplotypes │ Mutations    │
╞════════════════╪══════════╪════════════╪══════════════╡
│ sample1        │ 10000    │ 45         │ 2.3 avg      │
│ sample2        │ 12000    │ 52         │ 1.8 avg      │
╘════════════════╧══════════╧════════════╧══════════════╛

Comparative Analysis Results

╒══════════╤════════════╤════════════╤═══════════╤═══════════╕
│ Position │ Sample 1 % │ Sample 2 % │ P-value   │ FDR       │
╞══════════╪════════════╪════════════╪═══════════╪═══════════╡
│ 123 A>T  │ 45.2      │ 12.3       │ 0.001     │ 0.003     │
│ 456 G>C  │ 33.1      │ 28.9       │ 0.042     │ 0.063     │
╘══════════╧════════════╧════════════╧═══════════╧═══════════╛

Python API

from pathlib import Path
from clone_army.processor import AmpliconProcessor
from clone_army.comparison import run_comparative_analysis

# Initialize processor with automatic downsampling
processor = AmpliconProcessor(
    reference_path="reference.fasta",
    min_base_quality=20,
    min_mapping_quality=30,
    min_read_count=10,
    max_file_size=100_000_000  # 100MB target size
)

# Process samples
results1 = processor.process_sample(
    fastq_r1="sample1_R1.fastq.gz",
    fastq_r2="sample1_R2.fastq.gz",
    output_dir="results/sample1",
    threads=4
)

results2 = processor.process_sample(
    fastq_r1="sample2_R1.fastq.gz",
    fastq_r2="sample2_R2.fastq.gz",
    output_dir="results/sample2",
    threads=4
)

# Perform comparative analysis
comparison_results = run_comparative_analysis(
    results1=results1,
    results2=results2,
    reference_seq=ref_seq,
    output_path="comparison_results.csv",
    full_length_only=False
)

Output Files

Single Sample Analysis

  • Sorted BAM file with alignments
  • {sample}_haplotypes.csv containing:
    • Sequence
    • Read count
    • Frequency
    • Number of mutations
    • Full-length status
    • Quality metrics
  • Interactive HTML report with:
    • Summary statistics
    • Mutation frequency plots
    • Position-based mutation diversity plots
    • Mutation spectrum analysis
  • Console output with summary statistics

Comparative Analysis

  • comparison_results.csv with statistical comparisons:
    • Mutation positions and types
    • Frequencies in each sample
    • Statistical significance (p-values)
    • FDR-corrected p-values
  • Interactive HTML plots:
    • Mutation frequency comparison
    • Position-based mutation diversity
  • Console output with significant mutations

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