Pangenome-based genome inference allows efficient and accurate genotyping across a wide spectrum of variant classes

Author:

Ebler JanaORCID,Ebert PeterORCID,Clarke Wayne E.,Rausch TobiasORCID,Audano Peter A.,Houwaart TorstenORCID,Mao YafeiORCID,Korbel Jan O.ORCID,Eichler Evan E.ORCID,Zody Michael C.ORCID,Dilthey Alexander T.,Marschall TobiasORCID

Abstract

AbstractTypical genotyping workflows map reads to a reference genome before identifying genetic variants. Generating such alignments introduces reference biases and comes with substantial computational burden. Furthermore, short-read lengths limit the ability to characterize repetitive genomic regions, which are particularly challenging for fast k-mer-based genotypers. In the present study, we propose a new algorithm, PanGenie, that leverages a haplotype-resolved pangenome reference together with k-mer counts from short-read sequencing data to genotype a wide spectrum of genetic variation—a process we refer to as genome inference. Compared with mapping-based approaches, PanGenie is more than 4 times faster at 30-fold coverage and achieves better genotype concordances for almost all variant types and coverages tested. Improvements are especially pronounced for large insertions (≥50 bp) and variants in repetitive regions, enabling the inclusion of these classes of variants in genome-wide association studies. PanGenie efficiently leverages the increasing amount of haplotype-resolved assemblies to unravel the functional impact of previously inaccessible variants while being faster compared with alignment-based workflows.

Funder

U.S. Department of Health & Human Services | NIH | National Human Genome Research Institute

Bundesministerium für Bildung und Forschung

Publisher

Springer Science and Business Media LLC

Subject

Genetics

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