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Status Quo in Data Availability and Predictive Models of Nano-Mixture Toxicity

机译:纳米混合物毒性数据可用性和预测模型中的现状

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摘要

Co-exposure of nanomaterials and chemicals can cause mixture toxicity effects to living organisms. Predictive models might help to reduce the intensive laboratory experiments required for determining the toxicity of the mixtures. Previously, concentration addition (CA), independent action (IA), and quantitative structure–activity relationship (QSAR)-based models were successfully applied to mixtures of organic chemicals. However, there were few studies concerning predictive models for toxicity of nano-mixtures before June 2020. Previous reviews provided comprehensive knowledge of computational models and mechanisms for chemical mixture toxicity. There is a gap in the reviewing of datasets and predictive models, which might cause obstacles in the toxicity assessment of nano-mixtures by using in silico approach. In this review, we collected 183 studies of nano-mixture toxicity and curated data to investigate the current data and model availability and gap and to derive research challenges to facilitate further experimental studies for data gap filling and the development of predictive models.
机译:纳米材料和化学物质的共同暴露可能导致混合物毒性对生物的影响。预测模型可能有助于减少确定混合物毒性所需的强化实验室实验。以前,浓缩添加(CA),独立的动作(IA)和定量结构 - 活性关系(QSAR)成功地应用于有机化学品的混合物。然而,几乎没有关于纳米混合物毒性的预测模型的研究,在2020年6月之前,综合评论提供了综合了解化学混合物毒性的计算模型和机制。在审查数据集和预测模型中存在差距,这可能在硅方法中使用纳米混合物的毒性评估障碍。在本文中,我们收集了183项纳米混合物毒性和策划数据的研究,以研究当前的数据和模型可用性和差距,并导出研究挑战,以促进数据差距填充的进一步实验研究和预测模型的发展。

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