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<h4>Summary:</h4> HLA*PRG:LA implements a new graph alignment model for HLA type inference, based on the projection of linear alignments onto a variation graph. It enables accurate HLA type inference from whole-genome (99% accuracy) and whole-exome (93% accuracy) Illumina data; from long-read Oxford Nanopore and Pacific Biosciences data (98% accuracy for whole-genome and targeted data); and from genome assemblies. Computational requirements for a typical sample vary between 0.7 and 14 CPU hours per sample. <h4>Availability and Implementation:</h4> HLA*PRG:LA is implemented in C++ and Perl and freely available from https://github.com/DiltheyLab/HLA-PRG-LA (GPL v3). <h4>Contact:</h4> alexander.dilthey@med.uni-duesseldorf.de <h4>Supplementary information</h4> Supplementary data are available online.

Original publication

DOI

10.1101/453555

Type

Journal article

Publication Date

26/10/2018