Platon: Plasmid contig classification and characterization
Project description
Platon: Plasmid contig classification and characterization for short read draft assemblies.
Contents
Description
Platon classifies contigs from bacterial WGS short read assemblies as plasmid or chromosome contigs. Therefore, Platon computes mean protein scores (MPS) based on pre-computed protein distribution statistics and tests them against specific thresholds. Contigs which MPS does not reach the thresholds are comprehensively characterized and finally classified following an heuristic approach.
Platon conducts three analysis steps. First, it predicts open reading frames and searches the coding sequences against a custom and pre-computed database comprising marker protein sequences and probability scores. These scores express the empirical probability on which kind of replicon a certain protein was found based on complete NCBI RefSeq genomes and plasmids. Platon then calculates the MPS for each contig and either classifies them as chromosome if the MPS is below a sensitivity cutoff (95% sensitivity) or as plasmid if the MPS is above a specificity cutoff (99.99% specificity). These thresholds have been calculated by Monte Carlo simulations of artifical contigs created from complete RefSeq chromosome and plasmid sequences. In a second step contigs passing the sensitivity filter get comprehensivley characterized. Hereby, Platon tries to circularize the contig sequences, searches for rRNA, replication, mobilization and conjugation genes as well as incompatibility group DNA probes and finally performs a BLAST search against the NCBI plasmid database. In a third step, Platon finally classifies all remaining contigs based on an heuristic approach, i.e. a decision tree of simple rules exploiting all information at hand.
Input/Output
Input
Platon accepts draft assemblies in fasta format. If contigs have been assembled with SPAdes, Platon is able to extract the coverage information from the contig names.
Output
For each contig classified as plasmid sequence the following columns are printed
to STDOUT
as tab separated values:
- Contig ID
- Length
- Coverage
- # ORFs
- Protein Score
- Circularity
- Incompatibility Type(s)
- # Replication Genes
- # Mobilization Genes
- # Conjugation Genes
- # rRNA Genes
- # Plasmid Database Hits
In addition, Platon writes the following files into the output directory:
<prefix>
.plasmid.fasta: contigs classified as plasmids or plasmodal origin<prefix>
.chromosome.fasta: contigs classified as chromosomal origin<prefix>
.tsv: dense information as printed to STDOUT (see above)<prefix>
.json: comprehensive results and information on each single plasmid contig. All files are prefixed (<prefix>
) as the input genome fasta file.
Installation
Platon can be installed/used in 2 different ways.
In all cases, the custom database must be downloaded which we provide for download: https://s3.computational.bio.uni-giessen.de/swift/v1/platon/db.tar.gz
GitHub
- clone the the repository
- download & extract the database
Example:
$ git clone git@github.com:oschwengers/platon.git
$ wget https://s3.computational.bio.uni-giessen.de/swift/v1/platon/db.tar.gz
$ tar -xzf db.tar.gz
$ rm db.tar.gz
$ platon/bin/platon --db ./db genome.fasta
Info: Just move the extracted database directory into the platon directory. PLATON will automatically recognise it and thus, the database path doesn't need to be specified:
$ git clone git@github.com:oschwengers/platon.git
$ wget https://s3.computational.bio.uni-giessen.de/swift/v1/platon/db.tar.gz
$ tar -xzf db.tar.gz
$ rm db.tar.gz
$ mv db $PLATON_HOME
$ platon/bin/platon genome.fasta
Pip
- install PLATON per pip
- download and extract the database
- install 3rd party binaries
Pip/Platon (1./2.):
$ pip3 install cb-platon
$ wget https://s3.computational.bio.uni-giessen.de/swift/v1/platon/db.tar.gz
$ tar -xzf db.tar.gz
$ rm db.tar.gz
$ platon --db ./db genome.fasta
3rd party dependencies on Ubuntu (3.):
$ sudo apt install ncbi-blast+ prodigal infernal hmmer mummer
$ wget http://www.bi.cs.titech.ac.jp/ghostz/releases/ghostz-1.0.2.tar.gz
$ tar -xzf ghostz-1.0.2.tar.gz
$ cd ghostz-1.0.2/
$ make
$ sudo cp ghostz /usr/bin/
If there are any issues compiling ghostz, please make sure you have everything
correctly setup, e.g. $ sudo apt install build-essential
.
Usage
Usage:
usage: platon [-h] [--threads THREADS] [--verbose] [--output OUTPUT]
[--version]
<genome>
Plasmid contig classification and characterization
positional arguments:
<genome> draft genome in fasta format
optional arguments:
-h, --help show this help message and exit
--threads THREADS, -t THREADS
number of threads to use (default = number of
available CPUs)
--verbose, -v print verbose information
--output OUTPUT, -o OUTPUT
output directory (default = current working directory)
--version show program's version number and exit
Examples
Simple:
$ platon genome.fasta
Expert: writing results to results
directory with verbose output using 8 threads:
$ platon -db ~/db --output results/ --verbose --threads 8 genome.fasta
Database
Platon depends on a custom database based on NCBI RefSeq nonredundant proteins (NRP), PCLA clusters, RefSeq Plasmid database, PlasmidFinder db as well as custom HMM models. These databases (RefSeq release 90) can be downloaded here: (zipped 1.8 Gb, unzipped 2.5 Gb) https://s3.computational.bio.uni-giessen.de/swift/v1/platon/db.tar.gz
Dependencies
Platon was developed and tested on Python 3.5. It depends on BioPython (>=1.71).
Additionally, it depends on the following 3rd party executables:
- Prodigal (2.6.3) https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2848648 https://github.com/hyattpd/Prodigal
- Ghostz (1.0.2) https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4393512 http://www.bi.cs.titech.ac.jp/ghostz
- Blast+ (2.7.1) https://www.ncbi.nlm.nih.gov/pubmed/2231712 https://blast.ncbi.nlm.nih.gov
- MUMmer (4.0.0-beta2) https://www.ncbi.nlm.nih.gov/pmc/articles/PMC395750/ https://github.com/gmarcais/mummer
- INFERNAL (1.1.2) https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3810854 http://eddylab.org/infernal
Citation
A manuscript is in preparation... stay tuned! To temporarily cite our work, please transitionally refer to:
Schwengers O., Barth P., Falgenhauer L., Chakraborty T., Goesmann A. (2019) PLATON: Plasmid contig classification and characterization for short read draft assemblies. GitHub https://github.com/oschwengers/platon
As PLATON takes advantage of PlasmidFinder's incompatibility database, please also cite:
Carattoli A., Zankari E., Garcia-Fernandez A., Voldby Larsen M., Lund O., Villa L., Aarestrup F.M., Hasman H. (2014) PlasmidFinder and pMLST: in silico detection and typing of plasmids. Antimicrobial Agents and Chemotherapy, https://doi.org/10.1128/AAC.02412-14
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