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      Unbroken: RADseq remains a powerful tool for understanding the genetics of adaptation in natural populations

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          Abstract

          Recently, Lowry et al. addressed the ability of RADseq approaches to detect loci under selection in genome scans. While the authors raise important considerations, such as accounting for the extent of linkage disequilibrium in a study system, we strongly disagree with their overall view of the ability of RADseq to inform our understanding of the genetic basis of adaptation. The family of RADseq protocols has radically improved the field of population genomics, expanding by several orders of magnitude the number of markers available while substantially reducing the cost per marker. Researchers whose goal is to identify regions of the genome under selection must consider the LD of the experimental system; however, there is no magical LD cutoff below which researchers should refuse to use RADseq. Lowry et al. further made two major arguments: a theoretical argument that modeled the likelihood of detecting selective sweeps with RAD markers, and gross summaries based on an anecdotal collection of RAD studies. Unfortunately, their simulations were off by two orders of magnitude in the worst case, while their anecdotes merely showed that it is possible to get widely divergent densities of RAD tags for any particular experiment, either by design or due to experimental efficacy. We strongly argue that RADseq remains a powerful and efficient approach that provides sufficient marker density for studying selection in many natural populations. Given limited resources, we argue that researchers should consider a wide range of trade-offs among genomic techniques, in light of their study question and the power of different techniques to answer it.

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          Most cited references13

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          The genomic basis of adaptive evolution in threespine sticklebacks

          Summary Marine stickleback fish have colonized and adapted to innumerable streams and lakes formed since the last ice age, providing an exceptional opportunity to characterize genomic mechanisms underlying repeated ecological adaptation in nature. Here we develop a high quality reference genome assembly for threespine sticklebacks. By sequencing the genomes of 20 additional individuals from a global set of marine and freshwater populations, we identify a genome-wide set of loci that are consistently associated with marine-freshwater divergence. Our results suggest that reuse of globally-shared standing genetic variation, including chromosomal inversions, plays an important role in repeated evolution of distinct marine and freshwater sticklebacks, and in the maintenance of divergent ecotypes during early stages of reproductive isolation. Both coding and regulatory changes occur in the set of loci underlying marine-freshwater evolution, with regulatory changes likely predominating in this classic example of repeated adaptive evolution in nature.
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            Genotyping-by-sequencing in ecological and conservation genomics.

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              Breaking RAD: an evaluation of the utility of restriction site-associated DNA sequencing for genome scans of adaptation.

              Understanding how and why populations evolve is of fundamental importance to molecular ecology. Restriction site-associated DNA sequencing (RADseq), a popular reduced representation method, has ushered in a new era of genome-scale research for assessing population structure, hybridization, demographic history, phylogeography and migration. RADseq has also been widely used to conduct genome scans to detect loci involved in adaptive divergence among natural populations. Here, we examine the capacity of those RADseq-based genome scan studies to detect loci involved in local adaptation. To understand what proportion of the genome is missed by RADseq studies, we developed a simple model using different numbers of RAD-tags, genome sizes and extents of linkage disequilibrium (length of haplotype blocks). Under the best-case modelling scenario, we found that RADseq using six- or eight-base pair cutting restriction enzymes would fail to sample many regions of the genome, especially for species with short linkage disequilibrium. We then surveyed recent studies that have used RADseq for genome scans and found that the median density of markers across these studies was 4.08 RAD-tag markers per megabase (one marker per 245 kb). The length of linkage disequilibrium for many species is one to three orders of magnitude less than density of the typical recent RADseq study. Thus, we conclude that genome scans based on RADseq data alone, while useful for studies of neutral genetic variation and genetic population structure, will likely miss many loci under selection in studies of local adaptation.
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                Author and article information

                Journal
                Molecular Ecology Resources
                Mol Ecol Resour
                Wiley
                1755098X
                May 2017
                May 2017
                April 11 2017
                : 17
                : 3
                : 362-365
                Affiliations
                [1 ]Department of Animal Biology; University of Illinois at Urbana-Champaign; Urbana IL 61801 USA
                [2 ]Department of Biological Sciences; Institute for Bioinformatics and Evolutionary Studies; University of Idaho; 875 Perimeter Drive Moscow ID 83844 USA
                [3 ]Institut de Biologie Intégrative et des Systèmes (IBIS); Université Laval; Québec QC G1V 0A6 Canada
                [4 ]Department of Biology; Graduate Degree Program in Ecology; Colorado State University; Fort Collins CO 80523 USA
                [5 ]Department of Fish and Wildlife Sciences; University of Idaho; 875 Perimeter Drive MS 1136 Moscow ID 83844 USA
                [6 ]Division of Biological Sciences; University of Montana; Missoula MT 59812 USA
                Article
                10.1111/1755-0998.12669
                28319339
                7d0531fd-ce88-4ce5-b597-6764cedc18fc
                © 2017

                http://doi.wiley.com/10.1002/tdm_license_1

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