Literature DB >> 34411315

Estimating the dispersal of Lepeophtheirus salmonis sea lice within and among Atlantic salmon sites of the Bay of Fundy, New Brunswick.

Marianne I Parent1, Henrik Stryhn1, K Larry Hammell1, Mark D Fast2, Jon Grant3, Raphaël Vanderstichel1,4.   

Abstract

The objective of this study was to estimate the impact of infestation pressures on the abundance of the parasitic sea louse, Lepeophtheirus salmonis, in the Bay of Fundy, New Brunswick (NB), Canada, using the Fish-iTrends database for the years 2009-2018. Infestation pressures were calculated as time-lagged weighted averages of the abundance of adult female (AF) sea lice within a site (internal infestation pressure: IIP) and among sites (external infestation pressure: EIP). The EIP weights were calculated from seaway distances among sites and a Gaussian kernel density for bandwidths of 5 to 60 km. The EIP with a bandwidth of 10 km had the best fit, as determined with Akaike's information criterion, and historical AF sea lice abundance. This estimated dispersal distance of 10 km was similar to previous studies in Norway, Scotland and in New Brunswick. The infestation pressures estimated from empirical AF sea lice abundance within and among sites significantly increased the abundance of AF sea lice (p < .001). This study concludes that sea lice burdens within Atlantic salmon farms in the Bay of Fundy, NB, are affected by within site management and could be improved by synchronizing treatments between sites.
© 2021 The Authors. Journal of Fish Diseases published by John Wiley & Sons Ltd.

Entities:  

Keywords:  zzm321990Lepeophtheirus salmoniszzm321990; Atlantic salmon; Fish-iTrends; aquatic epidemiology; infestation pressure; sea lice

Mesh:

Year:  2021        PMID: 34411315      PMCID: PMC9291781          DOI: 10.1111/jfd.13511

Source DB:  PubMed          Journal:  J Fish Dis        ISSN: 0140-7775            Impact factor:   2.580


  34 in total

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9.  Modelling sea lice dispersion under varying environmental forcing in a Scottish sea loch.

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10.  The Use of Kernel Density Estimation With a Bio-Physical Model Provides a Method to Quantify Connectivity Among Salmon Farms: Spatial Planning and Management With Epidemiological Relevance.

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  1 in total

1.  Estimating the dispersal of Lepeophtheirus salmonis sea lice within and among Atlantic salmon sites of the Bay of Fundy, New Brunswick.

Authors:  Marianne I Parent; Henrik Stryhn; K Larry Hammell; Mark D Fast; Jon Grant; Raphaël Vanderstichel
Journal:  J Fish Dis       Date:  2021-08-19       Impact factor: 2.580

  1 in total

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