Optimizing large-scale biodiversity sampling effort: toward an unbalanced survey design.
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Date
2021Author
Montes, Enrique
Lefcheck, Jonathan S.
Guerra-Castro, Edlin
Klein, Eduardo
Kavanaugh, Maria T.
de Azevedo Mazzuco, Ana Carolina
Bigatti, Gregorio
Cordeiro, Cesar A.M.M.
Simoes, Nuno
Macaya, Erasmo C.
Moity, Nicolas
Londoño-Cruz, Edgardo
Helmuth, Brian
Choi, Francis
Soto, Eulogio H.
Miloslavich, Patricia
Muller-Karger, Frank E.
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Show full item recordAbstract
Acquiring marine biodiversity data is difficult, costly, and timeconsuming,
making it challenging to understand the distribution and abundance of life
in the ocean. Historically, approaches to biodiversity sampling over large geographic
scales have advocated for equivalent effort across multiple sites to minimize comparative
bias. When effort cannot be equalized, techniques such as rarefaction have been
applied to minimize biases by reverting diversity estimates to equivalent numbers of
samples or individuals. This often results in oversampling and wasted resources or
inaccurately characterized communities due to undersampling. How, then, can we better
determine an optimal survey design for characterizing species richness and community
composition across a range of conditions and capacities without compromising
taxonomic resolution and statistical power? Researchers in the Marine Biodiversity
Observation Network Pole to Pole of the Americas (MBON Pole to Pole) are surveying
.....
Journal
OceanographyVolume
34Issue
2Page Range
pp.80-91Document Language
enSustainable Development Goals (SDG)
14.aEssential Ocean Variables (EOV)
N/ADOI Original
https://doi.org/10.5670/oceanog.2021.216Citation
Montes, E., Lefcheck, J.S., Guerra-Castro, E., Klein, E., Kavanaugh, M.T., et al (2021) Optimizing large-scale biodiversity sampling effort: toward an unbalanced survey design. Oceanography, 34(2), pp.80–91. DOI: https://doi.org/10.5670/ oceanog.2021.216.Collections
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