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Sequence variation aware genome references and read mapping with the variation graph toolkit

Authors :
Eric T. Dawson
William J. Jones
Jouni Sirén
Richard Durbin
Adam M. Novak
Erik Garrison
Jordan M. Eizenga
Michael F. Lin
Glenn Hickey
Benedict Paten
Publication Year :
2017
Publisher :
Cold Spring Harbor Laboratory, 2017.

Abstract

Reference genomes guide our interpretation of DNA sequence data. However, conventional linear references are fundamentally limited in that they represent only one version of each locus, whereas the population may contain multiple variants. When the reference represents an individual’s genome poorly, it can impact read mapping and introduce bias. Variation graphs are bidirected DNA sequence graphs that compactly represent genetic variation, including large scale structural variation such as inversions and duplications.1 Equivalent structures are produced by de novo genome assemblers.2,3 Here we present vg, a toolkit of computational methods for creating, manipulating, and utilizing these structures as references at the scale of the human genome. vg provides an efficient approach to mapping reads onto arbitrary variation graphs using generalized compressed suffix arrays,4 with improved accuracy over alignment to a linear reference, creating data structures to support downstream variant calling and genotyping. These capabilities make using variation graphs as reference structures for DNA sequencing practical at the scale of vertebrate genomes, or at the topological complexity of new species assemblies.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....f6548fbc8c82f9e64cef79267ee6ce7f
Full Text :
https://doi.org/10.1101/234856