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A python implementation of the Tamura-Nei pairwise distance calculation

Project description

Tamura-Nei Distance Calculation with Python

Unit Tests Deployed Package

Overview

This repository contains a Python implementation of the Tamura-Nei (TN93) distance calculation. When provided with two sequences to compare, this software returns a distance value between 0 and 1 using the Tamura-Nei nucleotide substitution model. See Estimation of the number of nucleotide substitutions in the control region of mitochondrial DNA in humans and chimpanzees for more information on the algorithm. This software has been developed by the Molecular Epidemiology and Bioinformatics Team in the Division of HIV/AIDS Prevention, NCHHSTP.

Usage

This tool is primarily meant as a library to be imported and used in custom analysis code, but can also be used to directly calculate the pairwise distances for a set of sequences in a FASTA file.

First, install using pip

pip install tn93

or clone this respository and copy src/tn93/tn93.py to your working directory. To calculate the distance between a pair of sequences,

from Bio import SeqIO
import tn93
# Read in a FASTA file to get sequences
seqs = [ x for x in SeqIo.parse("your_sequences.fasta", format="fasta") ]
tn93 = tn93.TN93()
distance = tn93.tn93_distance(seqs[0], seqs[1], "RESOLVE")

Alternatively, the module can be run from the command line and provided with a sequence file and match mode to produce a JSON file with the pairwise distances.

python tn93.py --input_file example_seqs.fasta --match_mode RESOLVE --output example_seqs_resolve_distance.json

By default, the software produces distances in the form

ID1,ID2,Distance

Selecting JSON output produces distances in the form

{"ID1": ID1, "ID2": ID2, "Distance": Distance}

There are four distinct match modes:

  • SKIP, which ignores ambiguous positions
  • GAPMM, which treats gaps appearing in only one sequence as mismatches
  • AVERAGE, which takes the average of the possible resolution values
  • RESOLVE, which tries to resolve the ambiguity to a single nucleotide, averages if that fails
usage: tn93.py [-h] -i INPUT_FILE -m MATCH_MODE -o OUTPUT
               [-g MAX_AMBIG_FRACTION] [-v] [-n] [-j]

optional arguments:
  -h, --help            show this help message and exit
  -i INPUT_FILE, --input_file INPUT_FILE
                        Path to the input fasta file
  -m MATCH_MODE, --match_mode MATCH_MODE
                        How to handle ambiguities. This can be one of four
                        options: average - Averages the possible nucleotide
                        values for each ambiguity in a sequence; resolve -
                        Tries to resolve ambiguities; skip - Ignores gaps and
                        ambiguities; gapmm - Treats gaps in only one sequence
                        as 'N's;
  -o OUTPUT, --output OUTPUT
                        The name of the output file to create
  -g MAX_AMBIG_FRACTION, --max_ambig_fraction MAX_AMBIG_FRACTION
                        Sequences that have proportions of ambiguities lower
                        than this value will be resolved, otherwise they will
                        be averaged (RESOLVE only) (Default: 1.0)
  -v, --verbose         Verbosity, One copy prints intermediate values and
                        final counts, two copies produces a CSV file with
                        pairwise counts for each non-gap nucleotide
  -n, --ignore_terminal_gaps
                        Should gaps at the beginning and end of a sequence be
                        ignored (GAPMM only)? (Default: False)
  -j, --json_output     Should the output be in JSON format? (Default: False)

Related documents

Public Domain Standard Notice

This repository constitutes a work of the United States Government and is not subject to domestic copyright protection under 17 USC § 105. This repository is in the public domain within the United States, and copyright and related rights in the work worldwide are waived through the CC0 1.0 Universal public domain dedication. All contributions to this repository will be released under the CC0 dedication. By submitting a pull request you are agreeing to comply with this waiver of copyright interest.

License Standard Notice

The repository utilizes code licensed under the terms of the Apache Software License and therefore is licensed under ASL v2 or later.

This source code in this repository is free: you can redistribute it and/or modify it under the terms of the Apache Software License version 2, or (at your option) any later version.

This source code in this repository is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the Apache Software License for more details.

You should have received a copy of the Apache Software License along with this program. If not, see http://www.apache.org/licenses/LICENSE-2.0.html

The source code forked from other open source projects will inherit its license.

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Contributing Standard Notice

Anyone is encouraged to contribute to the repository by forking and submitting a pull request. (If you are new to GitHub, you might start with a basic tutorial.) By contributing to this project, you grant a world-wide, royalty-free, perpetual, irrevocable, non-exclusive, transferable license to all users under the terms of the Apache Software License v2 or later.

All comments, messages, pull requests, and other submissions received through CDC including this GitHub page may be subject to applicable federal law, including but not limited to the Federal Records Act, and may be archived. Learn more at http://www.cdc.gov/other/privacy.html.

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Additional Standard Notices

Please refer to CDC's Template Repository for more information about contributing to this repository, public domain notices and disclaimers, and code of conduct.

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