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Efficiently inferring the demographic history of many populations with allele count data

John A. Kamm, Jonathan Terhorst, Richard Durbin, Yun S. Song
doi: https://doi.org/10.1101/287268
John A. Kamm
Wellcome Trust Sanger Institute;
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Jonathan Terhorst
University of Michigan;
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Richard Durbin
Wellcome Trust Sanger Institute;
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Yun S. Song
University of California, Berkeley
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  • For correspondence: yss@berkeley.edu
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Abstract

The sample frequency spectrum (SFS), or histogram of allele counts, is an important summary statistic in evolutionary biology, and is often used to infer the history of population size changes, migrations, and other demographic events affecting a set of populations. The expected multipopulation SFS under a given demographic model can be efficiently computed when the populations in the model are related by a tree, scaling to hundreds of populations. Admixture, back-migration, and introgression are common natural processes that violate the assumption of a tree-like population history, however, and until now the expected SFS could be computed for only a handful of populations when the demographic history is not a tree. In this article, we present a new method for efficiently computing the expected SFS and linear functionals of it, for demographies described by general directed acyclic graphs. This method can scale to more populations than previously possible for complex demographic histories including admixture. We apply our method to an 8-population SFS to estimate the timing and strength of a proposed "basal Eurasian" admixture event in human history. We implement and release our method in a new open-source software package momi2.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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  • Posted March 23, 2018.

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Efficiently inferring the demographic history of many populations with allele count data
John A. Kamm, Jonathan Terhorst, Richard Durbin, Yun S. Song
bioRxiv 287268; doi: https://doi.org/10.1101/287268
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Efficiently inferring the demographic history of many populations with allele count data
John A. Kamm, Jonathan Terhorst, Richard Durbin, Yun S. Song
bioRxiv 287268; doi: https://doi.org/10.1101/287268

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