Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.

BACKGROUND: Many deep-sea benthic animals occur in patchy distributions separated by thousands of kilometres, yet because deep-sea habitats are remote, little is known about their larval dispersal. Our novel method simulates dispersal by combining data from the Argo array of autonomous oceanographic...

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Main Authors: Jon M Yearsley, Julia D Sigwart
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3152551?pdf=render
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spelling doaj-2709df5694b84a03a34d4302573c38962020-11-24T21:35:42ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0168e2306310.1371/journal.pone.0023063Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.Jon M YearsleyJulia D SigwartBACKGROUND: Many deep-sea benthic animals occur in patchy distributions separated by thousands of kilometres, yet because deep-sea habitats are remote, little is known about their larval dispersal. Our novel method simulates dispersal by combining data from the Argo array of autonomous oceanographic probes, deep-sea ecological surveys, and comparative invertebrate physiology. The predicted particle tracks allow quantitative, testable predictions about the dispersal of benthic invertebrate larvae in the south-west Pacific. PRINCIPAL FINDINGS: In a test case presented here, using non-feeding, non-swimming (lecithotrophic trochophore) larvae of polyplacophoran molluscs (chitons), we show that the likely dispersal pathways in a single generation are significantly shorter than the distances between the three known population centres in our study region. The large-scale density of chiton populations throughout our study region is potentially much greater than present survey data suggest, with intermediate 'stepping stone' populations yet to be discovered. CONCLUSIONS/SIGNIFICANCE: We present a new method that is broadly applicable to studies of the dispersal of deep-sea organisms. This test case demonstrates the power and potential applications of our new method, in generating quantitative, testable hypotheses at multiple levels to solve the mismatch between observed and expected distributions: probabilistic predictions of locations of intermediate populations, potential alternative dispersal mechanisms, and expected population genetic structure. The global Argo data have never previously been used to address benthic biology, and our method can be applied to any non-swimming larvae of the deep-sea, giving information upon dispersal corridors and population densities in habitats that remain intrinsically difficult to assess.http://europepmc.org/articles/PMC3152551?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jon M Yearsley
Julia D Sigwart
spellingShingle Jon M Yearsley
Julia D Sigwart
Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
PLoS ONE
author_facet Jon M Yearsley
Julia D Sigwart
author_sort Jon M Yearsley
title Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
title_short Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
title_full Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
title_fullStr Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
title_full_unstemmed Larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
title_sort larval transport modeling of deep-sea invertebrates can aid the search for undiscovered populations.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description BACKGROUND: Many deep-sea benthic animals occur in patchy distributions separated by thousands of kilometres, yet because deep-sea habitats are remote, little is known about their larval dispersal. Our novel method simulates dispersal by combining data from the Argo array of autonomous oceanographic probes, deep-sea ecological surveys, and comparative invertebrate physiology. The predicted particle tracks allow quantitative, testable predictions about the dispersal of benthic invertebrate larvae in the south-west Pacific. PRINCIPAL FINDINGS: In a test case presented here, using non-feeding, non-swimming (lecithotrophic trochophore) larvae of polyplacophoran molluscs (chitons), we show that the likely dispersal pathways in a single generation are significantly shorter than the distances between the three known population centres in our study region. The large-scale density of chiton populations throughout our study region is potentially much greater than present survey data suggest, with intermediate 'stepping stone' populations yet to be discovered. CONCLUSIONS/SIGNIFICANCE: We present a new method that is broadly applicable to studies of the dispersal of deep-sea organisms. This test case demonstrates the power and potential applications of our new method, in generating quantitative, testable hypotheses at multiple levels to solve the mismatch between observed and expected distributions: probabilistic predictions of locations of intermediate populations, potential alternative dispersal mechanisms, and expected population genetic structure. The global Argo data have never previously been used to address benthic biology, and our method can be applied to any non-swimming larvae of the deep-sea, giving information upon dispersal corridors and population densities in habitats that remain intrinsically difficult to assess.
url http://europepmc.org/articles/PMC3152551?pdf=render
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