4.5 Article

Zeta potentials (ζ) of metal oxide nanoparticles: A meta-analysis of experimental data and a predictive neural networks modeling

期刊

NANOIMPACT
卷 22, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.impact.2021.100317

关键词

Toxicological profile; Zeta potential; Weight of evidence; Computational modeling; Metal oxide nanoparticles

资金

  1. European Union's Horizon 2020 Research and Innovation Program [814426]
  2. Foundation for Polish Science (FNP) [START 58.2019]
  3. National Science Foundation from CREST grant HRD [1547754]
  4. Dartmouth College
  5. Direct For Education and Human Resources
  6. Division Of Human Resource Development [1547754] Funding Source: National Science Foundation

向作者/读者索取更多资源

Zeta potential is crucial for estimating the surface charge and stability of nanomaterials, with theoretical methods commonly used for safety assessments. Inconsistencies in data measurements pose challenges for predictive modeling, emphasizing the need for data curation. A structure-property relationship model can predict zeta potential values under different environmental conditions.
Zeta potential is usually measured to estimate the surface charge and the stability of nanomaterials, as changes in these characteristics directly influence the biological activity of a given nanoparticle. Nowadays, theoretical methods are commonly used for a pre-screening safety assessments of nanomaterials. At the same time, the consistency of data on zeta potential measurements in the context of environmental impact is an important challenge. The inconsistency of data measurements leads to inaccuracies in predictive modeling. In this article, we report a new curated dataset of zeta potentials measured for 208 silica- and metal oxide nanoparticles in different media. We discuss the data curation framework for zeta potentials designed to assess the quality and usefulness of the literature data for further computational modeling. We also provide an analysis of specific trends for the datapoints harvested from different literature sources. In addition to that, we present for the first time a structure-property relationship model for nanoparticles (nano-SPR) that predicts values of zeta potential values measured in different environmental conditions (i.e., biological media and pH).

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