| Literature DB >> 27286974 |
Gilles Durrieu1, Quang-Khoai Pham2, Anne-Sophie Foltête3, Valérie Maxime3, Ion Grama4, Véronique Le Tilly3, Hélène Duval3, Jean-Marie Tricot4, Chiraz Ben Naceur3, Olivier Sire3.
Abstract
Water quality can be evaluated using biomarkers such as tissular enzymatic activities of endemic species. Measurement of molluscs bivalves activity at high frequency (e.g., valvometry) during a long time period is another way to record the animal behavior and to evaluate perturbations of the water quality in real time. As the pollution affects the activity of oysters, we consider the valves opening and closing velocities to monitor the water quality assessment. We propose to model the huge volume of velocity data collected in the framework of valvometry using a new nonparametric extreme values statistical model. The objective is to estimate the tail probabilities and the extreme quantiles of the distribution of valve closing velocity. The tail of the distribution function of valve closing velocity is modeled by a Pareto distribution with parameter 𝜃 t,τ , beyond a threshold τ according to the time t of the experiment. Our modeling approach reveals the dependence between the specific activity of two enzymatic biomarkers (Glutathione-S-transferase and acetylcholinesterase) and the continuous recording of oyster valve velocity, proving the suitability of this tool for water quality assessment. Thus, valvometry allows in real-time in situ analysis of the bivalves behavior and appears as an effective early warning tool in ecological risk assessment and marine environment monitoring.Entities:
Keywords: Acetylcholinesterase (AChE); Crassostrea gigas; Extreme conditional quantile; Glutathione-S-transferase (GST); Marine environment biomonitoring; Nonparametric estimation; Valvometry
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Year: 2016 PMID: 27286974 DOI: 10.1007/s10661-016-5403-3
Source DB: PubMed Journal: Environ Monit Assess ISSN: 0167-6369 Impact factor: 2.513