NOT JUST ANOTHER MIXED STOCK ANALYSIS: GREEN TURTLES OF ESPIRITO SANTO, BRAZIL
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2010-01-30
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https://www.tamar.org.br/publicacoes_html/pdf/2010/2010_Not_just_another_mixed_stock_analysis.pdf
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n the Southwestern Atlantic Ocean, sea turtles
are exposed to myriad threats including disease, fisheries
bycatch, and industrial or coastal development, but protected by
effective conservation organizations. In Espírito Santo, Brazil,
green turtles (Chelonia mydas) with relatively high incidence of
fibropapillomatosis tumors routinely strand in the vicinity of the
state capital, Vitória, a highly urbanized area that encompasses
the effluent discharge channel of a local steel plant. This is also a
particularly interesting population because of its relative
proximity to the regionally important Trindade Island rookery,
whose feeding grounds have not been convincingly identified to
date. To investigate the population distribution of the at-risk
turtles, we sequenced a segment of the mitochondrial control
region (862 bp; n = 132). Eight mtDNA haplotypes were revealed,
of which the most common were CMA-08 and CMA-05. Haplotypes
CMA-06 and CMA-09 were each found in six individuals, and rare
haplotypes CMA-03, CMA-10, CMA-23, and CMA-32 were also
detected. Two kinds of “many-to-many” mixed stock analyses
were carried out, taking into account or alternately disregarding
source nesting population size. The same approach was taken
with traditional MSAs (“one-to-many”), and the main differences
between the "one-to-many" and "many-to-many" results are
reported. The analyses that included population size and all
available data were most consistent with expectations. We
recommend caution when employing different mixed stock
analysis methods, and emphasize the importance of exploring
alternate ways of investigating the origins of mixed stocks,
including modeling approaches. These data will provide insight
into population isolation and conservation priorities necessary to
establish whether areas should be managed as independent units
or as regional populations, and will clarify questions of scale in
conservation and management, providing a scientific basis for
conservation prioritization.