Combining predictive and analytical methods to elucidate pharmaceutical biotransformation in activated sludge†

IF 4.3 3区 环境科学与生态学 Q1 CHEMISTRY, ANALYTICAL
Leo Trostel, Claudia Coll, Kathrin Fenner and Jasmin Hafner
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引用次数: 0

Abstract

While man-made chemicals in the environment are ubiquitous and a potential threat to human health and ecosystem integrity, the environmental fate of chemical contaminants such as pharmaceuticals is often poorly understood. Biodegradation processes driven by microbial communities convert chemicals into transformation products (TPs) that may themselves have adverse ecological effects. The detection of TPs formed during biodegradation has been continuously improved thanks to the development of TP prediction algorithms and analytical workflows. Here, we contribute to this advance by (i) reviewing past applications of TP identification workflows, (ii) applying an updated workflow for TP prediction to 42 pharmaceuticals in biodegradation experiments with activated sludge, and (iii) benchmarking 5 different pathway prediction models, comprising 4 prediction models trained on different datasets provided by enviPath, and the state-of-the-art EAWAG pathway prediction system. Using the updated workflow, we could tentatively identify 79 transformation products for 31 pharmaceutical compounds. Compared to previous works, we have further automatized several steps that were previously performed by hand. By benchmarking the enviPath prediction system on experimental data, we demonstrate the usefulness of the pathway prediction tool to generate suspect lists for screening, and we propose new avenues to improve their accuracy. Moreover, we provide a well-documented workflow that can be (i) readily applied to detect transformation products in activated sludge and (ii) potentially extended to other environmental studies.

Abstract Image

结合预测和分析方法阐明活性污泥中的药物生物转化
虽然环境中的人造化学品无处不在,并对人类健康和生态系统的完整性构成潜在威胁,但人们对诸如药品等化学污染物的环境命运往往知之甚少。由微生物群落驱动的生物降解过程将化学品转化为转化产物(TPs),这些转化产物本身可能具有不利的生态效应。由于TP预测算法和分析工作流程的发展,对生物降解过程中形成的TP的检测不断提高。在这里,我们通过(i)回顾过去的TP识别工作流程的应用,(ii)将更新的TP预测工作流程应用于活性污泥生物降解实验中的42种药物,以及(iii)对5种不同的途径预测模型进行基准测试,包括在enviPath提供的不同数据集上训练的4种预测模型,以及最先进的EAWAG途径预测系统。利用更新后的工作流程,我们可以初步鉴定31种药物化合物的79个转化产物。与以前的工作相比,我们进一步自动化了以前手工执行的几个步骤。通过在实验数据上对enviPath预测系统进行基准测试,我们证明了路径预测工具在生成用于筛选的可疑列表方面的有用性,并提出了提高其准确性的新途径。此外,我们提供了一个记录良好的工作流程,可以(i)很容易地应用于检测活性污泥中的转化产物,(ii)有可能扩展到其他环境研究。
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来源期刊
Environmental Science: Processes & Impacts
Environmental Science: Processes & Impacts CHEMISTRY, ANALYTICAL-ENVIRONMENTAL SCIENCES
CiteScore
9.50
自引率
3.60%
发文量
202
审稿时长
1 months
期刊介绍: Environmental Science: Processes & Impacts publishes high quality papers in all areas of the environmental chemical sciences, including chemistry of the air, water, soil and sediment. We welcome studies on the environmental fate and effects of anthropogenic and naturally occurring contaminants, both chemical and microbiological, as well as related natural element cycling processes.
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