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1.
NanoImpact ; 22: 100317, 2021 04.
Article in English | MEDLINE | ID: mdl-35559974

ABSTRACT

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).


Subject(s)
Metal Nanoparticles , Nanostructures , Metal Nanoparticles/chemistry , Neural Networks, Computer , Oxides/chemistry , Silicon Dioxide
2.
Ecotoxicol Environ Saf ; 185: 109733, 2019 Dec 15.
Article in English | MEDLINE | ID: mdl-31580980

ABSTRACT

Presence of missing data points in datasets is among main challenges in handling the toxicological data for nanomaterials. As the processing of missing data is an important part of data analysis, we have introduced a read-across approach that uses a combination of supervised and unsupervised machine learning techniques to fill the missing values. A series of classification models (supervised learning) was developed to predict class label, and self-organizing map approach (unsupervised learning) was used to estimate relative distances between nanoparticles and refine results obtained during supervised learning. In this study, genotoxicity of 49 silicon and metal oxide nanoparticles in Ames and Comet tests. Collected literature data did not demonstrate significant variations related to the change of size including selected bulk materials. Genotoxicity-related features of nanomaterials were represented by ionic characteristics. General tendencies found in the current study were convincingly linked to known theories of genotoxic action at nano-level. Mechanisms of primary and secondary genotoxic effects were discussed in the context of developed models.


Subject(s)
DNA Damage , Metal Nanoparticles/toxicity , Models, Theoretical , Mutagens/toxicity , Unsupervised Machine Learning , Cell Line , Comet Assay , Humans , Metal Nanoparticles/classification , Mutagens/classification , Oxides/classification , Oxides/toxicity , Quantitative Structure-Activity Relationship , Salmonella typhimurium/genetics
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