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Journal article

Accurate genotyping across variant classes and lengths using variant graphs

From

University of Copenhagen1

University of Oslo2

University of Bergen3

University of North Carolina at Chapel Hill4

Genomic Epidemiology, Department of Bio and Health Informatics, Technical University of Denmark5

Karolinska Institutet6

Disease Intelligence and Molecular Evolution, Department of Bio and Health Informatics, Technical University of Denmark7

Aarhus University8

Department of Bio and Health Informatics, Technical University of Denmark9

Metagenomics, Department of Bio and Health Informatics, Technical University of Denmark10

Integrative Systems Biology, Department of Bio and Health Informatics, Technical University of Denmark11

South China University of Technology12

BGI Europe A/S13

BGI Group14

Technical University of Denmark15

...and 5 more

Genotype estimates from short-read sequencing data are typically based on the alignment of reads to a linear reference, but reads originating from more complex variants (for example, structural variants) often align poorly, resulting in biased genotype estimates. This bias can be mitigated by first collecting a set of candidate variants across discovery methods, individuals and databases, and then realigning the reads to the variants and reference simultaneously.

However, this realignment problem has proved computationally difficult. Here, we present a new method (BayesTyper) that uses exact alignment of read k-mers to a graph representation of the reference and variants to efficiently perform unbiased, probabilistic genotyping across the variation spectrum.

We demonstrate that BayesTyper generally provides superior variant sensitivity and genotyping accuracy relative to existing methods when used to integrate variants across discovery approaches and individuals. Finally, we demonstrate that including a ‘variation-prior’ database containing already known variants significantly improves sensitivity.

Language: English
Publisher: Nature Publishing Group US
Year: 2018
Pages: 1054-1059
ISSN: 15461718 and 10614036
Types: Journal article
DOI: 10.1038/s41588-018-0145-5
ORCIDs: Petersen, Bent , Gonzalez-Izarzugaza, Jose Maria , Lund, Ole , Gupta, Ramneek , Rasmussen, Simon , 0000-0002-5147-6282 , 0000-0001-8748-3831 , 0000-0003-4821-430X , 0000-0002-3321-3972 and 0000-0003-0316-5866

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