Articles producció científica> Enginyeria Química

Computational Tools to Facilitate Early Warning of New Emerging Risk Chemicals

  • Identification data

    Identifier: imarina:9390026
    Authors:
    Tariq, FarinaAhrens, LutzAlygizakis, Nikiforos AAudouze, KarineBenfenati, EmilioCarvalho, Pedro NChelcea, IoanaKarakitsios, SpyrosKarakoltzidis, AchilleasKumar, VikasMora Lagares, LiadysSarigiannis, DimosthenisSelvestrel, GianlucaTaboureau, OlivierVorkamp, KatrinAndersson, Patrik L
    Abstract:
    Innovative tools suitable for chemical risk assessment are being developed in numerous domains, such as non-target chemical analysis, omics, and computational approaches. These methods will also be critical components in an efficient early warning system (EWS) for the identification of potentially hazardous chemicals. Much knowledge is missing for current use chemicals and thus computational methodologies complemented with fast screening techniques will be critical. This paper reviews current computational tools, emphasizing those that are accessible and suitable for the screening of new and emerging risk chemicals (NERCs). The initial step in a computational EWS is an automatic and systematic search for NERCs in literature and database sources including grey literature, patents, experimental data, and various inventories. This step aims at reaching curated molecular structure data along with existing exposure and hazard data. Next, a parallel assessment of exposure and effects will be performed, which will input information into the weighting of an overall hazard score and, finally, the identification of a potential NERC. Several challenges are identified and discussed, such as the integration and scoring of several types of hazard data, ranging from chemical fate and distribution to subtle impacts in specific species and tissues. To conclude, there are many computational systems, and these can be used as a basis for an integrated computational EWS workflow that identifies NERCs automatically.
  • Others:

    Author, as appears in the article.: Tariq, Farina; Ahrens, Lutz; Alygizakis, Nikiforos A; Audouze, Karine; Benfenati, Emilio; Carvalho, Pedro N; Chelcea, Ioana; Karakitsios, Spyros; Karakoltzidis, Achilleas; Kumar, Vikas; Mora Lagares, Liadys; Sarigiannis, Dimosthenis; Selvestrel, Gianluca; Taboureau, Olivier; Vorkamp, Katrin; Andersson, Patrik L
    Department: Enginyeria Química
    URV's Author/s: Kumar, Vikas
    Keywords: Artificial intelligence (ai) Computational toxicology Early warning system (ews) Ecotoxicity Effect assessmen Effect assessment Exposure Exposure assessment Framework Model Multimedia New and emerging risk chemicals (nercs) Pollutio Prediction Qsar Risk assessment Substances Toxicity Water
    Abstract: Innovative tools suitable for chemical risk assessment are being developed in numerous domains, such as non-target chemical analysis, omics, and computational approaches. These methods will also be critical components in an efficient early warning system (EWS) for the identification of potentially hazardous chemicals. Much knowledge is missing for current use chemicals and thus computational methodologies complemented with fast screening techniques will be critical. This paper reviews current computational tools, emphasizing those that are accessible and suitable for the screening of new and emerging risk chemicals (NERCs). The initial step in a computational EWS is an automatic and systematic search for NERCs in literature and database sources including grey literature, patents, experimental data, and various inventories. This step aims at reaching curated molecular structure data along with existing exposure and hazard data. Next, a parallel assessment of exposure and effects will be performed, which will input information into the weighting of an overall hazard score and, finally, the identification of a potential NERC. Several challenges are identified and discussed, such as the integration and scoring of several types of hazard data, ranging from chemical fate and distribution to subtle impacts in specific species and tissues. To conclude, there are many computational systems, and these can be used as a basis for an integrated computational EWS workflow that identifies NERCs automatically.
    Thematic Areas: Chemical health and safety Environmental sciences Health, toxicology and mutagenesis Toxicology
    licence for use: https://creativecommons.org/licenses/by/3.0/es/
    Author's mail: vikas.kumar@urv.cat
    Author identifier: 0000-0002-9795-5967
    Record's date: 2024-11-16
    Papper version: info:eu-repo/semantics/publishedVersion
    Papper original source: Toxics. 12 (10): 736-
    APA: Tariq, Farina; Ahrens, Lutz; Alygizakis, Nikiforos A; Audouze, Karine; Benfenati, Emilio; Carvalho, Pedro N; Chelcea, Ioana; Karakitsios, Spyros; Kara (2024). Computational Tools to Facilitate Early Warning of New Emerging Risk Chemicals. Toxics, 12(10), 736-. DOI: 10.3390/toxics12100736
    Licence document URL: https://repositori.urv.cat/ca/proteccio-de-dades/
    Entity: Universitat Rovira i Virgili
    Journal publication year: 2024
    Publication Type: Journal Publications
  • Keywords:

    Chemical Health and Safety,Environmental Sciences,Health, Toxicology and Mutagenesis,Toxicology
    Artificial intelligence (ai)
    Computational toxicology
    Early warning system (ews)
    Ecotoxicity
    Effect assessmen
    Effect assessment
    Exposure
    Exposure assessment
    Framework
    Model
    Multimedia
    New and emerging risk chemicals (nercs)
    Pollutio
    Prediction
    Qsar
    Risk assessment
    Substances
    Toxicity
    Water
    Chemical health and safety
    Environmental sciences
    Health, toxicology and mutagenesis
    Toxicology
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