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首页> 外文期刊>Toxicology in vitro: an international journal published in association with BIBRA >Nano-quantitative structure-activity relationship modeling using easily computable and interpretable descriptors for uptake of magnetofluorescent engineered nanoparticles in pancreatic cancer cells
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Nano-quantitative structure-activity relationship modeling using easily computable and interpretable descriptors for uptake of magnetofluorescent engineered nanoparticles in pancreatic cancer cells

机译:使用易于计算和可解释的描述符进行纳米定量结构-活性关系建模,以摄取胰腺癌细胞中的磁荧光工程化纳米颗粒

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摘要

As experimental evaluation of the safety of nanoparticles (NPs) is expensive and time-consuming, computational approaches have been found to be an efficient alternative for predicting the potential toxicity of new NPs before mass production. In this background, we have developed here a regression-based nano quantitative structure-activity relationship (nano-QSAR) model to establish statistically significant relationships between the measured cellular uptakes of 109 magnetofluorescent NPs in pancreatic cancer cells with their physical, chemical, and structural properties encoded within easily computable, interpretable and reproducible descriptors. The developed model was rigorously validated internally as well as externally with the application of the principles of Organization for Economic Cooperation and Development (OECD). The test for domain of applicability was also carried out for checking reliability of the predictions. Important fragments contributing to higher/lower cellular uptake of NPs were identified through critical analysis and interpretation of the developed model. Considering all these identified structural attributes, one can choose or design safe, economical and suitable surface modifiers for NPs. The presented approach provides rich information in the context of virtual screening of relevant NP libraries.
机译:由于对纳米颗粒(NPs)的安全性进行的实验评估既昂贵又耗时,因此已发现计算方法是预测大规模生产之前新NPs潜在毒性的有效替代方法。在此背景下,我们在这里建立了基于回归的纳米定量结构-活性关系(nano-QSAR)模型,以建立测量的胰腺癌细胞中109种磁荧光NP的细胞摄取与其物理,化学和结构之间的统计学显着关系。在易于计算,可解释和可再现的描述符中编码的属性。使用经济合作与发展组织(OECD)的原则对开发的模型进行了内部和外部的严格验证。还进行了适用范围的测试,以检查预测的可靠性。通过对开发模型进行严格的分析和解释,确定了导致较高/较低细胞摄取NP的重要片段。考虑到所有这些确定的结构属性,可以为NP选择或设计安全,经济和合适的表面改性剂。提出的方法在虚拟筛选相关NP库的背景下提供了丰富的信息。

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