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Genome Graphs

Authors :
Adam M. Novak
Glenn Hickey
Erik Garrison
Sean Blum
Abram Connelly
Alexander Dilthey
Jordan Eizenga
M. A. Saleh Elmohamed
Sally Guthrie
André Kahles
Stephen Keenan
Jerome Kelleher
Deniz Kural
Heng Li
Michael F. Lin
Karen Miga
Nancy Ouyang
Goran Rakocevic
Maciek Smuga-Otto
Alexander Wait Zaranek
Richard Durbin
Gil McVean
David Haussler
Benedict Paten
Publication Year :
2017
Publisher :
Cold Spring Harbor Laboratory, 2017.

Abstract

There is increasing recognition that a single, monoploid reference genome is a poor universal reference structure for human genetics, because it represents only a tiny fraction of human variation. Adding this missing variation results in a structure that can be described as a mathematical graph: a genome graph. We demonstrate that, in comparison to the existing reference genome (GRCh38), genome graphs can substantially improve the fractions of reads that map uniquely and perfectly. Furthermore, we show that this fundamental simplification of read mapping transforms the variant calling problem from one in which many non-reference variants must be discovered de-novo to one in which the vast majority of variants are simply re-identified within the graph. Using standard benchmarks as well as a novel reference-free evaluation, we show that a simplistic variant calling procedure on a genome graph can already call variants at least as well as, and in many cases better than, a state-of-the-art method on the linear human reference genome. We anticipate that graph-based references will supplant linear references in humans and in other applications where cohorts of sequenced individuals are available.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....5d78d6780e6566e7e09c35a08b486cd1
Full Text :
https://doi.org/10.1101/101378