Towards an alternative to nano-QSAR for nanoparticle toxicity ranking in case of small datasets

Valérie Forest, Jean François Hochepied, Lara Leclerc, Adeline Trouvé, Khalil Abdelkebir, Gwendoline Sarry, Vincent Augusto, Jérémie Pourchez

Research output: Contribution to journalArticlepeer-review

Abstract

Statistical analysis approaches have been developed to predict the biological response to nanoparticles, especially quantitative structure–activity relationship (QSAR) models. But one major limitation remains the quantitative lack of data to build accurate models. The aim of this study was to investigate if simple alternative mathematical models could rank nanoparticles in a very binary way (i.e., toxic or not) in case of small dataset. We synthesized and characterized 25 nanoparticles from 6 metal (hydr)oxide families with particle size and shape tuning. We assessed their toxicity on RAW 264.7 cells and investigated relationships with both physicochemical and dimensional descriptors. A simple partial least square (PLS) regression analysis allowed ranking nanoparticles with respect to their toxicity, without false-negative results. But this model was not predictive due to the specific response of each family to dimensional parameters variations. A classification tree extracted the same main bulk descriptor as PLS, but interestingly showed the relevance of dimensional descriptors for the second and third node. We thus recommend the development of family-specific models and propose the combination of these two simple methods as pre-screening tools, a compromise to bridge the gap between case-by-case studies (expensive and time-consuming) and sophisticated nano-QSAR models (not suitable for small datasets).

Original languageEnglish
Article number95
JournalJournal of Nanoparticle Research
Volume21
Issue number5
DOIs
Publication statusPublished - 1 May 2019
Externally publishedYes

Keywords

  • Decision tree approach
  • Nanodescriptors
  • Nanoparticles
  • Nanotoxicology
  • Ranking
  • Regression analysis
  • Small datasets

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