2018
DOI: 10.1111/eva.12659
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Recent advances in conservation and population genomics data analysis

Abstract: New computational methods and next‐generation sequencing (NGS) approaches have enabled the use of thousands or hundreds of thousands of genetic markers to address previously intractable questions. The methods and massive marker sets present both new data analysis challenges and opportunities to visualize, understand, and apply population and conservation genomic data in novel ways. The large scale and complexity of NGS data also increases the expertise and effort required to thoroughly and thoughtfully analyze… Show more

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Cited by 84 publications
(70 citation statements)
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References 144 publications
(221 reference statements)
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“…This fits more a probabilistic distribution as described by Fuentes‐Pardo and Ruzzante (). This is consistent with the findings of Hendricks et al () who reported that RAD‐seq data of coverage 1×, 2×, 5×, and 10× called using genotype likelihoods led to inconsistent affiliation of four North American passerine subspecies.…”
Section: Discussionsupporting
confidence: 92%
“…This fits more a probabilistic distribution as described by Fuentes‐Pardo and Ruzzante (). This is consistent with the findings of Hendricks et al () who reported that RAD‐seq data of coverage 1×, 2×, 5×, and 10× called using genotype likelihoods led to inconsistent affiliation of four North American passerine subspecies.…”
Section: Discussionsupporting
confidence: 92%
“…Despite attempts to limit the introduction of technical artefacts during library preparation and bioinformatic processing, SNP data sets require rigorous filtering because the inclusion of only a few incorrectly genotyped loci in a data set can create a significant, misleading signal (Davey et al, 2013;Li & Wren, 2014;Meirmans, 2015;Puritz, Matz, et al, 2014). This is especially important for Fst-outlier detection to determine loci potentially under selection because signal caused by genotyping error is likely to stand out in pattern and magnitude from the signal produced by the background SNP data (Hendricks et al, 2018;Xue et al, 2009 lane. In addition, every data set will be unique in terms of the number and quality of samples/sequencing runs, and differences in the protocols employed (e.g., enzyme combinations, targeted coverage) and this means that individual data sets will differ in terms of missing data, coverage, etc.…”
Section: Filterin G Snp Datamentioning
confidence: 99%
“…One of the major advantages of RAD-seq genotyping is that it captures rare variants that are often not covered by SNP chips in appropriate proportions (Eynard et al, 2015). Previous work has shown that imposing a strict MAF filter may significantly affect the estimate of relatedness coefficients (Eynard et al, 2015) and measures of genomic differentiation among populations (F ST , Hendricks et al, 2018), and may lead to inaccurate demographic inference (Nielsen et al, 2011). Removing rare alleles from data sets may also impede our ability to detect fine-scale patterns of connectivity and local adaptation (O'Leary, Puritz, Willis, Hollenbeck, & Portnoy, 2018).…”
Section: Impact Of Snp Genotyping and Filtering On Grm And Grm-basementioning
confidence: 99%