A Python tool for processing paired FASTQ files to efficiently count oligo codons.
Project description
OligoSeeker
Installation
You can install the package via pip:
pip install oligoseeker
Or directly from the repository:
pip install git+https://github.com/username/OligoSeeker.git
Overview
OligoSeeker is a Python library designed to process paired FASTQ files and count occurrences of specific oligo codons. It provides a simple yet powerful interface for bioinformatics researchers working with oligonucleotide analysis.
Features
- Process paired FASTQ files (gzipped or uncompressed)
- Search for custom oligo sequences with codon sites (NNN)
- Support for both forward and reverse complement matching
- Comprehensive results in CSV format
- Merge functionality to combine results from multiple samples
- User-friendly command-line interface with multiple modes
- Modular design for integration with other tools
Scientific Background: Oligonucleotide-Targeted Mutagenesis
Oligonucleotide-targeted mutagenesis is a powerful technique in molecular biology that enables precise alterations of DNA sequences. In this approach, synthetic oligonucleotides (short DNA fragments, typically 20-60 nucleotides) are designed to target specific locations in a gene, allowing researchers to introduce defined mutations.
The Structure of Mutagenic Oligos
A typical mutagenic oligo has three distinct components:
- 5’ Homology Arm: A sequence that matches the target DNA upstream of the mutation site, providing specificity.
- Mutation Site (NNN): The actual mutation being introduced, often represented as “NNN” when a mixture of all possible codons is used.
- 3’ Homology Arm: A sequence that matches the target DNA downstream of the mutation site, providing additional specificity.
For example, if our target DNA sequence is:
5'-ATGCATGCATGCATGCATGCATGCATGCATGC-3'
And we want to mutagenize the underlined codon:
5'-ATGCATGCATGCAT___GCATGCATGCATGCATGC-3'
We would design an oligo like:
5'-ATGCATGCATGCATNNNGCATGCATGCATGC-3'
Why Use NNN Codons?
The “NNN” in the oligo represents a mixture of all possible nucleotide combinations at that position: - N = A mixture of A, T, G, and C - NNN = All 64 possible codons (4³ = 64)
This approach allows: - Saturation mutagenesis: Testing all possible amino acid substitutions at a position - Structure-function studies: Identifying critical residues in proteins - Protein engineering: Optimizing enzyme activity or stability
Deep Sequencing of Mutagenesis Libraries
After the mutagenesis reaction, the resulting DNA library contains a mixture of variants with different codons at the target position. Next-generation sequencing technologies allow researchers to sequence thousands or millions of these variants simultaneously.
OligoSeeker helps analyze this sequencing data by: 1. Identifying
reads that contain the mutagenic oligo 2. Extracting the specific codon
present at the NNN position 3. Counting the frequency of each codon
variant
This information is crucial for: - Verifying library coverage (were all possible codons incorporated?) - Quantifying biases in the mutagenesis process - Analyzing selection experiments where certain variants may be enriched
How It Works
OligoSeeker searches for specific oligonucleotide patterns in paired FASTQ reads. When it finds a match, it extracts the codon sequence (represented by NNN in the oligo pattern) and tallies its occurrence. The library handles both forward and reverse complement matching, ensuring comprehensive detection.
The basic count workflow is: 1. Load and validate oligo sequences 2. Process paired FASTQ files 3. Count codon occurrences for each oligo 4. Output results in CSV format
Additionally, the merge workflow allows you to: 1. Process multiple samples independently 2. Combine the count results from different runs 3. Sum the codon occurrences across samples 4. Analyze patterns across a larger dataset
Quick Start
Command-Line Usage
# Basic usage with oligos
!oligoseeker -m count \
--f1 ../test_files/test_1.fq.gz \
--f2 ../test_files/test_2.fq.gz \
--oligos "GCGGATTACATTNNNAAATAACATCGT,TGTGGTAAGCGGNNNGAAAGCATTTGT" \
--output ../test_files/test_outs --prefix test_cm3
# Basic usage with oligos files
oligoseeker -m count \
--f1 ../test_files/test_1.fq.gz \
--f2 ../test_files/test_2.fq.gz \
--oligos-file '../test_files/oligos.txt' \
--output ../test_files/test_outs --prefix test_cm4
# Basic usage to merge oligo counts
oligoseeker -m merge \
--output-file 'merge_cl.csv' \
--input-dir ../test_files/test_outs \
--output ../test_files/merged
Python API Usage
Here’s a simple example of using the Python API:
from OligoSeeker.pipeline import PipelineConfig, OligoCodonPipeline
from typing import Dict, List, Tuple, Set
# Create a configuration
config = PipelineConfig(
fastq_1="../test_files/test_1.fq.gz",
fastq_2="../test_files/test_1.fq.gz",
oligos_list=["GCGGATTACATTNNNAAATAACATCGT", "TGTGGTAAGCGGNNNGAAAGCATTTGT", "GTCGTAGAAAATNNNTGGGTGATGAGC"],
output_path="../test_files/test_outs",
output_prefix='test1'
)
# Create and run the pipeline
pipeline = OligoCodonPipeline(config)
results = pipeline.run()
# Print the locations of output files
print(f"Results saved to: {results['csv_path']}")
/Users/MTinti/miniconda3/envs/work3/lib/python3.10/site-packages/pandas/core/arrays/masked.py:60: UserWarning: Pandas requires version '1.3.6' or newer of 'bottleneck' (version '1.3.4' currently installed).
from pandas.core import (
2025-03-11 19:50:45,590 - INFO - Starting OligoCodonPipeline
2025-03-11 19:50:45,591 - INFO - Loading oligo sequences...
2025-03-11 19:50:45,591 - INFO - Using provided oligo list
2025-03-11 19:50:45,591 - INFO - Loaded 3 oligo sequences
2025-03-11 19:50:45,592 - INFO - Processing FASTQ files...
0it [00:00, ?it/s]
2025-03-11 19:50:45,666 - INFO - Formatting results...
2025-03-11 19:50:45,669 - INFO - Saving results to: ../test_files/test_outs/test1_counts.csv
2025-03-11 19:50:45,679 - INFO - Pipeline completed in 0.09 seconds
Results saved to: ../test_files/test_outs/test1_counts.csv
# this should show 20 (ACT), 40 (GGC) and 60 matches (AAA) for
# oligo 1, 2 and 3 respectievely
import pandas as pd
out = pd.read_csv(results['csv_path'],index_col=[0])
out.head()
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| 1_GCGGATTACATTNNNAAATAACATCGT | 2_TGTGGTAAGCGGNNNGAAAGCATTTGT | 3_GTCGTAGAAAATNNNTGGGTGATGAGC | |
|---|---|---|---|
| none | 1980.0 | 1960.0 | 1940.0 |
| ACT | 20.0 | 0.0 | 0.0 |
| GGC | 0.0 | 40.0 | 0.0 |
| AAA | 0.0 | 0.0 | 60.0 |
Here’s a simple example of using the Python API with oligo listed in a file:
from OligoSeeker.pipeline import PipelineConfig, OligoCodonPipeline
from typing import Dict, List, Tuple, Set
# Create a configuration
config = PipelineConfig(
fastq_1="../test_files/test_1.fq.gz",
fastq_2="../test_files/test_1.fq.gz",
oligos_file="../test_files/oligos.txt",
output_path="../test_files/test_outs",
output_prefix='test2'
)
# Create and run the pipeline
pipeline = OligoCodonPipeline(config)
results = pipeline.run()
# Print the locations of output files
print(f"Results saved to: {results['csv_path']}")
2025-03-11 19:51:08,402 - INFO - Starting OligoCodonPipeline
2025-03-11 19:51:08,403 - INFO - Loading oligo sequences...
2025-03-11 19:51:08,404 - INFO - Loading oligos from file: ../test_files/oligos.txt
2025-03-11 19:51:08,407 - INFO - Loaded 3 oligo sequences
2025-03-11 19:51:08,407 - INFO - Processing FASTQ files...
0it [00:00, ?it/s]
2025-03-11 19:51:08,462 - INFO - Formatting results...
2025-03-11 19:51:08,463 - INFO - Saving results to: ../test_files/test_outs/test2_counts.csv
2025-03-11 19:51:08,468 - INFO - Pipeline completed in 0.07 seconds
Results saved to: ../test_files/test_outs/test2_counts.csv
Merging Count Files
You can merge multiple count files from different runs to combine results:
from OligoSeeker.merge import merge_count_csvs
# Merge all count files in a directory
merged_df = merge_count_csvs(
input_dir="../test_files/test_outs", # Directory containing count files
output_file="merged_counts.csv", # Output filename
output_dir="../test_files/merged", # Output directory
pattern="*_counts.csv" # Pattern to match files
)
print(f"Merged {len(merged_df)} codons across {len(merged_df.columns)} oligos")
merged_df.head()
Found 6 CSV files to merge
Loaded ../test_files/test_outs/test_cm2_counts.csv with 4 rows and 3 columns
Loaded ../test_files/test_outs/test2_counts.csv with 4 rows and 3 columns
Loaded ../test_files/test_outs/test1_counts.csv with 4 rows and 3 columns
Loaded ../test_files/test_outs/test_cm3_counts.csv with 3 rows and 2 columns
Loaded ../test_files/test_outs/test_cm4_counts.csv with 4 rows and 3 columns
Loaded ../test_files/test_outs/test_cm1_counts.csv with 4 rows and 3 columns
Merged data saved to ../test_files/merged/merged_counts.csv
Merged 4 codons across 3 oligos
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| 1_GCGGATTACATTNNNAAATAACATCGT | 2_TGTGGTAAGCGGNNNGAAAGCATTTGT | 3_GTCGTAGAAAATNNNTGGGTGATGAGC | |
|---|---|---|---|
| AAA | 0.0 | 0.0 | 300.0 |
| ACT | 120.0 | 0.0 | 0.0 |
| GGC | 0.0 | 240.0 | 0.0 |
| none | 11880.0 | 11760.0 | 9700.0 |
Modules
OligoSeeker is organized into several modules:
Core
The core module contains fundamental utilities and classes: - DNA sequence operations (reverse complement, etc.) - OligoRegex for pattern matching - OligoLoader for loading and validating oligo sequences
FASTQ Processing
The FASTQ module handles reading and processing FASTQ files: - FastqHandler for file operations - OligoCodonProcessor for counting codons in FASTQ files
Output
The output module manages results formatting and saving: - ResultsFormatter for converting results to DataFrames - ResultsSaver for saving to various file formats
Pipeline
The pipeline module provides the complete processing pipeline: - PipelineConfig for configuration settings - ProgressReporter for progress tracking - OligoCodonPipeline for end-to-end processing
Merge
The merge module provides functionality to combine multiple count results: - Merge count CSV files by summing values - Support for flexible output naming and location - Pattern matching to select specific files
CLI
The CLI module implements the command-line interface: - Argument parsing - Configuration validation - Pipeline execution
Quick Start
Command-Line Usage
For count mode (processing FASTQ files):
# Using oligos directly specified
oligoseeker -m count --f1 test_files/test_1.fq.gz --f2 test_files/test_2.fq.gz \
--oligos "GCGGATTACATTNNNAAATAACATCGT,TGTGGTAAGCGGNNNGAAAGCATTTGT" \
--output test_outs --prefix test_run1
# Using oligos from a file
oligoseeker -m count --f1 test_files/test_1.fq.gz --f2 test_files/test_2.fq.gz \
--oligos-file test_files/oligos.txt --output test_outs --prefix test_run2
For merge mode (combining multiple count files):
# Merge all count files in a directory
oligoseeker -m merge --input-dir test_outs --output test_outs/merged \
--output-file combined_counts.csv
CLI Reference
usage: oligoseeker [-h] [-m {count,merge}] [--f1 FASTQ_PATH_1] [--f2 FASTQ_PATH_2]
[--oligos-file OLIGOS_FILE] [--oligos OLIGOS_STRING]
[--offset OFFSET_OLIGO] [--input-dir INPUT_DIR]
[--output-file OUTPUT_FILE] [--pattern PATTERN]
[-o OUTPUT_PATH] [--prefix OUTPUT_PREFIX]
[--log-file LOG_FILE]
[--log-level {DEBUG,INFO,WARNING,ERROR,CRITICAL}]
OligoSeeker: Process FASTQ files to count oligo codons
options:
-h, --help show this help message and exit
-m {count,merge}, --mode {count,merge}
Operation mode: 'count' to process FASTQ files or 'merge' to combine CSV counts (default: count)
-o OUTPUT_PATH, --output OUTPUT_PATH
Output directory for results (default: ../test_files/test_outs)
--prefix OUTPUT_PREFIX
Prefix for output files (default: )
--log-file LOG_FILE Path to log file (if not specified, logs to console only)
--log-level {DEBUG,INFO,WARNING,ERROR,CRITICAL}
Logging level (default: INFO)
Count Mode Options:
--f1 FASTQ_PATH_1, --fastq_1 FASTQ_PATH_1
Path to FASTQ 1 file (default: ../test_fastq_files/test_1.fq.gz)
--f2 FASTQ_PATH_2, --fastq_2 FASTQ_PATH_2
Path to FASTQ 2 file (default: ../test_fastq_files/test_2.fq.gz)
Oligo Source Options:
--oligos-file OLIGOS_FILE
File containing oligo sequences (one per line)
--oligos OLIGOS_STRING
Comma-separated list of oligo sequences
(default: GCGGATTACATTNNNAAATAACATCGT,TGTGGTAAGCGGNNNGAAAGCATTTGT,GTCGTAGAAAATNNNTGGGTGATGAGC)
--offset OFFSET_OLIGO
Value to add to oligo index in output (default: 1)
Merge Mode Options:
--input-dir INPUT_DIR
Directory containing CSV files to merge (required for merge mode)
--output-file OUTPUT_FILE
Name of the output merged file (default: merged_counts.csv)
--pattern PATTERN Pattern to match CSV files (default: *count*.csv)
Data Requirements
OligoSeeker works with standard paired FASTQ files, which should be named according to common conventions:
- Read 1:
*_1.fq.gz,*_R1.fastq.gz, or*_R1_001.fastq.gz - Read 2:
*_2.fq.gz,*_R2.fastq.gz, or*_R2_001.fastq.gz
The oligo sequences should include a codon site marked with NNN. For
example:
GAACNNNCAT
TGACNNNTAG
This specifies that the 3 bases following GAAC or TGAC should be
captured as the codon.
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
Development Setup
-
Clone the repository
-
Install development dependencies:
pip install -e ".[dev]" pip install nbdev
-
Make changes to the notebook files in the
nbsdirectory -
Build the library:
nbdev_build_lib
-
Build the documentation:
nbdev_build_docs
License
This project is licensed under the Apache 2.0 License - see the LICENSE file for details.
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