2022
DOI: 10.1371/journal.pone.0274245
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Saving the sea cucumbers: Using population genomic tools to inform fishery and conservation management of the Fijian sandfish Holothuria (Metriatyla) scabra

Abstract: The sea cucumber Holothuria (Metriatyla) scabra, known as sandfish, is a high-value tropical echinoderm central to the global bêche-de-mer (BDM) trade. This species has been heavily exploited across its natural range, with overharvesting and ineffective fishery management leaving stocks in the Pacific region heavily depleted. In Fiji, sandfish stocks have not recovered since a 1988 harvest ban, with surveys reporting declining populations and recruitment failure. Therefore, to inform fishery management policy … Show more

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Cited by 8 publications
(14 citation statements)
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“…Particle dispersal modelling was used to investigate potential larval transport pathways between and among the 16 sites at which sandfish were sampled, and to evaluate population connectivity. In summary, an approach optimised for H. scabra populations in Fiji as per Brown et al (2022) was utilised, employing the DisperGPU particle model which simulated dispersal (https://github.com/ CyprienBosserelle/DisperGPU); and the HYbrid Coordinate Ocean Model (HYCOM: https://www.hycom.org), which provided hindcast current velocity data and hydrodynamic forcing to drive DisperGPU. Sandfish larvae were simulated as particles seeded into defined polygons (seagrass bed area extents as proxies for sandfish habitat for each sampling site, which were extracted from Allen Coral Atlas data: https://allencoralatlas.org).…”
Section: Model Design and Simulation Approachmentioning
confidence: 99%
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“…Particle dispersal modelling was used to investigate potential larval transport pathways between and among the 16 sites at which sandfish were sampled, and to evaluate population connectivity. In summary, an approach optimised for H. scabra populations in Fiji as per Brown et al (2022) was utilised, employing the DisperGPU particle model which simulated dispersal (https://github.com/ CyprienBosserelle/DisperGPU); and the HYbrid Coordinate Ocean Model (HYCOM: https://www.hycom.org), which provided hindcast current velocity data and hydrodynamic forcing to drive DisperGPU. Sandfish larvae were simulated as particles seeded into defined polygons (seagrass bed area extents as proxies for sandfish habitat for each sampling site, which were extracted from Allen Coral Atlas data: https://allencoralatlas.org).…”
Section: Model Design and Simulation Approachmentioning
confidence: 99%
“…Nowland et al (2017) utilised 8-10 microsatellite loci to examine wild sandfish sampled from 10 sites in Papua New Guinea (PNG) and 2 sites in Northern Australia, and detected differentiation between both Australian and all PNG sites (≥1,000 km apart), as well as between the two Australian locations (~1000 km apart). Other genetic marker types including allozymes (Uthicke and Benzie, 2001;Uthicke and Purcell, 2004), the mitochondrial CO1 gene (Uthicke et al, 2010) and simple sequence repeats (Sembiring et al, 2022) have also been used to investigate sandfish genetic structure at various Indo-Pacific sites (Brown et al, 2022). Uthicke and Benzie (2001) reported the presence of discrete genetic units between northern Australia and the Solomon Islands (~1,600 km apart), while Uthicke and Purcell (2004) also detected genetic structure between populations in Bali, Indonesia; 2 sites in northern Australia (Knocker Bay and Torres Strait); 2 sites in eastern Australia (Upstart and Hervey Bays); 9 sites in New Caledonia and 1 site in the Solomon Islands (located 500 to >4,200 km apart).…”
Section: Genetic Structurementioning
confidence: 99%
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