nf-core/scnanoseq is a bioinformatics best-practice analysis pipeline for 10X Genomics single-cell/nuclei RNA-seq data derived from Oxford Nanopore Q20+ chemistry (R10.4 flow cells (>Q20)). Due to the expectation of >Q20 quality, the input data for the pipeline does not depend on Illumina paired data. Please note scnanoseq
can also process Oxford data with older chemistry, but we encourage usage of the Q20+ chemistry when possible.
The pipeline is built using Nextflow, a workflow tool to run tasks across multiple compute infrastructures in a very portable manner. It uses Docker/Singularity containers making installation trivial and results highly reproducible. The Nextflow DSL2 implementation of this pipeline uses one container per process which makes it much easier to maintain and update software dependencies. Where possible, these processes have been submitted to and installed from nf-core/modules in order to make them available to all nf-core pipelines, and to everyone within the Nextflow community!
On release, automated continuous integration tests run the pipeline on a full-sized dataset on the AWS cloud infrastructure. This ensures that the pipeline runs on AWS, has sensible resource allocation defaults set to run on real-world datasets, and permits the persistent storage of results to benchmark between pipeline releases and other analysis sources. The results obtained from the full-sized test can be viewed on the nf-core website.
- Raw read QC (
FastQC
,NanoPlot
,NanoComp
andToulligQC
) - Unzip and split FASTQ (
pigz
)- Optional: Split FASTQ for faster processing (
split
)
- Optional: Split FASTQ for faster processing (
- Trim and filter reads (
Nanofilt
) - Post trim QC (
FastQC
,NanoPlot
,NanoComp
andToulligQC
) - Barcode detection using a custom whitelist or 10X whitelist.
BLAZE
- Extract barcodes. Consists of the following steps:
- Parse FASTQ files into R1 reads containing barcode and UMI and R2 reads containing sequencing without barcode and UMI (custom script
./bin/pre_extract_barcodes.py
) - Re-zip FASTQs (
pigz
)
- Parse FASTQ files into R1 reads containing barcode and UMI and R2 reads containing sequencing without barcode and UMI (custom script
- Barcode correction (custom script
./bin/correct_barcodes.py
) - Post-extraction QC (
FastQC
,NanoPlot
,NanoComp
andToulligQC
) - Alignment (
minimap2
) - Post-alignment filtering of mapped reads and gathering mapping QC (
SAMtools
) - Post-alignment QC in unfiltered BAM files (
NanoComp
,RSeQC
) - Barcode (BC) tagging with read quality, BC quality, UMI quality (custom script
./bin/tag_barcodes.py
) - UMI-based deduplication
UMI-tools
- Gene and transcript level matrices generation
IsoQuant
- Preliminary matrix QC (
Seurat
) - Compile QC for raw reads, trimmed reads, pre and post-extracted reads, mapping metrics and preliminary single-cell/nuclei QC (
MultiQC
)
Note
If you are new to Nextflow and nf-core, please refer to this page on how to set-up Nextflow. Make sure to test your setup with -profile test
before running the workflow on actual data.
First, prepare a samplesheet with your input data that looks as follows:
sample,fastq,cell_count
CONTROL_REP1,AEG588A1_S1.fastq.gz,5000
CONTROL_REP1,AEG588A1_S2.fastq.gz,5000
CONTROL_REP2,AEG588A2_S1.fastq.gz,5000
CONTROL_REP3,AEG588A3_S1.fastq.gz,5000
CONTROL_REP4,AEG588A4_S1.fastq.gz,5000
CONTROL_REP4,AEG588A4_S2.fastq.gz,5000
CONTROL_REP4,AEG588A4_S3.fastq.gz,5000
Each row represents a single-end fastq file. Rows with the same sample identifier are considered technical replicates and will be automatically merged. cell_count
refers to the expected number of cells you expect.
nextflow run nf-core/scnanoseq \
-profile <docker/singularity/.../institute> \
--input samplesheet.csv \
--outdir <OUTDIR>
Warning
Please provide pipeline parameters via the CLI or Nextflow -params-file
option. Custom config files including those provided by the -c
Nextflow option can be used to provide any configuration except for parameters;
see docs.
For more details and further functionality, please refer to the usage documentation and the parameter documentation.
This pipeline produces feature-barcode matrices at both the gene and transcript level and can be configured to retain introns within the counts themselves. These feature-barcode matrices are able to be ingested directly by most packages used for downstream analyses such as Seurat
. Additionally, the pipeline produces a number of quality control metrics to ensure that the samples processed meet expected metrics for single-cell/nuclei data.
To see the results of an example test run with a full size dataset refer to the results tab on the nf-core website pipeline page. For more details about the full set of output files and reports, please refer to the output documentation.
If you experience any issues, please make sure to reach out on the #scnanoseq slack channel or open an issue on our GitHub repository. However, some resolutions for common issues will be noted below:
- Due to the nature of the data this pipeline analyzes, some tools may experience increased runtimes. For some of the custom tools made for this pipeline (
preextract_fastq.py
andcorrect_barcodes.py
), we have leveraged the splitting done via thesplit_amount
parameter to decrease their overall runtimes. Thesplit_amount
parameter will split the input FASTQs into a number of FASTQ files, each containing a number of lines based on the value used for this parameter. As a result, it is important not to set this parameter to be too low as doing so would cause the creation of a large number of files the pipeline will be processed. While this value can be highly dependent on the data, a good starting point for an analysis would be to set this value to500000
. If you find thatPREEXTRACT_FASTQ
andCORRECT_BARCODES
are still taking long amounts of time to run, it would be worth reducing this parameter to200000
or100000
, but keeping the value on the order of hundred of thousands or tens of thousands should help with keeping the total number of processes minimal. An example of setting this parameter to be equal to 500000 is shown below:
split_amount: 500000
- We have seen a recurrent node failure on slurm clusters that does seem to be related to submission of Nextflow jobs. This issue is not related to this pipeline per se, but rather to Nextflow itself. We are currently working on a resolution. But we have two methods that appear to help overcome should this issue arise:
- Provide a custom config that increases the memory request for the job that failed. This may take a couple attempts to find the correct requests, but we have noted that there does appear to be a memory issue occasionally with these errors.
- Request an interactive session with a decent amount of time and memory and CPUs in order to run the pipeline on the single node. Note that this will take time as there will be minimal parallelization, but this does seem to resolve the issue.
- We acknowledge that analyzing PromethION data is a common use case for this pipeline. Currently, the pipeline has been developed with defaults to analyze GridION and average sized PromethION data. For cases, where jobs have fail due for larger PromethION datasets, the defaults can be overwritten by a custom configuation file (provided by the
-c
Nextflow option) where resources can be increased (substantially in some cases). Below are some of the overrides we have used, and while these amounts may not work on every dataset, these will hopefully at least note which processes will need to have their resources increased:
process
{
withName: '.*:.*FASTQC.*'
{
cpus = 20
}
}
//NOTE: reminder that params set in modules.config need to be copied over to a custom config
process
{
withName: '.*:BLAZE'
{
ext.args = {
[
"--threads 30",
params.barcode_format == "10X_3v3" ? "--kit-version 3v3" : params.barcode_format == "10X_5v2" ? "--kit-version 5v2" : ""
].join(' ').trim()
}
}
}
process
{
withName: '.*:TAG_BARCODES'
{
memory = '60.GB'
}
}
process
{
withName: '.*:SAMTOOLS_SORT'
{
cpus = 20
}
}
process
{
withName: '.*:MINIMAP2_ALIGN'
{
cpus = 20
}
}
process
{
withName: '.*:ISOQUANT'
{
cpus = 30
memory = '85.GB'
}
}
We further note that while we encourage the use of split_amount
as discussed above for larger datasets, the pipeline can be executed without enabling this parameter. When doing this, please consider increasing the time limit to CORRECT_BARCODES
as it can take hours instead of minutes when split_amount
is disabled:
//NOTE: with split_amount disabled, consider increasing the time limit to CORRECT_BARCODES
process
{
withName: '.*:CORRECT_BARCODES'
{
time = '15.h'
}
}
nf-core/scnanoseq was originally written by Austyn Trull, and Dr. Lara Ianov.
We would also like to thank the following people and groups for their support, including financial support:
- Dr. Elizabeth Worthey
- University of Alabama at Birmingham Biological Data Science Core (U-BDS), RRID:SCR_021766, https://github.com/U-BDS
- Support from: 3P30CA013148-48S8
If you would like to contribute to this pipeline, please see the contributing guidelines.
For further information or help, don't hesitate to get in touch on the Slack #scnanoseq
channel (you can join with this invite).
If you use nf-core/scnanoseq for your analysis, please cite it using the following doi: 10.5281/zenodo.13899279
An extensive list of references for the tools used by the pipeline can be found in the CITATIONS.md
file.
You can cite the nf-core
publication as follows:
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.