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Pipelines for genomics analysis

Project description

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SeqNado Pipeline

Pipeline based on snakemake to process ChIP-seq, ATAC-seq, RNA-seq and short read WGS data for SNP calling.

Installation

  1. Create a basic conda environment (with pip to install python packages) and activate it.

        conda create -n seqnado pip
        conda activate seqnado
    
  2. Install the pipeline. Three options:

    a) Install the package from pip (recommended)

        pip install seqnado
    

    b) Clone the repositry and install directly.

        git clone https://github.com/alsmith151/SeqNado.git
        cd SeqNado
        pip install .
    

    c) Install from GitHub directly

        pip install git+https://github.com/alsmith151/SeqNado.git
    
  3. If you intend to use a cluster e.g. SLURM add the path to the DRMAA interface to your .bashrc:

        # Access to the DRMAA library: https://en.wikipedia.org/wiki/DRMAA
        echo "export DRMAA_LIBRARY_PATH=/<full-path>/libdrmaa.so" >> ~/.bashrc
    
        # For CBRG users the command to use is:
        echo "export DRMAA_LIBRARY_PATH=/usr/lib64/libdrmaa.so" >> ~/.bashrc
    

Running the pipeline

  1. Setup project directory

    In the parent directory of desired the working directory run the following command:

        seqnado-config atac # ATAC-seq samples
        seqnado-config chip # ChIP-seq/ChIPMentation
        seqnado-config rna # RNA-seq - Not fully tested
        seqnado-config snp # snp calling - Not fully tested
    
    

    This will lead you through a series of questions which will create a new project directory, config file and a sample sheet for you to edit.

    cd into the newly made directory and inspect the config file.

  2. Copy or link fastq files into the fastq directory

    Copy:
    cp PATH_TO_FASTQ/example_R1.fastq.gz

    Symlink: Be sure to use the absolute path for symlinks i.e.
    ln -s /ABSOLUTE_PATH_TO_FASTQ/example_R1.fastq.gz

  3. Set-up sample sheet

    There are two options for preparing a sample sheet:

    a) Using seqnado-design

        seqnado-design atac fastq/* # ATAC-seq samples
        seqnado-design chip fastq/* # ChIP-seq/ChIPMentation
        seqnado-design rna fastq/* # RNA-seq - Not fully tested
        seqnado-design snp fastq/* # snp calling - Not fully tested
    
    

    If samples names match the following conventions then a sample sheet will be generated for your samples:

     ChIP-seq
    
     * samplename1_Antibody_R1.fastq.gz
     * samplename1_Antibody_R2.fastq.gz
     * samplename1_Input_1.fastq
     * samplename1_Input_2.fastq
    
     For ATAC-seq:
    
     * sample-name-1_R1.fastq.gz
     * sample-name-1_R2.fastq.gz
     * sample-name-1_1.fastq
     * sample-name-1_2.fastq
    
     For RNA-seq:
    
     * sample-name-1_R1.fastq.gz
     * sample-name-1_R2.fastq.gz
     * sample-name-1_1.fastq
     * sample-name-1_2.fastq  
    

    b) Using a custom sample sheet.

    This is useful for situations in which it can be difficult to appropriately compare IP and Input control samples.

    • For ChIP-seq samples you will need to create a csv or tsv file with the following columns:

      sample antibody fq1 fq2 control
      SAMPLE-NAME ANTIBODY SAMPLE-NAME_ANTIBODY_R1.fastq.gz SAMPLE-NAME_ANTIBODY_R2.fastq.gz CONTROL_SAMPLE_Input
    • For ATAC-seq, RNA-seq or SNP calling samples you will need to create a csv or tsv file with the following columns:

      sample fq1 fq2
      SAMPLE-NAME SAMPLE-NAME_R1.fastq.gz SAMPLE-NAME_R2.fastq.gz
  4. Running the pipeline

    All FASTQ files present in the directory will be processed by the pipeline in parallel and original FASTQ files will not be modified. If new FASTQ files are added to a pre-run pipeline, only the new files will be processed.

    After copying/linking FASTQ files into the working directory and configuring the copy of config_[assay].yml in the working directory for the current experiment, the pipeline can be run with:

    seqnado atac # ATAC-seq samples
    seqnado chip # ChIP-seq/ChIPMentation
    seqnado rna # RNA-seq - Not fully tested
    seqnado snp # snp calling - Not fully tested
    
    • To visualise which tasks will be performed by the pipeline before running.
      seqnado atac -c 1 --preset ss --dag | dot -Tpng > dag.png

    • If using all default settings (this will run on just the login node)
      seqnado atac -c NUMBER_OF_CORES

    • If you want to use the cluster (recommended)
      seqnado atac -c NUMBER_OF_CORES --preset ss

    • Avoiding network disconnections
      nohup seqnado atac make &

    Your processed data can be found in ./seqnado_output

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