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SEquence Quality Control (SEQC -- /sek-si:/)

NOTE: This repository is no longer actively maintained. If you want to get the latest update or have any inquiries, please refer to https://github.com/dpeerlab/seqc instead.


Overview:

SEQC is a python package that processes single-cell sequencing data in the cloud and analyzes it interactively on your local machine.

To faciliate easy installation and use, we have made available Amazon Machine Images (AMIs) that come with all of SEQC's dependencies pre-installed. In addition, we have uploaded common genome indices (-i/--index parameter) and barcode data (--barcode-files) to public amazon s3 repositories. These links can be provided to SEQC and it will automatically fetch them prior to initiating an analysis run. Finally, it can fetch input data directly from BaseSpace or amazon s3 for analysis.

For users with access to in-house compute clusters, SEQC can be installed on your systems and run using the --local parameter.

Dependencies:

Python3

Python must be installed on your local machine to run SEQC. We recommend installing python3 through your unix operating system's package manager. For Mac OSX users we recommend homebrew. Typical installation commands would be:

brew install python3  # mac
apt-get install python3  # debian
yum install python3 # rpm-based

Python3 Libraries

Installing these libraries is necessary before installing SEQC.

pip3 install Cython
pip3 install numpy
pip3 install bhtsne

STAR

To process data locally using SEQC, you must install the STAR Aligner, Samtools, and hdf5. If you only intend to use SEQC to trigger remote processing on AWS, these dependencies are optional. We recommend installing samtools and hdf5 through your package manager, if possible.

Hardware Requirements:

For processing a single lane (~200M reads) against human- and mouse-scale genomes, SEQC requires 30GB RAM, approximately 200GB free hard drive space, and scales linearly with additional compute cores. If running on AWS (see below), jobs are automatically scaled up or down according to the size of the input. There are no hardware requirements for the computer used to launch remote instances.

Amazon Web Services:

SEQC can be run on any unix-based operating system, however it also features the ability to automatically spawn Amazon Web Services instances to process your data. If you wish to take advantage of AWS, you will need to follow their instructions to:

  1. Set up an AWS account
  2. Install and configure AWS CLI
  3. Create and upload an rsa-key for AWS

SEQC Installation:

Once all dependencies have been installed, SEQC can be installed on any machine by typing:

$> git clone https://github.com/ambrosejcarr/seqc.git
$> cd seqc && python3 setup.py install

Please note that to avoid passing the -k/--rsa-key command when you execute SEQC runs, you can also set the environment variable AWS_RSA_KEY to the path to your newly created key.

Testing SEQC:

All the unit tests in class TestSEQC in test.py have been tested. Currently, only two platforms ten_x_v2 and in_drop_v2 have been tested. Old unit tests from these two platforms together with other platforms are stored at s3://dp-lab-data/seqc-old-unit-test/.

Running SEQC:

After SEQC is installed, help can be listed:

SEQC [-h] [-v] {run,progress,terminate,instances,start,index} ...

Processing Tools for scRNA-seq Experiments

positional arguments:
  {run,progress,terminate,instances,start,index}
    run                 initiate SEQC runs
    progress            check SEQC run progress
    terminate           terminate SEQC runs
    instances           list all running instances
    start               initialize a seqc-ready instance
    index               create a SEQC index

optional arguments:
  -h, --help            show this help message and exit
  -v, --version         show program's version number and exit

In addition to processing sequencing experiments, SEQC.py provides some convenience tools to create indices for use with SEQC and STAR, and tools to check the progress of remote runs, list current runs, start instances, and terminate them.

To seamlessly start an AWS instance with automatic installation of SEQC from your local machine you can run:

SEQC start