Literature DB >> 32810339

Detecting selected haplotype blocks in evolve and resequence experiments.

Kathrin A Otte1, Christian Schlötterer1.   

Abstract

Shifting from the analysis of single nucleotide polymorphisms to the reconstruction of selected haplotypes greatly facilitates the interpretation of evolve and resequence (E&R) experiments. Merging highly correlated hitchhiker SNPs into haplotype blocks reduces thousands of candidates to few selected regions. Current methods of haplotype reconstruction from Pool-seq data need a variety of data-specific parameters that are typically defined ad hoc and require haplotype sequences for validation. Here, we introduce haplovalidate, a tool which detects selected haplotypes in Pool-seq time series data without the need for sequenced haplotypes. Haplovalidate makes data-driven choices of two key parameters for the clustering procedure, the minimum correlation between SNPs constituting a cluster and the window size. Applying haplovalidate to simulated E&R data reliably detects selected haplotype blocks with low false discovery rates. Importantly, our analyses identified a restriction of the haplotype block-based approach to describe the genomic architecture of adaptation. We detected a substantial fraction of haplotypes containing multiple selection targets. These blocks were considered as one region of selection and therefore led to underestimation of the number of selection targets. We demonstrate that the separate analysis of earlier time points can significantly increase the separation of selection targets into individual haplotype blocks. We conclude that the analysis of selected haplotype blocks has great potential for the characterization of the adaptive architecture with E&R experiments.
© The Authors. Molecular Ecology Resources published by John Wiley & Sons Ltd.

Entities:  

Keywords:  data-driven parameter choices; evolve and resequence; experimental evolution; haplotype reconstruction; replicated time series data; selection; sequencing of pooled individuals

Mesh:

Year:  2020        PMID: 32810339      PMCID: PMC7754423          DOI: 10.1111/1755-0998.13244

Source DB:  PubMed          Journal:  Mol Ecol Resour        ISSN: 1755-098X            Impact factor:   7.090


  45 in total

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4.  Accurate estimation of haplotype frequency from pooled sequencing data and cost-effective identification of rare haplotype carriers by overlapping pool sequencing.

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Authors:  Marek Bukowicki; Susanne U Franssen; Christian Schlötterer
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Authors:  James M Howie; Rupert Mazzucco; Thomas Taus; Viola Nolte; Christian Schlötterer
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Review 8.  Sequencing pools of individuals - mining genome-wide polymorphism data without big funding.

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Authors:  Francisco A Cubillos; Leopold Parts; Francisco Salinas; Anders Bergström; Eugenio Scovacricchi; Amin Zia; Christopher J R Illingworth; Ville Mustonen; Sebastian Ibstedt; Jonas Warringer; Edward J Louis; Richard Durbin; Gianni Liti
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10.  Inference of chromosomal inversion dynamics from Pool-Seq data in natural and laboratory populations of Drosophila melanogaster.

Authors:  Martin Kapun; Hester van Schalkwyk; Bryant McAllister; Thomas Flatt; Christian Schlötterer
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4.  Detecting selected haplotype blocks in evolve and resequence experiments.

Authors:  Kathrin A Otte; Christian Schlötterer
Journal:  Mol Ecol Resour       Date:  2020-09-06       Impact factor: 7.090

5.  The genetic architecture of temperature adaptation is shaped by population ancestry and not by selection regime.

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