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金属氧化物纳米颗粒(MeOxNPs)细胞毒性的建模和机制理解:未测试金属氧化物的分类和数据填补。

Modeling and mechanistic understanding of cytotoxicity of metal oxide nanoparticles (MeOxNPs) to : categorization and data gap filling for untested metal oxides.

机构信息

Drug Theoretics and Cheminformatics Laboratory, Department of Pharmaceutical Technology, Jadavpur University, Kolkata, India.

出版信息

Nanotoxicology. 2022 Mar;16(2):152-164. doi: 10.1080/17435390.2022.2038299. Epub 2022 Feb 15.

Abstract

Metal oxide nanoparticles (MeONPs) production is expected to increase every year exponentially, and their potential to cause adverse effect to the environment and human health will also expand rapidly. Hence, risk assessment of nanoparticles (NPs) is necessary to design ecosafe products. However, experimental ecotoxicological assessments are time-consuming requiring a lot of resources. Therefore, researchers rely on alternative approaches to predict the behavior of NPs in the biological system. Quantitative structure - toxicity relationship (QSTR) has been adopted as a potential method to predict the cytotoxicity of untested NPs. Hence, in the present study, multiple linear regression (MLR) models were developed using 17 MeONPs on bacteria cells under both light and dark conditions. The models were developed applying Small Dataset Modeler software, version 1.0.0 (http://teqip.jdvu.ac.in/QSAR_Tools/DTCLab/) which generates models with a limited number of data points. Periodic table-based descriptors (both 1st and 2nd generation) were used for the modeling purpose. Two statistically significant MLR models based on photo-induced toxicity ( = 0.726) and dark-based toxicity ( = 0.770) were developed. From the developed models, we interpreted that increase in valency and oxidation state of the metal will decrease the cytotoxicity whereas the atomic radius of the metal and electronegativity of MeONPs influence the toxicity toward cells. The MLR models were validated using different internal validation metrics. Additionally, we have collected 42 MeONPs as an external set to observe the predictive power of the two developed MLR models and categorize them into toxic and non-toxic classes. The chemical features selected in the developed models are important for understanding the mechanisms of nanotoxicity. Thus, the developed models can be a scientific basis for designing safer NPs.

摘要

金属氧化物纳米粒子(MeONPs)的产量预计每年将呈指数级增长,它们对环境和人类健康造成不良影响的潜力也将迅速扩大。因此,有必要对纳米粒子(NPs)进行风险评估,以设计生态安全的产品。然而,实验性的生态毒理学评估既耗时又耗费大量资源。因此,研究人员依赖于替代方法来预测 NPs 在生物系统中的行为。定量结构-毒性关系(QSTR)已被用作预测未经测试的 NPs 细胞毒性的潜在方法。因此,在本研究中,我们在光照和黑暗条件下,用 17 种 MeONPs 对细菌细胞进行了多元线性回归(MLR)模型的开发。模型是通过 Small Dataset Modeler 软件,版本 1.0.0(http://teqip.jdvu.ac.in/QSAR_Tools/DTCLab/)来开发的,该软件可以在数据点数量有限的情况下生成模型。基于元素周期表的描述符(第一代和第二代)被用于建模目的。基于光诱导毒性( = 0.726)和暗毒性( = 0.770)开发了两个具有统计学意义的 MLR 模型。从所开发的模型中,我们推断出金属的价态和氧化态的增加会降低细胞毒性,而金属的原子半径和 MeONPs 的电负性会影响细胞的毒性。通过不同的内部验证指标对 MLR 模型进行了验证。此外,我们还收集了 42 种 MeONPs 作为外部数据集,以观察这两个开发的 MLR 模型的预测能力,并将它们分为有毒和无毒两类。在开发模型中选择的化学特征对于理解纳米毒性的机制很重要。因此,所开发的模型可以为设计更安全的 NPs 提供科学依据。

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