Department of Medicine and Life Sciences, Research Programme on Biomedical Informatics (GRIB), Hospital del Mar Medical Research Institute (IMIM), Universitat Pompeu Fabra, Barcelona, Spain.
Department of Pharmacology, Pharmacy and Pharmaceutical Technology, Innopharma Drug Screening and Pharmacogenomics Platform. BioFarma Research Group. Center for Research in Molecular Medicine and Chronic Diseases (CiMUS), University of Santiago de Compostela, Santiago de Compostela, Spain.
Arch Toxicol. 2023 Apr;97(4):1091-1111. doi: 10.1007/s00204-023-03459-7. Epub 2023 Feb 12.
There is a widely recognized need to reduce human activity's impact on the environment. Many industries of the leather and textile sector (LTI), being aware of producing a significant amount of residues (Keßler et al. 2021; Liu et al. 2021), are adopting measures to reduce the impact of their processes on the environment, starting with a more comprehensive characterization of the chemical risk associated with the substances commonly used in LTI. The present work contributes to these efforts by compiling and toxicologically annotating the substances used in LTI, supporting a continuous learning strategy for characterizing their chemical safety. This strategy combines data collection from public sources, experimental methods and in silico predictions for characterizing four different endpoints: CMR, ED, PBT, and vPvB. We present the results of a prospective validation exercise in which we confirm that in silico methods can produce reasonably good hazard estimations and fill knowledge gaps in the LTI chemical space. The proposed protocol can speed the process and optimize the use of resources including the lives of experimental animals, contributing to identifying potentially harmful substances and their possible replacement by safer alternatives, thus reducing the environmental footprint and impact on human health.
人们普遍认识到需要减少人类活动对环境的影响。皮革和纺织行业(LTI)的许多行业意识到会产生大量的残留物(Keßler 等人,2021 年;Liu 等人,2021 年),正在采取措施减少其工艺对环境的影响,首先是更全面地描述与 LTI 中常用物质相关的化学风险。本工作通过编译和毒理学注释 LTI 中使用的物质来为这些努力做出贡献,为表征其化学安全性提供持续学习策略。该策略结合了从公共资源、实验方法和计算预测中收集的数据,用于表征四个不同的终点:CMR、ED、PBT 和 vPvB。我们介绍了前瞻性验证练习的结果,其中我们证实计算方法可以产生合理良好的危害估计,并填补 LTI 化学空间中的知识空白。所提出的方案可以加速该过程并优化资源的利用,包括实验动物的生命,有助于识别潜在的有害物质及其可能被更安全的替代品替代,从而减少对环境的影响和对人类健康的影响。