Data from: Integrating machine learning with otolith isoscapes: reconstructing connectivity of a marine fish over four decades
Stable isotopes are an important tool to uncover animal migration. Geographic natal assignments often require categorizing the spatial domain through a nominal approach, which can introduce bias given the continuous nature of these tracers. Stable isotopes predicted over a spatial gradient (i.e., is...
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Zusammenfassung: | Stable isotopes are an important tool to uncover animal migration.
Geographic natal assignments often require categorizing the spatial domain
through a nominal approach, which can introduce bias given the continuous
nature of these tracers. Stable isotopes predicted over a spatial gradient
(i.e., isoscapes) allow a probabilistic and continuous assignment of
origin across space, although applications to marine organisms remain
limited. We present a new framework that integrates nominal and continuous
assignment approaches by (1) developing a machine-learning multi-model
ensemble classifier using Bayesian model averaging (nominal); and (2)
integrating nominal predictions with continuous isoscapes to estimate the
probability of origin across the spatial domain (continuous). We applied
this integrated framework to predict the geographic origin of the
Northwest Atlantic mackerel (Scomber scombrus), a migratory pelagic fish
comprised of northern and southern components that have distinct spawning
sites off Canada (northern contingent) and the US (southern contingent),
and seasonally overlap in US fished regions. The nominal approach based on
otolith carbon and oxygen stable isotopes (δ13C/δ18O) yielded high
contingent classification accuracy (84.9%). Contingent assignment of
unknown-origin samples revealed prevalent, yet highly varied contingent
mixing levels (12.5–83.7%) within the US waters over four decades
(1975–2019). Nominal predictions were integrated into mackerel-specific
otolith oxygen isoscapes developed independently for Canadian and US
waters. The combined approach identified geographic nursery hotspots in
known spawning sites, but also detected geographic shifts over
multi-decadal time scales. This framework can be applied to other marine
species to understand migration and connectivity at high spatial
resolution, relevant to management of unit stocks in fisheries and other
conservation assessments. |
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DOI: | 10.5061/dryad.b8gtht7gr |