SciLifeLab/NGI-ChIPseq

Name: NGI-ChIPseq

Owner: Science For Life Laboratory

Description: Nextflow ChIP-seq data analysis pipeline, National Genomics Infrastructure, Science for Life Laboratory in Stockholm

Forked from: chuan-wang/NGI-ChIPseq

Created: 2016-06-10 11:41:15.0

Updated: 2018-01-02 18:05:40.0

Pushed: 2018-01-10 10:22:32.0

Homepage: null

Size: 2690

Language: Groovy

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README

NGI-ChIPseq

Build Status Nextflow

Introduction

NGI-ChIPseq is a bioinformatics best-practice analysis pipeline used for ChIP-seq (chromatin immunoprecipitation sequencing) data analysis at the National Genomics Infastructure at SciLifeLab Stockholm, Sweden.

The pipeline uses Nextflow, a bioinformatics workflow tool. It pre-processes raw data from FastQ inputs, aligns the reads and performs extensive quality-control on the results.

This pipeline is primarily used with a SLURM cluster on the Swedish UPPMAX systems. However, the pipeline should be able to run on any system that Nextflow supports. We have done some limited testing using Docker and AWS, and the pipeline comes with some configuration for these systems. See the installation docs for more information.

Documentation

The NGI-ChIPseq pipeline comes with documentation about the pipeline, found in the docs/ directory:

  1. Installation and configuration
  2. Running the pipeline
  3. Output and how to interpret the results

If you're interested in running the pipeline in the cloud, please read the docs about using our pipeline with Amazon Web Services on the NGI-ChIPseq pipeline (the instructions should work with this pipeline as well).

Credits

These scripts were written for use at the National Genomics Infrastructure at SciLifeLab in Stockholm, Sweden. Written by Chuan Wang (@chuan-wang) and Phil Ewels (@ewels).


SciLifeLab National Genomics Infrastructure



This work is supported by the National Institutes of Health's National Center for Advancing Translational Sciences, Grant Number U24TR002306. This work is solely the responsibility of the creators and does not necessarily represent the official views of the National Institutes of Health.