Data from: Model selection as a tool for phylogeographic inference: an example from the willow Salix melanopsis
Phylogeographic inference has typically relied on analyses of data from one or a few genes to provide estimates of demography and population histories. While much has been learned from these studies, all phylogeographic analysis is conditioned on the data, and thus, inferences derived from data that...
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Zusammenfassung: | Phylogeographic inference has typically relied on analyses of data from
one or a few genes to provide estimates of demography and population
histories. While much has been learned from these studies, all
phylogeographic analysis is conditioned on the data, and thus, inferences
derived from data that represent a small sample of the genome are
unavoidably tenuous. Here, we demonstrate one approach for moving beyond
classic phylogeographic research. We use sequence capture probes and
Illumina sequencing to generate data from >400 loci in order to
infer the phylogeographic history of Salix melanopsis, a riparian willow
with a disjunct distribution in coastal and the inland Pacific Northwest.
We evaluate a priori phylogeographic hypotheses using coalescent models
for parameter estimation, and the results support earlier findings that
identified post-Pleistocene dispersal as the cause of the disjunction in
S. melanopsis. We also conduct a series of model selection exercises using
IMa2, Migrate-n and ∂a∂i. The resulting ranking of models indicates that
refugial dynamics were complex, with multiple regions in the inland
regions serving as the source for postglacial colonization. Our results
demonstrate that new sources of data and new approaches to data analysis
can rejuvenate phylogeographic research by allowing for the identification
of complex models that enable researchers to both identify and estimate
the most relevant parameters for a given system. |
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DOI: | 10.5061/dryad.sm635 |