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A method for improving predictive modeling by taking into account lag time: Example of selenium bioaccumulation in a flowing system

机译:通过考虑滞后时间来改进预测模型的方法:流动系统中硒生物富集的示例

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For bioaccumulative substances, efforts to predict concentrations in organisms at upper trophic levels, based on measurements of environmental exposure, have been confounded by the appreciable but hitherto unknown amount of time it may take for bioaccumulation to occur through various pathways and across several trophic transfers. The study summarized here demonstrates an objective method of estimating this lag time by testing a large array of potential lag times for selenium bioaccumulation, selecting the lag that provides the best regression between environmental exposure (concentration in ambient water) and concentration in the tissue of the target organism. Bioaccumulation lag is generally greater for organisms at higher trophic levels, reaching times of more than a year in piscivorous fish. Predictive modeling of bioaccumulation is improved appreciably by taking into account this lag. More generally, the method demonstrated here may improve the accuracy of predictive modeling in a wide variety of other cause-effect relationships in which lag time is substantial but inadequately known, in disciplines as diverse as climatology (e.g., the effect of greenhouse gases on sea levels) and economics (e.g., the effects of fiscal stimulus on employment). Published by Elsevier B.V.
机译:对于生物蓄积性物质,基于对环境暴露的测量来预测较高营养级别的生物体浓度的努力与通过各种途径和多种营养转移发生的生物蓄积所需的可观但迄今未知的时间混淆了。此处总结的研究通过测试硒生物累积的大量潜在滞后时间,选择能在环境暴露(环境水中的浓度)和组织中的浓度之间提供最佳回归的滞后来证明估算滞后时间的客观方法。目标生物。营养水平较高的生物体的生物积累滞后通常更大,在食鱼鱼类中达到一年以上的时间。考虑到这一滞后,可大大改善生物蓄积的预测模型。更一般地说,在气候学等多种学科(例如温室气体对海洋的影响)中,此处展示的方法可以在许多其他因果关系中提高预测模型的准确性,在这些因果关系中,滞后时间很长,但人们所知不多。水平)和经济学(例如,财政刺激对就业的影响)。由Elsevier B.V.发布

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