Irstea, UR RiverLy, Centre de Lyon-Villeurbanne, 5 Avenue de la Doua, CS20244, 69625, Villeurbanne, Cedex, France.
Univ Lyon, Université Lyon 1, CNRS, Laboratoire de Biométrie et Biologie Evolutive UMR5558, F-69622, Villeurbanne, France.
Ecotoxicol Environ Saf. 2019 Sep 30;180:33-42. doi: 10.1016/j.ecoenv.2019.04.080. Epub 2019 May 3.
Toxicokinetic (TK) models are relevant and widely used to predict chemical concentrations in biological organisms. The importance of dietary uptake for aquatic invertebrates has been increasingly assessed in recent years. However, the model parameters are estimated on limited specific laboratory data sets that are bounded by several uncertainties. The aim of this study was to implement a Bayesian framework for simultaneously estimating the parameters of a generic TK model for benthic invertebrate species from all data collected. We illustrate our approach on the bioaccumulation of PCB153 by two species with different life traits and therefore exposure routes: Chironomus riparius larvae exposed to spiked sediment for 7 days and Gammarus fossarum exposed to spiked sediment and/or leaves for 7 days and then transferred to a clean media for 7 more days. The TK models assuming first-order kinetics were fitted to the data using Bayesian inference. The median model predictions and their 95% credibility intervals showed that the model fit the data well. From a methodological point of view, this paper illustrates that simultaneously estimating all model parameters from all available data by Bayesian inference, while considering the correlation between parameters and different types of data, is a real added value for TK modeling. Moreover, we demonstrated the ability of a generic TK model considering uptake and elimination routes as modules to add according to the availability of the data measured. From an ecotoxicological point of view, we show differences in PCB153 bioaccumulation between chironomids and gammarids, explained by the different life traits of these two organisms.
毒代动力学 (TK) 模型是相关的,广泛用于预测生物体内化学物质的浓度。近年来,人们越来越重视水生无脊椎动物的饮食摄入。然而,模型参数是根据有限的特定实验室数据集进行估计的,这些数据集受到了若干不确定性的限制。本研究的目的是实施一种贝叶斯框架,以便从所有收集的数据中同时估计底栖无脊椎动物物种通用 TK 模型的参数。我们以两种具有不同生活特征和暴露途径的物种为例,展示了我们的方法,它们是:暴露于加标沉积物中 7 天的摇蚊幼虫和暴露于加标沉积物和/或叶片中 7 天,然后转移到清洁介质中再暴露 7 天的食藻钩虾。采用一阶动力学假设的 TK 模型通过贝叶斯推断拟合数据。基于中位数模型预测及其 95%可信度区间,表明模型能够很好地拟合数据。从方法论的角度来看,本文说明了通过贝叶斯推断同时从所有可用数据中估计所有模型参数,同时考虑参数之间以及不同类型数据之间的相关性,这是 TK 建模的真正附加值。此外,我们还展示了一种通用 TK 模型的能力,该模型将吸收和消除途径作为模块考虑,可以根据所测量数据的可用性进行添加。从生态毒理学的角度来看,我们展示了摇蚊和食藻钩虾之间 PCB153 生物积累的差异,这可以用这两种生物不同的生活特征来解释。