Quantifying population genetic differentiation from next-generation sequencing data

Matteo Fumagalli, Filipe Jorge Garrett Vieira, Thorfinn Sand Korneliussen, Tyler Linderoth, Emilia Huerta-Sánchez, Anders Albrechtsen, Rasmus Nielsen

108 Citations (Scopus)

Abstract

Over the past few years, new high-throughput DNA sequencing technologies have dramatically increased speed and reduced sequencing costs. However, the use of these sequencing technologies is often challenged by errors and biases associated with the bioinformatical methods used for analyzing the data. In particular, the use of naïve methods to identify polymorphic sites and infer genotypes can inflate downstream analyses. Recently, explicit modeling of genotype probability distributions has been proposed as a method for taking genotype call uncertainty into account. Based on this idea, we propose a novel method for quantifying population genetic differentiation from next-generation sequencing data. In addition, we present a strategy for investigating population structure via principal components analysis. Through extensive simulations, we compare the new method herein proposed to approaches based on genotype calling and demonstrate a marked improvement in estimation accuracy for a wide range of conditions. We apply the method to a large-scale genomic data set of domesticated and wild silkworms sequenced at low coverage. We find that we can infer the fine-scale genetic structure of the sampled individuals, suggesting that employing this new method is useful for investigating the genetic relationships of populations sampled at low coverage.

Original languageEnglish
JournalGenetics
Volume195
Issue number3
Pages (from-to)979-992
Number of pages14
ISSN0016-6731
DOIs
Publication statusPublished - Nov 2013

Fingerprint

Dive into the research topics of 'Quantifying population genetic differentiation from next-generation sequencing data'. Together they form a unique fingerprint.

Cite this