Application and Python module for whole-genome classification of microbes using Average Nucleotide Identity.
If you would like to contribute code to the pyani
project (e.g. a bug fix or new feature), please refer to the CONTRIBUTING.md
guide for more details.
pyani
is maintained by:
and we are grateful to all who have contributed to this software:
Contributors ✨ (emoji key):
(This project follows the all-contributors specification. Contributions of any kind welcome!)
A complete guide to citing pyani
is included in the file CITATIONS
. Please cite the following manuscript in your work, if you have found pyani
useful:
Pritchard et al. (2016) "Genomics and taxonomy in diagnostics for food security: soft-rotting enterobacterial plant pathogens" Anal. Methods 8, 12-24 DOI: 10.1039/C5AY02550H
pyani
pyani
is a software package and Python3 module that calculates average nucleotide identity (ANI) and related measures for whole genome comparisons, and renders relevant graphical summary output.
Where available, pyani
can take advantage of multicore systems, and integrates with SGE/OGE-type job schedulers for the sequence comparisons.
pyani
installs the program pyani
, which enables command-line based analysis of genomes.
THIS REPOSITORY DEFAULT BRANCH CONTAINS A DEVELOPMENT VERSION OF PYANI
(v0.3+). IT HAS A DIFFERENT COMMAND-LINE INTERFACE THAN THE STABLE PYANI
VERSION (v0.2.x).
IF YOU WISH TO INSTALL THE STABLE VERSION OF PYANI
, PLEASE FOLLOW THESE INSTRUCTIONS FOR INSTALLING v0.2.x
The easiest way to install pyani
v0.2 is to use conda
or pip
. conda
is recommended for the simplest installation of third-party tool dependencies (mummer
and BLAST
/BLAST+
).
You will need to install the bioconda
channel, following instructions at https://bioconda.github.io/user/install.html. Then, to create a new environment for pyani
and install the program, issue the following command:
conda create --name pyani_env python=3.8 -y
conda activate pyani_env
conda install pyani
pip
will install pyani
and its Python dependencies, but not the third-party tools.
pip3 install pyani
Four alignment packages are required, to use all of pyani
's methods: mummer
, BLAST+
, legacy BLAST
, and fastANI
. (Note that it is not necessary to install all four tools to use pyani
. You need only install the tools that are required for the method you wish to use.)
The simplest route to obtaining these tools is to use conda
/bioconda
:
conda install mummer blast legacy-blast fastani -y
But they can also be installed by following instructions from the tools' own websites.
- BLAST+ (for
anib
) ftp://ftp.ncbi.nlm.nih.gov/blast/executables/blast+/LATEST/ - legacy BLAST (for
aniblastall
) ftp://ftp.ncbi.nlm.nih.gov/blast/executables/release/LATEST/ - MUMmer (for
anim
) http://mummer.sourceforge.net/ - fastANI (for
fastani
) https://github.com/ParBLiSS/FastANI
The legacy BLAST executable available from NCBI will not run on macOS Big Sur.
If you wish to use pyani blastall
or the ANIblastall
method with the legacy pyani
interface, you will require a locally-installed copy of this package. This is one of the packages linked in the requirements-thirdparty.txt
file.
fastANI
installation (via conda
) will fail for Python 3.9 on macOS.
If you are using Python ≥3.9 to run pyani
on macOS, fastANI
will fail to install due to errors in the conda
recipe (for build h0a26cfa_0
). Using an earlier version of Python may be the simplest solution. However, you can also install fastANI
yourself—via conda
—using a slightly altered version of the command produced from the conda
recipe, as shown below.
N.B. We have placed the fastANI
requirement in its own requirements-fastani.txt
file so that this will not also cause other installations to fail.
c++ -O3 -DNDEBUG -std=c++11 -Isrc \
-I ${ENV_DIR}/lib/include -mmacosx-version-min=10.7 \
-stdlib=libc++ -Xpreprocessor -fopenmp -lomp \
-DUSE_BOOST src/cgi/core_genome_identity.cpp -o fastANI \
${ENV_DIR}/lib/lib/libboost_math_c99.a \
-lstdc++ -lz -lm
Two alterations need to be made to the file name specified in the fifth line here:
- One of the
/lib
s should be removed. - The file extension should be changed from
.a
, to.dylib
.
The resultant command ought to look something like this (with ${ENV_DIR} being wherever you're installing fastANI
):
c++ -O3 -DNDEBUG -std=c++11 -Isrc \
-I ${ENV_DIR}/lib/include -mmacosx-version-min=10.7 \
-stdlib=libc++ -Xpreprocessor -fopenmp -lomp \
-DUSE_BOOST src/cgi/core_genome_identity.cpp -o fastANI \
${ENV_DIR}/lib/libboost_math_c99.dylib \
-lstdc++ -lz -lm
For a more technical overview of the issue, and other solutions that may be shared there, please see #377.
This solution is how one of our developers managed to solve the problem. We hope it works for you, but can not guarantee this. Unfortunately, if this does not work for you, we will also not be able to troubleshoot the issue. In this instance, please file an issue at https://github.com/bioconda/bioconda-recipes.
This README.md
file provides a quick overview and walkthrough for THE DEVELOPMENT VERSION (v0.3+) OF pyani
, and full documentation can be found at the link below:
THIS README AND THE DOCUMENTATION AT READTHEDOCS
REFERS TO A DEVELOPMENT VERSION OF PYANI
(v0.3+). IT HAS A DIFFERENT COMMAND-LINE INTERFACE THAN THE STABLE PYANI
VERSION (v0.2.x).
THE STABLE VERSION OF PYANI
(v0.2) DOES NOT HAVE THE pyani
COMMAND
If you are using pyani
v0.2.x, then please note that the command-line API has changed, and documentation for this version can be found at the following page:
If you would like to report a bug or problem with pyani
, or ask a question of the developer(s), please raise an issue at the link below:
The command-line interface to pyani
uses subcommands. These separate individual steps of an analysis into separate actions.
- Download genomes
- Create a database to hold genome data and analysis results
- Perform ANI analysis
- Report and visualise analysis results
- Generate species hypotheses (classify genomes) using the analysis results
The steps are described in detail with examples, below.
The first step is to obtain genome data for analysis. pyani
expects to find each individual genome in its own FASTA file (that file can contain multiple sequences - chromosomes and plasmids; sequenced scaffolds, etc). All the FASTA files for an analysis are expected to be located in a single subdirectory (with optional labels
and classes
files). You can arrange your data manually, but pyani
provides a subcommand that downloads all genomes in a taxon subtree from NCBI, and organises them ready for use with pyani
.
We'll use the pyani download
subcommand to download all available genomes for Candidatus Blochmannia from NCBI. The taxon ID for this grouping is 203804.
pyani download -o C_blochmannia --email [email protected] -t 203804 -v -l C_blochmannia_dl.log
The first argument is the output directory into which the downloaded genomes will be written (-o C_blochmannia
). To download anything from NCBI we must provide an email address (--email [email protected]
), and to specify which taxon subtree we want to download we provide the taxon ID (-t 203804
).
Here we also request verbose output (-v
), and write a log file for reproducible research/diagnosing bugs and errors (-l C_blochmannia_dl.log
).
This produces a new subdirectory (C_blochmannia
) with the following contents:
$ tree C_blochmannia
C_blochmannia
├── GCF_000011745.1_ASM1174v1_genomic.fna
├── GCF_000011745.1_ASM1174v1_genomic.fna.gz
├── GCF_000011745.1_ASM1174v1_genomic.fna.md5
├── GCF_000011745.1_ASM1174v1_hashes.txt
├── GCF_000043285.1_ASM4328v1_genomic.fna
├── GCF_000043285.1_ASM4328v1_genomic.fna.gz
├── GCF_000043285.1_ASM4328v1_genomic.fna.md5
├── GCF_000043285.1_ASM4328v1_hashes.txt
├── GCF_000185985.2_ASM18598v2_genomic.fna
├── GCF_000185985.2_ASM18598v2_genomic.fna.gz
├── GCF_000185985.2_ASM18598v2_genomic.fna.md5
├── GCF_000185985.2_ASM18598v2_hashes.txt
├── GCF_000331065.1_ASM33106v1_genomic.fna
├── GCF_000331065.1_ASM33106v1_genomic.fna.gz
├── GCF_000331065.1_ASM33106v1_genomic.fna.md5
├── GCF_000331065.1_ASM33106v1_hashes.txt
├── GCF_000973505.1_ASM97350v1_genomic.fna
├── GCF_000973505.1_ASM97350v1_genomic.fna.gz
├── GCF_000973505.1_ASM97350v1_genomic.fna.md5
├── GCF_000973505.1_ASM97350v1_hashes.txt
├── GCF_000973545.1_ASM97354v1_genomic.fna
├── GCF_000973545.1_ASM97354v1_genomic.fna.gz
├── GCF_000973545.1_ASM97354v1_genomic.fna.md5
├── GCF_000973545.1_ASM97354v1_hashes.txt
├── classes.txt
└── labels.txt
Seven genomes have been downloaded, and each is represented by four files:
_genomic.fna.gz
: the compressed genome sequence_genomic.fna
: the uncompressed genome sequence_genomic.fna.md5
: an MD5 hash/checksum of the (uncompressed) genome sequence; this was generated during the download_hashes.txt
: a list of MD5 hashes; this is provided by NCBI and is a reference to be sure that the download did not corrupt the genome sequence
There are two additional plain text files: classes.txt
and labels.txt
, which provide alternative labels for use in the analysis. These files are generated during the download.
pyani
uses a database to store genome data and analysis results. This is convenient for data sharing and developing custom analyses, but also makes it easier to extend an existing ANI analysis with new genomes, without having to repeat calculations that were already performed.
To create a new, clean, database in the default location (.pyani/pyanidb
) issue the command:
pyani createdb -v -l C_blochmannia_createdb.log
As above, the verbose (-v
) and log file (-l C_blochmannia_createdb.log
) options allow for reproducible work. The default database location is in the hidden directory (.pyani
):
$ tree .pyani
.pyani
└── pyanidb
Subsequent pyani
commands will assume this location for the database, but you can specify the location when creating a database, or using an existing database.
pyani
provides four subcommands to run ANI analyses:
anim
: ANImanib
: ANIb, using BLAST+aniblastall
: ANIb, using legacy BLASTtetra
: TETRA
In this walkthrough, we'll run ANIm on the downloaded genomes, using the command:
pyani anim -i C_blochmannia -o C_blochmannia_ANIm -v -l C_blochmannia_ANIm.log \
--name "C. blochmannia run 1" \
--labels C_blochmannia/labels.txt --classes C_blochmannia/classes.txt
All four analysis commands operate in a similar way. The first two arguments are paths to directories: the first path is to a directory containing input genomes, and the second is the path to an output directory for storing intermediate results. The -v
and -l
arguments work as above, specifying verbose output and logging output to a file.
You will probably notice that the verbose output is very verbose, to enable informative identification of any problems. In particular, the verbose output (which is also written to the log file) writes out the command-lines used for the pairwise comparisons so, if something goes wrong, you can test whether a specific comparison can be run at the command-line at all, to aid diagnosis of any problems.
One reason for using a database backend for analysis results is so that, for very large analyses, we do not ever need to recalculate a pairwise genome comparison. All the analysis subcommands check whether input genomes have been used before (using the unique MD5 hash for each genome to identify whether it's been used previously), and whether the comparison of two genomes has been run, with the particular analysis settings that were used. If either genome was not seen before, or if the analysis settings are different, the comparison is performed.
You can test this for yourself by running the analysis command again, as below. You will see a number of messages indicating that genomes have been seen before, and that analyses performed before were skipped:
$ pyani anim -i C_blochmannia -o C_blochmannia_ANIm -v -l C_blochmannia_ANIm.log \
--name "C. blochmannia run 2" \
--labels C_blochmannia/labels.txt --classes C_blochmannia/classes.txt
INFO: command-line: pyani anim -i C_blochmannia -o C_blochmannia_ANIm -v -l C_blochmannia_ANIm.log
INFO: Running ANIm analysis
INFO: Adding analysis information to database .pyani/pyanidb
INFO: Current analysis has ID 2 in this database
INFO: Identifying input genome/hash files:
[…]
INFO: Adding genome data to database...
WARNING: Genome already in database with this hash and path!
WARNING: Using existing genome from database, row 1
[…]
INFO: Complete pairwise comparison list:
[(1, 2), (1, 3), (1, 4), (1, 5), (1, 6), (2, 3), (2, 4), (2, 5), (2, 6), (3, 4), (3, 5), (3, 6), (4, 5), (4, 6), (5, 6)]
INFO: Excluding pre-calculated comparisons
INFO: Comparisons still to be performed:
[]
INFO: All comparison results already present in database (skipping comparisons)
INFO: Completed. Time taken: 0.211
Once an analysis is run, the results are placed in a local SQLite
database, which can be queried for information about the analyses that have been run. You can request information about:
--runs
: show all analysis runs with results stored in the database--runs_genomes
: show all the analysis runs with results in the database, and all the genomes analysed in each run--genomes
: show all the genomes used for any analysis in the database--genomes_runs
: for each genome in the database, also list the analysis results it participates in--run_results
: show all the pairwise comparison results for a named run (run IDs can be obtained with the--runs
argument
The report tables are written to a named directory (compulsory argument), and are written by default to a .tab
plain-text format, but HTML and Excel format can also be requested with the --formats
argument:
$ pyani report -v --runs -o C_blochmannia_ANIm/ --formats html,excel,stdout
INFO: Processed arguments: Namespace(cmdline='./pyani report -v --runs -o C_blochmannia_ANIm/ --formats html,excel', dbpath='.pyani/pyanidb', formats='html,excel', func=<function subcmd_report at 0x10c674a60>, logfile=None, outdir='C_blochmannia_ANIm/', run_results=False, show_genomes=False, show_genomes_runs=False, show_runs=True, show_runs_genomes=False, verbose=True)
INFO: command-line: ./pyani report -v --runs -o C_blochmannia_ANIm/ --formats html,excel
INFO: Creating output in formats: ['excel', 'tab', 'html']
INFO: Using database: .pyani/pyanidb
INFO: Writing table of pyani runs from the database to C_blochmannia_ANIm/runs.*
INFO: Completed. Time taken: 0.937
$ tree -L 1 C_blochmannia_ANIm/
C_blochmannia_ANIm/
├── nucmer_output
├── runs.html
├── runs.tab
└── runs.xlsx
To see all of the pairwise results for an individual run, the run ID must be provided. It is possible to get results for more than one run ID by providing a comma-separated list of run IDs (though each run's results will be provided in a separate file):
$ pyani report -v --runs -o C_blochmannia_ANIm/ --formats html,excel --run_results 1,2,3,4
INFO: Processed arguments: Namespace(cmdline='./pyani report -v --runs -o C_blochmannia_ANIm/ --formats html,excel --run_results 1,2,3,4', dbpath='.pyani/pyanidb', formats='html,excel', func=<function subcmd_report at 0x108616a60>, logfile=None, outdir='C_blochmannia_ANIm/', run_results='1,2,3,4', show_genomes=False, show_genomes_runs=False, show_runs=True, show_runs_genomes=False, verbose=True)
INFO: command-line: ./pyani report -v --runs -o C_blochmannia_ANIm/ --formats html,excel --run_results 1,2,3,4
INFO: Creating output in formats: ['tab', 'excel', 'html']
INFO: Using database: .pyani/pyanidb
INFO: Writing table of pyani runs from the database to C_blochmannia_ANIm/runs.*
INFO: Attempting to write results tables for runs: ['1', '2', '3', '4']
INFO: Collecting data for run with ID: 1
INFO: Collecting data for run with ID: 2
INFO: Collecting data for run with ID: 3
INFO: Collecting data for run with ID: 4
INFO: Completed. Time taken: 1.285
You can see a run's results in the terminal by specifying the stdout
format. For example, to see the identity, coverage, and other output matrices, you would specify --run_matrices <RUN>
and --formats=stdout
as below:
$ pyani report -o C_blochmannia_ANIm --formats=stdout --run_matrices 1
TABLE: C_blochmannia_ANIm/matrix_identity_1
C. Blochmannia pennsylvanicus BPEN C. Blochmannia floridanus C. Blochmannia vafer BVAF C. Blochmannia chromaiodes 640 B. endosymbiont of Polyrhachis (Hedomyrma) turneri 675 B. endosymbiont of Camponotus (Colobopsis) obliquus 757
C. Blochmannia pennsylvanicus BPEN 1.000000 0.834866 0.836903 0.980244 0.843700 0.829509
C. Blochmannia floridanus 0.834866 1.000000 0.828733 0.834916 0.847060 0.857859
C. Blochmannia vafer BVAF 0.836903 0.828733 1.000000 0.837811 0.866015 0.844438
C. Blochmannia chromaiodes 640 0.980244 0.834916 0.837811 1.000000 0.849834 0.834769
B. endosymbiont of Polyrhachis (Hedomyrma) turn... 0.843700 0.847060 0.866015 0.849834 1.000000 0.844228
B. endosymbiont of Camponotus (Colobopsis) obli... 0.829509 0.857859 0.844438 0.834769 0.844228 1.000000
TABLE: C_blochmannia_ANIm/matrix_coverage_1
C. Blochmannia pennsylvanicus BPEN C. Blochmannia floridanus C. Blochmannia vafer BVAF C. Blochmannia chromaiodes 640 B. endosymbiont of Polyrhachis (Hedomyrma) turneri 675 B. endosymbiont of Camponotus (Colobopsis) obliquus 757
C. Blochmannia pennsylvanicus BPEN 1.000000 0.045736 0.041404 1.000306 0.017263 0.021027
C. Blochmannia floridanus 0.051317 1.000000 0.152609 0.054930 0.016366 0.010749
C. Blochmannia vafer BVAF 0.045362 0.149012 1.000000 0.046520 0.008356 0.014706
C. Blochmannia chromaiodes 640 1.000856 0.048983 0.042485 1.000000 0.014056 0.016140
B. endosymbiont of Polyrhachis (Hedomyrma) turn... 0.018238 0.015410 0.008058 0.014841 1.000000 0.020416
B. endosymbiont of Camponotus (Colobopsis) obli... 0.021508 0.009799 0.013730 0.016500 0.019766 1.000000
TABLE: C_blochmannia_ANIm/matrix_aln_lengths_1
C. Blochmannia pennsylvanicus BPEN C. Blochmannia floridanus C. Blochmannia vafer BVAF C. Blochmannia chromaiodes 640 B. endosymbiont of Polyrhachis (Hedomyrma) turneri 675 B. endosymbiont of Camponotus (Colobopsis) obliquus 757
C. Blochmannia pennsylvanicus BPEN 791654.0 36207.0 32778.0 791896.0 13666.0 16646.0
C. Blochmannia floridanus 36207.0 705557.0 107674.0 38756.0 11547.0 7584.0
C. Blochmannia vafer BVAF 32778.0 107674.0 722585.0 33615.0 6038.0 10626.0
C. Blochmannia chromaiodes 640 791896.0 38756.0 33615.0 791219.0 11121.0 12770.0
B. endosymbiont of Polyrhachis (Hedomyrma) turn... 13666.0 11547.0 6038.0 11121.0 749321.0 15298.0
B. endosymbiont of Camponotus (Colobopsis) obli... 16646.0 7584.0 10626.0 12770.0 15298.0 NaN
TABLE: C_blochmannia_ANIm/matrix_sim_errors_1
C. Blochmannia pennsylvanicus BPEN C. Blochmannia floridanus C. Blochmannia vafer BVAF C. Blochmannia chromaiodes 640 B. endosymbiont of Polyrhachis (Hedomyrma) turneri 675 B. endosymbiont of Camponotus (Colobopsis) obliquus 757
C. Blochmannia pennsylvanicus BPEN 0.0 5979.0 5346.0 15645.0 2136.0 2838.0
C. Blochmannia floridanus 5979.0 0.0 18441.0 6398.0 1766.0 1078.0
C. Blochmannia vafer BVAF 5346.0 18441.0 0.0 5452.0 809.0 1653.0
C. Blochmannia chromaiodes 640 15645.0 6398.0 5452.0 0.0 1670.0 2110.0
B. endosymbiont of Polyrhachis (Hedomyrma) turn... 2136.0 1766.0 809.0 1670.0 0.0 2383.0
B. endosymbiont of Camponotus (Colobopsis) obli... 2838.0 1078.0 1653.0 2110.0 2383.0 0.0
TABLE: C_blochmannia_ANIm/matrix_hadamard_1
C. Blochmannia pennsylvanicus BPEN C. Blochmannia floridanus C. Blochmannia vafer BVAF C. Blochmannia chromaiodes 640 B. endosymbiont of Polyrhachis (Hedomyrma) turneri 675 B. endosymbiont of Camponotus (Colobopsis) obliquus 757
C. Blochmannia pennsylvanicus BPEN 1.000000 0.038183 0.034652 0.980543 0.014564 0.017442
C. Blochmannia floridanus 0.042843 1.000000 0.126472 0.045862 0.013863 0.009221
C. Blochmannia vafer BVAF 0.037964 0.123491 1.000000 0.038975 0.007237 0.012418
C. Blochmannia chromaiodes 640 0.981082 0.040896 0.035594 1.000000 0.011945 0.013473
B. endosymbiont of Polyrhachis (Hedomyrma) turn... 0.015387 0.013053 0.006978 0.012613 1.000000 0.017236
B. endosymbiont of Camponotus (Colobopsis) obli... 0.017841 0.008406 0.011594 0.013774 0.016687 1.000000
The output of a pyani
run can also be represented graphically, using the plot
subcommand. For example, the command:
pyani plot -o C_blochmannia_ANIm --run_id 1 -v --formats png,pdf
will place .pdf
and .png
format output in the C_blochmannia_ANIm
output directory for the run with ID 1, generated above. Five heatmaps are generated:
- percentage identity
- percentage coverage (for both query and subject)
- alignment length (total aligned length)
- similarity errors (total number of mismatches, not including indels)
- hadamard matrix (dot product of identity and coverage matrices)
The heatmaps also include dendrograms, clustering the rows and columns by overall similarity.
NOTE: Running pyani plot
with a large number of genomes (~500) and the default figure output (--method seaborn
) may reduce output figure quality:
- labels in
.png
files may be difficult to read .pdf
files may render very slowly due to the large number of numerical values in heatmap cells.
With large datasets, --method mpl
(matplotlib) is recommended.
Please be aware that the matrix orientation differs for these two options; so, with seaborn
(the default, --method seaborn
), the orientation of self-comparisons is top left to bottom right (\
), while with matplotlib
(--method mpl
) the orientation is bottom left to top right (/
).
The --scheduler SGE
argument allows one to use pyani
with an an SGE-type scheduler.
In order for this work, one must be able to submit jobs using the qsub
command. By default, this will batch the pairwise comparisons in array jobs of 10,000, in order to avoid clogging the scheduler queue. Each comparison will be run as a single-core task in an array job.
The following arguments will be automatically set:
-N job_name # this is the value passed to `--name`
-cwd
-o ./stdout # cwd/ + "stdout"
-e ./stderr # cwd/ + "stderr"
The number of pairwise comparisons submitted per chunk can be modified using:
--SGEgroupsize *number*
The job prefix to use can be modified using:
--jobprefix *prefix*
Additional SGE arguments may be specified with:
--SGEargs "<your arguments here>"
The average_nucleotide_identity.py
script - installed as part of this package - enables straightforward ANI analysis at the command-line, and uses the pyani
module behind the scenes.
You can get a summary of available command-line options with average_nucleotide_identity.py -h
$ ./average_nucleotide_identity.py -h
usage: average_nucleotide_identity.py [-h] [-o OUTDIRNAME] [-i INDIRNAME] [-v]
[-f] [-s FRAGSIZE] [-l LOGFILE]
[--skip_nucmer] [--skip_blastn]
[--noclobber] [--nocompress] [-g]
[--gformat GFORMAT] [--gmethod GMETHOD]
[--labels LABELS] [--classes CLASSES]
[-m METHOD] [--scheduler SCHEDULER]
[--workers WORKERS]
[--SGEgroupsize SGEGROUPSIZE]
[--maxmatch] [--nucmer_exe NUCMER_EXE]
[--blastn_exe BLASTN_EXE]
[--makeblastdb_exe MAKEBLASTDB_EXE]
[--blastall_exe BLASTALL_EXE]
[--formatdb_exe FORMATDB_EXE]
[--write_excel] [--subsample SUBSAMPLE]
[--seed SEED] [--jobprefix JOBPREFIX]
[…]
Example data and output can be found in the directory test_ani_data
. The data are chromosomes of four isolates of Caulobacter. Basic analyses can be performed with the command lines:
./average_nucleotide_identity.py -i tests/test_ani_data/ -o tests/test_ANIm_output -m ANIm -g
./average_nucleotide_identity.py -i tests/test_ani_data/ -o tests/test_ANIb_output -m ANIb -g
./average_nucleotide_identity.py -i tests/test_ani_data/ -o tests/test_ANIblastall_output -m ANIblastall -g
./average_nucleotide_identity.py -i tests/test_ani_data/ -o tests/test_TETRA_output -m TETRA -g
The graphical output below, supporting assignment of NC_002696
and NC_011916
to the same species (C.crescentus), and the other two isolates to distinct species (NC_014100
:C.segnis; NC_010338
:C. sp K31), was generated with the command-line:
./average_nucleotide_identity.py -v -i tests/test_ani_data/ \
-o tests/test_ANIm_output/ -g --gformat png,pdf,eps \
--classes tests/test_ani_data/classes.tab \
--labels tests/test_ani_data/labels.tab
The script genbank_get_genomes_by_taxon.py
, installed by this package, enables download of genomes from NCBI, specified by taxon ID. The script will download all available assemblies for taxa at or below the specified node in the NCBI taxonomy tree.
Command-line options can be viewed using:
$ genbank_get_genomes_by_taxon.py -h
usage: genbacnk_get_genomes_by_taxon.py [-h] [-o OUTDIRNAME] [-t TAXON] [-v]
[-f] [--noclobber] [-l LOGFILE]
[--format FORMAT] [--email EMAIL]
[--retries RETRIES]
[--batchsize BATCHSIZE]
[…]
For example, the NCBI taxonomy ID for Caulobacter is 75, so all publicly-available Caulobacter sequences can be obtained using the command-line:
$ genbank_get_genomes_by_taxon.py -o Caulobacter_downloads -v -t 75 -l Caulobacter_downloads.log --email [email protected]
INFO: genbank_get_genomes_by_taxon.py: Mon Apr 18 17:22:54 2016
INFO: command-line: /Users/lpritc/Virtualenvs/pyani3/bin/genbank_get_genomes_by_taxon.py -o Caulobacter_downloads -v -t 75 -l Caulobacter_downloads.log --email [email protected]
INFO: Namespace(batchsize=10000, email='[email protected]', force=False, format='gbk,fasta', logfile='Caulobacter_downloads.log', noclobber=False, outdirname='Caulobacter_downloads', retries=20, taxon='75', verbose=True)
INFO: Set NCBI contact email to [email protected]
INFO: Creating directory Caulobacter_downloads
INFO: Output directory: Caulobacter_downloads
INFO: Passed taxon IDs: 75
INFO: Entrez ESearch with query: txid75[Organism:exp]
INFO: Entrez ESearch returns 29 assembly IDs
INFO: Identified 29 unique assemblies
INFO: Taxon 75: 29 assemblies
[…]
INFO: Assembly 639581: 271 contigs
INFO: Assembly 233261: 17 contigs
INFO: Assembly 575291: 48 contigs
INFO: Mon Apr 18 17:25:46 2016
INFO: Done.
NOTE: You must provide a valid email to identify yourself to NCBI for troubleshooting.
The number of attempted retries for each download, and the size of a batch download can be modified. By default, the script will attempt 20 download retries, and obtain sequences in batches of 10,000.
This module calculates Average Nucleotide Identity (ANI) according to one of a number of alternative methods described in, e.g.
- Richter M, Rossello-Mora R (2009) Shifting the genomic gold standard for the prokaryotic species definition. Proc Natl Acad Sci USA 106: 19126-19131. doi:10.1073/pnas.0906412106. (ANI1020, ANIm, ANIb)
- Goris J, Konstantinidis KT, Klappenbach JA, Coenye T, Vandamme P, et al. (2007) DNA-DNA hybridization values and their relationship to whole-genome sequence similarities. Int J Syst Evol Micr 57: 81-91. doi:10.1099/ijs.0.64483-0.
ANI is proposed to be the appropriate in silico substitute for DNA-DNA hybridisation (DDH), and so useful for delineating species boundaries. A typical percentage threshold for species boundary in the literature is 95% ANI (e.g. Richter et al. 2009).
All ANI methods follow the basic algorithm:
- Align the genome of organism 1 against that of organism 2, and identify the matching regions.
- Calculate the percentage nucleotide identity of the matching regions, as an average for all matching regions.
Methods differ on: (1) what alignment algorithm is used, and the choice of parameters (this affects the aligned region boundaries); (2) what the input is for alignment (typically either fragments of fixed size, or the most complete assembly available).
- ANIm: uses MUMmer (NUCmer) to align the input sequences
- ANIb: uses BLASTN+ to align 1020nt fragments of the input sequences
- ANIblastall: uses legacy BLASTN to align 10al20nt fragments of the input sequences
- TETRA: calculates tetranucleotide frequencies of each input sequence
The algorithms take as input correctly-formatted FASTA multiple sequence files. All sequences for a single organism should be contained in only one sequence file. Although it is possible to provide new labels for each input genome for rendering graphical output, the names of these files are used for identification so it is best to name them sensibly.
Output is written to a named directory. The output files differ depending on the chosen ANI method.
- ANIm: MUMmer/NUCmer
.delta
files, describing each pairwise sequence alignment. Output as tab-separated plain text format tables describing: alignment coverage; total alignment lengths; similarity errors; and percentage identity (ANIm). - ANIb and ANIblastall: FASTA sequences describing 1020nt fragments of each input sequence; BLAST nucleotide databases - one for each set of fragments; and BLASTN output files (tab-separated tabular format plain text) - one for each pairwise comparison of input sequences. Output as tab-separated plain text tables describing: alignment coverage; total alignment lengths; similarity errors; and percentage identity (ANIb or ANIblastall).
- TETRA: Tab-separated plain text files describing the Pearson correlations between Z-score distributions for each tetranucleotide in each input sequence (TETRA).
If graphical output is chosen, the output directory will also contain PDF, PNG and EPS files representing the various output measures as a heatmap with row and column dendrograms. Other output formats (e.g. SVG) can be specified with the --gformat
argument.
Unless otherwise indicated, all code is subject to the following agreement:
(c) The James Hutton Institute 2014-2019
(c) The University of Strathclyde 2019-present
Author: Leighton Pritchard
Contact: [email protected]
Address:
Leighton Pritchard,
Strathclyde Institute of Pharmacy and Biomedical Sciences
161 Cathedral Street
Glasgow
G4 0RE,
Scotland,
UK
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