作者
Tristan Cordier, Philippe Esling, Franck Lejzerowicz, Joana Visco, Amine Ouadahi, Catarina Martins, Tomas Cedhagen, Jan Pawlowski
发表日期
2017/8/15
期刊
Environmental science & technology
卷号
51
期号
16
页码范围
9118-9126
出版商
American Chemical Society
简介
Monitoring biodiversity is essential to assess the impacts of increasing anthropogenic activities in marine environments. Traditionally, marine biomonitoring involves the sorting and morphological identification of benthic macro-invertebrates, which is time-consuming and taxonomic-expertise demanding. High-throughput amplicon sequencing of environmental DNA (eDNA metabarcoding) represents a promising alternative for benthic monitoring. However, an important fraction of eDNA sequences remains unassigned or belong to taxa of unknown ecology, which prevent their use for assessing the ecological quality status. Here, we show that supervised machine learning (SML) can be used to build robust predictive models for benthic monitoring, regardless of the taxonomic assignment of eDNA sequences. We tested three SML approaches to assess the environmental impact of marine aquaculture using benthic …
引用总数
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