Modeling the spatiotemporal spread of beneficial alleles using ancient genomes
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Modeling the spatiotemporal spread of beneficial alleles using ancient genomes. / Muktupavela, Rasa A.; Petr, Martin; Ségurel, Laure; Korneliussen, Thorfinn; Novembre, John; Racimo, Fernando.
In: eLife, Vol. 11, e73767, 2022.Research output: Contribution to journal › Journal article › Research › peer-review
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TY - JOUR
T1 - Modeling the spatiotemporal spread of beneficial alleles using ancient genomes
AU - Muktupavela, Rasa A.
AU - Petr, Martin
AU - Ségurel, Laure
AU - Korneliussen, Thorfinn
AU - Novembre, John
AU - Racimo, Fernando
N1 - Publisher Copyright: © Muktupavela et al.
PY - 2022
Y1 - 2022
N2 - Ancient genome sequencing technologies now provide the opportunity to study natural selection in unprecedented detail. Rather than making inferences from indirect footprints left by selection in present-day genomes, we can directly observe whether a given allele was present or absent in a particular region of the world at almost any period of human history within the last 10,000 years. Methods for studying selection using ancient genomes often rely on partitioning individuals into discrete time periods or regions of the world. However, a complete understanding of natural selection requires more nuanced statistical methods which can explicitly model allele frequency changes in a continuum across space and time. Here we introduce a method for inferring the spread of a beneficial allele across a landscape using two-dimensional partial differential equations. Unlike previous approaches, our framework can handle time-stamped ancient samples, as well as genotype likelihoods and pseudohaploid sequences from low-coverage genomes. We apply the method to a panel of published ancient West Eurasian genomes to produce dynamic maps showcasing the inferred spread of candidate beneficial alleles over time and space. We also provide estimates for the strength of selection and diffusion rate for each of these alleles. Finally, we high-light possible avenues of improvement for accurately tracing the spread of beneficial alleles in more complex scenarios.
AB - Ancient genome sequencing technologies now provide the opportunity to study natural selection in unprecedented detail. Rather than making inferences from indirect footprints left by selection in present-day genomes, we can directly observe whether a given allele was present or absent in a particular region of the world at almost any period of human history within the last 10,000 years. Methods for studying selection using ancient genomes often rely on partitioning individuals into discrete time periods or regions of the world. However, a complete understanding of natural selection requires more nuanced statistical methods which can explicitly model allele frequency changes in a continuum across space and time. Here we introduce a method for inferring the spread of a beneficial allele across a landscape using two-dimensional partial differential equations. Unlike previous approaches, our framework can handle time-stamped ancient samples, as well as genotype likelihoods and pseudohaploid sequences from low-coverage genomes. We apply the method to a panel of published ancient West Eurasian genomes to produce dynamic maps showcasing the inferred spread of candidate beneficial alleles over time and space. We also provide estimates for the strength of selection and diffusion rate for each of these alleles. Finally, we high-light possible avenues of improvement for accurately tracing the spread of beneficial alleles in more complex scenarios.
U2 - 10.7554/ELIFE.73767
DO - 10.7554/ELIFE.73767
M3 - Journal article
C2 - 36537881
AN - SCOPUS:85144589966
VL - 11
JO - eLife
JF - eLife
SN - 2050-084X
M1 - e73767
ER -
ID: 340366668