机构:
Finnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, FinlandFinnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, Finland
Uusitalo, Laura
[1
]
Fernandes, Jose A.
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机构:
Plymouth Marine Lab, Prospect Pl, Plymouth PL1 3DH, Devon, EnglandFinnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, Finland
Fernandes, Jose A.
[2
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Bachiller, Eneko
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机构:
IMR, Pelag Fish Res Grp, POB 1870, N-5817 Bergen, NorwayFinnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, Finland
Bachiller, Eneko
[3
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Tasala, Siru
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机构:
Finnish Environm Inst SYKE, Marine Res Ctr, Erik Palmenin Aukio 1, Helsinki 00560, FinlandFinnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, Finland
Tasala, Siru
[4
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Lehtiniemi, Maiju
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Finnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, FinlandFinnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, Finland
Lehtiniemi, Maiju
[1
]
机构:
[1] Finnish Environm Inst SYKE, Marine Res Ctr, Mechelininkatu 34a,POB 140, Helsinki 00251, Finland
Semi-automated classification of zooplankton allows increasing the number of processed samples cost-effectively, albeit with a relatively limited taxonomic accuracy, partly because cost-efficiency trade-off but also due to technological limitations that might be overcome in the future. The present study tests the suitability of using a cost-efficient semi-automated classification methodology as a tool to assess zooplankton indicators for the purpose of the EU Marine Strategy Framework Directive, using samples collected in the Baltic Sea. In this brackish ecosystem the zooplankton individuals are small-bodied and therefore their identification with semi-automated classification is challenging. However, results show that semi-automated zooplankton classification provides a taxonomic classification level that is sufficient for a number of proposed indicators. This analysis also points out weakness of the methodology and proposes already proved solutions based on the latest development of these methodologies applied to zooplankton classification. As proved in the Baltic Sea, complementing manual zooplankton analyses with the semi-automated classification offers new advantages for marine environment assessment. (C) 2016 Elsevier Ltd. All rights reserved.