Zeitschriftenaufsatz
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2016
Estimating the Effective Population Size from Temporal Allele Frequency Changes in Experimental Evolution
Autor:in
Jonas, Agnes; Taus, Thomas; Kosiol, Carolin; Schlötterer, Christian; Futschik, Andreas
Publikationen als Autor:in / Herausgeber:in der Vetmeduni
Journal
Abstrakt
The effective population size (N-e) is a major factor determining allele frequency changes in natural and experimental populations. Temporal methods provide a powerful and simple approach to estimate short-term N-e: They use allele frequency shifts between temporal samples to calculate the standardized variance, which is directly related to N-e: Here we focus on experimental evolution studies that often rely on repeated sequencing of samples in pools (Pool-seq). Pool-seq is cost-effective and often outperforms individual-based sequencing in estimating allele frequencies, but it is associated with atypical sampling properties: Additional to sampling individuals, sequencing DNA in pools leads to a second round of sampling, which increases the variance of allele frequency estimates. We propose a new estimator of N-e; which relies on allele frequency changes in temporal data and corrects for the variance in both sampling steps. In simulations, we obtain accurate N-e estimates, as long as the drift variance is not too small compared to the sampling and sequencing variance. In addition to genome-wide N-e estimates, we extend our method using a recursive partitioning approach to estimate N-e locally along the chromosome. Since the type I error is controlled, our method permits the identification of genomic regions that differ significantly in their N-e estimates. We present an application to Pool-seq data from experimental evolution with Drosophila and provide recommendations for whole-genome data. The estimator is computationally efficient and available as an R package at https://github.com/ThomasTaus/Nest.
Schlagwörter
effective population size; genetic drift; Pool-seq; experimental evolution
Dokumententyp
Originalarbeit
CC Lizenz
CCBY
Open Access Type
Hybrid
ISSN/eISSN
0016-6731 - 1943-2631
WoS ID
PubMed ID