This document describes the output produced by the pipeline. Most of the plots are taken from the MultiQC report, which summarises results at the end of the pipeline.
The directories listed below will be created in the results directory after the pipeline has finished. All paths are relative to the top-level results directory.
## Pipeline overview
The pipeline is built using [Nextflow](https://www.nextflow.io/) and processes data using the following steps:
- [Analysis Ready Reads](#analysis-read-reads) - Optional results directory containing the final processed reads used as input for classification/profiling.
- [Centrifuge](#centrifuge) - Taxonomic classifier that uses a novel indexing scheme based on the Burrows-Wheeler transform (BWT) and the Ferragina-Manzini (FM) index.
- [Kaiju](#kaiju) - Taxonomic classifier that finds maximum (in-)exact matches on the protein-level.
- [Diamond](#diamond) - Sequence aligner for protein and translated DNA searches.
- [MALT](#malt) - Sequence alignment and analysis tool designed for processing high-throughput sequencing data, especially in the context of metagenomics
- [TAXPASTA](#taxpasta) - Tool to standardise taxonomic profiles as well as merge profiles across samples from the same database and classifier/profiler.
[FastQC](http://www.bioinformatics.babraham.ac.uk/projects/fastqc/) gives general quality metrics about your sequenced reads. It provides information about the quality score distribution across your reads, per base sequence content (%A/T/G/C), adapter contamination and overrepresented sequences. For further reading and documentation see the [FastQC help pages](http://www.bioinformatics.babraham.ac.uk/projects/fastqc/Help/).
If preprocessing is turned on, nf-core/taxprofiler runs FastQC/Falco twice -once before and once after adapter removal/read merging, to allow evaluation of the performance of these preprocessing steps. Note in the General Stats table, the columns of these two instances of FastQC/Falco are placed next to each other to make it easier to evaluate. However, the columns of the actual preprocessing steps (i.e, fastp, AdapterRemoval, and Porechop) will be displayed _after_ the two FastQC/Falco columns, even if they were run 'between' the two FastQC/Falco jobs in the pipeline itself.
[fastp](https://github.com/OpenGene/fastp) is a FASTQ pre-processing tool for quality control, trimmming of adapters, quality filtering and other features.
It is used in nf-core/taxprofiler for adapter trimming of short-reads.
By default nf-core/taxprofiler will only provide the `<sample_id>.fastp.fastq.gz` file if fastp is selected. The file `<sample_id>.merged.fastq.gz` will be available in the output folder if you provide the argument ` --shortread_qc_mergepairs` (optionally retaining un-merged pairs when in combination with `--shortread_qc_includeunmerged`).
[AdapterRemoval](https://adapterremoval.readthedocs.io/en/stable/) searches for and removes remnant adapter sequences from High-Throughput Sequencing (HTS) data and (optionally) trims low quality bases from the 3' end of reads following adapter removal. It is popular in the field of palaeogenomics. The output logs are stored in the results folder, and as a part of the MultiQC report.
-`<sample_id>.collapsed.fastq.gz` - read-pairs that merged and did not undergo trimming (only when `--shortread_qc_mergepairs` supplied)
-`<sample_id>.collapsed.truncated.fastq.gz` - read-pairs that merged underwent quality trimming (only when `--shortread_qc_mergepairs` supplied)
-`<sample_id>.pair1.truncated.fastq.gz` - read 1 of pairs that underwent quality trimming
-`<sample_id>.pair2.truncated.fastq.gz` - read 2 of pairs that underwent quality trimming (and could not merge if `--shortread_qc_mergepairs` supplied)
You will only find the `.fastq` files in the results directory if you provide ` --save_preprocessed_reads`. If this is selected, you may receive different combinations of `.fastq` files for each sample depending on the input types - e.g. whether you have merged or not, or if you're supplying both single- and paired-end reads. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
> ⚠️ The resulting `.fastq` files may _not_ always be the 'final' reads that go into taxprofiling, if you also run other steps such as complexity filtering, host removal, run merging etc..
[Porechop](https://github.com/rrwick/Porechop) is a tool for finding and removing adapters from Oxford Nanopore reads. Adapters on the ends of reads are trimmed and if a read has an adapter in its middle, it is considered a chimeric and it chopped into separate reads.
You will only find the `.fastq` files in the results directory if you provide ` --save_preprocessed_reads`. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
[BBDuk](https://jgi.doe.gov/data-and-tools/software-tools/bbtools/bb-tools-user-guide/bbduk-guide/) stands for Decontamination Using Kmers. BBDuk was developed to combine most common data-quality-related trimming, filtering, and masking operations into a single high-performance tool.
It is used in nf-core/taxprofiler for complexity filtering using different algorithms. This means that it will remove reads with low sequence diversity (e.g. mono- or dinucleotide repeats).
By default nf-core/taxprofiler will only provide the `.log` file if BBDuk is selected as the complexity filtering tool. You will only find the complexity filtered reads in your results directory if you provide ` --save_complexityfiltered_reads`. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
> ⚠️ The resulting `.fastq` files may _not_ always be the 'final' reads that go into taxprofiling, if you also run other steps such as host removal, run merging etc..
[PRINSEQ++](https://github.com/Adrian-Cantu/PRINSEQ-plus-plus) is a C++ implementation of the [prinseq-lite.pl](https://prinseq.sourceforge.net/) program. It can be used to filter, reformat or trim genomic and metagenomic sequence data.
It is used in nf-core/taxprofiler for complexity filtering using different algorithms. This means that it will remove reads with low sequence diversity (e.g. mono- or dinucleotide repeats).
By default nf-core/taxprofiler will only provide the `.log` file if PRINSEQ++ is selected as the complexity filtering tool. You will only find the complexity filtered `.fastq` files in your results directory if you supply ` --save_complexityfiltered_reads`. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
> ⚠️ The resulting `.fastq` files may _not_ always be the 'final' reads that go into taxprofiling, if you also run other steps such as host removal, run merging etc..
[Filtlong](https://github.com/rrwick/Filtlong) is a quality filtering tool for long reads. It can take a set of small reads and produce a smaller, better subset.
You will only find the `.fastq` files in the results directory if you provide ` --save_preprocessed_reads`. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
[Bowtie 2](https://bowtie-bio.sourceforge.net/bowtie2/index.shtml) is an ultrafast and memory-efficient tool for aligning sequencing reads to long reference sequences. It is particularly good at aligning reads of about 50 up to 100s or 1,000s of characters, and particularly good at aligning to relatively long (e.g. mammalian) genomes.
It is used with nf-core/taxprofiler to allow removal of 'host' (e.g. human) and/or other possible contaminant reads (e.g. Phi X) from short-read `.fastq` files prior to profiling.
By default nf-core/taxprofiler will only provide the `.log` file if host removal is turned on. You will only have a `.bam` file if you specify `--save_hostremoval_bam`. This will contain _both_ mapped and unmapped reads. You will only get FASTQ files if you specify to save `--save_hostremoval_unmapped` - these contain only unmapped reads. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
> ⚠️ The resulting `.fastq` files may _not_ always be the 'final' reads that go into taxprofiling, if you also run other steps such as run merging etc..
> ℹ️ While there is a dedicated section in the MultiQC HTML for Bowtie2, these values are not displayed by default in the General Stats table. Rather, alignment statistics to host genome is reported via samtools stats module in MultiQC report for direct comparison with minimap2 (see below).
It is used with nf-core/taxprofiler to allow removal of 'host' (e.g. human) or other possible contaminant reads from long-read `.fastq` files prior to taxonomic classification/profiling.
By default, nf-core/taxprofiler will only provide the `.bam` file containing mapped and unmapped reads if saving of host removal for long reads is turned on via `--save_hostremoval_bam`.
> ℹ️ minimap2 is not yet supported as a module in MultiQC and therefore there is no dedicated section in the MultiQC HTML. Rather, alignment statistics to host genome is reported via samtools stats module in MultiQC report.
This directory will be present and contain the unmapped reads from the `.fastq` format from long-read minimap2 host removal, if `--save_hostremoval_unmapped` is supplied. Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
The results directory will contain the 'final' processed reads used as input for classification/profiling. It will _only_ include the output of the _last_ step of any combinations of preprocessing steps that may have been specified in the run configuration. For example, if you perform the read QC and host-removal preprocessing steps, the final reads that are sent to classification/profiling are the host-removed FASTQ files - those will be the ones present in this directory.
> ⚠️ If you turn off all preprocessing steps, then no results will be present in this directory. This happens independently for short- and long-reads. I.e. you will only have FASTQ files for short reads in this directory if you skip all long-read preprocessing.
[SAMtools stats](http://www.htslib.org/doc/samtools-stats.html) collects statistics from a `.sam`, `.bam`, or `.cram` alignment file and outputs in a text format.
nf-core/taxprofiler offers the option to merge FASTQ files of multiple sequencing runs or libraries that derive from the same sample, as specified in the input samplesheet.
This is the last possible preprocessing step, so if you have multiple runs or libraries (and run merging turned on), this will represent the final reads that will go into classification/profiling steps.
-`*.fastq.gz`: Concatenated FASTQ files on a per-sample basis
</details>
Note that you will only find samples that went through the run merging step in this directory. For samples that had a single run or library will not go through this step of the pipeline and thus will not be present in this directory.
This directory and its FASTQ files will only be present if you supply `--save_runmerged_reads`.Alternatively, if you wish only to have the 'final' reads that go into classification/profiling (i.e., that may have additional processing), do not specify this flag but rather specify `--save_analysis_ready_reads`, in which case the reads will be in the folder `analysis_ready_reads`.
[Bracken](https://ccb.jhu.edu/software/bracken/) (Bayesian Reestimation of Abundance with Kraken) is a highly accurate statistical method that computes the abundance of species in DNA sequences from a metagenomics sample. Braken uses the taxonomy labels assigned by Kraken, a highly accurate metagenomics classification algorithm, to estimate the number of reads originating from each species present in a sample.
> 🛈 The first step of using Bracken requires running Kraken2, therefore the initial results before abundance estimation will be found in `<your_results>/kraken2/<your_bracken_db_name>`.
The main taxonomic profiling file from Bracken is the `*.tsv` file. This provides the basic results from Kraken2 but with the corrected abundance information.
[Kraken](https://ccb.jhu.edu/software/kraken2/) is a taxonomic sequence classifier that assigns taxonomic labels to DNA sequences. Kraken examines the k-mers within a query sequence and uses the information within those k-mers to query a database. That database maps -mers to the lowest common ancestor (LCA) of all genomes known to contain a given k-mer.
-`<sample_id>_<db_name>.classified.fastq.gz`: FASTQ file containing all reads that had a hit against a reference in the database for a given sample
-`<sample_id>_<db_name>.unclassified.fastq.gz`: FASTQ file containing all reads that did not have a hit in the database for a given sample
-`<sample_id>_<db_name>.report.txt`: A Kraken2 report that summarises the fraction abundance, taxonomic ID, number of Kmers, taxonomic path of all the hits in the Kraken2 run for a given sample
-`<sample_id>_<db_name>.classifiedreads.txt`: A list of read IDs and the hits each read had against each database for a given sample
The main taxonomic classification file from Kraken2 is the `_combined_reports.txt` or `*report.txt` file. The former provides you the broadest over view of the taxonomic classification results across all samples against a single databse, where you get two columns for each sample e.g. `2_all` and `2_lvl`, as well as a summarised column summing up across all samples `tot_all` and `tot_lvl`. The latter gives you the most information for a single sample. The report file is also used for the taxpasta step.
You will only receive the `.fastq` and `*classifiedreads.txt` file if you supply `--kraken2_save_reads` and/or `--kraken2_save_readclassification` parameters to the pipeline.
[KrakenUniq](https://github.com/fbreitwieser/krakenuniq) (formerly KrakenHLL) is an extenson to the fast k-mer-based classification [Kraken](https://github.com/DerrickWood/kraken) with an efficient algorithm for additionally assessing the coverage of unique k-mers found in each species in a dataset.
-`<sample_id>_<db_name>.classified.fastq.gz`: FASTQ file containing all reads that had a hit against a reference in the database for a given sample
-`<sample_id>_<db_name>.unclassified.fastq.gz`: FASTQ file containing all reads that did not have a hit in the database for a given sample
-`<sample_id>_<db_name>.report.txt`: A Kraken2-style report that summarises the fraction abundance, taxonomic ID, number of Kmers, taxonomic path of all the hits, with an additional column for k-mer coverage, that allows for more accurate distinguishing between false-positive/true-postitive hits
-`<sample_id>_<db_name>.classifiedreads.txt`: A list of read IDs and the hits each read had against each database for a given sample
The main taxonomic classification file from KrakenUniq is the `*report.txt` file. This is an extension of the Kraken2 report with the additional k-mer coverage information that provides more information about the accuracy of hits.
You will only receive the `.fastq` and `*classifiedreads.txt` file if you supply `--krakenuniq_save_reads` and/or `--krakenuniq_save_readclassification` parameters to the pipeline.
> ⚠️ The output system of KrakenUniq can result in other `stdout` or `stderr` logging information being saved in the report file, therefore you must check your report files before downstream use!
[Centrifuge](https://github.com/DaehwanKimLab/centrifuge) is a taxonomic sequence classifier that uses a Burrows-Wheeler transform and Ferragina-Manzina index for storing and mapping sequences.
-`<sample_id>.centrifuge.report.txt`: A classification report that summarises the taxonomic ID, the taxonomic rank, length of genome sequence, number of classified and uniquely classified reads
-`<sample_id>.centrifuge.results.txt`: A file that summarises the classification assignment for a read, i.e read ID, sequence ID, score for the classification, score for the next best classification, number of classifications for this read
-`<sample_id>.centrifuge.txt`: A Kraken2-style report that summarises the fraction abundance, taxonomic ID, number of k-mers, taxonomic path of all the hits in the centrifuge run for a given sample
The main taxonomic classification files from Centrifuge are the `_combined_reports.txt`, `*report.txt`, `*results.txt` and the `*centrifuge.txt`. The latter is used by the taxpasta step. You will receive the `.fastq` files if you supply `--centrifuge_save_reads`.
[Kaiju](https://github.com/bioinformatics-centre/kaiju) is a taxonomic classifier that finds maximum exact matches on the protein-level using the Burrows-Wheeler transform.
-`<sample_id>_<db_name>.kaiju.tsv`: Raw output from Kaiju with taxonomic rank, read ID and taxonic ID
-`<sample_id>_<db_name>.kaijutable.txt`: Summarised Kaiju output with fraction abundance, taxonomic ID, number of reads, and taxonomic names (as generated by `kaiju2table`)
The most useful summary file is the `_combined_reports.txt` file which summarises hits across all reads and samples. Separate per-sample versions summaries can be seen in `<db>/*.txt`. However if you wish to look at more precise information on a per-read basis, see the `*tsv` file. The default taxonomic rank is `species`. You can provide a different one by updating the argument `--kaiju_taxon_rank`.
[DIAMOND](https://github.com/bbuchfink/diamond) is a sequence aligner for translated DNA searches or protein sequences against a protein reference database such as NR. It is a replacement for the NCBI BLAST software tools.It has many key features and it is used as taxonomic classifier in nf-core/taxprofiler.
-`<sample_id>*.{blast,xml,txt,daa,sam,tsv,paf}`: A file containing alignment information in various formats, or taxonomic information in a text-based format. Exact output depends on user choice.
By default you will receive a TSV output. Alternatively, you will receive a `*.sam` file if you provide the parameter `--diamond_save_reads` but in this case no taxonomic classification will be available(!), only the aligned reads in sam format.
> ℹ️ DIAMOND has many output formats, so depending on your [choice](https://github.com/bbuchfink/diamond/wiki/3.-Command-line-options) with ` --diamond_output_format` you will receive the taxonomic information in a different format.
[MALT](https://software-ab.cs.uni-tuebingen.de/download/malt) is a fast replacement for BLASTX, BLASTP and BLASTN, and provides both local and semi-global alignment capabilities.
<detailsmarkdown="1">
<summary>Output files</summary>
-`malt/`
-`<db_name>/`
-`<sample_id>.blastn.sam`: sparse SAM file containing alignments of each hit
-`<sample_id>.megan`: summary file that can be loaded into the [MEGAN6](https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/algorithms-in-bioinformatics/software/megan6/) interactive viewer. Generated by MEGAN6 companion tool `rma2info`
-`<sample_id>.rma6`: binary file containing all alignments and taxonomic information of hits that can be loaded into the [MEGAN6](https://uni-tuebingen.de/fakultaeten/mathematisch-naturwissenschaftliche-fakultaet/fachbereiche/informatik/lehrstuehle/algorithms-in-bioinformatics/software/megan6/) interactive viewer
-`<sample_id>.txt.gz`: text file containing taxonomic IDs and read counts against each taxon. Generated by MEGAN6 companion tool `rma2info`
The main output of MALT is the `.rma6` file format, which can be only loaded into MEGAN and it's related tools. We provide the `rma2info` text files for improved compatibility with spreadsheet programs and other programmtic data manipulation tools, however this has only limited information compared to the 'binary' RMA6 file format (the `.txt` file only contains taxonomic ID and count, whereas RMA6 has taxonomic lineage information).
You will only receive the `.sam` and `.megan` files if you supply `--malt_save_reads` and/or `--malt_generate_megansummary` parameters to the pipeline.
[MetaPhlAn3](https://github.com/biobakery/metaphlan) is a computational tool for profiling the composition of microbial communities (Bacteria, Archaea and Eukaryotes) from metagenomic shotgun sequencing data (i.e. not 16S) with species-level resolution via marker genes.
<detailsmarkdown="1">
<summary>Output files</summary>
-`metaphlan3/`
-`metaphlan3_<db_name>_combined_reports.txt`: A combined profile of all samples aligned to a given database (as generated by `metaphlan_merge_tables`)
-`<db_name>/`
-`<sample_id>.biom`: taxonomic profile in BIOM format
-`<sample_id>.bowtie2out.txt`: BowTie2 alignment information (can be re-used for skipping alignment when re-running MetaPhlAn3 with different parameters)
The main taxonomic profiling file from MetaPhlAn3 is the `*_profile.txt` file. This provides the abundance estimates from MetaPhlAn3 however does not include raw counts by default.
[mOTUS](https://github.com/motu-tool/mOTUs) is a taxonomic profiler that maps reads to a unique marker specific database and estimates the relative abundance of known and unknown species.
-`<sample_id>.log`: A log file that contains summary statistics
-`<sample_id>.out`: A classification file that summarises taxonomic identifiers, by default at the rank of mOTUs (i.e., species level), and their relative abundances in the profiled sample.
-`motus_<db_name>_combined_reports.txt`: A combined profile of all samples aligned to a given database (as generated by `motus_merge`)
Normally `*_combined_reports.txt` is the most useful file for downstream analyses, but the per sample `.out` file can provide additional more specific information. By default, nf-core/taxprofiler is providing a column describing NCBI taxonomic ID as this is used in the taxpasta step. You can disable this column by activating the argument `--motus_remove_ncbi_ids`.
-`<tool_name>_<db_name>.html`: per-tool/per-database interactive HTML file containing hierarchical piecharts
</details>
The resulting HTML files can be loaded into your web browser for exploration. Each file will have a dropdown to allow you to switch between each sample aligned against the given database of the tool.
[TAXPASTA](https://github.com/taxprofiler/taxpasta) standardises and merges two or more taxonomic profiles across samples into one single table. It supports multiple different classifiers simplifying comparison of taxonomic classification results between tools and databases.
-`<tool>_<database>*.{tsv,csv,arrow,parquet,biom}`: Standardised taxon table containing multiple samples. The standard format is the `tsv`. The first column describes the taxonomy ID and the rest of the columns describe the read counts for each sample.
By providing the path to a directory containing taxdump files to `--taxpasta_taxonomy_dir`, the taxon name, the taxon rank, the taxon's entire lineage including taxon names and/or the taxon's entire lineage including taxon identifiers can also be added in the output in addition to just the taxon ID. Addition of this extra information can be turned by using the parameters `--taxpasta_add_name`, `--taxpasta_add_rank`, `--taxpasta_add_lineage` and `--taxpasta_add_idlineage` respectively.
These files will likely be the most useful files for the comparison of differences in classification between different tools or building consensuses, with the caveat they have slightly less information than the actual output from each tool (which may have non-standard information e.g. taxonomic rank, percentage of hits, abundance estimations).
- Bracken: `<sample>_<db_name>.tsv` Taxpasta used the `new_est_reads` column for the standardised profile.
- Centrifuge: `<sample_id>.centrifuge.txt` Taxpasta uses the `direct_assigned_reads` column for the standardised profile.
- Diamond: `<sample_id>` Taxpasta summarises number of reads per NCBI taxonomy ID standardised profile.
- Kaiju: `<sample_id>_<db_name>.kaijutable.txt` Taxpasta uses the `reads` column from kaiju2table standardised profile.
- KrakenUniq: `<sample_id>_<db_name>.report.txt` Taxpasta uses the `reads` column for the standardised profile.
- Kraken2: `<sample_id>_<db_name>.report.txt` Taxpasta uses the `direct_assigned_reads` column for the standardised profile.
- MALT: `<sample_id>.txt.gz` Taxpasta uses the `count` (second) column from the output of MEGAN6's rma2info for the standardised profile.
- MetaPhlAn3: `<sample_id>_profile.txt` Taxpasta uses the `relative_abundance` column multiplied with a fixed number to yield an integer for the standardised profile.
- mOTUs: `<sample_id>.out` Taxpasta uses the `read_count` column for the standardised profile.
> ⚠️ Please aware the outputs of each tool's standardised profile _may not_ be directly comparable between each tool. Some may report raw read counts, whereas others may report abundance information. Please always refer to the list above, for which information is used for each tool.
[MultiQC](http://multiqc.info) is a visualization tool that generates a single HTML report summarising all samples in your project. Most of the pipeline QC results are visualised in the report and further statistics are available in the report data directory.
Results generated by MultiQC collate pipeline QC from supported tools e.g. FastQC. The pipeline has special steps which also allow the software versions to be reported in the MultiQC output for future traceability. For more information about how to use MultiQC reports, see <http://multiqc.info>.
All tools in taxprofiler supported by MultiQC will have a dedicated section showing summary statistics of each tool based on information stored in log files.
> ℹ️ The 'General Stats' table by default will only show statistics referring to pre-processing steps, and will not display possible values from each classifier/profiler, unless turned on by the user within the 'Configure Columns' menu or via a custom MultiQC config file (`--multiqc_config`)
- Reports generated by Nextflow: `execution_report.html`, `execution_timeline.html`, `execution_trace.txt` and `pipeline_dag.dot`/`pipeline_dag.svg`.
- Reports generated by the pipeline: `pipeline_report.html`, `pipeline_report.txt` and `software_versions.yml`. The `pipeline_report*` files will only be present if the `--email` / `--email_on_fail` parameter's are used when running the pipeline.
- Reformatted samplesheet files used as input to the pipeline: `samplesheet.valid.csv`.
[Nextflow](https://www.nextflow.io/docs/latest/tracing.html) provides excellent functionality for generating various reports relevant to the running and execution of the pipeline. This will allow you to troubleshoot errors with the running of the pipeline, and also provide you with other information such as launch commands, run times and resource usage.