See the documentation ยป
Report Bug ยท Request Feature
Bacannot is an easy to use nextflow docker-based pipeline that adopts state-of-the-art software for prokaryotic genome annotation. It is a wrapper around several tools that enables a better understanding of prokaryotic genomes.
Its main steps are:
Analysis steps | Used software or databases |
---|---|
Genome assembly (if raw reads are given) | Flye and Unicycler |
Identification of closest 10 NCBI Refseq genomes | RefSeq Masher |
Generic annotation and gene prediction | Prokka or Bakta |
rRNA prediction | barrnap |
Classification within multi-locus sequence types (STs) | mlst |
KEGG KO annotation and visualization | KofamScan and KEGGDecoder |
Annotation of secondary metabolites | antiSMASH |
Methylation annotation | Nanopolish |
Annotation of antimicrobial (AMR) genes | AMRFinderPlus, ARGminer, Resfinder and RGI |
Annotation of virulence genes | Victors and VFDB |
Prophage sequences and genes annotation | PHASTER, Phigaro and PhySpy |
Annotation of integrative and conjugative elements | ICEberg |
Focused detection of insertion sequences | digIS |
In silico detection of plasmids | Plasmidfinder and Platon |
Prediction and visualization of genomic islands | IslandPath-DIMOB and gff-toolbox |
Custom annotation from formatted FASTA or NCBI protein IDs | BLAST |
Merge of annotation results | bedtools |
Genome Browser renderization | JBrowse |
Circos plot generation | easy_circos |
Renderization of automatic reports and shiny app for results interrogation | R Markdown, Shiny and SequenceServer |
๐ฏ In order to increase the accuracy of prokka annotation, this pipeline includes an additional HMM database to prokka's defaults. It can be either TIGRFAM (smaller but curated) or PGAP (bigger comprehensive NCBI database that contains TIGRFAM).
Are you curious about changes between releases? See the changelog.
- I strongly, vividly, mightily recommend the usage of the latest versions hosted in master branch, which is nextflow's default.
- The latest will always have support, bug fixes and generally maitain the same processes (I mainly add things instead of removing) that also were in previous versions.
- But, if you really want to execute an earlier release, please see the instructions for that.
- Versions below 2.0 are no longer supported.
Moreover, this pipeline has two complementary pipelines (also written in nextflow) for NGS preprocessing and Genome assembly that can give the user a more thorough and robust workflow for bacterial genomics analyses.
- Unix-like operating system (Linux, macOS, etc)
- Windows users maybe can execute it using the linux subsystem for windows as shown in:
- Java 8
- Nextflow
- Docker
These images have been kept separate to not create massive Docker image and to avoid dependencies conflicts.
-
If you don't have it already install Docker in your computer.
- After installed, you need to download the required Docker images
docker pull fmalmeida/bacannot:v3.2_misc ; docker pull fmalmeida/bacannot:v3.2_perlenv ; docker pull fmalmeida/bacannot:v3.2_pyenv ; docker pull fmalmeida/bacannot:v3.2_renv ; docker pull fmalmeida/bacannot:jbrowse ;
๐ฅ Nextflow can also automatically handle images download on the fly when executed. If docker has exceeded its download limit rates, please try again in a few hours.
-
Install Nextflow (version 20.10 or higher):
curl -s https://get.nextflow.io | bash
-
Give it a try:
nextflow run fmalmeida/bacannot -profile docker --help
๐ฅ To run the pipeline now users need to pass the -profile docker
or -profile singularity
parameter explicitely. The pipeline does not load it automatically anymore.
๐ฅ Users can get let the pipeline always updated with: nextflow pull fmalmeida/bacannot
Bacannot databases are not inside the docker images anymore to avoid huge images and problems with conexions and limit rates with dockerhub.
To get a copy of required bacannot databases users must:
# Download pipeline databases
nextflow run fmalmeida/bacannot --get_dbs --output bacannot_dbs -profile <docker/singularity>
This will produce a directory like this:
bacannot_dbs
โโโ amrfinder_db
โโโ antismash_db
โโโ argminer_db
โโโ card_db
โโโ iceberg_db
โโโ kofamscan_db
โโโ mlst_db
โโโ phast_db
โโโ phigaro_db
โโโ pipeline_info
โโโ plasmidfinder_db
โโโ platon_db
โโโ prokka_db
โโโ resfinder_db
โโโ vfdb_db
โโโ victors_db
To update databases you can either download a new one to a new directory. Remove the database you want to get a new one from the root bacannot dir and use the same command above to save in the same directory (the pipeline will only try to download missing databases). Or, you can use the parameter --force_update
to download everything again.
Please refer to the quickstart page ยป
A nice overview of the output directory structure and the main tools/features produced by the pipeline is provided at https://bacannot.readthedocs.io/en/latest/outputs.
Users are advised to read the complete documentation ยป
- Complete command line explanation of parameters:
nextflow run fmalmeida/bacannot --help
Command line executions are exemplified in the manual.
All the parameters showed above can be, and are advised to be, set through the configuration file. When a configuration file is set the pipeline is run by simply executing nextflow run fmalmeida/bacannot -c ./configuration-file
Your configuration file is what will tell to the pipeline the type of data you have, and which processes to execute. Therefore, it needs to be correctly set up.
Create a configuration file in your working directory:
nextflow run fmalmeida/bacannot --get_config
Nextflow has an awesome feature called NF tower. It allows that users quickly customise and set-up the execution and configuration of cloud enviroments to execute any nextflow pipeline from nf-core, github (this one included), bitbucket, etc. By having a compliant JSON schema for pipeline configuration it means that the configuration of parameters in NF tower will be easier because the system will render an input form.
Checkout more about this feature at: https://seqera.io/blog/orgs-and-launchpad/
Users can trigger a graphical and interactive pipeline configuration and execution by using nf-core launch utility. nf-core launch will start an interactive form in your web browser or command line so you can configure the pipeline step by step and start the execution of the pipeline in the end.
# Install nf-core
pip install nf-core
# Launch the pipeline
nf-core launch fmalmeida/bacannot
It will result in the following:
- Sometimes when navigating through the shiny parser the reports and JBrowse tabs may still be pointing to old, or just different, samples that have been analysed before and not the actual sample in question. For example, you open the shiny server for the Sample 2, but the reports and JBrowse are showing results of Sample 1. This is caused by the browser's data storages and cookies.
- To solve this problem user's can just clear the cookies and data cache from the browser.
- The JBrowse wrapper in the shiny server is not capable of displaying the GC content and methylation plots when available. It can only display the simpler tracks. If the user wants to visualise and interrogate the GC or methylation tracks it must open the JBrowse outside from the shiny server. For that, two options are available:
- You can navigate to the
jbrowse
directory under your sample's output folder and simply executehttp-server
. This command can be found at: https://www.npmjs.com/package/http-server - Or, you can download the JBrowse Desktop app and, from inside the app, select the folder
jbrowse/data
that is available in your sample's output directory.
- You can navigate to the
- If you face some weird error using v3.1, please, before opening a flag, try updating your docker image, we had some inconsistencies lately and this may be the source of the issue.
To cite this tool please refer to our Zenodo tag.
This pipeline uses code and infrastructure developed and maintained by the nf-core community, reused here under the GPLv3.
The nf-core framework for community-curated bioinformatics pipelines.
Philip Ewels, Alexander Peltzer, Sven Fillinger, Harshil Patel, Johannes Alneberg, Andreas Wilm, Maxime Ulysse Garcia, Paolo Di Tommaso & Sven Nahnsen.
Nat Biotechnol. 2020 Feb 13. doi: 10.1038/s41587-020-0439-x.
In addition, users are encouraged to cite the programs used in this pipeline whenever they are used. Links to resources of tools and data used in this pipeline are in the list of tools.