Genome-wide inference of ancestral recombination graphs
Matthew D. Rasmussen, Melissa J. Hubisz, Ilan Gronau, Adam Siepel

TL;DR
This paper introduces ARGweaver, an efficient algorithm for genome-wide ancestral recombination graph inference that scales to dozens of genomes, enabling detailed population history and selection analysis.
Contribution
The authors develop a novel threading-based MCMC algorithm for ARG inference, significantly improving scalability and accuracy over previous methods.
Findings
ARGweaver accurately recovers features of the ARG in simulated data.
Application to human genomes reveals signatures of natural selection.
Method provides insights into human population structure.
Abstract
The complex correlation structure of a collection of orthologous DNA sequences is uniquely captured by the "ancestral recombination graph" (ARG), a complete record of coalescence and recombination events in the history of the sample. However, existing methods for ARG inference are computationally intensive, highly approximate, or limited to small numbers of sequences, and, as a consequence, explicit ARG inference is rarely used in applied population genomics. Here, we introduce a new algorithm for ARG inference that is efficient enough to apply to dozens of complete mammalian genomes. The key idea of our approach is to sample an ARG of n chromosomes conditional on an ARG of n-1 chromosomes, an operation we call "threading." Using techniques based on hidden Markov models, we can perform this threading operation exactly, up to the assumptions of the sequentially Markov coalescent and a…
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Taxonomy
TopicsGenetic Mapping and Diversity in Plants and Animals · Genetic diversity and population structure · Genetic and phenotypic traits in livestock
