학술논문

Fast two-stage phasing of large-scale sequence data.
Document Type
Article
Source
American Journal of Human Genetics. 10/6/2022 Supplement - Best of American Journal of Human Genetics and Human Genetics and Genomics Advances, p1880-1890. 11p.
Subject
*HAPLOTYPES
*SINGLE nucleotide polymorphisms
*GENOTYPES
*INTEGRATED software
*GENETIC carriers
Language
ISSN
0002-9297
Abstract
Haplotype phasing is the estimation of haplotypes from genotype data. We present a fast, accurate, and memory-efficient haplotype phasing method that scales to large-scale SNP array and sequence data. The method uses marker windowing and composite reference haplotypes to reduce memory usage and computation time. It incorporates a progressive phasing algorithm that identifies confidently phased heterozygotes in each iteration and fixes the phase of these heterozygotes in subsequent iterations. For data with many low-frequency variants, such as whole-genome sequence data, the method employs a two-stage phasing algorithm that phases high-frequency markers via progressive phasing in the first stage and phases low-frequency markers via genotype imputation in the second stage. This haplotype phasing method is implemented in the open-source Beagle 5.2 software package. We compare Beagle 5.2 and SHAPEIT 4.2.1 by using expanding subsets of 485,301 UK Biobank samples and 38,387 TOPMed samples. Both methods have very similar accuracy and computation time for UK Biobank SNP array data. However, for TOPMed sequence data, Beagle is more than 20 times faster than SHAPEIT, achieves similar accuracy, and scales to larger sample sizes. [ABSTRACT FROM AUTHOR]