Newer
Older
# phap - Phage Host Analysis Pipeline
A snakemake workflow that wraps various phage-host prediction tools.
[](https://snakemake.readthedocs.io)
* Uses
[Singularity](https://sylabs.io/) containers for execution of all tools.
When possible (i.e. the image is not larger than a few `G`s),
tools **and** their dependencies are bundled in the same container. This means
you do not need have to get models or any other external databases.
* Calculates Last Common Ancestor of all tools per contig.
|Tool (source) | Publication/Preprint | Comments |
|:------|:------|:------:|
[HTP](https://github.com/wojciech-galan/viruses_classifier)|[Gałan W. et al., 2019](https://www.nature.com/articles/s41598-019-39847-2)|ok
[RaFAh](https://sourceforge.net/projects/rafah/)|[Coutinho F. H. et al., 2020](https://www.biorxiv.org/content/10.1101/2020.09.25.313155v1?rss=1)|ok
[vHuLK](https://github.com/LaboratorioBioinformatica/vHULK)|[Amgarten D. et al., 2020](https://www.biorxiv.org/content/10.1101/2020.12.06.413476v1)|needs fixing
[VirHostMatcher-Net](https://github.com/WeiliWw/VirHostMatcher-Net)|[Wang W. et al., 2020](https://doi.org/10.1093/nargab/lqaa044)|ok
[WIsH](https://github.com/soedinglab/WIsH)|[Galiez G. et al., 2017](https://academic.oup.com/bioinformatics/article/33/19/3113/3964377)|ok
### Dependencies
To run the workflow your will need
- `snakemake > 5.x` (developed with `5.30.1`)
- `singularity >= 3.6` (developed with `3.6.3`)
The following python packages are also required to be installed and available
in the execution environment
> The `ete3.NCBITaxa` class is used to get taxonomy information and calculate
> the LCA of all predictions, when possible. This requires a `taxa.sqlite`
> to be available either in its default location
> ( `~/.ete3toolkit/taxa.sqlite` ) or provided in the config. See more on
> http://etetoolkit.org/docs/latest/tutorial/tutorial_ncbitaxonomy.html
### Conda environment
It is recommended to use a
[conda environment](https://docs.conda.io/projects/conda/en/latest/).
The file `environment.txt` can be used to recreate the complete environment
used during development.
> The provided `environment.txt` contains an explicit list of all packages,
> produced with
>
> `conda list -n phap --explicit > environment.txt`
>
> This ensures all packages are exactly the same versions/builds, so we
> minimize the risk of running into dependencies issues
To get a working environment
```
$ git clone https://git.science.uu.nl/papanikos/phap.git
$ cd phap
# Note the long notation --file flag; -f will not work.
# Activate it - use the name you gave above, if it is different
5.30.1
```
## Configuration
### Input data
The tools wrapped in this workflow expect phage sequences as input.
You should try to make sure that the input sequences you want to analyze
correspond to phage genomes/contigs (or at least viruses).
You can probably input any valid fasta file but the
[GIGO concept](https://en.wikipedia.org/wiki/Garbage_in,_garbage_out)
is probably applicable.
A separate workflow to identify phage/viral genomes/contigs is
[What the Phage](https://github.com/replikation/What_the_Phage).
The current workflow can handle multiple samples.
For each sample, **all viral contigs to be analyzed should be provided as a
single multifasta** (can be `gz`ipped).
A mapping between sample ids and their corresponding fasta file is provided as
a samplesheet (see below).
### Size filtering
All sequences smaller than 5000bp are filtered out.
This is a hard requirement, mainly imposed by vHULK, and currently I
don't handle differential input.
You must define a samplesheet with two tab (`\t`) separated columns. The
header line must contain two fields, `sample fasta`.
Values from the `sample` column must be unique and
are used as sample identifiers. Their corresponding `fasta` values must be
valid paths to (multi)fasta files with the phage sequences for that sample.
$ cat samples.tsv
sample fasta
s01 /path/to/s01.fna
s02 /path/to/another.fna.gz
> There is no need to follow any convention for the fasta file name to
> reflect the sample id. The values in the sample column are the ones to worry
> about, as these are the ones used as wildcards within the Snakefile.
You can
- Fill in the location of the samplesheet within the `config/config.yaml`.
- Drop the file in the workdir - **Attention**: It should be named `samples.tsv`
- Use `snakemake`'s `--config samplesheet=/path/to/my_samples.tsv` when
For these tools there is no need to pre-download and setup anything - all
data and software dependencies required for running them are bundled within
* VirHostMatcher-Net, WIsH
Databases and models need to be downloaded from the VirHostMatcher data repo
([see here](https://github.com/WeiliWw/VirHostMatcher-Net#downloading)).
WIsH models for the 62,493 host genomes used in their paper are also provided
and are used here for WIsH predictions.
### Singularity containers
Definition files, along with documentation of how to use them to build
the containers are in [resources/singularity](./resources/singularity).
The pre-built containers are all available through the
[standard singularity library](https://cloud.sylabs.io/library/papanikos_182).
A dry-run (_always a good idea before each execution_)
```
(phap)$ snakemake -n --use-singluarity
--singularity-args "-B /path/to/databases/data:/data"
```
Basic:
```
# From within this directory
# Make sure you have defined a samplesheet
(phap)$ snakemake -p --use-singularity -j16 \
--singularity-args "-B /path/to/databases/data:/data"
where `/path/to/database/data` is the directory containing tables,
WIsH models and CRISPR blasts databases.
* The `-j` flag controls the number of jobs (cores) to be run in parallel.
Change this according yo your setup
* The `-p` flag prints commands that are scheduled for executing. You can
* remove this
* Binding the data dir with the `--signularity-args` is required (at least
in my tests). You **must also** provide it as a value in the config.yaml.
## Output
All output is stored under a `results` directory within the main workdir.
Results are stored per sample according to the sample ids you provided in the
sample sheet.
For each sample, results for each tool are stored in directories named after
the tool. An example looks like this:
```
├── htp
│ ├── predictions.tsv
│ └── raw.txt
├── rafah
│ ├── A_CDS.faa
│ ├── A_CDS.fna
│ ├── A_CDS.gff
│ ├── A_CDSxMMSeqs_Clusters
│ ├── A_Genomes.fasta
│ ├── A_Genome_to_Domain_Score_Min_Score_50-Max_evalue_1e-05.tsv
│ ├── A_Ranger_Model_3_Predictions.tsv
│ ├── A_Seq_Info.tsv
│ └── predictions.tsv
├── tmp
│ ├── genomes
│ └── reflist.txt
├── vhmnet
│ ├── feature_values
│ ├── predictions
│ ├── predictions.tsv
│ └── tmp
├── vhulk
│ ├── predictions.tsv
│ └── results
└── wish
├── llikelihood.matrix
each tool along with its confidence/p-value/whatever-single-value each tool
uses to evaluate its confidence in the prediction.
contig htp_proba vhulk_pred vhulk_score rafah_pred rafah_score vhmnet_pred vhmnet_score wish_pred wish_score
NC_005964.2 0.8464285626352002 None 4.068828 Mycoplasma 0.461 Mycoplasma fermentans 0.9953 Bacteria;Tenericutes;Mollicutes;Mycoplasmatales;Mycoplasmataceae;Mycoplasma;Mycoplasma fermentans;Mycoplasma fermentans MF-I2 -1.2085700000000001
NC_015271.1 0.995161392517451 Escherichia_coli 1.0301523 Salmonella 0.495 Muricauda pacifica 0.9968 Bacteria;Proteobacteria;Gammaproteobacteria;Enterobacterales;Enterobacteriaceae;Raoultella;Raoultella sp. NCTC 9187;Raoultella sp. NCTC 9187 -1.3869200000000002
NC_023719.1 0.9999957241187084 Bacillus 0.0012575098 Bacillus 0.55 Clostridium sp. LS 1.0000 Bacteria;Firmicutes;Clostridia;Clostridiales;Clostridiaceae;Clostridium;Clostridium beijerinckii;Clostridium beijerinckii -1.29454
An example for the genomes above:
```
contig name rank lca
NC_005964.2 Mycoplasma genus 2093
NC_015271.1 Enterobacteriaceae family 543
NC_023719.1 Firmicutes phylum 1239
* Directory `genomes`: Contains one fasta file per input genome
* File `reflist.txt`: An intermediate file that holds paths to all produced
genome fastas (used as intermediate file to ensure smooth execution)
* File `filtered.fa.gz`: Fasta files containing sequences > 5000 bp.
* File `raw.txt`: The raw output of `htp` per contig
* File `predictions.tsv`: **Two**-column separated tsv with contig id and
probability of host being a phage.
* Files prefixed with `<sample_id>_` are the rafah's raw output
* `predictions.tsv`: A selection of the 1st (`Contig`) , 6th
(`Predicted_Host`) and 7th (`Predicted_Host_Score`) columns from file
`<sample_id>_Seq_Info.tsv`
* File `results.csv`: Copy of the `results/sample/tmp/genomes/results/results.csv`
* File `predictions.tsv`: A selection of the 1st (`BIN/genome`), 10th (`final_prediction`)
* Directories `feature_values` and `predictions` are the raw output
* Directory `tmp` is a temporary dir written by `VirHostMatcher-Net` for
doing its magic.
* File `predictions.tsv` contains contig, host taxonomy and scores.
* Files `llikelihood.matrix` and `prediction.list` are the raw output
* File `predictions.tsv` has contig, host taxonomy and **llikelihood** scores.
Logs capturing stdout and stderr during execution of each rule can be found in