Litcius/Paper detail

Biobank-scale inference of ancestral recombination graphs enables genealogical analysis of complex traits

Brian C. Zhang, Arjun Biddanda, Árni Freyr Gunnarsson, Fergus Cooper, Pier Francesco Palamara

2023Nature Genetics119 citationsDOIOpen Access PDF

Abstract

Genome-wide genealogies compactly represent the evolutionary history of a set of genomes and inferring them from genetic data has the potential to facilitate a wide range of analyses. We introduce a method, ARG-Needle, for accurately inferring biobank-scale genealogies from sequencing or genotyping array data, as well as strategies to utilize genealogies to perform association and other complex trait analyses. We use these methods to build genome-wide genealogies using genotyping data for 337,464 UK Biobank individuals and test for association across seven complex traits. Genealogy-based association detects more rare and ultra-rare signals (N = 134, frequency range 0.0007-0.1%) than genotype imputation using ~65,000 sequenced haplotypes (N = 64). In a subset of 138,039 exome sequencing samples, these associations strongly tag (average r = 0.72) underlying sequencing variants enriched (4.8×) for loss-of-function variation. These results demonstrate that inferred genome-wide genealogies may be leveraged in the analysis of complex traits, complementing approaches that require the availability of large, population-specific sequencing panels.

Topics & Concepts

BiologyBiobankGenotypingImputation (statistics)1000 Genomes ProjectGeneticsGenome-wide association studyHaplotypeExomeGenetic associationGenomeQuantitative trait locusInferenceExome sequencingEvolutionary biologyComputational biologyGenotypeSingle-nucleotide polymorphismPhenotypeGeneMissing dataStatisticsComputer scienceArtificial intelligenceMathematicsGenetic Mapping and Diversity in Plants and AnimalsGenetic Associations and EpidemiologyGenetic and phenotypic traits in livestock