rogerzhanglijie / rnaseq-nf

A proof of concept of RNAseq pipeline

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

RNAseq-NF pipeline

A basic pipeline for quantification of genomic features from short read data implemented with Nextflow.

nextflow Build Status

Requirements

  • Unix-like operating system (Linux, macOS, etc)
  • Java 8

Quickstart

  1. If you don't have it already install Docker in your computer. Read more here.

  2. Install Nextflow (version 0.24.x or higher):

     curl -s https://get.nextflow.io | bash
    
  3. Launch the pipeline execution:

     ./nextflow run nextflow-io/rnaseq-nf -with-docker
    
  4. When the execution completes open in your browser the report generated at the following path:

     results/multiqc_report.html 
    

You can see an example report at the following link.

Note: the very first time you execute it, it will take a few minutes to download the pipeline from this GitHub repository and the the associated Docker images needed to execute the pipeline.

Cluster support

RNASeq-NF execution relies on Nextflow framework which provides an abstraction between the pipeline functional logic and the underlying processing system.

This allows the execution of the pipeline in a single computer or in a HPC cluster without modifying it.

Currently the following resource manager platforms are supported:

  • Univa Grid Engine (UGE)
  • Platform LSF
  • SLURM
  • PBS/Torque

By default the pipeline is parallelized by spawning multiple threads in the machine where the script is launched.

To submit the execution to a UGE cluster create a file named nextflow.config in the directory where the pipeline is going to be executed with the following content:

process {
  executor='uge'
  queue='<queue name>'
}

To lean more about the avaible settings and the configuration file read the Nextflow documentation.

Components

RNASeq-NF uses the following software components and tools:

About

A proof of concept of RNAseq pipeline

License:Mozilla Public License 2.0


Languages

Language:Nextflow 96.1%Language:Dockerfile 3.0%Language:Makefile 0.9%