动态QSAR模型用于预测纳米颗粒和先进材料诱导的体内遗传毒性和炎症:时间-剂量-性质/反应方法。

IF 10.6 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Michalina Miszczak, Kabiruddin Khan, Pernille Høgh Danielsen, Keld Alstrup Jensen, Ulla Vogel, Roland Grafström, Agnieszka Gajewicz-Skretna
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引用次数: 0

摘要

预测纳米颗粒(NPs)和先进材料(AdMa)的健康风险是一项关键挑战。由于实验测试的复杂性和耗时性,人们依赖于诸如定量结构-活性关系(QSAR)之类的计算机方法,这些方法虽然有效,但往往无法捕捉材料活性随时间的动态性质,而这对于可靠的风险评估至关重要。本研究利用机器学习开发了动态QSAR模型,以预测在不同暴露后时间点和剂量水平下肺部暴露于39adma后的毒理学反应,如炎症和遗传毒性。通过将暴露时间、给药剂量和材料特性作为自变量,我们成功建立了时间-剂量-特性/反应模型,该模型能够预测adma诱导的支气管肺泡灌洗液细胞、肺和肝组织的体内遗传毒性,以及中性粒细胞流入小鼠肺部的炎症。确定了adma诱导毒性的关键因素,包括暴露剂量、暴露后持续时间、宽高比、表面积、活性氧生成和金属离子释放。本文提出的时间-剂量-性质/反应建模范式为预测体内遗传毒性和炎症提供了一种实用而强大的方法,并支持对形态多样的AdMa进行全面的风险评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic QSAR modeling for predicting in vivo genotoxicity and inflammation induced by nanoparticles and advanced materials: a time-dose-property/response approach.

Predicting the health risks of nanoparticles (NPs) and advanced materials (AdMa) is a critical challenge. Due to the complexity and time-consuming nature of experimental testing, there is a reliance on in silico methods such as quantitative structure-activity relationship (QSAR), which, while effective, often fail to capture the dynamic nature of material activity over time-essential for reliable risk assessment. This study develops dynamic QSAR models using machine learning to predict toxicological responses, such as inflammation and genotoxicity, following pulmonary exposure to 39 AdMa across various post-exposure time points and dose levels. By incorporating exposure time, administered dose, and material properties as independent variables, we successfully developed time-dose-property/response models capable of predicting AdMa-induced in vivo genotoxicity in bronchoalveolar lavage fluid cells, lung and liver tissue, and inflammation in terms of neutrophil influx into the lungs of mice. Key factors driving AdMa-induced toxicity were identified, including exposure dose, post-exposure duration time, aspect ratio, surface area, reactive oxygen species generation, and metal ion release. The time-dose-property/response modeling paradigm presented here provides a practical and robust approach for predicting in vivo genotoxicity and inflammation and supports the comprehensive risk assessment of morphologically diverse AdMa.

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来源期刊
Journal of Nanobiotechnology
Journal of Nanobiotechnology BIOTECHNOLOGY & APPLIED MICROBIOLOGY-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
13.90
自引率
4.90%
发文量
493
审稿时长
16 weeks
期刊介绍: Journal of Nanobiotechnology is an open access peer-reviewed journal communicating scientific and technological advances in the fields of medicine and biology, with an emphasis in their interface with nanoscale sciences. The journal provides biomedical scientists and the international biotechnology business community with the latest developments in the growing field of Nanobiotechnology.
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