Nanotoxicology data for tools: a literature review.

Journal: Nanotoxicology
Published Date:

Abstract

The exercise of non-testing approaches in nanoparticles (NPs) hazard assessment is necessary for the risk assessment, considering cost and time efficiency, to identify, assess, and classify potential risks. One strategy for investigating the toxicological properties of a variety of NPs is by means of computational tools that decode how nano-specific features relate to toxicity and enable its prediction. This literature review records systematically the data used in published studies that predict nano (eco)-toxicological endpoints using machine learning models. Instead of seeking mechanistic interpretations this review maps the pathways followed, involving biological features in relation to NPs exposure, their physico-chemical characteristics and the most commonly predicted outcomes. The results, derived from published research of the last decade, are summarized visually, providing prior-based data mining paradigms to be readily used by the nanotoxicology community in computational studies.

Authors

  • Irini Furxhi
    Transgero Limited, Cullinagh, Newcastle West, Co. Limerick, Ireland; Dept. of Accounting and Finance, Kemmy Business School, University of Limerick, V94PH93, Ireland. Electronic address: Irini.furxhi@transgero.eu.
  • Finbarr Murphy
    Dept. of Accounting and Finance, Kemmy Business School, University of Limerick, V94PH93, Ireland. Electronic address: finbarr.murphy@ul.ie.
  • Martin Mullins
    Dept. of Accounting and Finance, Kemmy Business School, University of Limerick, V94PH93, Ireland. Electronic address: martin.mullins@ul.ie.
  • Athanasios Arvanitis
    Department of Mechanical Engineering, Environmental Informatics Research Group, Aristotle University of Thessaloniki, Thessaloniki, Greece.
  • Craig A Poland
    ELEGI/Colt Laboratory, Queen's Medical Research Institute, University of Edinburgh, Edinburgh, Scotland, United Kingdom. Electronic address: craig.poland@ed.ac.uk.