Abstract

BackgroundIdentification of selection signatures between populations is often an important part of a population genetic study. Leveraging high-throughput DNA sequencing larger sample sizes of populations with similar ancestries has become increasingly common. This has led to the need of methods capable of identifying signals of selection in populations with a continuous cline of genetic differentiation. Individuals from continuous populations are inherently challenging to group into meaningful units which is why existing methods rely on principal components analysis for inference of the selection signals. These existing methods require called genotypes as input which is problematic for studies based on low-coverage sequencing data.Materials and methodsWe have extended two principal component analysis based selection statistics to genotype likelihood data and applied them to low-coverage sequencing data from the 1000 Genomes Project for populations with European and East Asian ancestry to detect signals of selection in samples with continuous population structure.ResultsHere, we present two selections statistics which we have implemented in the PCAngsd framework. These methods account for genotype uncertainty, opening for the opportunity to conduct selection scans in continuous populations from low and/or variable coverage sequencing data. To illustrate their use, we applied the methods to low-coverage sequencing data from human populations of East Asian and European ancestries and show that the implemented selection statistics can control the false positive rate and that they identify the same signatures of selection from low-coverage sequencing data as state-of-the-art software using high quality called genotypes.ConclusionWe show that selection scans of low-coverage sequencing data of populations with similar ancestry perform on par with that obtained from high quality genotype data. Moreover, we demonstrate that PCAngsd outperform selection statistics obtained from called genotypes from low-coverage sequencing data without the need for ad-hoc filtering.

Highlights

  • Natural selection is the main driver of local adaptation

  • Here, we present two selections statistics which we have implemented in the PCAngsd framework

  • We show that selection scans of low-coverage sequencing data of populations with similar ancestry perform on par with that obtained from high quality genotype data

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Summary

Materials and methods

We assume that variable sites are diallelic and the major and minor allele are known such that genotypes are expected to follow a Binomial model. Where U[1:K ] represents the captured population structure of the individuals and V[1:K ] represents the scaled variant weights, while S[1:K] is the diagonal matrix of singular values This low-rank approximation along with the standardized matrix Y are all we need to estimate the two test statistics for low-coverage sequencing data. Restricting to the polymorphic sites in HQG data, we calculated genotype likelihoods (GL) from the low-coverage data using ANGSD with minimum mapping quality of 20 and minimum base quality of 30 [9]. In the PCA of the East Asian samples based on polymorphic sites identified from the low coverage sequencing data, PC2 correlates with the sequencing length of the samples (Additional file 1: Figure S7).

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