Data from: Testing the species–genetic diversity correlation in the Aegean archipelago: towards a haplotype-based macroecology?
A positive correlation between species and genetic diversity (SGDC) has been proposed, consistent with neutral predictions in macroecology. We assessed the SGDC in tenebrionid beetle communities of the Aegean archipelago on fifteen islands of different sizes, distances to mainland, and ages of isola...
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Zusammenfassung: | A positive correlation between species and genetic diversity (SGDC) has
been proposed, consistent with neutral predictions in macroecology. We
assessed the SGDC in tenebrionid beetle communities of the Aegean
archipelago on fifteen islands of different sizes, distances to mainland,
and ages of isolation. Alpha- and beta-diversity of species and haplotypes
were assessed using sequences of >1000 individuals (mitochondrial
Cytochrome Oxidase I and nuclear Muscular Protein 20) to test the SGDC. We
show that: (i) there is a strong species-area and haplotype-area
relationship; (ii) species richness in island communities is correlated
with intraspecific genetic diversity in the constituent species except
when island size or distance to mainland are factored out in partial
correlations; (iii) community similarity declines exponentially at an
increasing rate when calculated based on species, nuclear and mtDNA
haplotypes; and (iv) distance decay of community similarity is slower in
dispersive sand-dwelling lineages compared to less dispersive lineages
that are not sand-obligate. Taken together, these correlated patterns at
the species and haplotype level are consistent with individual-based
stochastic dispersal proposed by neutral theories of biodiversity. The
results also demonstrate the utility of haplotype data for exploring
macroecological patterns in poorly known biota and predicting large-scale
biodiversity patterns based on genetic inventories of local samples. |
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DOI: | 10.5061/dryad.8882 |