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Hidden drivers of low-dose pharmaceutical pollutant mixtures revealed by the novel GSA-QHTS screening method

机译:新的GSA-QHTS筛选方法揭示了低剂量药物污染物混合物的隐性驱动因素

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摘要

The ecological impacts of emerging pollutants such as pharmaceuticals are not well understood. The lack of experimental approaches for the identification of pollutant effects in realistic settings (that is, low doses, complex mixtures, and variable environmental conditions) supports the widespread perception that these effects are often unpredictable. To address this, we developed a novel screening method (GSA-QHTS) that couples the computational power of global sensitivity analysis (GSA) with the experimental efficiency of quantitative high-throughput screening (QHTS). We present a case study where GSA-QHTS allowed for the identification of the main pharmaceutical pollutants (and their interactions), driving biological effects of low-dose complex mixtures at the microbial population level. The QHTS experiments involved the integrated analysis of nearly 2700 observations from an array of 180 unique low-dose mixtures, representing the most complex and data-rich experimental mixture effect assessment of main pharmaceutical pollutants to date. An ecological scaling-up experiment confirmed that this subset of pollutants also affects typical freshwater microbial community assemblages. Contrary to our expectations and challenging established scientific opinion, the bioactivity of the mixtures was not predicted by the null mixture models, and the main drivers that were identified by GSA-QHTS were overlooked by the current effect assessment scheme. Our results suggest that current chemical effect assessment methods overlook a substantial number of ecologically dangerous chemical pollutants and introduce a new operational framework for their systematic identification.
机译:对新兴污染物(如药品)的生态影响尚不十分了解。缺乏在现实环境中确定污染物影响的实验方法(即低剂量,复杂的混合物和可变的环境条件),支持了人们普遍认为这些影响通常是不可预测的。为了解决这个问题,我们开发了一种新颖的筛选方法(GSA-QHTS),该方法将全局灵敏度分析(GSA)的计算能力与定量高通量筛选(QHTS)的实验效率相结合。我们提供了一个案例研究,其中GSA-QHTS可以识别主要的药物污染物(及其相互作用),从而在微生物种群水平上推动低剂量复杂混合物的生物学效应。 QHTS实验涉及对来自180种独特的低剂量混合物的阵列中近2700个观察值的综合分析,代表了迄今为止最复杂和数据最丰富的主要药物污染物实验混合物效果评估。一项生态放大实验证实,这部分污染物也影响了典型的淡水微生物群落组合。与我们的期望和具有挑战性的既定科学观点相反,无效混合物模型并未预测混合物的生物活性,而目前的效果评估方案却忽略了由GSA-QHTS识别的主要驱动因素。我们的结果表明,当前的化学效果评估方法忽略了大量生态危险的化学污染物,并为其系统识别引入了新的操作框架。

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