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      Using nano-QSAR to predict the cytotoxicity of metal oxide nanoparticles.

      Nature nanotechnology
      methods, Metals, Computer Simulation, Particle Size, metabolism, Algorithms, drug effects, Nanoparticles, Structure-Activity Relationship, Feasibility Studies, Quantitative Structure-Activity Relationship, toxicity, Microbial Viability, chemistry, Toxicity Tests, Escherichia coli, Lethal Dose 50, Metal Nanoparticles, Oxides, Nanostructures

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          Abstract

          It is expected that the number and variety of engineered nanoparticles will increase rapidly over the next few years, and there is a need for new methods to quickly test the potential toxicity of these materials. Because experimental evaluation of the safety of chemicals is expensive and time-consuming, computational methods have been found to be efficient alternatives for predicting the potential toxicity and environmental impact of new nanomaterials before mass production. Here, we show that the quantitative structure-activity relationship (QSAR) method commonly used to predict the physicochemical properties of chemical compounds can be applied to predict the toxicity of various metal oxides. Based on experimental testing, we have developed a model to describe the cytotoxicity of 17 different types of metal oxide nanoparticles to bacteria Escherichia coli. The model reliably predicts the toxicity of all considered compounds, and the methodology is expected to provide guidance for the future design of safe nanomaterials.

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