UMI-tools was published in Genome Research on 18 Jan '17 (open access)
For full documentation see https://umi-tools.readthedocs.io/en/latest/
Tools for dealing with Unique Molecular Identifiers
This repository contains tools for dealing with Unique Molecular Identifiers (UMIs)/Random Molecular Tags (RMTs) and single cell RNA-Seq cell barcodes. Currently there are 6 commands.
The extract
and whitelist
commands are used to prepare a
fastq containg UMIs +/- cell barcodes for alignment.
- whitelist:
- Builds a whitelist of the 'real' cell barcodes
- This is useful for droplet-based single cell RNA-Seq where the identity of the true cell barcodes is unknown. Whitelist can then be used to filter with extract (see below)
- extract:
- Flexible removal of UMI sequences from fastq reads.
- UMIs are removed and appended to the read name. Any other barcode, for example a library barcode, is left on the read. Can also filter reads by quality or against a whitelist (see above)
The remaining commands, group
, dedup
and count
/count_tab
, are used to
identify PCR duplicates using the UMIs and perform different levels of
analysis depending on the needs of the user. A number of different UMI
deduplication schemes are enabled - The recommended method is
directional.
- dedup:
- Groups PCR duplicates and deduplicates reads to yield one read per group
- Use this when you want to remove the PCR duplicates prior to any downstream analysis
- group:
- Groups PCR duplicates using the same methods available through `dedup`.
- This is useful when you want to manually interrogate the PCR duplicates
- count:
- Groups and deduplicates PCR duplicates and counts the unique molecules per gene
- Use this when you want to obtain a matrix with unique molecules per gene, per cell, for scRNA-Seq.
- count_tab:
- As per count except input is a flatfile
See QUICK_START.md for a quick tutorial on the most common usage pattern.
If you want to use UMI-tools in single-cell RNA-Seq data processing, see Single_cell_tutorial.md
Important update: We now recommend the use of alevin for droplet-based scRNA-Seq (e.g 10X, inDrop etc). alevin is an accurate, fast and convenient end-to-end tool to go from fastq -> count matrix and extends the UMI error correction in UMI-tools within a framework that also enables quantification of droplet scRNA-Seq without discarding multi-mapped reads. See alevin documentation and alevin pre-print for more information
The dedup
, group
, and count
/ count_tab
commands make use of network-based methods to resolve similar UMIs with the same alignment coordinates. For a background regarding these methods see:
Blog post discussing network-based methods.
Installation
If you're using Conda, you can use:
$ conda install -c bioconda -c conda-forge umi_tools
Or pip:
$ pip install umi_tools
Or if you'd like to work directly from the git repository:
$ git clone https://github.com/CGATOxford/UMI-tools.git
Enter repository and run:
$ python setup.py install
For more detail see INSTALL.rst
Help
For full documentation see https://umi-tools.readthedocs.io/en/latest/
See QUICK_START.md and Single_cell_tutorial.md for tutorials on the most common usage patterns.
To get help on umi_tools run
$ umi_tools --help
To get help on the options for a specific [COMMAND], run
$ umi_tools [COMMAND] --help
Dependencies
umi_tools is dependent on python>=3.5, numpy, pandas, scipy, cython, pysam, future, regex and matplotlib