Skip to content

qbicsoftware-archive/hlatyping-workflow

 
 

Repository files navigation

nfcore/hlatyping

Precision HLA typing from next-generation sequencing data using OptiType.

Build Status Nextflow

install with bioconda Docker https://www.singularity-hub.org/static/img/hosted-singularity--hub-%23e32929.svg

Table of Contents

  1. Introduction
  2. Quick Start
  3. Documentation
  4. Pipeline DAG
  5. Credits

Introduction

OptiType is a HLA genotyping algorithm based on integer linear programming. Reads of whole exome/genome/transcriptome sequencing data are mapped against a reference of known MHC class I alleles. To produce accurate 4-digit HLA genotyping predictions, all major and minor HLA-I loci are considered simultaneously to find an allele combination that maximizes the number of explained reads.

The pipeline is built using Nextflow, a workflow tool to run tasks across multiple compute infrastructures in a very portable manner. It comes with docker / singularity containers making installation trivial and results highly reproducible.

Quick Start

If you want to test with a single line, if the pipeline works on your system, follow the next commands, with pre-configured test data-sets.

Docker

nextflow run nf-core/hlatyping -profile docker,test --outdir $PWD/results

Singularity

nextflow run nf-core/hlatyping -profile singularity,test --outdir $PWD/results

Documentation

The nf-core/hlatyping pipeline comes with documentation about the pipeline, found in the docs/ directory:

  1. Installation
  2. Pipeline configuration
  3. Running the pipeline
  4. Output and how to interpret the results
  5. Troubleshooting

Pipeline DAG

The hlatyping pipeline can currently deal with two input formats: .fastq{.gz} or .bam, not both at the same time however. If the input file type is bam, than the pipeline extracts all reads from it and performs an mapping additional step with the yara mapper against the HLA reference sequence. Indices are provided in the ./data directory of this repository. Optitype uses razers3, which is very memory consuming. In order to avoid memory issues during pipeline execution, we reduce the mapping information on the relevant HLA regions on chromosome 6.

DAG with .fastq{.gz} as input

Creates a config file from the command line arguments, which is then passed to OptiType. In parallel, the fastqs are unzipped if they are passed as archives. OptiType is then used for the HLA typing.

DAG with .bam as input

Creates a config file from the command line arguments, which is then passed to OptiType. In parallel, the reads are extracted from the bam file and mapped again against the HLA reference sequence on chromosome 6. OptiType is then used for the HLA typing.

Credits

This pipeline was written by:

About

Precision HLA typing from next-generation sequencing data

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •  

Languages

  • Nextflow 74.2%
  • Python 9.2%
  • HTML 7.1%
  • Shell 6.2%
  • R 2.5%
  • Dockerfile 0.8%