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Toward routine, DNA-based detection methods for marine pests

期刊

BIOTECHNOLOGY ADVANCES
卷 28, 期 6, 页码 706-714

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.biotechadv.2010.05.018

关键词

Marine pests; DNA; Detection; Molecular technologies; Specific diagnosis; Genetic markers; Polymerase chain reaction (PCR); Hybridisation

资金

  1. Australian Department of Environment, Water, Heritage and Arts, Primary Industries and Resources - South Australia
  2. Adelaide and Mount Lofty Ranges Natural Resources Management Board
  3. Marine Innovation South Australia (MISA), an initiative of the South Australian Government

向作者/读者索取更多资源

Marine pest incursions can cause significant ongoing damage to aquaculture, biodiversity, fisheries habitat, infrastructure and social amenity. They represent a significant and ongoing economic burden. Marine pests can be introduced by several vectors including aquaculture, aquarium trading, commercial shipping, fishing, floating debris, mining activities and recreational boating. Despite the inherent risks, there is currently relatively little routine surveillance of marine pest species conducted in the majority of countries worldwide. Accurate and rapid identification of marine pest species is central to early detection and management. Traditional techniques (e.g. physical sampling and sorting), have limitations, which has motivated some progress towards the development of molecular diagnostic tools. This review provides a brief account of the techniques traditionally used for detection and describes developments in molecular-based methods for the detection and surveillance of marine pest species. Recent advances provide a platform for the development of practical, specific, sensitive and rapid diagnosis and surveillance tools for marine pests for use in effective prevention and control strategies. Crown Copyright (C) 2010 Published by Elsevier Inc. All rights reserved.

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