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PMERGE: Computational filtering of paralogous sequences from RAD‐seq data
Authors:Praveen Nadukkalam Ravindran  Paul Bentzen  Ian R Bradbury  Robert G Beiko
Institution:1. Faculty of Computer Science, Dalhousie University, Halifax, NS, Canada;2. Marine Gene Probe Laboratory, Department of Biology, Dalhousie University, Halifax, NS, Canada;3. Salmonids Section, Science Branch, Department of Fisheries and Oceans Canada, St. John's, NL, Canada
Abstract:Restriction‐site associated DNA sequencing (RAD‐seq) can identify and score thousands of genetic markers from a group of samples for population‐genetics studies. One challenge of de novo RAD‐seq analysis is to distinguish paralogous sequence variants (PSVs) from true single‐nucleotide polymorphisms (SNPs) associated with orthologous loci. In the absence of a reference genome, it is difficult to differentiate true SNPs from PSVs, and their impact on downstream analysis remains unclear. Here, we introduce a network‐based approach, PMERGE that connects fragments based on their DNA sequence similarity to identify probable PSVs. Applying our method to de novo RAD‐seq data from 150 Atlantic salmon (Salmo salar) samples collected from 15 locations across the Southern Newfoundland coast allowed the identification of 87% of total PSVs identified through alignment to the Atlantic salmon genome. Removal of these paralogs altered the inferred population structure, highlighting the potential impact of filtering in RAD‐seq analysis. PMERGE is also applied to a green crab (Carcinus maenas) data set consisting of 242 samples from 11 different locations and was successfully able to identify and remove the majority of paralogous loci (62%). The PMERGE software can be run as part of the widely used Stacks analysis package.
Keywords:Atlantic salmon  paralogous sequence variants  RAD‐seq
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