A continuous in silico learning strategy to identify safety liabilities in compounds used in the leather and textile industry

被引:0
|
作者
Eric March-Vila
Giacomo Ferretti
Emma Terricabras
Inés Ardao
José Manuel Brea
María José Varela
Álvaro Arana
Juan Andrés Rubiolo
Ferran Sanz
María Isabel Loza
Laura Sánchez
Héctor Alonso
Manuel Pastor
机构
[1] Hospital del Mar Medical Research Institute (IMIM),Department of Medicine and Life Sciences, Research Programme on Biomedical Informatics (GRIB)
[2] Universitat Pompeu Fabra,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)
[3] University of Santiago de Compostela,Department of Zoology, Genetics and Physical Anthropology
[4] Universidad de Santiago de Compostela,Preclinical Animal Models Group
[5] Health Research Institute of Santiago de Compostela (IDIS),Department of Sustainability
[6] INDITEX,undefined
来源
Archives of Toxicology | 2023年 / 97卷
关键词
QSAR; Read across; Leather and textile industry; Computational toxicology; Machine learning;
D O I
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中图分类号
学科分类号
摘要
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.
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页码:1091 / 1111
页数:20
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