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FASTQ-to-analysis-ready-CRAM Workflow Executor for Human Genome Sequencing

Project description

ftarc

FASTQ-to-analysis-ready-CRAM Workflow Executor for Human Genome Sequencing

Test Upload Python Package CI to Docker Hub

Installation

$ pip install -U ftarc

Dependent commands:

  • pigz
  • pbzip2
  • bgzip
  • tabix
  • samtools (and plot-bamstats)
  • gnuplot
  • java
  • gatk
  • cutadapt
  • fastqc
  • trim_galore
  • bwa or bwa-mem2

Docker image

Pull the image from Docker Hub.

$ docker image pull dceoy/ftarc

Usage

Create analysis-ready CRAM files from FASTQ files

input files output files
read1/read2 FASTQ (Illumina) analysis-ready CRAM
  1. Download hg38 resource data.

    $ ftarc download --dest-dir=/path/to/download/dir
    
  2. Write input file paths and configurations into ftarc.yml.

    $ ftarc init
    $ vi ftarc.yml  # => edit
    

    Example of ftarc.yml:

    ---
    reference_name: hs38DH
    adapter_removal: true
    metrics_collectors:
      fastqc: true
      picard: true
      samtools: true
    resources:
      reference_fa: /path/to/GRCh38_full_analysis_set_plus_decoy_hla.fa
      known_sites_vcf:
        - /path/to/Homo_sapiens_assembly38.dbsnp138.vcf.gz
        - /path/to/Mills_and_1000G_gold_standard.indels.hg38.vcf.gz
        - /path/to/Homo_sapiens_assembly38.known_indels.vcf.gz
    runs:
      - fq:
          - /path/to/sample01.WGS.R1.fq.gz
          - /path/to/sample01.WGS.R2.fq.gz
      - fq:
          - /path/to/sample02.WGS.R1.fq.gz
          - /path/to/sample02.WGS.R2.fq.gz
      - fq:
          - /path/to/sample03.WGS.R1.fq.gz
          - /path/to/sample03.WGS.R2.fq.gz
        read_group:
          ID: FLOWCELL-1
          PU: UNIT-1
          SM: sample03
          PL: ILLUMINA
          LB: LIBRARY-1
    
  3. Create analysis-ready CRAM files from FASTQ files

    $ ftarc pipeline --yml=ftarc.yml --workers=2
    

    Standard workflow:

    1. Trim adapters
      • trim_galore
    2. Map reads to a human reference genome
      • bwa mem (or bwa-mem2 mem)
    3. Mark duplicates
      • gatk MarkDuplicates
      • gatk SetNmMdAndUqTags
    4. Apply BQSR (Base Quality Score Recalibration)
      • gatk BaseRecalibrator
      • gatk ApplyBQSR
    5. Remove duplicates
      • samtools view
    6. Validate output CRAM files
      • gatk ValidateSamFile
    7. Collect QC metrics
      • fastqc
      • samtools
      • gatk

Preprocessing and QC-check

  • Validate BAM or CRAM files using Picard

    $ ftarc validate /path/to/genome.fa /path/to/aligned.cram
    
  • Collect metrics from FASTQ files using FastQC

    $ ftarc fastqc read1.fq.gz read2.fq.gz
    
  • Collect metrics from FASTQ files using FastQC

    $ ftarc samqc /path/to/genome.fa /path/to/aligned.cram
    
  • Apply BQSR to BAM or CRAM files using GATK

    $ ftarc bqsr \
        --known-sites-vcf=/path/to/Homo_sapiens_assembly38.dbsnp138.vcf.gz \
        --known-sites-vcf=/path/to/Mills_and_1000G_gold_standard.indels.hg38.vcf.gz \
        --known-sites-vcf=/path/to/Homo_sapiens_assembly38.known_indels.vcf.gz \
        /path/to/genome.fa /path/to/markdup.cram
    
  • Remove duplicates in marked BAM or CRAM files

    $ ftarc dedup /path/to/genome.fa /path/to/markdup.cram
    

Run ftarc --help for more information.

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